TY - JOUR
T1 - Imputation for semiparametric transformation models with biased-sampling data
AU - Liu, Hao
AU - Qin, Jing
AU - Shen, Yu
N1 - Funding Information:
Acknowledgments The work was supported in part by the U.S. NIH grants CA079466, CA016672 and CA058183. The authors thank one referee for his/her constructive comments. The authors also thank Professor Asgharian and the investigators from the Canadian Study of Health and Aging for generously sharing the dementia data. The data reported in this article were collected as part of the Canadian Study of Health and Aging. The core study was funded by the Seniors’ Independence Research Program, through the National Health Research and Development Program (NHRDP) of Health Canada Project 6606-3954-MC(S). Additional funding was provided by Pfizer Canada Incorporated through the Medical Research Council/Pharmaceutical Manufacturers Association of Canada Health Activity Program, NHRDP Project 6603-1417-302(R), Bayer Incorporated, and the British Columbia Health Research Foundation Projects 38 (93-2) and 34 (96-1). The study was coordinated through the University of Ottawa and the Division of Aging and Seniors, Health Canada.
PY - 2012/10
Y1 - 2012/10
N2 - Widely recognized in many fields including economics, engineering, epidemiology, health sciences, technology and wildlife management, length-biased sampling generates biased and right-censored data but often provide the best information available for statistical inference. Different from traditional right-censored data, length-biased data have unique aspects resulting from their sampling procedures. We exploit these unique aspects and propose a general imputation-based estimation method for analyzing length-biased data under a class of flexible semiparametric transformation models. We present new computational algorithms that can jointly estimate the regression coefficients and the baseline function semiparametrically. The imputation-based method under the transformation model provides an unbiased estimator regardless whether the censoring is independent or not on the covariates. We establish large-sample properties using the empirical processes method. Simulation studies show that under small to moderate sample sizes, the proposed procedure has smaller mean square errors than two existing estimation procedures. Finally, we demonstrate the estimation procedure by a real data example.
AB - Widely recognized in many fields including economics, engineering, epidemiology, health sciences, technology and wildlife management, length-biased sampling generates biased and right-censored data but often provide the best information available for statistical inference. Different from traditional right-censored data, length-biased data have unique aspects resulting from their sampling procedures. We exploit these unique aspects and propose a general imputation-based estimation method for analyzing length-biased data under a class of flexible semiparametric transformation models. We present new computational algorithms that can jointly estimate the regression coefficients and the baseline function semiparametrically. The imputation-based method under the transformation model provides an unbiased estimator regardless whether the censoring is independent or not on the covariates. We establish large-sample properties using the empirical processes method. Simulation studies show that under small to moderate sample sizes, the proposed procedure has smaller mean square errors than two existing estimation procedures. Finally, we demonstrate the estimation procedure by a real data example.
KW - Biased sampling
KW - Estimating equation
KW - Imputation
KW - Transformation models
UR - http://www.scopus.com/inward/record.url?scp=84866424625&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=84866424625&partnerID=8YFLogxK
U2 - 10.1007/s10985-012-9225-5
DO - 10.1007/s10985-012-9225-5
M3 - Article
C2 - 22903245
AN - SCOPUS:84866424625
SN - 1380-7870
VL - 18
SP - 470
EP - 503
JO - Lifetime Data Analysis
JF - Lifetime Data Analysis
IS - 4
ER -