Box 1904, Departments of Africana Studies, Brown University and Pathology and Laboratory Medicine, Warren Alpert Medical School of Brown University, Providence, RI, 02912, USA.
Box G-121-3, School of Public Health, Brown University, Providence, RI, 02912, USA.
Soc Sci Med. 2021 Jan;268:113548. doi: 10.1016/j.socscimed.2020.113548. Epub 2020 Nov 23.
The rise of evidence-based medicine, medical informatics, and genomics --- together with growing enthusiasm for machine learning and other types of algorithms to standardize medical decision-making --- has lent increasing credibility to biomedical knowledge as a guide to the practice of medicine. At the same time, concern over the lack of attention to the underlying assumptions and unintended health consequences of such practices, particularly the widespread use of race-based algorithms, from the simple to the complex, has caught the attention of both physicians and social scientists. Epistemological debates over the meaning of "the social" and "the scientific" are consequential in discussions of race and racism in medicine. In this paper, we examine the socio-scientific processes by which one algorithm that "corrects" for kidney function in African Americans became central to knowledge production about chronic kidney disease (CKD). Correction factors are now used extensively and routinely in clinical laboratories and medical practices throughout the US. Drawing on close textual analysis of the biomedical literature, we use the theoretical frameworks of science and technology studies to critically analyze the initial development of the race-based algorithm, its uptake, and its normalization. We argue that race correction of kidney function is a racialized biomedical practice that contributes to the consolidation of a long-established hierarchy of difference in medicine. Consequentially, correcting for race in the assessment of kidney function masks the complexity of the lived experience of societal neglect that damages health.
循证医学、医学信息学和基因组学的兴起——以及对机器学习和其他类型算法的日益热情,以标准化医疗决策——使得生物医学知识作为医学实践的指南越来越可信。与此同时,人们越来越关注这些实践缺乏对潜在假设和意外健康后果的关注,特别是广泛使用基于种族的算法,从简单到复杂,这引起了医生和社会科学家的关注。关于“社会”和“科学”含义的认识论争论在医学中的种族和种族主义讨论中具有重要意义。在本文中,我们研究了一种纠正非裔美国人肾功能的算法成为慢性肾脏病 (CKD) 知识生产核心的社会-科学过程。校正因子现在在美国各地的临床实验室和医疗实践中广泛而常规地使用。我们通过对生物医学文献的细致文本分析,利用科学技术研究的理论框架,批判性地分析了基于种族的算法的最初发展、采用和规范化。我们认为,肾脏功能的种族校正是一种种族化的生物医学实践,它促进了医学中早已确立的差异等级制度的巩固。因此,在评估肾功能时纠正种族会掩盖社会忽视对健康造成损害的复杂生活体验。