多酚风险评分对未来长期自杀行为具有较强的预测能力。

Discover mental health Pub Date : 2022-01-01 Epub Date: 2022-06-13 DOI:10.1007/s44192-022-00016-z
M Cheng, K Roseberry, Y Choi, L Quast, M Gaines, G Sandusky, J A Kline, P Bogdan, A B Niculescu
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引用次数: 0

摘要

如果追踪和减轻风险因素,自杀是可以预防的悲剧。我们之前开发了一种新的定量自杀风险评估工具(自杀收敛功能信息,CFI-S),本质上是一种简单的多基因风险评分,并将其应用于繁忙的城市医院急诊科,在连续患者的自然队列中。我们对该人群进行了为期四年的随访(n = 482)。总体而言,单次给药CFI-S可显著预测随后4年的自杀行为(发生率- ROC AUC为80%,严重程度- Pearson相关性为0.44,紧急- cox回归风险比为1.33)。最好的预测单因素(表型项)是感觉无用(不被需要)、过去的自杀史和社会孤立。接下来,我们使用机器学习方法来增强CFI-S的预测能力。我们将人群分为发现队列(n = 255)和测试队列(n = 227),并开发了深度神经网络算法,该算法在预测未来自杀风险方面显示出更高的准确性(将ROC AUC从80%提高到90%),以及用于可视化患者风险的相似网络分类器。我们建议将CFI-S广泛用于筛查目的,无论是否增强机器学习功能,都可以促进自杀预防工作。该研究还确定了可解决的社会决定因素作为自杀的首要危险因素。补充资料:在线版本包含补充资料,提供地址:10.1007/s44192-022-00016-z。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Polyphenic risk score shows robust predictive ability for long-term future suicidality.

Polyphenic risk score shows robust predictive ability for long-term future suicidality.

Polyphenic risk score shows robust predictive ability for long-term future suicidality.

Polyphenic risk score shows robust predictive ability for long-term future suicidality.

Suicides are preventable tragedies, if risk factors are tracked and mitigated. We had previously developed a new quantitative suicidality risk assessment instrument (Convergent Functional Information for Suicidality, CFI-S), which is in essence a simple polyphenic risk score, and deployed it in a busy urban hospital Emergency Department, in a naturalistic cohort of consecutive patients. We report a four years follow-up of that population (n = 482). Overall, the single administration of the CFI-S was significantly predictive of suicidality over the ensuing 4 years (occurrence- ROC AUC 80%, severity- Pearson correlation 0.44, imminence-Cox regression Hazard Ratio 1.33). The best predictive single phenes (phenotypic items) were feeling useless (not needed), a past history of suicidality, and social isolation. We next used machine learning approaches to enhance the predictive ability of CFI-S. We divided the population into a discovery cohort (n = 255) and testing cohort (n = 227), and developed a deep neural network algorithm that showed increased accuracy for predicting risk of future suicidality (increasing the ROC AUC from 80 to 90%), as well as a similarity network classifier for visualizing patient's risk. We propose that the widespread use of CFI-S for screening purposes, with or without machine learning enhancements, can boost suicidality prevention efforts. This study also identified as top risk factors for suicidality addressable social determinants.

Supplementary information: The online version contains supplementary material available at 10.1007/s44192-022-00016-z.

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