Taylor & Francis Group
Browse
1/1
2 files

Semiparametric Inference for the Functional Cox Model

Version 2 2020-01-23, 19:46
Version 1 2020-01-04, 03:07
dataset
posted on 2020-01-23, 19:46 authored by Meiling Hao, Kin-yat Liu, Wei Xu, Xingqiu Zhao

This article studies penalized semiparametric maximum partial likelihood estimation and hypothesis testing for the functional Cox model in analyzing right-censored data with both functional and scalar predictors. Deriving the asymptotic joint distribution of finite-dimensional and infinite-dimensional estimators is a very challenging theoretical problem due to the complexity of semiparametric models. For the problem, we construct the Sobolev space equipped with a special inner product and discover a new joint Bahadur representation of estimators of the unknown slope function and coefficients. Using this key tool, we establish the asymptotic joint normality of the proposed estimators and the weak convergence of the estimated slope function, and then construct local and global confidence intervals for an unknown slope function. Furthermore, we study a penalized partial likelihood ratio test, show that the test statistic enjoys the Wilks phenomenon, and also verify the optimality of the test. The theoretical results are examined through simulation studies, and a right-censored data example from the Improving Care of Acute Lung Injury Patients study is provided for illustration. Supplementary materials for this article are available online.

Funding

Hao’s research is partly supported by the Fundamental Research Funds for the Central Universities (No. CXTD10-09) and the National Natural Science Foundation of China (No. 11901087). Xu’s research is partly supported by the Canadian Institutes of Health Research (CIHR, Grant No. 145546). Zhao’s research is partly supported by the Research Grant Council of Hong Kong (15301218), the National Natural Science Foundation of China (No. 11771366), and The Hong Kong Polytechnic University.

History