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Conference Paper/Proceeding/Abstract 683 views 114 downloads

Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.

Fatemeh Torabi Orcid Logo, Arron Lacey, Ashley Akbari Orcid Logo, Daniel Harris, Ronan Lyons Orcid Logo, Julian Halcox Orcid Logo, Michael Gravenor Orcid Logo

ESC Heart & Stroke 2020

Swansea University Authors: Fatemeh Torabi Orcid Logo, Arron Lacey, Ashley Akbari Orcid Logo, Daniel Harris, Ronan Lyons Orcid Logo, Julian Halcox Orcid Logo, Michael Gravenor Orcid Logo

DOI (Published version): 10.13140/RG.2.2.14854.11840

Published in: ESC Heart & Stroke 2020
Published: Barcelona 2020
Online Access: https://escheart-stroke2020.org/programme/
URI: https://cronfa.swan.ac.uk/Record/cronfa53813
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spelling 2020-10-09T19:20:37.6058176 v2 53813 2020-01-24 Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales. f569591e1bfb0e405b8091f99fec45d3 0000-0002-5853-4625 Fatemeh Torabi Fatemeh Torabi true false b69d245574e754d2637cc9e76379fe11 Arron Lacey Arron Lacey true false aa1b025ec0243f708bb5eb0a93d6fb52 0000-0003-0814-0801 Ashley Akbari Ashley Akbari true false e60c9c73b645f0e8033ae26fa8e634b8 Daniel Harris Daniel Harris true false 83efcf2a9dfcf8b55586999d3d152ac6 0000-0001-5225-000X Ronan Lyons Ronan Lyons true false 3676f695eeda169d0f8c618adf27c04b 0000-0001-6926-2947 Julian Halcox Julian Halcox true false 70a544476ce62ba78502ce463c2500d6 0000-0003-0710-0947 Michael Gravenor Michael Gravenor true false 2020-01-24 HDAT Conference Paper/Proceeding/Abstract ESC Heart & Stroke 2020 Barcelona 24 1 2020 2020-01-24 10.13140/RG.2.2.14854.11840 https://escheart-stroke2020.org/programme/ COLLEGE NANME Health Data Science COLLEGE CODE HDAT Swansea University 2020-10-09T19:20:37.6058176 2020-01-24T00:00:00.0000000 Faculty of Medicine, Health and Life Sciences Swansea University Medical School - Medicine Fatemeh Torabi 0000-0002-5853-4625 1 Arron Lacey 2 Ashley Akbari 0000-0003-0814-0801 3 Daniel Harris 4 Ronan Lyons 0000-0001-5225-000X 5 Julian Halcox 0000-0001-6926-2947 6 Michael Gravenor 0000-0003-0710-0947 7 53813__16839__0cd85122692544dd8d8b5105dffd2bf6.pdf Poster-HASBLED-20200114.pdf 2020-03-12T12:50:42.2608505 Output 1099209 application/pdf Author's Original true true eng
title Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
spellingShingle Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
Fatemeh Torabi
Arron Lacey
Ashley Akbari
Daniel Harris
Ronan Lyons
Julian Halcox
Michael Gravenor
title_short Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
title_full Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
title_fullStr Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
title_full_unstemmed Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
title_sort Machine learning approaches in for prediction of 1-year risk of major bleeding events in anticoagulated atrial fibrillation patients with atrial fibrillation in Wales.
author_id_str_mv f569591e1bfb0e405b8091f99fec45d3
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author_id_fullname_str_mv f569591e1bfb0e405b8091f99fec45d3_***_Fatemeh Torabi
b69d245574e754d2637cc9e76379fe11_***_Arron Lacey
aa1b025ec0243f708bb5eb0a93d6fb52_***_Ashley Akbari
e60c9c73b645f0e8033ae26fa8e634b8_***_Daniel Harris
83efcf2a9dfcf8b55586999d3d152ac6_***_Ronan Lyons
3676f695eeda169d0f8c618adf27c04b_***_Julian Halcox
70a544476ce62ba78502ce463c2500d6_***_Michael Gravenor
author Fatemeh Torabi
Arron Lacey
Ashley Akbari
Daniel Harris
Ronan Lyons
Julian Halcox
Michael Gravenor
author2 Fatemeh Torabi
Arron Lacey
Ashley Akbari
Daniel Harris
Ronan Lyons
Julian Halcox
Michael Gravenor
format Conference Paper/Proceeding/Abstract
container_title ESC Heart & Stroke 2020
publishDate 2020
institution Swansea University
doi_str_mv 10.13140/RG.2.2.14854.11840
college_str Faculty of Medicine, Health and Life Sciences
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hierarchy_top_id facultyofmedicinehealthandlifesciences
hierarchy_top_title Faculty of Medicine, Health and Life Sciences
hierarchy_parent_id facultyofmedicinehealthandlifesciences
hierarchy_parent_title Faculty of Medicine, Health and Life Sciences
department_str Swansea University Medical School - Medicine{{{_:::_}}}Faculty of Medicine, Health and Life Sciences{{{_:::_}}}Swansea University Medical School - Medicine
url https://escheart-stroke2020.org/programme/
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