Gender-specific data-driven adiposity subtypes using deep-learning-based abdominal CT segmentation

Obesity (Silver Spring). 2023 Jun;31(6):1600-1609. doi: 10.1002/oby.23741. Epub 2023 May 8.

Abstract

Objective: The aim of this study was to quantify abdominal adiposity and generate data-driven adiposity subtypes with different diabetes risks.

Methods: A 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.

Results: The 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.

Conclusions: This study identified gender-specific abdominal adiposity subgroups, which may help clinicians to distinguish diabetes risk quickly and automatically.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Adiposity*
  • Deep Learning*
  • Female
  • Humans
  • Intra-Abdominal Fat / diagnostic imaging
  • Intra-Abdominal Fat / metabolism
  • Liver / metabolism
  • Male
  • Obesity / metabolism
  • Obesity, Abdominal / diagnostic imaging
  • Obesity, Abdominal / metabolism
  • Tomography, X-Ray Computed