ePubs
The open archive for STFC research publications
Home
About ePubs
Content Policies
News
Help
Privacy/Cookies
Contact ePubs
Full Record Details
Persistent URL
http://purl.org/net/epubs/work/61777255
Record Status
Checked
Record Id
61777255
Title
Developing cardiac digital twin populations powered by machine learning provides electrophysiological insights in conduction and repolarization
Contributors
S Qian
,
D Ugurlu
,
E Fairweather
,
LD Toso
,
Y Deng
,
M Strocchi
,
L Cicci
,
RE Jones
,
H Zaidi
,
S Prasad
,
BP Halliday
,
D Hammersley
,
X Liu (STFC Rutherford Appleton Lab.)
,
G Plank
,
E Vigmond
,
R Razavi
,
A Young
,
P Lamata
,
M Bishop
,
S Niederer
Abstract
Organisation
STFC
,
SCI-COMP
Keywords
Funding Information
Related Research Object(s):
Licence Information:
Creative Commons Attribution 4.0 International (CC BY 4.0)
Language
English (EN)
Type
Details
URI(s)
Local file(s)
Year
Journal Article
Nature Cardiovascular Research 4, no. 5 (2025): 624-636.
doi:10.1038/s44161-025-00650-0
2025
Showing record 1 of 1
Recent Additions
Browse Organisations
Browse Journals/Series
Login to add & manage publications and access information for OA publishing
Username:
Password:
Useful Links
Chadwick & RAL Libraries
Jisc Open Policy Finder
Journal Checker Tool
Google Scholar