Thomas Laine, Stefanski Leonard, Davidian Marie
Department of Biostatistics and Bioinformatics, Duke University, Durham, North Carolina 27705, USA.
Biometrics. 2011 Dec;67(4):1461-70. doi: 10.1111/j.1541-0420.2011.01569.x. Epub 2011 Mar 8.
Studies of clinical characteristics frequently measure covariates with a single observation. This may be a mismeasured version of the "true" phenomenon due to sources of variability like biological fluctuations and device error. Descriptive analyses and outcome models that are based on mismeasured data generally will not reflect the corresponding analyses based on the "true" covariate. Many statistical methods are available to adjust for measurement error. Imputation methods like regression calibration and moment reconstruction are easily implemented but are not always adequate. Sophisticated methods have been proposed for specific applications like density estimation, logistic regression, and survival analysis. However, it is frequently infeasible for an analyst to adjust each analysis separately, especially in preliminary studies where resources are limited. We propose an imputation approach called moment-adjusted imputation that is flexible and relatively automatic. Like other imputation methods, it can be used to adjust a variety of analyses quickly, and it performs well under a broad range of circumstances. We illustrate the method via simulation and apply it to a study of systolic blood pressure and health outcomes in patients hospitalized with acute heart failure.
临床特征研究常常通过单次观察来测量协变量。由于生物波动和设备误差等变异性来源,这可能是“真实”现象的错误测量版本。基于错误测量数据的描述性分析和结果模型通常无法反映基于“真实”协变量的相应分析。有许多统计方法可用于校正测量误差。诸如回归校准和矩重建等插补方法易于实施,但并不总是足够的。针对密度估计、逻辑回归和生存分析等特定应用,已经提出了复杂的方法。然而,对于分析师来说,分别调整每项分析通常是不可行的,尤其是在资源有限的初步研究中。我们提出了一种称为矩调整插补的插补方法,它灵活且相对自动化。与其他插补方法一样,它可用于快速调整各种分析,并且在广泛的情况下都表现良好。我们通过模拟来说明该方法,并将其应用于一项对急性心力衰竭住院患者收缩压和健康结局的研究。