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A New Method with SEU-Net model for Automatic Segmentation of Retinal Layers In Optical Coherence Tomography Images

机译:一种新方法,具有SEU-净模型,用于光学相干断层扫描图像中视网膜层的自动分割

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Optical coherence tomography (OCT) images can reveal the ocular pathology of related diseases by analyzing the layer structure of the retina. Segmenting the retina is a standard procedure for ophthalmologists in diagnosing various diseases. Due to the large number of OCT images generated per patient, manual image analysis can be time-consuming and error-prone, thus compromising the efficiency of the diagnosis. Therefore, we propose an accurate retinal segmentation method combining SEU-Net (Squeeze and Excitation U-Net) model and graph search method. This method inserts SE blocks on the coding part of U-Net. The SE block improves the sensitivity of the network to the boundary information features of the retinal layer by recalculating features. This makes the less distinctive layers to be accurately segmented. By comparing the experimental results manually annotated by experts, the SEU-NET model combined with graph search method proposed in this paper can accurately segment the 9 retinal layer boundaries.
机译:光学相干断层扫描(OCT)图像可以通过分析视网膜的层结构来揭示相关疾病的眼部病理学。细分视网膜是眼科医生诊断各种疾病的标准程序。由于每位患者产生的OCT图像数量大,手动图像分析可能是耗时和容易出错的,从而损害诊断的效率。因此,我们提出了一种精确的视网膜分段方法,组合SEU-NET(挤压和激励U-Net)模型和图形搜索方法。该方法在U-Net的编码部分上插入SE块。通过重新计算特征,SE块通过重新计算特征来提高网络对视网膜层的边界信息特征的灵敏度。这使得待准确分割的较小层。通过比较专家手动注释的实验结果,SEU-NET模型与本文提出的图表搜索方法相结合,可以精确地分段为9视网膜边界。

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