DMDF-Net: Dual multiscale dilated fusion network for accurate segmentation of lesions related to COVID-19 in lung radiographic scans
作者:
Highlights:
• Dual multiscale dilated fusion network (DMDF-Net) is proposed for segmentation.
• Dual multiscale feature fusion is included in the encoder and decoder of DMDF-Net.
• Concept of post-region of interest (ROI) fusion is used for lesion quantification.
• Achieve superior results as an average DICE score of 75.7% and IoU score of 67.22%.
• Our trained DMDF-Net is publicly available.
摘要
•Dual multiscale dilated fusion network (DMDF-Net) is proposed for segmentation.•Dual multiscale feature fusion is included in the encoder and decoder of DMDF-Net.•Concept of post-region of interest (ROI) fusion is used for lesion quantification.•Achieve superior results as an average DICE score of 75.7% and IoU score of 67.22%.•Our trained DMDF-Net is publicly available.
论文关键词:DMDF-Net,Computer-aided diagnosis,Lung segmentation,COVID-19 lesions segmentation,Infection quantification
论文评审过程:Received 13 July 2021, Revised 24 January 2022, Accepted 25 April 2022, Available online 2 May 2022, Version of Record 6 May 2022.
论文官网地址:https://doi.org/10.1016/j.eswa.2022.117360