ACCOUNTING FOR DROP-OUT USING INVERSE PROBABILITY CENSORING WEIGHTS IN LONGITUDINAL CLUSTERED DATA WITH INFORMATIVE CLUSTER SIZE

成果类型:
Article
署名作者:
Mitani, Aya A.; Kaye, Elizabeth K.; Nelson, Kerrie P.
署名单位:
University of Toronto; Boston University; Boston University
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/21-AOAS1518
发表日期:
2022
页码:
596-611
关键词:
binary data regression inference disease models
摘要:
Periodontal disease is a serious gum infection impacting half of the U.S. adult population that may lead to loss of teeth. Using standard marginal models to study the association between patient-level predictors and tooth-level outcomes can lead to biased estimates because the independence assumption between the outcome (periodontal disease) and cluster size (number of teeth per patient) is violated. Specifically, the baseline number of teeth of a patient is informative. In this setting a cluster-weighted generalized estimating equations (CWGEE) approach can be used to obtain unbiased marginal inference from data with informative cluster size (ICS). However, in many longitudinal studies of dental health, including the Veterans Affairs Dental Longitudinal Study, the rate of tooth-loss or tooth drop-out over time is also informative, creating a missing at random data mechanism. Here, we propose a novel modeling approach that incorporates the technique of inverse probability censoring weights into CWGEE with binary outcomes to account for ICS and informative drop-out over time. In an extensive simulation study we demonstrate that results obtained from our proposed method yield lower bias and excellent coverage probability, compared to those obtained from traditional methods which do not account for ICS or drop-out.
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