首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Semiparametric regression calibration for general hazard models in survival analysis with covariate measurement error; surprising performance under linear hazard
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Semiparametric regression calibration for general hazard models in survival analysis with covariate measurement error; surprising performance under linear hazard

机译:用于共变量测量误差的生存分析中一般危害模型的半造型回归校准; 线性危害下的令人惊讶的表现

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Observational epidemiological studies often confront the problem of estimating exposure-disease relationships when the exposure is not measured exactly. Regression calibration (RC) is a common approach to correct for bias in regression analysis with covariate measurement error. In survival analysis with covariate measurement error, it is well known that the RC estimator may be biased when the hazard is an exponential function of the covariates. In the paper, we investigate the RC estimator with general hazard functions, including exponential and linear functions of the covariates. When the hazard is a linear function of the covariates, we show that a risk set regression calibration (RRC) is consistent and robust to a working model for the calibration function. Under exponential hazard models, there is a trade-off between bias and efficiency when comparing RC and RRC. However, one surprising finding is that the trade-off between bias and efficiency in measurement error research is not seen under linear hazard when the unobserved covariate is from a uniform or normal distribution. Under this situation, the RRC estimator is in general slightly better than the RC estimator in terms of both bias and efficiency. The methods are applied to the Nutritional Biomarkers Study of the Women's Health Initiative.
机译:观察性流行病学研究通常会面临估计暴露时估计暴露疾病关系的问题。回归校准(RC)是一种校正与协变量测量误差的回归分析中偏差的常见方法。在具有协变量测量误差的生存分析中,众所周知,当危险是协变量的指数函数时,RC估计器可能被偏置。在本文中,我们调查了具有一般危险功能的RC估计,包括协变量的指数和线性功能。当危险是协变量的线性函数时,我们表明风险集回归校准(RRC)对校准功能的工作模型一致且鲁棒。在指数危险模型下,在比较RC和RRC时偏置和效率之间存在权衡。然而,一个令人惊讶的发现是,当未被观察的协变量来自均匀或正常分布时,在线性危险下没有看到偏差和测量误差研究之间的折衷。在这种情况下,RRC估计器通常比RC估算器略微好于偏差和效率。该方法适用于妇女健康倡议的营养生物标志物研究。

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