Qu Yimin, Lee Jack Jock-Wai, Zhuo Yuanyuan, Liu Shukai, Thomas Rebecca L, Owens David R, Zee Benny Chung-Ying
Division of Biostatistics, The Jockey Club School of Public Health and Primary Care, Faculty of Medicine, The Chinese University of Hong Kong, Hong Kong SAR, China.
Department of Acupuncture and Moxibustion, Shenzhen Traditional Chinese Medicine Hospital, Shenzhen 518005, China.
J Clin Med. 2022 May 10;11(10):2687. doi: 10.3390/jcm11102687.
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.
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.
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.
The ARIA algorithm can be used as a risk assessment tool for CHD for people with cardiometabolic disorders.
冠心病(CHD)是全球主要的死亡原因,构成了日益加重的健康和社会负担。患有心脏代谢紊乱的人更容易患冠心病。视网膜图像分析是一种评估微血管功能的新型非侵入性方法。我们旨在研究视网膜图像是否可用于评估患有心脏代谢紊乱的人的冠心病风险。
我们在深圳市中医院进行了一项病例对照研究,招募了188例冠心病患者和128例患有心脏代谢紊乱的对照者。在入院两周内采集视网膜图像。通过自动视网膜成像分析(ARIA)算法评估视网膜特征。使用机器学习方法为冠心病患者建立风险评估模型。我们将冠心病患者分为糖尿病组和非糖尿病组进行敏感性分析。采用十折交叉验证法验证结果。
冠心病风险评估的敏感性和特异性分别为81.3%和88.3%,准确率为85.4%。糖尿病冠心病患者的风险评估模型比非糖尿病冠心病患者的模型表现更好。
ARIA算法可作为患有心脏代谢紊乱的人的冠心病风险评估工具。