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A functional inference for multivariate current status data with mismeasured covariate

机译:带有错误度量的协变量的多变量当前状态数据的函数推论

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摘要

Covariate measurement error problems have been recently studied for current status failure time data but not yet for multivariate current status data. Motivated by the three-hypers dataset from a health survey study, where the failure times for three-hypers (hyperglycemia, hypertension, hyperlipidemia) are subject to current status censoring and the covariate self-reported body mass index may be subject to measurement error, we propose a functional inference method under the proportional odds model for multivariate current status data with mismeasured covariates. The new proposal utilizes the working independence strategy to handle correlated current status observations from the same subject, as well as the conditional score approach to handle mismeasured covariate without specifying the covariate distribution. The asymptotic theory, together with a stable computation procedure combining the Newton-Raphson and self-consistency algorithms, is established for the proposed estimation method. We evaluate the method through simulation studies and illustrate it with three-hypers data.
机译:最近已经针对当前状态故障时间数据研究了协变量测量误差问题,但尚未针对多变量当前状态数据进行研究。根据一项健康调查研究的三类混合数据集的动机,其中三类(高血糖,高血压,高脂血症)的失败时间受当前状态检查,而自变量自报告的协变量体重指数可能受到测量误差的影响,我们提出了在比例赔率模型下针对带有错误度量的协变量的多变量当前状态数据的功能推断方法。新提议利用工作独立性策略来处理来自同一主题的相关当前状态观察,以及利用条件评分法来处理度量不正确的协变量而不指定协变量分布。建立了渐近理论,并结合牛顿-拉夫森算法和自洽算法建立了稳定的计算过程。我们通过仿真研究评估该方法,并用三个hyper数据进行说明。

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