应用于III期转移性结直肠癌临床试验的间隔截短生存数据的非参数分析

Yeqian Liu, Junyu Chen
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引用次数: 0

摘要

在肿瘤临床试验中,肿瘤进展等事件发生的确切时间通常是未知的,但事件发生的时间间隔是已知的。这种生存时间的确定可能受到测量误差的影响,并受到计划评估时间的影响。忽略间隔截短的生存时间可能导致严重的估计偏差。此外,间隔截尾数据的一个重要特征是测量间隔的频率,它直接决定了统计推断的效率。因此,非常需要找到对不同评估频率具有鲁棒性的统计方法。我们比较了传统的基于假设的方法和非参数的方法来处理间隔截除的生存数据。我们将这些方法应用于假设检验和危害和生存函数的估计。通过各种样本量的广泛模拟研究来评估这些方法的经验性能。一项转移性结直肠癌的III期随机临床试验通过使用常规方法和非参数区间审查分析方法进行分析。我们的研究结果表明,III期结直肠癌临床试验未能显示在标准化疗(CT)中添加贝伐单抗(B)的临床益处,并且所提出的非参数间隔审查分析方法优于常规应用于肿瘤临床试验的常规方法,以分析间隔审查的生存数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-parametric Analysis of Interval-Censored Survival Data with Application to a Phase III Metastatic Colorectal Cancer Clinical Trial
In oncology clinical trials, the exact time of event occurrence such as tumor progression is usually unknown but the time interval within which the event occurs is known. The determination of such survival time can be subject to measurement error and influenced by the timing of scheduled assessment. Ignoring interval-censored survival time could lead to serious estimation bias. In addition, a crucial characteristic of interval-censored data is how frequently the measurement interval is taken, which directly determine the efficiency of statistical inference. Therefore, it is highly desirable to find statistical methods that are robust to different assessment frequencies. We compare conventional imputation-based approach with non-parametric approaches to handle interval-censored survival data. We apply these approaches to both hypothesis test and the estimations of hazard and survival functions. Empirical performance of these methods are assessed through extensive simulation studies with various sample sizes. A phase III randomized clinical trial on metastatic colorectal cancer is analyzed by using conventional approaches and non-parametric interval-censored analysis approaches. Out findings suggest that the phase III colorectal cancer clinical trial failed to show a clinical benefit of adding bevacizumab (B) to standard chemotherapy (CT), and the proposed non-parametric interval-censored analysis approaches outperforms the conventional approach for routine applications to oncology clinical trials to analyze interval-censored survival data.
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