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Random Forest Classification of Large Volume Structures for Visuo-Haptic Rendering in CT Images

机译:CT图像中视觉-触觉渲染的大体积结构的随机森林分类

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For patient-specific voxel-based visuo-haptic rendering of CT scans of the liver area, the fully automatic segmentation of large volume structures such as skin, soft tissue, lungs and intestine (risk structures) is important. Using a machine learning based approach, several existing segmentations from 10 segmented gold-standard patients are learned by random decision forests individually and collectively. The core of this paper is feature selection and the application of the learned classifiers to a new patient data set. In a leave-some-out cross-validation, the obtained full volume segmentations are compared to the gold-standard segmentations of the untrained patients. The proposed classifiers use a multi-dimensional feature space to estimate the hidden truth, instead of relying on clinical standard threshold and connectivity based methods. The result of our efficient whole-body section classification are multi-label maps with the considered tissues. For visuo-haptic simulation, other small volume structures would have to be segmented additionally. We also take a look into these structures (liver vessels). For an experimental leave-some-out study consisting of 10 patients, the proposed method performs much more efficiently compared to state of the art methods. In two variants of leave-some-out experiments we obtain best mean DICE ratios of 0.79, 0.97, 0.63 and 0.83 for skin, soft tissue, hard bone and risk structures. Liver structures are segmented with DICE 0.93 for the liver, 0.43 for blood vessels and 0.39 for bile vessels.
机译:对于基于患者的基于体素的肝脏区域CT可视化渲染,对大体积结构(如皮肤,软组织,肺和肠(风险结构))进行全自动分割非常重要。使用基于机器学习的方法,随机决策森林分别或集体地学习了来自10个已细分的金标准患者的几种现有细分。本文的核心是特征选择以及将学习到的分类器应用于新的患者数据集。在省去交叉验证中,将获得的全部体积分割与未经训练的患者的金标准分割进行比较。提出的分类器使用多维特征空间来估计隐藏的事实,而不是依赖于临床标准阈值和基于连接性的方法。我们有效的全身切片分类的结果是带有考虑的组织的多标签图。对于视觉触觉仿真,其他小体积结构将必须另外进行分段。我们还将研究这些结构(肝脏血管)。对于一项由10名患者组成的实验性离开研究,与最先进的方法相比,该方法的执行效率更高。在留出实验的两个变体中,我们获得的皮肤,软组织,硬骨和风险结构的最佳平均DICE比率为0.79、0.97、0.63和0.83。肝脏的结构分为DICE 0.93(肝脏),0.43(血管)和0.39(胆管)。

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