Iyer Ravi, Meyer Denny
Centre for Mental Health, Swinburne University of Technology, Hawthorn, Australia.
JMIR Biomed Eng. 2022 Dec 22;7(2):e42386. doi: 10.2196/42386.
In an age when telehealth services are increasingly being used for forward triage, there is a need for accurate suicide risk detection. Vocal characteristics analyzed using artificial intelligence are now proving capable of detecting suicide risk with accuracies superior to traditional survey-based approaches, suggesting an efficient and economical approach to ensuring ongoing patient safety.
This systematic review aimed to identify which vocal characteristics perform best at differentiating between patients with an elevated risk of suicide in comparison with other cohorts and identify the methodological specifications of the systems used to derive each feature and the accuracies of classification that result.
A search of MEDLINE via Ovid, Scopus, Computers and Applied Science Complete, CADTH, Web of Science, ProQuest Dissertations and Theses A&I, Australian Policy Online, and Mednar was conducted between 1995 and 2020 and updated in 2021. The inclusion criteria were human participants with no language, age, or setting restrictions applied; randomized controlled studies, observational cohort studies, and theses; studies that used some measure of vocal quality; and individuals assessed as being at high risk of suicide compared with other individuals at lower risk using a validated measure of suicide risk. Risk of bias was assessed using the Risk of Bias in Non-randomized Studies tool. A random-effects model meta-analysis was used wherever mean measures of vocal quality were reported.
The search yielded 1074 unique citations, of which 30 (2.79%) were screened via full text. A total of 21 studies involving 1734 participants met all inclusion criteria. Most studies (15/21, 71%) sourced participants via either the Vanderbilt II database of recordings (8/21, 38%) or the Silverman and Silverman perceptual study recording database (7/21, 33%). Candidate vocal characteristics that performed best at differentiating between high risk of suicide and comparison cohorts included timing patterns of speech (median accuracy 95%), power spectral density sub-bands (median accuracy 90.3%), and mel-frequency cepstral coefficients (median accuracy 80%). A random-effects meta-analysis was used to compare 22 characteristics nested within 14% (3/21) of the studies, which demonstrated significant standardized mean differences for frequencies within the first and second formants (standardized mean difference ranged between -1.07 and -2.56) and jitter values (standardized mean difference=1.47). In 43% (9/21) of the studies, risk of bias was assessed as moderate, whereas in the remaining studies (12/21, 57%), the risk of bias was assessed as high.
Although several key methodological issues prevailed among the studies reviewed, there is promise in the use of vocal characteristics to detect elevations in suicide risk, particularly in novel settings such as telehealth or conversational agents.
PROSPERO International Prospective Register of Systematic Reviews CRD420200167413; https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42020167413.
在远程医疗服务越来越多地用于预检分诊的时代,准确检测自杀风险很有必要。利用人工智能分析的声音特征如今已证明能够以高于传统基于调查方法的准确率检测自杀风险,这表明了一种确保患者持续安全的高效且经济的方法。
本系统评价旨在确定与其他队列相比,哪些声音特征在区分自杀风险升高的患者方面表现最佳,并确定用于得出每个特征的系统的方法学规范以及由此产生的分类准确率。
于1995年至2020年期间在通过Ovid检索的MEDLINE、Scopus、计算机与应用科学全文数据库、加拿大药品和卫生技术局、科学网、ProQuest学位论文与综合数据库、澳大利亚政策在线数据库以及Mednar中进行检索,并于2021年更新。纳入标准为无语言、年龄或环境限制的人类参与者;随机对照研究、观察性队列研究和论文;使用某种声音质量测量方法的研究;以及使用经过验证的自杀风险测量方法评估为与其他低风险个体相比处于高自杀风险的个体。使用非随机研究中的偏倚风险工具评估偏倚风险。只要报告了声音质量的平均测量值,就使用随机效应模型进行荟萃分析。
检索得到1074条独特引文,其中30条(2.79%)通过全文筛选。共有21项涉及1734名参与者的研究符合所有纳入标准。大多数研究(15/21,71%)通过范德比尔特二世录音数据库(8/21,38%)或西尔弗曼和西尔弗曼感知研究录音数据库(7/21,33%)获取参与者。在区分高自杀风险和对照队列方面表现最佳的候选声音特征包括言语的时间模式(中位准确率95%)、功率谱密度子带(中位准确率90.3%)和梅尔频率倒谱系数(中位准确率80%)。使用随机效应荟萃分析比较了14%(3/21)的研究中包含的22个特征,结果表明第一和第二共振峰内的频率(标准化平均差在 -1.07至 -2.56之间)和抖动值(标准化平均差 = 1.47)存在显著的标准化平均差异。在43%(9/21)的研究中,偏倚风险被评估为中等,而在其余研究(12/21,57%)中,偏倚风险被评估为高。
尽管在所审查的研究中存在几个关键的方法学问题,但利用声音特征检测自杀风险升高仍有前景,尤其是在远程医疗或对话代理等新环境中。
国际系统评价前瞻性注册库PROSPERO,注册号CRD420200167413;https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42020167413 。