BMC Medical Education (Mar 2024)

Motivational interviewing skills practice enhanced with artificial intelligence: ReadMI

  • Paul J. Hershberger,
  • Yong Pei,
  • Dean A. Bricker,
  • Timothy N. Crawford,
  • Ashutosh Shivakumar,
  • Angie Castle,
  • Katharine Conway,
  • Raveendra Medaramitta,
  • Maria Rechtin,
  • Josephine F. Wilson

DOI
https://doi.org/10.1186/s12909-024-05217-4
Journal volume & issue
Vol. 24, no. 1
pp. 1 – 8

Abstract

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Abstract Background Finding time in the medical curriculum to focus on motivational interviewing (MI) training is a challenge in many medical schools. We developed a software-based training tool, “Real-time Assessment of Dialogue in Motivational Interviewing” (ReadMI), that aims to advance the skill acquisition of medical students as they learn the MI approach. This human-artificial intelligence teaming may help reduce the cognitive load on a training facilitator. Methods During their Family Medicine clerkship, 125 third-year medical students were scheduled in pairs to participate in a 90-minute MI training session, with each student doing two role-plays as the physician. Intervention group students received both facilitator feedback and ReadMI metrics after their first role-play, while control group students received only facilitator feedback. Results While students in both conditions improved their MI approach from the first to the second role-play, those in the intervention condition used significantly more open-ended questions, fewer closed-ended questions, and had a higher ratio of open to closed questions. Conclusion MI skills practice can be gained with a relatively small investment of student time, and artificial intelligence can be utilized both for the measurement of MI skill acquisition and as an instructional aid.

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