JSAI2025

Presentation information

Poster Session

Poster session » Poster Session

[1Win4] Poster session 1

Tue. May 27, 2025 3:30 PM - 5:30 PM Room W (Event hall D-E)

[1Win4-82] Risk Assessment for the onset of cardiovascular disease using artificial intelligence with ocular fundus images

〇JINRUN DAI1, Kazumasa Kishimoto1, Osamu Sugiyama2, Masahiro Miyake1, Akitaka Tsujikawa 1, Hiroshi Tamura1 (1.Kyoto University, 2.Kindai University)

Keywords:Deep Learning, Cardiovascular disease, Ocular fundus images

Cardiovascular disease (CVD) is a leading cause of death globally. Traditional risk assessment methods rely on invasive data like cholesterol and blood pressure, which are time-consuming to collect. This study proposes a deep-learning approach to assess CVD risk using fundus images. We utilized a dataset of 7,595 fundus images from the Japan Ocular Imaging Registry and developed a multi-task learning framework based on an improved Inception-ResNet-v2 architecture. Purpose: The model integrates a feature pyramid structure and attention mechanisms to predict 8 predicting factors pointed out in the Framingham study, including age, gender, cholesterol levels, blood pressure, smoking, and diabetes status, as well as the Brinkman Index. Results: The model showed strong performance in predicting gender (AUC 0.85), diabetes status (AUC 0.80), hypertension treatment (AUC 0.82), and age estimation (R² > 0.4). The prediction of the Brinkman Index achieved an R² of 0.4, while forecasts for cholesterol levels and blood pressure demonstrated promising but moderate performance.

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