A morphospace of functional configuration to assess configural breadth based on brain functional networks
The quantification of human brain functional (re)configurations across varying cognitive demands remains an unresolved topic. We propose that such functional configurations may be categorized into three different types: (a) network configural breadth, (b) task-to task transitional reconfiguration, a...
Saved in:
Published in | Network neuroscience (Cambridge, Mass.) Vol. 5; no. 3; pp. 666 - 688 |
---|---|
Main Authors | , , , , , , , |
Format | Journal Article |
Language | English |
Published |
One Rogers Street, Cambridge, MA 02142-1209, USA
MIT Press
2021
MIT Press Journals, The The MIT Press |
Subjects | |
Online Access | Get full text |
Cover
Loading…
Summary: | The quantification of human brain functional (re)configurations across varying
cognitive demands remains an unresolved topic. We propose that such functional
configurations may be categorized into three different types: (a) network
configural breadth, (b) task-to task transitional reconfiguration, and (c)
within-task reconfiguration. Such functional reconfigurations are rather subtle
at the whole-brain level. Hence, we propose a mesoscopic framework focused on
functional networks (FNs) or communities to quantify functional
(re)configurations. To do so, we introduce a 2D network morphospace that relies
on two novel mesoscopic metrics, trapping efficiency (TE) and exit entropy (EE),
which capture topology and integration of information within and between a
reference set of FNs. We use this framework to quantify the network configural
breadth across different tasks. We show that the metrics defining this
morphospace can differentiate FNs, cognitive tasks, and subjects. We also show
that network configural breadth significantly predicts behavioral measures, such
as episodic memory, verbal episodic memory, fluid intelligence, and general
intelligence. In essence, we put forth a framework to explore the cognitive
space in a comprehensive manner, for each individual separately, and at
different levels of granularity. This tool that can also quantify the FN
reconfigurations that result from the brain switching between mental states.
Understanding and measuring the ways in which human brain connectivity changes to
accommodate a broad range of cognitive and behavioral goals is an important
undertaking. We put forth a
framework that captures
such changes by tracking the topology and integration of information within and
between functional networks (FNs) of the brain. Canonically, when FNs are
characterized, they are separated from the rest of the brain network. The two
metrics proposed in this work, trapping efficiency and exit entropy, quantify
the topological and information integration characteristics of FNs while they
are still embedded in the overall brain network. Trapping efficiency measures
the module’s ability to preserve an incoming signal from escaping its
local topology, relative to its total exiting weights. Exit entropy measures the
module’s communication preferences with other modules/networks using
information theory. When these two metrics are plotted in a 2D graph as a
function of different brain states (i.e., cognitive/behavioral tasks), the
resulting morphospace characterizes the extent of network reconfiguration
between tasks (functional reconfiguration), and the change when moving from rest
to an externally engaged “task-positive” state (functional
preconfiguration), to collectively define network configural breadth. We also
show that these metrics are sensitive to subject, task, and functional network
identities. Overall, this method is a promising approach to quantify how human
brains adapt to a range of tasks, and potentially to help improve precision
clinical neuroscience. |
---|---|
Bibliography: | 2021 ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23 Competing Interests: The authors have declared that no competing interests exist. Handling Editor: Claus C. Hilgetag |
ISSN: | 2472-1751 2472-1751 |
DOI: | 10.1162/netn_a_00193 |