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生物测定中一种快速可靠的平行性检验方法。

A fast and reliable test for parallelism in bioassay.

作者信息

Novick Steven, Yang Harry

机构信息

Department of Statistical Sciences, MedImmune LLC, Gaithersburg, Maryland, USA.

出版信息

J Biopharm Stat. 2019;29(6):1011-1023. doi: 10.1080/10543406.2019.1572615. Epub 2019 Feb 4.

Abstract

Parallelism in bioassay is a synonym of similarity between two concentration-response curves. Before the determination of relative potency in bioassays, it is necessary to test for and claim parallelism between the pair of concentration-response curves of reference standard and test sample. Methods for parallelism testing include -value-based significance tests and interval-based equivalence tests. Most of the latter approaches make statistical inference about the equivalence of parameters of the concentration-response curve models. An apparent drawback of such methods is that equivalence in model parameters does not guarantee similarity between the reference and test sample. In contrast, a Bayesian method was recently proposed that directly tests the parallelism hypothesis that the concentration-response curve of the test sample is a horizontal shift of that of the reference. In other words, the testing sample is a dilution or concentration of the reference standard. The Bayesian approach is shown to protect against type I error and provides sufficient statistical power for parallelism testing. In practice, however, it is challenging to implement the method as it requires both specialized Bayesian software and a relatively long run time. In this paper, we propose a frequentist version of the test with split-second run time. The empirical properties of the frequentist parallelism test method are evaluated and compared with the original Bayesian method. It is demonstrated that the frequentist method is both fast and reliable for parallelism testing for a variety of concentration-response models.

摘要

生物测定中的平行性是两条浓度-反应曲线之间相似性的同义词。在生物测定中确定相对效价之前,有必要检验并判定参考标准品和测试样品的浓度-反应曲线对之间的平行性。平行性检验方法包括基于P值的显著性检验和基于区间的等效性检验。大多数后一种方法对浓度-反应曲线模型的参数等效性进行统计推断。此类方法的一个明显缺点是模型参数的等效性并不能保证参考样品和测试样品之间的相似性。相比之下,最近提出了一种贝叶斯方法,该方法直接检验平行性假设,即测试样品的浓度-反应曲线是参考样品浓度-反应曲线的水平移动。换句话说,测试样品是参考标准品的稀释液或浓缩液。结果表明,贝叶斯方法可防止I型错误,并为平行性检验提供足够的统计效力。然而在实际应用中,实施该方法具有挑战性,因为它既需要专门的贝叶斯软件,又需要较长的运行时间。在本文中,我们提出了一种具有瞬间运行时间的频率主义检验版本。对频率主义平行性检验方法的实证特性进行了评估,并与原始贝叶斯方法进行了比较。结果表明,对于各种浓度-反应模型,频率主义方法在平行性检验中既快速又可靠。

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