Glymour M Maria, Spiegelman Donna
M. Maria Glymour is with the Department of Epidemiology and Biostatistics, University of California, San Francisco. Donna Spiegelman is with the Departments of Epidemiology, Biostatistics, Nutrition, and Global Health, Harvard T. H. Chan School of Public Health, Boston, MA.
Am J Public Health. 2017 Jan;107(1):81-85. doi: 10.2105/AJPH.2016.303539. Epub 2016 Nov 17.
Counterfactual frameworks and statistical methods for supporting causal inference are powerful tools to clarify scientific questions and guide analyses in public health research. Counterfactual accounts of causation contrast what would happen to a population's health under alternative exposure scenarios. A long-standing debate in counterfactual theory relates to whether sex, race, and biological characteristics, including obesity, should be evaluated as causes, given that these variables do not directly correspond to clearly defined interventions. We argue that sex, race, and biological characteristics are important health determinants. Quantifying the overall health effects of these variables is often a natural starting point for disparities research. Subsequent assessments of biological or social pathways mediating those effects can facilitate the development of interventions designed to reduce disparities.
支持因果推断的反事实框架和统计方法是澄清科学问题和指导公共卫生研究分析的有力工具。因果关系的反事实解释对比了在不同暴露情景下人群健康会发生什么情况。反事实理论中一个长期存在的争论涉及性别、种族和包括肥胖在内的生物学特征是否应被视为原因,因为这些变量并不直接对应明确界定的干预措施。我们认为,性别、种族和生物学特征是重要的健康决定因素。量化这些变量对整体健康的影响通常是差异研究的自然起点。随后对介导这些影响的生物学或社会途径进行评估,有助于开发旨在减少差异的干预措施。