Frontiers in Physiology | |
A deep learning-based approach for rectus abdominis segmentation and distance measurement in ultrasonography | |
Physiology | |
Fei Wang1  Zhenyu Cai2  Rongsong Mao3  Laifa Yan3  Shan Ling3  | |
[1] Center of Four-Dimensional Ultrasound, Affiliated Xiaoshan Hospital, Hangzhou Normal University, Hangzhou, Zhejiang, China;Department of Ultrasound, Zhejiang Medical and Health Group Hangzhou Hospital, Hangzhou, Zhejiang, China;Hangzhou Institute of Medicine, Chinese Academy of Sciences, Hangzhou, Zhejiang, China; | |
关键词: deep learning; diastasis recti abdominis; ultrasound; segmentation; rectus abdominis distance; | |
DOI : 10.3389/fphys.2023.1246994 | |
received in 2023-06-25, accepted in 2023-08-22, 发布年份 2023 | |
来源: Frontiers | |
【 摘 要 】
Introduction: Diastasis recti abdominis (DRA) is a common condition in postpartum women. Measuring the distance between separated rectus abdominis (RA) in ultrasound images is a reliable method for the diagnosis of this disease. In clinical practice, the RA distance in multiple ultrasound images of a patient is measured by experienced sonographers, which is time-consuming, labor-intensive, and highly dependent on experience of operators. Therefore, an objective and fully automatic technique is highly desired to improve the DRA diagnostic efficiency. This study aimed to demonstrate the deep learning-based methods on the performance of RA segmentation and distance measurement in ultrasound images.Methods: A total of 675 RA ultrasound images were collected from 94 postpartum women, and were split into training (448 images), validation (86 images), and test (141 images) datasets. Three segmentation models including U-Net, UNet++ and Res-UNet were evaluated on their performance of RA segmentation and distance measurement.Results: Res-UNet model outperformed the other two models with the highest Dice score (85.93% ± 0.26%), the highest MIoU score (76.00% ± 0.39%) and the lowest Hausdorff distance (21.80 ± 0.76 mm). The average physical distance between RAs measured from the segmentation masks generated by Res-UNet and that measured by experienced sonographers was only 3.44 ± 0.16 mm. In addition, these two measurements were highly correlated with each other (r = 0.944), with no systematic difference.Conclusion: Deep learning model Res-UNet has good reliability in RA segmentation and distance measurement in ultrasound images, with great potential in the clinical diagnosis of DRA.
【 授权许可】
Unknown
Copyright © 2023 Wang, Mao, Yan, Ling and Cai.
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