For longitudinal studies with multivariate observations, we propose statistical methods to identify clusters of archetypal subjects by using techniques from functional data analysis and to relate longitudinal patterns to outcomes. We demonstrate how this approach can be applied to examine associations between multiple time-varying exposures and subsequent health outcomes, where the former are recorded sparsely and irregularly in time, with emphasis on the utility of multiple longitudinal observations in the framework of dimension reduction techniques. In applications to children's growth data, we investigate archetypes of infant growth patterns and identify subgroups that are related to cognitive development in childhood. Specifically, "Stu...
Objective: To provide a brief, nontechnical introduction to individual growth curve modeling for the...
In the present study we attempt to use hypothesis-independent analysis in investigating the patterns...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...
Early childhood is a period marked by rapid brain growth accompanied by cognitive and motor developm...
High dimensional data play an ever increasing role in the study of human health and behavior. Recent...
Head circumference (HC, left), body length (LN, middle) and weight (WT, right) traits, respectively....
The objective of this thesis is to utilize statistical methods for longitudinal and functional data ...
When functional data come as multiple curves per subject, characterizing the source of variations is...
Principal components analysis (PCA) is used to prepare illness data for analysis of growth and morbi...
Objective To provide a brief, nontechnical introduction to individual growth curve modeling for the ...
Longitudinal principal components analysis is used to summarize childhood trends in one measure of b...
Here we introduce a multivariate framework for characterising longitudinal changes in structural MRI...
pre-printThe topic of studying the growth of human brain development has become of increasing intere...
From birth to 5 years of age, brain structure matures and evolves alongside emerging cognitive and b...
Objective: To provide a brief, nontechnical introduction to individual growth curve modeling for the...
In the present study we attempt to use hypothesis-independent analysis in investigating the patterns...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
For longitudinal studies with multivariate observations, we propose statistical methods to identify ...
Early childhood is a period marked by rapid brain growth accompanied by cognitive and motor developm...
High dimensional data play an ever increasing role in the study of human health and behavior. Recent...
Head circumference (HC, left), body length (LN, middle) and weight (WT, right) traits, respectively....
The objective of this thesis is to utilize statistical methods for longitudinal and functional data ...
When functional data come as multiple curves per subject, characterizing the source of variations is...
Principal components analysis (PCA) is used to prepare illness data for analysis of growth and morbi...
Objective To provide a brief, nontechnical introduction to individual growth curve modeling for the ...
Longitudinal principal components analysis is used to summarize childhood trends in one measure of b...
Here we introduce a multivariate framework for characterising longitudinal changes in structural MRI...
pre-printThe topic of studying the growth of human brain development has become of increasing intere...
From birth to 5 years of age, brain structure matures and evolves alongside emerging cognitive and b...
Objective: To provide a brief, nontechnical introduction to individual growth curve modeling for the...
In the present study we attempt to use hypothesis-independent analysis in investigating the patterns...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...