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Andrew D. Ellington
Researcher at University of Texas at Austin
Publications - 599
Citations - 48723
Andrew D. Ellington is an academic researcher from University of Texas at Austin. The author has contributed to research in topics: Aptamer & RNA. The author has an hindex of 96, co-authored 569 publications receiving 43262 citations. Previous affiliations of Andrew D. Ellington include Harvard University & UPRRP College of Natural Sciences.
Papers
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Virus wars: using one virus to block the spread of another.
TL;DR: The work establishes the feasibility and robustness to details of a viral interference using a therapeutic virus using an empirical system that protects a host cell population against a lethal virus.
Journal ArticleDOI
Design and selection of a synthetic operon.
Wei Cheng Lu,Andrew D. Ellington +1 more
TL;DR: Synthetic operons were designed that included different combinations of wild-type or evolved biotin ligases and streptavidins and a mechanism for self-selection of operons following expression in vitro was demonstrated.
Journal ArticleDOI
Reprogramming the brain with synthetic neurobiology.
TL;DR: The mammalian brain is among the most complex organs known in biology, and using genetic techniques to achieve cell-type specificity, a map of the connectome, neural activation and recording, and ultimately to program neural development itself, can begin to build a better framework to understand the brain's mechanisms.
Journal ArticleDOI
Preparation and Use of Cellular Reagents: A Low‐resource Molecular Biology Reagent Platform
Sanchita Bhadra,Inyup Paik,Jose-Angel Torres,Stéphane Fadanka,Chiara Gandini,Harry Akligoh,Jenny Molloy,Andrew D. Ellington +7 more
TL;DR:
Patent
Improved single molecule peptide sequencing
Edward M. Marcotte,Eric V. Anslyn,Andrew D. Ellington,Jagannath Swaminathan,Erik T. Hernandez,Amber M. Johnson,Alexander A. Boulgakov,James L. Bachman,Helen M. Seifert +8 more
TL;DR: In this article, a method for identifying proteins and peptides, and more specifically large-scale sequencing of single peptides in a mixture of diverse peptides at the single molecule level, was proposed.