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Nonparametric tests for continuous covariate effects with multistate survival data.

机译:使用多状态生存数据进行连续协变量效应的非参数检验。

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摘要

SUMMARY: In clinical trials and observational studies, it is often of scientific interest to evaluate the effects of covariates on complex multistate event probabilities. With discrete covariates, nonparametric tests may be constructed using estimates of the relevant quantities. With continuous covariates, a common approach is to arbitrarily discretize the covariates, which may lead to substantial information loss. Another strategy is to formulate the covariate effects in a regression model. Model-based tests may have either low power or be biased under misspecification. We propose nonparametric tests not requiring arbitrary discretization. The tests involve integrals of estimates continuously indexed by dichotomizations of the covariates. General asymptotic results are derived under null and alternative hypotheses, and verified using empirical process theory in several special cases. The tests are consistent under stochastic ordering, which arises naturally with multistate data. A novel nonparametric measure of covariate effect is studied as a natural byproduct of the testing procedure. Simulation studies and two real data analyses demonstrate the gains of the new testing procedure over those based either on categorization or on regression models.
机译:摘要:在临床试验和观察性研究中,评估协变量对复杂的多状态事件概率的影响通常具有科学意义。对于离散协变量,可以使用相关量的估计来构造非参数检验。对于连续的协变量,通常的方法是任意离散协变量,这可能会导致大量信息丢失。另一种策略是在回归模型中制定协变量效应。基于模型的测试可能功耗低或因规格错误而存在偏差。我们提出不需要参数离散化的非参数检验。检验涉及通过协变量二分法连续索引的估算值的积分。一般渐近结果是在零假设和替代假设下得出的,并在几种特殊情况下使用经验过程理论进行了验证。这些测试在随机顺序下是一致的,而随机顺序自然是由多状态数据产生的。作为测试过程的自然副产品,研究了一种新的协变量效应的非参数度量。仿真研究和两次实际数据分析表明,新的测试程序比基于分类或回归模型的测试程序具有更多优势。

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