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Non-parametric tests for right-censored data with biased sampling

机译:带有偏向采样的右删失数据的非参数测试

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摘要

Testing the equality of two survival distributions can be difficult in a prevalent cohort study when non-random sampling of subjects is involved. Owing to the biased sampling scheme, the independent censoring assumption is often violated. Although the issues about biased inference caused by length-biased sampling have been widely recognized in the statistical, epidemiological and economical literature, there is no satisfactory solution for efficient two-sample testing. We propose an asymptotic most efficient non-parametric test by properly adjusting for length-biased sampling. The test statistic is derived from a full likelihood function and can be generalized from the two-sample test to a "k"-sample test. The asymptotic properties of the test statistic under the null hypothesis are derived by using its asymptotic independent and identically distributed representation. We conduct extensive Monte Carlo simulations to evaluate the performance of the test statistics proposed and compare them with the conditional test and the standard log-rank test for various biased sampling schemes and right-censoring mechanisms. For length-biased data, empirical studies demonstrated that the test proposed is substantially more powerful than the existing methods. For general left-truncated data, the test proposed is robust, still maintains accurate control of the type I error rate and is also more powerful than the existing methods, if the truncation patterns and right censoring patterns are the same between the groups. We illustrate the methods by using two real data examples. Copyright (c) 2010 Royal Statistical Society.
机译:当涉及受试者的非随机抽样时,在流行的队列研究中测试两个生存分布的相等性可能很困难。由于抽样方案的偏见,经常会违反独立审查的假设。尽管在统计,流行病学和经济方面的文献中已经广泛认识到由长度有偏抽样导致的有偏推断的问题,但是对于有效的两样本检验还没有令人满意的解决方案。通过适当地调整长度偏倚的采样,我们提出了一种渐近最有效的非参数检验。检验统计量是从完全似然函数得出的,可以从两次抽样检验扩展为“ k”抽样检验。零假设下的检验统计量的渐近性质是通过使用其独立且均匀分布的渐近来导出的。我们进行了广泛的蒙特卡洛模拟,以评估所提出的检验统计数据的性能,并将其与条件检验和标准对数秩检验进行比较,以用于各种有偏差的抽样方案和右删失机制。对于长度偏倚的数据,经验研究表明,提出的测试比现有方法具有更强大的功能。对于一般的左截断数据,如果各组之间的截断模式和右检查模式相同,则所提出的测试是鲁棒的,仍然可以精确控制I型错误率,并且比现有方法更强大。我们通过使用两个实际数据示例来说明这些方法。版权所有(c)2010皇家统计学会。

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    Jing Ning; Jing Qin; Yu Shen;

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  • 年度 2010
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