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A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression

BACKGROUND: Some Internet interventions are regarded as effective treatments for adult depression, but less is known about who responds to this form of treatment. METHOD: An elastic net and random forest were trained to predict depression symptoms and related disability after an 8-week course of an...

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Autores principales: Pearson, Rahel, Pisner, Derek, Meyer, Björn, Shumake, Jason, Beevers, Christopher G.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6763538/
https://www.ncbi.nlm.nih.gov/pubmed/30392475
http://dx.doi.org/10.1017/S003329171800315X
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author Pearson, Rahel
Pisner, Derek
Meyer, Björn
Shumake, Jason
Beevers, Christopher G.
author_facet Pearson, Rahel
Pisner, Derek
Meyer, Björn
Shumake, Jason
Beevers, Christopher G.
author_sort Pearson, Rahel
collection PubMed
description BACKGROUND: Some Internet interventions are regarded as effective treatments for adult depression, but less is known about who responds to this form of treatment. METHOD: An elastic net and random forest were trained to predict depression symptoms and related disability after an 8-week course of an Internet intervention, Deprexis, involving adults (N = 283) from across the USA. Candidate predictors included psychopathology, demographics, treatment expectancies, treatment usage, and environmental context obtained from population databases. Model performance was evaluated using predictive R(2) [Image: see text] the expected variance explained in a new sample, estimated by 10 repetitions of 10-fold cross-validation. RESULTS: An ensemble model was created by averaging the predictions of the elastic net and random forest. Model performance was compared with a benchmark linear autoregressive model that predicted each outcome using only its baseline. The ensemble predicted more variance in post-treatment depression (8.0% gain, 95% CI 0.8–15; total [Image: see text]= 0.25), disability (5.0% gain, 95% CI −0.3 to 10; total [Image: see text]= 0.25), and well-being (11.6% gain, 95% CI 4.9–19; total [Image: see text]= 0.29) than the benchmark model. Important predictors included comorbid psychopathology, particularly total psychopathology and dysthymia, low symptom-related disability, treatment credibility, lower access to therapists, and time spent using certain Deprexis modules. CONCLUSION: A number of variables predict symptom improvement following an Internet intervention, but each of these variables makes relatively small contributions. Machine learning ensembles may be a promising statistical approach for identifying the cumulative contribution of many weak predictors to psychosocial depression treatment response.
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spelling pubmed-67635382019-10-05 A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression Pearson, Rahel Pisner, Derek Meyer, Björn Shumake, Jason Beevers, Christopher G. Psychol Med Original Articles BACKGROUND: Some Internet interventions are regarded as effective treatments for adult depression, but less is known about who responds to this form of treatment. METHOD: An elastic net and random forest were trained to predict depression symptoms and related disability after an 8-week course of an Internet intervention, Deprexis, involving adults (N = 283) from across the USA. Candidate predictors included psychopathology, demographics, treatment expectancies, treatment usage, and environmental context obtained from population databases. Model performance was evaluated using predictive R(2) [Image: see text] the expected variance explained in a new sample, estimated by 10 repetitions of 10-fold cross-validation. RESULTS: An ensemble model was created by averaging the predictions of the elastic net and random forest. Model performance was compared with a benchmark linear autoregressive model that predicted each outcome using only its baseline. The ensemble predicted more variance in post-treatment depression (8.0% gain, 95% CI 0.8–15; total [Image: see text]= 0.25), disability (5.0% gain, 95% CI −0.3 to 10; total [Image: see text]= 0.25), and well-being (11.6% gain, 95% CI 4.9–19; total [Image: see text]= 0.29) than the benchmark model. Important predictors included comorbid psychopathology, particularly total psychopathology and dysthymia, low symptom-related disability, treatment credibility, lower access to therapists, and time spent using certain Deprexis modules. CONCLUSION: A number of variables predict symptom improvement following an Internet intervention, but each of these variables makes relatively small contributions. Machine learning ensembles may be a promising statistical approach for identifying the cumulative contribution of many weak predictors to psychosocial depression treatment response. Cambridge University Press 2019-10 2018-11-05 /pmc/articles/PMC6763538/ /pubmed/30392475 http://dx.doi.org/10.1017/S003329171800315X Text en © Cambridge University Press 2018 http://creativecommons.org/licenses/by/4.0/ This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Pearson, Rahel
Pisner, Derek
Meyer, Björn
Shumake, Jason
Beevers, Christopher G.
A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression
title A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression
title_full A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression
title_fullStr A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression
title_full_unstemmed A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression
title_short A machine learning ensemble to predict treatment outcomes following an Internet intervention for depression
title_sort machine learning ensemble to predict treatment outcomes following an internet intervention for depression
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6763538/
https://www.ncbi.nlm.nih.gov/pubmed/30392475
http://dx.doi.org/10.1017/S003329171800315X
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