Although thriving in many respects, racial health disparities research suffers from a lack of historical analysis and may be in danger of reaching a saturation point. This article examines how renewed attention to history can enhance the explanatory power of such research. First, it surveys a body of writing on what history can contribute to contemporary social science and policy debates. Next, it compares current racial health disparities research to the analytical impasse encountered by urban poverty researchers of the late 1980s and early 1990s. It contrasts that work with two classic post-Second World War urban histories, and identifies qualities of the latter lacking in conventional social science. The essay then surveys historically oriented works on race and health, pointing out their usefulness to racial health disparities research while discussing promising future research directions. It concludes with a brief reflection on changes in the academic institutional context necessary for fruitful synergy between public health researchers and historians.
Mathematical models have come to play a key role in global pandemic preparedness and outbreak response: helping to plan for disease burden, hospital capacity, and inform nonpharmaceutical interventions. Such models have played a pivotal role in the COVID-19 pandemic, with transmission models—and, by consequence, modelers—guiding global, national, and local responses to SARS-CoV-2. However, these models have largely not accounted for the social and structural factors, which lead to socioeconomic, racial, and geographic health disparities. In this piece, we raise and attempt to clarify several questions relating to this important gap in the research and practice of infectious disease modeling: Why do epidemiologic models of emerging infections typically ignore known structural drivers of disparate health outcomes? What have been the consequences of a framework focused primarily on aggregate outcomes on infection equity? What should be done to develop a more holistic approach to modeling-based decision-making during pandemics? In this review, we evaluate potential historical and political explanations for the exclusion of drivers of disparity in infectious disease models for emerging infections, which have often been characterized as “equal opportunity infectors” despite ample evidence to the contrary. We look to examples from other disease systems (HIV, STIs) and successes in including social inequity in models of acute infection transmission as a blueprint for how social connections, environmental, and structural factors can be integrated into a coherent, rigorous, and interpretable modeling framework. We conclude by outlining principles to guide modeling of emerging infections in ways that represent the causes of inequity in infection as central rather than peripheral mechanisms.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.