Postdoctoral Associate

Baylor College of Medicine

Houston, TX

Job posting number: #7284194 (Ref:20668-en_US)

Posted: October 4, 2024

Job Description

Summary

The Papageorgiou Lab is dedicated to exploring the mechanisms of neuro-rehabilitation through AI-driven MRI-based individualized NeuroModulation (iNM), which targets individualized regions based on the patient’s lesion location and extent. iNM aims to neuro-rehabilitate central and peripheral nervous system injuries. Through a range of advanced quantitative methods, such as causal modeling (Hidden Markov Models), linear and non-linear machine learning, population receptive field analysis we aim to elucidate the spatiotemporal mechanisms of plasticity with iNM treatment to alleviate chronic neuropathic pain in head and neck cancer and breast cancer survivors, decelerate cognitive impairment and neuro-rehabilitate visual perception in cortically blind patients


We are seeking a highly motivated Research Associate or Postdoctoral Fellow to join the Papageorgiou/Investigational Targeted Brain Neurotherapeutics Laboratory. The successful candidate will conduct cutting-edge computational modeling and cortical repair and neuromodulation experiments in patients and healthy participants. This project aims to uncover the mechanisms underlying cortical repair through the use of computational techniques such as Hidden Markov Models, machine learning, and functional connectivity. This project offers an exciting opportunity to advance understanding of innovative neurofeedback methods applied to health and neurological disorders (e.g., cortical blindness, chronic pain, motor disorders). The ideal candidate will have a passion for innovative scientific research and flexibility in their work schedule.

Job Duties

  • Conducts a range of advanced quantitative analyses on existing neuroimaging datasets.
  • Assists in ensuring the seamless operation and synchronization of the closed-loop system during MRI, fMRI and iNM sessions with both patients and healthy participants.
  • Analyzes using AFNI software, matlab, and python.
  • Documents research findings and help with writing-up papers for peer-reviewed journals.

Minimum Qualifications

  • MD or Ph.D. in Basic Science, Health Science, or a related field.
  • No experience required.

Preferred Qualifications

  • Ph.D. in Neuroscience or Electrical Engineering or Neuroengineering or related field.
  • Strong knowledge of matlab and python and ability to independently troubleshoot.
  • Advanced computational skills.
  • Proven ability to write and present scientific reports, publications, and deliver scientific presentations.
  • Strong interpersonal communication skills, with the ability to collaborate effectively in a team and conduct independent research.

Baylor College of Medicine is an Equal Opportunity/Affirmative Action/Equal Access Employer.



Baylor College of Medicine fosters diversity among its students, trainees, faculty and staff as a prerequisite to accomplishing our institutional mission, and setting standards for excellence in training healthcare providers and biomedical scientists, promoting scientific innovation, and providing patient-centered care. - Diversity, respect, and inclusiveness create an environment that is conducive to academic excellence, and strengthens our institution by increasing talent, encouraging creativity, and ensuring a broader perspective. - Diversity helps position Baylor to reduce disparities in health and healthcare access and to better address the needs of the community we serve. - Baylor is committed to recruiting and retaining outstanding students, trainees, faculty and staff from diverse backgrounds by providing a welcoming, supportive learning environment for all members of the Baylor community.


Apply Now

Please mention to the employer that you saw this ad on DiversityWork.com

More Info

Job posting number:#7284194 (Ref:20668-en_US)
Application Deadline:Open Until Filled
Employer Location:Baylor College of Medicine
Houston,Texas
United States
More jobs from this employer
Institution Website
Close menu