Literature DB >> 2720058

Censoring in an epidemic with an application to hemophilia-associated AIDS.

R Brookmeyer1, J J Goedert.   

Abstract

In epidemiologic studies of infectious diseases, the times of infection may be known only up to an interval. A two-stage parametric regression model is proposed for the analysis of cohort studies during an epidemic in which the exact times of infection cannot be ascertained. The methods permit joint estimation of the effects of covariates both on the risk of infection and the risk of progression to clinical disease once infected. The methodology is applied to a cohort of hemophiliacs who were at risk of infection with the AIDS virus. It was found that hemophiliacs with severe Type A hemophilia were at highest risk of infection, and the risk of infection increased sharply in the early 1980s. Hemophiliacs who were over the age of 20 at infection were at higher risk of progression to AIDS than hemophiliacs who were under age 20. The estimate of the cumulative probability of developing AIDS within t years of infection (the incubation period distribution) for hemophiliacs over age 20 was 1 - exp(-.0021t2.516). Since follow-up in this cohort was restricted to about 10 years from infection, estimates of the incubation period distribution beyond 10 years depend on model extrapolation and should be interpreted cautiously.

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Year:  1989        PMID: 2720058

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  16 in total

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6.  A meta-analysis of estimates of the AIDS incubation distribution.

Authors:  P C Cooley; L E Myers; D N Hamill
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7.  Identification of the Fraction of Indolent Tumors and Associated Overdiagnosis in Breast Cancer Screening Trials.

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9.  Different AIDS incubation periods and their impacts on reconstructing human immunodeficiency virus epidemics and projecting AIDS incidence.

Authors:  P Bacchetti; M R Segal; N A Hessol; N P Jewell
Journal:  Proc Natl Acad Sci U S A       Date:  1993-03-15       Impact factor: 11.205

10.  A new approach to estimating AIDS incubation times: results in homosexual infected men.

Authors:  S Chevret; D Costagliola; J J Lefrere; A J Valleron
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