切片水平引导卷积神经网络研究MRI短轴序列右心室分割

Asma Ammari, R. Mahmoudi, B. Hmida, R. Saouli, M. Hedi
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引用次数: 2

摘要

右心室在心脏周期中起着至关重要的作用。为了利用磁共振成像(MRI)评估其功能,分割是一项重要任务,但由于该空腔的形状复杂,边界薄,形状多变,因此对其进行分割是一个挑战。因此,提出了若干办法来克服这些问题。然而,在空间切片之间仍然存在明显的精度差异。本文试图研究从基底到顶点的短轴切片对分割过程的影响。首先,利用基于U-Net的卷积神经网络对这些切片的分割质量进行了比较研究。两个公共标记数据集与我们准备的数据一起被利用,以允许训练过程。每个切片水平的骰子系数评估显示出对基部和根尖切片的准确性显著降低。接下来,对每个切片水平进行个性化调查。相应地,从初始训练集中检索三个子集,将切片重新分组为基底、中心和顶点。此外,为了监测使用这些子数据集的分割行为,我们训练和评估了不同的基于u - net的模型。结果表明,基于切片水平的中央切片评分从0.87提高到0.92。另一方面,使用全局数据集,基底和根尖切片获得了更高的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Slice-Level-Guided Convolutional Neural Networks to study the Right Ventricular Segmentation using MRI Short-Axis sequences
The cardiac right ventricle has a vital role in the cardiac cycle. To assess its function using Magnetic Resonance Imaging (MRI), the segmentation is an important task, but it is challenged by the complex shape of this cavity, its thin borders, and shape variability. Accordingly, several approaches have been proposed to overcome these issues. Yet, a significant divergence of precision still appears among the spatial slices. In this paper, we attempt to study the impact of short-axis slices from base to apex on the segmentation process. First, a comparative study is enabled to assess the segmentation quality among these slices using a U-Net- based convolutional neural network. Two public labelled datasets are exploited with our prepared data to allow the training process. The dice-coefficient assessment of each slice-level exhibits a significant accuracy decrease for the basal and apical slices. Next, a personalized investigation is carried out for each slice level apart. Accordingly, three sub-sets are retrieved from the initial training set regrouping slices into basal, central, and apical. Furthermore, to monitor the segmentation behaviour using these sub-datasets, different U-Net-based models are trained and evaluated. The obtained results show that the central slices scores enhanced from 0.87 to 0.92 using slice-level based. On the other hand, basal and apical slices obtained higher results using the global dataset.
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