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Liver tissue classification in patients with hepatocellular carcinoma by fusing structured and rotationally invariant context representation

机译:融合结构化和旋转不变背景表示法对肝细胞癌患者的肝组织分类

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摘要

This work addresses multi-class liver tissue classification from multi-parameter MRI in patients with hepatocellular carcinoma (HCC), and is among the first to do so. We propose a structured prediction framework to simultaneously classify parenchyma, blood vessels, viable tumor tissue, and necrosis, which overcomes limitations related to classifying these tissue classes individually and consecutively. A novel classification framework is introduced, based on the integration of multi-scale shape and appearance features to initiate the classification, which is iteratively refined by augmenting the feature space with both structured and rotationally invariant label context features. We study further the topic of rotationally invariant label context feature representations, and introduce a method for this purpose based on computing the energies of the spherical harmonic decompositions computed at different frequencies and radii. We test our method on full 3D multi-parameter MRI volumes from 47 patients with HCC and achieve promising results.
机译:这项工作从多参数MRI对肝细胞癌(HCC)患者的多分类肝组织分类进行了研究,并且是首批这样做的研究。我们提出了一个结构化的预测框架,可以同时对实质,血管,活瘤组织和坏死进行分类,从而克服了与单独和连续分类这些组织类别有关的限制。引入了一种新颖的分类框架,该框架基于多尺度形状和外观特征的集成来启动分类,该分类框架通过使用结构化和旋转不变的标签上下文特征来增加特征空间来迭代地完善。我们将进一步研究旋转不变标签上下文特征表示的主题,并基于计算在不同频率和半径下计算的球谐分解的能量,介绍一种用于此目的的方法。我们对来自47例HCC患者的完整3D多参数MRI体积进行了测试,并获得了可喜的结果。

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