CoviSegNet - Covid-19 Disease Area Segmentation using Machine Learning Analyses for Lung Imaging

Bhuvan Mittal, IungHwan Oh
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引用次数: 1

Abstract

The Covid-19 is a highly contagious and virulent disease caused by the Severe Acute Respiratory Syndrome - Corona Virus - 2 (SARS-CoV-2). Over 175 million cases and 3.8 million deaths were reported worldwide as of June 2021. Covid-19 disease induces lung changes observed in lung Computerized Tomography (CT) predominantly as ground-glass opacification (GGO) with occasional consolidation in the peripheries. It was revealed in some literature that 88% of Covid-19 positive patients' CT scans showed GGO and 32% showed consolidation. Moreover, it was reported that the percentage of the lung showing GGO, and consolidation is tied to disease severity. Thus, segmentation of ground-glass opacities and consolidations in CT images will help to quantify disease severity and assist physicians in disease triage, management, and prognosis. In this paper, we propose CoviSegNet, an enhanced U-Net model to segment these ground-glass opacities and consolidations. The performance of CoviSegNet was evaluated on three public CT datasets. The experimental results show that the proposed CoviSegNet is highly promising.
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CoviSegNet -使用机器学习分析进行肺部成像的Covid-19疾病区域分割
Covid-19是一种由严重急性呼吸系统综合征-冠状病毒-2 (SARS-CoV-2)引起的高度传染性和致病性疾病。截至2021年6月,全球报告了超过1.75亿例病例和380万例死亡。在肺部计算机断层扫描(CT)上观察到的Covid-19疾病引起的肺部改变主要表现为磨玻璃混浊(GGO),外周偶有实变。一些文献显示,88%的Covid-19阳性患者的CT扫描显示GGO, 32%显示实变。此外,据报道,显示GGO和实变的肺百分比与疾病严重程度有关。因此,CT图像中毛玻璃混浊和实变的分割将有助于量化疾病的严重程度,并协助医生进行疾病分类、管理和预后。在本文中,我们提出了CoviSegNet,这是一种增强的U-Net模型,用于分割这些毛玻璃不透明和合并。在三个公开的CT数据集上评估CoviSegNet的性能。实验结果表明,所提出的CoviSegNet具有很高的应用前景。
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