year PostDoc Fellowship: Non-Invasive Biopsies of Skeletal Muscles via Advanced Bio-signal Processing and Machine Learning

Universiteit Twente

Job title:

year PostDoc Fellowship: Non-Invasive Biopsies of Skeletal Muscles via Advanced Bio-signal Processing and Machine Learning

Company:

Universiteit Twente

Job description

Hours38 hr.Salary indicationSalary gross/monthly
based on full-time€ 4,020 – € 5,278Deadline28 Nov 2024The at the University of Twente invites applications for a 3-year postdoctoral position funded by the . This is an exciting opportunity to join a cutting-edge team at the intersection of neurophysiology, biomechanics, and .Project OverviewAs a postdoctoral researcher in this project, you will work on breakthrough technology for non-invasive biopsies of skeletal muscles, specifically targeting the lower limbs. You will employ high-density electromyography (HD-EMG) and ultrasonography, combined with advanced statistical and machine learning techniques, to characterize muscle properties at multiple scales. Key focuses include:

  • Motor unit phenotype distribution
  • 3D muscle fascicle morphology
  • Muscle inflammation levels

You will validate these non-invasive measurements against invasive biopsy samples and advanced imaging techniques, working with both healthy individuals and post-stroke survivors.Key Responsibilities

  • Longitudinal Experimentation: Help conduct 12-week studies with both healthy participants and stroke patients.
  • Advanced Muscle Monitoring: Use HD-EMG, ultrasound (USG), and force dynamometry in combination with machine learning to predict structural and inflammatory changes in muscle over time.
  • Data Analysis: Set up robust HD-EMG and USG data repositories for analysis and model training.
  • Validation: validate noninvasive biopsy results against reference data derived from invasive biopsies.
  • Collaborative Innovation: Work with experts in robotics, control engineering, and muscle biology to develop robotic rehabilitation technologies for skeletal tissue regeneration.

Your profileWe are seeking a highly motivated individual with a strong background in:

  • Signal Processing & Machine Learning: Experience in biological signal analysis and machine learning, with knowledge of blind source separation methods.
  • Muscle Measurement Techniques: Proficiency with HD-EMG, ultrasound, and force dynamometry, especially in long-term, multi-scale studies.
  • Motor Unit Physiology: Knowledge in motor unit analysis techniques is advantageous.
  • Experimental Design & Validation: Skilled in structuring and validating complex, longitudinal human studies.
  • Interdisciplinary Collaboration: Ability to thrive in a collaborative environment with control engineers, roboticists, and biologists.

Qualifications

  • A PhD in Information Engineering, Computer Engineering, Electronic Engineering, Biomedical Engineering, Robotics and AI or a related field.
  • Strong analytical skills and a proven track record in signal processing and machine learning.
  • Strong analytical and programming skills (Python, MATLAB, C++) and proficiency in data analysis tools.
  • Excellent communication and teamwork skills within a research setting.

Our offerWe offer a position with a generous allowance:

  • A full-time 3-year position (with one year probation) with 30% tax ruling option and a pension scheme.
  • A salary between 4020,- and 5278,- (scale 10) based on education and experience.
  • Holiday and year-end bonuses.
  • A minimum of 29 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.

Information and applicationApply 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: [email protected]. Please, only apply via the web platform and not via email.Share this vacancyAbout the organisationThe Faculty of Engineering Technology (ET) engages in education and research of Mechanical Engineering, Civil Engineering and Industrial Design Engineering. We enable society and industry to innovate and create value using efficient, solid and sustainable technology. We are part of a ‘people-first’ university of technology, taking our place as an internationally leading center for smart production, processes and devices in five domains: Health Technology, Maintenance, Smart Regions, Smart Industry and Sustainable Resources. Our faculty is home to about 2,900 Bachelor’s and Master’s students, 550 employees and 150 PhD candidates. Our educational and research programmes are closely connected with UT research institutes Mesa+ Institute, TechMed Center and Digital Society Institute.Want to know moreSartori, M. (Massimo)
Full Professor and Chair of Neuromuscular RoboticsSartori, M. (Massimo)
Full Professor and Chair of Neuromuscular RoboticsDo you have questions about this vacancy? Then you can contact Massimo for all substantive questions about this position and the application procedure. For general questions about working for the UT, please refer to the chatbot.

Expected salary

€4020 – 5278 per month

Location

Enschede, Overijssel

Job date

Wed, 13 Nov 2024 08:50:48 GMT

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