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arxiv: 0805.3658 · v1 · submitted 2008-05-23 · 🧮 math.ST · stat.TH

Likelihood for generally coarsened observations from multi-state or counting process models

classification 🧮 math.ST stat.TH
keywords likelihoodmodelscountingdeathgeneralmultistateobservationobserved
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We consider first the mixed discrete-continuous scheme of observation in multistate models; this is a classical pattern in epidemiology because very often clinical status is assessed at discrete visit times while times of death or other events are observed exactly. A heuristic likelihood can be written for such models, at least for Markov models; however, a formal proof is not easy and has not been given yet. We present a general class of possibly non-Markov multistate models which can be represented naturally as multivariate counting processes. We give a rigorous derivation of the likelihood based on applying Jacod's formula for the full likelihood and taking conditional expectation for the observed likelihood. A local description of the likelihood allows us to extend the result to a more general coarsening observation scheme proposed by Commenges & G\'egout-Petit. The approach is illustrated by considering models for dementia, institutionalization and death.

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