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      The promise of machine learning in predicting treatment outcomes in psychiatry

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          Abstract

          <p class="first" id="d2429978e235">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. </p>

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          Author and article information

          Journal
          World Psychiatry
          World Psychiatry
          Wiley
          1723-8617
          2051-5545
          June 2021
          May 18 2021
          June 2021
          : 20
          : 2
          : 154-170
          Affiliations
          [1 ]Department of Psychiatry, Yale School of Medicine New Haven CT USA
          [2 ]Spring Health New York City NY USA
          [3 ]Clinical Psychology Unit, Department of Psychology University of Sheffield Sheffield UK
          [4 ]School of Computer Science and Statistics Trinity College Dublin Dublin Ireland
          [5 ]Department of Psychology University of Pennsylvania Philadelphia PA USA
          [6 ]Department of Methods and Statistics, Institute of Psychology Leiden University Leiden The Netherlands
          [7 ]Department of Psychiatry and Biobehavioral Sciences University of California Los Angeles Los Angeles CA USA
          [8 ]Microsoft Research Cambridge UK
          [9 ]Department of Biostatistics and Health Informatics, Institute of Psychiatry, Psychology and Neurosciences King's College London London UK
          [10 ]Department of Psychiatry and Psychotherapy, Section for Neurodiagnostic Applications Ludwig‐Maximilian University Munich Germany
          [11 ]Harvard T.H. Chan School of Public Health Boston MA USA
          [12 ]Department of Psychiatry, Massachusetts General Hospital Harvard Medical School Boston MA USA
          Article
          10.1002/wps.20882
          8129866
          34002503
          1eada13d-8125-450e-ac4c-cd04f84641ed
          © 2021

          http://onlinelibrary.wiley.com/termsAndConditions#vor

          http://doi.wiley.com/10.1002/tdm_license_1.1

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