Background: An assumption in many analyses of longitudinal patient-reported outcome (PRO) data is that there is a single population following a single health trajectory. One approach that may help researchers move beyond this traditional assumption, with its inherent limitations, is growth mixture modelling (GMM), which can identify and assess multiple unobserved trajectories of patients’ health outcomes. We describe the process that was undertaken for a GMM analysis of longitudinal PRO data captured by a clinical registry for outpatients with atrial fibrillation (AF). Methods: This expository paper describes the modelling approach and some methodological iss...
Growth mixture models are an important tool for detecting group structure in repeated measures data....
Asparouhov for helpful comments. 1 This chapter discusses the use of growth mixture modeling to asse...
We propose a multivariate growth curve mixture model that groups subjects on the basis of multiple s...
Studies of growth patterns of longitudinal characteristics are vitally important to improve our unde...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
AbstractObjectivesTo present a step-by-step example of the examination of heterogeneity within clini...
The use of finite mixture modelling (FMM) is becoming increasingly popular for the analysis of longi...
The use of finite mixture modelling (FMM) is becoming increasingly popular for the analysis of longi...
The use of finite mixture modelling (FMM) is becoming increasingly popular for the analysis of longi...
Growth mixture models are an important tool for detecting group structure in repeated measures data....
Lifecourse trajectories of clinical or anthropological attributes are useful for identifying how our...
Ialongo for their insightful comments. We are also thankful for Dr. Wei Wang's generous consult...
Growth mixture models are an important tool for detecting group structure in repeated measures data....
Asparouhov for helpful comments. 1 This chapter discusses the use of growth mixture modeling to asse...
We propose a multivariate growth curve mixture model that groups subjects on the basis of multiple s...
Studies of growth patterns of longitudinal characteristics are vitally important to improve our unde...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
From the statistical learning perspective, this paper shows a new direction for the use of growth mi...
An important limitation of conventional latent-growth modeling (LGM) is that it assumes that all ind...
AbstractObjectivesTo present a step-by-step example of the examination of heterogeneity within clini...
The use of finite mixture modelling (FMM) is becoming increasingly popular for the analysis of longi...
The use of finite mixture modelling (FMM) is becoming increasingly popular for the analysis of longi...
The use of finite mixture modelling (FMM) is becoming increasingly popular for the analysis of longi...
Growth mixture models are an important tool for detecting group structure in repeated measures data....
Lifecourse trajectories of clinical or anthropological attributes are useful for identifying how our...
Ialongo for their insightful comments. We are also thankful for Dr. Wei Wang's generous consult...
Growth mixture models are an important tool for detecting group structure in repeated measures data....
Asparouhov for helpful comments. 1 This chapter discusses the use of growth mixture modeling to asse...
We propose a multivariate growth curve mixture model that groups subjects on the basis of multiple s...