Join us at the
Neuro-Mechanical Modeling and Engineering Lab, where we're pushing boundaries in muscle neurophysiology, biomechanics, and robotics as part of the
ERC Consolidator Grant ROBOREACTOR.
This 4-year PhD position offers you the chance to work in an innovative interdisciplinary environment, collaborating on groundbreaking research at the frontier of
healthcare and robotics.
Project Overview As a PhD fellow, you’ll play a central role in building a predictive, multi-scale model of human skeletal muscle. This model will simulate how motor units within muscles respond to neural signals discharged by spinal neurons and adapt structurally over time when subjected to specific physical strain regimens. Leveraging machine learning and statistical modeling, you’ll integrate data from
in vivo and
in vitro studies to accurately predict muscle remodelling. The model will be validated against data from both healthy participants and post-stroke patients following a targeted 12-week leg training protocol. Using advanced tools such as high-density electromyography, ultrasound, and force dynamometry, you'll bridge biomechanics and neurophysiology, driving novel insights in muscle modelling and rehabilitation.
Key Responsibilities As part of our team, you will:
- Develop a computational muscle model, particularly for leg muscles, that simulates biological remodelling over time based on strain stimuli.
- Use high-density EMG, ultrasound, and force dynamometry to personalize models to reflect individual neuromuscular physiology.
- Program model remodelling logics in languages such as C++ and Python.
- Train machine learning algorithms to identify the most probable muscle remodelling processes based on strain data.
- Validate the model with both healthy and stroke patients, as well as through in vitro muscle data.
Collaborate with experts in control engineering, robotics, and bioengineering to contribute to developing a rehabilitation robotic system capable of autonomous tissue regeneration.