Generalized Additive Models for Current Status Data

被引:0
作者
Stephen C. Shiboski
机构
[1] University of California San Francisco,Department of Epidemiology and Biostatistics
来源
Lifetime Data Analysis | 1998年 / 4卷
关键词
Current status data; survival analysis; generalized additive model; semiparametric estimation; isotonic regression;
D O I
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摘要
Current status data arise in studies where the target measurement is the time of occurrence of some event, but observations are limited to indicators of whether or not the event has occurred at the time the sample is collected - only the current status of each individual with respect to event occurrence is observed. Examples of such data arise in several fields, including demography, epidemiology, econometrics and bioassay. Although estimation of the marginal distribution of times of event occurrence is well understood, techniques for incorporating covariate information are not well developed. This paper proposes a semiparametric approach to estimation for regression models of current status data, using techniques from generalized additive modeling and isotonic regression. This procedure provides simultaneous estimates of the baseline distribution of event times and covariate effects. No parametric assumptions about the form of the baseline distribution are required. The results are illustrated using data from a demographic survey of breastfeeding practices in developing countries, and from an epidemiological study of heterosexual Human Immunodeficiency Virus (HIV) transmission.
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[1]  
Ayer M.(1955)An empirical distribution function for sampling with incomplete information Annals of Mathematical Statistics 26 641-647
[2]  
Brunk H.D.(1989)Additive isotonic models Journal of the American Statistical Association 84 289-294
[3]  
Ewing G.M.(1983)Analysis of survival data by the proportional odds model Statistics in Medicine 2 273-277
[4]  
Reid W.T.(1993)Biases in prevalent cohorts Biometrics 43 743-749
[5]  
Silverman E.(1984)Asymptotic efficiency in semiparametric models with censoring Journal of Econometrics 32 189-218
[6]  
Bacchetti P.(1995)Analysis of transformation models with censored data Biometrika 82 835-845
[7]  
Bennett S.(1979)Robust locally weighted regression and smoothing scatterplots Journal of the American Statistical Association 74 829-836
[8]  
Brookmeyer R.(1983)Distribution-free maximum likelihood estimator of the binary choice model Econometrica 51 765-782
[9]  
Gail M.H.(1987)Efficiency bounds for distribution-free estimators of the binary choice and censored regression models Econometrica 55 559-585
[10]  
Chamberlain G.(1986)Proportional hazards models for current status data: application to the study of differentials in age at weaning in Pakistan Demography 23 607-620