PaulRitsche/DeepACSA
Automated measurement of muscle anatomical cross-sectional area in ultrasound images using deep learning
This tool helps researchers, clinicians, and sports scientists automatically measure the anatomical cross-sectional area of lower limb muscles from ultrasound images. You input ultrasound images, and the system outputs precise measurements of muscle area for specific muscles like the patella tendon, vastus medialis, and biceps femoris. It's designed for anyone needing to analyze muscle size changes efficiently for research or clinical assessment.
Available on PyPI.
Use this if you need to quickly and accurately analyze muscle cross-sectional area from ultrasound images of the lower limb without manual tracing.
Not ideal if you need to measure muscles other than the lower limb muscles currently supported, or if your images are of very low quality.
Stars
18
Forks
5
Language
Python
License
Apache-2.0
Category
Last pushed
Mar 22, 2026
Monthly downloads
18
Commits (30d)
0
Dependencies
12
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