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Statistical inference for generalized case-cohort design under the proportional hazards model with parameter constraints

机译:具有参数约束的比例风险模型下广义病例群设计的统计推断

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摘要

The generalized case-cohort design is widely used in large cohort studies to reduce the cost and improve the efficiency. Taking prior information of parameters into consideration in modeling process can further raise the inference efficiency. In this paper, we consider fitting proportional hazards model with constraints for generalized case-cohort studies. We establish a working likelihood function for the estimation of model parameters. The asymptotic properties of the proposed estimator are derived via the Karush-Kuhn-Tucker conditions, and their finite properties are assessed by simulation studies. A modified minorization-maximization algorithm is developed for the numerical calculation of the constrained estimator. An application to a Wilms tumor study demonstrates the utility of the proposed method in practice.
机译:广义案例队列设计广泛用于大型队列研究中,以降低成本并提高效率。在建模过程中考虑参数的先验信息可以进一步提高推理效率。在本文中,我们考虑将比例风险模型与约束条件进行拟合,以进行广义病例队列研究。我们建立一个工作似然函数来估计模型参数。拟议估计量的渐近性质是通过Karush-Kuhn-Tucker条件得出的,其有限性质是通过仿真研究评估的。提出了一种改进的最小化最大化算法,用于约束估计器的数值计算。在Wilms肿瘤研究中的一项应用证明了该方法在实践中的实用性。

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