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Prevalent cases in observational studies of cancer survival: do they bias hazard ratio estimates?

机译:癌症存活率观察性研究中的普遍病例:它们是否会使危险比估计值产生偏差?

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摘要

Observational epidemiological studies often include prevalent cases recruited at various times past diagnosis. This left truncation can be dealt with in non-parametric (Kaplan–Meier) and semi-parametric (Cox) time-to-event analyses, theoretically generating an unbiased hazard ratio (HR) when the proportional hazards (PH) assumption holds. However, concern remains that inclusion of prevalent cases in survival analysis results inevitably in HR bias. We used data on three well-established breast cancer prognosticators – clinical stage, histopathological grade and oestrogen receptor (ER) status – from the SEARCH study, a population-based study including 4470 invasive breast cancer cases (incident and prevalent), to evaluate empirically the effectiveness of allowing for left truncation in limiting HR bias. We found that HRs of prognostic factors changed over time and used extended Cox models incorporating time-dependent covariates. When comparing Cox models restricted to subjects ascertained within six months of diagnosis (incident cases) to models based on the full data set allowing for left truncation, we found no difference in parameter estimates (P=0.90, 0.32 and 0.95, for stage, grade and ER status respectively). Our results show that use of prevalent cases in an observational epidemiological study of breast cancer does not bias the HR in a left truncation Cox survival analysis, provided the PH assumption holds true.
机译:观察流行病学研究通常包括在诊断后的不同时间招募的流行病例。可以在非参数(Kaplan–Meier)和半参数(Cox)事件发生时间分析中处理此左截断,理论上,当比例风险(PH)假设成立时,可以生成无偏风险比(HR)。然而,仍然存在的担忧是,在生存分析中纳入流行病例不可避免地导致了HR偏倚。我们使用了SEARCH研究中的三个公认的乳腺癌预后指标(临床分期,组织病理学分级和雌激素受体(ER)状态)的数据进行实证评估,该研究基于人群,包括4470例浸润性乳腺癌病例(事件和流行)在限制HR偏见方面允许左截断的有效性。我们发现,预后因素的HR随时间变化,并使用扩展的Cox模型并纳入了时间依赖性协变量。将诊断六个月内确定的受试者(事件病例)的Cox模型与基于允许左截断的完整数据集的模型进行比较时,我们发现阶段,等级的参数估计值没有差异(P = 0.90、0.32和0.95)和ER状态)。我们的研究结果表明,只要对PH假设成立,在乳腺癌的观察性流行病学研究中使用流行病例不会使HR在左截短Cox生存分析中产生偏倚。

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