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Automatic Liver Lesion Segmentation in CT Combining Fully Convolutional Networks and Non-negative Matrix Factorization

机译:结合全卷积网络和非负矩阵分解的CT肝脏病变自动分割

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Automatic liver tumor segmentation is an important step towards digital medical research, clinical diagnosis and therapy planning. However, the existence of noise, low contrast and heterogeneity make the automatic liver tumor segmentation remaining an open challenge. In this work, we focus on a novel automatic method to segment liver tumor in abdomen images from CT scans by using fully convolutional networks (FCN) and non-negative matrix factorization (NMF). We train the FCN for semantic liver and tumor segmentation. The segmented liver and tumor regions of FCN are used as ROI and initialization for the NMF based tumor refinement, respectively. We refine the surfaces of tumors using a 3D deformable model which derived from NMF and driven by local cumulative spectral histograms (LCSH). The refinement is designed to obtain a smoother, more accurate and natural liver tumor surface. Experiments demonstrated that the proposed segmentation method achieves satisfactory results. Likewise, it has been notably observed that the computing time of the segmentation method is no more than one minute for each CT volume.
机译:自动肝肿瘤分割是迈向数字医学研究,临床诊断和治疗计划的重要一步。但是,噪声,低对比度和异质性的存在使肝肿瘤自动分割仍然是一个挑战。在这项工作中,我们集中于一种新颖的自动方法,该方法通过使用完全卷积网络(FCN)和非负矩阵分解(NMF)在CT扫描中分割腹部图像中的肝肿瘤。我们训练FCN进行语义肝和肿瘤分割。 FCN的肝区和肿瘤区分别用作基于NMF的肿瘤细化的ROI和初始化。我们使用源自NMF并由局部累积光谱直方图(LCSH)驱动的3D变形模型细化肿瘤表面。改进设计旨在获得更光滑,更准确和自然的肝肿瘤表面。实验表明,该分割方法取得了满意的效果。同样,值得注意的是,对于每个CT体积,分割方法的计算时间不超过一分钟。

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