Research documents that Black patients experience worse general surgery outcomes than white patients in the United States. In this paper, we focus on an important but less-examined category: the surgical treatment of emergency general surgery (EGS) conditions, which refers to medical emergencies where the injury is ``endogenous,'' such as a burst appendix. Our goal is to assess racial disparities for common outcomes after EGS treatment using an administrative database of hospital claims in New York, Florida, and Pennsylvania, and to understand the extent to which differences are attributable to patient-level risk factors versus hospital-level factors. To do so, we use a class of linear weighting estimators that re-weight white patients to have a similar distribution of baseline characteristics as Black patients. This framework nests many common approaches, including matching and linear regression, but offers important advantages over these methods in terms of controlling imbalance between groups, minimizing extrapolation, and reducing computation time. Applying this approach to the claims data, we find that disparities estimates that adjust for the admitting hospital are substantially smaller than estimates that adjust for patient baseline characteristics only, suggesting that hospital-specific factors are important drivers of racial disparities in EGS outcomes.
翻译:研究文件显示,黑人病人比美国白人病人的普通外科手术结果更差。在本文中,我们侧重于一个重要但调查较少的类别:对紧急一般外科手术(EGS)条件的外科治疗,这是指伤情为“外源性”的紧急医疗情况,'例如爆裂附录。我们的目标是利用纽约、佛罗里达和宾夕法尼亚医院报销要求的行政数据库,评估EGS治疗后常见结果的种族差异,并了解病人一级风险因素与医院一级因素的差异程度。为了做到这一点,我们使用一类重新加权白人病人的线性加权估计值,以便把基线特征与黑人病人的分布相类似。这个框架将许多共同的方法嵌套在一起,包括匹配和线性回归,但在控制群体之间的不平衡、尽量减少外推和减少计算时间方面,为这些方法提供了重要的优势。在索赔数据中应用这一方法,我们发现,对入院医院的调整差异估计大大小于仅对病人基线特征进行调整的估计,表明医院特定因素是造成EGS结果中种族差异的重要驱动因素。