Understanding the common topological characteristics of the human brain network across a population is central to understanding brain functions. The abstraction of human connectome as a graph has been pivotal in gaining insights on the topological properties of the brain network. The development of group-level statistical inference procedures in brain graphs while accounting for the heterogeneity and randomness still remains a difficult task. In this study, we develop a robust statistical framework based on persistent homology using the order statistics for analyzing brain networks. The use of order statistics greatly simplifies the computation of the persistent barcodes. We validate the proposed methods using comprehensive simulation studi...
Network neuroscience investigates brain functioning through the prism of connectivity, and graph the...
Large-scale white matter pathways crisscrossing the cortex create a complex pattern of connectivity ...
Over the last two decades, topological data analysis (TDA) has emerged as a very powerful data analy...
The closed loops or cycles in a brain network embeds higher order signal transmission paths, which p...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...
This paper proposes a novel topological learning framework that integrates networks of different siz...
In recent years, the application of network analysis to neuroimaging data has provided useful insigh...
In recent years, the application of network analysis to neuroimaging data has provided useful insigh...
We present a new data driven topological data analysis (TDA) approach for estimating state spaces in...
The goal of many neuroimaging studies is to better understand how the functional connectivity struct...
Modern non-invasive brain imaging technologies, such as diffusion weighted magnetic resonance imagin...
Representing brain morphology as a network has the advantage that the regional morphology of ‘isolat...
Previous studies have investigated both structural and functional brain networks via graph-theoretic...
Representing brain morphology as a network has the advantage that the regional morphology of 'isolat...
The brain is an extraordinarily complex system that facilitates the optimal integration of informati...
Network neuroscience investigates brain functioning through the prism of connectivity, and graph the...
Large-scale white matter pathways crisscrossing the cortex create a complex pattern of connectivity ...
Over the last two decades, topological data analysis (TDA) has emerged as a very powerful data analy...
The closed loops or cycles in a brain network embeds higher order signal transmission paths, which p...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...
This paper proposes a novel topological learning framework that integrates networks of different siz...
In recent years, the application of network analysis to neuroimaging data has provided useful insigh...
In recent years, the application of network analysis to neuroimaging data has provided useful insigh...
We present a new data driven topological data analysis (TDA) approach for estimating state spaces in...
The goal of many neuroimaging studies is to better understand how the functional connectivity struct...
Modern non-invasive brain imaging technologies, such as diffusion weighted magnetic resonance imagin...
Representing brain morphology as a network has the advantage that the regional morphology of ‘isolat...
Previous studies have investigated both structural and functional brain networks via graph-theoretic...
Representing brain morphology as a network has the advantage that the regional morphology of 'isolat...
The brain is an extraordinarily complex system that facilitates the optimal integration of informati...
Network neuroscience investigates brain functioning through the prism of connectivity, and graph the...
Large-scale white matter pathways crisscrossing the cortex create a complex pattern of connectivity ...
Over the last two decades, topological data analysis (TDA) has emerged as a very powerful data analy...