4.6 Article

Non-invasive and accurate risk evaluation of cerebrovascular disease using retinal fundus photo based on deep learning

Journal

FRONTIERS IN NEUROLOGY
Volume 14, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fneur.2023.1257388

Keywords

deep learning; cerebrovascular disease; stroke; artificial intelligence; attention

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This study developed a risk prediction model that utilizes retinal fundus photo to assess cerebrovascular risks. The proposed model demonstrated superior accuracy and effectiveness compared to traditional models, providing an effective tool for cerebrovascular risk assessment.
BackgroundCerebrovascular disease (CeVD) is a prominent contributor to global mortality and profound disability. Extensive research has unveiled a connection between CeVD and retinal microvascular abnormalities. Nonetheless, manual analysis of fundus images remains a laborious and time-consuming task. Consequently, our objective is to develop a risk prediction model that utilizes retinal fundus photo to noninvasively and accurately assess cerebrovascular risks.Materials and methodsTo leverage retinal fundus photo for CeVD risk evaluation, we proposed a novel model called Efficient Attention which combines the convolutional neural network with attention mechanism. This combination aims to reinforce the salient features present in fundus photos, consequently improving the accuracy and effectiveness of cerebrovascular risk assessment.ResultOur proposed model demonstrates notable advancements compared to the conventional ResNet and Efficient-Net architectures. The accuracy (ACC) of our model is 0.834 & PLUSMN; 0.03, surpassing Efficient-Net by a margin of 3.6%. Additionally, our model exhibits an improved area under the receiver operating characteristic curve (AUC) of 0.904 & PLUSMN; 0.02, surpassing other methods by a margin of 2.2%.ConclusionThis paper provides compelling evidence that Efficient-Attention methods can serve as effective and accurate tool for cerebrovascular risk. The results of the study strongly support the notion that retinal fundus photo holds great potential as a reliable predictor of CeVD, which offers a noninvasive, convenient and low-cost solution for large scale screening of CeVD.

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