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A nonparametric maximum likelihood approach for survival data with observed cured subjects, left truncation and right-censoring

机译:非参数最大似然方法用于观察已治愈的受试者,左截断和右检查的生存数据

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摘要

We consider observational studies in pregnancy where the outcome of interest is spontaneous abortion (SAB). This at first sight is a binary ‘yes’ or ‘no’ variable, albeit there is left truncation as well as right-censoring in the data. Women who do not experience SAB by gestational week 20 are ‘cured’ from SAB by definition, that is, they are no longer at risk. Our data is different from the common cure data in the literature, where the cured subjects are always right-censored and not actually observed to be cured. We consider a commonly used cure rate model, with the likelihood function tailored specifically to our data. We develop a conditional nonparametric maximum likelihood approach. To tackle the computational challenge we adopt an EM algorithm making use of “ghost copies” of the data, and a closed form variance estimator is derived. Under suitable assumptions, we prove the consistency of the resulting estimator which involves an unbounded cumulative baseline hazard function, as well as the asymptotic normality. Simulation results are carried out to evaluate the finite sample performance. We present the analysis of the motivating SAB study to illustrate the advantages of our model addressing both occurrence and timing of SAB, as compared to existing approaches in practice.
机译:我们考虑在妊娠中进行观察性研究,其中关注的结果是自然流产(SAB)。乍一看,这是一个二进制“是”或“否”变量,尽管数据中存在左截断和右删截。根据定义,在妊娠20周之前未经历SAB的女性会从SAB中“治愈”,也就是说,她们不再处于危险之中。我们的数据与文献中常见的治愈数据不同,在文献中,治愈的受试者总是经过正确检查,而实际上并未观察到治愈。我们考虑一种常用的治愈率模型,并针对我们的数据量身定制似然函数。我们开发了条件非参数最大似然方法。为了解决计算难题,我们采用了一种利用数据的“幻影副本”的EM算法,并得出了一个封闭形式的方差估计量。在适当的假设下,我们证明了所得估计量的一致性,该估计量包括无穷大的累积基线风险函数以及渐近正态性。仿真结果用于评估有限样本性能。我们提出了激励性SAB研究的分析,以说明与实践中的现有方法相比,该模型解决了SAB的发生和时机的优势。

著录项

  • 来源
    《Lifetime Data Analysis》 |2018年第4期|612-651|共40页
  • 作者单位

    Department of Mathematics, University of California;

    Department of Family Medicine and Public Health, University of California,Department of Pediatrics, University of California;

    Department of Mathematics, University of California,Department of Family Medicine and Public Health, University of California;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cure rate model; EM algorithm; Ghost copy;

    机译:治愈率模型;EM算法;Ghost复制;
  • 入库时间 2022-08-18 02:23:39

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