A biomarker is a measurement which can be used as a predictor or sometimes even a surrogate for a biological endpoint that directly measures a patient's disease or survival status. Biomarkers are often measured over time and so are referred to as longitudinal biomarkers. Biomarkers are of public health interest because they can provide early detection of life threatening or fatal diseases. It is important in public health to be able to identify biomarkers to predict survival for patients because it can reduce the time and cost necessary to resolve the study question or used to identify subsets of patients who would be appropriate candidates for the administration of a targeted therapy. In this dissertation, we introduce a method employing a...
Joint modeling of longitudinal and survival data has received much attention and is becoming increas...
Data from transplant patients has many unique characteristics that can cause problems with statistic...
Data from transplant patients has many unique characteristics that can cause problems with statistic...
A biomarker is a measurement which can be used as a predictor or sometimes even a surrogate for a bi...
Goals and Objectives: A typical analysis of survival data involves the modeling of time-to-event dat...
Traditional survival models, including Kaplan Meier, Nelson Aalen and Cox regression assume a homog...
Methods for the combined analysis of survival time and longitudinal biomarker data have been develop...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
In studying the progression of a disease and to better predict time to death (survival data), invest...
The study of events involving an element of time has a long and important history in statistical res...
In survival analysis recurrent event times are often observed on the same subject. These event times...
In the past couple of decades, longitudinal and survival data analysis have emerged as important and...
In this paper, we consider the joint modelling of survival and longitudinal data with informative ob...
Piecewise exponential models provide a very flexible framework for modeling univariate survival data...
The frailty model is increasingly popular for analyzing multivariate time-to-event data. The most co...
Joint modeling of longitudinal and survival data has received much attention and is becoming increas...
Data from transplant patients has many unique characteristics that can cause problems with statistic...
Data from transplant patients has many unique characteristics that can cause problems with statistic...
A biomarker is a measurement which can be used as a predictor or sometimes even a surrogate for a bi...
Goals and Objectives: A typical analysis of survival data involves the modeling of time-to-event dat...
Traditional survival models, including Kaplan Meier, Nelson Aalen and Cox regression assume a homog...
Methods for the combined analysis of survival time and longitudinal biomarker data have been develop...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
In studying the progression of a disease and to better predict time to death (survival data), invest...
The study of events involving an element of time has a long and important history in statistical res...
In survival analysis recurrent event times are often observed on the same subject. These event times...
In the past couple of decades, longitudinal and survival data analysis have emerged as important and...
In this paper, we consider the joint modelling of survival and longitudinal data with informative ob...
Piecewise exponential models provide a very flexible framework for modeling univariate survival data...
The frailty model is increasingly popular for analyzing multivariate time-to-event data. The most co...
Joint modeling of longitudinal and survival data has received much attention and is becoming increas...
Data from transplant patients has many unique characteristics that can cause problems with statistic...
Data from transplant patients has many unique characteristics that can cause problems with statistic...