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Clinical trial simulation to evaluate power to compare the antiviral effectiveness of two hepatitis C protease inhibitors using nonlinear mixed effect models: a viral kinetic approach

机译:临床试验模拟,用于评估使用非线性混合效应模型比较两种丙型肝炎蛋白酶抑制剂抗病毒效果的功效:一种病毒动力学方法

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Background Models of hepatitis C virus (HCV) kinetics are increasingly used to estimate and to compare in vivo drug’s antiviral effectiveness of new potent anti-HCV agents. Viral kinetic parameters can be estimated using non-linear mixed effect models (NLMEM). Here we aimed to evaluate the performance of this approach to precisely estimate the parameters and to evaluate the type I errors and the power of the Wald test to compare the antiviral effectiveness between two treatment groups when data are sparse and/or a large proportion of viral load (VL) are below the limit of detection (BLD). Methods We performed a clinical trial simulation assuming two treatment groups with different levels of antiviral effectiveness. We evaluated the precision and the accuracy of parameter estimates obtained on 500 replication of this trial using the stochastic approximation expectation-approximation algorithm which appropriately handles BLD data. Next we evaluated the type I error and the power of the Wald test to assess a difference of antiviral effectiveness between the two groups. Standard error of the parameters and Wald test property were evaluated according to the number of patients, the number of samples per patient and the expected difference in antiviral effectiveness. Results NLMEM provided precise and accurate estimates for both the fixed effects and the inter-individual variance parameters even with sparse data and large proportion of BLD data. However Wald test with small number of patients and lack of information due to BLD resulted in an inflation of the type I error as compared to the results obtained when no limit of detection of VL was considered. The corrected power of the test was very high and largely outperformed what can be obtained with empirical comparison of the mean VL decline using Wilcoxon test. Conclusion This simulation study shows the benefit of viral kinetic models analyzed with NLMEM over empirical approaches used in most clinical studies. When designing a viral kinetic study, our results indicate that the enrollment of a large number of patients is to be preferred to small population sample with frequent assessments of VL.
机译:背景丙型肝炎病毒(HCV)动力学模型越来越多地用于评估和比较新型有效抗HCV药物在体内药物的抗病毒效果。可以使用非线性混合效应模型(NLMEM)估算病毒动力学参数。在这里,我们旨在评估该方法的性能,以精确估计参数,并评估I型错误和Wald试验的功效,以比较数据稀疏和/或病毒比例较大时两个治疗组之间的抗病毒效果负载(VL)低于检测极限(BLD)。方法我们进行了临床试验模拟,假设两个治疗组具有不同水平的抗病毒效力。我们使用适当处理BLD数据的随机近似期望-近似算法评估了500次重复试验获得的参数估计的精度和准确性。接下来,我们评估了I型错误和Wald试验的功效,以评估两组之间抗病毒效力的差异。根据患者人数,每位患者的样本数以及抗病毒效果的预期差异评估参数的标准误差和Wald测试性质。结果NLMEM即使对于稀疏数据和大量BLD数据,也可以为固定效果和个体间方差参数提供精确而准确的估计。但是,与不考虑VL检测限时获得的结果相比,Wald检验的患者人数少,且由于BLD导致信息缺乏,导致I型错误的增加。该测试的校正后的功效非常高,大大超过了使用Wilcoxon测试对VL平均下降进行经验比较所获得的结果。结论该模拟研究表明,与大多数临床研究中使用的经验方法相比,用NLMEM分析病毒动力学模型的好处。在设计病毒动力学研究时,我们的结果表明,对于经常评估VL的小人群样本,应优先选择大量患者。

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