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Klaus M. Hahn

Researcher at University of North Carolina at Chapel Hill

Publications -  215
Citations -  16976

Klaus M. Hahn is an academic researcher from University of North Carolina at Chapel Hill. The author has contributed to research in topics: RHOA & Proto-oncogene tyrosine-protein kinase Src. The author has an hindex of 61, co-authored 210 publications receiving 15343 citations. Previous affiliations of Klaus M. Hahn include University of California, Berkeley & University of California, San Diego.

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A biosensor generated via high-throughput screening quantifies cell edge Src dynamics

TL;DR: A biosensor based on an engineered fibronectin monobody scaffold that can be tailored to bind different targets via high throughput screening that minimizes cell perturbation and sensitivity is enhanced by direct dye excitation.
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CTL Escape Viral Variants: I. Generation and Molecular Characterization

TL;DR: Production of biologically relevant CTL escape virus variants in vivo requires selection of mutations in more than one and likely all the CTL epitopes, a low probability event.
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Optogenetic approaches to cell migration and beyond

TL;DR: This review provides a survey of non-channel proteins that have been engineered for optogenetics, using existing molecules to illustrate the advantages and disadvantages of the many imaginative new approaches that the reader can use to create light-controlled proteins.
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Advances in molecular labeling, high throughput imaging and machine intelligence portend powerful functional cellular biochemistry tools.

TL;DR: A collection of prospectives is presented to provide a glimpse of the techniques that will aid in collecting, managing and utilizing information on complex cellular processes via molecular imaging tools, including: visualizing intracellular protein activity with fluorescent markers, high throughput (and automated) imaging of multilabeled cells in statistically significant numbers, and machine intelligence to analyze subcellular image localization and pattern.