Le Doan Cong, Chansangrat Jirapa, Keeratibharat Nattawut, Horkaew Paramate
School of Computer Engineering, Suranaree University of Technology, Suranaree, Nakhon Ratchasima 30000, Thailand.
School of Radiology, Suranaree University of Technology, Suranaree, Nakhon Ratchasima 30000, Thailand.
Diagnostics (Basel). 2021 May 10;11(5):852. doi: 10.3390/diagnostics11050852.
Accurate localization and analyses of functional liver segments are crucial in devising various surgical procedures, including hepatectomy. To this end, they require the extraction of a liver from computed tomography, and then the identification of resection correspondence between individuals. The first part is usually impeded by inherent deficiencies, as present in medical images, and vast anatomical variations across subjects. While the model-based approach is found viable to tackle both issues, it is often undermined by an inadequate number of labeled samples, to capture all plausible variations. To address segmentation problems by balancing between accuracy, resource consumption, and data availability, this paper presents an efficient method for liver segmentation based on a graph-cut algorithm. One of its main novelties is the incorporation of a feature preserving a metric for boundary separation. Intuitive anatomical constraints are imposed to ensure valid extraction. The second part involves the symmetric conformal parameterization of the extracted liver surface onto a genus-0 domain. Provided with a few landmarks specified on two livers, we demonstrated that, by using a modified Beltrami differential, not only could they be non-rigidly registered, but also the hepatectomy on one liver could be envisioned on another. The merits of the proposed scheme were elucidated by both visual and numerical assessments on a standard MICCAI SLIVER07 dataset.
在设计包括肝切除术在内的各种外科手术时,准确对肝脏功能段进行定位和分析至关重要。为此,需要从计算机断层扫描中提取肝脏,然后确定个体之间的切除对应关系。第一部分通常会受到医学图像中固有缺陷以及个体间巨大解剖变异的阻碍。虽然基于模型的方法被认为可以解决这两个问题,但它常常因标记样本数量不足而受到影响,无法捕捉所有可能的变异。为了在准确性、资源消耗和数据可用性之间取得平衡来解决分割问题,本文提出了一种基于图割算法的肝脏分割有效方法。其主要创新之一是纳入了一种用于边界分离的特征保留度量。施加直观的解剖学约束以确保有效提取。第二部分涉及将提取的肝脏表面对称共形参数化到亏格为0的域上。在两个肝脏上指定了一些地标后,我们证明,通过使用改进的贝尔特拉米微分,不仅可以对它们进行非刚性配准,而且还可以在另一个肝脏上设想对一个肝脏进行的肝切除术。通过在标准的MICCAI SLIVER07数据集上进行视觉和数值评估,阐明了所提方案的优点。