JOURNAL ARTICLE

Inference on semi-parametric transformation model with a pairwise likelihood based on left-truncated and interval-censored data

Yichen LouPeijie WangJianguo Sun

Year: 2022 Journal:   Journal of nonparametric statistics Vol: 35 (1)Pages: 38-55   Publisher: Taylor & Francis

Abstract

Semi-parametric transformation models provide a general and flexible class of models for regression analysis of failure time data and many methods have been developed for their estimation. In particular, they include the proportional hazards and proportional odds models as special cases. In this paper, we discuss the situation where one observes left-truncated and interval-censored data, for which it does not seem to exist an established method. For the problem, in contrast to the commonly used conditional approach that may not be efficient, a pairwise pseudo-likelihood method is proposed to recover some missing information in the conditional method. The proposed estimators are proved to be consistent and asymptotically efficient and normal. A simulation study is conducted to assess the empirical performance of the method and suggests that it works well in practical situations. This method is illustrated by using a set of real data arising from an HIV/AIDS cohort study.

Keywords:
Pairwise comparison Mathematics Estimator Parametric statistics Inference Statistics Interval (graph theory) Transformation (genetics) Proportional hazards model Empirical likelihood Applied mathematics Computer science Artificial intelligence

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Topics

Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical Methods and Bayesian Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical Distribution Estimation and Applications
Physical Sciences →  Mathematics →  Statistics and Probability
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