Abdominal fat quantification using convolutional networks

Eur Radiol. 2023 Dec;33(12):8957-8964. doi: 10.1007/s00330-023-09865-w. Epub 2023 Jul 12.

Abstract

Objectives: To present software for automated adipose tissue quantification of abdominal magnetic resonance imaging (MRI) data using fully convolutional networks (FCN) and to evaluate its overall performance-accuracy, reliability, processing effort, and time-in comparison with an interactive reference method.

Materials and methods: Single-center data of patients with obesity were analyzed retrospectively with institutional review board approval. Ground truth for subcutaneous (SAT) and visceral adipose tissue (VAT) segmentation was provided by semiautomated region-of-interest (ROI) histogram thresholding of 331 full abdominal image series. Automated analyses were implemented using UNet-based FCN architectures and data augmentation techniques. Cross-validation was performed on hold-out data using standard similarity and error measures.

Results: The FCN models reached Dice coefficients of up to 0.954 for SAT and 0.889 for VAT segmentation during cross-validation. Volumetric SAT (VAT) assessment resulted in a Pearson correlation coefficient of 0.999 (0.997), relative bias of 0.7% (0.8%), and standard deviation of 1.2% (3.1%). Intraclass correlation (coefficient of variation) within the same cohort was 0.999 (1.4%) for SAT and 0.996 (3.1%) for VAT.

Conclusion: The presented methods for automated adipose-tissue quantification showed substantial improvements over common semiautomated approaches (no reader dependence, less effort) and thus provide a promising option for adipose tissue quantification.

Clinical relevance statement: Deep learning techniques will likely enable image-based body composition analyses on a routine basis. The presented fully convolutional network models are well suited for full abdominopelvic adipose tissue quantification in patients with obesity.

Key points: • This work compared the performance of different deep-learning approaches for adipose tissue quantification in patients with obesity. • Supervised deep learning-based methods using fully convolutional networks were suited best. • Measures of accuracy were equal to or better than the operator-driven approach.

Keywords: Adipose tissue; Deep learning; Image processing, computer-assisted; Magnetic resonance imaging; Obesity.

MeSH terms

  • Abdominal Fat* / diagnostic imaging
  • Abdominal Fat* / pathology
  • Humans
  • Intra-Abdominal Fat* / diagnostic imaging
  • Magnetic Resonance Imaging / methods
  • Obesity / diagnostic imaging
  • Obesity / pathology
  • Reproducibility of Results
  • Retrospective Studies
  • Subcutaneous Fat