Deep Learning-Assisted Detection of Sarcopenia in Cross-Sectional Computed Tomography Imaging
Manish Bhardwaj, Huizhi Liang, Ashwin Sivaharan, Sandip Nandhra, Vaclav Snasel, Tamer El-Sayed, and Varun Ojha

TL;DR
This study develops deep learning models to automate the measurement of skeletal muscle area in CT images for sarcopenia detection, achieving high accuracy and enabling scalable, efficient diagnosis.
Contribution
It introduces transfer learning and self-supervised learning techniques for automated SMA measurement, improving efficiency and addressing data limitations.
Findings
Average prediction error of +-3 percentage points
Dice similarity coefficient of 93% for segmentation masks
Pathway to fully automated sarcopenia detection
Abstract
Sarcopenia is a progressive loss of muscle mass and function linked to poor surgical outcomes such as prolonged hospital stays, impaired mobility, and increased mortality. Although it can be assessed through cross-sectional imaging by measuring skeletal muscle area (SMA), the process is time-consuming and adds to clinical workloads, limiting timely detection and management; however, this process could become more efficient and scalable with the assistance of artificial intelligence applications. This paper presents high-quality three-dimensional cross-sectional computed tomography (CT) images of patients with sarcopenia collected at the Freeman Hospital, Newcastle upon Tyne Hospitals NHS Foundation Trust. Expert clinicians manually annotated the SMA at the third lumbar vertebra, generating precise segmentation masks. We develop deep-learning models to measure SMA in CT images and…
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