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Abstract

Objective:

Counselor assessment of suicide risk is one key component of crisis counseling, and standards require risk assessment in every crisis counseling conversation. Efforts to increase risk assessment frequency are limited by quality improvement tools that rely on human evaluation of conversations, which is labor intensive, slow, and impossible to scale. Advances in machine learning (ML) have made possible the development of tools that can automatically and immediately detect the presence of risk assessment in crisis counseling conversations.

Methods:

To train models, a coding team labeled every statement in 476 crisis counseling calls (193,257 statements) for a core element of risk assessment. The authors then fine-tuned a transformer-based ML model with the labeled data, utilizing separate training, validation, and test data sets.

Results:

Generally, the evaluated ML model was highly consistent with human raters. For detecting any risk assessment, ML model agreement with human ratings was 98% of human interrater agreement. Across specific labels, average F1 (the harmonic mean of precision and recall) was 0.86 at the call level and 0.66 at the statement level and often varied as a result of a low base rate for some risk labels.

Conclusions:

ML models can reliably detect the presence of suicide risk assessment in crisis counseling conversations, presenting an opportunity to scale quality improvement efforts.

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Information & Authors

Information

Published In

Go to Psychiatric Services
Go to Psychiatric Services
Psychiatric Services
Pages: 1068 - 1074
PubMed: 39026467

History

Received: 27 December 2023
Revision received: 15 February 2024
Accepted: 21 March 2024
Published online: 19 July 2024
Published in print: November 01, 2024

Keywords

  1. crisis counseling
  2. quality assurance
  3. machine learning
  4. AI
  5. suicide

Authors

Details

Zac E. Imel, Ph.D. [email protected]
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
Brian Pace, Ph.D.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
Brad Pendergraft, L.C.S.W.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
Jordan Pruett, Ph.D.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
Michael Tanana, Ph.D.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
Christina S. Soma, Ph.D.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
Kate A. Comtois, Ph.D., M.P.H.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).
David C. Atkins, Ph.D.
Lyssn.io, Seattle (Imel, Pace, Pruett, Tanana, Soma, Atkins); Protocall Services, Portland, Oregon (Pendergraft); Harborview Medical Center, University of Washington, Seattle (Comtois).

Notes

Send correspondence to Dr. Imel ([email protected]).

Competing Interests

Drs. Imel, Pace, Tanana, and Atkins are equity shareholders in Lyssn.io, of which Drs. Imel, Tanana, and Atkins are cofounders. The other authors report no financial relationships with commercial interests.

Funding Information

This work was supported by NIMH grant 1R44MH13351701.The content of this article is solely the responsibility of the authors and does not necessarily represent the official views of NIMH or NIH.

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