A Human-Centered Machine-Learning Approach for Muscle-Tendon Junction Tracking in Ultrasound Images
This work addresses the need for reliable and time-efficient tracking in clinical biomechanics, offering a practical tool for gait analysis, though it is incremental as it applies existing deep-learning techniques to a specific domain.
The paper tackles the problem of tracking muscle-tendon junctions in ultrasound videos for gait analysis by proposing a deep-learning method that achieves similar performance to human specialists and is about 100 times faster than manual labeling, with prediction times of up to 0.078 seconds per frame.
Biomechanical and clinical gait research observes muscles and tendons in limbs to study their functions and behaviour. Therefore, movements of distinct anatomical landmarks, such as muscle-tendon junctions, are frequently measured. We propose a reliable and time efficient machine-learning approach to track these junctions in ultrasound videos and support clinical biomechanists in gait analysis. In order to facilitate this process, a method based on deep-learning was introduced. We gathered an extensive dataset, covering 3 functional movements, 2 muscles, collected on 123 healthy and 38 impaired subjects with 3 different ultrasound systems, and providing a total of 66864 annotated ultrasound images in our network training. Furthermore, we used data collected across independent laboratories and curated by researchers with varying levels of experience. For the evaluation of our method a diverse test-set was selected that is independently verified by four specialists. We show that our model achieves similar performance scores to the four human specialists in identifying the muscle-tendon junction position. Our method provides time-efficient tracking of muscle-tendon junctions, with prediction times of up to 0.078 seconds per frame (approx. 100 times faster than manual labeling). All our codes, trained models and test-set were made publicly available and our model is provided as a free-to-use online service on https://deepmtj.org/.