Literature DB >> 34002503

The promise of machine learning in predicting treatment outcomes in psychiatry.

Adam M Chekroud1,2, Julia Bondar2, Jaime Delgadillo3, Gavin Doherty4, Akash Wasil5, Marjolein Fokkema6, Zachary Cohen7, Danielle Belgrave8, Robert DeRubeis5, Raquel Iniesta9, Dominic Dwyer10, Karmel Choi11,12.   

Abstract

For many years, psychiatrists have tried to understand factors involved in response to medications or psychotherapies, in order to personalize their treatment choices. There is now a broad and growing interest in the idea that we can develop models to personalize treatment decisions using new statistical approaches from the field of machine learning and applying them to larger volumes of data. In this pursuit, there has been a paradigm shift away from experimental studies to confirm or refute specific hypotheses towards a focus on the overall explanatory power of a predictive model when tested on new, unseen datasets. In this paper, we review key studies using machine learning to predict treatment outcomes in psychiatry, ranging from medications and psychotherapies to digital interventions and neurobiological treatments. Next, we focus on some new sources of data that are being used for the development of predictive models based on machine learning, such as electronic health records, smartphone and social media data, and on the potential utility of data from genetics, electrophysiology, neuroimaging and cognitive testing. Finally, we discuss how far the field has come towards implementing prediction tools in real-world clinical practice. Relatively few retrospective studies to-date include appropriate external validation procedures, and there are even fewer prospective studies testing the clinical feasibility and effectiveness of predictive models. Applications of machine learning in psychiatry face some of the same ethical challenges posed by these techniques in other areas of medicine or computer science, which we discuss here. In short, machine learning is a nascent but important approach to improve the effectiveness of mental health care, and several prospective clinical studies suggest that it may be working already.
© 2021 World Psychiatric Association.

Keywords:  Computational psychiatry; electronic health records; external validation; machine learning; pharmacotherapies; prediction; psy­chotherapies; smartphone data; treatment outcomes

Year:  2021        PMID: 34002503     DOI: 10.1002/wps.20882

Source DB:  PubMed          Journal:  World Psychiatry        ISSN: 1723-8617            Impact factor:   49.548


  23 in total

1.  Predicting treatment outcome in depression: an introduction into current concepts and challenges.

Authors:  Nicolas Rost; Elisabeth B Binder; Tanja M Brückl
Journal:  Eur Arch Psychiatry Clin Neurosci       Date:  2022-05-19       Impact factor: 5.270

2.  The utility of patient-reported outcome measures in mental health.

Authors:  David Roe; Mike Slade; Nev Jones
Journal:  World Psychiatry       Date:  2022-02       Impact factor: 49.548

3.  Psychiatric diagnosis and treatment in the 21st century: paradigm shifts versus incremental integration.

Authors:  Dan J Stein; Steven J Shoptaw; Daniel V Vigo; Crick Lund; Pim Cuijpers; Jason Bantjes; Norman Sartorius; Mario Maj
Journal:  World Psychiatry       Date:  2022-10       Impact factor: 79.683

4.  Creating sparser prediction models of treatment outcome in depression: a proof-of-concept study using simultaneous feature selection and hyperparameter tuning.

Authors:  Nicolas Rost; Tanja M Brückl; Nikolaos Koutsouleris; Elisabeth B Binder; Bertram Müller-Myhsok
Journal:  BMC Med Inform Decis Mak       Date:  2022-07-14       Impact factor: 3.298

5.  Machine learning v. traditional regression models predicting treatment outcomes for binge-eating disorder from a randomized controlled trial.

Authors:  Lauren N Forrest; Valentina Ivezaj; Carlos M Grilo
Journal:  Psychol Med       Date:  2021-11-25       Impact factor: 10.592

6.  Continuous outcome measurement in modern data-informed psychotherapies.

Authors:  Wolfgang Lutz; Julian Rubel; Anne-Katharina Deisenhofer; Danilo Moggia
Journal:  World Psychiatry       Date:  2022-06       Impact factor: 79.683

7.  Patterns and correlates of patient-reported helpfulness of treatment for common mental and substance use disorders in the WHO World Mental Health Surveys.

Authors:  Ronald C Kessler; Alan E Kazdin; Sergio Aguilar-Gaxiola; Ali Al-Hamzawi; Jordi Alonso; Yasmin A Altwaijri; Laura H Andrade; Corina Benjet; Chrianna Bharat; Guilherme Borges; Ronny Bruffaerts; Brendan Bunting; José Miguel Caldas de Almeida; Graça Cardoso; Wai Tat Chiu; Alfredo Cía; Marius Ciutan; Louisa Degenhardt; Giovanni de Girolamo; Peter de Jonge; Ymkje Anna de Vries; Silvia Florescu; Oye Gureje; Josep Maria Haro; Meredith G Harris; Chiyi Hu; Aimee N Karam; Elie G Karam; Georges Karam; Norito Kawakami; Andrzej Kiejna; Viviane Kovess-Masfety; Sing Lee; Victor Makanjuola; John J McGrath; Maria Elena Medina-Mora; Jacek Moskalewicz; Fernando Navarro-Mateu; Andrew A Nierenberg; Daisuke Nishi; Akin Ojagbemi; Bibilola D Oladeji; Siobhan O'Neill; José Posada-Villa; Victor Puac-Polanco; Charlene Rapsey; Ayelet Meron Ruscio; Nancy A Sampson; Kate M Scott; Tim Slade; Juan Carlos Stagnaro; Dan J Stein; Hisateru Tachimori; Margreet Ten Have; Yolanda Torres; Maria Carmen Viana; Daniel V Vigo; David R Williams; Bogdan Wojtyniak; Miguel Xavier; Zahari Zarkov; Hannah N Ziobrowski
Journal:  World Psychiatry       Date:  2022-06       Impact factor: 79.683

8.  Machine Learning-Based Model for the Prognosis of Postoperative Gastric Cancer.

Authors:  Yan Zhang; Liru Wang; Donghui Liu; Xuyao Wang; Long Li; Qingxin Jiang; Xiaoxue Li; Menglin Liu; Wenxin Wang; Enhong Shi; Chenyao Zhang; Yinghui Wang
Journal:  Cancer Manag Res       Date:  2022-01-07       Impact factor: 3.989

9.  Effectiveness of common antidepressants: a post market release study.

Authors:  Farrokh Alemi; Hua Min; Melanie Yousefi; Laura K Becker; Christopher A Hane; Vijay S Nori; Janusz Wojtusiak
Journal:  EClinicalMedicine       Date:  2021-10-25

10.  Predicting involuntary hospitalization in psychiatry: A machine learning investigation.

Authors:  Benedetta Silva; Mehdi Gholam; Philippe Golay; Charles Bonsack; Stéphane Morandi
Journal:  Eur Psychiatry       Date:  2021-07-08       Impact factor: 5.361

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