Literature DB >> 19629683

Nonparametric inference and uniqueness for periodically observed progressive disease models.

Beth Ann Griffin1, Stephen W Lagakos.   

Abstract

In many studies examining the progression of HIV and other chronic diseases, subjects are periodically monitored to assess their progression through disease states. This gives rise to a specific type of panel data which have been termed "chain-of-events data"; e.g. data that result from periodic observation of a progressive disease process whose states occur in a prescribed order and where state transitions are not observable. Using a discrete time semi-Markov model, we develop an algorithm for nonparametric estimation of the distribution functions of sojourn times in a J state progressive disease model. Issues of uniqueness for chain-of-events data are not well-understood. Thus, a main goal of this paper is to determine the uniqueness of the nonparametric estimators of the distribution functions of sojourn times within states. We develop sufficient conditions for uniqueness of the nonparametric maximum likelihood estimator, including situations where some but not all of its components are unique. We illustrate the methods with three examples.

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Year:  2009        PMID: 19629683      PMCID: PMC2905856          DOI: 10.1007/s10985-009-9122-8

Source DB:  PubMed          Journal:  Lifetime Data Anal        ISSN: 1380-7870            Impact factor:   1.588


  10 in total

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5.  Analysis of doubly-censored survival data, with application to AIDS.

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6.  Semiparametric estimation in a three-state duration-dependent Markov model from interval-censored observations with application to AIDS data.

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7.  Estimation of the infection time and latency distribution of AIDS with doubly censored data.

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9.  Dynamics of HIV viremia and antibody seroconversion in plasma donors: implications for diagnosis and staging of primary HIV infection.

Authors:  Eberhard W Fiebig; David J Wright; Bhupat D Rawal; Patricia E Garrett; Richard T Schumacher; Lorraine Peddada; Charles Heldebrant; Richard Smith; Andrew Conrad; Steven H Kleinman; Michael P Busch
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  10 in total

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