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

Journal: Journal of counseling psychology
Published Date:

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.

Authors

  • Doğan Can
    Department of Computer Science, University of Southern California.
  • Rebeca A Marín
    Department of Psychiatry and Behavioral Sciences, University of Washington.
  • Panayiotis G Georgiou
    Department of Computer Science, University of Southern California.
  • Zac E Imel
    University of Utah.
  • David C Atkins
    University of Washington.
  • Shrikanth S Narayanan