Reader Shane W, Breckenridge Ellen D, Chan Wenyaw, Walton Gretchen H, Linder Stephen H
University of Texas Health Science Center at Houston School of Public Health, United States.
University of Texas Health Science Center at Houston School of Public Health, United States.
Drug Alcohol Depend. 2023 Aug 1;249:109934. doi: 10.1016/j.drugalcdep.2023.109934. Epub 2023 May 19.
911 Good Samaritan Laws (GSLs) extend legal protection to people reporting drug overdoses who may otherwise be in violation of controlled substance laws. Mixed evidence suggests GSLs decrease overdose mortality, but these studies overlook substantial heterogeneity across states. The GSL Inventory exhaustively catalogs features of these laws into four categories: breadth, burden, strength, and exemption. The present study reduces this dataset to reveal patterns in implementation, facilitate future evaluations, and to produce a roadmap for the dimension reduction of further policy surveillance datasets.
We produced multidimensional scaling plots visualizing the frequency of co-occurring GSL features from the GSL Inventory as well as similarity among state laws. We clustered laws into meaningful groups by shared features; produced a decision tree identifying salient features predicting group membership; scored their relative breadth, burden, strength, and exemption of immunity; and associated groups with state sociopolitical and sociodemographic variables.
In the feature plot, breadth and strength features segregate from burdens and exemptions. Regions in the state plot differentiate quantity of substances immunized, burden of reporting requirements, and immunity for probationers. State laws may be clustered into five groups distinguished by proximity, salient features, and sociopolitical variables.
This study reveals competing attitudes toward harm reduction that underly GSLs across states. These analyses provide a roadmap for the application of dimension reduction methods to policy surveillance datasets, accommodating their binary structure and longitudinal observations. These methods preserve higher-dimensional variance in a form amenable to statistical evaluation.
911 急救免责法(GSLs)为报告药物过量情况的人提供法律保护,否则这些人可能会违反管制药品法律。混合证据表明,急救免责法可降低过量用药死亡率,但这些研究忽略了各州之间存在的巨大异质性。急救免责法清单将这些法律的特征详尽地分为四类:广度、负担、力度和豁免。本研究对该数据集进行简化,以揭示实施模式,便于未来评估,并为进一步的政策监测数据集的降维制定路线图。
我们制作了多维缩放图,以可视化急救免责法清单中共现的急救免责法特征的频率以及各州法律之间的相似性。我们根据共同特征将法律聚类为有意义的组;生成一棵决策树,识别预测组成员身份的显著特征;对其相对广度、负担、力度和豁免豁免权进行评分;并将组与州社会政治和社会人口变量相关联。
在特征图中,广度和力度特征与负担和豁免特征区分开来。州图中的区域区分了免疫物质的数量、报告要求的负担以及缓刑人员的豁免权。州法律可分为五组,这些组通过接近度、显著特征和社会政治变量来区分。
本研究揭示了各州急救免责法背后对减少伤害的相互矛盾的态度。这些分析为将降维方法应用于政策监测数据集提供了路线图,适应了它们的二元结构和纵向观察。这些方法以适合统计评估的形式保留了高维方差。