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Attention Multi-Scale Network for Pigment Epithelial Detachment Segmentation in OCT Images

机译:注意多尺度网络用于OCT图像中的色素上皮分离

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Accurate segmentation of pigment epithelial detachment (PED) in retinal optical coherence tomography (OCT) images can help doctors comprehensively analyze and diagnose chorioretinal diseases, such as age-related macular degeneration (AMD), central serous chorioretinopathy and polypoidal choroidal vasculopathy. Due to the serious uneven sizes of PED, some traditional algorithms or common deep networks do not perform well in PED segmentation. In this paper, we propose a novel attention multi-scale network (named as AM-Net) based on a U-shape network to segment PED in OCT images. Compared with the original U-Net, there are two main improvements in the proposed method: (1) Designing channel multi-scale module (CMM) to replace the skip-connection layer of the U-Net, which uses channel attention mechanism to obtain multi-scale information. (2) Designing spatial multi-scale module (SMM) based on dilated convolution, which is inserted in the decoder path to make the network pay more attention on the multi-scale spatial information. We evaluated the proposed AM-Net on 240 clinically obtained OCT B-scans with 4-fold cross validation. The mean and standard deviation of Intersection over Union (IoU), Dice Similarity Coefficient (DSC), Sensitivity (Sen) and Specificity (Spe) are 72.12 ± 9.60%, 79.17 ± 8.25%, 93.05 ±1.72% and 79.93 ± 5.77%, respectively.
机译:视网膜光学相干断层扫描(OCT)图像中色素上皮脱离(PED)的准确分割可以帮助医生全面分析和诊断脉络膜视网膜疾病,例如与年龄相关的黄斑变性(AMD),中央浆液性脉络膜视网膜病和息肉样脉络膜脉络膜血管病。由于PED的大小严重不均,某些传统算法或常见的深度网络在PED分割中的效果不佳。在本文中,我们提出了一种基于U型网络的新型注意力多尺度网络(称为AM-Net),用于对OCT图像中的PED进行分割。与原始的U-Net相比,该方法有两个主要改进:(1)设计通道多尺度模块(CMM)来代替U-Net的跳过连接层,它使用通道注意机制来获得多尺度信息。 (2)设计基于膨胀卷积的空间多尺度模块,将其插入解码器路径,使网络更加关注多尺度空间信息。我们用4倍交叉验证在240份临床获得的OCT B扫描上评估了拟议的AM-Net。联合交叉口(IoU),骰子相似性系数(DSC),灵敏度(Sen)和特异性(Spe)的均值和标准差分别为72.12±9.60%,79.17±8.25%,93.05±1.72%和79.93±5.77%,分别。

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