The Effect of Variance Function Estimation on Nonlinear Calibration Inference in Immunoassay Data

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 fun...

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Veröffentlicht in:Biometrics 1996-03, Vol.52 (1), p.158-175
Hauptverfasser: Belanger, Bruce A., Davidian, Marie, Giltinan, David M.
Format: Artikel
Sprache:eng
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Zusammenfassung: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.
ISSN:0006-341X
1541-0420
DOI:10.2307/2533153