2017
DOI: 10.1186/s12874-017-0358-9
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Bayesian hierarchical piecewise regression models: a tool to detect trajectory divergence between groups in long-term observational studies

Abstract: BackgroundBayesian hierarchical piecewise regression (BHPR) modeling has not been previously formulated to detect and characterise the mechanism of trajectory divergence between groups of participants that have longitudinal responses with distinct developmental phases. These models are useful when participants in a prospective cohort study are grouped according to a distal dichotomous health outcome. Indeed, a refined understanding of how deleterious risk factor profiles develop across the life-course may help… Show more

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Cited by 14 publications
(17 citation statements)
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“…To better understand the BMI development in those who normalized their CVD risk by overcoming elevated BMI levels in youth and in those who increased their CVD risk by becoming obese adults, we used Bayesian hierarchical piecewise regression, an advanced multilevel growth curve modeling approach that allows us to estimate biologically meaningful and interpretable growth coefficients as well as between-person variability in key aspects of the BMI development across the life course. 36 Compared with the reference group, which included those who were not obese in youth or adulthood (Group I), the BMI of normal weight youth who developed obesity in adulthood was higher from age 6 years and increased significantly faster from youth until young adulthood (∼30 years), confirming that the roots…”
Section: Discussionmentioning
confidence: 72%
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“…To better understand the BMI development in those who normalized their CVD risk by overcoming elevated BMI levels in youth and in those who increased their CVD risk by becoming obese adults, we used Bayesian hierarchical piecewise regression, an advanced multilevel growth curve modeling approach that allows us to estimate biologically meaningful and interpretable growth coefficients as well as between-person variability in key aspects of the BMI development across the life course. 36 Compared with the reference group, which included those who were not obese in youth or adulthood (Group I), the BMI of normal weight youth who developed obesity in adulthood was higher from age 6 years and increased significantly faster from youth until young adulthood (∼30 years), confirming that the roots…”
Section: Discussionmentioning
confidence: 72%
“…13 Therefore, we analyzed BMI data across the life course in the Cardiovascular Risk in Young Finns Study (YFS) 35 using Bayesian hierarchical piecewise regression. 36 Our primary aim was to model individual trajectories of BMI from youth to adulthood and investigate differences in trajectories across 4 a priori-defined groups based on BMI status (assessed once in youth and once in adulthood). 13,37…”
mentioning
confidence: 99%
“…It also can enable identification, summarization, and communication of complex patterns in longitudinal data 17 . Group-based models have been applied to address questions related to developmental trajectories in psychology 18 , 19 , medicine 20 , and criminology 21 . Several studies have also used these models to facilitate causal inference in situations where randomization to treatment condition is not possible 22 , 23 .…”
Section: Introductionmentioning
confidence: 99%
“…For parameter inference, we adopt the Bayesian method which worked well in parameter estimation for models with multiple developmental phases. [20][21][22][23] Wang et al 22 applied the Bayesian method to infer the parameters of a change-point degradation model, and the numerical examples show that the Bayesian method gives decent parameter estimation results, which are more stable than those from maximum likelihood estimation method. Buscot et al 23 pointed out that the Bayesian method is a powerful tool to estimate the parameters in the piecewise model of the body mass index from childhood to adulthood.…”
Section: Introductionmentioning
confidence: 99%