Bather Jemar R, Kaphingst Kimberly A, Goodman Melody S
Center for Anti-racism, Social Justice & Public Health, School of Global Public Health, New York University, New York, NY, United States.
Department of Biostatistics, School of Global Public Health, New York University, New York, NY, United States.
JMIR Public Health Surveill. 2024 Aug 8;10:e55461. doi: 10.2196/55461.
Studies investigating the impact of racial segregation on health have reported mixed findings and tended to focus on the racial composition of neighborhoods. These studies use varying racial composition measures, such as census data or investigator-adapted questions, which are currently limited to assessing one dimension of neighborhood racial composition.
This study aims to develop and validate a novel racial segregation measure, the Pictorial Racial Composition Measure (PRCM).
The PRCM is a 10-item questionnaire of pictures representing social environments across adolescence and adulthood: neighborhoods and blocks (adolescent and current), schools and classrooms (junior high and high school), workplace, and place of worship. Cognitive interviews (n=13) and surveys (N=549) were administered to medically underserved patients at a primary care clinic at the Barnes-Jewish Hospital. Development of the PRCM occurred across pilot and main phases. For each social environment and survey phase (pilot and main), we computed positive versus negative pairwise comparisons: mostly Black versus all other categories, half Black versus all other categories, and mostly White versus all other categories. We calculated the following validity metrics for each pairwise comparison: sensitivity, specificity, correct classification rate, positive predictive value, negative predictive value, positive likelihood ratio, negative likelihood ratio, false positive rate, and false negative rate.
For each social environment, the mostly Black and mostly White dichotomizations generated better validity metrics relative to the half Black dichotomization. Across all 10 social environments in the pilot and main phases, mostly Black and mostly White dichotomizations exhibited a moderate-to-high sensitivity, specificity, correct classification rate, positive predictive value, and negative predictive value. The positive likelihood ratio values were >1, and the negative likelihood ratio values were close to 0. The false positive and negative rates were low to moderate.
These findings support that using either the mostly Black versus other categories or the mostly White versus other categories dichotomizations may provide accurate and reliable measures of racial composition across the 10 social environments. The PRCM can serve as a uniform measure across disciplines, capture multiple social environments over the life course, and be administered during one study visit. The PRCM also provides an added window into understanding how structural racism has impacted minoritized communities and may inform equitable intervention and prevention efforts to improve lives.
研究种族隔离对健康影响的研究结果不一,且往往侧重于社区的种族构成。这些研究使用了不同的种族构成衡量指标,如人口普查数据或研究者改编的问题,目前这些指标仅限于评估社区种族构成的一个维度。
本研究旨在开发并验证一种新的种族隔离衡量指标,即图片种族构成衡量指标(PRCM)。
PRCM是一份包含10个项目的问卷,以图片形式呈现青少年和成年期的社会环境:社区和街区(青少年时期和当前)、学校和教室(初中和高中)、工作场所和礼拜场所。对巴恩斯-犹太医院初级保健诊所中医疗服务不足的患者进行了认知访谈(n = 13)和调查(N = 549)。PRCM的开发分试点阶段和主要阶段进行。对于每个社会环境和调查阶段(试点和主要阶段),我们计算了正向与负向的两两比较:主要为黑人与所有其他类别、一半为黑人与所有其他类别、主要为白人与所有其他类别。我们为每个两两比较计算了以下效度指标:敏感度、特异度、正确分类率、阳性预测值、阴性预测值、阳性似然比、阴性似然比、假阳性率和假阴性率。
对于每个社会环境,相对于一半为黑人的二分法,主要为黑人与主要为白人的二分法产生了更好的效度指标。在试点阶段和主要阶段的所有10个社会环境中,主要为黑人与主要为白人的二分法表现出中等到高的敏感度、特异度、正确分类率、阳性预测值和阴性预测值。阳性似然比值>1,阴性似然比值接近0。假阳性率和假阴性率低到中等。
这些发现支持使用主要为黑人与其他类别或主要为白人与其他类别的二分法,可能为这10个社会环境中的种族构成提供准确可靠的衡量指标。PRCM可以作为跨学科的统一衡量指标,涵盖生命历程中的多个社会环境,并且可以在一次研究访问中进行。PRCM还为理解结构性种族主义如何影响少数族裔社区提供了一个额外的窗口,并可能为公平的干预和预防努力提供信息,以改善生活。