The Most Effective Interventions for Classification Model Development to Predict Chat Outcomes Based on the Conversation Content in Online Suicide Prevention Chats: Machine Learning Approach.

IF 4.8 2区 医学 Q1 PSYCHIATRY Jmir Mental Health Pub Date : 2024-09-26 DOI:10.2196/57362
Salim Salmi, Saskia Mérelle, Renske Gilissen, Rob van der Mei, Sandjai Bhulai
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Abstract

Background: For the provision of optimal care in a suicide prevention helpline, it is important to know what contributes to positive or negative effects on help seekers. Helplines can often be contacted through text-based chat services, which produce large amounts of text data for use in large-scale analysis.

Objective: We trained a machine learning classification model to predict chat outcomes based on the content of the chat conversations in suicide helplines and identified the counsellor utterances that had the most impact on its outputs.

Methods: From August 2021 until January 2023, help seekers (N=6903) scored themselves on factors known to be associated with suicidality (eg, hopelessness, feeling entrapped, will to live) before and after a chat conversation with the suicide prevention helpline in the Netherlands (113 Suicide Prevention). Machine learning text analysis was used to predict help seeker scores on these factors. Using 2 approaches for interpreting machine learning models, we identified text messages from helpers in a chat that contributed the most to the prediction of the model.

Results: According to the machine learning model, helpers' positive affirmations and expressing involvement contributed to improved scores of the help seekers. Use of macros and ending the chat prematurely due to the help seeker being in an unsafe situation had negative effects on help seekers.

Conclusions: This study reveals insights for improving helpline chats, emphasizing the value of an evocative style with questions, positive affirmations, and practical advice. It also underscores the potential of machine learning in helpline chat analysis.

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基于在线自杀预防聊天中的对话内容,开发分类模型以预测聊天结果的最有效干预措施:机器学习方法
背景:为了在预防自杀帮助热线中提供最佳护理,了解对求助者产生积极或消极影响的原因非常重要。人们通常可以通过基于文本的聊天服务与帮助热线取得联系,这种服务会产生大量文本数据,可用于大规模分析:我们训练了一个机器学习分类模型,以根据自杀求助热线的聊天对话内容预测聊天结果,并确定了对其输出影响最大的辅导员话语:从 2021 年 8 月到 2023 年 1 月,求助者(N=6903)在与荷兰自杀预防热线(113 自杀预防热线)进行聊天对话之前和之后,就已知与自杀相关的因素(如绝望、被困感、求生意愿)进行了自我评分。机器学习文本分析用于预测求助者在这些因素上的得分。我们使用了两种解释机器学习模型的方法,找出了聊天中对模型预测贡献最大的求助者文本信息:根据机器学习模型,求助者的积极肯定和表示参与有助于提高求助者的分数。宏的使用和因求助者处于不安全状态而过早结束聊天对求助者有负面影响:本研究揭示了改进求助热线聊天的方法,强调了提问、积极肯定和实用建议等唤起式风格的价值。它还强调了机器学习在求助热线聊天分析中的潜力。
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来源期刊
Jmir Mental Health
Jmir Mental Health Medicine-Psychiatry and Mental Health
CiteScore
10.80
自引率
3.80%
发文量
104
审稿时长
16 weeks
期刊介绍: JMIR Mental Health (JMH, ISSN 2368-7959) is a PubMed-indexed, peer-reviewed sister journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR Mental Health focusses on digital health and Internet interventions, technologies and electronic innovations (software and hardware) for mental health, addictions, online counselling and behaviour change. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations.
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