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Multimodal Retinal Image Analysis via Deep Learning for the Diagnosis of Intermediate Dry Age-Related Macular Degeneration: A Feasibility Study

机译:通过深度学习诊断中间干龄相关性黄斑变性的多模式视网膜图像分析:可行性研究

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Background and Objective. To determine if using a multi-input deep learning approach in the image analysis of optical coherence tomography (OCT), OCT angiography (OCT-A), and colour fundus photographs increases the accuracy of a CNN to diagnose intermediate dry age-related macular degeneration (AMD). Patients and Methods. Seventy-five participants were recruited and divided into three cohorts: young healthy (YH), old healthy (OH), and patients with intermediate dry AMD. Colour fundus photography, OCT, and OCT-A scans were performed. The convolutional neural network (CNN) was trained on multiple image modalities at the same time. Results. The CNN trained using OCT alone showed a diagnostic accuracy of 94%, whilst the OCT-A trained CNN resulted in an accuracy of 91%. When multiple modalities were combined, the CNN accuracy increased to 96% in the AMD cohort. Conclusions. Here we demonstrate that superior diagnostic accuracy can be achieved when deep learning is combined with multimodal image analysis.
机译:背景和目标。为了确定在光学相干断层扫描的图像分析中使用多输入深度学习方法(OCT),OCT血管造影(OCT-A),颜色眼底照片增加了CNN的准确性,以诊断中间干龄相关性黄斑变性(AMD)。患者和方法。招募了七十五位参与者,分为三个队列:年轻健康(YH),旧健康(OH)和中间干燥AMD的患者。进行彩色眼底摄影,OCT和OCT-A扫描。卷积神经网络(CNN)同时在多个图像模式上培训。结果。单独使用OCT培训的CNN显示诊断精度为94%,而OCT-A训练的CNN导致精度为91%。当组合多种方式时,CNN精度在AMD队列中增加到96%。结论。在这里,我们证明,当深度学习与多模式图像分析结合时,可以实现卓越的诊断准确性。

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