Dynamic prediction methods incorporate longitudinal biomarker information to produce updated, more accurate predictions of conditional survival probability. There are two approaches for obtaining dynamic predictions: (1) a joint model of the longitudinal marker and survival process, and (2) an approximate approach that specifies a model for a specific component of the joint distribution. In the case of a binary marker, an illness‐death model is an example of a joint modeling approach that is unified and produces consistent predictions. However, previous literature has shown that approximate approaches, such as landmarking, with additional flexibility can have good predictive performance. One such approach proposes using a Gaussian copula to...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
Dynamic prediction incorporates time‐dependent marker information accrued during follow‐up to improv...
This book introduces readers to advanced statistical methods for analyzing survival data involving c...
Longitudinal and survival sub-models are two building blocks for joint modelling of longitudinal and...
The individual data collected throughout patient follow-up constitute crucial information for assess...
Predicting patient survival probabilities based on observed covariates is an important assessment in...
International audienceBackground: The individual data collected throughout patient follow-up constit...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...
Complex survival outcomes, such as multivariate and interval-censored endpoints, are becoming more c...
This paper considers methods for estimating the association between progression-free and overall sur...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
A key question in clinical practice is accurate prediction of patient prognosis. To this end, nowada...
Dynamic prediction incorporates time‐dependent marker information accrued during follow‐up to improv...
This book introduces readers to advanced statistical methods for analyzing survival data involving c...
Longitudinal and survival sub-models are two building blocks for joint modelling of longitudinal and...
The individual data collected throughout patient follow-up constitute crucial information for assess...
Predicting patient survival probabilities based on observed covariates is an important assessment in...
International audienceBackground: The individual data collected throughout patient follow-up constit...
In medical research, predicting the probability of a time-to-event outcome is often of interest. Alo...
Complex survival outcomes, such as multivariate and interval-censored endpoints, are becoming more c...
This paper considers methods for estimating the association between progression-free and overall sur...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...