Literature DB >> 33278743

Using Artificial Intelligence to Predict Change in Depression and Anxiety Symptoms in a Digital Intervention: Evidence from a Transdiagnostic Randomized Controlled Trial.

Nicholas C Jacobson1, Matthew D Nemesure2.   

Abstract

While digital psychiatric interventions reduce treatment barriers, not all persons benefit from this type of treatment. Research is needed to preemptively identify who is likely to benefit from these digital treatments in order to redirect those people to a higher level of care. The current manuscript used an ensemble of machine learning methods to predict changes in major depressive and generalized anxiety disorder symptoms from pre to 9-month follow-up in a randomized controlled trial of a transdiagnostic digital intervention based on participants' (N=632) pre-treatment data. The results suggested that baseline characteristics could accurately predict changes in depressive symptoms in both treatment groups (r=0.482, 95% CI[0.394, 0.561]; r=0.477, 95% CI[0.385, 0.560]) and anxiety symptoms in both treatment groups (r=0.569, 95% CI[0.491, 0.638]; r=0.548, 95% CI[0.464, 0.622]). These results suggest that machine learning models are capable of preemptively predicting a person's responsiveness to digital treatments, which would enable personalized decision-making about which persons should be directed towards standalone digital interventions or towards blended stepped-care.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Artificial intelligence; Depression; Digital intervention; Digital therapeutics; Machine learning; Personalized; anxiety

Mesh:

Year:  2020        PMID: 33278743      PMCID: PMC7839310          DOI: 10.1016/j.psychres.2020.113618

Source DB:  PubMed          Journal:  Psychiatry Res        ISSN: 0165-1781            Impact factor:   3.222


  6 in total

1.  Prediction of outcome in internet-delivered cognitive behaviour therapy for paediatric obsessive-compulsive disorder: A machine learning approach.

Authors:  Fabian Lenhard; Sebastian Sauer; Erik Andersson; Kristoffer Nt Månsson; David Mataix-Cols; Christian Rück; Eva Serlachius
Journal:  Int J Methods Psychiatr Res       Date:  2017-07-28       Impact factor: 4.035

2.  Cognitive-Behavioral Therapy in the Digital Age: Presidential Address.

Authors:  Sabine Wilhelm; Hilary Weingarden; Ilana Ladis; Valerie Braddick; Jin Shin; Nicholas C Jacobson
Journal:  Behav Ther       Date:  2019-08-08

Review 3.  The global prevalence of common mental disorders: a systematic review and meta-analysis 1980-2013.

Authors:  Zachary Steel; Claire Marnane; Changiz Iranpour; Tien Chey; John W Jackson; Vikram Patel; Derrick Silove
Journal:  Int J Epidemiol       Date:  2014-03-19       Impact factor: 7.196

4.  Predicting long-term outcome of Internet-delivered cognitive behavior therapy for social anxiety disorder using fMRI and support vector machine learning.

Authors:  K N T Månsson; A Frick; C-J Boraxbekk; A F Marquand; S C R Williams; P Carlbring; G Andersson; T Furmark
Journal:  Transl Psychiatry       Date:  2015-03-17       Impact factor: 6.222

5.  Evaluation of a transdiagnostic psychodynamic online intervention to support return to work: A randomized controlled trial.

Authors:  Rüdiger Zwerenz; Jan Becker; Katharina Gerzymisch; Martin Siepmann; Martin Holme; Ulrich Kiwus; Sieglinde Spörl-Dönch; Manfred E Beutel
Journal:  PLoS One       Date:  2017-05-08       Impact factor: 3.240

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

Authors:  Rahel Pearson; Derek Pisner; Björn Meyer; Jason Shumake; Christopher G Beevers
Journal:  Psychol Med       Date:  2018-11-05       Impact factor: 7.723

  6 in total

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