45 data-"https:" "https:" "https:" "https:" "https:" "https:" "SciLifeLab" "IFM" "IFM" Postdoctoral positions at University of Maryland, Baltimore
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the new state-of-art Health Sciences Facility III Building on the campus. It is a part of the Baltimore PKD Research Center supported by the NIH R01 grants and U54 PKD Research Consortium (https://www.pkd
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University, University of Maryland School of Engineering at college park offers ample opportunity for productive collaborations. More information about the PI could be found here: https
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+ parameters/cell) with a focus on complex data analyses, as well as the performance of a variety of molecular biology and immunological techniques depending on the research questions being addressed
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Transduction. JCI Insight . 2019 Jun 6;4(11). Applicants should submit their curriculum vitae and two references or letters of reference to akrupnick@som.umaryland.edu as well as apply to: https
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FOR GENOME SCIENCES. The cancer epigenetics group of Dr. Gaykalova at the Institute for Genome Sciences (IGS, http://www.igs.umaryland.edu ) seeks applicants for a postdoctoral research position. IGS
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loading conditions. • Develop and validate computational models (FEA/FSI) of cardiac valves. • Integrate experimental data with simulation results to evaluate stress and strain
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of required components and explaining/resolving technical issues. Compile, analyze, and interpret research data using various relevant computer software applications. Conduct library research and participates
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short statement of research interests, and the names and contact information for three references to: Steven Fisher, MD, Professor of Medicine and Physiology, at SFisher1@som.umaryland.edu
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areas: · Metagenomic and metatranscriptomic sequencing analysis · Single-cell RNA-seq and proteomic/metabolomic data integration · Integration of clinical and multi-omic microbiome data
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positions: Qualifications 1. Computational Biology & Data Integration Using multi-omics microbiome analysis, single-cell transcriptomics, and machine learning–based biomarker prediction models, this project