Postdoctoral Research Fellow at UMass Boston
A postdoctoral fellow position is available in the Brain
Stimulation & Simulation Lab, directed by Dr. Sumientra
Rampersad, in the Department of Physics at the University of
Massachusetts Boston. Our lab focuses on investigating
electromagnetic brain stimulation through computational methods
and experiments with healthy volunteers. This position is funded
by a newly awarded 5-year NIH R01
grant with the goal to investigate a novel form of brain
stimulation called transcranial temporal interference stimulation
(TIS) and to optimize and translate it into an effective and
efficient neuromodulation method for academic research and
clinical practice. The fellow will develop novel optimization
methods for high-density TIS and supervise a PhD student who will
conduct simulations and optimizations using finite element
modeling. The goal is to provide noninvasive and spatially
specific treatment options to patients with brain disorders
resistant to existing approaches.
You will join a multidisciplinary team with expertise in
computational modeling and optimization, human and primate
electrophysiology, cellular and systems neuroscience, and
biomedical engineering. You will also have the opportunity to work
on other cutting-edge projects involving several brain stimulation
methods including tCS, TMS, ECoG, sEEG and TTF (see lab
website for examples). Our collaborators at Northeastern
University, the University of Utah, Harvard University, MGH, and
the University of Washington, provide us access to specialized
software and unique clinical data. The fellow will be mentored by
Dr. Rampersad (UMass Boston) and Dr. Dana Brooks (Northeastern).
This is an outstanding career development opportunity to work with
leaders in the field of brain stimulation with an exceptional
record of collaboration and mentoring.
Required qualifications include a PhD in physics, math,
electrical, biomedical engineering, or equivalent, expertise in
either brain stimulation modeling or computational optimization
methods (preferred both), a track record of conference
presentations and peer-reviewed publications, strong verbal and
written communication skills, and proficiency in Matlab or Python.