2016
DOI: 10.1186/s12874-016-0212-5
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Joint modelling of time-to-event and multivariate longitudinal outcomes: recent developments and issues

Abstract: BackgroundAvailable methods for the joint modelling of longitudinal and time-to-event outcomes have typically only allowed for a single longitudinal outcome and a solitary event time. In practice, clinical studies are likely to record multiple longitudinal outcomes. Incorporating all sources of data will improve the predictive capability of any model and lead to more informative inferences for the purpose of medical decision-making.MethodsWe reviewed current methodologies of joint modelling for time-to-event d… Show more

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Cited by 145 publications
(152 citation statements)
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References 85 publications
(395 reference statements)
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“…Next, we performed longitudinal analyses by constructing joint models for the longitudinal microbial data to quantify their relationship with the onset of recurrent wheezing. 20 Specifically, we created a longitudinal mixed-effects generalized linear model to predict relative genus abundances over time using the 8 most abundant taxa and clinical covariates as the fixed effects, time as the random slope, and subject as the random intercept. These relative abundances and their interaction by time point were both scaled such that a 10% change in abundance was equivalent to a unit change and incorporated as time-dependent covariates into a Cox proportional hazards model with the outcome recurrent wheezing by age 3 years.…”
Section: Statistical Analysesmentioning
confidence: 99%
“…Next, we performed longitudinal analyses by constructing joint models for the longitudinal microbial data to quantify their relationship with the onset of recurrent wheezing. 20 Specifically, we created a longitudinal mixed-effects generalized linear model to predict relative genus abundances over time using the 8 most abundant taxa and clinical covariates as the fixed effects, time as the random slope, and subject as the random intercept. These relative abundances and their interaction by time point were both scaled such that a 10% change in abundance was equivalent to a unit change and incorporated as time-dependent covariates into a Cox proportional hazards model with the outcome recurrent wheezing by age 3 years.…”
Section: Statistical Analysesmentioning
confidence: 99%
“…The literature on this topic is extensive, with comprehensive reviews given by Hogan and Laird (1997), Tsiatis and Davidian (2004) and Gould et al (2015). Reviews specific to joint latent class models and multivariate longitudinal data are given by Proust-Lima et al (2012) and Hickey et al (2016) respectively.…”
Section: Introductionmentioning
confidence: 99%
“…This necessitates joint models with multiple longitudinal variables. Hickey et al () review developments in multivariate joint models including software implementations. Hickey et al .…”
Section: Extensions and Specialised Joint Models And Their Implementamentioning
confidence: 99%
“…This necessitates joint models with multiple longitudinal variables. Hickey et al (2016) review developments in multivariate joint models including software implementations. Hickey et al mentioned a new package for multivariate joint models, sjmsoft for R, available from the author's website (Brown, 2005).…”
Section: Extensions and Specialised Joint Models And Their Implementamentioning
confidence: 99%