Sondag Perceval, Zeng Lingmin, Yu Binbing, Rousseau Réjane, Boulanger Bruno, Yang Harry, Novick Steven
Pharmalex, Statistical Services, Fairfax, Virginia, USA.
Département de Pharmacie, University of Liège, Liège, Belgium.
Pharm Stat. 2018 Nov;17(6):701-709. doi: 10.1002/pst.1893. Epub 2018 Aug 15.
The USP<1032> guidelines recommend the screening of bioassay data for outliers prior to performing a relative potency (RP) analysis. The guidelines, however, do not offer advice on the size or type of outlier that should be removed prior to model fitting and calculation of RP. Computer simulation was used to investigate the consequences of ignoring the USP<1032> guidance to remove outliers. For biotherapeutics and vaccines, outliers in potency data may result in the false acceptance/rejection of a bad/good lot of drug product. Biological activity, measured through a potency bioassay, is considered a critical quality attribute in manufacturing. If the concentration-response potency curve of a test sample is deemed to be similar in shape to that of the reference standard, the curves are said to exhibit constant RP, an essential criterion for the interpretation of a RP. One or more outliers in the concentration-response data, however, may result in a failure to declare similarity or may yield a biased RP estimate. Concentration-response curves for test and reference were computer generated with constant RP from four-parameter logistic curves. Single outlier, multiple outlier, and whole-curve outlier scenarios were explored for their effects on the similarity testing and on the RP estimation. Though the simulations point to situations for which outlier removal is unnecessary, the results generally support the USP<1032> recommendation and illustrate the impact on the RP calculation when application of outlier removal procedures are discounted.
美国药典<1032>指南建议在进行相对效价(RP)分析之前,先对生物测定数据进行异常值筛查。然而,该指南并未就模型拟合和RP计算之前应去除的异常值的大小或类型提供建议。本研究使用计算机模拟来探究忽视美国药典<1032>中去除异常值指南的后果。对于生物治疗药物和疫苗,效价数据中的异常值可能导致对一批劣质/优质药品的错误接受/拒绝。通过效价生物测定法测得的生物活性被认为是生产中的关键质量属性。如果测试样品的浓度-反应效价曲线被认为与参比标准品的曲线形状相似,则称这些曲线呈现恒定的RP,这是解释RP的一个基本标准。然而,浓度-反应数据中的一个或多个异常值可能导致无法判定相似性,或者可能产生有偏差的RP估计值。测试品和参比品的浓度-反应曲线由四参数逻辑曲线以恒定RP通过计算机生成。研究了单个异常值、多个异常值和全曲线异常值情况对相似性测试和RP估计的影响。尽管模拟结果指出了某些无需去除异常值的情况,但总体结果支持美国药典<1032>的建议,并说明了在不考虑应用异常值去除程序时对RP计算的影响。