We use methods from computational algebraic topology to study functional brain networks in which nodes represent brain regions and weighted edges encode the similarity of functional magnetic resonance imaging (fMRI) time series from each region. With these tools, which allow one to characterize topological invariants such as loops in high-dimensional data, we are able to gain understanding of low-dimensional structures in networks in a way that complements traditional approaches that are based on pairwise interactions. In the present paper, we use persistent homology to analyze networks that we construct from task-based fMRI data from schizophrenia patients, healthy controls, and healthy siblings of schizophrenia patients. We thereby explor...
Topological Data Analysis (TDA) with its roots embedded in the field of algebraic topology has succe...
The Brunel network is a neuronal network model composed of excitatory and inhibitory leaky integrate...
Brain networks inferred from collective patterns of neuronal activity are cornerstones of experiment...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...
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...
Persistent homology (PH) is an algorithmic method that allows one to study shape and higher-order in...
The human brain has been described as a large, sparse, complex network characterized by efficient sm...
Modularity is a fundamental concept in systems neuroscience, referring to the formation of local cli...
Network neuroscience investigates brain functioning through the prism of connectivity, and graph the...
The brain is an extraordinarily complex system that facilitates the optimal integration of informati...
Background: Recent studies have shown the dynamic functional connectivity (FC) of the brain. Accordi...
Information in the cortex is thought to be represented by the joint activity of neurons. Here we des...
The closed loops or cycles in a brain network embeds higher order signal transmission paths, which p...
Persistent homology has become the main tool in topological data analysis, using methods from algebr...
Topological Data Analysis (TDA) with its roots embedded in the field of algebraic topology has succe...
The Brunel network is a neuronal network model composed of excitatory and inhibitory leaky integrate...
Brain networks inferred from collective patterns of neuronal activity are cornerstones of experiment...
Developing sensitive and reliable methods to distinguish normal and abnormal brain states is a key n...
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...
Persistent homology (PH) is an algorithmic method that allows one to study shape and higher-order in...
The human brain has been described as a large, sparse, complex network characterized by efficient sm...
Modularity is a fundamental concept in systems neuroscience, referring to the formation of local cli...
Network neuroscience investigates brain functioning through the prism of connectivity, and graph the...
The brain is an extraordinarily complex system that facilitates the optimal integration of informati...
Background: Recent studies have shown the dynamic functional connectivity (FC) of the brain. Accordi...
Information in the cortex is thought to be represented by the joint activity of neurons. Here we des...
The closed loops or cycles in a brain network embeds higher order signal transmission paths, which p...
Persistent homology has become the main tool in topological data analysis, using methods from algebr...
Topological Data Analysis (TDA) with its roots embedded in the field of algebraic topology has succe...
The Brunel network is a neuronal network model composed of excitatory and inhibitory leaky integrate...
Brain networks inferred from collective patterns of neuronal activity are cornerstones of experiment...