11 results on '"Shadbahr, T"'
Search Results
2. Negative MRI rules out clinically significant prostate cancer regardless of PI-RADS era
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Shadbahr, T., primary, Pylväläinen, J., additional, Hoffström, J., additional, Kenttämies, A., additional, Mirtti, T., additional, Laajala, T.D., additional, and Rannikko, A.S., additional
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- 2024
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3. P334 - Negative MRI rules out clinically significant prostate cancer regardless of PI-RADS era
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Shadbahr, T., Pylväläinen, J., Hoffström, J., Kenttämies, A., Mirtti, T., Laajala, T.D., and Rannikko, A.S.
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- 2024
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4. Navigating the development challenges in creating complex data systems
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Dittmer, S, Roberts, M, Gilbey, J, Biguri, A, Selby, I, Breger, A, Thorpe, M, Weir-McCall, Gkrania-Klotsas, E, Korhonen, A, Jefferson, E, Langs, G, Yang, G, Prosch, H, Stanczuk, J, Tang, J, Babar, J, Escudero Sánchez, L, Teare, P, Patel, M, Wassin, M, Holzer, M, Walton, N, Lió, P, Shadbahr, T, Sala, E, Preller, J, Rudd, JHF, Aston, JAD, Schönlieb, CB, Dittmer, S [0000-0003-2919-4956], Roberts, M [0000-0002-3484-5031], Gilbey, J [0000-0002-5987-5261], Biguri, A [0000-0002-2636-3032], Preller, J [0000-0001-5706-816X], Rudd, JHF [0000-0003-2243-3117], and Apollo - University of Cambridge Repository
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46 Information and Computing Sciences ,Bioengineering ,4612 Software Engineering - Abstract
Data science systems (DSSs) are a fundamental tool in many areas of research and are now developed by people with a myriad of backgrounds. This is coupled with a crisis in reproducibility of such DSSs despite the wide availability of powerful tools for data science and machine learning over the last decade. We believe that perverse incentives and a lack of widespread software engineering skills are among the many causes of this crisis and analyze why software engineering and building large complex systems is, in general, hard. Based on these insights, we identify how software engineering addresses those difficulties and how one might apply and generalize software engineering methods to make DSSs more fit for purpose. We advocate two key development philosophies: one should incrementally grow – not plan then build – DSSs, and one should use two types of feedback loops during development: one which tests the code’s correctness and another that evaluates the code’s efficacy.
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- 2023
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5. P323 - PI-RADS score 5 is a strong predictor for rapid prostate cancer specific death
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Shadbahr, T., Pylväläinen, J., Hoffström, J., Kenttämies, A., Mirtti, T., Laajala, T.D., and Rannikko, A.
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- 2024
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6. A0958 - Prognostic impact of prostate cancer grade inflation in targeted biopsies.
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Batouche, A.O., Czeizler, E., Lehto, T-P., Erickson, A., Shadbahr, T., Pohjonen, J., Mirtti, T., and Rannikko, A.S.
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PROSTATE cancer , *BIOPSY - Published
- 2023
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7. Recent methodological advances in federated learning for healthcare.
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Zhang F, Kreuter D, Chen Y, Dittmer S, Tull S, Shadbahr T, Preller J, Rudd JHF, Aston JAD, Schönlieb CB, Gleadall N, and Roberts M
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For healthcare datasets, it is often impossible to combine data samples from multiple sites due to ethical, privacy, or logistical concerns. Federated learning allows for the utilization of powerful machine learning algorithms without requiring the pooling of data. Healthcare data have many simultaneous challenges, such as highly siloed data, class imbalance, missing data, distribution shifts, and non-standardized variables, that require new methodologies to address. Federated learning adds significant methodological complexity to conventional centralized machine learning, requiring distributed optimization, communication between nodes, aggregation of models, and redistribution of models. In this systematic review, we consider all papers on Scopus published between January 2015 and February 2023 that describe new federated learning methodologies for addressing challenges with healthcare data. We reviewed 89 papers meeting these criteria. Significant systemic issues were identified throughout the literature, compromising many methodologies reviewed. We give detailed recommendations to help improve methodology development for federated learning in healthcare., Competing Interests: The authors declare no competing interests., (© 2024 The Authors.)
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- 2024
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8. BPR3P0128, a non-nucleoside RNA-dependent RNA polymerase inhibitor, inhibits SARS-CoV-2 variants of concern and exerts synergistic antiviral activity in combination with remdesivir.
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Tang W-F, Chang Y-H, Lin C-C, Jheng J-R, Hsieh C-F, Chin Y-F, Chang T-Y, Lee J-C, Liang P-H, Lin C-Y, Lin G-H, Cai J-Y, Chen Y-L, Chen Y-S, Tsai S-K, Liu P-C, Yang C-M, Shadbahr T, Tang J, Hsu Y-L, Huang C-H, Wang L-Y, Chen CC, Kau J-H, Hung Y-J, Lee H-Y, Wang W-C, Tsai H-P, and Horng J-T
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- Humans, SARS-CoV-2 metabolism, RNA-Dependent RNA Polymerase metabolism, Molecular Docking Simulation, COVID-19 Drug Treatment, Antiviral Agents chemistry, COVID-19, Adenosine Monophosphate analogs & derivatives, Quinolines, Alanine analogs & derivatives, Pyrazoles
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Viral RNA-dependent RNA polymerase (RdRp), a highly conserved molecule in RNA viruses, has recently emerged as a promising drug target for broad-acting inhibitors. Through a Vero E6-based anti-cytopathic effect assay, we found that BPR3P0128, which incorporates a quinoline core similar to hydroxychloroquine, outperformed the adenosine analog remdesivir in inhibiting RdRp activity (EC
50 = 0.66 µM and 3 µM, respectively). BPR3P0128 demonstrated broad-spectrum activity against various severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) variants of concern. When introduced after viral adsorption, BPR3P0128 significantly decreased SARS-CoV-2 replication; however, it did not affect the early entry stage, as evidenced by a time-of-drug-addition assay. This suggests that BPR3P0128's primary action takes place during viral replication. We also found that BPR3P0128 effectively reduced the expression of proinflammatory cytokines in human lung epithelial Calu-3 cells infected with SARS-CoV-2. Molecular docking analysis showed that BPR3P0128 targets the RdRp channel, inhibiting substrate entry, which implies it operates differently-but complementary-with remdesivir. Utilizing an optimized cell-based minigenome RdRp reporter assay, we confirmed that BPR3P0128 exhibited potent inhibitory activity. However, an enzyme-based RdRp assay employing purified recombinant nsp12/nsp7/nsp8 failed to corroborate this inhibitory activity. This suggests that BPR3P0128 may inhibit activity by targeting host-related RdRp-associated factors. Moreover, we discovered that a combination of BPR3P0128 and remdesivir had a synergistic effect-a result likely due to both drugs interacting with separate domains of the RdRp. This novel synergy between the two drugs reinforces the potential clinical value of the BPR3P0128-remdesivir combination in combating various SARS-CoV-2 variants of concern., Competing Interests: The authors declare no conflict of interest.- Published
- 2024
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9. MRI-Targeted Prostate Biopsy Introduces Grade Inflation and Overtreatment.
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Batouche AO, Czeizler E, Lehto TP, Erickson A, Shadbahr T, Laajala TD, Pohjonen J, Vickers AJ, Mirtti T, and Rannikko AS
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Purpose: The use of MRI-targeted biopsies has led to lower detection of Gleason Grade Group 1 (GG1) prostate cancer and increased detection of GG2 disease. Although this finding is generally attributed to improved sensitivity and specificity of MRI for aggressive cancers, it might also be explained by grade inflation. Our objective was to determine the likelihood of definitive treatment and risk of post-treatment recurrence for patients with GG2 cancer diagnosed using targeted biopsies relative to men with GG1 cancer diagnosed using systematic biopsies., Methods: We performed a retrospective study on a large tertiary centre registry (HUS Acamedic Datalake) to retrieve data on prostate cancer diagnosis, treatment, and cancer recurrence. We included patients with either GG1 with systematic biopsies (3317 men) or GG2 with targeted biopsies (554 men) from 1993 to 2019. We assessed the risk of curative treatment and recurrence after treatment. Kaplan-Meier survival curves were computed to assess treatment- and recurrence-free survival. Cox proportional hazards regression analysis was performed to assess the risk of posttreatment recurrence., Results: Patients with systematic biopsy detected GG1 cancer had a significantly longer median time-to-treatment (31 months) than those with targeted biopsy detected GG2 cancer (4 months, p<0.0001). The risk of recurrence after curative treatment was similar between groups with the upper bound of 95% CI, excluding an important difference (HR: 0.94, 95% CI [0.71-1.25], p=0.7)., Conclusion: GG2 cancers detected by MRI-targeted biopsy are treated more aggressively than GG1 cancers detected by systematic biopsy, despite having similar oncologic risk. To prevent further overtreatment related to the MRI pathway, treatment guidelines from the pre-MRI era need to be updated to consider changes in the diagnostic pathway.
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- 2024
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10. The impact of imputation quality on machine learning classifiers for datasets with missing values.
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Shadbahr T, Roberts M, Stanczuk J, Gilbey J, Teare P, Dittmer S, Thorpe M, Torné RV, Sala E, Lió P, Patel M, Preller J, Rudd JHF, Mirtti T, Rannikko AS, Aston JAD, Tang J, and Schönlieb CB
- Abstract
Background: Classifying samples in incomplete datasets is a common aim for machine learning practitioners, but is non-trivial. Missing data is found in most real-world datasets and these missing values are typically imputed using established methods, followed by classification of the now complete samples. The focus of the machine learning researcher is to optimise the classifier's performance., Methods: We utilise three simulated and three real-world clinical datasets with different feature types and missingness patterns. Initially, we evaluate how the downstream classifier performance depends on the choice of classifier and imputation methods. We employ ANOVA to quantitatively evaluate how the choice of missingness rate, imputation method, and classifier method influences the performance. Additionally, we compare commonly used methods for assessing imputation quality and introduce a class of discrepancy scores based on the sliced Wasserstein distance. We also assess the stability of the imputations and the interpretability of model built on the imputed data., Results: The performance of the classifier is most affected by the percentage of missingness in the test data, with a considerable performance decline observed as the test missingness rate increases. We also show that the commonly used measures for assessing imputation quality tend to lead to imputed data which poorly matches the underlying data distribution, whereas our new class of discrepancy scores performs much better on this measure. Furthermore, we show that the interpretability of classifier models trained using poorly imputed data is compromised., Conclusions: It is imperative to consider the quality of the imputation when performing downstream classification as the effects on the classifier can be considerable., (© 2023. Springer Nature Limited.)
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- 2023
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11. SynergyFinder Plus: Toward Better Interpretation and Annotation of Drug Combination Screening Datasets.
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Zheng S, Wang W, Aldahdooh J, Malyutina A, Shadbahr T, Tanoli Z, Pessia A, and Tang J
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- Drug Synergism, Drug Combinations, Cell Line, Software, Models, Theoretical
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Combinatorial therapies have been recently proposed to improve the efficacy of anticancer treatment. The SynergyFinder R package is a software used to analyze pre-clinical drug combination datasets. Here, we report the major updates to the SynergyFinder R package for improved interpretation and annotation of drug combination screening results. Unlike the existing implementations, the updated SynergyFinder R package includes five main innovations. 1) We extend the mathematical models to higher-order drug combination data analysis and implement dimension reduction techniques for visualizing the synergy landscape. 2) We provide a statistical analysis of drug combination synergy and sensitivity with confidence intervals and P values. 3) We incorporate a synergy barometer to harmonize multiple synergy scoring methods to provide a consensus metric for synergy. 4) We evaluate drug combination synergy and sensitivity to provide an unbiased interpretation of the clinical potential. 5) We enable fast annotation of drugs and cell lines, including their chemical and target information. These annotations will improve the interpretation of the mechanisms of action of drug combinations. To facilitate the use of the R package within the drug discovery community, we also provide a web server at www.synergyfinderplus.org as a user-friendly interface to enable a more flexible and versatile analysis of drug combination data., (Copyright © 2022 The Authors. Published by Elsevier B.V. All rights reserved.)
- Published
- 2022
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