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Liver Segmentation from Registered Multiphase CT Data Sets with EM Clustering and GVF Level Set

机译:从具有EM聚类和GVF水平集的已注册多相CT数据集中进行肝分割

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In this study, clinically produced multiphase CT volumetric data sets (pre-contrast, arterial and venous enhanced phase) are drawn upon to transcend the intrinsic limitations of single phase data sets for the robust and accurate segmentation of the liver in typically challenging cases. As an initial step, all other phase volumes are registered to either the arterial or venous phase volume by a symmetric nonlinear registration method using mutual information as similarity metric. Once registered, the multiphase CT volumes are pre-filtered to prepare for subsequent steps. Under the assumption that the intensity vectors of different organs follow the Gaussian Mixture model (GMM), expectation maximization (EM) is then used to classify the multiphase voxels into different clusters. The clusters for liver parenchyma, vessels and tumors are combined together and provide the initial liver mask that is used to generate initial zeros level set. Conversely, the voxels classified as non-liver will guide the speed image of the level sets in order to reduce leakage. Geodesic active contour level set using the gradient vector flow (GVF) derived from one of the enhanced phase volumes is then performed to further evolve the liver segmentation mask. Using EM clusters as the reference, the resulting liver mask is finally morphologically post-processed to add missing clusters and reduce leakage. The proposed method has been tested on the clinical data sets of ten patients with relatively complex and/or extensive liver cancer or metastases. A 95.8% dice similarity index when compared to expert manual segmentation demonstrates the high performance and the robustness of our proposed method - even for challenging cancer data sets - and confirms the potential of a more thorough computational exploitation of currently available clinical data sets.
机译:在这项研究中,利用临床产生的多相CT体积数据集(造影剂,动脉和静脉增强期)来超越单相数据集的固有局限性,以便在典型的挑战性病例中对肝脏进行稳健而准确的分割。作为第一步,通过使用互信息作为相似性度量的对称非线性配准方法,将所有其他相体积配准到动脉或静脉相体积。配准后,将对多相CT体积进行预过滤以为后续步骤做准备。在不同器官的强度矢量遵循高斯混合模型(GMM)的假设下,然后使用期望最大化(EM)将多相体素分类为不同的聚类。肝实质,血管和肿瘤的簇被组合在一起,并提供了初始肝罩,用于生成初始零位水平集。相反,分类为非肝脏的体素将引导水平仪的速度图像,以减少泄漏。然后执行使用从增强相体积之一导出的梯度矢量流(GVF)设置的测地线活动轮廓线,以进一步发展肝脏分割蒙版。使用EM簇作为参考,最终对肝脏面罩进行形态学后处理,以添加缺失的簇并减少泄漏。所提出的方法已经在十名患有相对复杂和/或广泛的肝癌或转移的患者的临床数据集上进行了测试。与专家手动分割相比,骰子相似性指数为95.8%,表明我们提出的方法具有很高的性能和鲁棒性,即使对于具有挑战性的癌症数据集,也证明了对当前可用临床数据集进行更彻底的计算开发的潜力。

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