TY - JOUR
T1 - Smoothed quantile regression analysis of competing risks
AU - Choi, Sangbum
AU - Kang, Sangwook
AU - Huang, Xuelin
N1 - Funding Information:
Dr. Choi was supported by grants from Korea University (K1607341) and National Research Foundation (NRF) of Korea (2017R1C1B1004817). Dr. Kang was supported by grant from NRF of Korea (2017R1A2B4005818). The research of Dr. Huang was supported in part by USA NSF grant (DMS 1612965) and NIH grants (U54 CA096300, U01 CA152958, and 5P50 CA100632).
Funding Information:
National Research Foundation of Korea, Grant/Award Numbers: 2017R1A2B4005818, 2017R1C1B1004817; National Institutes of Health, Grant/Award Numbers: 5P50 CA100632, U01 CA152958, U54 CA096300; Korea University, Grant/Award Number: K1607341; National Science Foundation, Grant/Award Number: DMS 1612965
Publisher Copyright:
© 2018 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim
PY - 2018/9
Y1 - 2018/9
N2 - Censored quantile regression models, which offer great flexibility in assessing covariate effects on event times, have attracted considerable research interest. In this study, we consider flexible estimation and inference procedures for competing risks quantile regression, which not only provides meaningful interpretations by using cumulative incidence quantiles but also extends the conventional accelerated failure time model by relaxing some of the stringent model assumptions, such as global linearity and unconditional independence. Current method for censored quantile regressions often involves the minimization of the L1-type convex function or solving the nonsmoothed estimating equations. This approach could lead to multiple roots in practical settings, particularly with multiple covariates. Moreover, variance estimation involves an unknown error distribution and most methods rely on computationally intensive resampling techniques such as bootstrapping. We consider the induced smoothing procedure for censored quantile regressions to the competing risks setting. The proposed procedure permits the fast and accurate computation of quantile regression parameter estimates and standard variances by using conventional numerical methods such as the Newton–Raphson algorithm. Numerical studies show that the proposed estimators perform well and the resulting inference is reliable in practical settings. The method is finally applied to data from a soft tissue sarcoma study.
AB - Censored quantile regression models, which offer great flexibility in assessing covariate effects on event times, have attracted considerable research interest. In this study, we consider flexible estimation and inference procedures for competing risks quantile regression, which not only provides meaningful interpretations by using cumulative incidence quantiles but also extends the conventional accelerated failure time model by relaxing some of the stringent model assumptions, such as global linearity and unconditional independence. Current method for censored quantile regressions often involves the minimization of the L1-type convex function or solving the nonsmoothed estimating equations. This approach could lead to multiple roots in practical settings, particularly with multiple covariates. Moreover, variance estimation involves an unknown error distribution and most methods rely on computationally intensive resampling techniques such as bootstrapping. We consider the induced smoothing procedure for censored quantile regressions to the competing risks setting. The proposed procedure permits the fast and accurate computation of quantile regression parameter estimates and standard variances by using conventional numerical methods such as the Newton–Raphson algorithm. Numerical studies show that the proposed estimators perform well and the resulting inference is reliable in practical settings. The method is finally applied to data from a soft tissue sarcoma study.
KW - censored quantile regression
KW - cumulative incidence function
KW - induced smoothing
KW - variance estimation
KW - weighted estimating equation
UR - http://www.scopus.com/inward/record.url?scp=85050355750&partnerID=8YFLogxK
U2 - 10.1002/bimj.201700104
DO - 10.1002/bimj.201700104
M3 - Article
C2 - 29978507
AN - SCOPUS:85050355750
SN - 0323-3847
VL - 60
SP - 934
EP - 946
JO - Biometrische Zeitschrift
JF - Biometrische Zeitschrift
IS - 5
ER -