多区域临床试验中边缘区域的检测方法及影响诊断

Q3 Medicine
M. Aoki, H. Noma, M. Gosho
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引用次数: 0

摘要

由于药物开发的全球化,多区域临床试验(MRCT)越来越多地被用于临床评估。在MRCT中,主要目标是证明新药在所有参与区域的疗效,但这些区域的各种相关因素的异质性可能导致治疗效果的不一致。特别是,具有极端剖面的边远地区可能会影响这些研究的总体结论。在这篇文章中,我们提出了定量方法来检测这些边缘区域,并评估它们在MRCT中的影响。方法如下:(1)使用类dfbeta测度的方法,即通过留一交叉验证(LOOCV)方案获得的学生化残差;(2) 使用均值偏移模型的基于模型的显著性测试方法;(3) 将相对变化度量用于所述总体效应估计器的方差估计的方法;以及(4)一种在随机效应模型中使用相对变化度量来估计异质性方差的方法。提出了参数自举方案,以准确评估上述影响诊断工具的统计显著性和可变性。我们通过应用于两项MRCT,即RECORD和RENAL研究来说明这些拟议方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods for detecting outlying regions and influence diagnosis in multi-regional clinical trials
Due to the globalization of drug development, multi-regional clinical trials (MRCTs) have been increasingly adopted in clinical evaluations. In MRCTs, the primary objective is to demonstrate the efficacy of new drugs in all participating regions, but heterogeneity of various relevant factors across these regions can cause inconsistency of treatment effects. In particular, outlying regions with extreme profiles can influence the overall conclusions of these studies. In this article, we propose quantitative methods to detect these outlying regions and to assess their influences in MRCTs. The approaches are as follows: (1) a method using a dfbeta-like measure, a studentized residual obtained by a leave-one-out cross-validation (LOOCV) scheme; (2) a model-based significance testing method using a mean-shifted model; (3) a method using a relative change measure for the variance estimate of the overall effect estimator; and (4) a method using a relative change measure for the heterogeneity variance estimate in a random-effects model. Parametric bootstrap schemes are proposed to accurately assess the statistical significance and variabilities of the aforementioned influence diagnostic tools. We illustrate the effectiveness of these proposed methods via applications to two MRCTs, the RECORD and RENAAL studies.
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来源期刊
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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