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Clinical, Brain, and Multilevel Clustering in Early Psychosis and Affective Stages

Authors :
Dwyer, Dominic B.
Buciuman, Madalina-Octavia
Ruef, Anne
Kambeitz, Joseph
Sen Dong, Mark
Stinson, Caedyn
Kambeitz-Ilankovic, Lana
Degenhardt, Franziska
Sanfelici, Rachele
Antonucci, Linda A.
Lalousis, Paris Alexandros
Wenzel, Julian
Urquijo-Castro, Maria Fernanda
Popovic, David
Oeztuerk, Oemer Faruk
Haas, Shalaila S.
Weiske, Johanna
Hauke, Daniel
Neufang, Susanne
Schmidt-Kraepelin, Christian
Ruhrmann, Stephan
Penzel, Nora
Lichtenstein, Theresa
Rosen, Marlene
Chisholm, Katharine
Riecher-Roessler, Anita
Egloff, Laura
Schmidt, Andre
Andreou, Christina
Hietala, Jarmo
Schirmer, Timo
Romer, Georg
Michel, Chantal
Rossler, Wulf
Maj, Carlo
Borisov, Oleg
Krawitz, Peter M.
Falkai, Peter
Pantelis, Christos
Lencer, Rebekka
Bertolino, Alessandro
Borgwardt, Stefan
Noethen, Markus
Brambilla, Paolo
Schultze-Lutter, Frauke
Meisenzahl, Eva
Wood, Stephen J.
Davatzikos, Christos
Upthegrove, Rachel
Salokangas, Raimo K. R.
Koutsouleris, Nikolaos
Dwyer, Dominic B.
Buciuman, Madalina-Octavia
Ruef, Anne
Kambeitz, Joseph
Sen Dong, Mark
Stinson, Caedyn
Kambeitz-Ilankovic, Lana
Degenhardt, Franziska
Sanfelici, Rachele
Antonucci, Linda A.
Lalousis, Paris Alexandros
Wenzel, Julian
Urquijo-Castro, Maria Fernanda
Popovic, David
Oeztuerk, Oemer Faruk
Haas, Shalaila S.
Weiske, Johanna
Hauke, Daniel
Neufang, Susanne
Schmidt-Kraepelin, Christian
Ruhrmann, Stephan
Penzel, Nora
Lichtenstein, Theresa
Rosen, Marlene
Chisholm, Katharine
Riecher-Roessler, Anita
Egloff, Laura
Schmidt, Andre
Andreou, Christina
Hietala, Jarmo
Schirmer, Timo
Romer, Georg
Michel, Chantal
Rossler, Wulf
Maj, Carlo
Borisov, Oleg
Krawitz, Peter M.
Falkai, Peter
Pantelis, Christos
Lencer, Rebekka
Bertolino, Alessandro
Borgwardt, Stefan
Noethen, Markus
Brambilla, Paolo
Schultze-Lutter, Frauke
Meisenzahl, Eva
Wood, Stephen J.
Davatzikos, Christos
Upthegrove, Rachel
Salokangas, Raimo K. R.
Koutsouleris, Nikolaos
Publication Year :
2022

Abstract

IMPORTANCE Approaches are needed to stratify individuals in early psychosis stages beyond positive symptom severity to investigate specificity related to affective and normative variation and to validate solutions with premorbid, longitudinal, and genetic risk measures. OBJECTIVE To use machine learning techniques to cluster, compare, and combine subgroup solutions using clinical and brain structural imaging data from early psychosis and depression stages. DESIGN, SETTING, AND PARTICIPANTS A multisite, naturalistic, longitudinal cohort study (10 sites in 5 European countries; including major follow-up intervals at 9 and 18 months) with a referred patient sample of those with clinical high risk for psychosis (CHR-P), recent-onset psychosis (ROP), recent-onset depression (ROD), and healthy controls were recruited between February 1, 2014, to July 1, 2019. Data were analyzed between January 2020 and January 2022. MAIN OUTCOMES AND MEASURES A nonnegative matrix factorization technique separately decomposed clinical (287 variables) and parcellated brain structural volume (204 gray, white, and cerebrospinal fluid regions) data across CHR-P, ROP, ROD, and healthy controls study groups. Stability criteria determined cluster number using nested cross-validation. Validation targets were compared across subgroup solutions (premorbid, longitudinal, and schizophrenia polygenic risk scores). Multiclass supervised machine learning produced a transferable solution to the validation sample. RESULTS There were a total of 749 individuals in the discovery group and 610 individuals in the validation group. Individuals included those with CHR-P (n = 287), ROP (n = 323), ROD (n = 285), and healthy controls (n = 464), The mean (SD) age was 25.1 (5.9) years, and 702 (51.7%) were female. A clinical 4-dimensional solution separated individuals based on positive symptoms, negative symptoms, depression, and functioning, demonstrating associations with all validation targets. Brain clustering re

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1383744310
Document Type :
Electronic Resource