Identifying key risk factors for intentional self-harm, including suicide, among a cohort of people prescribed opioid agonist treatment: A predictive modelling study.

IF 5.2 1区 医学 Q1 PSYCHIATRY
Addiction Pub Date : 2025-05-25 DOI:10.1111/add.70095
Nicola R Jones, Matthew Hickman, Chrianna Bharat, Suzanne Nielsen, Sarah Larney, Nimnaz Fathima Ghouse, Julia Lappin, Louisa Degenhardt
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引用次数: 0

Abstract

Background and aims: People with opioid use disorder are at increased risk of intentional self-harm and suicide. Although risk factors are well known, most tools for identifying individuals at highest risk of these behaviours have limited clinical value. We aimed to develop and internally validate models to predict intentional self-harm and suicide risk among people who have been in opioid agonist treatment (OAT).

Design: Retrospective observational cohort study using linked administrative data.

Setting: New South Wales, Australia.

Participants: 46 330 people prescribed OAT between January 2005 and November 2017.

Measurements: Intentional self-harm and suicide prediction within a 30-day window using linked population datasets for OAT, hospitalisation, mental health care, incarceration and mortality. Machine learning algorithms, including neural networks and gradient boosting, assessed over 80 factors during the last 3, 6 and 12 months. Feature visualisation using SHapley Additive exPlanations.

Findings: Gradient boosting identified 30 important factors in predicting self-harm and/or suicide. These included the most recent frequency of emergency department presentations; hospital admissions involving mental disorders such as borderline personality, substance dependence, psychosis and depression/anxiety; and recent release from incarceration. The best fitting model had a Gini coefficient of 0.65 [area under the curve (AUC) = 0.82] and was applied to 2017 data to estimate the probability of self-harm and/or suicide. On average 46 people (0.16%) (from a total of 28 000 people in OAT) experienced intentional self-harm or suicide per month. Applying a 0.15% probability threshold, approximately 5167 people were classified as high risk, identifying 69% of all self-harm or suicide cases per month. This figure reduced to 450 per month after excluding people already identified in the previous month.

Conclusions: Among people in opioid agonist treatment, administrative linked data can be used with advanced machine learning algorithms to predict self-harm and/or suicide in a 30-day prediction window.

确定阿片类激动剂治疗人群中故意自残(包括自杀)的关键风险因素:一项预测模型研究
背景和目的:阿片类药物使用障碍患者有意自残和自杀的风险增加。虽然风险因素是众所周知的,但大多数用于识别这些行为最高风险个体的工具具有有限的临床价值。我们旨在开发并内部验证模型,以预测接受阿片类激动剂治疗(OAT)的人的故意自残和自杀风险。设计:回顾性观察队列研究,使用相关的行政数据。环境:澳大利亚新南威尔士州。参与者:2005年1月至2017年11月期间处方OAT的46330人。测量方法:使用OAT、住院、精神卫生保健、监禁和死亡率相关的人口数据集,在30天内预测故意自残和自杀。机器学习算法,包括神经网络和梯度增强,在过去的3、6和12个月里评估了80多个因素。使用SHapley加法解释的特征可视化。研究结果:梯度增强确定了预测自残和/或自杀的30个重要因素。其中包括最近在急诊科就诊的频率;因边缘型人格、物质依赖、精神病和抑郁/焦虑等精神障碍入院;最近刚从监狱释放。最佳拟合模型的基尼系数为0.65[曲线下面积(AUC) = 0.82],并应用于2017年的数据来估计自残和/或自杀的概率。平均每月有46人(0.16%)(来自共28000名OAT参与者)经历过故意自残或自杀。应用0.15%的概率阈值,大约有5167人被归类为高风险,每月确定69%的自残或自杀案件。除去上个月已经确定的人,这个数字减少到每月450人。结论:在接受阿片类激动剂治疗的人群中,管理关联数据可以与先进的机器学习算法一起使用,在30天的预测窗口内预测自残和/或自杀。
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来源期刊
Addiction
Addiction 医学-精神病学
CiteScore
10.80
自引率
6.70%
发文量
319
审稿时长
3 months
期刊介绍: Addiction publishes peer-reviewed research reports on pharmacological and behavioural addictions, bringing together research conducted within many different disciplines. Its goal is to serve international and interdisciplinary scientific and clinical communication, to strengthen links between science and policy, and to stimulate and enhance the quality of debate. We seek submissions that are not only technically competent but are also original and contain information or ideas of fresh interest to our international readership. We seek to serve low- and middle-income (LAMI) countries as well as more economically developed countries. Addiction’s scope spans human experimental, epidemiological, social science, historical, clinical and policy research relating to addiction, primarily but not exclusively in the areas of psychoactive substance use and/or gambling. In addition to original research, the journal features editorials, commentaries, reviews, letters, and book reviews.
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