Efficient Estimation of Mixture Cure Frailty Model for Clustered Current Status Data
Current status data abounds in the field of epidemiology and public health, where the only observable data for a subject is the random inspection time and the event status at inspection. Motivated by such a current status data from a periodontal study where data are inherently clustered, we propose...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
30.11.2019
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.1912.00295 |
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Summary: | Current status data abounds in the field of epidemiology and public health,
where the only observable data for a subject is the random inspection time and
the event status at inspection. Motivated by such a current status data from a
periodontal study where data are inherently clustered, we propose a unified
methodology to analyze such complex data. We allow the time-to-event to follow
the semiparametric GOR model with a cure fraction, and develop a unified
estimation scheme powered by the EM algorithm. The within-subject correlation
is accounted for by a random (frailty) effect, and the non-parametric component
of the GOR model is approximated via penalized splines, with a set of knot
points that increases with the sample size. Proposed methodology is accompanied
by a rigorous asymptotic theory, and the related semiparametric efficiency. The
finite sample performance of our model parameters are assessed via simulation
studies. Furthermore, the proposed methodology is illustrated via application
to the oral health data, accompanied by diagnostic checks to identify
influential observations. An easy to use R package CRFCSD is also available for
implementation. |
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DOI: | 10.48550/arxiv.1912.00295 |