PhD Fellowship: Computational Predictive Models of Skeletal Muscle Remodelling for Regenerative Robotics Applications

PhD Fellowship: Computational Predictive Models of Skeletal Muscle Remodelling for Regenerative Robotics Applications

Published Deadline Location
11 Nov 28 Nov Enschede

Job description

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.

Specifications

University of Twente (UT)

Requirements

We’re seeking candidates with:
  • Strong programming skills in C and Python, especially for musculoskeletal models.
  • Proficiency in bio-statistics, likelihood estimation, and advanced signal processing (e.g., high-density EMG and ultrasound).
  • A solid understanding of muscle physiology, motor unit neurophysiology, and exercise science.
  • A collaborative spirit, ready to work with interdisciplinary teams across robotics, control engineering, and biology.

Qualifications
  • Master’s degree (or equivalent) in fields like Biomedical Engineering, Computer Engineering, Information Engineering, or a related discipline.
  • Proven analytical skills and experience in signal processing and bio-statistics.
  • Proficiency in programming (Python, MATLAB, C) and machine learning.
  • Strong communication and teamwork abilities in a research setting.

This is an exciting opportunity to engage in high-impact research with the potential to transform rehabilitation robotics. If you’re motivated by innovative problem-solving, interdisciplinary collaboration, and cutting-edge applications of predictive modelling, we encourage you to apply and contribute to a future where robotics and physiology work hand in hand for advanced rehabilitation solutions.

Conditions of employment

We offer a position with a generous allowance:
  • A full-time 4-year position with 30% tax ruling option and a pension scheme.
  • A salary of € 2872,- during the first year, increasing to € 3670,- in the fourth year.
  • Holiday and year-end bonuses.
  • A minimum of 29 days of holidays.
  • Professional and personal development programs.
  • Access to Neuromechanics and Wearable Robotics Labs outstanding facilities.
  • Proximity to Enschede, a mid-size city with a large social offer, immersed in the nature of the Twente region.
  • Fun work atmosphere with social lab retreats.

Additional information

Apply by November 28th, 2024. Applications must include the following documents:
  • A video (2-minute max) describing your scientific interests and why you want to apply for this position.
  • A cover letter (1-page max) specifying how your experience and skills match the position as well as summarizing work in your masters.
  • A CV including English proficiency level, nationality, visa requirements, date of birth, experience overview, and publication list.
  • Contact information for at least two academic references. A support letter will be requested only if your application is considered.

The first-round interview will be scheduled in the week of December 9th.

For questions, please contact Prof. Massimo Sartori, mail: m.sartori@utwente.nl.
Please, only apply via the web platform and not via email.

Specifications

  • PhD
  • Engineering
  • max. 38 hours per week
  • €2872—€3670 per month
  • University graduate
  • 1959

Employer

University of Twente (UT)

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Location

Drienerlolaan 5, 7522NB, Enschede

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