The attributable fraction among the exposed (\textbf{AF}$_e$), also known as the attributable risk or excess fraction among the exposed, is the proportion of disease cases among the exposed that could be avoided by eliminating the exposure. Understanding the \textbf{AF}$_e$ for different exposures helps guide public health interventions. The conventional approach to inference for the \textbf{AF}$_e$ assumes no unmeasured confounding and could be sensitive to hidden bias from unobserved covariates. In this paper, we propose a new approach to reduce sensitivity to hidden bias for conducting statistical inference on the \textbf{AF}$_e$ by leveraging case description information. Case description information is information that describes the case, e.g., the subtype of cancer. The exposure may have more of an effect on some types of cases than other types. We explore how leveraging case description information can reduce sensitivity to bias from unmeasured confounding through an asymptotic tool, design sensitivity, and simulation studies. We allow for the possibility that leveraging case definition information may introduce additional selection bias through an additional sensitivity parameter. The proposed methodology is illustrated by re-examining alcohol consumption and the risk of postmenopausal invasive breast cancer using case description information on the subtype of cancer (hormone-sensitive or insensitive) using data from the Women's Health Initiative (WHI) Observational Study (OS).
翻译:被暴露者(\ textbf{AF}$_e$)的可归因分数(\ textbf{AF}$_e$)也称为被暴露者中可归因的风险或超额分数,在被暴露者中,可归因的可归因的可归因的风险或超额分数中,可归因的可归因的可归因的可归因的被暴露者风险或超额分数。在本文中,我们提出一种新的方法,通过利用案例描述信息,降低被暴露者中通过消除接触而避免的疾病病例在被暴露者中的比例。理解对不同接触者中疾病病例的可分数。了解\ textbf{AF}$_e$_e$(美元)有助于指导公众健康干预措施。 通常情况下,对某类案例的影响可能大于其他类型的案例。 我们探讨如何利用案例描述信息信息,通过测试工具、设计灵敏度和模拟研究,减少对非计量的对不归因不测的对癌症的偏差的偏感。 我们允许在利用案例定义中,妇女对癌症进行病例的敏感度(通过选择的亚性研究) 使用新的研究,通过研究,对癌症进行更多的研究,对研究,对研究,对研究,对研究,对研究进行更多的癌症进行新的研究。</s>