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Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders
Journal of Clinical Medicine, Volume: 11, Issue: 10, Start page: 2687
Swansea University Authors: Becky Thomas , David Owens
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DOI (Published version): 10.3390/jcm11102687
Abstract
Background: Coronary heart disease (CHD) is the leading cause of death worldwide, constituting a growing health and social burden. People with cardiometabolic disorders are more likely to develop CHD. Retinal image analysis is a novel and noninvasive method to assess microvascular function. We aim t...
Published in: | Journal of Clinical Medicine |
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ISSN: | 2077-0383 |
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MDPI AG
2022
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URI: | https://cronfa.swan.ac.uk/Record/cronfa60527 |
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People with cardiometabolic disorders are more likely to develop CHD. Retinal image analysis is a novel and noninvasive method to assess microvascular function. We aim to investigate whether retinal images can be used for CHD risk estimation for people with cardiometabolic disorders. Methods: We have conducted a case–control study at Shenzhen Traditional Chinese Medicine Hospital, where 188 CHD patients and 128 controls with cardiometabolic disorders were recruited. Retinal images were captured within two weeks of admission. The retinal characteristics were estimated by the automatic retinal imaging analysis (ARIA) algorithm. Risk estimation models were established for CHD patients using machine learning approaches. We divided CHD patients into a diabetes group and a non-diabetes group for sensitivity analysis. A ten-fold cross-validation method was used to validate the results. Results: The sensitivity and specificity were 81.3% and 88.3%, respectively, with an accuracy of 85.4% for CHD risk estimation. The risk estimation model for CHD with diabetes performed better than the model for CHD without diabetes. 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2022-08-01T17:07:19.7333682 v2 60527 2022-07-19 Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders e83b45ec71428bd748ce201048f43d6a 0000-0002-2970-6352 Becky Thomas Becky Thomas true false 2fd4b7c3f82c6d3bd546eff61ff944e9 0000-0003-1002-1238 David Owens David Owens true false 2022-07-19 MEDS Background: Coronary heart disease (CHD) is the leading cause of death worldwide, constituting a growing health and social burden. People with cardiometabolic disorders are more likely to develop CHD. Retinal image analysis is a novel and noninvasive method to assess microvascular function. We aim to investigate whether retinal images can be used for CHD risk estimation for people with cardiometabolic disorders. Methods: We have conducted a case–control study at Shenzhen Traditional Chinese Medicine Hospital, where 188 CHD patients and 128 controls with cardiometabolic disorders were recruited. Retinal images were captured within two weeks of admission. The retinal characteristics were estimated by the automatic retinal imaging analysis (ARIA) algorithm. Risk estimation models were established for CHD patients using machine learning approaches. We divided CHD patients into a diabetes group and a non-diabetes group for sensitivity analysis. A ten-fold cross-validation method was used to validate the results. Results: The sensitivity and specificity were 81.3% and 88.3%, respectively, with an accuracy of 85.4% for CHD risk estimation. The risk estimation model for CHD with diabetes performed better than the model for CHD without diabetes. Conclusions: The ARIA algorithm can be used as a risk assessment tool for CHD for people with cardiometabolic disorders. Journal Article Journal of Clinical Medicine 11 10 2687 MDPI AG 2077-0383 coronary heart disease; retinal images; machine learning; cardiometabolic disorders 10 5 2022 2022-05-10 10.3390/jcm11102687 COLLEGE NANME Medical School COLLEGE CODE MEDS Swansea University Another institution paid the OA fee This study was supported by the General Research Fund (GRF) of the Research Grant Council Hong Kong (RGC Ref No. 14139116) and the Shenzhen Science and Technology Innovation Commission (No: KCXFZ20201221173208024) 2022-08-01T17:07:19.7333682 2022-07-19T09:25:29.0743931 Faculty of Medicine, Health and Life Sciences Swansea University Medical School - Medicine Yimin Qu 0000-0002-1940-2638 1 Jack Jock-Wai Lee 2 Yuanyuan Zhuo 0000-0002-9416-4203 3 Shukai Liu 4 Becky Thomas 0000-0002-2970-6352 5 David Owens 0000-0003-1002-1238 6 Benny Chung-Ying Zee 0000-0002-7238-845x 7 60527__24787__37cb0235385540fc9a0e6a58b86b0853.pdf 60527.pdf 2022-08-01T12:53:35.3702566 Output 1206436 application/pdf Version of Record true © 2022 by the authors. This is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license true eng https://creativecommons.org/licenses/by/4.0/ |
title |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders |
spellingShingle |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders Becky Thomas David Owens |
title_short |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders |
title_full |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders |
title_fullStr |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders |
title_full_unstemmed |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders |
title_sort |
Risk Assessment of CHD Using Retinal Images with Machine Learning Approaches for People with Cardiometabolic Disorders |
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e83b45ec71428bd748ce201048f43d6a 2fd4b7c3f82c6d3bd546eff61ff944e9 |
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e83b45ec71428bd748ce201048f43d6a_***_Becky Thomas 2fd4b7c3f82c6d3bd546eff61ff944e9_***_David Owens |
author |
Becky Thomas David Owens |
author2 |
Yimin Qu Jack Jock-Wai Lee Yuanyuan Zhuo Shukai Liu Becky Thomas David Owens Benny Chung-Ying Zee |
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Journal of Clinical Medicine |
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11 |
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2687 |
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Swansea University |
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2077-0383 |
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10.3390/jcm11102687 |
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MDPI AG |
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Background: Coronary heart disease (CHD) is the leading cause of death worldwide, constituting a growing health and social burden. People with cardiometabolic disorders are more likely to develop CHD. Retinal image analysis is a novel and noninvasive method to assess microvascular function. We aim to investigate whether retinal images can be used for CHD risk estimation for people with cardiometabolic disorders. Methods: We have conducted a case–control study at Shenzhen Traditional Chinese Medicine Hospital, where 188 CHD patients and 128 controls with cardiometabolic disorders were recruited. Retinal images were captured within two weeks of admission. The retinal characteristics were estimated by the automatic retinal imaging analysis (ARIA) algorithm. Risk estimation models were established for CHD patients using machine learning approaches. We divided CHD patients into a diabetes group and a non-diabetes group for sensitivity analysis. A ten-fold cross-validation method was used to validate the results. Results: The sensitivity and specificity were 81.3% and 88.3%, respectively, with an accuracy of 85.4% for CHD risk estimation. The risk estimation model for CHD with diabetes performed better than the model for CHD without diabetes. Conclusions: The ARIA algorithm can be used as a risk assessment tool for CHD for people with cardiometabolic disorders. |
published_date |
2022-05-10T08:12:50Z |
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11.047501 |