404 Not Found Direct Likelihood Approach for Interval-Censored Competing Risks with Missing Failure Causes

The School of Computing and Data Science (https://www.cds.hku.hk/) was established by the University of Hong Kong on 1 July 2024, comprising the Department of Computer Science and Department of Statistics and Actuarial Science and Department of AI and Data Science.

Abstract

Interval-censored competing risks data with unknown causes of failure frequently appear in clinical studies, yet traditional two-stage estimation methods often suffer from high computational costs and efficiency loss. This talk introduces a direct likelihood approach under a mixture model framework to address these challenges. By incorporating competing risks and missing event types into a single likelihood function, the proposed method utilizes sieve maximum likelihood estimation to streamline computation and enhance estimation efficiency. We establish the consistency and asymptotic normality of the resulting estimators, demonstrate the method’s finite-sample performance through comprehensive simulations, and illustrate its practical utility using data from an Alzheimer’s disease study.

About the speaker

Liming Xiang is an associate professor at the Division of Mathematical Sciences, Nanyang Technological University, Singapore. Her research interests include survival analysis, longitudinal/clustered data analysis, mixture modelling and biostatistics. Dr. Xiang is an associate editor of Computational Statistics & Data Analysis and Statistics in Medicine.

 

Division of AI & Data Science, School of Computing and Data Science
Rm 207 Chow Yei Ching Building
The University of Hong Kong
Pokfulam Road, Hong Kong
香港大學計算與數據科學學院,人工智能與數據科學系
香港薄扶林道香港大學周亦卿樓207室

Email: aienq@hku.hk
Telephone: 3917 3146

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