BACKGROUND: Survival analysis is the most appropriate method of analysis for time-to-event data. The classical accelerated failure-time model is a more powerful and interpretable model than the Cox proportional hazards model, provided that model imposed distribution and homoscedasticity assumptions satisfied. However, most of the real data are heteroscedastic which violates the fundamental assumption and consequently, the statistical inference could be erroneous in accelerated failure-time modeling. The weighted least-squares estimation for the accelerated failure-time model is an efficient semi-parametric approach for time-to-event data without the homoscedasticity assumption, which is developed recently and not often utilized for re...
Background: HIV-1 genotypic susceptibility scores (GSSs) were proven to be significant prognostic fa...
Typical applications of marginal structural time-to-event (e.g., Cox) models have used time on study...
Independent censoring is a crucial assumption in survival analysis. However, this is imprac-tical in...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
Presented at 2014 ICSA symposium Program The classical accelerated failure time (AFT) model has been...
The field of survival analysis has experienced tremendous growth during the latter half of the 20th ...
This paper demonstrates a way to investigate a potentially non-linear relationship between an interv...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
Summary. Grouped failure time data arise often in HIV studies. In a recent preventive HIV vaccine ef...
ABSTRACT Objective: The present paper demonstrates the applications of Accelerated Failure Time (AFT...
BACKGROUND: HIV-1 genotypic susceptibility scores (GSSs) were proven to be significant prognostic f...
Cox model and accelerated failure time models are widely used in the modeling of survival data for v...
The accelerated failure time model is widely used for analyzing censored survival times often observ...
Accelerated failure time (AFT) models are alternatives to relative risk models which are used extens...
Rank-based method and least square approach are the most common techniques for estimating the regres...
Background: HIV-1 genotypic susceptibility scores (GSSs) were proven to be significant prognostic fa...
Typical applications of marginal structural time-to-event (e.g., Cox) models have used time on study...
Independent censoring is a crucial assumption in survival analysis. However, this is imprac-tical in...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
Presented at 2014 ICSA symposium Program The classical accelerated failure time (AFT) model has been...
The field of survival analysis has experienced tremendous growth during the latter half of the 20th ...
This paper demonstrates a way to investigate a potentially non-linear relationship between an interv...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
Summary. Grouped failure time data arise often in HIV studies. In a recent preventive HIV vaccine ef...
ABSTRACT Objective: The present paper demonstrates the applications of Accelerated Failure Time (AFT...
BACKGROUND: HIV-1 genotypic susceptibility scores (GSSs) were proven to be significant prognostic f...
Cox model and accelerated failure time models are widely used in the modeling of survival data for v...
The accelerated failure time model is widely used for analyzing censored survival times often observ...
Accelerated failure time (AFT) models are alternatives to relative risk models which are used extens...
Rank-based method and least square approach are the most common techniques for estimating the regres...
Background: HIV-1 genotypic susceptibility scores (GSSs) were proven to be significant prognostic fa...
Typical applications of marginal structural time-to-event (e.g., Cox) models have used time on study...
Independent censoring is a crucial assumption in survival analysis. However, this is imprac-tical in...