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A novel multi-atlas strategy with dense deformation field reconstruction for abdominal and thoracic multi-organ segmentation from computed tomography

机译:一种新型多地图集策略,腹部腹部和胸腔多器官分割致密变形现场重建

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Anatomical evaluation of multiple abdominal and thoracic organs is generally performed with computed tomography images. Owing to the large field-of-view of these images, automatic segmentation strategies are typically required, facilitating the clinical evaluation. Multi-atlas segmentation (MAS) strategies have been widely used with this process, requiring multiple alignments between the target image and the set of known datasets, and subsequently fusing the alignment results to obtain the final segmentation. Nonetheless, current MAS strategies apply a global alignment of a deformable object, per organ, subdividing the segmentation process into multiple ones and losing the spatial information among nearby organs. This paper presents a novel MAS approach. First, a coarse-to-fine method with multiple global alignments (one per organ) is used. To make the method spatially coherent, these individual organs' global transformations are then fused in one using a dense deformation field reconstruction strategy. Second, from the candidate segmentations obtained, the final segmentation is estimated through an organ-based label fusion approach. The proposed method is evaluated and compared against a conventional MAS strategy through the segmentation of twelve abdominal and thoracic organs from the VISCERAL Anatomy benchmark. Average Dice coefficients for the liver, spleen, lungs and kidneys are all higher than 90%, are around 85% for the aorta, trachea and sternum and 70% for the pancreas, urinary bladder and gallbladder. The novel MAS strategy, with dense deformation field reconstruction, shows competitive results against other state-of-the-art methods, proving its added value for the segmentation of abdominal and thoracic organs, mainly for highly variable organs. (C) 2018 Elsevier B.V. All rights reserved.
机译:多个腹部和胸腔器官的解剖学评估通常用计算机断层摄影图像进行。由于这些图像的大视野,通常需要自动分割策略,促进临床评估。多拟标记分割(MAS)策略已被广泛用于该过程,需要在目标图像和已知数据集集合之间进行多次对准,并随后熔化对准结果以获得最终分割。尽管如此,当前的MAS策略每种器官将可变形对象的全局对齐应用于多个分割过程,并在附近器官之间丢失空间信息。本文提出了一种新的MAS方法。首先,使用具有多个全局对准(每个器官一个)的粗到精细方法。为了使方法是空间相干的,然后使用致密的变形场重建策略在一个中融合这些单独的器官的变换。其次,通过获得的候选分段,通过基于器官的标签融合方法估算最终分割。通过来自内脏解剖基准的12个腹部和胸部器官的分割来评估和比较所提出的方法。肝脏,脾脏,肺和肾的平均骰子系数全部高于90%,为主动脉,气管和胸骨的约85%,胰腺,膀胱和胆囊为70%。具有致密变形现场重建的新型MAS策略显示出对其他最先进的方法的竞争结果,证明其腹部和胸部器官的分割的附加值,主要用于高度可变器官。 (c)2018 Elsevier B.v.保留所有权利。

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