Replacing the Framingham-based equation for prediction of cardiovascular disease risk and adverse outcome by using artificial intelligence and retinal imaging
Ehsan Vaghefi, David Squirrell, Songyang An, Song Yang, John Marshall

TL;DR
This study introduces ORAiCLE, an AI platform using retinal images to predict 5-year cardiovascular risk more accurately than traditional methods, potentially improving screening and personalized treatment.
Contribution
The paper presents a novel AI-based approach that predicts cardiovascular risk solely from retinal images, outperforming Framingham equations in accuracy.
Findings
ORAiCLE is up to 12% more accurate than Framingham scores.
Retinal imaging combined with AI improves risk prediction for high-risk groups.
The model assesses individual risk component contributions for personalized treatment.
Abstract
Purpose: To create and evaluate the accuracy of an artificial intelligence Deep learning platform (ORAiCLE) capable of using only retinal fundus images to predict both an individuals overall 5 year cardiovascular risk (CVD) and the relative contribution of the component risk factors that comprise this risk. Methods: We used 165,907 retinal images from a database of 47,236 patient visits. Initially, each image was paired with biometric data age, ethnicity, sex, presence and duration of diabetes a HDL/LDL ratios as well as any CVD event wtihin 5 years of the retinal image acquisition. A risk score based on Framingham equations was calculated. The real CVD event rate was also determined for the individuals and overall population. Finally, ORAiCLE was trained using only age, ethnicity, sex plus retinal images. Results: Compared to Framingham-based score, ORAiCLE was up to 12% more accurate…
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Taxonomy
TopicsRetinal Imaging and Analysis · Blood Pressure and Hypertension Studies · Retinal and Optic Conditions
