Predicting persistent depressive symptoms in older adults: A machine learning approach to personalised mental healthcare.


Journal

Journal of affective disorders
ISSN: 1573-2517
Titre abrégé: J Affect Disord
Pays: Netherlands
ID NLM: 7906073

Informations de publication

Date de publication:
01 03 2019
Historique:
received: 14 09 2018
revised: 07 12 2018
accepted: 24 12 2018
entrez: 24 2 2019
pubmed: 24 2 2019
medline: 20 4 2019
Statut: ppublish

Résumé

Depression causes significant physical and psychosocial morbidity. Predicting persistence of depressive symptoms could permit targeted prevention, and lessen the burden of depression. Machine learning is a rapidly expanding field, and such approaches offer powerful predictive abilities. We investigated the utility of a machine learning approach to predict the persistence of depressive symptoms in older adults. Baseline demographic and psychometric data from 284 patients were used to predict the likelihood of older adults having persistent depressive symptoms after 12 months, using a machine learning approach ('extreme gradient boosting'). Predictive performance was compared to a conventional statistical approach (logistic regression). Data were drawn from the 'treatment-as-usual' arm of the CASPER (CollAborative care and active surveillance for Screen-Positive EldeRs with subthreshold depression) trial. Predictive performance was superior using machine learning compared to logistic regression (mean AUC 0.72 vs. 0.67, p < 0.0001). Using machine learning, an average of 89% of those predicted to have PHQ-9 scores above threshold at 12 months actually did, compared to 78% using logistic regression. However, mean negative predictive values were somewhat lower for the machine learning approach (45% vs. 35%). A relatively small sample size potentially limited the predictive power of the algorithm. In addition, PHQ-9 scores were used as an indicator of persistent depressive symptoms, and whilst well validated, a clinical interview would have been preferable. Overall, our findings support the potential application of machine learning in personalised mental healthcare.

Sections du résumé

BACKGROUND
Depression causes significant physical and psychosocial morbidity. Predicting persistence of depressive symptoms could permit targeted prevention, and lessen the burden of depression. Machine learning is a rapidly expanding field, and such approaches offer powerful predictive abilities. We investigated the utility of a machine learning approach to predict the persistence of depressive symptoms in older adults.
METHOD
Baseline demographic and psychometric data from 284 patients were used to predict the likelihood of older adults having persistent depressive symptoms after 12 months, using a machine learning approach ('extreme gradient boosting'). Predictive performance was compared to a conventional statistical approach (logistic regression). Data were drawn from the 'treatment-as-usual' arm of the CASPER (CollAborative care and active surveillance for Screen-Positive EldeRs with subthreshold depression) trial.
RESULTS
Predictive performance was superior using machine learning compared to logistic regression (mean AUC 0.72 vs. 0.67, p < 0.0001). Using machine learning, an average of 89% of those predicted to have PHQ-9 scores above threshold at 12 months actually did, compared to 78% using logistic regression. However, mean negative predictive values were somewhat lower for the machine learning approach (45% vs. 35%).
LIMITATIONS
A relatively small sample size potentially limited the predictive power of the algorithm. In addition, PHQ-9 scores were used as an indicator of persistent depressive symptoms, and whilst well validated, a clinical interview would have been preferable.
CONCLUSIONS
Overall, our findings support the potential application of machine learning in personalised mental healthcare.

Identifiants

pubmed: 30795491
pii: S0165-0327(18)31993-1
doi: 10.1016/j.jad.2018.12.095
pii:
doi:

Types de publication

Comparative Study Journal Article Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

857-860

Informations de copyright

Copyright © 2018 Elsevier B.V. All rights reserved.

Auteurs

Christopher M Hatton (CM)

Department of Health Sciences, University of York, UK; Hull York Medical School, University of York, UK. Electronic address: hych2@hyms.ac.uk.

Lewis W Paton (LW)

Department of Health Sciences, University of York, UK. Electronic address: lewis.paton@york.ac.uk.

Dean McMillan (D)

Department of Health Sciences, University of York, UK; Hull York Medical School, University of York, UK. Electronic address: dean.mcmillan@york.ac.uk.

James Cussens (J)

Department of Computer Science & York Centre for Complex Systems Analysis, University of York, UK. Electronic address: james.cussens@york.ac.uk.

Simon Gilbody (S)

Department of Health Sciences, University of York, UK; Hull York Medical School, University of York, UK. Electronic address: simon.gilbody@york.ac.uk.

Paul A Tiffin (PA)

Department of Health Sciences, University of York, UK; Hull York Medical School, University of York, UK. Electronic address: paul.tiffin@york.ac.uk.

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Classifications MeSH