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Parametric modelling of prevalent cohort data with uncertainty in the measurement of the initial onset date

机译:在初始发作日期测量中具有不确定性的普遍存在群组的参数建模

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摘要

In prevalent cohort studies with follow-up, if disease duration is the focus, the date of onset must be obtained retrospectively. For some diseases, such as Alzheimer's disease, the very notion of a date of onset is unclear, and it can be assumed that the reported date of onset acts only as a proxy for the unknown true date of onset. When adjusting for onset dates reported with error, the features of left-truncation and potential right-censoring of the failure times must be modeled appropriately. Under the assumptions of a classical measurement error model for the onset times and an underlying parametric failure time model, we propose a maximum likelihood estimator for the failure time distribution parameters which requires only the observed backward recurrence times. Costly and time-consuming follow-up may therefore be avoided. We validate the maximum likelihood estimator on simulated datasets under varying parameter combinations and apply the proposed method to the Canadian Study of Health and Aging dataset.
机译:在流行的队列中的研究中进行后续研究,如果疾病持续时间是重点,必须回顾性地获得发作日期。对于某些疾病,例如阿尔茨海默病的疾病,发病日期的非常概念不明确,并且可以假设报告的发病日期仅作为未知真实日期的代理。在使用错误报告的发作日期调整时,必须适当地建模左截断的特征和失败时间的潜在权限审查。在常规测量误差模型的假设下,用于生存时间和底层参数故障时间模型,我们提出了最大似然估计器,用于失败时间分布参数,该参数仅需要观察到的后向复发时间。因此可以避免昂贵且耗时的随访。我们根据不同参数组合验证了模拟数据集上的最大似然估计器,并将提议的方法应用于加拿大健康和老化数据集的研究。

著录项

  • 来源
    《Lifetime Data Analysis》 |2020年第2期|389-401|共13页
  • 作者单位

    Department of Mathematics and Statistics McGill University 805 Sherbrooke St W Montreal QC H3A 0B9 Canada;

    Department of Mathematics and Statistics McGill University 805 Sherbrooke St W Montreal QC H3A 0B9 Canada;

    Department of Mathematics and Statistics McGill University 805 Sherbrooke St W Montreal QC H3A 0B9 Canada;

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

    Length-bias; Truncation; Measurement error; Survival analysis;

    机译:长度偏见;截断;测量误差;生存分析;
  • 入库时间 2022-08-18 21:22:59

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