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首页> 外文期刊>Biomedical signal processing and control >CNN-watershed: A watershed transform with predicted markers for corneal endothelium image segmentation
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CNN-watershed: A watershed transform with predicted markers for corneal endothelium image segmentation

机译:CNN-流域:一种流域变换,具有用于角膜内皮图像分割的预测标志物

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Quantitive information about corneal endothelium cells' morphometry is vital for assessing cornea pathologies. Nevertheless, in clinical, everyday routine dominates qualitative assessment based on visual inspection of the microscopy images. Although several systems exist for automatic segmentation of corneal endothelial cells, they exhibit certain limitations. The main one is sensitivity to low contrast and uneven illumination, resulting in over-segmentation. Subsequently, image segmentation results often require manual editing of missing or false cell edges. Therefore, this paper further investigates the problem of corneal endothelium cell segmentation. A fully automatic pipeline is proposed that incorporates the watershed algorithm for marker-driven segmentation of corneal endothelial cells and an encoder-decoder convolutional neural network trained in a sliding window set up to predict the probability of cell centers (markers) and cell borders. The predicted markers are used for watershed segmentation of edge probability maps outputted by a neural network. The proposed method's per-formance on a heterogeneous dataset comprising four publicly available corneal endothelium image datasets is analyzed. The performance of three convolutional neural network models (i.e., U-Net, SegNet, and W-Net) incorporated in the proposed pipeline is examined. The results of the proposed pipeline are analyzed and compared to the state-of-the-art competitor. The obtained results are promising. Regardless of the convolutional neural model incorporated into the proposed pipeline, it notably outperforms the competitor. The proposed method scored 97.72% of cell detection accuracy, compared to 87.38% achieved by the competitor. The advantage of the introduced method is also apparent for cell size, DICE coefficient, and Modified Hausdorff distance.
机译:关于角膜内皮细胞的定量信息对评估角膜病理至关重要。然而,在临床上,日常生活基于显微镜图像的目视检查主导定性评估。虽然存在用于角膜内皮细胞的自动分割的几个系统,但它们表现出一定的限制。主要是对对比度和不均匀照明的敏感性,导致过分分割。随后,图像分割结果通常需要手动编辑缺失或假小区边缘。因此,本文进一步研究了角膜内皮细胞分段的问题。提出了一种全自动管道,其包括用于角膜内皮细胞的标记驱动分割的流域算法,以及在被设置的滑动窗口中培训的编码器 - 解码器卷积神经网络,以预测细胞中心(标记)和细胞边界的概率。预测标记用于由神经网络输出的边缘概率图的流域分割。在包括四个可公开的角膜内皮图像数据集的情况下,所提出的方法在异构数据集上的每种效力。研究了在所提出的管道中包含的三种卷积神经网络模型(即,U-Net,Segnet和W-Net)的性能进行了检查。分析了拟议的管道的结果,并与最先进的竞争对手进行了分析。获得的结果很有希望。无论何种卷大神经模型都包含在拟议的管道中,它尤其优越竞争对手。所提出的方法占据97.72%的细胞检测精度,而竞争对手的87.38%相比。引入方法的优点对于细胞尺寸,骰子系数和改性Hausdorff距离也是显而易见的。

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