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首页> 外文期刊>Journal of the American Medical Informatics Association : >Unclassified drug overdose deaths in the opioid crisis: emerging patterns of inequity
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Unclassified drug overdose deaths in the opioid crisis: emerging patterns of inequity

机译:在阿片类药物危机中未分类的药物过量死亡:出现的不公平模式

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摘要

Objective: Examine whether individual, geographic, and economic phenotypes predict missing data on specific drug involvement in overdose deaths, manifesting inequities in overdose mortality data, which is a key data source used in measuring the opioid epidemic. Materials and Methods: We combined national data sources (mortality, demographic, economic, and geographic) from 2014-2016 in a multi-method analysis of missing drug classification in the overdose mortality records (as defined by the use of ICD-10 T50.9 on death certificates). We examined individual disparities in decedent-level multivariate logistic regression models, geographic disparities in spatial analysis (heat maps), and economic disparities in a combination of temporal trend analyses (descriptive statistics) and both decedent-and county-level multivariate logistic regression models. Results: Our analyses consistently found higher rates of unclassified overdoses in decedents of female gender, White race, non-Hispanic ethnicity, with college education, aged 30-59 and those from poorer counties. Despite the fact that unclassified drug overdose death rates have reduced over time, gaps persist between the richest and poorest counties. There are also striking geographic differences both across and within states. Discussion: Given the essential role of mortality data in measuring the scale of the opioid epidemic, it is important to understand the individual and community inequities underlying the missing data on specific drug involvements. Knowledge of these inequities could enhance our understanding of the opioid crisis and inform data-driven interventions and policies with more equitable resource allocations. Conclusion: Multiple individual, geographic, and economic disparities underlie unclassified overdose deaths, with important implications for public health informatics and addressing the opioid crisis.
机译:目的:审查个人,地理和经济表型是否预测缺失关于过量死亡的特定药物参与的数据,表现出过量的死亡率数据的不公平,这是用于测量阿片类疫情的关键数据源。材料和方法:我们将2014 - 2016年组合国家数据来源(死亡率,人口统计学,经济和地理)在过量的死亡率记录中缺失药物分类的多方法分析(如使用ICD-10 T50所定义。 9在死亡证书上)。我们在日期趋势分析(描述性统计数据)和解体和县级多变量后回归模型(描述性统计)和县级多变量逻辑回归模型中,检查了去性级多变量回归模型的单个差异,以及时期趋势分析(描述性统计)和县级多变量逻辑回归模型的结合和经济差异。结果:我们的分析始终如一地发现了女性性别,白种族,非西班牙语民族的死者的更高的未分类过度汇率,大学教育,年龄在30-59岁及来自较贫困县的人。尽管未经分类的药物过量死亡率随着时间的推移而减少,但在最富有和最贫穷的县之间存在差距。各国内部和州内的地理差异也存在醒目。讨论:鉴于死亡率数据在测量阿片类疫情的规模方面,重要的是要了解缺失数据缺失数据的个人和社区的基础上的特定药物参与。对这些不公平力的了解可以提高我们对阿片类药物危机的理解,并通过更公平的资源分配通知数据驱动干预措施和政策。结论:多个个人,地理和经济差异下降未经分类过量死亡,对公共卫生信息学的重要意义和解决阿片类药物危机。

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