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Titlebook: Ophthalmic Medical Image Analysis; 8th International Wo Huazhu Fu,Mona K. Garvin,Yalin Zheng Conference proceedings 2021 Springer Nature Sw

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Juvenile Refractive Power Prediction Based on Corneal Curvature and Axial Length via a Domain Knowljuvenile eyes. In this paper, we develop a novel neural network algorithm to predict the refractive power, which is assessed by the Spherical Equivalent (SE), using real-world clinical non-cycloplegic refraction records. Participants underwent a comprehensive ophthalmic examination to obtain several
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Are Cardiovascular Risk Scores from Genome and Retinal Image Complementary? A Deep Learning Investitent information indicating CVD risk. At the same time, genome-wide polygenic risk scores have demonstrated CVD risk prediction accuracy similar to conventional clinical factor-based risk scores. We speculated that information conveying CVD risk in retinal images may predominantly indicate environme
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Dual-Branch Attention Network and Atrous Spatial Pyramid Pooling for Diabetic Retinopathy Classificvely prevent the disease, or at least delay the progression of DR. However, most methods are based on regular single-view images, which would lack complete information of lesions. In this paper, a novel method is proposed to achieve DR classification using ultra-widefield images (UWF). The proposed
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Self-adaptive Transfer Learning for Multicenter Glaucoma Classification in Fundus Retina Images,n successfully used for computer-aided diagnosis (CAD) of glaucoma. However, a DL model pre-trained on certain dataset from one hospital may have poor performance on other hospital data, therefore its applications in the real scene are limited. In this paper, we propose a self-adaptive transfer lear
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Multi-modality Images Analysis: A Baseline for Glaucoma Grading via Deep Learning,icians classify glaucoma into early, moderate, and advanced stages based on the extent of the patient’s visual field deficit. The treatment of glaucoma varies with the course of the disease. With the development of deep learning technology, more and more studies focus on the automatic diagnosis of g
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Representation and Reconstruction of Image-Based Structural Patterns of Glaucomatous Defects Using uantitative estimates of glaucomatous progression use a global average and do not capture underlying spatial patterns. Motivated by the need for quantitative methods for describing and visualizing the spatial patterns of neuron loss in glaucoma, we evaluate the feasibility of spatial modeling of mac
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Attention Guided Slit Lamp Image Quality Assessment,ovel attention-guided architecture for image quality assessment (IQA) of slit lamp images. Its characteristics are threefold: First, we build a two-branch classification network, where the input of one branch uses masked images to learning regional prior. Second, we use a Forward Grad-CAM (FG-CAM) t
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