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MultiR-Net: A Novel Joint Learning Network for COVID-19 segmentation and classification.
Li, Cheng-Fan; Xu, Yi-Duo; Ding, Xue-Hai; Zhao, Jun-Juan; Du, Rui-Qi; Wu, Li-Zhong; Sun, Wen-Ping.
  • Li CF; School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China.
  • Xu YD; School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China.
  • Ding XH; School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China. Electronic address: dinghai@shu.edu.cn.
  • Zhao JJ; School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China.
  • Du RQ; School of Computer Engineering and Science, Shanghai University, Shangda Rd, Shanghai, 200444, China.
  • Wu LZ; Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, Mohe Rd, Shanghai, 200111, China.
  • Sun WP; Institute of Diagnostic and Interventional Radiology, Shanghai Jiao Tong University Affiliated Sixth People's Hospital, Yishan Rd, Shanghai, 200233, China. Electronic address: sunwenping1121@163.com.
Comput Biol Med ; 144: 105340, 2022 05.
Article in English | MEDLINE | ID: covidwho-1734294
ABSTRACT
The outbreak of COVID-19 has caused a severe shortage of healthcare resources. Ground Glass Opacity (GGO) and consolidation of chest CT scans have been an essential basis for imaging diagnosis since 2020. The similarity of imaging features between COVID-19 and other pneumonia makes it challenging to distinguish between them and affects radiologists' diagnosis. Recently, deep learning in COVID-19 has been mainly divided into disease classification and lesion segmentation, yet little work has focused on the feature correlation between the two tasks. To address these issues, in this study, we propose MultiR-Net, a 3D deep learning model for combined COVID-19 classification and lesion segmentation, to achieve real-time and interpretable COVID-19 chest CT diagnosis. Precisely, the proposed network consists of two subnets a multi-scale feature fusion UNet-like subnet for lesion segmentation and a classification subnet for disease diagnosis. The features between the two subnets are fused by the reverse attention mechanism and the iterable training strategy. Meanwhile, we proposed a loss function to enhance the interaction between the two subnets. Individual metrics can not wholly reflect network effectiveness. Thus we quantify the segmentation results with various evaluation metrics such as average surface distance, volume Dice, and test on the dataset. We employ a dataset containing 275 3D CT scans for classifying COVID-19, Community-acquired Pneumonia (CAP), and healthy people and segmented lesions in pneumonia patients. We split the dataset into 70% and 30% for training and testing. Extensive experiments showed that our multi-task model framework obtained an average recall of 93.323%, an average precision of 94.005% on the classification test set, and a 69.95% Volume Dice score on the segmentation test set of our dataset.
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Full text: Available Collection: International databases Database: MEDLINE Main subject: Pneumonia / COVID-19 Type of study: Diagnostic study / Experimental Studies / Prognostic study Limits: Humans Language: English Journal: Comput Biol Med Year: 2022 Document Type: Article Affiliation country: J.compbiomed.2022.105340

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Full text: Available Collection: International databases Database: MEDLINE Main subject: Pneumonia / COVID-19 Type of study: Diagnostic study / Experimental Studies / Prognostic study Limits: Humans Language: English Journal: Comput Biol Med Year: 2022 Document Type: Article Affiliation country: J.compbiomed.2022.105340