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在使用K-X射线荧光法测量骨铅含量的研究中,采用变量误差回归模型进行偏差校正。

Bias correction by use of errors-in-variables regression models in studies with K-X-ray fluorescence bone lead measurements.

作者信息

Lamadrid-Figueroa Héctor, Téllez-Rojo Martha M, Angeles Gustavo, Hernández-Ávila Mauricio, Hu Howard

机构信息

Division of Statistics, Center for Evaluation Research and Surveys, National Institute of Public Health, Av. Universidad 655, Cuernavaca, Morelos 62440, Mexico.

出版信息

Environ Res. 2011 Jan;111(1):17-20. doi: 10.1016/j.envres.2010.10.011. Epub 2010 Nov 18.

Abstract

In-vivo measurement of bone lead by means of K-X-ray fluorescence (KXRF) is the preferred biological marker of chronic exposure to lead. Unfortunately, considerable measurement error associated with KXRF estimations can introduce bias in estimates of the effect of bone lead when this variable is included as the exposure in a regression model. Estimates of uncertainty reported by the KXRF instrument reflect the variance of the measurement error and, although they can be used to correct the measurement error bias, they are seldom used in epidemiological statistical analyzes. Errors-in-variables regression (EIV) allows for correction of bias caused by measurement error in predictor variables, based on the knowledge of the reliability of such variables. The authors propose a way to obtain reliability coefficients for bone lead measurements from uncertainty data reported by the KXRF instrument and compare, by the use of Monte Carlo simulations, results obtained using EIV regression models vs. those obtained by the standard procedures. Results of the simulations show that Ordinary Least Square (OLS) regression models provide severely biased estimates of effect, and that EIV provides nearly unbiased estimates. Although EIV effect estimates are more imprecise, their mean squared error is much smaller than that of OLS estimates. In conclusion, EIV is a better alternative than OLS to estimate the effect of bone lead when measured by KXRF.

摘要

通过K射线荧光(KXRF)进行骨铅的体内测量是慢性铅暴露的首选生物学标志物。不幸的是,与KXRF估计相关的相当大的测量误差在将该变量作为回归模型中的暴露因素时,会在骨铅效应估计中引入偏差。KXRF仪器报告的不确定性估计反映了测量误差的方差,尽管它们可用于校正测量误差偏差,但在流行病学统计分析中很少使用。变量误差回归(EIV)基于对预测变量可靠性的了解,可校正预测变量测量误差引起的偏差。作者提出了一种从KXRF仪器报告的不确定性数据中获取骨铅测量可靠性系数的方法,并通过蒙特卡罗模拟比较了使用EIV回归模型与标准程序获得的结果。模拟结果表明,普通最小二乘法(OLS)回归模型提供的效应估计存在严重偏差,而EIV提供的估计几乎无偏差。虽然EIV效应估计的精度较低,但其均方误差远小于OLS估计。总之,在通过KXRF测量骨铅效应时,EIV是比OLS更好的选择。

相似文献

本文引用的文献

1
Robust techniques for measurement error correction: a review.用于测量误差校正的稳健技术:综述
Stat Methods Med Res. 2008 Dec;17(6):555-80. doi: 10.1177/0962280207081318. Epub 2008 Mar 28.
4
Calculating bone-lead measurement variance.计算骨铅测量方差。
Environ Health Perspect. 2000 May;108(5):383-6. doi: 10.1289/ehp.00108383.

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