Implications for clinical pharmacodynamic studies of the statistical characterization of an in vitro antiproliferation assay.

L M Levasseur, H Faessel, H K Slocum, W R Greco
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引用次数: 9

Abstract

Modeling of nonlinear pharmacodynamic (PD) relationships necessitates the utilization of a weighting function in order to compensate for the heteroscedasticity. The structure of the variance was studied for concentration-effect data generated in an in vitro 96-well plate cell growth inhibition assay, where data are numerous (480 data points per experiment) and replication is easy. From the five candidate models that were considered, the power function S2Y = phi 2Y phi 3, where Y is the sample mean and S2Y is the sample variance, was shown to be the most appropriate to describe the nonuniformity of the variance along the range of measured effect for 253 sets of (Y; S2Y) data. The Hill model was fit to the concentration-effect data with weighted nonlinear regression, where the weights were equal to the reciprocal of the predicted variance. The examination of the distribution of the 253 sets of parameters of the PD model showed that IC50 was lognormally distributed whereas the distribution of gamma was normal. The characterization of the appropriate variance function and concentration-effect function in a simple in vitro experimental setting with a large number of experiments, with each experiment including a large number of data points, will be useful for guiding similar in vitro concentration-effect studies where data are plentiful and for guiding PD modeling in complex clinical settings in which extensive data for model characterization is impossible to obtain.

体外抗增殖试验统计特性的临床药效学研究意义。
非线性药效学(PD)关系建模需要使用加权函数来补偿异方差。我们研究了体外96孔板细胞生长抑制实验中产生的浓度效应数据的方差结构,该实验数据众多(每个实验480个数据点),并且易于复制。从考虑的五个候选模型中,幂函数S2Y = phi 2Y phi 3(其中Y为样本均值,S2Y为样本方差)被证明是最适合描述253组(Y;S2Y)数据。Hill模型采用加权非线性回归拟合浓度效应数据,权重等于预测方差的倒数。对PD模型253组参数的分布检验表明,IC50服从对数正态分布,gamma服从正态分布。在大量实验的简单体外实验环境中,每个实验都包含大量数据点,对适当的方差函数和浓度效应函数进行表征,将有助于指导数据丰富的类似体外浓度效应研究,也有助于指导在无法获得大量模型表征数据的复杂临床环境中PD建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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