Syed Mohammad Ghouse, Trucco Emanuele, Mookiah Muthu R K, Lang Chim C, McCrimmon Rory J, Palmer Colin N A, Pearson Ewan R, Doney Alex S F, Mordi Ify R
VAMPIRE project, Computing, School of Science and Engineering, University of Dundee, Dundee, USA.
Division of Cardiovascular Research, School of Medicine, University of Dundee, Dundee, DD1 9SY, UK.
Cardiovasc Diabetol. 2025 Jan 2;24(1):3. doi: 10.1186/s12933-024-02564-w.
Prior studies have demonstrated an association between retinal vascular features and cardiovascular disease (CVD), however most studies have only evaluated a few simple parameters at a time. Our aim was to determine whether a deep-learning artificial intelligence (AI) model could be used to predict CVD outcomes from routinely obtained diabetic retinal screening photographs and to compare its performance to a traditional clinical CVD risk score.
We included 6127 individuals with type 2 diabetes without myocardial infarction or stroke prior to study entry. The cohort was divided into training (70%), validation (10%) and testing (20%) cohorts. Clinical 10-year CVD risk was calculated using the pooled cohort equation (PCE) risk score. A polygenic risk score (PRS) for coronary heart disease was also obtained. Retinal images were analysed using an EfficientNet-B2 network to predict 10-year CVD risk. The primary outcome was time to first major adverse CV event (MACE) including CV death, myocardial infarction or stroke.
1241 individuals were included in the test cohort (mean PCE 10-year CVD risk 35%). There was a strong correlation between retinal predicted CVD risk and the PCE risk score (r = 0.66) but not the polygenic risk score (r = 0.05). There were 288 MACE events. Higher retina-predicted risk was significantly associated with increased 10-year risk of MACE (HR 1.05 per 1% increase; 95% CI 1.04-1.06, p < 0.001) and remained so after adjustment for the PCE and polygenic risk score (HR 1.03; 95% CI 1.02-1.04, p < 0.001). The retinal risk score had similar performance to the PCE (both AUC 0.697) and when combined with the PCE and polygenic risk score had significantly improved performance compared to the PCE alone (AUC 0.728). An increase in retinal-predicted risk within 3 years was associated with subsequent increased MACE likelihood.
A deep-learning AI model could accurately predict MACE from routine retinal screening photographs with a comparable performance to traditional clinical risk assessment in a diabetic cohort. Combining the AI-derived retinal risk prediction with a coronary heart disease polygenic risk score improved risk prediction. AI retinal assessment might allow a one-stop CVD risk assessment at routine retinal screening.
既往研究已证实视网膜血管特征与心血管疾病(CVD)之间存在关联,然而大多数研究一次仅评估了几个简单参数。我们的目的是确定深度学习人工智能(AI)模型是否可用于根据常规获取的糖尿病视网膜筛查照片预测CVD结局,并将其性能与传统临床CVD风险评分进行比较。
我们纳入了6127例在研究入组前无心肌梗死或中风的2型糖尿病患者。该队列被分为训练组(70%)、验证组(10%)和测试组(20%)。使用合并队列方程(PCE)风险评分计算临床10年CVD风险。还获得了冠心病的多基因风险评分(PRS)。使用EfficientNet - B2网络分析视网膜图像以预测10年CVD风险。主要结局是首次发生主要不良心血管事件(MACE)的时间,包括心血管死亡、心肌梗死或中风。
测试队列纳入了1241例个体(平均PCE 10年CVD风险为35%)。视网膜预测的CVD风险与PCE风险评分之间存在强相关性(r = 0.66),但与多基因风险评分无相关性(r = 0.05)。发生了288例MACE事件。视网膜预测风险越高,10年MACE风险增加越显著(每增加1%,HR为1.05;95%CI为1.04 - 1.06,p < 0.001),在调整PCE和多基因风险评分后仍然如此(HR为1.03;95%CI为1.02 - 1.04,p < 0.001)。视网膜风险评分与PCE具有相似的性能(AUC均为0.697),并且与PCE和多基因风险评分相结合时,与单独使用PCE相比,性能有显著改善(AUC为0.728)。3年内视网膜预测风险的增加与随后MACE可能性的增加相关。
深度学习AI模型可根据常规视网膜筛查照片准确预测MACE,在糖尿病队列中的性能与传统临床风险评估相当。将AI衍生的视网膜风险预测与冠心病多基因风险评分相结合可改善风险预测。AI视网膜评估可能允许在常规视网膜筛查时进行一站式CVD风险评估。