296 results on '"Lencer, R."'
Search Results
2. Transdiagnostic subgroups of cognitive impairment in early affective and psychotic illness
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Wenzel, J, Badde, L, Haas, SS, Bonivento, C, van Rheenen, TE, Antonucci, LA, Ruef, A, Penzel, N, Rosen, M, Lichtenstein, T, Lalousis, PA, Paolini, M, Stainton, A, Dannlowski, U, Romer, G, Brambilla, P, Wood, SJ, Upthegrove, R, Borgwardt, S, Meisenzahl, E, Salokangas, RKR, Pantelis, C, Lencer, R, Bertolino, A, Kambeitz, J, Koutsouleris, N, Dwyer, DB, Kambeitz-Ilankovic, L, Wenzel, J, Badde, L, Haas, SS, Bonivento, C, van Rheenen, TE, Antonucci, LA, Ruef, A, Penzel, N, Rosen, M, Lichtenstein, T, Lalousis, PA, Paolini, M, Stainton, A, Dannlowski, U, Romer, G, Brambilla, P, Wood, SJ, Upthegrove, R, Borgwardt, S, Meisenzahl, E, Salokangas, RKR, Pantelis, C, Lencer, R, Bertolino, A, Kambeitz, J, Koutsouleris, N, Dwyer, DB, and Kambeitz-Ilankovic, L
- Abstract
Cognitively impaired and spared patient subgroups were identified in psychosis and depression, and in clinical high-risk for psychosis (CHR). Studies suggest differences in underlying brain structural and functional characteristics. It is unclear whether cognitive subgroups are transdiagnostic phenomena in early stages of psychotic and affective disorder which can be validated on the neural level. Patients with recent-onset psychosis (ROP; N = 140; female = 54), recent-onset depression (ROD; N = 130; female = 73), CHR (N = 128; female = 61) and healthy controls (HC; N = 270; female = 165) were recruited through the multi-site study PRONIA. The transdiagnostic sample and individual study groups were clustered into subgroups based on their performance in eight cognitive domains and characterized by gray matter volume (sMRI) and resting-state functional connectivity (rsFC) using support vector machine (SVM) classification. We identified an impaired subgroup (NROP = 79, NROD = 30, NCHR = 37) showing cognitive impairment in executive functioning, working memory, processing speed and verbal learning (all p < 0.001). A spared subgroup (NROP = 61, NROD = 100, NCHR = 91) performed comparable to HC. Single-disease subgroups indicated that cognitive impairment is stronger pronounced in impaired ROP compared to impaired ROD and CHR. Subgroups in ROP and ROD showed specific symptom- and functioning-patterns. rsFC showed superior accuracy compared to sMRI in differentiating transdiagnostic subgroups from HC (BACimpaired = 58.5%; BACspared = 61.7%, both: p < 0.01). Cognitive findings were validated in the PRONIA replication sample (N = 409). Individual cognitive subgroups in ROP, ROD and CHR are more informative than transdiagnostic subgroups as they map onto individual cognitive impairment and specific functioning- and symptom-patterns which show limited overlap in sMRI and rsFC.
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- 2024
3. A multivariate cognitive approach to predict social functioning in recent onset psychosis in response to computerized cognitive training
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Walter, N, Wenzel, J, Haas, SS, Squarcina, L, Bonivento, C, Ruef, A, Dwyer, D, Lichtenstein, T, Bastruek, O, Stainton, A, Antonucci, LA, Brambilla, P, Wood, SJ, Upthegrove, R, Borgwardt, S, Lencer, R, Meisenzahl, E, Salokangas, RKR, Pantelis, C, Bertolino, A, Koutsouleris, N, Kambeitz, J, Kambeitz-Ilankovic, L, Walter, N, Wenzel, J, Haas, SS, Squarcina, L, Bonivento, C, Ruef, A, Dwyer, D, Lichtenstein, T, Bastruek, O, Stainton, A, Antonucci, LA, Brambilla, P, Wood, SJ, Upthegrove, R, Borgwardt, S, Lencer, R, Meisenzahl, E, Salokangas, RKR, Pantelis, C, Bertolino, A, Koutsouleris, N, Kambeitz, J, and Kambeitz-Ilankovic, L
- Abstract
Clinical and neuroimaging data has been increasingly used in recent years to disentangle heterogeneity of treatment response to cognitive training (CT) and predict which individuals may achieve the highest benefits. CT has small to medium effects on improving cognitive and social functioning in recent onset psychosis (ROP) patients, who show the most profound cognitive and social functioning deficits among psychiatric patients. We employed multivariate pattern analysis (MVPA) to investigate the potential of cognitive data to predict social functioning improvement in response to 10 h of CT in patients with ROP. A support vector machine (SVM) classifier was trained on the naturalistic data of the Personalized Prognostic Tools for Early Psychosis Management (PRONIA) study sample to predict functioning in an independent sample of 70 ROP patients using baseline cognitive data. PRONIA is a part of a FP7 EU grant program that involved 7 sites across 5 European countries, designed and conducted with the main aim of identifying (bio)markers associated with an enhanced risk of developing psychosis in order to improve early detection and prognosis. Social functioning was predicted with a balanced accuracy (BAC) of 66.4% (Sensitivity 78.8%; Specificity 54.1%; PPV 60.5%; NPV 74.1%; AUC 0.64; P = 0.01). The most frequently selected cognitive features (mean feature weights > ± 0.2) included the (1) correct number of symbol matchings within the Digit Symbol Substitution Test, (2) the number of distracting stimuli leading to an error within 300 and 200 trials in the Continuous Performance Test and (3) the dynamics of verbal fluency between 15 and 30 s within the Verbal Fluency Test, phonetic part. Next, the SVM classifier generated on the PRONIA sample was applied to the intervention sample, that obtained 54 ROP patients who were randomly assigned to a social cognitive training (SCT) or treatment as usual (TAU) group and dichotomized into good (GF-S ≥ 7) and poor (GF-S < 7) function
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- 2024
4. Anhedonia as a Potential Transdiagnostic Phenotype With Immune-Related Changes in Recent-Onset Mental Health Disorders.
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Lalousis, PA, Malaviya, A, Khatibi, A, Saberi, M, Kambeitz-Ilankovic, L, Haas, SS, Wood, SJ, Barnes, NM, Rogers, J, Chisholm, K, Bertolino, A, Borgwardt, S, Brambilla, P, Kambeitz, J, Lencer, R, Pantelis, C, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Schmidt, A, Meisenzahl, E, Dwyer, D, Koutsouleris, N, Upthegrove, R, Griffiths, SL, PRONIA Consortium, Lalousis, PA, Malaviya, A, Khatibi, A, Saberi, M, Kambeitz-Ilankovic, L, Haas, SS, Wood, SJ, Barnes, NM, Rogers, J, Chisholm, K, Bertolino, A, Borgwardt, S, Brambilla, P, Kambeitz, J, Lencer, R, Pantelis, C, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Schmidt, A, Meisenzahl, E, Dwyer, D, Koutsouleris, N, Upthegrove, R, Griffiths, SL, and PRONIA Consortium
- Abstract
BACKGROUND: Chronic low-grade inflammation is observed across mental disorders and is associated with difficult-to-treat-symptoms of anhedonia and functional brain changes, reflecting a potential transdiagnostic dimension. Previous investigations have focused on distinct illness categories in people with enduring illness, but few have explored inflammatory changes. We sought to identify an inflammatory signal and the associated brain function underlying anhedonia among young people with recent-onset psychosis and recent-onset depression. METHODS: Resting-state functional magnetic resonance imaging, inflammatory markers, and anhedonia symptoms were collected from 108 (mean [SD] age = 26.2 [6.2] years; female = 50) participants with recent-onset psychosis (n = 53) and recent-onset depression (n = 55) from the European Union/Seventh Framework Programme-funded PRONIA (Personalised Prognostic Tools for Early Psychosis Management) study. Time series were extracted using the Schaefer atlas, defining 100 cortical regions of interest. Using advanced multimodal machine learning, an inflammatory marker model and a functional connectivity model were developed to classify participants into an anhedonic group or a normal hedonic group. RESULTS: A repeated nested cross-validation model using inflammatory markers classified normal hedonic and anhedonic recent-onset psychosis/recent-onset depression groups with a balanced accuracy of 63.9% and an area under the curve of 0.61. The functional connectivity model produced a balanced accuracy of 55.2% and an area under the curve of 0.57. Anhedonic group assignment was driven by higher levels of interleukin 6, S100B, and interleukin 1 receptor antagonist and lower levels of interferon gamma, in addition to connectivity within the precuneus and posterior cingulate. CONCLUSIONS: We identified a potential transdiagnostic anhedonic subtype that was accounted for by an inflammatory profile and functional connectivity. Results have implications
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- 2024
5. Alterations of Functional Connectivity Dynamics in Affective and Psychotic Disorders.
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Hoheisel, L, Kambeitz-Ilankovic, L, Wenzel, J, Haas, SS, Antonucci, LA, Ruef, A, Penzel, N, Schultze-Lutter, F, Lichtenstein, T, Rosen, M, Dwyer, DB, Salokangas, RKR, Lencer, R, Brambilla, P, Borgwardt, S, Wood, SJ, Upthegrove, R, Bertolino, A, Ruhrmann, S, Meisenzahl, E, Koutsouleris, N, Fink, GR, Daun, S, Kambeitz, J, PRONIA Consortium, Hoheisel, L, Kambeitz-Ilankovic, L, Wenzel, J, Haas, SS, Antonucci, LA, Ruef, A, Penzel, N, Schultze-Lutter, F, Lichtenstein, T, Rosen, M, Dwyer, DB, Salokangas, RKR, Lencer, R, Brambilla, P, Borgwardt, S, Wood, SJ, Upthegrove, R, Bertolino, A, Ruhrmann, S, Meisenzahl, E, Koutsouleris, N, Fink, GR, Daun, S, Kambeitz, J, and PRONIA Consortium
- Abstract
BACKGROUND: Patients with psychosis and patients with depression exhibit widespread neurobiological abnormalities. The analysis of dynamic functional connectivity (dFC) allows for the detection of changes in complex brain activity patterns, providing insights into common and unique processes underlying these disorders. METHODS: We report the analysis of dFC in a large sample including 127 patients at clinical high risk for psychosis, 142 patients with recent-onset psychosis, 134 patients with recent-onset depression, and 256 healthy control participants. A sliding window-based technique was used to calculate the time-dependent FC in resting-state magnetic resonance imaging data, followed by clustering to reveal recurrent FC states in each diagnostic group. RESULTS: We identified 5 unique FC states, which could be identified in all groups with high consistency (mean r = 0.889 [SD = 0.116]). Analysis of dynamic parameters of these states showed a characteristic increase in the lifetime and frequency of a weakly connected FC state in patients with recent-onset depression (p < .0005) compared with the other groups and a common increase in the lifetime of an FC state characterized by high sensorimotor and cingulo-opercular connectivities in all patient groups compared with the healthy control group (p < .0002). Canonical correlation analysis revealed a mode that exhibited significant correlations between dFC parameters and clinical variables (r = 0.617, p < .0029), which was associated with positive psychosis symptom severity and several dFC parameters. CONCLUSIONS: Our findings indicate diagnosis-specific alterations of dFC and underline the potential of dynamic analysis to characterize disorders such as depression and psychosis and clinical risk states.
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- 2024
6. Neurostructural subgroup in 4291 individuals with schizophrenia identified using the subtype and stage inference algorithm.
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Jiang, Y, Luo, C, Wang, J, Palaniyappan, L, Chang, X, Xiang, S, Zhang, J, Duan, M, Huang, H, Gaser, C, Nemoto, K, Miura, K, Hashimoto, R, Westlye, LT, Richard, G, Fernandez-Cabello, S, Parker, N, Andreassen, OA, Kircher, T, Nenadić, I, Stein, F, Thomas-Odenthal, F, Teutenberg, L, Usemann, P, Dannlowski, U, Hahn, T, Grotegerd, D, Meinert, S, Lencer, R, Tang, Y, Zhang, T, Li, C, Yue, W, Zhang, Y, Yu, X, Zhou, E, Lin, C-P, Tsai, S-J, Rodrigue, AL, Glahn, D, Pearlson, G, Blangero, J, Karuk, A, Pomarol-Clotet, E, Salvador, R, Fuentes-Claramonte, P, Garcia-León, MÁ, Spalletta, G, Piras, F, Vecchio, D, Banaj, N, Cheng, J, Liu, Z, Yang, J, Gonul, AS, Uslu, O, Burhanoglu, BB, Uyar Demir, A, Rootes-Murdy, K, Calhoun, VD, Sim, K, Green, M, Quidé, Y, Chung, YC, Kim, W-S, Sponheim, SR, Demro, C, Ramsay, IS, Iasevoli, F, de Bartolomeis, A, Barone, A, Ciccarelli, M, Brunetti, A, Cocozza, S, Pontillo, G, Tranfa, M, Park, MTM, Kirschner, M, Georgiadis, F, Kaiser, S, Van Rheenen, TE, Rossell, SL, Hughes, M, Woods, W, Carruthers, SP, Sumner, P, Ringin, E, Spaniel, F, Skoch, A, Tomecek, D, Homan, P, Homan, S, Omlor, W, Cecere, G, Nguyen, DD, Preda, A, Thomopoulos, SI, Jahanshad, N, Cui, L-B, Yao, D, Thompson, PM, Turner, JA, van Erp, TGM, Cheng, W, ENIGMA Schizophrenia Consortium, Feng, J, ZIB Consortium, Jiang, Y, Luo, C, Wang, J, Palaniyappan, L, Chang, X, Xiang, S, Zhang, J, Duan, M, Huang, H, Gaser, C, Nemoto, K, Miura, K, Hashimoto, R, Westlye, LT, Richard, G, Fernandez-Cabello, S, Parker, N, Andreassen, OA, Kircher, T, Nenadić, I, Stein, F, Thomas-Odenthal, F, Teutenberg, L, Usemann, P, Dannlowski, U, Hahn, T, Grotegerd, D, Meinert, S, Lencer, R, Tang, Y, Zhang, T, Li, C, Yue, W, Zhang, Y, Yu, X, Zhou, E, Lin, C-P, Tsai, S-J, Rodrigue, AL, Glahn, D, Pearlson, G, Blangero, J, Karuk, A, Pomarol-Clotet, E, Salvador, R, Fuentes-Claramonte, P, Garcia-León, MÁ, Spalletta, G, Piras, F, Vecchio, D, Banaj, N, Cheng, J, Liu, Z, Yang, J, Gonul, AS, Uslu, O, Burhanoglu, BB, Uyar Demir, A, Rootes-Murdy, K, Calhoun, VD, Sim, K, Green, M, Quidé, Y, Chung, YC, Kim, W-S, Sponheim, SR, Demro, C, Ramsay, IS, Iasevoli, F, de Bartolomeis, A, Barone, A, Ciccarelli, M, Brunetti, A, Cocozza, S, Pontillo, G, Tranfa, M, Park, MTM, Kirschner, M, Georgiadis, F, Kaiser, S, Van Rheenen, TE, Rossell, SL, Hughes, M, Woods, W, Carruthers, SP, Sumner, P, Ringin, E, Spaniel, F, Skoch, A, Tomecek, D, Homan, P, Homan, S, Omlor, W, Cecere, G, Nguyen, DD, Preda, A, Thomopoulos, SI, Jahanshad, N, Cui, L-B, Yao, D, Thompson, PM, Turner, JA, van Erp, TGM, Cheng, W, ENIGMA Schizophrenia Consortium, Feng, J, and ZIB Consortium
- Abstract
Machine learning can be used to define subtypes of psychiatric conditions based on shared biological foundations of mental disorders. Here we analyzed cross-sectional brain images from 4,222 individuals with schizophrenia and 7038 healthy subjects pooled across 41 international cohorts from the ENIGMA, non-ENIGMA cohorts and public datasets. Using the Subtype and Stage Inference (SuStaIn) algorithm, we identify two distinct neurostructural subgroups by mapping the spatial and temporal 'trajectory' of gray matter change in schizophrenia. Subgroup 1 was characterized by an early cortical-predominant loss with enlarged striatum, whereas subgroup 2 displayed an early subcortical-predominant loss in the hippocampus, striatum and other subcortical regions. We confirmed the reproducibility of the two neurostructural subtypes across various sample sites, including Europe, North America and East Asia. This imaging-based taxonomy holds the potential to identify individuals with shared neurobiological attributes, thereby suggesting the viability of redefining existing disorder constructs based on biological factors.
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- 2024
7. Structural and Functional Brain Patterns Predict Formal Thought Disorder's Severity and Its Persistence in Recent-Onset Psychosis: Results From the PRONIA Study
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Buciuman, M-O, Oeztuerk, OF, Popovic, D, Enrico, P, Ruef, A, Bieler, N, Sarisik, E, Weiske, J, Dong, MS, Dwyer, DB, Kambeitz-Ilankovic, L, Haas, SS, Stainton, A, Ruhrmann, S, Chisholm, K, Kambeitz, J, Riecher-Rossler, A, Upthegrove, R, Schultze-Lutter, F, Salokangas, RKR, Hietala, J, Pantelis, C, Lencer, R, Meisenzahl, E, Wood, SJ, Brambilla, P, Borgwardt, S, Falkai, P, Antonucci, LA, Bertolino, A, Liddle, P, Koutsouleris, N, Buciuman, M-O, Oeztuerk, OF, Popovic, D, Enrico, P, Ruef, A, Bieler, N, Sarisik, E, Weiske, J, Dong, MS, Dwyer, DB, Kambeitz-Ilankovic, L, Haas, SS, Stainton, A, Ruhrmann, S, Chisholm, K, Kambeitz, J, Riecher-Rossler, A, Upthegrove, R, Schultze-Lutter, F, Salokangas, RKR, Hietala, J, Pantelis, C, Lencer, R, Meisenzahl, E, Wood, SJ, Brambilla, P, Borgwardt, S, Falkai, P, Antonucci, LA, Bertolino, A, Liddle, P, and Koutsouleris, N
- Abstract
BACKGROUND: Formal thought disorder (FThD) is a core feature of psychosis, and its severity and long-term persistence relates to poor clinical outcomes. However, advances in developing early recognition and management tools for FThD are hindered by a lack of insight into the brain-level predictors of FThD states and progression at the individual level. METHODS: Two hundred thirty-three individuals with recent-onset psychosis were drawn from the multisite European Prognostic Tools for Early Psychosis Management study. Support vector machine classifiers were trained within a cross-validation framework to separate two FThD symptom-based subgroups (high vs. low FThD severity), using cross-sectional whole-brain multiband fractional amplitude of low frequency fluctuations, gray matter volume and white matter volume data. Moreover, we trained machine learning models on these neuroimaging readouts to predict the persistence of high FThD subgroup membership from baseline to 1-year follow-up. RESULTS: Cross-sectionally, multivariate patterns of gray matter volume within the salience, dorsal attention, visual, and ventral attention networks separated the FThD severity subgroups (balanced accuracy [BAC] = 60.8%). Longitudinally, distributed activations/deactivations within all fractional amplitude of low frequency fluctuation sub-bands (BACslow-5 = 73.2%, BACslow-4 = 72.9%, BACslow-3 = 68.0%), gray matter volume patterns overlapping with the cross-sectional ones (BAC = 62.7%), and smaller frontal white matter volume (BAC = 73.1%) predicted the persistence of high FThD severity from baseline to follow-up, with a combined multimodal balanced accuracy of BAC = 77%. CONCLUSIONS: We report the first evidence of brain structural and functional patterns predictive of FThD severity and persistence in early psychosis. These findings open up avenues for the development of neuroimaging-based diagnostic, prognostic, and treatment options for the early recognition and management of FThD and
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- 2023
8. Large-scale analysis of structural brain asymmetries in schizophrenia via the ENIGMA consortium.
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Schijven, Dick, Postema, M.C., Fukunaga, M., Matsumoto, J., Miura, K., Zwarte, S.M.C. de, Haren, N.E.M. van, Cahn, W., Hulshoff Pol, H.E., Kahn, R.S., Ayesa-Arriola, R., Ortoz-García de la Foz, V., Tordesillas-Gutierrez, D., Vázquez-Bourgon, J., Crespo-Facorro, B., Alnæs, D., Dahl, A., Westlye, L.T., Agartz, I., Andreassen, O.A., Jönsson, E.G., Kochunov, P., Bruggemann, J.M., Catts, S.V., Michie, P.T., Mowry, B.J., Quidé, Y., Rasser, P.E., Schall, U., Scott, R.J., Carr, V.J., Green, M.J., Henskens, F.A., Loughland, C.M., Pantelis, C., Weickert, C.S., Weickert, T.W., Haan, L. de, Brosch, K., Pfarr, J.K., Ringwald, K.G., Stein, F., Jansen, Andreas, Kircher, T.T.J., Nenadić, I., Krämer, Bernd, Gruber, O., Satterthwaite, T.D., Bustillo, J., Mathalon, D.H., Preda, A., Calhoun, V.D., Ford, J.M., Potkin, S.G., Chen, Jingxu, Tan, Yunlong, Wang, Zhiren, Xiang, Hong, Fan, Fengmei, Bernardoni, F., Ehrlich, S., Fuentes-Claramonte, P., Garcia-Leon, M.A., Guerrero-Pedraza, A., Salvador, R., Sarró, S., Pomarol-Clotet, E., Ciullo, V., Piras, F., Vecchio, D., Banaj, N., Spalletta, G., Michielse, S., Amelsvoort, T. van, Dickie, E.W., Voineskos, A.N., Sim, K., Ciufolini, S., Dazzan, P., Murray, R.M., Kim, W.S., Chung, Y.C., Andreou, C., Schmidt, A, Borgwardt, S., McIntosh, A.M., Whalley, H.C., Lawrie, S.M., Plessis, S. du, Luckhoff, H.K., Scheffler, F., Emsley, R., Grotegerd, D., Lencer, R., Dannlowski, U., Edmond, J.T., Rootes-Murdy, K., Stephen, J.M., Mayer, A.R., Antonucci, L.A., Fazio, L., Pergola, G., Bertolino, A., Díaz-Caneja, C.M., Janssen, J, Lois, N.G., Arango, C., Tomyshev, A.S., Lebedeva, I., Cervenka, S., Sellgren, C.M., Georgiadis, F., Kirschner, M., Kaiser, S., Hajek, T., Skoch, A., Spaniel, F., Kim, M., Kwak, Y.B., Oh, S., Kwon, J.S., James, A., Bakker, G., Knöchel, C., Stäblein, M., Oertel, V., Uhlmann, A., Howells, F.M., Stein, D.J., Temmingh, H.S., Diaz-Zuluaga, A.M., Pineda-Zapata, J.A., López-Jaramillo, C., Homan, S., Ji, E., Surbeck, W., Homan, P., Fisher, S.E., Franke, B., Glahn, D.C., Gur, R.C., Hashimoto, R., Jahanshad, N., Luders, E., Medland, S.E., Thompson, P.M., Turner, J.A., Erp, T.G. van, Francks, C., Schijven, Dick, Postema, M.C., Fukunaga, M., Matsumoto, J., Miura, K., Zwarte, S.M.C. de, Haren, N.E.M. van, Cahn, W., Hulshoff Pol, H.E., Kahn, R.S., Ayesa-Arriola, R., Ortoz-García de la Foz, V., Tordesillas-Gutierrez, D., Vázquez-Bourgon, J., Crespo-Facorro, B., Alnæs, D., Dahl, A., Westlye, L.T., Agartz, I., Andreassen, O.A., Jönsson, E.G., Kochunov, P., Bruggemann, J.M., Catts, S.V., Michie, P.T., Mowry, B.J., Quidé, Y., Rasser, P.E., Schall, U., Scott, R.J., Carr, V.J., Green, M.J., Henskens, F.A., Loughland, C.M., Pantelis, C., Weickert, C.S., Weickert, T.W., Haan, L. de, Brosch, K., Pfarr, J.K., Ringwald, K.G., Stein, F., Jansen, Andreas, Kircher, T.T.J., Nenadić, I., Krämer, Bernd, Gruber, O., Satterthwaite, T.D., Bustillo, J., Mathalon, D.H., Preda, A., Calhoun, V.D., Ford, J.M., Potkin, S.G., Chen, Jingxu, Tan, Yunlong, Wang, Zhiren, Xiang, Hong, Fan, Fengmei, Bernardoni, F., Ehrlich, S., Fuentes-Claramonte, P., Garcia-Leon, M.A., Guerrero-Pedraza, A., Salvador, R., Sarró, S., Pomarol-Clotet, E., Ciullo, V., Piras, F., Vecchio, D., Banaj, N., Spalletta, G., Michielse, S., Amelsvoort, T. van, Dickie, E.W., Voineskos, A.N., Sim, K., Ciufolini, S., Dazzan, P., Murray, R.M., Kim, W.S., Chung, Y.C., Andreou, C., Schmidt, A, Borgwardt, S., McIntosh, A.M., Whalley, H.C., Lawrie, S.M., Plessis, S. du, Luckhoff, H.K., Scheffler, F., Emsley, R., Grotegerd, D., Lencer, R., Dannlowski, U., Edmond, J.T., Rootes-Murdy, K., Stephen, J.M., Mayer, A.R., Antonucci, L.A., Fazio, L., Pergola, G., Bertolino, A., Díaz-Caneja, C.M., Janssen, J, Lois, N.G., Arango, C., Tomyshev, A.S., Lebedeva, I., Cervenka, S., Sellgren, C.M., Georgiadis, F., Kirschner, M., Kaiser, S., Hajek, T., Skoch, A., Spaniel, F., Kim, M., Kwak, Y.B., Oh, S., Kwon, J.S., James, A., Bakker, G., Knöchel, C., Stäblein, M., Oertel, V., Uhlmann, A., Howells, F.M., Stein, D.J., Temmingh, H.S., Diaz-Zuluaga, A.M., Pineda-Zapata, J.A., López-Jaramillo, C., Homan, S., Ji, E., Surbeck, W., Homan, P., Fisher, S.E., Franke, B., Glahn, D.C., Gur, R.C., Hashimoto, R., Jahanshad, N., Luders, E., Medland, S.E., Thompson, P.M., Turner, J.A., Erp, T.G. van, and Francks, C.
- Abstract
Item does not contain fulltext, Left-right asymmetry is an important organizing feature of the healthy brain that may be altered in schizophrenia, but most studies have used relatively small samples and heterogeneous approaches, resulting in equivocal findings. We carried out the largest case-control study of structural brain asymmetries in schizophrenia, with MRI data from 5,080 affected individuals and 6,015 controls across 46 datasets, using a single image analysis protocol. Asymmetry indexes were calculated for global and regional cortical thickness, surface area, and subcortical volume measures. Differences of asymmetry were calculated between affected individuals and controls per dataset, and effect sizes were meta-analyzed across datasets. Small average case-control differences were observed for thickness asymmetries of the rostral anterior cingulate and the middle temporal gyrus, both driven by thinner left-hemispheric cortices in schizophrenia. Analyses of these asymmetries with respect to the use of antipsychotic medication and other clinical variables did not show any significant associations. Assessment of age- and sex-specific effects revealed a stronger average leftward asymmetry of pallidum volume between older cases and controls. Case-control differences in a multivariate context were assessed in a subset of the data (N = 2,029), which revealed that 7% of the variance across all structural asymmetries was explained by case-control status. Subtle case-control differences of brain macrostructural asymmetry may reflect differences at the molecular, cytoarchitectonic, or circuit levels that have functional relevance for the disorder. Reduced left middle temporal cortical thickness is consistent with altered left-hemisphere language network organization in schizophrenia.
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- 2023
9. Large- scale analysis of structural brain asymmetries in schizophrenia via the ENIGMA consortium
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Schijven, D, Postema, MC, Fukunaga, M, Matsumoto, J, Miura, K, de Zwarte, SMC, van Haren, NEM, Cahn, W, Pol, HEH, Kahn, RS, Ayesa-Arriola, R, de la Foz, VO-G, Tordesillas-Gutierrez, D, Vazquez-Bourgon, J, Crespo-Facorro, B, Alnaes, D, Dahl, A, Westlye, LT, Agartz, I, Andreassen, OA, Jonsson, EG, Kochunov, P, Bruggemann, JM, Catts, SV, Michie, PT, Mowry, BJ, Quide, Y, Rasser, PE, Schall, U, Scott, RJ, Carr, VJ, Green, MJ, Henskens, FA, Loughland, CM, Pantelis, C, Weickert, CS, Weickert, TW, De Haan, L, Brosch, K, Pfarr, J-K, Ringwald, KG, Stein, F, Jansen, A, Kircher, TTJ, Nenadic, I, Kramer, B, Gruber, O, Satterthwaite, TD, Bustillo, J, Mathalon, DH, Preda, A, Calhoun, VD, Ford, JM, Potkin, SG, Chen, J, Tan, Y, Wang, Z, Xiang, H, Fan, F, Bernardoni, F, Ehrlich, S, Fuentes-Claramonte, P, Garcia-Leon, MA, Guerrero-Pedraza, A, Salvador, R, Sarro, S, Pomarol-Clotet, E, Ciullo, V, Piras, F, Vecchio, D, Banaj, N, Spalletta, G, Michielse, S, van Amelsvoort, T, Dickie, EW, Voineskos, AN, Sim, K, Ciufolini, S, Dazzan, P, Murray, RM, Kim, W-S, Chung, Y-C, Andreou, C, Schmidt, A, Borgwardt, S, McIntosh, AM, Whalley, HC, Lawrie, SM, Du Plessis, S, Luckhoff, HK, Scheffler, F, Emsley, R, Grotegerd, D, Lencer, R, Dannlowski, U, Edmond, JT, Rootes-Murdy, K, Stephen, JM, Mayer, AR, Antonucci, LA, Fazio, L, Pergola, G, Bertolino, A, Diaz-Caneja, CM, Janssen, J, Lois, NG, Arango, C, Tomyshev, AS, Lebedeva, I, Cervenkav, S, Sellgrenv, CM, Georgiadis, F, Kirschner, M, Kaiser, S, Hajek, T, Skoch, A, Spaniel, F, Kim, M, Bin Kwak, Y, Oh, S, Kwon, JS, James, A, Bakker, G, Knochel, C, Stablein, M, Oertel, V, Uhlmann, A, Howells, FM, Stein, DJ, Temmingh, HS, Diaz-Zuluaga, AM, Pineda-Zapata, JA, Lopez-Jaramillo, C, Homan, S, Ji, E, Surbeck, W, Homan, P, Fishera, SE, Franke, B, Glahn, DC, Gur, RC, Hashimoto, R, Jahanshad, N, Luders, E, Medland, SE, Thompson, PM, Turner, JA, van Erp, TGM, Francks, C, Schijven, D, Postema, MC, Fukunaga, M, Matsumoto, J, Miura, K, de Zwarte, SMC, van Haren, NEM, Cahn, W, Pol, HEH, Kahn, RS, Ayesa-Arriola, R, de la Foz, VO-G, Tordesillas-Gutierrez, D, Vazquez-Bourgon, J, Crespo-Facorro, B, Alnaes, D, Dahl, A, Westlye, LT, Agartz, I, Andreassen, OA, Jonsson, EG, Kochunov, P, Bruggemann, JM, Catts, SV, Michie, PT, Mowry, BJ, Quide, Y, Rasser, PE, Schall, U, Scott, RJ, Carr, VJ, Green, MJ, Henskens, FA, Loughland, CM, Pantelis, C, Weickert, CS, Weickert, TW, De Haan, L, Brosch, K, Pfarr, J-K, Ringwald, KG, Stein, F, Jansen, A, Kircher, TTJ, Nenadic, I, Kramer, B, Gruber, O, Satterthwaite, TD, Bustillo, J, Mathalon, DH, Preda, A, Calhoun, VD, Ford, JM, Potkin, SG, Chen, J, Tan, Y, Wang, Z, Xiang, H, Fan, F, Bernardoni, F, Ehrlich, S, Fuentes-Claramonte, P, Garcia-Leon, MA, Guerrero-Pedraza, A, Salvador, R, Sarro, S, Pomarol-Clotet, E, Ciullo, V, Piras, F, Vecchio, D, Banaj, N, Spalletta, G, Michielse, S, van Amelsvoort, T, Dickie, EW, Voineskos, AN, Sim, K, Ciufolini, S, Dazzan, P, Murray, RM, Kim, W-S, Chung, Y-C, Andreou, C, Schmidt, A, Borgwardt, S, McIntosh, AM, Whalley, HC, Lawrie, SM, Du Plessis, S, Luckhoff, HK, Scheffler, F, Emsley, R, Grotegerd, D, Lencer, R, Dannlowski, U, Edmond, JT, Rootes-Murdy, K, Stephen, JM, Mayer, AR, Antonucci, LA, Fazio, L, Pergola, G, Bertolino, A, Diaz-Caneja, CM, Janssen, J, Lois, NG, Arango, C, Tomyshev, AS, Lebedeva, I, Cervenkav, S, Sellgrenv, CM, Georgiadis, F, Kirschner, M, Kaiser, S, Hajek, T, Skoch, A, Spaniel, F, Kim, M, Bin Kwak, Y, Oh, S, Kwon, JS, James, A, Bakker, G, Knochel, C, Stablein, M, Oertel, V, Uhlmann, A, Howells, FM, Stein, DJ, Temmingh, HS, Diaz-Zuluaga, AM, Pineda-Zapata, JA, Lopez-Jaramillo, C, Homan, S, Ji, E, Surbeck, W, Homan, P, Fishera, SE, Franke, B, Glahn, DC, Gur, RC, Hashimoto, R, Jahanshad, N, Luders, E, Medland, SE, Thompson, PM, Turner, JA, van Erp, TGM, and Francks, C
- Abstract
Left-right asymmetry is an important organizing feature of the healthy brain that may be altered in schizophrenia, but most studies have used relatively small samples and heterogeneous approaches, resulting in equivocal findings. We carried out the largest case-control study of structural brain asymmetries in schizophrenia, with MRI data from 5,080 affected individuals and 6,015 controls across 46 datasets, using a single image analysis protocol. Asymmetry indexes were calculated for global and regional cortical thickness, surface area, and subcortical volume measures. Differences of asymmetry were calculated between affected individuals and controls per dataset, and effect sizes were meta-analyzed across datasets. Small average case-control differences were observed for thickness asymmetries of the rostral anterior cingulate and the middle temporal gyrus, both driven by thinner left-hemispheric cortices in schizophrenia. Analyses of these asymmetries with respect to the use of antipsychotic medication and other clinical variables did not show any significant associations. Assessment of age- and sex-specific effects revealed a stronger average leftward asymmetry of pallidum volume between older cases and controls. Case-control differences in a multivariate context were assessed in a subset of the data (N = 2,029), which revealed that 7% of the variance across all structural asymmetries was explained by case-control status. Subtle case-control differences of brain macrostructural asymmetry may reflect differences at the molecular, cytoarchitectonic, or circuit levels that have functional relevance for the disorder. Reduced left middle temporal cortical thickness is consistent with altered left-hemisphere language network organization in schizophrenia.
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- 2023
10. The Role of Social Defeat in Neurological differences in Psychotic Patients
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Malaviya, A., primary, Lalousis, P. A., additional, Wood, S. J., additional, Bertolino, A., additional, Borgwardt, S. B., additional, Brambilla, P., additional, Kambeitz, J., additional, Lencer, R., additional, Pantelis, C., additional, Ruhrmann, S., additional, Salokangas, R. K., additional, Schultze-Lutter, F., additional, Meisenzahl, E., additional, Koutsouleris, N., additional, and Upthegrove, R., additional
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- 2023
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11. The co-localisation with specific neurotransmitter systems discriminates schizophrenia patients from healthy controls
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Hahn, L., primary, Raabe, F.J., additional, Keeser, D., additional, Rossner, M.J., additional, Vetter, C., additional, Hasan, A., additional, Papzova, I., additional, Kambeitz, J., additional, Salokangas, R.K.R., additional, Hietala, J., additional, Bertolino, A., additional, Brambilla, P., additional, Upthegrove, R., additional, Wood, S.J., additional, Lencer, R., additional, Borgwardt, S., additional, Meyer-Lindenberg, A., additional, Meisenzahl, E., additional, Fabbro, F., additional, Schwarz, E., additional, Pantelis, C., additional, Nöthen, M., additional, Mann, M., additional, Paul, R., additional, Ruef, A., additional, and Koutsouleris, N., additional
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- 2023
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12. Modality specificity of audio-visual perceptual decisions alongside supramodal metacognition is revealed by computational modelling in patients with psychotic disorders
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Franzen, L., primary, Eickhoff, S., additional, Schewe, H., additional, Schmitt, L.M., additional, Erb, J., additional, Lencer, R., additional, Lange, C., additional, Andreou, C., additional, Borgwardt, S., additional, and Obleser, J., additional
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- 2023
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13. Distinct gray matter volume signatures of symptom-based patient subgroups in recent-onset psychosis
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Buciuman, M.O., primary, Vetter, C.S., additional, Tovar, S., additional, Weyer, C., additional, Zhutovsky, P., additional, Khuntia, A., additional, Paul, R., additional, Herrera, A., additional, Ruef, A., additional, Ruhrmann, S., additional, Chisholm, K., additional, Kambeitz, J., additional, Riecher-Rössler, A., additional, Upthegrove, R., additional, Schultze-Lutter, F., additional, Salokangas, R.K.R., additional, Hietala, J., additional, Pantelis, C., additional, Lencer, R., additional, Meisenzahl, E., additional, Wood, S.J., additional, Brambilla, P., additional, Borgwardt, S., additional, Falkai, P., additional, Bertolino, A., additional, and Koutsouleris, N., additional
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- 2023
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14. Alterations of functional connectivity dynamics in affective and psychotic disorders
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Hoheisel, L., primary, Kambeitz-Ilankovic, L., additional, Wenzel, J., additional, Haas, S.S., additional, Antonucci, L.A., additional, Ruef, A., additional, Penzel, N., additional, Schultze-Lutter, F., additional, Lichtenstein, T., additional, Rosen, M., additional, Dwyer, D.B., additional, Salokangas, R.K.R., additional, Lencer, R., additional, Brambilla, P., additional, Borgwardt, S., additional, Wood, S.J., additional, Upthegrove, R., additional, Bertolino, A., additional, Ruhrmann, S., additional, Meisenzahl, E., additional, Koutsouleris, N., additional, Fink, G.R., additional, Daun, S., additional, and Kambeitz, J., additional
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- 2023
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15. Einstellungen gegenüber eHealth-Angeboten in Psychiatrie und Psychotherapie: Eine Pilotumfrage auf dem DGPPN-Kongress 2014
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Surmann, M., Bock, E. M., Krey, E., Burmeister, K., Arolt, V., and Lencer, R.
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- 2017
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16. Basic visual dysfunction allows classification of patients with schizophrenia with exceptional accuracy
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González-Hernández, J.A., Pita-Alcorta, C., Padrón, A., Finalé, A., Galán, L., Martínez, E., Díaz-Comas, L., Samper-González, J.A., Lencer, R., and Marot, M.
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- 2014
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17. Neurobiologically Based Stratification of Recent- Onset Depression and Psychosis: Identification of Two Distinct Transdiagnostic Phenotypes
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Lalousis, PA, Schmaal, L, Wood, SJ, Reniers, RLEP, Barnes, NM, Chisholm, K, Griffiths, SL, Stainton, A, Wen, J, Hwang, G, Davatzikos, C, Wenzel, J, Kambeitz-Ilankovic, L, Andreou, C, Bonivento, C, Dannlowski, U, Ferro, A, Lichtenstein, T, Riecher-Rossler, A, Romer, G, Upthegrove, R, Lencer, R, Pantelis, C, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Schmidt, A, Meisenzahl, E, Koutsouleris, N, Dwyer, D, Rosen, M, Bertolino, A, Borgwardt, S, Brambilla, P, Kambeitz, J, Lalousis, PA, Schmaal, L, Wood, SJ, Reniers, RLEP, Barnes, NM, Chisholm, K, Griffiths, SL, Stainton, A, Wen, J, Hwang, G, Davatzikos, C, Wenzel, J, Kambeitz-Ilankovic, L, Andreou, C, Bonivento, C, Dannlowski, U, Ferro, A, Lichtenstein, T, Riecher-Rossler, A, Romer, G, Upthegrove, R, Lencer, R, Pantelis, C, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Schmidt, A, Meisenzahl, E, Koutsouleris, N, Dwyer, D, Rosen, M, Bertolino, A, Borgwardt, S, Brambilla, P, and Kambeitz, J
- Abstract
BACKGROUND: Identifying neurobiologically based transdiagnostic categories of depression and psychosis may elucidate heterogeneity and provide better candidates for predictive modeling. We aimed to identify clusters across patients with recent-onset depression (ROD) and recent-onset psychosis (ROP) based on structural neuroimaging data. We hypothesized that these transdiagnostic clusters would identify patients with poor outcome and allow more accurate prediction of symptomatic remission than traditional diagnostic structures. METHODS: HYDRA (Heterogeneity through Discriminant Analysis) was trained on whole-brain volumetric measures from 577 participants from the discovery sample of the multisite PRONIA study to identify neurobiologically driven clusters, which were then externally validated in the PRONIA replication sample (n = 404) and three datasets of chronic samples (Centre for Biomedical Research Excellence, n = 146; Mind Clinical Imaging Consortium, n = 202; Munich, n = 470). RESULTS: The optimal clustering solution was two transdiagnostic clusters (cluster 1: n = 153, 67 ROP, 86 ROD; cluster 2: n = 149, 88 ROP, 61 ROD; adjusted Rand index = 0.618). The two clusters contained both patients with ROP and patients with ROD. One cluster had widespread gray matter volume deficits and more positive, negative, and functional deficits (impaired cluster), and one cluster revealed a more preserved neuroanatomical signature and more core depressive symptomatology (preserved cluster). The clustering solution was internally and externally validated and assessed for clinical utility in predicting 9-month symptomatic remission, outperforming traditional diagnostic structures. CONCLUSIONS: We identified two transdiagnostic neuroanatomically informed clusters that are clinically and biologically distinct, challenging current diagnostic boundaries in recent-onset mental health disorders. These results may aid understanding of the etiology of poor outcome patients transdiagnost
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- 2022
18. Pattern of predictive features of continued cannabis use in patients with recent-onset psychosis and clinical high-risk for psychosis
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Penzel, N, Sanfelici, R, Antonucci, LA, Betz, LT, Dwyer, D, Ruef, A, Cho, KIK, Cumming, P, Pogarell, O, Howes, O, Falkai, P, Upthegrove, R, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Schultze-Lutter, F, Rosen, M, Lichtenstein, T, Kambeitz-Ilankovic, L, Ruhrmann, S, Salokangas, RKR, Pantelis, C, Wood, SJ, Quednow, BB, Pergola, G, Bertolino, A, Koutsouleris, N, Kambeitz, J, Penzel, N, Sanfelici, R, Antonucci, LA, Betz, LT, Dwyer, D, Ruef, A, Cho, KIK, Cumming, P, Pogarell, O, Howes, O, Falkai, P, Upthegrove, R, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Schultze-Lutter, F, Rosen, M, Lichtenstein, T, Kambeitz-Ilankovic, L, Ruhrmann, S, Salokangas, RKR, Pantelis, C, Wood, SJ, Quednow, BB, Pergola, G, Bertolino, A, Koutsouleris, N, and Kambeitz, J
- Abstract
Continued cannabis use (CCu) is an important predictor for poor long-term outcomes in psychosis and clinically high-risk patients, but no generalizable model has hitherto been tested for its ability to predict CCu in these vulnerable patient groups. In the current study, we investigated how structured clinical and cognitive assessments and structural magnetic resonance imaging (sMRI) contributed to the prediction of CCu in a group of 109 patients with recent-onset psychosis (ROP). We tested the generalizability of our predictors in 73 patients at clinical high-risk for psychosis (CHR). Here, CCu was defined as any cannabis consumption between baseline and 9-month follow-up, as assessed in structured interviews. All patients reported lifetime cannabis use at baseline. Data from clinical assessment alone correctly classified 73% (p < 0.001) of ROP and 59 % of CHR patients. The classifications of CCu based on sMRI and cognition were non-significant (ps > 0.093), and their addition to the interview-based predictor via stacking did not improve prediction significantly, either in the ROP or CHR groups (ps > 0.065). Lower functioning, specific substance use patterns, urbanicity and a lack of other coping strategies contributed reliably to the prediction of CCu and might thus represent important factors for guiding preventative efforts. Our results suggest that it may be possible to identify by clinical measures those psychosis-spectrum patients at high risk for CCu, potentially allowing to improve clinical care through targeted interventions. However, our model needs further testing in larger samples including more diverse clinical populations before being transferred into clinical practice.
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- 2022
19. Exploring Links Between Psychosis and Frontotemporal Dementia Using Multimodal Machine Learning Dementia Praecox Revisited
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Koutsouleris, N, Pantelis, C, Velakoulis, D, McGuire, P, Dwyer, DB, Urquijo-Castro, M-F, Paul, R, Sen, D, Popovic, D, Oeztuerk, O, Kambeitz, J, Salokangas, RKR, Hietala, J, Bertolino, A, Brambilla, P, Upthegrove, R, Wood, SJ, Lencer, R, Borgwardt, S, Maj, C, Nothen, M, Degenhardt, F, Polyakova, M, Mueller, K, Villringer, A, Danek, A, Fassbender, K, Fliessbach, K, Jahn, H, Kornhuber, J, Landwehrmeyer, B, Anderl-Straub, S, Prudlo, J, Synofzik, M, Wiltfang, J, Riedl, L, Diehl-Schmid, J, Otto, M, Meisenzahl, E, Falkai, P, Schroeter, ML, Koutsouleris, N, Pantelis, C, Velakoulis, D, McGuire, P, Dwyer, DB, Urquijo-Castro, M-F, Paul, R, Sen, D, Popovic, D, Oeztuerk, O, Kambeitz, J, Salokangas, RKR, Hietala, J, Bertolino, A, Brambilla, P, Upthegrove, R, Wood, SJ, Lencer, R, Borgwardt, S, Maj, C, Nothen, M, Degenhardt, F, Polyakova, M, Mueller, K, Villringer, A, Danek, A, Fassbender, K, Fliessbach, K, Jahn, H, Kornhuber, J, Landwehrmeyer, B, Anderl-Straub, S, Prudlo, J, Synofzik, M, Wiltfang, J, Riedl, L, Diehl-Schmid, J, Otto, M, Meisenzahl, E, Falkai, P, and Schroeter, ML
- Abstract
IMPORTANCE: The behavioral and cognitive symptoms of severe psychotic disorders overlap with those seen in dementia. However, shared brain alterations remain disputed, and their relevance for patients in at-risk disease stages has not been explored so far. OBJECTIVE: To use machine learning to compare the expression of structural magnetic resonance imaging (MRI) patterns of behavioral-variant frontotemporal dementia (bvFTD), Alzheimer disease (AD), and schizophrenia; estimate predictability in patients with bvFTD and schizophrenia based on sociodemographic, clinical, and biological data; and examine prognostic value, genetic underpinnings, and progression in patients with clinical high-risk (CHR) states for psychosis or recent-onset depression (ROD). DESIGN, SETTING, AND PARTICIPANTS: This study included 1870 individuals from 5 cohorts, including (1) patients with bvFTD (n = 108), established AD (n = 44), mild cognitive impairment or early-stage AD (n = 96), schizophrenia (n = 157), or major depression (n = 102) to derive and compare diagnostic patterns and (2) patients with CHR (n = 160) or ROD (n = 161) to test patterns' prognostic relevance and progression. Healthy individuals (n = 1042) were used for age-related and cohort-related data calibration. Data were collected from January 1996 to July 2019 and analyzed between April 2020 and April 2022. MAIN OUTCOMES AND MEASURES: Case assignments based on diagnostic patterns; sociodemographic, clinical, and biological data; 2-year functional outcomes and genetic separability of patients with CHR and ROD with high vs low pattern expression; and pattern progression from baseline to follow-up MRI scans in patients with nonrecovery vs preserved recovery. RESULTS: Of 1870 included patients, 902 (48.2%) were female, and the mean (SD) age was 38.0 (19.3) years. The bvFTD pattern comprising prefrontal, insular, and limbic volume reductions was more expressed in patients with schizophrenia (65 of 157 [41.2%]) and major depressi
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- 2022
20. The impact of visual dysfunctions in recent-onset psychosis and clinical high-risk state for psychosis
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Schwarzer, JM, Meyhoefer, I, Antonucci, LA, Kambeitz-Ilankovic, L, Surmann, M, Bienek, O, Romer, G, Dannlowski, U, Hahn, T, Korda, A, Dwyer, DB, Ruef, A, Haas, SS, Rosen, M, Lichtenstein, T, Ruhrmann, S, Kambeitz, J, Salokangas, RKR, Pantelis, C, Schultze-Lutter, F, Meisenzahl, E, Brambilla, P, Bertolino, A, Borgwardt, S, Upthegrove, R, Koutsouleris, N, Lencer, R, Schwarzer, JM, Meyhoefer, I, Antonucci, LA, Kambeitz-Ilankovic, L, Surmann, M, Bienek, O, Romer, G, Dannlowski, U, Hahn, T, Korda, A, Dwyer, DB, Ruef, A, Haas, SS, Rosen, M, Lichtenstein, T, Ruhrmann, S, Kambeitz, J, Salokangas, RKR, Pantelis, C, Schultze-Lutter, F, Meisenzahl, E, Brambilla, P, Bertolino, A, Borgwardt, S, Upthegrove, R, Koutsouleris, N, and Lencer, R
- Abstract
Subtle subjective visual dysfunctions (VisDys) are reported by about 50% of patients with schizophrenia and are suggested to predict psychosis states. Deeper insight into VisDys, particularly in early psychosis states, could foster the understanding of basic disease mechanisms mediating susceptibility to psychosis, and thereby inform preventive interventions. We systematically investigated the relationship between VisDys and core clinical measures across three early phase psychiatric conditions. Second, we used a novel multivariate pattern analysis approach to predict VisDys by resting-state functional connectivity within relevant brain systems. VisDys assessed with the Schizophrenia Proneness Instrument (SPI-A), clinical measures, and resting-state fMRI data were examined in recent-onset psychosis (ROP, n = 147), clinical high-risk states of psychosis (CHR, n = 143), recent-onset depression (ROD, n = 151), and healthy controls (HC, n = 280). Our multivariate pattern analysis approach used pairwise functional connectivity within occipital (ON) and frontoparietal (FPN) networks implicated in visual information processing to predict VisDys. VisDys were reported more often in ROP (50.34%), and CHR (55.94%) than in ROD (16.56%), and HC (4.28%). Higher severity of VisDys was associated with less functional remission in both CHR and ROP, and, in CHR specifically, lower quality of life (Qol), higher depressiveness, and more severe impairment of visuospatial constructability. ON functional connectivity predicted presence of VisDys in ROP (balanced accuracy 60.17%, p = 0.0001) and CHR (67.38%, p = 0.029), while in the combined ROP + CHR sample VisDys were predicted by FPN (61.11%, p = 0.006). These large-sample study findings suggest that VisDys are clinically highly relevant not only in ROP but especially in CHR, being closely related to aspects of functional outcome, depressiveness, and Qol. Findings from multivariate pattern analysis support a model of functional integrit
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- 2022
21. Relationships between global functioning and neuropsychological predictors in subjects at high risk of psychosis or with a recent onset of depression
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Squarcina, L, Kambeitz-Ilankovic, L, Bonivento, C, Prunas, C, Oldani, L, Wenzel, J, Ruef, A, Dwyer, D, Ferro, A, Borgwardt, S, Kambeitz, J, Lichtenstein, TK, Meisenzahl, E, Pantelis, C, Rosen, M, Upthegrove, R, Antonucci, LA, Bertolino, A, Lencer, R, Ruhrmann, S, Salokangas, RRK, Schultze-Lutter, F, Chisholm, K, Stainton, A, Wood, SJ, Koutsouleris, N, Brambilla, P, Squarcina, L, Kambeitz-Ilankovic, L, Bonivento, C, Prunas, C, Oldani, L, Wenzel, J, Ruef, A, Dwyer, D, Ferro, A, Borgwardt, S, Kambeitz, J, Lichtenstein, TK, Meisenzahl, E, Pantelis, C, Rosen, M, Upthegrove, R, Antonucci, LA, Bertolino, A, Lencer, R, Ruhrmann, S, Salokangas, RRK, Schultze-Lutter, F, Chisholm, K, Stainton, A, Wood, SJ, Koutsouleris, N, and Brambilla, P
- Abstract
OBJECTIVE: Psychotic disorders are frequently associated with decline in functioning and cognitive difficulties are observed in subjects at clinical high risk (CHR) for psychosis. In this work, we applied automatic approaches to neurocognitive and functioning measures, with the aim of investigating the link between global, social and occupational functioning, and cognition. METHODS: 102 CHR subjects and 110 patients with recent onset depression (ROD) were recruited. Global assessment of functioning (GAF) related to symptoms (GAF-S) and disability (GAF-D). and global functioning social (GF-S) and role (GF-R), at baseline and of the previous month and year, and a set of neurocognitive measures, were used for classification and regression. RESULTS: Neurocognitive measures related to GF-R at baseline (r = 0.20, p = 0.004), GF-S at present (r = 0.14, p = 0.042) and of the past year (r = 0.19, p = 0.005), for GAF-F of the past month (r = 0.24, p < 0.001) and GAF-D of the past year (r = 0.28, p = 0.002). Classification reached values of balanced accuracy of 61% for GF-R and GAF-D. CONCLUSION: We found that neurocognition was related to psychosocial functioning. More specifically, a deficit in executive functions was associated to poor social and occupational functioning.
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- 2022
22. Adhärenz in der Psychopharmakologie: Psychotherapeutische Strategien zur Adhärenzförderung
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Lencer, R. and Korn, D.
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- 2015
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23. Brain based BMIgap as a new tool to correlate obesity and neural alterations – a multicohort study
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Khuntia, A., Paul, R., Andreassen, O.A., Degenhard, F., Eils, R., Erdmann, J., Herrmann, C., Hofmann-Apitius, M., Kaufmann, T., Kodamullil, A.T., Mucha, S., Nöthen, M.M., Pedersen, M.L., Quintero, A., Schunkert, H., Sharma, A., Tost, H., Westlye, L.T., Zhang, Y., Kambeitz, J., Salokangas, R.K.R., Hietala, J., Bertolino, A., Brambilla, P., Upthegrove, R., Wood, S.J., Lencer, R., Borgwardt, S., Meyer-Lindenberg, A., Meisenzahl, E., Falkai, P., Schwarz, E., and Koutsouleris, N.
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- 2022
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24. Transdiagnostic individualised brain texture changes that are associated with symptom severity using contrast feature map
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Korda, A., Andreou, C., Ruef, A., Lencer, R., Schmidt, A., Dannlowski, U., Kambeitz-Ilankovic, L., Dwyer, D.B., Kambeitz, J., Wenzel, J., Ruhrmann, S., Salokangas, R.K.R., Pantelis, C., Schultze-Lutter, F., Meisenzahl, E., Brambilla, P., Lalousis, P.A., Upthegrove, R., Koutsouleris, N., and Borgwardt, S.
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- 2022
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25. Structural alterations in psychotic disorders co-localize with serotonergic and dopaminergic neurotransmitter systems
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Hahn, L., Raabe, F.J., Keeser, D., Rossner, M.J., Hasan, A., Papzova, I., Kambeitz, J., Salokangas, R.K.R., Hietala, J., Bertolino, A., Brambilla, P., Upthegrove, R., Wood, S.J., Lencer, R., Borgwardt, S., Meyer-Lindenberg, A., Meisenzahl, E., Fabbro, F., Schwarz, E., Pantelis, C., Nöthen, M.M., Mann, M., Ruef, A., Paul, R., Falkai, P., and Koutsouleris, N.
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- 2022
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26. Identification of subtle visual dysfunctions in recent onset psychosis and clinical high-risk state using entropy and energy feature maps
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Korda, A., Meyhöfer, I., Romer, G., Dannlowski, U., Andreou, C., Schmidt, A., Kambeitz-Ilankovic, L., Dwyer, D.B., Ruef, A., Kambeitz, J., Ruhrmann, S., Salokangas, R.K.R., Pantelis, C., Schultze-Lutter, F., Meisenzahl, E., Brambilla, P., Bertolino, A., Upthegrove, R., Koutsouleris, N., Borgwardt, S., and Lencer, R.
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- 2022
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27. Multiband fractional amplitude of low-frequency fluctuations predicts social functioning transdiagnostically in the clinical high-risk for psychosis state and recent-onset depression
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Buciuman, M.O., Haas, S.S., Antonucci, L.A., Kambeitz-Ilankovic, L., Ruef, A., Hasan, A., Borgwardt, S., Schwarz, E., Kambeitz, J., Meyer-Lindenberg, A., Pantelis, C., Degenhardt, F., Noethen, M., Lencer, R., Fabbro, F., Bertolino, A., Brambilla, P., Upthegrove, R., Wood, S.J., Falkai, P., Meisenzahl-Lechner, E., Hietala, J., Salokangas, R.K.R., Dwyer, D.B., and Koutsouleris, N.
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- 2022
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28. Symptom Monitoring based on Digital Data Collection During Inpatient Treatment of Schizophrenia Spectrum Disorders – a Feasibility Study
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Julian Varghese, Bernhardt T. Baune, Janik Goltermann, Martin Dugas, Rogério Blitz, Herpertz J, Maike Richter, Lencer R, Steinmann La, Udo Dannlowski, Michael Storck, Barkhau C, and Nils Opel
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medicine.medical_specialty ,Data collection ,business.industry ,media_common.quotation_subject ,Symptom monitoring ,Data entry ,Digital exclusion ,Clinical routine ,Symptom profiles ,Feeling ,Medicine ,business ,Psychiatry ,media_common ,Schizophrenia spectrum - Abstract
BackgroundDigital acquisition of risk factors and symptoms based on patients’ self-reports represents a promising, cost-efficient and increasingly prevalent approach for standardized data collection in psychiatric clinical routine. While the feasibility of digital data collection has been demonstrated across a range of psychiatric disorders, studies investigating digital data collection in schizophrenia spectrum disorder patients are scarce. Hence, up to now our knowledge about the acceptability and feasibility of digital data collection in patients with a schizophrenia spectrum disorder remains critically limited.ObjectiveThe objective of this study was to explore the acceptance towards and performance with digitally acquired assessments of risk and symptom profiles in patients with a schizophrenia spectrum disorder in comparison with patients with an affective disorder.MethodsWe investigated the acceptance, the required support and the data entry pace of patients during a longitudinal digital data collection system of risk and symptom profiles using self-reports on tablet computers throughout inpatient treatment in patients with a schizophrenia spectrum disorder. As a benchmark comparison, findings in patients with schizophrenia spectrum disorder were evaluated in direct comparison with findings in affective disorder patients. The influence of sociodemographic data and clinical characteristics on the assessment was explored. The study was performed at the Department of Psychiatry at the University of Münster between February 2020 and February 2021.ResultsOf 82 patients diagnosed with a schizophrenia spectrum disorder who were eligible for inclusion 59.8% (n=49) agreed to participate in the study of whom 54.2% (n=26) could enter data without any assistance. Inclusion rates, drop-out rates and subjective experience ratings did not differ between patients with a schizophrenia spectrum disorder and patients with an affective disorder. Out of all participating patients, 98% reported high satisfaction with the digital assessment. Patients with a schizophrenia spectrum disorder needed more support and more time for the assessment compared to patients with an affective disorder. The extent of support of patients with a schizophrenia spectrum disorder was predicted by age, whereas the feeling of self-efficacy predicted data entry pace.ConclusionOur results indicate that, although patients with a schizophrenia spectrum disorder need more support and more time for data entry than patients with an affective disorder, digital data collection using patients’ self-reports is a feasible and well-received method. Future clinical and research efforts on digitized assessments in psychiatry should include patients with a schizophrenia spectrum disorder and offer adequate support to reduce digital exclusion of these patients.
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- 2021
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29. Association between age of cannabis initiation and gray matter covariance networks in recent onset psychosis
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Penzel, N., Antonucci, L. A., Betz, L. T., Sanfelici, R., Weiske, J., Pogarell, O., Cumming, P., Quednow, B. B., Howes, O., Falkai, P., Upthegrove, R., Bertolino, A., Borgwardt, S., Brambilla, P., Lencer, R., Meisenzahl, E., Rosen, M., Haidl, T., Kambeitz-Ilankovic, L., Ruhrmann, S., Salokangas, R. R. K., Pantelis, C., Wood, S. J., Koutsouleris, N., Kambeitz, J., Sen Dong, M., Erkens, A., Gussmann, E., Haas, S., Hasan, A., Hoff, C., Khanyaree, I., Melo, A., Muckenhuber-Sternbauer, S., Kohler, J., Ozturk, O. F., Popovic, D., Rangnick, A., von Saldern, S., Spangemacher, M., Tupac, A., Urquijo, M. F., Wosgien, A., Betz, L., Blume, K., Seves, M., Kaiser, N., Pilgram, T., Lichtenstein, T., Wenzel, J., Woopen, C., Andreou, C., Egloff, L., Harrisberger, F., Lenz, C., Leanza, L., Mackintosh, A., Smieskova, R., Studerus, E., Walter, A., Widmayer, S., Chisholm, K., Day, C., Griffiths, S. L., Iqbal, M., Pelton, M., Mallikarjun, P., Stainton, A., Lin, A., Salokangas, R. K. R., Denissoff, A., Ellila, A., From, T., Heinimaa, M., Ilonen, T., Jalo, P., Laurikainen, H., Lehtinen, M., Luutonen, A., Makela, A., Paju, J., Pesonen, H., Armio (Saila), R. -L., Sormunen, E., Toivonen, A., Turtonen, O., Solana, A. B., Abraham, M., Hehn, N., Schirmer, T., Altamura, C., Belleri, M., Bottinelli, F., Ferro, A., Re, M., Monzani, E., Percudani, M., Sberna, M., D'Agostino, A., Del Fabro, L., Perna, G., Nobile, M., Alciati, A., Balestrieri, M., Bonivento, C., Cabras, G., Fabbro, F., Garzitto, M., Piccin, S., Blasi, G., Pergola, G., Caforio, G., Faio, L., Quarto, T., Gelao, B., Romano, R., Andriola, I., Falsetti, A., Barone, M., Passatiore, R., Sangiuliano, M., Surman, M., Bienek, O., Romer, G., Dannlowski, U., Schultze-Lutter, F., Schmidt-Kraepelin, C., Neufang, S., Korda, A., and Rohner, H.
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Psychosis ,Adolescent ,Inferior frontal gyrus ,610 Medicine & health ,Article ,medicine ,Humans ,Gray Matter ,Association (psychology) ,Cannabis ,Pharmacology ,biology ,business.industry ,Confounding ,medicine.disease ,biology.organism_classification ,Magnetic Resonance Imaging ,Psychiatry and Mental health ,Risk factors ,Psychotic Disorders ,Schizophrenia ,Cohort ,business ,Insula ,Neuroscience ,Clinical psychology - Abstract
Cannabis use during adolescence is associated with an increased risk of developing psychosis. According to a current hypothesis, this results from detrimental effects of early cannabis use on brain maturation during this vulnerable period. However, studies investigating the interaction between early cannabis use and brain structural alterations hitherto reported inconclusive findings. We investigated effects of age of cannabis initiation on psychosis using data from the multicentric Personalized Prognostic Tools for Early Psychosis Management (PRONIA) and the Cannabis Induced Psychosis (CIP) studies, yielding a total sample of 102 clinically-relevant cannabis users with recent onset psychosis. GM covariance underlies shared maturational processes. Therefore, we performed source-based morphometry analysis with spatial constraints on structural brain networks showing significant alterations in schizophrenia in a previous multisite study, thus testing associations of these networks with the age of cannabis initiation and with confounding factors. Earlier cannabis initiation was associated with more severe positive symptoms in our cohort. Greater gray matter volume (GMV) in the previously identified cerebellar schizophrenia-related network had a significant association with early cannabis use, independent of several possibly confounding factors. Moreover, GMV in the cerebellar network was associated with lower volume in another network previously associated with schizophrenia, comprising the insula, superior temporal, and inferior frontal gyrus. These findings are in line with previous investigations in healthy cannabis users, and suggest that early initiation of cannabis perturbs the developmental trajectory of certain structural brain networks in a manner imparting risk for psychosis later in life.
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- 2021
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30. Heterogeneity and Classification of Recent Onset Psychosis and Depression: A Multimodal Machine Learning Approach
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Lalousis, PA, Wood, SJ, Schmaal, L, Chisholm, K, Griffiths, S, Reniers, R, Bertolino, A, Borgwardt, S, Brambilla, P, Kambeitz, J, Lencer, R, Pantelis, C, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Bonivento, C, Dwyer, DB, Ferro, A, Haidl, T, Rosen, M, Schmidt, A, Meisenzahl, E, Koutsouleris, N, Upthegrove, R, Lalousis, PA, Wood, SJ, Schmaal, L, Chisholm, K, Griffiths, S, Reniers, R, Bertolino, A, Borgwardt, S, Brambilla, P, Kambeitz, J, Lencer, R, Pantelis, C, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Bonivento, C, Dwyer, DB, Ferro, A, Haidl, T, Rosen, M, Schmidt, A, Meisenzahl, E, Koutsouleris, N, and Upthegrove, R
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- 2021
31. Association between age of cannabis initiation and gray matter covariance networks in recent onset psychosis
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Penzel, N, Antonucci, LA, Betz, LT, Sanfelici, R, Weiske, J, Pogarell, O, Cumming, P, Quednow, BB, Howes, O, Falkai, P, Upthegrove, R, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Rosen, M, Haidl, T, Kambeitz-Ilankovic, L, Ruhrmann, S, Salokangas, RRK, Pantelis, C, Wood, SJ, Koutsouleris, N, Kambeitz, J, Penzel, N, Antonucci, LA, Betz, LT, Sanfelici, R, Weiske, J, Pogarell, O, Cumming, P, Quednow, BB, Howes, O, Falkai, P, Upthegrove, R, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Rosen, M, Haidl, T, Kambeitz-Ilankovic, L, Ruhrmann, S, Salokangas, RRK, Pantelis, C, Wood, SJ, Koutsouleris, N, and Kambeitz, J
- Abstract
Cannabis use during adolescence is associated with an increased risk of developing psychosis. According to a current hypothesis, this results from detrimental effects of early cannabis use on brain maturation during this vulnerable period. However, studies investigating the interaction between early cannabis use and brain structural alterations hitherto reported inconclusive findings. We investigated effects of age of cannabis initiation on psychosis using data from the multicentric Personalized Prognostic Tools for Early Psychosis Management (PRONIA) and the Cannabis Induced Psychosis (CIP) studies, yielding a total sample of 102 clinically-relevant cannabis users with recent onset psychosis. GM covariance underlies shared maturational processes. Therefore, we performed source-based morphometry analysis with spatial constraints on structural brain networks showing significant alterations in schizophrenia in a previous multisite study, thus testing associations of these networks with the age of cannabis initiation and with confounding factors. Earlier cannabis initiation was associated with more severe positive symptoms in our cohort. Greater gray matter volume (GMV) in the previously identified cerebellar schizophrenia-related network had a significant association with early cannabis use, independent of several possibly confounding factors. Moreover, GMV in the cerebellar network was associated with lower volume in another network previously associated with schizophrenia, comprising the insula, superior temporal, and inferior frontal gyrus. These findings are in line with previous investigations in healthy cannabis users, and suggest that early initiation of cannabis perturbs the developmental trajectory of certain structural brain networks in a manner imparting risk for psychosis later in life.
- Published
- 2021
32. Multimodal Machine Learning Workflows for Prediction of Psychosis in Patients With Clinical High-Risk Syndromes and Recent-Onset Depression
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Koutsouleris, N, Dwyer, DB, Degenhardt, F, Maj, C, Urquijo-Castro, MF, Sanfelici, R, Popovic, D, Oeztuerk, O, Haas, SS, Weiske, J, Ruef, A, Kambeitz-Ilankovic, L, Antonucci, LA, Neufang, S, Schmidt-Kraepelin, C, Ruhrmann, S, Penzel, N, Kambeitz, J, Haidl, TK, Rosen, M, Chisholm, K, Riecher-Rossler, A, Egloff, L, Schmidt, A, Andreou, C, Hietala, J, Schirmer, T, Romer, G, Walger, P, Franscini, M, Traber-Walker, N, Schimmelmann, BG, Fluckiger, R, Michel, C, Rossler, W, Borisov, O, Krawitz, PM, Heekeren, K, Buechler, R, Pantelis, C, Falkai, P, Salokangas, RKR, Lencer, R, Bertolino, A, Borgwardt, S, Noethen, M, Brambilla, P, Wood, SJ, Upthegrove, R, Schultze-Lutter, F, Theodoridou, A, Meisenzahl, E, Koutsouleris, N, Dwyer, DB, Degenhardt, F, Maj, C, Urquijo-Castro, MF, Sanfelici, R, Popovic, D, Oeztuerk, O, Haas, SS, Weiske, J, Ruef, A, Kambeitz-Ilankovic, L, Antonucci, LA, Neufang, S, Schmidt-Kraepelin, C, Ruhrmann, S, Penzel, N, Kambeitz, J, Haidl, TK, Rosen, M, Chisholm, K, Riecher-Rossler, A, Egloff, L, Schmidt, A, Andreou, C, Hietala, J, Schirmer, T, Romer, G, Walger, P, Franscini, M, Traber-Walker, N, Schimmelmann, BG, Fluckiger, R, Michel, C, Rossler, W, Borisov, O, Krawitz, PM, Heekeren, K, Buechler, R, Pantelis, C, Falkai, P, Salokangas, RKR, Lencer, R, Bertolino, A, Borgwardt, S, Noethen, M, Brambilla, P, Wood, SJ, Upthegrove, R, Schultze-Lutter, F, Theodoridou, A, and Meisenzahl, E
- Abstract
IMPORTANCE: Diverse models have been developed to predict psychosis in patients with clinical high-risk (CHR) states. Whether prediction can be improved by efficiently combining clinical and biological models and by broadening the risk spectrum to young patients with depressive syndromes remains unclear. OBJECTIVES: To evaluate whether psychosis transition can be predicted in patients with CHR or recent-onset depression (ROD) using multimodal machine learning that optimally integrates clinical and neurocognitive data, structural magnetic resonance imaging (sMRI), and polygenic risk scores (PRS) for schizophrenia; to assess models' geographic generalizability; to test and integrate clinicians' predictions; and to maximize clinical utility by building a sequential prognostic system. DESIGN, SETTING, AND PARTICIPANTS: This multisite, longitudinal prognostic study performed in 7 academic early recognition services in 5 European countries followed up patients with CHR syndromes or ROD and healthy volunteers. The referred sample of 167 patients with CHR syndromes and 167 with ROD was recruited from February 1, 2014, to May 31, 2017, of whom 26 (23 with CHR syndromes and 3 with ROD) developed psychosis. Patients with 18-month follow-up (n = 246) were used for model training and leave-one-site-out cross-validation. The remaining 88 patients with nontransition served as the validation of model specificity. Three hundred thirty-four healthy volunteers provided a normative sample for prognostic signature evaluation. Three independent Swiss projects contributed a further 45 cases with psychosis transition and 600 with nontransition for the external validation of clinical-neurocognitive, sMRI-based, and combined models. Data were analyzed from January 1, 2019, to March 31, 2020. MAIN OUTCOMES AND MEASURES: Accuracy and generalizability of prognostic systems. RESULTS: A total of 668 individuals (334 patients and 334 controls) were included in the analysis (mean [SD] age, 25.1 [5.
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- 2021
33. Exploring Associations between Grey Matter Volume and Clinical High-Risk for Psychosis: A Transdiagnostic Study Utilizing the NAPLS-2 Risk Calculator in the PRONIA Cohort.
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Neuner, L.-M., Hahn, L., Kambeitz, J., Salokangas, R. K., Hietala, J., Bertolino, A., Borgwardt, S., Brambilla, P., Upthegrove, R., Wood, S. J., Lencer, R., Meisenzahl, E., Falkai, P., Cannon, T. D., and Koutsouleris, N.
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DISEASE risk factors ,MAGNETIC resonance imaging ,NEURAL development ,PROGNOSTIC tests ,MULTIPLE comparisons (Statistics) - Abstract
Introduction: The clinical high-risk state for psychosis (CHR) is associated with alterations in grey matter volume (GMV) in various regions such as the hippocampus (Vissink et al. BP:GOS 2022; 2(2) 147-152). Within the scope of the North American Prodrome Longitudinal Study (NAPLS-2; Cannon et al. AM J Psychiatry 2016; 173(10), 980-988), a publicly available risk calculator based on clinical variables was developed to assess the likelihood of individuals to transition to psychosis within a 2-year period. Objectives: In the current study, we aim to examine the association between GMV and NAPLS-2 risk scores calculated for individuals with CHR and recent-onset depression (ROD), taking a transdiagnostic approach on the transition to psychosis. Methods: The sample consisted of 315 CHR (M = 23.85, SD = ± 5.64; female: 164) and 295 ROD (M = 25.11, SD = ± 6.21; female: 144) patients from the multi-site Personalised Prognostic Tools for Early Psychosis Management (PRONIA) Study (Koutsouleris et al. JAMA Psychiatry 2018; 57(11), 1156-1172). Risk scores were calculated using the six clinical and neurocognitive variables included in the NAPLS-2 risk calculator that were significant for predicting psychosis. Further, we derived smoothed GMV maps from T1-weighted structural magnetic resonance imaging using a full width at half maximum kernel size of 8 mm. We employed a multiple regression design in SPM12 to examine associations between risk scores and GMV. On the whole-brain level, we calculated permutation-based threshold-free cluster enhancement (TFCE) contrasts using the TFCE toolbox. Additionally, we calculated t-contrasts within a region-of-interest (ROI) analysis encompassing the hippocampus. All results were thresholded at p < 0.05 with family wise error correction to address multiple comparisons. Results: Our analysis revealed that linear GMV increases in the right middle and superior frontal gyrus (k
E = 2726 voxels) were significantly associated with higher risk for psychosis transition within two years (see figure 1, highlighted in blue). In the ROI analysis, we found a significant negative linear association between GMV decreases in the left hippocampus (kE = 353 voxels) and higher risk for psychosis transition (see figure 1, highlighted in red). Image: Conclusions: GMV reductions in the hippocampus have frequently been observed in CHR and psychosis patients (Vissink et al. BP:GOS 2022; 2(2) 147-152), therefore our results further highlight the crucial role of this region in the progression of the disease. There is limited evidence on GMV increases in CHR patients. However, the GMV increase we found in the frontal pole may reflect compensatory mechanisms of the brain in the development of psychosis. In addition, we were able to provide biological validation of the NAPLS-2 risk calculator and its assessment of risk for transition to psychosis. Disclosure of Interest: None Declared [ABSTRACT FROM AUTHOR]- Published
- 2024
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34. Multivariate associations between psychiatric drug intake and grey matter volume changes in individuals at early stages of psychosis and depression.
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Weyer, C., Popovic, D., Ruef, A., Hahn, L., Sarişik, E., Fanning, J., Kambeitz, J., Salokangas, R. K., Hietala, J., Bertolino, A., Borgwardt, S., Brambilla, P., Upthegrove, R., Wood, S. J., Lencer, R., Meisenzahl, E., Falkai, P., and Koutsouleris, N.
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PSYCHIATRIC drugs ,SUSTAINABILITY ,MAGNETIC resonance imaging ,TEMPORAL lobe ,BRAIN anatomy ,FIVE-factor model of personality - Abstract
Introduction: Psychiatric drugs, including antipsychotics and antidepressants, are widely prescribed, even in young and adolescent populations at early or subthreshold disease stages. However, their impact on brain structure remains elusive. Elucidating the relationship between psychotropic medication and structural brain changes could enhance the understanding of the potential benefits and risks associated with such treatment. Objectives: Investigation of the associations between psychiatric drug intake and longitudinal grey matter volume (GMV) changes in a transdiagnostic sample of young individuals at early stages of psychosis or depression using an unbiased data-driven approach. Methods: The study sample comprised 247 participants (mean [SD] age = 25.06 [6.13] years, 50.61% male), consisting of young, minimally medicated individuals at clinical high-risk states for psychosis, individuals with recent-onset depression or psychosis, and healthy control individuals. Structural magnetic resonance imaging was used to obtain whole-brain voxel-wise GMV for all participants at two timepoints (mean [SD] time between scans = 11.15 [4.93] months). The multivariate sparse partial least squares (SPLS) algorithm (Monteiro et al. JNMEDT 2016; 271:182-194) was embedded in a nested cross-validation framework to identify parsimonious associations between the cumulative intake of psychiatric drugs, including commonly prescribed antipsychotics and antidepressants, and change in GMV between both timepoints, while additionally factoring in age, sex, and diagnosis. Furthermore, we correlated the retrieved SPLS results to personality domains (NEO-FFI) and childhood trauma (CTQ). Results: SPLS analysis revealed significant associations between the antipsychotic classes of benzamides, butyrophenones and thioxanthenes and longitudinal GMV decreases in cortical regions including the insula, posterior superior temporal sulcus as well as cingulate, postcentral, precentral, orbital and frontal gyri (Figure 1A-C). These brain regions corresponded most closely to the dorsal and ventral attention, somatomotor, salience and default network (Figure 1D). Furthermore, the medication signature was negatively associated with the personality domains extraversion, agreeableness and conscientiousness and positively associated with the CTQ domains emotional and physical neglect. Image: Conclusions: Psychiatric drug intake over a period of one year was linked to distinct GMV reductions in key cortical hubs. These patterns were already visible in young individuals at early or subthreshold stages of mental illness and were further linked to childhood neglect and personality traits. Hence, a better and more in-depth understanding of the structural brain implications of medicating young and adolescent individuals might lead to more cautious, sustainable and targeted treatment strategies. Disclosure of Interest: None Declared [ABSTRACT FROM AUTHOR]
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- 2024
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35. Primary focal dystonia: evidence for distinct neuropsychiatric and personality profiles
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Lencer, R., Steinlechner, S., Stahlberg, J., Rehling, H., Orth, M., Baeumer, T., Rumpf, H.-J., Meyer, C., Klein, C., Muenchau, A., and Hagenah, J.
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Dystonia -- Diagnosis ,Dystonia -- Psychological aspects ,Social phobia -- Diagnosis ,Personality -- Evaluation ,Health ,Psychology and mental health - Published
- 2009
36. Cognitive subtypes in recent onset psychosis: distinct neurobiological fingerprints?
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Wenzel, J., Haas, S. S., Dwyer, D. B., Ruef, A., Oeztuerk, O. F., Antonucci, L. A., von Saldern, S., Bonivento, C., Garzitto, M., Ferro, A., Paolini, M., Blautzik, J., Borgwardt, S., Brambilla, P., Meisenzahl, E., Salokangas, R. K. R., Upthegrove, R., Wood, S. J., Kambeitz, J., Koutsouleris, N., Kambeitz-Ilankovic, L., Sen Dong, M., Erkens, A., Gussmann, E., Haas, S., Hasan, A., Hoff, C., Khanyaree, I., Melo, A., Muckenhuber-Sternbauer, S., Kohler, J., Popovic, D., Penzel, N., Rangnick, A., Sanfelici, R., Spangemacher, M., Tupac, A., Urquijo, M. F., Weiske, J., Wosgien, A., Ruhrmann, S., Rosen, M., Betz, L., Haidl, T., Blume, K., Seves, M., Kaiser, N., Pilgram, T., Lichtenstein, T., Woopen, C., Andreou, C., Egloff, L., Harrisberger, F., Lenz, C., Leanza, L., Mackintosh, A., Smieskova, R., Studerus, E., Walter, A., Widmayer, S., Chisholm, K., Day, C., Griffiths, S. L., Iqbal, M., Lalousis, P., Pelton, M., Mallikarjun, P., Stainton, A., Lin, A., Denissoff, A., Ellila, A., Tiina From, R. N., Heinimaa, M., Ilonen, T., Jalo, P., Heikki Laurikainen, R. N., Lehtinen, M., Antti Luutonen, R. N., Makela, A., Paju, J., Pesonen, H., Armio (Saila), R. -L., Sormunen, E., Toivonen, A., Turtonen, O., Solana, A. B., Abraham, M., Hehn, N., Schirmer, T., Altamura, C., Belleri, M., Bottinelli, F., Re, M., Monzani, E., Percudani, M., Sberna, M., D'Agostino, A., Del Fabro, L., Menni, V. S. B., Perna, G., Nobile, M., Alciati, A., Balestrieri, M., Cabras, G., Fabbro, F., Piccin, S., Bertolino, A., Blasi, G., Pergola, G., Caforio, G., Faio, L., Quarto, T., Gelao, B., Romano, R., Andriola, I., Falsetti, A., Barone, M., Passatiore, R., Sangiuliano, M., Lencer, R., Surman, M., Bienek, O., Romer, G., Dannlowski, U., Schultze-Lutter, F., Schmidt-Kraepelin, C., Neufang, S., Korda, A., and Rohner, H.
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medicine.medical_specialty ,Psychosis ,Audiology ,Article ,Cognition ,Social cognition ,medicine ,Humans ,Effects of sleep deprivation on cognitive performance ,Gray Matter ,Pharmacology ,medicine.diagnostic_test ,business.industry ,Brain ,Diagnostic markers ,Cognitive neuroscience ,Neuropsychological test ,medicine.disease ,Psychiatry and Mental health ,Psychotic Disorders ,Schizophrenia ,Verbal memory ,business ,Neurocognitive - Abstract
In schizophrenia, neurocognitive subtypes can be distinguished based on cognitive performance and they are associated with neuroanatomical alterations. We investigated the existence of cognitive subtypes in shortly medicated recent onset psychosis patients, their underlying gray matter volume patterns and clinical characteristics. We used a K-means algorithm to cluster 108 psychosis patients from the multi-site EU PRONIA (Prognostic tools for early psychosis management) study based on cognitive performance and validated the solution independently (N = 53). Cognitive subgroups and healthy controls (HC; n = 195) were classified based on gray matter volume (GMV) using Support Vector Machine classification. A cognitively spared (N = 67) and impaired (N = 41) subgroup were revealed and partially independently validated (Nspared = 40, Nimpaired = 13). Impaired patients showed significantly increased negative symptomatology (pfdr = 0.003), reduced cognitive performance (pfdr pfdr p = 0.01) separating impaired patients from HC revealed increases and decreases across several fronto-temporal-parietal brain areas, including basal ganglia and cerebellum. Cognitive and functional disturbances alongside brain morphological changes in the impaired subgroup are consistent with a neurodevelopmental origin of psychosis. Our findings emphasize the relevance of tailored intervention early in the course of psychosis for patients suffering from the likely stronger neurodevelopmental character of the disease.
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- 2020
37. S219. SINGLE-SUBJECT PREDICTION OF FUNCTIONAL OUTCOMES ACROSS DIAGNOSTIC GROUPS USING CLINICAL DATA
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Rosen, M, Kaiser, N, Betz, L, Haidl, T, Seves, M, Pilgram, T, Schultze-Lutter, F, Chisholm, K, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Upthegrove, R, Wood, S, Koutsouleris, N, Kambeitz, J, Rosen, M, Kaiser, N, Betz, L, Haidl, T, Seves, M, Pilgram, T, Schultze-Lutter, F, Chisholm, K, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Upthegrove, R, Wood, S, Koutsouleris, N, and Kambeitz, J
- Abstract
Background Psychotic disorders are associated with serious deterioration in functioning even before the first psychotic episode. Also on clinical high risk (CHR) states of developing a first psychotic episode, several studies reported a decreased global functioning. In a considerable proportion of CHR individuals, functional deterioration remains even after (transient) remission of symptomatic risk indicators. Furthermore, deficits in functioning cause immense costs for the health care system and are often more debilitating for individuals than positive symptoms. However in the past, CHR research has mostly focused on clinical outcomes like transition. Prediction of functioning in CHR populations has received less attention. Therefore, the current study aims at predicting functioning in CHR individuals at a single subject level applying multi pattern recognition to clinical data. Patients with a first depressive episode who frequently have persistent functional deficits comparable to patients in the CHR state were investigated in addition. Methods PRONIA (‘Personalized Prognostic Tools for Early Psychosis Management’) is a prospective collaboration project funded by the European Union under the 7th Framework Programme (grant agreement n°602152). Considering a broad set of variables (MRI, clinical data, neurocognition, genomics and other blood derived parameters) as well as advanced statistical methods, PRONIA aims at developing an innovative multivariate prognostic tool enabling an individualized prediction of illness trajectories and outcome. 11 university centers in five European countries and in Australia (Munich, Basel, Birmingham, Cologne, Düsseldorf, Münster, Melbourne, Milan, Udine, Bari, Turku) participate in the evaluation of three clinical groups (subjects clinically at high risk of developing a psychosis [CHR], patients with a recent onset psychosis [ROP] and patients with a recent onset depression [ROD]) as well as healthy controls. In the curre
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- 2020
38. M121. CLINICAL PREDICTION MODELS FOR TRANSITION TO PSYCHOSIS: AN EXTERNAL VALIDATION STUDY IN THE PRONIA SAMPLE
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Rosen, M, Betz, L, Bertolino, A, Borgwardt, S, Brambilla, P, Chisholm, K, Kambeitz-Ilankovic, L, Haidl, T, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Upthegrove, R, Wood, SJ, Koutsouleris, N, Kambeitz, J, Rosen, M, Betz, L, Bertolino, A, Borgwardt, S, Brambilla, P, Chisholm, K, Kambeitz-Ilankovic, L, Haidl, T, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Upthegrove, R, Wood, SJ, Koutsouleris, N, and Kambeitz, J
- Abstract
Background A multitude of clinical models to predict transition to psychosis in individuals at clinical high risk (CHR) have been proposed. However, only limited efforts have been made to systematically compare these models and to validate their performance in independent samples. Therefore, in this study we identified psychosis risk models based on information readily obtainable in general clinical settings, such as clinical and neuropsychological data, and compared their performance in the PRONIA study (Personalised Prognostic Tools for Early Psychosis Management, www.pronia.eu) as an independent sample. Methods Of the 278 CHR participants in the PRONIA sample, 150 had available data until month 18 and were included in the validation of eleven psychosis prediction models identified through systematic literature search. Discrimination performance was assessed with the area under the receiver operating characteristic curve (AUC), and compared to the performance of the prognosis of clinical raters. Psychosocial functioning was explored as an alternative outcome. Results Discrimination performance varied considerably across models (AUC ranging from 0.42 to 0.79). High model performance was associated with the inclusion of neurocognitive variables as predictors. Low model performance was associated with predictors based on dichotomized variables. Clinical raters performed comparable to the best data-driven models (AUC = 0.75). Combining raters’ prognosis and model-based predictions improved discrimination performance (AUC = 0.84), particularly for less experienced raters. One of the tested models predicted transition to psychosis and psychosocial outcomes comparably well. Discussion The present external validation study highlights the benefit of enriching clinical information with neuropsychological data in predicting transition to psychosis satisfactorily and with good generalizability across samples. Integration of data-driven risk models and clinical expert
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- 2020
39. M1. INVESTIGATING THE RELATIONSHIP BETWEEN CHILDHOOD TRAUMA AND PSYCHIATRIC DISEASE USING MACHINE LEARNING TECHNIQUES
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Haidl, T, Hedderich, D, Rosen, M, Lichtenstein, T, Kaiser, N, Seves, M, Ruef, A, Schultze-Lutter, F, Upthegrove, R, Salokangas, RKR, Pantelis, C, Meisenzahl, E, Wood, SJ, Brambilla, P, Borgwardt, S, Lencer, R, Ruhrmann, S, Kambeitz, J, Koutsouleris, N, Haidl, T, Hedderich, D, Rosen, M, Lichtenstein, T, Kaiser, N, Seves, M, Ruef, A, Schultze-Lutter, F, Upthegrove, R, Salokangas, RKR, Pantelis, C, Meisenzahl, E, Wood, SJ, Brambilla, P, Borgwardt, S, Lencer, R, Ruhrmann, S, Kambeitz, J, and Koutsouleris, N
- Abstract
Background Childhood trauma (CT) is associated with an increased risk for psychiatric disorders like major depression and psychosis. However, the pathophysiological relationship between CT, psychiatric disease and structural brain alterations is still unknown. Methods PRONIA (‘Personalized Prognostic Tools for Early Psychosis Mangement’) is a prospective collaboration project funded by the European Union under the 7th Framework Programme (grant agreement n° 602152). Considering a broad set of variables (sMRI, rsMRI, DTI, psychopathological, life event related and sociobiographic data, neurocognition, genomics and other blood derived parameters) as well as advanced statistical methods, PRONIA aims at developing an innovative multivariate prognostic tool enabling an individualized prediction of illness trajectories and outcome. Seven clinical centers in five European countries and in Australia participate in the evaluation of three clinical groups (subjects clinically at high risk of developing a psychosis (CHR), patients with a recent onset psychosis (ROP) and patients with a recent onset depression (ROD)) as well as healthy controls (HC). To investigate the high-dimensional patterns of CT experience, measured by the childhood trauma questionnaire (CTQ), in HC and our three patient groups (PAT) (n=643), we used a Support Vector Machine (SVM). Furthermore, we tested whether patient-specific CT exposure is associated with structural brain changes by VBM analyses. Results We found that patients and HC could be separated very well by their CTQ pattern, whereas the different patient groups showed no specific CTQ pattern. Furthermore, an association with extensive grey matter changes suggests an impact on brain maturation which may put individuals at increased risk for mental disease. Discussion We have demonstrated in this large multi-center cohort that adverse experiences in childhood contribute transdiagnostically to the riskr for developing a psychiatric disea
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- 2020
40. T223. MULTIVARIATE PREDICTION OF FOLLOW UP SOCIAL AND OCCUPATIONAL OUTCOME IN CLINICAL HIGH-RISK INDIVIDUALS BASED ON GRAY MATTER VOLUMES AND HISTORY OF ENVIRONMENTAL ADVERSE EVENTS
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Antonucci, L, Pigoni, A, Sanfelici, R, Kambeitz-Ilankovic, L, Dwyer, D, Ruef, A, Chisholm, K, Haidl, T, Rosen, M, Kambeitz, J, Ruhrmann, S, Schultze-Lutter, F, Falkai, P, Lencer, R, Dannlowski, U, Upthegrove, R, Salokangas, R, Pantelis, C, Meisenzahl, E, Wood, S, Brambilla, P, Borgwardt, S, Bertolino, A, Koutsouleris, N, Antonucci, L, Pigoni, A, Sanfelici, R, Kambeitz-Ilankovic, L, Dwyer, D, Ruef, A, Chisholm, K, Haidl, T, Rosen, M, Kambeitz, J, Ruhrmann, S, Schultze-Lutter, F, Falkai, P, Lencer, R, Dannlowski, U, Upthegrove, R, Salokangas, R, Pantelis, C, Meisenzahl, E, Wood, S, Brambilla, P, Borgwardt, S, Bertolino, A, and Koutsouleris, N
- Abstract
Background Functional deficits associated with the Clinical High Risk (CHR) status very often lead to inability to attend school, unemployment, as well as social isolation, thus calling for predictors of individual functional outcomes which may facilitate the identification of people requiring care irrespective of transition to psychosis. Studies have revealed that a pattern of cortical and subcortical gray matter volumes (GMV) anomalies measured at baseline in CHR individuals could predict their functional abilities at follow up. Furthermore, literature is consistent in revealing the crucial role of several environmental adverse events in increasing the risk of developing either transition to psychosis, or a worse overall personal functioning. Therefore, the aim of this study is to employ machine learning to test the individual and combined ability of baseline GMV data and of history of environmental adverse events in predicting good vs. poor social and occupational outcome in CHR individuals at follow up. Methods 92 CHR individuals recruited from the 7 discovery PRONIA sites were included in this project. Social and occupational impairment at follow up (9–12 months) were respectively measured through the Global Functioning: Social (GF:S) and Role (GF:R) scale, and CHR with a follow up rating of 7 or below were labeled as having a poor functional outcome. This way, we could separate our cohort in 52 poor outcome CHR and 40 good outcome CHR. GMV data were preprocessed following published procedures which allowed also to correct for site effects. The environmental classifier was built based on Childhood Trauma Questionnaire, Bullying Scale, and Premorbid Adjustment Scale (childhood, early adolescence, late adolescence and adulthood) scores. Raw scores have been normalized according to the psychometric properties of the healthy samples used for validating these questionnaires and scale, in order to obtain individual scores of deviation from the normative occu
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- 2020
41. Basic Symptoms Are Associated With Age in Patients With a Clinical High-Risk State for Psychosis: Results From the PRONIA Study
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Walger, H, Antonucci, LA, Pigoni, A, Upthegrove, R, Salokangas, RKR, Lencer, R, Chisholm, K, Riecher-Rossler, A, Haidl, T, Meisenzahl, E, Rosen, M, Ruhrmann, S, Kambeitz, J, Kambeitz-Ilankovic, L, Falkai, P, Ruef, A, Hietala, J, Pantelis, C, Wood, SJ, Brambilla, P, Bertolino, A, Borgwardt, S, Koutsouleris, N, Schultze-Lutter, F, Walger, H, Antonucci, LA, Pigoni, A, Upthegrove, R, Salokangas, RKR, Lencer, R, Chisholm, K, Riecher-Rossler, A, Haidl, T, Meisenzahl, E, Rosen, M, Ruhrmann, S, Kambeitz, J, Kambeitz-Ilankovic, L, Falkai, P, Ruef, A, Hietala, J, Pantelis, C, Wood, SJ, Brambilla, P, Bertolino, A, Borgwardt, S, Koutsouleris, N, and Schultze-Lutter, F
- Abstract
In community studies, both attenuated psychotic symptoms (APS) and basic symptoms (BS) were more frequent but less clinically relevant in children and adolescents compared to adults. In doing so, they displayed differential age thresholds that were around age 16 for APS, around age 18 for perceptive BS, and within the early twenties for cognitive BS. Only the age effect has previously been studied and replicated in clinical samples for APS. Thus, we examined the reported age effect on and age thresholds of 14 criteria-relevant BS in a patient sample at clinical-high risk of psychosis (N = 261, age 15-40 yrs.), recruited within the European multicenter PRONIA-study. BS and the BS criteria, "Cognitive Disturbances" (COGDIS) and "Cognitive-perceptive BS" (COPER), were assessed with the "Schizophrenia Proneness Instrument, Adult version" (SPI-A). Using logistic regressions, prevalence rates of perceptive and cognitive BS, and of COGDIS and COPER, as well as the impact of social and role functioning on the association between age and BS were studied in three age groups (15-18 years, 19-23 years, 24-40 years). Most patients (91.2%) reported any BS, 55.9% any perceptive and 87.4% any cognitive BS. Furthermore, 56.3% met COGDIS and 80.5% COPER. Not exhibiting the reported differential age thresholds, both perceptive and cognitive BS, and, at trend level only, COPER were less prevalent in the oldest age group (24-40 years); COGDIS was most frequent in the youngest group (15-18 years). Functional deficits did not better explain the association with age, particularly in perceptive BS and cognitive BS meeting the frequency requirement of BS criteria. Our findings broadly confirmed an age threshold in BS and, thus, the earlier assumed link between presence of BS and brain maturation processes. Yet, age thresholds of perceptive and cognitive BS did not differ. This lack of differential age thresholds might be due to more pronounced the brain abnormalities in this clinical sample
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- 2020
42. Traces of Trauma: A Multivariate Pattern Analysis of Childhood Trauma, Brain Structure, and Clinical Phenotypes
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Popovic, D, Ruef, A, Dwyer, DB, Antonucci, LA, Eder, J, Sanfelici, R, Kambeitz-Ilankovic, L, Oztuerk, OF, Dong, MS, Paul, R, Paolini, M, Hedderich, D, Haidl, T, Kambeitz, J, Ruhrmann, S, Chisholm, K, Schultze-Lutter, F, Falkai, P, Pergola, G, Blasi, G, Bertolino, A, Lencer, R, Dannlowski, U, Upthegrove, R, Salokangas, RKR, Pantelis, C, Meisenzahl, E, Wood, SJ, Brambilla, P, Borgwardt, S, Koutsouleris, N, Popovic, D, Ruef, A, Dwyer, DB, Antonucci, LA, Eder, J, Sanfelici, R, Kambeitz-Ilankovic, L, Oztuerk, OF, Dong, MS, Paul, R, Paolini, M, Hedderich, D, Haidl, T, Kambeitz, J, Ruhrmann, S, Chisholm, K, Schultze-Lutter, F, Falkai, P, Pergola, G, Blasi, G, Bertolino, A, Lencer, R, Dannlowski, U, Upthegrove, R, Salokangas, RKR, Pantelis, C, Meisenzahl, E, Wood, SJ, Brambilla, P, Borgwardt, S, and Koutsouleris, N
- Abstract
BACKGROUND: Childhood trauma (CT) is a major yet elusive psychiatric risk factor, whose multidimensional conceptualization and heterogeneous effects on brain morphology might demand advanced mathematical modeling. Therefore, we present an unsupervised machine learning approach to characterize the clinical and neuroanatomical complexity of CT in a larger, transdiagnostic context. METHODS: We used a multicenter European cohort of 1076 female and male individuals (discovery: n = 649; replication: n = 427) comprising young, minimally medicated patients with clinical high-risk states for psychosis; patients with recent-onset depression or psychosis; and healthy volunteers. We employed multivariate sparse partial least squares analysis to detect parsimonious associations between combinations of items from the Childhood Trauma Questionnaire and gray matter volume and tested their generalizability via nested cross-validation as well as via external validation. We investigated the associations of these CT signatures with state (functioning, depressivity, quality of life), trait (personality), and sociodemographic levels. RESULTS: We discovered signatures of age-dependent sexual abuse and sex-dependent physical and sexual abuse, as well as emotional trauma, which projected onto gray matter volume patterns in prefronto-cerebellar, limbic, and sensory networks. These signatures were associated with predominantly impaired clinical state- and trait-level phenotypes, while pointing toward an interaction between sexual abuse, age, urbanicity, and education. We validated the clinical profiles for all three CT signatures in the replication sample. CONCLUSIONS: Our results suggest distinct multilayered associations between partially age- and sex-dependent patterns of CT, distributed neuroanatomical networks, and clinical profiles. Hence, our study highlights how machine learning approaches can shape future, more fine-grained CT research.
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- 2020
43. General psychopathology links burden of recent life events and psychotic symptoms in a network approach
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Betz, LT, Penzel, N, Kambeitz-Ilankovic, L, Rosen, M, Chisholm, K, Stainton, A, Haidl, TK, Wenzel, J, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Wood, SJ, Upthegrove, R, Koutsouleris, N, Kambeitz, J, Betz, LT, Penzel, N, Kambeitz-Ilankovic, L, Rosen, M, Chisholm, K, Stainton, A, Haidl, TK, Wenzel, J, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Schultze-Lutter, F, Wood, SJ, Upthegrove, R, Koutsouleris, N, and Kambeitz, J
- Abstract
Recent life events have been implicated in the onset and progression of psychosis. However, psychological processes that account for the association are yet to be fully understood. Using a network approach, we aimed to identify pathways linking recent life events and symptoms observed in psychosis. Based on previous literature, we hypothesized that general symptoms would mediate between recent life events and psychotic symptoms. We analyzed baseline data of patients at clinical high risk for psychosis and with recent-onset psychosis (n = 547) from the Personalised Prognostic Tools for Early Psychosis Management (PRONIA) study. In a network analysis, we modeled links between the burden of recent life events and all individual symptoms of the Positive and Negative Syndrome Scale before and after controlling for childhood trauma. To investigate the longitudinal associations between burden of recent life events and symptoms, we analyzed multiwave panel data from seven timepoints up to month 18. Corroborating our hypothesis, burden of recent life events was connected to positive and negative symptoms through general psychopathology, specifically depression, guilt feelings, anxiety and tension, even after controlling for childhood trauma. Longitudinal modeling indicated that on average, burden of recent life events preceded general psychopathology in the individual. In line with the theory of an affective pathway to psychosis, recent life events may lead to psychotic symptoms via heightened emotional distress. Life events may be one driving force of unspecific, general psychopathology described as characteristic of early phases of the psychosis spectrum, offering promising avenues for interventions.
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- 2020
44. O8.5. SIGNS OF ADVERSITY - A NOVEL MACHINE LEARNING APPROACH TO CHILDHOOD TRAUMA, BRAIN STRUCTURE AND CLINICAL PROFILES
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Popovic, D, Ruef, A, Dwyer, DB, Hedderich, D, Antonucci, LA, Kambeitz-Ilankovic, L, Öztürk, ÖF, Dong, MS, Paul, R, Kambeitz, J, Ruhrmann, S, Chisholm, K, Schultze-Lutter, F, Falkai, P, Bertolino, A, Lencer, R, Dannlowski, U, Upthegrove, R, Salokangas, RKR, Pantelis, C, Meisenzahl, E, Wood, S, Brambilla, P, Borgwardt, S, Koutsouleris, N, Popovic, D, Ruef, A, Dwyer, DB, Hedderich, D, Antonucci, LA, Kambeitz-Ilankovic, L, Öztürk, ÖF, Dong, MS, Paul, R, Kambeitz, J, Ruhrmann, S, Chisholm, K, Schultze-Lutter, F, Falkai, P, Bertolino, A, Lencer, R, Dannlowski, U, Upthegrove, R, Salokangas, RKR, Pantelis, C, Meisenzahl, E, Wood, S, Brambilla, P, Borgwardt, S, and Koutsouleris, N
- Abstract
Background Childhood maltreatment (CM) is a major psychiatric risk factor and leads to long-lasting physical and mental health implications throughout the affected individual’s lifespan. Nonetheless, the neuroanatomical correlates of CM and their specific clinical impact remain elusive. This might be attributed to the complex, multidimensional nature of CM as well as to the restrictions of traditional analysis pipelines using nosological grouping, univariate analysis and region-of-interest approaches. To overcome these issues, we present a novel transdiagnostic and naturalistic machine learning approach towards a better and more comprehensive understanding of the clinical and neuroanatomical complexity of CM. Methods We acquired our dataset from the multi-center European PRONIA cohort (www.pronia.eu). Specifically, we selected 649 male and female individuals, comprising young, minimally medicated patients with clinical high-risk states for psychosis as well as recent-onset of depression or psychosis and healthy volunteers. As part of our analysis approach, we created a new Matlab Toolbox, which performs multivariate Sparse Partial Least Squares Analysis in a robust machine learning framework. We employed this algorithm to detect multi-layered associations between combinations of items from the Childhood Trauma Questionnaire (CTQ) and grey matter volume (GMV) and assessed their generalizability via nested cross-validation. The clinical relevance of these CM signatures was assessed by correlating them to a wide range of clinical measurements, including current functioning (GAF, GF), depressivity (BDI), quality of life (WHOQOL-BREF) and personality traits (NEO-FFI). Results Overall, we detected three distinct signatures of sexual, physical and emotional maltreatment. The first signature consisted of an age-dependent sexual abuse pattern and a corresponding GMV pattern along the prefronto-thalamo-cerebellar axis. The second signature yielded a sex-dependent phy
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- 2020
45. S94. PREDICTION OF CANNABIS RELAPSE IN CLINICAL HIGH-RISK INDIVIDUALS AND RECENT ONSET PSYCHOSIS - PRELIMINARY RESULTS FROM THE PRONIA STUDY
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Penzel, N, Sanfelici, R, Betz, L, Antonucci, L, Falkai, P, Upthegrove, R, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Pantelis, C, Schultze-Lutter, F, Wood, S, Koutsouleris, N, Kambeitz, J, Penzel, N, Sanfelici, R, Betz, L, Antonucci, L, Falkai, P, Upthegrove, R, Bertolino, A, Borgwardt, S, Brambilla, P, Lencer, R, Meisenzahl, E, Ruhrmann, S, Salokangas, RKR, Pantelis, C, Schultze-Lutter, F, Wood, S, Koutsouleris, N, and Kambeitz, J
- Abstract
Background Evidence exists that cannabis consumption is associated with the development of psychosis. Further, continued cannabis use in individuals with recent onset psychosis (ROP) increases the risk for rehospitalization, high symptom severity and low general functioning. Clear inter-individual differences in the vulnerability to the harmful effects of the drug have been pointed out. These findings emphasize the importance of investigating the inter-individual variability in the role of cannabis use in ROP and to understand how cannabis use relates to subclinical conditions that predate the full-blown disease in clinical high-risk (CHR). Specific symptoms have been linked with continued cannabis consume, still research is lacking on how different factors contribute together to an elevated risk of cannabis relapse. Multivariate techniques have the capacity to extract complex patterns from high dimensional data and apply generalized rules to unseen cases. The aim of the study is therefore to assess the predictability of cannabis relapse in ROP and CHR by applying machine learning to clinical and environmental data. Methods All participants were recruited within the multi-site, longitudinal PRONIA study (www.pronia.eu). 112 individuals (58 ROP and 54 CHR) from 8 different European research centres reported lifetime cannabis consume at baseline and were abstinent for at least 4 weeks. We defined cannabis relapse as any cannabis consume between baseline and 9 months follow-up reported by the individual. To predict cannabis relapse, we trained a random forest algorithm implemented in the mlr package, R version 3.5.2. on 183 baseline variables including clinical symptoms, general functioning, demographics and consume patterns within a repeated-nested cross-validation framework. The data underwent pre-processing through pruning of non-informative variables and median-imputation for missing values. The number of trees was set to 500, while the number of nodes, sa
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- 2020
46. Signs of rapidly progressive dementia in a case of intravascular lymphomatosis
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Albrecht, R., Krebs, B., Reusche, E., Nagel, M., Lencer, R., and Kretzschmar, H. A.
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- 2005
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47. Die Behandlung der Sialorrhö mit Botulinum-Toxin
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Hagenah, J., Kahl, K. G., Steinlechner, S., Lencer, R., and Klein, C.
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- 2005
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48. Therapie der Clozapin-induzierten Hypersalivation mit Botulinum-Toxin B
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Kahl, K. G., Trillenberg, P., Kordon, A., Lencer, R., Klein, C., and Hagenah, J.
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- 2005
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49. Eye tracking dysfunction in families with multiple cases of schizophrenia
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Arolt, V., Lencer, R., Nolte, A., Pinnow, M., and Schwinger, E.
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- 1996
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50. Morphological basis for the spectrum of clinical deficits in spinocerebellar ataxia 17 (SCA17)
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Lasek, K., Lencer, R., Gaser, C., Hagenah, J., Walter, U., Wolters, A., Kock, N., Steinlechner, S., Nagel, M., Zühlke, C., Nitschke, M.-F., Brockmann, K., Klein, C., Rolfs, A., and Binkofski, F.
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- 2006
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