Data mining the functional architecture of the brain's circuitry
Journal:
arXiv
Published Date:
Jan 16, 2025
Abstract
The brain is a highly complex organ consisting of a myriad of subsystems that
flexibly interact and adapt over time and context to enable perception,
cognition, and behavior. Understanding the multi-scale nature of the brain,
i.e., how circuit- and moleclular-level interactions build up the fundamental
components of brain function, holds incredible potential for developing
interventions for neurodegenerative and psychiatric diseases, as well as open
new understanding into our very nature. Historically technological limitations
have forced systems neuroscience to be local in anatomy (localized, small
neural populations in single brain areas), in behavior (studying single tasks),
in time (focusing on specific stages of learning or development), and in
modality (focusing on imaging single biological quantities). New developments
in neural recording technology and behavioral monitoring now provide the data
needed to break free of local neuroscience to global neuroscience: i.e.,
understanding how the brain's many subsystem interact, adapt, and change across
the multitude of behaviors animals and humans must perform to thrive.
Specifically, while we have much knowledge of the anatomical architecture of
the brain (i.e., the hardware), we finally are approaching the data needed to
find the functional architecture and discover the fundamental properties of the
software that runs on the hardware. We must take this opportunity to bridge
between the vast amounts of data to discover this functional architecture which
will face numerous challenges from low-level data alignment up to high level
questions of interpretable mathematical models of behavior that can synthesize
the myriad of datasets together.