期刊论文详细信息
BMC Medical Imaging
COVID-19 lung CT image segmentation using deep learning methods: U-Net versus SegNet
Iyad Hatem1  Adnan Saood1 
[1] Mechatronics Program for the Distinguished, Tishreen University, Distinction and Creativity Agency, Latakia, Syria;
关键词: COVID-19;    Pneumonia;    SegNet;    U-NET;    Computerized tomography;    Semantic segmentation;   
DOI  :  10.1186/s12880-020-00529-5
来源: Springer
PDF
【 摘 要 】

BackgroundCurrently, there is an urgent need for efficient tools to assess the diagnosis of COVID-19 patients. In this paper, we present feasible solutions for detecting and labeling infected tissues on CT lung images of such patients. Two structurally-different deep learning techniques, SegNet and U-NET, are investigated for semantically segmenting infected tissue regions in CT lung images.MethodsWe propose to use two known deep learning networks, SegNet and U-NET, for image tissue classification. SegNet is characterized as a scene segmentation network and U-NET as a medical segmentation tool. Both networks were exploited as binary segmentors to discriminate between infected and healthy lung tissue, also as multi-class segmentors to learn the infection type on the lung. Each network is trained using seventy-two data images, validated on ten images, and tested against the left eighteen images. Several statistical scores are calculated for the results and tabulated accordingly.ResultsThe results show the superior ability of SegNet in classifying infected/non-infected tissues compared to the other methods (with 0.95 mean accuracy), while the U-NET shows better results as a multi-class segmentor (with 0.91 mean accuracy).ConclusionSemantically segmenting CT scan images of COVID-19 patients is a crucial goal because it would not only assist in disease diagnosis, also help in quantifying the severity of the illness, and hence, prioritize the population treatment accordingly. We propose computer-based techniques that prove to be reliable as detectors for infected tissue in lung CT scans. The availability of such a method in today’s pandemic would help automate, prioritize, fasten, and broaden the treatment of COVID-19 patients globally.

【 授权许可】

CC BY   

【 预 览 】
附件列表
Files Size Format View
RO202106287809647ZK.pdf 2860KB PDF download
  文献评价指标  
  下载次数:23次 浏览次数:11次