Kidney, ureter, and urinary bladder segmentation based on non-contrast enhanced computed tomography images using modified U-Netopen access
- Authors
- Jang, Dong-Hyun; Lee, Juncheol; Jeon, Young-Jin; Yoon, Young Eun; Ahn, Hyungwoo; Kang, Bo-Kyeong; Choi, Won Seok; Oh, Jaehoon; Lee, Dong Keon
- Issue Date
- Jul-2024
- Publisher
- Nature Publishing Group
- Citation
- Scientific Reports, v.14, no.1, pp 1 - 11
- Pages
- 11
- Indexed
- SCIE
SCOPUS
- Journal Title
- Scientific Reports
- Volume
- 14
- Number
- 1
- Start Page
- 1
- End Page
- 11
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/197757
- DOI
- 10.1038/s41598-024-66045-6
- ISSN
- 2045-2322
2045-2322
- Abstract
- This study was performed to segment the urinary system as the basis for diagnosing urinary system diseases on non-contrast computed tomography (CT). This study was conducted with images obtained between January 2016 and December 2020. During the study period, non-contrast abdominopelvic CT scans of patients and diagnosed and treated with urinary stones at the emergency departments of two institutions were collected. Region of interest extraction was first performed, and urinary system segmentation was performed using a modified U-Net. Thereafter, fivefold cross-validation was performed to evaluate the robustness of the model performance. In fivefold cross-validation results of the segmentation of the urinary system, the average dice coefficient was 0.8673, and the dice coefficients for each class (kidney, ureter, and urinary bladder) were 0.9651, 0.7172, and 0.9196, respectively. In the test dataset, the average dice coefficient of best performing model in fivefold cross validation for whole urinary system was 0.8623, and the dice coefficients for each class (kidney, ureter, and urinary bladder) were 0.9613, 0.7225, and 0.9032, respectively. The segmentation of the urinary system using the modified U-Net proposed in this study could be the basis for the detection of kidney, ureter, and urinary bladder lesions, such as stones and tumours, through machine learning.
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