Back to Search Start Over

SEMIPARAMETRIC REGRESSION MODEL FOR RECURRENT BACTERIAL INFECTIONS AFTER HEMATOPOIETIC STEM CELL TRANSPLANTATION.

Authors :
Lee, Chi Hyun
Lee, Chi Hyun
Huang, Chiung-Yu
DeFor, Todd E
Brunstein, Claudio G
Weisdorf, Daniel J
Luo, Xianghua
Lee, Chi Hyun
Lee, Chi Hyun
Huang, Chiung-Yu
DeFor, Todd E
Brunstein, Claudio G
Weisdorf, Daniel J
Luo, Xianghua
Source :
Statistica Sinica; vol 29, iss 3, 1489-1509; 1017-0405
Publication Year :
2019

Abstract

Patients who undergo hematopoietic stem cell transplantation (HSCT) often experience multiple bacterial infections during the early post-transplant period. In this article, we consider a semiparametric regression model that correlates patient- and transplant-related risk factors with inter-infection gap times. Existing regression methods for recurrent gap times are not directly applicable to study post-transplant infection because the initiating event (transplant) is different than the recurrent events of interest (post-transplant infections); as a result, the time from transplant to the first infection and the time elapsed between consecutive infections have distinct biological meanings and hence follow different distributions. Moreover, risk factors may have different effects on these two types of gap times. We propose a semiparametric estimation procedure to evaluate the covariate effects on time from transplant to thefirst infection and on gap times between consecutive infections simultaneously. The proposed estimator accounts for dependent censoring induced by within-subject correlation among recurrent gap times and length bias in the last censored gap time due to intercept sampling. We study the finite sample properties through simulations and present an application of the proposed method to the post-HSCT bacterial infection data collected at the University of Minnesota.

Details

Database :
OAIster
Journal :
Statistica Sinica; vol 29, iss 3, 1489-1509; 1017-0405
Notes :
application/pdf, Statistica Sinica vol 29, iss 3, 1489-1509 1017-0405
Publication Type :
Electronic Resource
Accession number :
edsoai.on1391603975
Document Type :
Electronic Resource