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A Multi-Scale Deep Convolutional Neural Network For Joint Segmentation And Prediction Of Geographic Atrophy In SD-OCT Images

机译:用于SD-OCT图像中地理萎缩的联合分割和预测的多尺度深度卷积神经网络

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Geographic atrophy (GA) generally appears in the advanced stage of age-related macular degeneration (AMD). It is a principle cause of the severe central visual loss for elder adults with non-exudative AMD in developed countries. In this paper, a multi-scale deep convolutional neural network is proposed for the joint segmentation and prediction of GA. First, restricted summed-area projection (RSAP) technique was used to generate GA projection images from the SD-OCT volumetric data. Then, GA projection images were sent to the multi-scale branches to acquire multi-scale feature maps. The final GA segmentation results were obtained by refining the multi-scale feature maps with a voting decision strategy. In the end, those multi-scale feature maps were cascaded with low-level features computed from the original images to predict the growth of the GA lesion. The segmented and predicted GA lesion in the tested scenarios resulted in a satisfying accuracy, comparing with the observed ground truth.
机译:地理萎缩(GA)通常出现在年龄相关性黄斑变性(AMD)的晚期。这是发达国家非渗出性AMD老年人严重中央视力丧失的主要原因。本文提出了一种多尺度深度卷积神经网络,用于遗传算法的联合分割和预测。首先,使用受限求和面积投影(RSAP)技术从SD-OCT体积数据生成GA投影图像。然后,将GA投影图像发送到多尺度分支以获取多尺度特征图。最终的GA分割结果是通过使用投票决策策略细化多尺度特征图而获得的。最后,将这些多尺度特征图与根据原始图像计算出的低级特征进行级联,以预测GA病变的增长。与观察到的地面真实情况相比,在经过测试的场景中进行了分段和预测的GA病变,其结果令人满意。

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