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Machine Learning Prediction of Treatment Outcome in Late-Life Depression

Background: Recent evidence suggests that integration of multi-modal data improves performance in machine learning prediction of depression treatment outcomes. Here, we compared the predictive performance of three machine learning classifiers using differing combinations of sociodemographic characte...

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Autores principales: Grzenda, Adrienne, Speier, William, Siddarth, Prabha, Pant, Anurag, Krause-Sorio, Beatrix, Narr, Katherine, Lavretsky, Helen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8563624/
https://www.ncbi.nlm.nih.gov/pubmed/34744829
http://dx.doi.org/10.3389/fpsyt.2021.738494
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author Grzenda, Adrienne
Speier, William
Siddarth, Prabha
Pant, Anurag
Krause-Sorio, Beatrix
Narr, Katherine
Lavretsky, Helen
author_facet Grzenda, Adrienne
Speier, William
Siddarth, Prabha
Pant, Anurag
Krause-Sorio, Beatrix
Narr, Katherine
Lavretsky, Helen
author_sort Grzenda, Adrienne
collection PubMed
description Background: Recent evidence suggests that integration of multi-modal data improves performance in machine learning prediction of depression treatment outcomes. Here, we compared the predictive performance of three machine learning classifiers using differing combinations of sociodemographic characteristics, baseline clinical self-reports, cognitive tests, and structural magnetic resonance imaging (MRI) features to predict treatment outcomes in late-life depression (LLD). Methods: Data were combined from two clinical trials conducted with depressed adults aged 60 and older, including response to escitalopram (N = 32, NCT01902004) and Tai Chi (N = 35, NCT02460666). Remission was defined as a score of 6 or less on the 24-item Hamilton Rating Scale for Depression (HAMD) at the end of 24 weeks of treatment. Features subsets were constructed from baseline sociodemographic and clinical features, gray matter volumes (GMVs), or both. Three classification algorithms were compared: (1) Support Vector Machine-Radial Bias Function (SVMRBF), (2) Random Forest (RF), and (3) Logistic Regression (LR). A repeated 5-fold cross-validation approach with a wrapper-based feature selection method was used for model fitting. Model performance metrics included Area under the ROC Curve (AUC) and Matthews correlation coefficient (MCC). Cross-validated performance significance was tested by permutation analysis. Classifiers were compared by Cochran's Q and post-hoc pairwise comparisons using McNemar's Chi-Square test with Bonferroni correction. Results: For the RF and SVMRBF algorithms, the combined feature set outperformed the clinical and GMV feature sets with a final cross-validated AUC of 0.83 ± 0.11 and 0.80 ± 0.11, respectively. Both classifiers passed permutation analysis. The LR algorithm performed best using GMV features alone (AUC 0.79 ± 0.14) but failed to pass permutation analysis using any feature set. Performance of the three classifiers differed significantly for all three features sets. Important predictive features of treatment response included anterior and posterior cingulate volumes, depression characteristics, and self-reported health-related quality scores. Conclusion: This preliminary exploration into the use of ML and multi-modal data to identify predictors of general treatment response in LLD indicates that integration of clinical and structural MRI features significantly increases predictive capability. Identified features are among those previously implicated in geriatric depression, encouraging future work in this arena.
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spelling pubmed-85636242021-11-04 Machine Learning Prediction of Treatment Outcome in Late-Life Depression Grzenda, Adrienne Speier, William Siddarth, Prabha Pant, Anurag Krause-Sorio, Beatrix Narr, Katherine Lavretsky, Helen Front Psychiatry Psychiatry Background: Recent evidence suggests that integration of multi-modal data improves performance in machine learning prediction of depression treatment outcomes. Here, we compared the predictive performance of three machine learning classifiers using differing combinations of sociodemographic characteristics, baseline clinical self-reports, cognitive tests, and structural magnetic resonance imaging (MRI) features to predict treatment outcomes in late-life depression (LLD). Methods: Data were combined from two clinical trials conducted with depressed adults aged 60 and older, including response to escitalopram (N = 32, NCT01902004) and Tai Chi (N = 35, NCT02460666). Remission was defined as a score of 6 or less on the 24-item Hamilton Rating Scale for Depression (HAMD) at the end of 24 weeks of treatment. Features subsets were constructed from baseline sociodemographic and clinical features, gray matter volumes (GMVs), or both. Three classification algorithms were compared: (1) Support Vector Machine-Radial Bias Function (SVMRBF), (2) Random Forest (RF), and (3) Logistic Regression (LR). A repeated 5-fold cross-validation approach with a wrapper-based feature selection method was used for model fitting. Model performance metrics included Area under the ROC Curve (AUC) and Matthews correlation coefficient (MCC). Cross-validated performance significance was tested by permutation analysis. Classifiers were compared by Cochran's Q and post-hoc pairwise comparisons using McNemar's Chi-Square test with Bonferroni correction. Results: For the RF and SVMRBF algorithms, the combined feature set outperformed the clinical and GMV feature sets with a final cross-validated AUC of 0.83 ± 0.11 and 0.80 ± 0.11, respectively. Both classifiers passed permutation analysis. The LR algorithm performed best using GMV features alone (AUC 0.79 ± 0.14) but failed to pass permutation analysis using any feature set. Performance of the three classifiers differed significantly for all three features sets. Important predictive features of treatment response included anterior and posterior cingulate volumes, depression characteristics, and self-reported health-related quality scores. Conclusion: This preliminary exploration into the use of ML and multi-modal data to identify predictors of general treatment response in LLD indicates that integration of clinical and structural MRI features significantly increases predictive capability. Identified features are among those previously implicated in geriatric depression, encouraging future work in this arena. Frontiers Media S.A. 2021-10-20 /pmc/articles/PMC8563624/ /pubmed/34744829 http://dx.doi.org/10.3389/fpsyt.2021.738494 Text en Copyright © 2021 Grzenda, Speier, Siddarth, Pant, Krause-Sorio, Narr and Lavretsky. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Psychiatry
Grzenda, Adrienne
Speier, William
Siddarth, Prabha
Pant, Anurag
Krause-Sorio, Beatrix
Narr, Katherine
Lavretsky, Helen
Machine Learning Prediction of Treatment Outcome in Late-Life Depression
title Machine Learning Prediction of Treatment Outcome in Late-Life Depression
title_full Machine Learning Prediction of Treatment Outcome in Late-Life Depression
title_fullStr Machine Learning Prediction of Treatment Outcome in Late-Life Depression
title_full_unstemmed Machine Learning Prediction of Treatment Outcome in Late-Life Depression
title_short Machine Learning Prediction of Treatment Outcome in Late-Life Depression
title_sort machine learning prediction of treatment outcome in late-life depression
topic Psychiatry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8563624/
https://www.ncbi.nlm.nih.gov/pubmed/34744829
http://dx.doi.org/10.3389/fpsyt.2021.738494
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