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Semiparametric estimation for the transformation model with length-biased data and covariate measurement error

机译:具有长度偏向数据和协变量测量误差的转换模型的半参数估计

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摘要

Analysis of survival data with biased samples caused by left-truncation or length-biased sampling has received extensive interest. Many inference methods have been developed for various survival models. These methods with ignorance of mismeasurement, however, may produce different estimations and yield misleading conclusions when survival data are typically error-contaminated. Although error-prone survival data commonly arise in practice, little work has been available in the literature for handling length-biased data with measurement error. In survival analysis, methods of analyzing the transformation model with those complex features have not been fully explored. In this paper, we develop a valid inference method under the transformation model. We establish asymptotic results for the proposed estimators. The proposed method enjoys appealing features in that there is no need to specify the distribution of the covariates and the increasing function in the transformation model. Numerical studies are reported to assess the performance of the proposed method.
机译:由左截断或长度偏向采样导致的偏向样本生存数据分析引起了广泛关注。已经针对各种生存模型开发了许多推断方法。但是,当生存数据通常受到错误污染时,这些无视错误测量方法的方法可能会产生不同的估计,并产生误导性结论。尽管容易出错的生存数据通常在实践中出现,但文献中很少有工作来处理带有测量误差的长度偏向数据。在生存分析中,尚未全面探索分析具有这些复杂特征的转换模型的方法。在本文中,我们在转换模型下开发了一种有效的推理方法。我们为拟议的估计量建立渐近结果。所提出的方法具有吸引人的特征,因为不需要指定协变量的分布和变换模型中的递增函数。数值研究报告,以评估该方法的性能。

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