"It sounds like...": A natural language processing approach to detecting counselor reflections in motivational interviewing

J Couns Psychol. 2016 Apr;63(3):343-350. doi: 10.1037/cou0000111. Epub 2016 Jan 18.

Abstract

The dissemination and evaluation of evidence-based behavioral treatments for substance abuse problems rely on the evaluation of counselor interventions. In Motivational Interviewing (MI), a treatment that directs the therapist to utilize a particular linguistic style, proficiency is assessed via behavioral coding-a time consuming, nontechnological approach. Natural language processing techniques have the potential to scale up the evaluation of behavioral treatments such as MI. We present a novel computational approach to assessing components of MI, focusing on 1 specific counselor behavior-reflections, which are believed to be a critical MI ingredient. Using 57 sessions from 3 MI clinical trials, we automatically detected counselor reflections in a maximum entropy Markov modeling framework using the raw linguistic data derived from session transcripts. We achieved 93% recall, 90% specificity, and 73% precision. Results provide insight into the linguistic information used by coders to make ratings and demonstrate the feasibility of new computational approaches to scaling up the evaluation of behavioral treatments.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Behavior Therapy / methods
  • Counseling / methods*
  • Humans
  • Markov Chains
  • Motivational Interviewing / methods*
  • Natural Language Processing*
  • Students / psychology*