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Whole Abdominal Wall Segmentation using Augmented Active Shape Models (AASM) with Multi-Atlas Label Fusion and Level Set

机译:使用带有多图集标签融合和水平集的增强活动形状模型(AASM)对整个腹壁进行分割

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The abdominal wall is an important structure differentiating subcutaneous and visceral compartments and intimately involved with maintaining abdominal structure. Segmentation of the whole abdominal wall on routinely acquired computed tomography (CT) scans remains challenging due to variations and complexities of the wall and surrounding tissues. In this study, we propose a slice-wise augmented active shape model (AASM) approach to robustly segment both the outer and inner surfaces of the abdominal wall. Multi-atlas label fusion (MALF) and level set (LS) techniques are integrated into the traditional ASM framework. The AASM approach globally optimizes the landmark updates in the presence of complicated underlying local anatomical contexts. The proposed approach was validated on 184 axial slices of 20 CT scans. The Hausdorff distance against the manual segmentation was significantly reduced using proposed approach compared to that using ASM, MALF, and LS individually. Our segmentation of the whole abdominal wall enables the subcutaneous and visceral fat measurement, with high correlation to the measurement derived from manual segmentation. This study presents the first generic algorithm that combines ASM, MALF, and LS, and demonstrates practical application for automatically capturing visceral and subcutaneous fat volumes.
机译:腹壁是分化皮下和内脏隔室的重要结构,并密切相关,伴随着维持腹部结构。由于墙壁和周围组织的变化和复杂性,整个腹壁上整个腹壁(CT)扫描的分割仍然挑战。在这项研究中,我们提出了一种切片 - 明显的增强的主体形状模型(AASM)方法来鲁棒地段段腹壁的外表面和内表面。多标准标签融合(MALF)和级别集(LS)技术集成到传统的ASM框架中。 AAFF方法全球在存在复杂的局部解剖背景中,优化地标更新。在20ct扫描的184个轴向切片上验证了所提出的方法。与使用ASM,MALF和LS相比,使用所提出的方法单独使用所提出的方法,对手动分割的Hausdorff距离显着降低。我们的整个腹壁的分割使皮下和内脏脂肪测量能够高,与手动分割的测量高。本研究介绍了组合ASM,MALF和LS的第一通用算法,并展示了自动捕获内脏和皮下脂肪量的实际应用。

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