IEEE J Biomed Health Inform. 2023 Oct;27(10):4878-4889. doi: 10.1109/JBHI.2023.3305644. Epub 2023 Oct 5.
Accurate segmentation of the hepatic vein can improve the precision of liver disease diagnosis and treatment. Since the hepatic venous system is a small target and sparsely distributed, with various and diverse morphology, data labeling is difficult. Therefore, automatic hepatic vein segmentation is extremely challenging. We propose a lightweight contextual and morphological awareness network and design a novel morphology aware module based on attention mechanism and a 3D reconstruction module. The morphology aware module can obtain the slice similarity awareness mapping, which can enhance the continuous area of the hepatic veins in two adjacent slices through attention weighting. The 3D reconstruction module connects the 2D encoder and the 3D decoder to obtain the learning ability of 3D context with a very small amount of parameters. Compared with other SOTA methods, using the proposed method demonstrates an enhancement in the dice coefficient with few parameters on the two datasets. A small number of parameters can reduce hardware requirements and potentially have stronger generalization, which is an advantage in clinical deployment.
准确的肝静脉分割可以提高肝脏疾病诊断和治疗的精度。由于肝静脉系统是一个小目标,分布稀疏,形态多样,因此数据标注非常困难。因此,自动肝静脉分割极具挑战性。我们提出了一种轻量级的上下文和形态感知网络,并设计了一种基于注意力机制和 3D 重建模块的新型形态感知模块。形态感知模块可以获得切片相似性感知映射,通过注意力加权增强相邻两个切片中肝静脉的连续区域。3D 重建模块连接 2D 编码器和解码器,以非常少量的参数获得 3D 上下文的学习能力。与其他 SOTA 方法相比,在两个数据集上使用所提出的方法在使用少量参数的情况下,提高了骰子系数。少量的参数可以降低硬件要求,并具有更强的泛化能力,这在临床部署中是一个优势。