Shen Meiyu, Wang Tianhua, Tsong Yi
a Division of Biometrics VI , Office of Biostatistics, Office of Translational Science , CDER, FDA, Silver Spring, Maryland , USA.
J Biopharm Stat. 2017;27(2):213-219. doi: 10.1080/10543406.2016.1265541. Epub 2016 Dec 1.
In the evaluation of the analytical similarity data, an equivalence testing approach for most critical and quantitative quality attributes, which are assigned to Tier 1 in their proposed three-tier approach, was proposed. The Food and Drug Administration (FDA) has recommended the proposed equivalence testing approach to sponsors through meeting comments for Pre-Investigational New Drug Applications (PINDs) and Investigational New Drug Applications (INDs) since 2014. The FDA has received some feedback on the statistical issues of potentially correlated reference lot values subjected to equivalence testing since independent and identical observations (lot values) from the proposed biosimilar product and the reference product are assumed. In this article, we describe one method for correcting the estimation bias of the reference variability so as to increase the equivalence margin and its modified versions for increasing the equivalence margin and correcting the standard errors in the confidence intervals, assuming that the lot values are correlated under a few known correlation matrices. Our comparisons between these correcting methods and no correction for bias in the reference variability under several assumed correlation structures indicate that all correcting methods would increase the type I error rate dramatically but only improve the power slightly for most of the simulated scenarios. For some particular simulated cases, the type I error rate can be extremely large (e.g., 59%) if the guessed correlation is larger than the assumed correlation. Since the source of a reference drug product lot is unknown in nature, correlation between lots is a design issue. Hence, to obtain independent reference lot values by purchasing the reference lots at a wide time window often is a design remedy for correlated reference lot values.
在分析相似性数据的评估中,针对大多数关键和定量质量属性提出了一种等效性测试方法,这些属性在其提议的三层方法中被归为第1层。自2014年以来,美国食品药品监督管理局(FDA)已通过对研究性新药申请前(PIND)和研究性新药申请(IND)的会议评论,向申办者推荐了提议的等效性测试方法。由于假定来自提议的生物类似药产品和参比产品的独立且相同的观测值(批次值),FDA收到了一些关于等效性测试中潜在相关参比批次值统计问题的反馈。在本文中,假设批次值在几个已知相关矩阵下相关,我们描述了一种校正参比变异性估计偏差以增加等效性裕度的方法及其修改版本,用于增加等效性裕度和校正置信区间中的标准误差。我们在几种假定相关结构下对这些校正方法与不校正参比变异性偏差进行比较,结果表明,对于大多数模拟场景,所有校正方法都会显著提高I型错误率,但仅略微提高检验效能。对于某些特定的模拟案例,如果猜测的相关性大于假定的相关性,I型错误率可能会极大(例如59%)。由于参比药品批次的来源本质上是未知的,批次之间的相关性是一个设计问题。因此,通过在较宽的时间窗口购买参比批次来获得独立的参比批次值,通常是解决相关参比批次值的一种设计补救措施。