11 medical physics research jobs at University of Nebraska Medical Center in United States
Sort by
Refine Your Search
-
Program
-
Field
-
Details Posted: 16-Jun-24 Location: Omaha, Nebraska Salary: Open Categories: Academic/Faculty Medical - Research Internal Number: 86681 Requisition Number: 2024 - 198 Business Unit: College of
-
Details Posted: 09-Jun-24 Location: Omaha, Nebraska Salary: Open Categories: Academic/Faculty Medical - Research Internal Number: 86552 Requisition Number: 2024 - 194 Business Unit: College of
-
Details Posted: 01-Jun-24 Location: Omaha, Nebraska Salary: Open Categories: Academic/Faculty Medical - Research Internal Number: 86546 Requisition Number: Staff_13103 Business Unit: College of
-
Details Posted: 17-May-24 Location: Omaha, Nebraska Salary: Open Categories: Academic/Faculty Medical - Research Internal Number: 85879 Requisition Number: 2024 - 169 Business Unit: College of
-
Jobs Logo About University of Nebraska Medical Center A vital enterprise in the nation’s heartland, the University of Nebraska Medical Center has its eye on improving the future of health care in
-
Details Posted: 07-Apr-24 Location: Omaha, Nebraska Salary: Open Categories: Academic/Faculty Medical - Research Internal Number: 85024 Requisition Number: 2024 - 120 Business Unit: College of
-
, Department of Neurosurgery, University of Nebraska Medical Center. Dr. Gliske's research group focuses on developing translational electrophysiology biomarkers using advanced statistical analysis of human data
-
, informatics, electronic engineering, biology, physics, chemistry, etc. Supplemental Qualifications Experience with next-generation sequencing data and bioinformatics tool development is preferred. Candidates
-
opportunities for the application of clinical pharmacology research across the drug discovery and development process. This position will focus on in vitro and in vivo drug metabolism studies, LCMS method
-
, Department of Neurosurgery, University of Nebraska Medical Center. Dr. Gliske’s research group focuses on developing translational electrophysiology biomarkers using advanced statistical analysis of human data