Parsapoor Mah Parsa Mahboobeh, Koudys Jacob W, Ruocco Anthony C
Speech and Data Science Groups, CRIM - Centre de Recherche Informatique de Montréal, Montreal, QC, Canada.
Department of Psychological Clinical Science, University of Toronto, Toronto, ON, Canada.
Front Psychiatry. 2023 Jul 24;14:1186569. doi: 10.3389/fpsyt.2023.1186569. eCollection 2023.
Suicide is a leading cause of death that demands cross-disciplinary research efforts to develop and deploy suicide risk screening tools. Such tools, partly informed by influential suicide theories, can help identify individuals at the greatest risk of suicide and should be able to predict the transition from suicidal thoughts to suicide attempts. Advances in artificial intelligence have revolutionized the development of suicide screening tools and suicide risk detection systems. Thus, various types of AI systems, including text-based systems, have been proposed to identify individuals at risk of suicide. Although these systems have shown acceptable performance, most of them have not incorporated suicide theories in their design. Furthermore, directly applying suicide theories may be difficult because of the diversity and complexity of these theories. To address these challenges, we propose an approach to develop speech- and language-based suicide risk detection systems. We highlight the promise of establishing a benchmark textual and vocal dataset using a standardized speech and language assessment procedure, and research designs that distinguish between the risk factors for suicide attempt above and beyond those for suicidal ideation alone. The benchmark dataset could be used to develop trustworthy machine learning or deep learning-based suicide risk detection systems, ultimately constructing a foundation for vocal and textual-based suicide risk detection systems.
自杀是主要的死亡原因之一,需要跨学科研究努力来开发和应用自杀风险筛查工具。这类工具部分受有影响力的自杀理论的启发,能够帮助识别自杀风险最高的个体,并且应该能够预测从自杀念头到自杀未遂的转变。人工智能的进步彻底改变了自杀筛查工具和自杀风险检测系统的发展。因此,已经提出了包括基于文本的系统在内的各种类型的人工智能系统来识别有自杀风险的个体。尽管这些系统表现出了可接受的性能,但其中大多数在设计中并未纳入自杀理论。此外,由于这些理论的多样性和复杂性,直接应用自杀理论可能会很困难。为应对这些挑战,我们提出了一种开发基于语音和语言的自杀风险检测系统的方法。我们强调利用标准化的语音和语言评估程序建立基准文本和语音数据集的前景,以及区分仅为自杀意念的风险因素与自杀未遂的风险因素的研究设计。该基准数据集可用于开发可靠的基于机器学习或深度学习的自杀风险检测系统,最终为基于语音和文本的自杀风险检测系统奠定基础。