Post-doctoral fellowship in Alzheimer’s disease pathogenesis
The Unit of Clinical and Translational Neuroscience in the Intramural Program of the National Institute on Aging (NIA) is seeking applicants for a post-doctoral research fellowship. Our current work has a major emphasis on understanding the metabolic basis of Alzheimer’s disease (AD) pathogenesis using quantitative metabolomics of brain and blood tissue samples. We employ several computational methodologies (i.e. biostatistical, epidemiologic, computer science) on large longitudinal clinical, neuroimaging, cognitive, and metabolomics/proteomics datasets.
We are also exploring in-silico approaches to drug repurposing in AD combining analyses of Electronic Health Record (EHR) data with large publicly available gene expression datasets.
We are seeking to recruit a talented post-doctoral fellow with expertise in analyses of longitudinal data/machine-learning methods who can contribute to a growing portfolio of high-impact publications from our group. Candidates with strong writing skills will be preferred.
We offer 1) the opportunity to publish extensively in high-impact journals in the medical science fields and 2) collaboration and support in analytic and neuroscience fields within the lab and across the NIA. Salary is commensurate with other fellowship opportunities, and the position is renewable up to 5 years.
DHHS and NIH are Equal Opportunity Employers
The NIH is dedicated to building a diverse community in its training and employment programs.
The link below provides details on our work: http://www.irp.nia.nih.gov/branches/lpc/ctnu.htm
Please contact the Section Chief, Madhav Thambisetty MD, Ph.D at firstname.lastname@example.org
In your letter, please include:
1.A full CV with a statement of research interests and career goals.
2.Contact details of three references who can comment on your analytical expertise and writing skills
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