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首页> 外文期刊>Journal of Immunological Methods >A novel gamma-fitting statistical method for anti-drug antibody assays to establish assay cut points for data with non-normal distribution.
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A novel gamma-fitting statistical method for anti-drug antibody assays to establish assay cut points for data with non-normal distribution.

机译:一种用于抗药物抗体测定的新型伽玛拟合统计方法,以建立非正态分布数据的测定切点。

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摘要

In recent years there has been growing recognition of the impact of anti-drug or anti-therapeutic antibodies (ADAs, ATAs) on the pharmacokinetic and pharmacodynamic behavior of the drug, which ultimately affects drug exposure and activity. These anti-drug antibodies can also impact safety of the therapeutic by inducing a range of reactions from hypersensitivity to neutralization of the activity of an endogenous protein. Assessments of immunogenicity, therefore, are critically dependent on the bioanalytical method used to test samples, in which a positive versus negative reactivity is determined by a statistically derived cut point based on the distribution of drug naive samples. For non-normally distributed data, a novel gamma-fitting method for obtaining assay cut points is presented. Non-normal immunogenicity data distributions, which tend to be unimodal and positively skewed, can often be modeled by 3-parameter gamma fits. Under a gamma regime, gamma based cut points were found to be more accurate (closer to their targeted false positive rates) compared to normal or log-normal methods and more precise (smaller standard errors of cut point estimators) compared with the nonparametric percentile method. Under a gamma regime, normal theory based methods for estimating cut points targeting a 5% false positive rate were found in computer simulation experiments to have, on average, false positive rates ranging from 6.2 to 8.3% (or positive biases between +1.2 and +3.3%) with bias decreasing with the magnitude of the gamma shape parameter. The log-normal fits tended, on average, to underestimate false positive rates with negative biases as large a -2.3% with absolute bias decreasing with the shape parameter. These results were consistent with the well known fact that gamma distributions become less skewed and closer to a normal distribution as their shape parameters increase. Inflated false positive rates, especially in a screening assay, shifts the emphasis to confirm test results in a subsequent test (confirmatory assay). On the other hand, deflated false positive rates in the case of screening immunogenicity assays will not meet the minimum 5% false positive target as proposed in the immunogenicity assay guidance white papers.
机译:近年来,人们越来越认识到抗药物或抗治疗抗体(ADAs,ATAs)对药物的药代动力学和药效动力学行为的影响,最终影响药物的暴露和活性。这些抗药物抗体还可通过诱导从超敏反应到中和内源蛋白活性的一系列反应来影响治疗剂的安全性。因此,对免疫原性的评估主要取决于用于测试样品的生物分析方法,在该方法中,阳性反应与阴性反应是通过基于未经处理的药物样品的分布统计得出的切点来确定的。对于非正态分布数据,提出了一种用于获取化验切点的新型伽马拟合方法。非正常的免疫原性数据分布往往是单峰的并且正偏,通常可以通过3参数伽玛拟合来建模。在伽玛模式下,与常规或对数正态方法相比,基于伽玛的切点被发现更准确(更接近其目标假阳性率),与非参数百分位数方法相比,被发现更精确(切点估计量的标准误差较小) 。在伽玛机制下,计算机模拟实验发现,以正常理论为基础估算切点目标为5%假阳性率的方法的假阳性率平均为6.2%至8.3%(或+1.2到+之间的正偏差)偏差随伽玛形状参数的大小而减小(3.3%)。对数正态拟合通常会低估带有-2.3%的负偏差的假阳性率,而负偏差会随着形状参数而降低。这些结果与众所周知的事实一致,即随着其形状参数的增加,伽马分布变得较少偏斜并且更接近于正态分布。虚假阳性率的升高,尤其是在筛查测定中,会转移重点,以在后续测试(确认测定)中确认测试结果。另一方面,在筛选免疫原性测定的情况下,放气的假阳性率将无法达到免疫原性测定指导白皮书中提出的最低5%假阳性目标。

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