Literature DB >> 28798498

Non-parametric regression in clustered multistate current status data with informative cluster size.

Ling Lan1, Dipankar Bandyopadhyay2, Somnath Datta3.   

Abstract

Datasets examining periodontal disease records current (disease) status information of tooth-sites, whose stochastic behavior can be attributed to a multistate system with state occupation determined at a single inspection time. In addition, the tooth-sites remain clustered within a subject, and the number of available tooth-sites may be representative of the true PD status of that subject, leading to an 'informative cluster size' scenario. To provide insulation against incorrect model assumptions, we propose a nonparametric regression framework to estimate state occupation probabilities at a given time and state exit/entry distributions, utilizing weighted monotonic regression and smoothing techniques. We demonstrate the superior performance of our proposed weighted estimators over the un-weighted counterparts via. a simulation study, and illustrate the methodology using a dataset on periodontal disease.

Entities:  

Keywords:  Markov; censoring; multivariate time-to-event data; periodontal disease; state-occupation probability

Year:  2016        PMID: 28798498      PMCID: PMC5545825          DOI: 10.1111/stan.12099

Source DB:  PubMed          Journal:  Stat Neerl        ISSN: 0039-0402            Impact factor:   1.190


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Review 10.  Methods for observed-cluster inference when cluster size is informative: a review and clarifications.

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