Machine Learning–Based Evaluation of Suicide Risk Assessment in Crisis Counseling Calls

作者: Zac E Imel , Brian Pace , Brad Pendergraft , Jordan Pruett , Michael Tanana

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摘要: ObjectiveCounselor 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.MethodsTo 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.ResultsGenerally, the evaluated ML model was highly consistent with …

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