使用行政医疗保健数据改进预测退伍军人阿片类药物过量和自杀事件的先进模型。

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES
Ralph Ward, Erin Weeda, David J Taber, Robert Neal Axon, Mulugeta Gebregziabher
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引用次数: 1

摘要

阿片类药物流行对退伍军人的健康造成了不成比例的影响,包括过量服用、自杀和死亡。基于电子病历数据的预测模型可以成为识别高危患者的有力工具。退伍军人健康管理局于2018年实施了阿片类药物风险缓解分层工具(STORM)。在本研究中,我们提出了对原始STORM模型的修改,并提出了提高风险预测性能的替代模型。这些建议的模型中最好的是使用多元广义线性混合模型(mGLMM)方法对过量和自杀相关事件(SRE)进行单独预测,而不是对综合结果进行单一预测。进一步的改进包括在纵向设置中加入额外的数据源和新的预测变量。与具有相同结果、预测器和相互作用项的STORM模型的修改版本相比,我们提出的模型在AUC(84%对77%)和灵敏度(71%对66%)方面具有更好的预测性能。mGLMM在识别有SREs风险的患者方面表现特别好,其中在100,000个最高风险评分的患者中,72%的实际事件被准确预测,而改进的STORM模型为49.7%。考虑到该模型的主要目的是准确识别不良后果风险最高的患者,从而优先接受风险缓解干预措施,mGLMM在识别最高风险组中的真实病例(敏感性)方面的出色表现是最重要的改进。在提出的模型中,一些预测因子与过量用药和自杀风险有明显不同的关联,这将使临床医生能够更好地针对最相关的风险进行干预。补充资料:在线版本提供补充资料,编号:10.1007/s10742-021-00263-7。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data.

Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data.

Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data.

Advanced models for improved prediction of opioid-related overdose and suicide events among Veterans using administrative healthcare data.

Veterans suffer disproportionate health impacts from the opioid epidemic, including overdose, suicide, and death. Prediction models based on electronic medical record data can be powerful tools for identifying patients at greatest risk of such outcomes. The Veterans Health Administration implemented the Stratification Tool for Opioid Risk Mitigation (STORM) in 2018. In this study we propose changes to the original STORM model and propose alternative models that improve risk prediction performance. The best of these proposed models uses a multivariate generalized linear mixed modeling (mGLMM) approach to produce separate predictions for overdose and suicide-related events (SRE) rather than a single prediction for combined outcomes. Further improvements include incorporation of additional data sources and new predictor variables in a longitudinal setting. Compared to a modified version of the STORM model with the same outcome, predictor and interaction terms, our proposed model has a significantly better prediction performance in terms of AUC (84% vs. 77%) and sensitivity (71% vs. 66%). The mGLMM performed particularly well in identifying patients at risk for SREs, where 72% of actual events were accurately predicted among patients with the 100,000 highest risk scores compared with 49.7% for the modified STORM model. The mGLMM's strong performance in identifying true cases (sensitivity) among this highest risk group was the most important improvement given the model's primary purpose for accurately identifying patients at most risk for adverse outcomes such that they are prioritized to receive risk mitigation interventions. Some predictors in the proposed model have markedly different associations with overdose and suicide risks, which will allow clinicians to better target interventions to the most relevant risks.

Supplementary information: The online version contains supplementary material available at 10.1007/s10742-021-00263-7.

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来源期刊
Health Services and Outcomes Research Methodology
Health Services and Outcomes Research Methodology HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.40
自引率
6.70%
发文量
28
期刊介绍: The journal reflects the multidisciplinary nature of the field of health services and outcomes research. It addresses the needs of multiple, interlocking communities, including methodologists in statistics, econometrics, social and behavioral sciences; designers and analysts of health policy and health services research projects; and health care providers and policy makers who need to properly understand and evaluate the results of published research. The journal strives to enhance the level of methodologic rigor in health services and outcomes research and contributes to the development of methodologic standards in the field. In pursuing its main objective, the journal also provides a meeting ground for researchers from a number of traditional disciplines and fosters the development of new quantitative, qualitative, and mixed methods by statisticians, econometricians, health services researchers, and methodologists in other fields. Health Services and Outcomes Research Methodology publishes: Research papers on quantitative, qualitative, and mixed methods; Case Studies describing applications of quantitative and qualitative methodology in health services and outcomes research; Review Articles synthesizing and popularizing methodologic developments; Tutorials; Articles on computational issues and software reviews; Book reviews; and Notices. Special issues will be devoted to papers presented at important workshops and conferences.
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