The modular organization of brain networks has been widely investigated using graph theoretical approaches. Recently, it has been demonstrated that graph partitioning methods based on the maximization of global fitness functions, like Newman's Modularity, suffer from a resolution limit, as they fail to detect modules that are smaller than a scale determined by the size of the entire network. Here we explore the effects of this limitation on the study of brain connectivity networks. We demonstrate that the resolution limit prevents detection of important details of the brain modular structure, thus hampering the ability to appreciate differences between networks and to assess the topological roles of nodes. We show that Surprise, a recently ...
Functional networks, which typically describe patterns of activity taking place across the cerebral ...
The brain connectome is an embedded network of anatomically interconnected brain regions, and the st...
The neural network is a powerful computing framework that has been exploited by biological evolution...
AbstractGraph theory provides a powerful framework to investigate brain functional connectivity netw...
Complex networks theory offers a framework for the analysis of brain functional connectivity as meas...
Graph theory provides a powerful framework to investigate brain functional connectivity networks and...
Functional magnetic resonance imaging (fMRI) studies have shown that anatomically distinct brain reg...
The modular structure of brain networks supports specialized information processing, complex dynamic...
Elucidating the intricate relationship between brain structure and function, both in healthy and pat...
We investigate the intricate relationship between human brain structure and function from a complex ...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely int...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely in...
The human brain has been studied at multiple scales, from neurons, circuits, areas with well-defined...
The idea that complex systems have a hierarchical modular organization originated in the early 1960s...
Modularity of neural networks -- both biological and artificial -- can be thought of either structur...
Functional networks, which typically describe patterns of activity taking place across the cerebral ...
The brain connectome is an embedded network of anatomically interconnected brain regions, and the st...
The neural network is a powerful computing framework that has been exploited by biological evolution...
AbstractGraph theory provides a powerful framework to investigate brain functional connectivity netw...
Complex networks theory offers a framework for the analysis of brain functional connectivity as meas...
Graph theory provides a powerful framework to investigate brain functional connectivity networks and...
Functional magnetic resonance imaging (fMRI) studies have shown that anatomically distinct brain reg...
The modular structure of brain networks supports specialized information processing, complex dynamic...
Elucidating the intricate relationship between brain structure and function, both in healthy and pat...
We investigate the intricate relationship between human brain structure and function from a complex ...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely int...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely in...
The human brain has been studied at multiple scales, from neurons, circuits, areas with well-defined...
The idea that complex systems have a hierarchical modular organization originated in the early 1960s...
Modularity of neural networks -- both biological and artificial -- can be thought of either structur...
Functional networks, which typically describe patterns of activity taking place across the cerebral ...
The brain connectome is an embedded network of anatomically interconnected brain regions, and the st...
The neural network is a powerful computing framework that has been exploited by biological evolution...