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Deep Joint Segmentation of Liver and Cancerous Nodules From Ct Images

机译:Ct图像对肝癌和癌瘤的深层联合分割

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A framework is proposed for joint liver and cancerous nodule segmentation from abdomen computed tomography (CT) images. The proposed framework consists of three main units. First, a preprocessing unit is used to enhance the image contrast. Second, two different deep convolutional-deconvolutional neural networks (CDNN), namely, Alexnet and Resnet18 models, are investigated to extract the features of liver images. Finally, a pixel wise classification unit is performed to provide the final segmentation maps of the liver and tumors. Results on the challenging MICCAI’2017 liver tumor segmentation (LITS) database, using Alexnet model and 4-fold cross-validation, achieve a Dice similarity coefficient of 90.4% for liver segmentation and of 62.4% for lesion segmentation. Comparative results with related techniques for joint liver and tumor segmentations show the effectiveness of the proposed framework.
机译:提出了从腹部计算机断层扫描(CT)图像中进行肝结节和癌结节分割的框架。拟议的框架由三个主要部门组成。首先,使用预处理单元来增强图像对比度。其次,研究了两个不同的深度卷积-反卷积神经网络(CDNN)Alexnet和Resnet18模型,以提取肝脏图像的特征。最后,执行逐个像素分类单元以提供肝脏和肿瘤的最终分割图。使用Alexnet模型和4倍交叉验证,在具有挑战性的MICCAI'2017肝肿瘤分割(LITS)数据库上的结果显示,肝分割的Dice相似系数为90.4%,病灶分割的Dice相似系数为62.4%。与相关技术的联合肝和肿瘤分割的比较结果表明了所提出框架的有效性。

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