Prediction of the mechanism of suicide among Minnesota residents using data from the Minnesota violent death reporting system (MNVDRS).

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-22 DOI:10.1136/ip-2024-045271
Daniel C Waller, Julian Wolfson, Stefan Gingerich, Nate Wright, Marizen R Ramirez
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Abstract

Background: Suicide remains a major public health problem, and firearms are used in approximately half of all such incidents. This study sought to predict the occurrence of suicide specifically by firearm, as opposed to any other means of suicide, in order to help inform possible life-saving interventions.

Methods: This study involved data from the Minnesota Violent Death Reporting System. Models evaluated whether data beyond basic demographics generated increased prediction accuracy. Models were built using random forests, logistic regression and data imputation. Models were evaluated for prediction accuracy using the area under the curve analysis and for proper calibration.

Results: Results showed that models constructed with social determinants and personal history data led to increased prediction accuracy in comparison to models constructed with basic demographic information only. The study identified an optimised 'top 20' variables model with a 73% chance of correctly discerning relative incident risk for a pair of individuals. Age, height/weight, employment industry/occupation, sex and education level were found to be most highly predictive of firearm suicide in the study's 'top 20' model.

Conclusions: The study demonstrated that the use of a firearm in a death by suicide, as opposed to any other means of suicide, can be reasonably well predicted when an individual's social determinants and personal history are considered. These predictive models could help inform many prevention strategies, such as safe storage practices, background checks for firearm purchases or red flag laws.

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利用明尼苏达州暴力死亡报告系统 (MNVDRS) 的数据预测明尼苏达州居民的自杀机制。
背景:自杀仍然是一个重大的公共卫生问题,在所有此类事件中,约有一半使用了枪支。本研究旨在预测枪支自杀(而非其他自杀方式)的发生率,以便为可能的救生干预措施提供信息:本研究涉及来自明尼苏达州暴力死亡报告系统的数据。模型评估了基本人口统计学数据之外的数据是否能提高预测准确性。使用随机森林、逻辑回归和数据估算建立了模型。使用曲线下面积分析和适当的校准对模型的预测准确性进行了评估:结果表明,与仅使用基本人口信息构建的模型相比,使用社会决定因素和个人历史数据构建的模型可提高预测准确性。研究确定了一个优化的 "前 20 个 "变量模型,该模型有 73% 的几率正确判定一对个体的相对发病风险。在该研究的 "前 20 个 "模型中,年龄、身高/体重、就业行业/职业、性别和教育水平对持枪自杀的预测性最高:该研究表明,如果考虑到个人的社会决定因素和个人历史,那么使用枪支自杀而非其他任何自杀手段致死的情况可以得到合理的预测。这些预测模型有助于为许多预防策略提供依据,例如安全储存方法、枪支购买背景调查或红旗法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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