Belanger B A, Davidian M, Giltinan D M
Schering-Plough Research Institute, Kenilworth, New Jersey 07033, USA.
Biometrics. 1996 Mar;52(1):158-75.
Often with data from immunoassays, the concentration-response relationship is nonlinear and intra-assay response variance is heterogeneous. Estimation of the standard curve is usually based on a nonlinear heteroscedastic regression model for concentration-response, where variance is modeled as a function of mean response and additional variance parameters. This paper discusses calibration inference for immunoassay data which exhibit this nonlinear heteroscedastic mean-variance relationship. An assessment of the effect of variance function estimation in three types of approximate large-sample confidence intervals for unknown concentrations is given by theoretical and empirical investigation and application to two examples. A major finding is that the accuracy of such calibration intervals depends critically on the nature of response variance and the quality with which variance parameters are estimated.
对于免疫分析数据,浓度 - 反应关系通常是非线性的,且分析内反应方差是异质的。标准曲线的估计通常基于浓度 - 反应的非线性异方差回归模型,其中方差被建模为平均反应和其他方差参数的函数。本文讨论了呈现这种非线性异方差均值 - 方差关系的免疫分析数据的校准推断。通过理论和实证研究以及对两个实例的应用,评估了方差函数估计对未知浓度的三种近似大样本置信区间的影响。一个主要发现是,此类校准区间的准确性关键取决于反应方差的性质以及方差参数的估计质量。