The Legalome: Microbiology, Omics and Criminal Justice
Microbial Biotechnology,
Journal Year:
2025,
Volume and Issue:
18(3)
Published: March 1, 2025
ABSTRACT
Advances
in
neuromicrobiology
and
related
omics
technologies
have
reinforced
the
idea
that
unseen
microbes
play
critical
roles
human
cognition
behaviour.
Included
this
research
is
evidence
indicating
gut
microbes,
through
direct
indirect
pathways,
can
influence
aggression,
anger,
irritability
antisocial
Moreover,
manufacture
chemicals
are
known
to
compromise
cognition.
For
example,
recent
court
decisions
United
States
Europe
acknowledge
produce
high
levels
of
ethanol,
without
consumption
alcohol
by
defendants.
The
dismissal
driving
while
intoxicated
charges
these
cases—so‐called
auto‐brewery
syndrome—highlights
way
which
microbiome
knowledge
will
enhance
precision,
objectivity
fairness
our
legal
systems.
Here
opinion
essay,
we
introduce
concept
‘legalome’—the
application
science
forensic
psychiatry
criminal
law.
We
argue
rapid
pace
microbial
discoveries,
including
those
challenge
ideas
free
moral
responsibility,
necessitate
a
reconsideration
traditional
doctrines
justifications
retributive
punishment.
implications
extend
beyond
courtroom,
challenging
us
reconsider
how
environmental
factors—from
diet
socioeconomic
conditions—might
shape
preventative
rehabilitative
efforts
their
effects
on
microbiome.
Language: Английский
Criminal emotion detection framework using convolutional neural network for public safety
Scientific Reports,
Journal Year:
2025,
Volume and Issue:
15(1)
Published: May 1, 2025
In
the
era
of
rapid
societal
modernization,
issue
crime
stands
as
an
intrinsic
facet,
demanding
our
attention
and
consideration.
As
communities
evolve
adopt
technological
advancements,
dynamic
landscape
criminal
activities
becomes
essential
aspect
that
requires
careful
examination
proactive
approaches
for
public
safety
application.
this
paper,
we
proposed
a
collaborative
approach
to
detect
patterns
emotions
with
aim
enhancing
judiciary
decision-making.
For
same,
utilized
two
standard
datasets
-
dataset
comprised
different
features
crime.
Further,
emotion
has
135
classes
help
AI
model
efficiently
find
emotions.
We
adopted
convolutional
neural
network
(CNN)
get
first
trained
on
bifurcate
non-crime
images.
Once
is
detected,
faces
are
extracted
using
region
interest
stored
in
directory.
Different
CNN
architectures,
such
LeNet-5,
VGGNet,
RestNet-50,
basic
CNN,
used
face.
The
models
enhance
framework
evaluated
evaluation
metrics,
training
accuracy,
loss,
optimizer
performance,
precision-recall
curve,
complexity,
time,
inference
time.
detection,
achieves
remarkable
accuracy
92.45%
LeNet-5
outperforms
other
architectures
by
offering
98.6%.
Language: Английский
Research on crime motivation identification and quantitative analysis methods based on EEG signals
Frontiers in Psychology,
Journal Year:
2025,
Volume and Issue:
16
Published: March 18, 2025
Introduction
Understanding
and
quantifying
crime
motivation
is
essential
for
developing
effective
interventions
in
criminology
psychology.
This
research,
closely
aligned
with
quantitative
psychology
measurement,
presents
a
novel
approach
to
identifying
analyzing
motivations
using
EEG
signals.
Traditional
methods
often
fail
capture
the
intricate
interplay
of
individual,
social,
environmental
factors
due
data
sparsity
absence
real-time
adaptability.
Methods
In
this
study,
we
introduce
Hierarchical
Crime
Motivation
Network
(HCM-Net),
multi-layered
framework
that
integrates
signal
analysis
social
temporal
modeling.
HCM-Net
employs
neural
network-based
individual
feature
encoders,
graph
networks
interaction
analysis,
predictors
evolution
motivations.
To
enhance
practical
applicability,
Dynamic
Risk-Adaptive
Strategy
(DRAS)
complements
by
incorporating
adaptation,
scenario-based
simulations,
targeted
interventions.
addresses
challenges
such
as
ethical
considerations
interpretability
employing
Shapley
values
attribution
bias
mitigation
techniques.
Results
Experiments
datasets
demonstrate
superior
performance
proposed
classifying
high-risk
individuals
compared
state-of-the-art
Discussion
These
findings
highlight
potential
integrating
advanced
computational
prevention
psychological
research.
Language: Английский