Automated Muscle and Fat Segmentation in Computed Tomography for Comprehensive Body Composition Analysis
Yaqian Chen, Hanxue Gu, Yuwen Chen, Jichen Yang, Haoyu Dong, Joseph Y. Cao, Adrian Camarena, Christopher Mantyh, Roy Colglazier, Maciej A. Mazurowski

TL;DR
This paper introduces a publicly accessible deep learning model for automated segmentation of muscle and fat in CT images, enabling comprehensive body composition analysis for various clinical applications with high accuracy and reproducibility.
Contribution
The authors developed and validated a novel end-to-end segmentation model for CT body composition analysis that outperforms existing benchmarks and is publicly available.
Findings
High segmentation accuracy with dice coefficients over 89%
Model outperforms benchmark by 2.10% on skeletal muscle and 8.6% on SAT
Body composition metrics have mean relative absolute errors under 10%
Abstract
Body composition assessment using CT images can potentially be used for a number of clinical applications, including the prognostication of cardiovascular outcomes, evaluation of metabolic health, monitoring of disease progression, assessment of nutritional status, prediction of treatment response in oncology, and risk stratification for surgical and critical care outcomes. While multiple groups have developed in-house segmentation tools for this analysis, there are very limited publicly available tools that could be consistently used across different applications. To mitigate this gap, we present a publicly accessible, end-to-end segmentation and feature calculation model specifically for CT body composition analysis. Our model performs segmentation of skeletal muscle, subcutaneous adipose tissue (SAT), and visceral adipose tissue (VAT) across the chest, abdomen, and pelvis area in…
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Taxonomy
TopicsBody Composition Measurement Techniques · Nutrition and Health in Aging · Cardiovascular Disease and Adiposity
