Literature DB >> 32862761

A scoping review of machine learning in psychotherapy research.

Katie Aafjes-van Doorn1, Céline Kamsteeg2, Jordan Bate1, Marc Aafjes2.   

Abstract

Machine learning (ML) offers robust statistical and probabilistic techniques that can help to make sense of large amounts of data. This scoping review paper aims to broadly explore the nature of research activity using ML in the context of psychological talk therapies, highlighting the scope of current methods and considerations for clinical practice and directions for future research. Using a systematic search methodology, fifty-one studies were identified. A narrative synthesis indicates two types of studies, those who developed and tested an ML model (k=44), and those who reported on the feasibility of a particular treatment tool that uses an ML algorithm (k=7). Most model development studies used supervised learning techniques to classify or predict labeled treatment process or outcome data, whereas others used unsupervised techniques to identify clusters in the unlabeled patient or treatment data. Overall, the current applications of ML in psychotherapy research demonstrated a range of possible benefits for indications of treatment process, adherence, therapist skills and treatment response prediction, as well as ways to accelerate research through automated behavioral or linguistic process coding. Given the novelty and potential of this research field, these proof-of-concept studies are encouraging, however, do not necessarily translate to improved clinical practice (yet).

Entities:  

Keywords:  artificial intelligence; big data; machine learning; psychotherapy; scoping review

Mesh:

Year:  2020        PMID: 32862761     DOI: 10.1080/10503307.2020.1808729

Source DB:  PubMed          Journal:  Psychother Res        ISSN: 1050-3307


  7 in total

Review 1.  Using Artificial Intelligence to Enhance Ongoing Psychological Interventions for Emotional Problems in Real- or Close to Real-Time: A Systematic Review.

Authors:  Patricia Gual-Montolio; Irene Jaén; Verónica Martínez-Borba; Diana Castilla; Carlos Suso-Ribera
Journal:  Int J Environ Res Public Health       Date:  2022-06-24       Impact factor: 4.614

Review 2.  Machine Learning Methods for Predicting Postpartum Depression: Scoping Review.

Authors:  Kiran Saqib; Amber Fozia Khan; Zahid Ahmad Butt
Journal:  JMIR Ment Health       Date:  2021-11-24

3.  Factors associated with treatment uptake, completion, and subsequent symptom improvement in a national digital mental health service.

Authors:  Shane P Cross; Eyal Karin; Lauren G Staples; Madelyne A Bisby; Katie Ryan; Georgia Duke; Olav Nielssen; Rony Kayrouz; Alana Fisher; Blake F Dear; Nickolai Titov
Journal:  Internet Interv       Date:  2022-02-12

4.  Enhancing the quality of cognitive behavioral therapy in community mental health through artificial intelligence generated fidelity feedback (Project AFFECT): a study protocol.

Authors:  Torrey A Creed; Leah Salama; Roisin Slevin; Michael Tanana; Zac Imel; Shrikanth Narayanan; David C Atkins
Journal:  BMC Health Serv Res       Date:  2022-09-20       Impact factor: 2.908

5.  Automatic rating of therapist facilitative interpersonal skills in text: A natural language processing application.

Authors:  James M Zech; Robert Steele; Victoria K Foley; Thomas D Hull
Journal:  Front Digit Health       Date:  2022-08-16

Review 6.  Ethics and Law in Research on Algorithmic and Data-Driven Technology in Mental Health Care: Scoping Review.

Authors:  Piers Gooding; Timothy Kariotis
Journal:  JMIR Ment Health       Date:  2021-06-10

7.  Psychotherapists' acceptance of telepsychotherapy during the COVID-19 pandemic: A machine learning approach.

Authors:  Vera Békés; Katie Aafjes-van Doorn; Sigal Zilcha-Mano; Tracy Prout; Leon Hoffman
Journal:  Clin Psychol Psychother       Date:  2021-11-22
  7 in total

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