Li, Shanshan Sun, Yifei Huang, Chiung-Yu Follmann, Dean A Krause, Richard
Published in
Statistics in medicine
Although recurrent event data analysis is a rapidly evolving area of research, rigorous studies on estimation of the effects of intermittently observed time-varying covariates on the risk of recurrent events have been lacking. Existing methods for analyzing recurrent event data usually require that the covariate processes are observed throughout th...
Li, Shanshan Sun, Yifei Huang, Chiung-Yu Follmann, Dean A Krause, Richard
Published in
Statistics in medicine
Although recurrent event data analysis is a rapidly evolving area of research, rigorous studies on estimation of the effects of intermittently observed time-varying covariates on the risk of recurrent events have been lacking. Existing methods for analyzing recurrent event data usually require that the covariate processes are observed throughout th...
Yang, Guangren Yu, Ye Li, Runze Buu, Anne
Published in
Statistica Sinica
Survival data with ultrahigh dimensional covariates such as genetic markers have been collected in medical studies and other fields. In this work, we propose a feature screening procedure for the Cox model with ultrahigh dimensional covariates. The proposed procedure is distinguished from the existing sure independence screening (SIS) procedures (F...
Rakovski, Cyril Langholz, Bryan
Published in
The International Journal of Biostatistics
Informative sampling based on counter-matching risk set subjects on exposure correlated with a variable of interest has been shown to be an efficient alternative to simple random sampling; however, the opposite is true when correlation between the two covariates is absent. Thus, the counter-matching design will entail substantial gains in statistic...
Costa, Marcelo A. Colosimo, Enrico A. Miranda, Carolina G.
Variable selection plays an important rule in identifying possible factors that could predict the behavior of clients with respect to the bill payments. The Cox model is the standard approach for modeling the time until starting the lack of payments. Parsimony and capacity of predicting are some desirable characteristics of statistical models. This...
O'Hare, A Orton, R J Bessell, P R Kao, R R
Published in
Proceedings. Biological sciences / The Royal Society
Fitting models with Bayesian likelihood-based parameter inference is becoming increasingly important in infectious disease epidemiology. Detailed datasets present the opportunity to identify subsets of these data that capture important characteristics of the underlying epidemiology. One such dataset describes the epidemic of bovine tuberculosis (bT...
Little, Roderick J Zanganeh, Sahar
For likelihood-based inferences from data with missing values, Rubin (1976) showed that the missing data mechanism can be ignored when (a) the missing data are missing at random (MAR), in the sense that missingness does not depend on the missing values after conditioning on the observed data, and (b) the parameters of the data model and the missing...
Zhang, Wei Chaloner, Kathryn Cowles, Mary Kathryn Zhang, Ying Stapleton, Jack T
Published in
Statistics in medicine
Two common statistical problems in pooling survival data from several studies are addressed. The first problem is that the data are doubly censored in that the origin is interval censored and the endpoint event may be right censored. Two approaches to incorporate the uncertainty of interval-censored origins are developed, and then compared with mor...
Scheel, Ida Aldrin, Magne Frigessi, Arnoldo Jansen, Peder A
Published in
Journal of the Royal Society, Interface
Infectious salmon anemia (ISA) is one of the main infectious diseases in Atlantic salmon farming with major economical implications. Despite the strong regulatory interventions, the ISA epidemic is not under control, worldwide. We study the data covering salmon farming in Norway from 2002 to 2005 and propose a stochastic space-time model for the tr...
Peña, Edsel A
Published in
Statistical science : a review journal of the Institute of Mathematical Statistics
This review article provides an overview of recent work in the modelling and analysis of recurrent events arising in engineering, reliability, public health, biomedical, and other areas. Recurrent event modelling possesses unique facets making it different and more difficult to handle than single event settings. For instance, the impact of an incre...