A visualization analysis of global research trends in targeted therapies for thyroid carcinoma (2013–2023)
Medicine,
Год журнала:
2025,
Номер
104(11), С. e41835 - e41835
Опубликована: Март 14, 2025
This
study
aims
to
analyze
and
identify
primary
research
trends
in
targeted
therapy
for
thyroid
carcinoma
(TC).
It
seeks
provide
a
factual
foundation
researchers,
as
TC
often
presents
with
advanced
stages
aggressive
subtypes,
leading
unfavorable
clinical
outcomes.
The
evolution
of
therapies
introduces
promising
treatment
possibilities,
necessitating
bibliometric
analysis
better
understand
the
current
state
this
field.
A
comprehensive
was
conducted
using
data
from
Web
Science
Core
Collection
(WOSCC).
Advanced
search
queries
established
literature
database,
performed
tools
such
VOSviewer,
CiteSpace,
Tableau,
Microsoft
Excel.
focused
on
publications
2013
2023,
examining
patterns,
geographical
contributions,
institutional
output,
influential
journals.
identified
763
during
period,
significant
contributions
United
States,
China,
Italy,
States
output.
Research
activity
peaked
2021,
showing
overall
fluctuating
growth.
Key
contributing
institutions
included
University
Texas
MD
Anderson
Cancer
Center
Pisa.
Notable
journals,
Cancers
Thyroid,
were
among
most
cited,
underscoring
their
impact
highlighted
an
increase
global
output
robust
international
collaborations,
particularly
countries.
provides
overview
TC.
identifies
key
development
processes
hotspots,
offering
valuable
insights
guide
future
directions.
findings
aim
stimulate
further
studies
foster
advancements
critical
area
oncology.
Язык: Английский
A Comprehensive Bibliometric Analysis and Visualization of Publication Trends in Hip-Spine Syndrome
World Neurosurgery,
Год журнала:
2024,
Номер
unknown
Опубликована: Дек. 1, 2024
Bibliometric
analysis.
Язык: Английский
Global trends in machine learning applied to clinical research in liver cancer: Bibliometric and visualization analysis (2001–2024)
Medicine,
Год журнала:
2024,
Номер
103(49), С. e40790 - e40790
Опубликована: Дек. 6, 2024
This
study
explores
the
intersection
of
liver
cancer
and
machine
learning
through
bibliometric
analysis.
The
aim
is
to
identify
highly
cited
papers
in
field
examine
current
research
landscape,
highlighting
emerging
trends
key
areas
focus
learning.
By
analyzing
citation
patterns,
this
sheds
light
on
evolving
role
its
potential
for
future
advancements.
Язык: Английский