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Ramona Gruetzner

Researcher at Leibniz Association

Publications -  11
Citations -  3172

Ramona Gruetzner is an academic researcher from Leibniz Association. The author has contributed to research in topics: Golden Gate Cloning & Synthetic biology. The author has an hindex of 8, co-authored 11 publications receiving 2516 citations.

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Golden gate shuffling: a one-pot DNA shuffling method based on type IIs restriction enzymes.

TL;DR: It is shown that one round of shuffling using the 27trypsinogen entry plasmids can easily produce the 19,683 different possible combinations in one single restriction-ligation and that expression screening of a subset of the library allows identification of variants that can lead to higher expression levels of trypsin activity.
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A Modular Cloning System for Standardized Assembly of Multigene Constructs

TL;DR: A hierarchical modular cloning system that allows the creation at will and with high efficiency of any eukaryotic multigene construct, starting from libraries of defined and validated basic modules containing regulatory and coding sequences.
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A Golden Gate Modular Cloning Toolbox for Plants

TL;DR: A versatile resource for plant biologists comprising a set of cloning vectors and 96 standardized parts to enable Golden Gate construction of multigene constructs for plant transformation is presented.
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Assembly of Designer TAL Effectors by Golden Gate Cloning

TL;DR: This work presents here a strategy for engineering of TALE proteins with novel DNA binding specificities based on the 17.5 repeat-containing AvrBs3 TALE as a scaffold, and assembled designer TALEs with new target specificities and tested their function in vivo.
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Fast track assembly of multigene constructs using Golden Gate cloning and the MoClo system

TL;DR: New features of this cloning system are presented that allow to increase the speed of assembly of multigene constructs and should be useful for generating the multiple construct variants that will be required for developing gene networks encoding novel functions, and fine-tuning the expression levels of the various genes involved.