Javascript must be enabled to continue!
A computational model of shared fine-scale structure in the human connectome
View through CrossRef
Abstract
Variation in cortical connectivity profiles is typically modeled as having a coarse spatial scale parcellated into interconnected brain areas. We created a high-dimensional common model of the human connectome to search for fine-scale structure that is shared across brains. Projecting individual connectivity data into this new common model connectome accounts for substantially more variance in the human connectome than do previous models. This newly discovered shared structure is closely related to fine-scale distinctions in representations of information. These results reveal a shared fine-scale structure that is a major component of the human connectome that coexists with coarse-scale, areal structure. This shared fine-scale structure was not captured in previous models and was, therefore, inaccessible to analysis and study.
Author Summary
Resting state fMRI has become a ubiquitous tool for measuring connectivity in normal and diseased brains. Current dominant models of connectivity are based on coarse-scale connectivity among brain regions, ignoring fine-scale structure within those regions. We developed a high-dimensional common model of the human connectome that captures both coarse and fine-scale structure of connectivity shared across brains. We showed that this shared fine-scale structure is related to fine-scale distinctions in representation of information, and our model accounts for substantially more shared variance of connectivity compared to previous models. Our model opens new territory — shared fine-scale structure, a dominant but mostly unexplored component of the human connectome — for analysis and study.
Title: A computational model of shared fine-scale structure in the human connectome
Description:
Abstract
Variation in cortical connectivity profiles is typically modeled as having a coarse spatial scale parcellated into interconnected brain areas.
We created a high-dimensional common model of the human connectome to search for fine-scale structure that is shared across brains.
Projecting individual connectivity data into this new common model connectome accounts for substantially more variance in the human connectome than do previous models.
This newly discovered shared structure is closely related to fine-scale distinctions in representations of information.
These results reveal a shared fine-scale structure that is a major component of the human connectome that coexists with coarse-scale, areal structure.
This shared fine-scale structure was not captured in previous models and was, therefore, inaccessible to analysis and study.
Author Summary
Resting state fMRI has become a ubiquitous tool for measuring connectivity in normal and diseased brains.
Current dominant models of connectivity are based on coarse-scale connectivity among brain regions, ignoring fine-scale structure within those regions.
We developed a high-dimensional common model of the human connectome that captures both coarse and fine-scale structure of connectivity shared across brains.
We showed that this shared fine-scale structure is related to fine-scale distinctions in representation of information, and our model accounts for substantially more shared variance of connectivity compared to previous models.
Our model opens new territory — shared fine-scale structure, a dominant but mostly unexplored component of the human connectome — for analysis and study.
Related Results
N,N-dimethyltryptamine effects on connectome harmonics, subjective experience and comparative psychedelic experiences
N,N-dimethyltryptamine effects on connectome harmonics, subjective experience and comparative psychedelic experiences
Abstract
Exploring the intricate relationship between brain’s structure and function, and how this affects subjective experience is a fundamental pursuit in neuroscience....
Deep generation of personalized connectomes based on individual attributes
Deep generation of personalized connectomes based on individual attributes
An individual's connectome is unique. Interindividual variation in connectome architecture associates with disease status, cognition, lifestyle factors, and other personal attribut...
Multiscale Structure–Function Gradients in the Neonatal Connectome
Multiscale Structure–Function Gradients in the Neonatal Connectome
Abstract
The adult functional connectome is well characterized by a macroscale spatial gradient of connectivity traversing from unimodal toward higher-order transmod...
The hourglass organization of the
Caenorhabditis elegans
connectome
The hourglass organization of the
Caenorhabditis elegans
connectome
Abstract
We approach the
C. elegans
connectome as an information processing network that receives input from ...
A whole-cortex probabilistic diffusion tractography connectome
A whole-cortex probabilistic diffusion tractography connectome
Abstract
The WU-Minn Human Connectome Project (HCP) is a publicly-available dataset containing state-of-art structural, functional, and diffusion-MRI for over a tho...
From Constitutional Comparison to Life in the Biosphere
From Constitutional Comparison to Life in the Biosphere
From Constitutional Comparison to Life in the Biosphere is a monograph that argues for a fundamental reorientation of constitutional law around the realities of biospheric interdep...
Disruption of structural connectome hierarchy in age-related hearing loss
Disruption of structural connectome hierarchy in age-related hearing loss
IntroductionAge-related hearing loss (ARHL) is a common sensory disability among older adults and is considered a risk factor for the development of dementia. Previous work has sho...
Modelling the laminar connectome of the human brain
Modelling the laminar connectome of the human brain
Abstract
The human connectome is the complete structural description of the network of connections and elements that form the ‘wiring diagram’ of the brain. Due to ...

