Abstract
In
the
central
nervous
system,
sequences
of
neural
activity
form
trajectories
on
low
dimensional
manifolds.
The
computation
underlying
flexible
cognition
and
behavior
relies
dynamic
control
these
structures.
For
example
different
tasks
or
behaviors
are
represented
subspaces,
requiring
fast
timescale
subspace
rotation
to
move
from
one
next.
flexibility
in
a
particular
behavior,
trajectory
must
be
dynamically
controllable
within
that
behaviorally
determined
subspace.
To
understand
how
their
subspaces
may
implemented
circuits,
we
first
characterized
relationship
between
features
aspects
projection.
Based
this,
propose
mechanisms
can
act
local
circuits
modulate
thereby
controlling
subspaces.
particular,
show
gain
modulation
transient
synaptic
currents
speed
path
clustered
inhibition
determines
manifold
orientation.
Together,
enable
substrate
for
Neuron,
Год журнала:
2024,
Номер
112(14), С. 2289 - 2303
Опубликована: Май 9, 2024
The
property
of
mixed
selectivity
has
been
discussed
at
a
computational
level
and
offers
strategy
to
maximize
power
by
adding
versatility
the
functional
role
each
neuron.
Here,
we
offer
biologically
grounded
implementational-level
mechanistic
explanation
for
in
neural
circuits.
We
define
pure,
linear,
nonlinear
discuss
how
these
response
properties
can
be
obtained
simple
Neurons
that
respond
multiple,
statistically
independent
variables
display
selectivity.
If
their
activity
expressed
as
weighted
sum,
then
they
exhibit
linear
selectivity;
otherwise,
Neural
representations
based
on
diverse
are
high
dimensional;
hence,
confer
enormous
flexibility
downstream
readout
circuit.
However,
circuit
cannot
possibly
encode
all
possible
mixtures
simultaneously,
this
would
require
combinatorially
large
number
neurons.
Gating
mechanisms
like
oscillations
neuromodulation
solve
problem
dynamically
selecting
which
transmitted
readout.
Progress in Neurobiology,
Год журнала:
2024,
Номер
240, С. 102653 - 102653
Опубликована: Июль 2, 2024
We
present
here
a
view
of
the
firing
patterns
hippocampal
cells
that
is
contrary,
both
functionally
and
anatomically,
to
conventional
wisdom.
argue
hippocampus
responds
efference
copies
goals
encoded
elsewhere;
it
uses
these
detect
resolve
conflict
or
interference
between
in
general.
While
can
involve
space,
do
not
encode
spatial
(or
other
special
types
of)
memory,
as
such.
also
transverse
circuits
operate
an
essentially
homogeneous
way
along
its
length.
The
apparently
different
functions
parts
(e.g.
memory
retrieval
versus
anxiety)
result
from
(situational/motivational)
inputs
on
which
those
perform
same
fundamental
computational
operations.
On
this
view,
key
role
iterative
adjustment,
via
Papez-like
circuits,
synaptic
weights
cell
assemblies
elsewhere.
Nature,
Год журнала:
2024,
Номер
632(8026), С. 841 - 849
Опубликована: Авг. 14, 2024
Humans
have
the
remarkable
cognitive
capacity
to
rapidly
adapt
changing
environments.
Central
this
is
ability
form
high-level,
abstract
representations
that
take
advantage
of
regularities
in
world
support
generalization1.
However,
little
known
about
how
these
are
encoded
populations
neurons,
they
emerge
through
learning
and
relate
behaviour2,3.
Here
we
characterized
representational
geometry
neurons
(single
units)
recorded
hippocampus,
amygdala,
medial
frontal
cortex
ventral
temporal
neurosurgical
patients
performing
an
inferential
reasoning
task.
We
found
only
neural
formed
hippocampus
simultaneously
encode
several
task
variables
abstract,
or
disentangled,
format.
This
uniquely
observed
after
learn
perform
inference,
consists
disentangled
directly
observable
discovered
latent
variables.
Learning
inference
by
trial
error
verbal
instructions
led
formation
hippocampal
with
similar
geometric
properties.
The
relation
between
format
behaviour
suggests
geometries
important
for
complex
cognition.
A
which
participants
learned
whose
properties
reflected
structure
task,
indicating
bioRxiv (Cold Spring Harbor Laboratory),
Год журнала:
2023,
Номер
unknown
Опубликована: Июль 19, 2023
There
is
rich
variety
in
the
activity
of
single
neurons
recorded
during
behaviour.
Yet,
these
diverse
neuron
responses
can
be
well
described
by
relatively
few
patterns
neural
co-modulation.
The
study
such
low-dimensional
structure
population
has
provided
important
insights
into
how
brain
generates
Virtually
all
studies
have
used
linear
dimensionality
reduction
techniques
to
estimate
population-wide
co-modulation
patterns,
constraining
them
a
flat
“neural
manifold”.
Here,
we
hypothesised
that
since
nonlinear
and
make
thousands
distributed
recurrent
connections
likely
amplify
nonlinearities,
manifolds
should
intrinsically
nonlinear.
Combining
recordings
from
monkey,
mouse,
human
motor
cortex,
mouse
striatum,
show
that:
1)
are
nonlinear;
2)
their
nonlinearity
becomes
more
evident
complex
tasks
require
varied
patterns;
3)
manifold
varies
across
architecturally
distinct
regions.
Simulations
using
network
models
confirmed
proposed
relationship
between
circuit
connectivity
nonlinearity,
including
differences
Thus,
underlying
generation
behaviour
inherently
nonlinear,
properly
accounting
for
nonlinearities
will
critical
as
neuroscientists
move
towards
studying
numerous
regions
involved
increasingly
naturalistic
behaviours.
Nature,
Год журнала:
2024,
Номер
629(8013), С. 861 - 868
Опубликована: Май 15, 2024
Abstract
A
central
assumption
of
neuroscience
is
that
long-term
memories
are
represented
by
the
same
brain
areas
encode
sensory
stimuli
1
.
Neurons
in
inferotemporal
(IT)
cortex
represent
percept
visual
objects
using
a
distributed
axis
code
2–4
Whether
and
how
IT
neural
population
represents
memory
remains
unclear.
Here
we
examined
familiar
faces
encoded
anterior
medial
face
patch
(AM),
perirhinal
(PR)
temporal
pole
(TP).
In
AM
PR
observed
encoding
for
rotated
relative
to
unfamiliar
at
long
latency;
TP
this
memory-related
rotation
was
much
weaker.
Contrary
previous
claims,
response
magnitude
versus
not
stable
indicator
familiarity
any
5–11
The
mechanism
underlying
change
likely
intrinsic
cortex,
because
inactivation
did
affect
dynamics
AM.
Overall,
our
results
suggest
distinct
long-latency
code,
explaining
cell
can
both
faces.
Nature Communications,
Год журнала:
2023,
Номер
14(1)
Опубликована: Май 5, 2023
Abstract
Recognizing
an
individual
and
retrieving
updating
the
value
information
assigned
to
are
fundamental
abilities
for
establishing
social
relationships.
To
understand
neural
mechanisms
underlying
association
between
identity
reward
value,
we
developed
Go-NoGo
discrimination
paradigms
that
required
male
subject
mice
distinguish
familiar
based
on
their
individually
unique
characteristics
associate
them
with
availability.
We
found
could
discriminate
conspecifics
through
a
brief
nose-to-nose
investigation,
this
ability
depended
dorsal
hippocampus.
Two-photon
calcium
imaging
revealed
CA1
hippocampal
neurons
represented
expectation
during
social,
but
not
non-social
tasks,
these
activities
were
maintained
over
days
regardless
of
associated
mouse.
Furthermore,
dynamically
changing
subset
discriminated
high
accuracy.
Our
findings
suggest
neuronal
in
provide
possible
substrates
associative
memory.
Nature Communications,
Год журнала:
2024,
Номер
15(1)
Опубликована: Авг. 1, 2024
Abstract
Animals
likely
use
a
variety
of
strategies
to
solve
laboratory
tasks.
Traditionally,
combined
analysis
behavioral
and
neural
recording
data
across
subjects
employing
different
may
obscure
important
signals
give
confusing
results.
Hence,
it
is
essential
develop
techniques
that
can
infer
strategy
at
the
single-subject
level.
We
analyzed
an
experiment
in
which
two
male
monkeys
performed
visually
cued
rule-based
task.
The
their
performance
shows
no
indication
they
used
strategy.
However,
when
we
examined
geometry
stimulus
representations
state
space
activities
recorded
dorsolateral
prefrontal
cortex,
found
striking
differences
between
monkeys.
Our
purely
results
induced
us
reanalyze
behavior.
new
showed
representational
are
associated
with
reaction
times,
revealing
were
unaware
of.
All
these
analyses
suggest
using
strategies.
Finally,
recurrent
network
models
trained
perform
same
task,
show
correlate
amount
training,
suggesting
possible
explanation
for
observed
differences.