Author:
Lim Gilbert,Lim Zhan Wei,Xu Dejiang,Ting Daniel S.W.,Wong Tien Yin,Lee Mong Li,Hsu Wynne
Abstract
Ischemic stroke is a leading cause of death and long-term disability that is difficult to predict reliably. Retinal fundus photography has been proposed for stroke risk assessment, due to its non-invasiveness and the similarity between retinal and cerebral microcirculations, with past studies claiming a correlation between venular caliber and stroke risk. However, it may be that other retinal features are more appropriate. In this paper, extensive experiments with deep learning on six retinal datasets are described. Feature isolation involving segmented vascular tree images is applied to establish the effectiveness of vessel caliber and shape alone for stroke classification, and dataset ablation is applied to investigate model generalizability on unseen sources. The results suggest that vessel caliber and shape could be indicative of ischemic stroke, and sourcespecific features could influence model performance.
Publisher
Association for the Advancement of Artificial Intelligence (AAAI)
Cited by
13 articles.
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