IntroductionThis study considers the prediction of the time until two survival outcomes have both occurred. We compared a variety of analytical methods motivated by a typical clinical problem of multimorbidity prognosis.MethodsWe considered five methods: product (multiply marginal risks), dual-outcome (directly model the time until both events occur), multistate models (msm), and a range of copula and frailty models. We assessed calibration and discrimination under a variety of simulated data scenarios, varying outcome prevalence, and the amount of residual correlation. The simulation focused on model misspecification and statistical power. Using data from the Clinical Practice Research Datalink, we compared model performance when predictin...
Clinical decision-making often relies on a subject's absolute risk of a disease event of interest. H...
This thesis focused on analyzing data with multiple outcome variables. The motivating data sets comp...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
Clinical prediction models (CPMs) can predict clinically relevant outcomes or events. Typically, pro...
Mixed types of multivariate outcomes are common in clinical investigations. Survival time is one of ...
Clinical prediction models (CPMs) can predict clinically relevant outcomes or events. Typically, pro...
Joint modeling of longitudinal and survival data has received much attention and is becoming increas...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
Background and objectiveMost methods for developing clinical prognostic models focus on identifying ...
Abstract: Clinical decision-making often relies on a subject’s ab-solute risk of a disease event of ...
The importance of developing personalized risk prediction estimates has become increasingly evident ...
Background: External validation of prognostic models is necessary to assess the accuracy and general...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
In the long term follow-up study of clinical survival data, we often encounter situations where some...
Survival data analysis is a very broad field of statistics, encompassing a large variety of methods ...
Clinical decision-making often relies on a subject's absolute risk of a disease event of interest. H...
This thesis focused on analyzing data with multiple outcome variables. The motivating data sets comp...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...
Clinical prediction models (CPMs) can predict clinically relevant outcomes or events. Typically, pro...
Mixed types of multivariate outcomes are common in clinical investigations. Survival time is one of ...
Clinical prediction models (CPMs) can predict clinically relevant outcomes or events. Typically, pro...
Joint modeling of longitudinal and survival data has received much attention and is becoming increas...
Multivariable regression models are powerful tools that are used frequently in studies of clinical o...
Background and objectiveMost methods for developing clinical prognostic models focus on identifying ...
Abstract: Clinical decision-making often relies on a subject’s ab-solute risk of a disease event of ...
The importance of developing personalized risk prediction estimates has become increasingly evident ...
Background: External validation of prognostic models is necessary to assess the accuracy and general...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
In the long term follow-up study of clinical survival data, we often encounter situations where some...
Survival data analysis is a very broad field of statistics, encompassing a large variety of methods ...
Clinical decision-making often relies on a subject's absolute risk of a disease event of interest. H...
This thesis focused on analyzing data with multiple outcome variables. The motivating data sets comp...
A common goal of longitudinal studies is to relate a set of repeated observations to a time-to-event...