3D Visualization for Lung Surface Images of Covid-19 Patients based on U-Net CNN Segmentation

IF 0.4 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
FX Ferdinandus, Esther Irawati Setiawan, Eko Mulyanto Yuniarno, Mauridhi Hery Purnomo
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Abstract

The Covid-19 infection challenges medical staff to make rapid diagnoses of patients. In just a few days, the Covid-19 virus infection could affect the performance of the lungs. On the other hand, semantic segmentation using the Convolutional Neural Network (CNN) on Lung CT-scan images had attracted the attention of researchers for several years, even before the Covid-19 pandemic. Ground Glass Opacity (GGO), in the form of white patches caused by Covid-19 infection, is detected inside the patient’s lung area and occasionally at the edge of the lung, but no research has specifically paid attention to the edges of the lungs. This study proposes to display a 3D visualization of the lung surface of Covid-19 patients based on CT-scan image segmentation using U-Net architecture with a training dataset from typical lung images. Then the resulting CNN model is used to segment the lungs of Covid-19 patients. The segmentation results are selected as some slices to be reconstructed into a 3D lung shape and displayed in 3D animation. Visualizing the results of this segmentation can help medical staff diagnose the lungs of Covid-19 patients, especially on the surface of the lungs of patients with GGO at the edges. From the lung segmentation experiment results on ten patients in the Zenodo dataset, we have a Mean-IoU score = of 76.86%, while the visualization results show that 7 out of 10 patients (70%) have eroded lung surfaces. It can be seen clearly through 3D visualization.
基于U-Net CNN分割的新冠肺炎患者肺表面图像三维可视化
Covid-19感染给医务人员快速诊断患者带来了挑战。在短短几天内,Covid-19病毒感染可能会影响肺部的功能。另一方面,在新冠肺炎大流行之前,使用卷积神经网络(CNN)对肺部ct扫描图像进行语义分割已经引起了研究人员的关注好几年了。磨玻璃混浊(GGO)是由Covid-19感染引起的白色斑块,在患者肺区域内检测到,偶尔在肺边缘检测到,但没有研究专门关注肺边缘。本研究提出基于U-Net架构的ct扫描图像分割,结合典型肺部图像的训练数据集,展示新冠肺炎患者肺表面的三维可视化。然后使用得到的CNN模型对Covid-19患者的肺部进行分割。分割结果被选择为一些切片,重建成三维肺形状,并在三维动画中显示。将这种分割结果可视化可以帮助医务人员诊断Covid-19患者的肺部,特别是在边缘有GGO的患者的肺部表面。从Zenodo数据集中10例患者的肺分割实验结果来看,我们的Mean-IoU评分= 76.86%,而可视化结果显示,10例患者中有7例(70%)存在肺表面侵蚀。它可以通过3D可视化清晰地看到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
EMITTER-International Journal of Engineering Technology
EMITTER-International Journal of Engineering Technology ENGINEERING, ELECTRICAL & ELECTRONIC-
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发文量
7
审稿时长
12 weeks
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