Suppr超能文献

言语声学分析用于自杀风险筛查:用于个体间和个体内评估自杀倾向的机器学习分类器。

Acoustic Analysis of Speech for Screening for Suicide Risk: Machine Learning Classifiers for Between- and Within-Person Evaluation of Suicidality.

机构信息

Department of Neuropsychiatry, Seoul National University Hospital, Seoul, Republic of Korea.

Department of Psychiatry, Seoul National University College of Medicine, Seoul, Republic of Korea.

出版信息

J Med Internet Res. 2023 Mar 23;25:e45456. doi: 10.2196/45456.

Abstract

BACKGROUND

Assessing a patient's suicide risk is challenging for health professionals because it depends on voluntary disclosure by the patient and often has limited resources. The application of novel machine learning approaches to determine suicide risk has clinical utility.

OBJECTIVE

This study aimed to investigate cross-sectional and longitudinal approaches to assess suicidality based on acoustic voice features of psychiatric patients using artificial intelligence.

METHODS

We collected 348 voice recordings during clinical interviews of 104 patients diagnosed with mood disorders at baseline and 2, 4, 8, and 12 months after recruitment. Suicidality was assessed using the Beck Scale for Suicidal Ideation and suicidal behavior using the Columbia Suicide Severity Rating Scale. The acoustic features of the voice, including temporal, formal, and spectral features, were extracted from the recordings. A between-person classification model that examines the vocal characteristics of individuals cross sectionally to detect individuals at high risk for suicide and a within-person classification model that detects considerable worsening of suicidality based on changes in acoustic features within an individual were developed and compared. Internal validation was performed using 10-fold cross validation of audio data from baseline to 2-month and external validation was performed using data from 2 to 4 months.

RESULTS

A combined set of 12 acoustic features and 3 demographic variables (age, sex, and past suicide attempts) were included in the single-layer artificial neural network for the between-person classification model. Furthermore, 13 acoustic features were included in the extreme gradient boosting machine learning algorithm for the within-person model. The between-person classifier was able to detect high suicidality with 69% accuracy (sensitivity 74%, specificity 62%, area under the receiver operating characteristic curve 0.62), whereas the within-person model was able to predict worsening suicidality over 2 months with 79% accuracy (sensitivity 68%, specificity 84%, area under receiver operating characteristic curve 0.67). The second model showed 62% accuracy in predicting increased suicidality in external sets.

CONCLUSIONS

Within-person analysis using changes in acoustic features within an individual is a promising approach to detect increased suicidality. Automated analysis of voice can be used to support the real-time assessment of suicide risk in primary care or telemedicine.

摘要

背景

评估患者的自杀风险对医疗专业人员来说具有挑战性,因为这取决于患者的自愿披露,而且通常资源有限。应用新型机器学习方法来确定自杀风险具有临床实用性。

目的

本研究旨在使用人工智能,通过精神病患者的声学语音特征,研究评估自杀意念的横断面和纵向方法。

方法

我们在招募后的基线和 2、4、8 和 12 个月,收集了 104 名被诊断为心境障碍的患者的 348 段临床访谈期间的语音记录。使用贝克自杀意念量表和哥伦比亚自杀严重程度评定量表评估自杀意念和自杀行为。从记录中提取语音的声学特征,包括时间、形式和频谱特征。开发并比较了一种个体间分类模型,该模型通过个体的声音特征来检测个体的自杀风险,以及一种个体内分类模型,该模型基于个体内声学特征的变化来检测自杀意念的显著恶化。使用基线至 2 个月的音频数据进行 10 折交叉验证进行内部验证,使用 2 至 4 个月的数据进行外部验证。

结果

个体间分类模型的单层人工神经网络包括 12 个声学特征和 3 个人口统计学变量(年龄、性别和既往自杀未遂)。此外,个体内极端梯度提升机器学习算法中包含 13 个声学特征。个体间分类器能够以 69%的准确率(敏感度 74%,特异性 62%,接受者操作特征曲线下面积 0.62)检测到高自杀意念,而个体内模型能够以 79%的准确率预测 2 个月内自杀意念的恶化(敏感度 68%,特异性 84%,接受者操作特征曲线下面积 0.67)。第二个模型在外部组中预测自杀意念增加的准确率为 62%。

结论

使用个体内部声学特征的变化进行个体内分析是一种有前途的方法,可以检测自杀意念的增加。语音的自动分析可以用于支持初级保健或远程医疗中的实时自杀风险评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ae7/10131783/f37ee5671ac8/jmir_v25i1e45456_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验