| Literature DB >> 28503512 |
Abstract
In nested case-control studies, the most common way to make inference under a proportional hazards model is the conditional logistic approach of Thomas (1977). Inclusion probability methods are more efficient than the conditional logistic approach of Thomas; however, the epidemiology research community has not accepted the methods as a replacement of the Thomas' method. This paper promotes the inverse probability weighting method originally proposed by Samuelsen (1997) in combination with an approximate jackknife standard error that can be easily computed using existing software. Simulation studies demonstrate that this approach yields valid type 1 errors and greater powers than the conditional logistic approach in nested case-control designs across various sample sizes and magnitudes of the hazard ratios. A generalization of the method is also made to incorporate additional matching and the stratified Cox model. The proposed method is illustrated with data from a cohort of children with Wilm's tumor to study the association between histological signatures and relapses.Entities:
Keywords: Approximate Jackknife Standard Error; Inverse Probability Weighting; Nested Case-Control
Year: 2013 PMID: 28503512 PMCID: PMC5426119 DOI: 10.5351/CSAM.2013.20.6.455
Source DB: PubMed Journal: Commun Stat Appl Methods ISSN: 2287-7843