Squirrell David M, Yang Song, Xie Li, Ang Songyang, Moghadam Mohammadi, Vaghefi Ehsan, McConnell Michael V
Division of Artificial Intelligence, Toku Eyes, Auckland, New Zealand.
Division of Cardiovascular Medicine, Stanford University School of Medicine, Stanford, California, USA.
JACC Adv. 2024 Nov 18;3(12):101410. doi: 10.1016/j.jacadv.2024.101410. eCollection 2024 Dec.
High systolic blood pressure (SBP) is one of the leading modifiable risk factors for premature cardiovascular death. The retinal vasculature exhibits well-documented adaptations to high SBP and these vascular changes are known to correlate with atherosclerotic cardiovascular disease (ASCVD) events.
The purpose of this study was to determine whether using artificial intelligence (AI) to predict an individual's SBP from retinal images would more accurately correlate with future ASCVD events compared to measured SBP.
95,665 macula-centered retinal images drawn from the 51,778 individuals in the UK Biobank who had not experienced an ASCVD event prior to retinal imaging were used. A deep-learning model was trained to predict an individual's SBP. The correlation of subsequent ASCVD events with the AI-predicted SBP and the mean of the measured SBP acquired at the time of retinal imaging was determined and compared.
The overall ASCVD event rate observed was 3.4%. The correlation between SBP and future ASCVD events was significantly higher if the AI-predicted SBP was used compared to the measured SBP: 0.067 v 0.049, = 0.008. Variability in measured SBP in UK Biobank was present (mean absolute difference = 8.2 mm Hg), which impacted the 10-year ASCVD risk score in 6% of the participants.
With the variability and challenges of real-world SBP measurement, AI analysis of retinal images may provide a more reliable and accurate biomarker for predicting future ASCVD events than traditionally measured SBP.
收缩压升高是心血管过早死亡的主要可改变危险因素之一。视网膜血管系统对收缩压升高表现出有充分记录的适应性变化,并且已知这些血管变化与动脉粥样硬化性心血管疾病(ASCVD)事件相关。
本研究的目的是确定与测量的收缩压相比,使用人工智能(AI)从视网膜图像预测个体的收缩压是否能更准确地与未来的ASCVD事件相关联。
使用了来自英国生物银行51778名个体的95665张以黄斑为中心的视网膜图像,这些个体在视网膜成像之前未发生过ASCVD事件。训练了一个深度学习模型来预测个体的收缩压。确定并比较了随后的ASCVD事件与AI预测的收缩压以及视网膜成像时测量的收缩压平均值之间的相关性。
观察到的总体ASCVD事件发生率为3.4%。与测量的收缩压相比,使用AI预测的收缩压时,收缩压与未来ASCVD事件之间的相关性显著更高:0.067对0.049,P = 0.008。英国生物银行中测量的收缩压存在变异性(平均绝对差 = 8.2 mmHg),这在6%的参与者中影响了10年ASCVD风险评分。
鉴于现实世界中收缩压测量的变异性和挑战,视网膜图像的AI分析可能比传统测量的收缩压提供更可靠、准确的生物标志物来预测未来的ASCVD事件。