TitleGender-specific data-driven adiposity subtypes using deep-learning-based abdominal CT segmentation
AuthorsZou, Xiantong
Zhou, Xianghai
Li, Yufeng
Huang, Qi
Ni, Yuan
Zhang, Ruiming
Zhang, Fang
Wen, Xin
Cheng, Jiayu
Yuan, Yanping
Yu, Yue
Guo, Chengcheng
Xie, Guotong
Ji, Linong
AffiliationPeking Univ, Dept Endocrinol & Metab, Peoples Hosp, Beijing, Peoples R China
Capital Med Univ, Beijing Friendship Hosp Pinggu Campus, Dept Endocrinol, Beijing, Peoples R China
Ping Technol Shenzhen Co Ltd, Shanghai, Peoples R China
KeywordsINCIDENT CARDIOVASCULAR-DISEASE
VISCERAL FAT
COMPUTED-TOMOGRAPHY
LIVER FAT
RISK
TISSUE
ACCURACY
VOLUME
Issue Date2023
PublisherOBESITY
AbstractObjectiveThe aim of this study was to quantify abdominal adiposity and generate data-driven adiposity subtypes with different diabetes risks. MethodsA total of 3817 participants from the Pinggu Metabolic Disease Study were recruited. A deep-learning-based recognition model on abdominal computed tomography (CT) images (A-CT model) was developed and validated in 100 randomly selected cases. The volumes and proportions of subcutaneous fat, visceral fat, liver fat, and muscle fat were automatically recognized in all cases. K-means clustering was used to identify subgroups using the proportions of the four fat components. ResultsThe Dice indices among the measurements assessed by the A-CT model and manual evaluation to detect liver fat, muscle fat, and subcutaneous fat areas were 0.96, 0.95, and 0.92, respectively. Three subtypes were generated separately in men and women: visceral fat dominant type (VFD); subcutaneous fat dominant type (SFD); and intermuscular fat dominant type (MFD). Compared with the SFD group, the MFD group had similar diabetes risk, and the VFD group had a 60% higher diabetes risk when age and BMI were adjusted for in men. The adjusted odds ratio for diabetes was 1.92 (95% CI: 1.32-2.78) in the MFD group and 6.14 (95% CI: 4.18-9.03) in the VFD group in women. ConclusionsThis study identified gender-specific abdominal adiposity subgroups, which may help clinicians to distinguish diabetes risk quickly and automatically.
URIhttp://hdl.handle.net/20.500.11897/685458
ISSN1930-7381
DOI10.1002/oby.23741
IndexedSCI(E)
Appears in Collections:人民医院

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