🌙

非比例风险下嵌套病例对照设计的估计问题

On estimation in the nested case‐control design under nonproportional hazards

Scandinavian Journal of Statistics · 2020
被引 4
ABS 3

中文导读

研究了在非比例风险条件下,嵌套病例对照设计中基于二元预测变量的两种估计量,一种恢复简单随机样本下的Cox模型估计目标,另一种恢复不依赖于删失分布的估计目标,并推导了渐近分布和有限样本方差估计量。

Abstract

Abstract Analysis of time‐to‐event data using Cox's proportional hazards (PH) model is ubiquitous in scientific research. A sample is taken from the population of interest and covariate information is collected on everyone. If the event of interest is rare and covariate information is difficult to collect, the nested case‐control (NCC) design reduces costs with minimal impact on inferential precision. Under PH, application of the Cox model to data from a NCC sample provides consistent estimation of the hazard ratio. However, under non‐PH, the finite‐sample estimates corresponding to the Cox estimator depend on the number of controls sampled and the censoring distribution. We propose two estimators based on a binary predictor of interest: one recovers the estimand corresponding to the Cox model under a simple random sample, while the other recovers an estimand that does not depend on the censoring distribution. We derive the asymptotic distribution and provide finite‐sample variance estimators.

生存分析嵌套病例对照设计非比例风险Cox模型