Literature DB >> 26944234

A Comparison of Natural Language Processing Methods for Automated Coding of Motivational Interviewing.

Michael Tanana1, Kevin A Hallgren2, Zac E Imel3, David C Atkins4, Vivek Srikumar5.   

Abstract

Motivational interviewing (MI) is an efficacious treatment for substance use disorders and other problem behaviors. Studies on MI fidelity and mechanisms of change typically use human raters to code therapy sessions, which requires considerable time, training, and financial costs. Natural language processing techniques have recently been utilized for coding MI sessions using machine learning techniques, rather than human coders, and preliminary results have suggested these methods hold promise. The current study extends this previous work by introducing two natural language processing models for automatically coding MI sessions via computer. The two models differ in the way they semantically represent session content, utilizing either 1) simple discrete sentence features (DSF model) and 2) more complex recursive neural networks (RNN model). Utterance- and session-level predictions from these models were compared to ratings provided by human coders using a large sample of MI sessions (N=341 sessions; 78,977 clinician and client talk turns) from 6 MI studies. Results show that the DSF model generally had slightly better performance compared to the RNN model. The DSF model had "good" or higher utterance-level agreement with human coders (Cohen's kappa>0.60) for open and closed questions, affirm, giving information, and follow/neutral (all therapist codes); considerably higher agreement was obtained for session-level indices, and many estimates were competitive with human-to-human agreement. However, there was poor agreement for client change talk, client sustain talk, and therapist MI-inconsistent behaviors. Natural language processing methods provide accurate representations of human derived behavioral codes and could offer substantial improvements to the efficiency and scale in which MI mechanisms of change research and fidelity monitoring are conducted.
Copyright © 2016 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Behavioral coding; Discrete sentence feature model; Machine learning; Motivational interviewing; Natural language processing; Recursive neural network; Treatment integrity

Mesh:

Year:  2016        PMID: 26944234      PMCID: PMC4842096          DOI: 10.1016/j.jsat.2016.01.006

Source DB:  PubMed          Journal:  J Subst Abuse Treat        ISSN: 0740-5472


  25 in total

1.  A test of the validity of the motivational interviewing treatment integrity code.

Authors:  Lars Forsberg; Anne H Berman; Håkan Kallmén; Ulric Hermansson; Asgeir R Helgason
Journal:  Cogn Behav Ther       Date:  2008

Review 2.  The effectiveness and applicability of motivational interviewing: a practice-friendly review of four meta-analyses.

Authors:  Brad Lundahl; Brian L Burke
Journal:  J Clin Psychol       Date:  2009-11

3.  The technical hypothesis of motivational interviewing: a meta-analysis of MI's key causal model.

Authors:  Molly Magill; Jacques Gaume; Timothy R Apodaca; Justin Walthers; Nadine R Mastroleo; Brian Borsari; Richard Longabaugh
Journal:  J Consult Clin Psychol       Date:  2014-05-19

4.  Sustaining motivational interviewing: a meta-analysis of training studies.

Authors:  Craig S Schwalbe; Hans Y Oh; Allen Zweben
Journal:  Addiction       Date:  2014-05-29       Impact factor: 6.526

5.  Change talk sequence during brief motivational intervention, towards or away from drinking.

Authors:  Nicolas Bertholet; Mohamed Faouzi; Gerhard Gmel; Jacques Gaume; Jean-Bernard Daeppen
Journal:  Addiction       Date:  2010-09-15       Impact factor: 6.526

6.  Distributional semantic models for the evaluation of disordered language.

Authors:  Masoud Rouhizadeh; Emily Prud'hommeaux; Brian Roark; Jan van Santen
Journal:  Proc Conf       Date:  2013-06

7.  Brief intervention for problem drug use in safety-net primary care settings: a randomized clinical trial.

Authors:  Peter Roy-Byrne; Kristin Bumgardner; Antoinette Krupski; Chris Dunn; Richard Ries; Dennis Donovan; Imara I West; Charles Maynard; David C Atkins; Meredith C Graves; Jutta M Joesch; Gary A Zarkin
Journal:  JAMA       Date:  2014-08-06       Impact factor: 56.272

8.  Topic models: a novel method for modeling couple and family text data.

Authors:  David C Atkins; Timothy N Rubin; Mark Steyvers; Michelle A Doeden; Brian R Baucom; Andrew Christensen
Journal:  J Fam Psychol       Date:  2012-08-13

9.  Agency context and tailored training in technology transfer: a pilot evaluation of motivational interviewing training for community counselors.

Authors:  John S Baer; Elizabeth A Wells; David B Rosengren; Bryan Hartzler; Blair Beadnell; Chris Dunn
Journal:  J Subst Abuse Treat       Date:  2009-03-31

10.  Scaling up the evaluation of psychotherapy: evaluating motivational interviewing fidelity via statistical text classification.

Authors:  David C Atkins; Mark Steyvers; Zac E Imel; Padhraic Smyth
Journal:  Implement Sci       Date:  2014-04-24       Impact factor: 7.327

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  21 in total

1.  A multivariate meta-analysis of motivational interviewing process and outcome.

Authors:  Brian T Pace; Aaron Dembe; Christina S Soma; Scott A Baldwin; David C Atkins; Zac E Imel
Journal:  Psychol Addict Behav       Date:  2017-06-22

2.  Using Prosodic and Lexical Information for Learning Utterance-level Behaviors in Psychotherapy.

Authors:  Karan Singla; Zhuohao Chen; Nikolaos Flemotomos; James Gibson; Dogan Can; David C Atkins; Shrikanth Narayanan
Journal:  Interspeech       Date:  2018-09

Review 3.  Motivational interviewing quality assurance: A systematic review of assessment tools across research contexts.

Authors:  Margo C Hurlocker; Michael B Madson; Julie A Schumacher
Journal:  Clin Psychol Rev       Date:  2020-09-06

4.  Advancing Analytic Approaches to Address Key Questions in Mechanisms of Behavior Change Research.

Authors:  Kevin A Hallgren; Adam D Wilson; Katie Witkiewitz
Journal:  J Stud Alcohol Drugs       Date:  2018-03       Impact factor: 2.582

5.  Commentary on Scaling-Up Evidence-Based Interventions in Public Systems.

Authors:  Cynthia Weaver; Melissa E DeRosier
Journal:  Prev Sci       Date:  2019-11

6.  Identifying Effective Motivational Interviewing Communication Sequences Using Automated Pattern Analysis.

Authors:  Mehedi Hasan; April Idalski Carcone; Sylvie Naar; Susan Eggly; Gwen L Alexander; Kathryn E Brogan Hartlieb; Alexander Kotov
Journal:  J Healthc Inform Res       Date:  2018-10-31

7.  Developing Machine Learning Models for Behavioral Coding.

Authors:  April Idalski Carcone; Mehedi Hasan; Gwen L Alexander; Ming Dong; Susan Eggly; Kathryn Brogan Hartlieb; Sylvie Naar; Karen MacDonell; Alexander Kotov
Journal:  J Pediatr Psychol       Date:  2019-04-01

8.  "It's hard to argue with a computer:" Investigating Psychotherapists' Attitudes towards Automated Evaluation.

Authors:  Tad Hirsch; Christina Soma; Kritzia Merced; Patty Kuo; Aaron Dembe; Derek D Caperton; David C Atkins; Zac E Imel
Journal:  DIS (Des Interact Syst Conf)       Date:  2018-06

9.  Data-Driven Implications for Translating Evidence-Based Psychotherapies into Technology-Delivered Interventions.

Authors:  Jessica Schroeder; Jina Suh; Chelsey Wilks; Mary Czerwinski; Sean A Munson; James Fogarty; Tim Althoff
Journal:  Int Conf Pervasive Comput Technol Healthc       Date:  2020-05

10.  Can a computer detect interpersonal skills? Using machine learning to scale up the Facilitative Interpersonal Skills task.

Authors:  Simon B Goldberg; Michael Tanana; Zac E Imel; David C Atkins; Clara E Hill; Timothy Anderson
Journal:  Psychother Res       Date:  2020-03-16
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