Retinal Biomarkers of Acute Stroke
- Xin Wang
- Sampath Rapuri
- Zhiyuan Ding
- Sanjukta Biswas
- Kehui Ge
- Xianzhe Tan
- Siam Mohammed
- Joseph L Greenstein
- Casey Overby Taylor
- Siamak Ardekani
- Kemar E. Green
- Karishma Popli
Abstract:
This project aims to address the critical need for accessible, early diagnostic tools for ischemic stroke, a leading cause of death and disability. Typically, developing artificial intelligence diagnostic models is hindered by a severe lack of clinical data due to privacy constraints. To overcome this, researchers utilized retinal imaging, which offers a non-invasive alternative to traditional diagnostic infrastructure.
Instead of relying on real patient records, this team built a generative AI framework to create synthetic images of retinal blood vessels. By focusing on specific vascular changes associated with stroke risk, namely the Arteriolar-to-Venular Ratio (AVR), the model generates a robust, privacy-free dataset. This synthetic data was then successfully used to train a deep learning classifier capable of identifying stroke-risk patterns. Ultimately, this pipeline bypasses traditional data roadblocks, paving the way for scalable, low-resource stroke screening tools.
