A Novel Approach For CT-Based COVID-19 Classification and Lesion Segmentation Based On Deep Learning

H. M. Truong, H. T. Huynh
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引用次数: 0

Abstract

The coronavirus disease 2019 (COVID-19) pandemic has been a globally dangerous crisis that causes an increasingly high death rate. Applying machine learning to the computed-tomography (CT)-based COVID-19 diagnosis is essential and attracts the attention of the research community. This paper introduces an approach for simultaneously identifying COVID-19 disease and segmenting its manifestations on lung images. The proposed method is an asymmetric U-Net-like model improved with skip connections. The experiment was conducted on a light-weighted feature extractor called CRNet with a feature enhancement technique called atrous spatial pyramid pooling. Classifying between COVID-19 and non-COVID-19 cases recorded the highest mean scores of 97.1, 94.4, and 97.0% for accuracy, dice similarity coefficient (DSC) and F1 score, respectively. Alternatively, the respective highest mean scores of the classification between COVID-19 and community-acquired pneumonia were 99.89, 99.79, and 99.97%. The lesion segmentation performance was with the highest mean of 99.6 and 84.7% for, respectively, accuracy and DSC.
基于ct的COVID-19分类和深度学习的病灶分割新方法
2019冠状病毒病(COVID-19)大流行是一场全球危险的危机,导致越来越高的死亡率。将机器学习应用于基于计算机断层扫描(CT)的COVID-19诊断是必不可少的,并且引起了研究界的关注。本文介绍了一种同时识别COVID-19疾病并在肺部图像上分割其表现的方法。该方法是一种采用跳跃连接改进的非对称u - net模型。实验是在一种名为CRNet的轻量级特征提取器上进行的,该特征提取器采用了一种名为空间金字塔池的特征增强技术。对新冠肺炎和非新冠肺炎病例进行分类,准确率、DSC和F1得分分别为97.1、94.4和97.0%,平均得分最高。COVID-19与社区获得性肺炎的分类最高平均得分分别为99.89、99.79和99.97%。病灶分割的准确率和DSC均值最高,分别为99.6%和84.7%。
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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