20 research outputs found

    Studies on Scaling Throughput in Protein Engineering

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    In this work we present three studies in protein engineering. While all three protein classes that have been targeted for engineering tasks are very different, the studies have a focus on scaling-up the throughput in protein engineering. The first study concerns machine learning (ML) based antibody humanization techniques. Achieving a reduction of patient anti-drug antibody responses in clinical trials is the goal of antibody humanization. To measure this however, one needs to pass significant scientific, bureaucratic, and financial hurdles, which is very rarely done and especially never at scale. Most existing ML-based antibody humanization techniques claim that they work without providing any experimental evidence. We developed Mousify as an in silico antibody humanization platform to place existing models into one framework for wet-laboratory validation. We demonstrate that even the best models have a fundamental flaw in that they only generate a single antibody. We use Mousify and Markov chains to show that using ML-based antibody humanization models for library generation is not only feasible but produces both stable and functional variants. Learning the lessons from our wet-laboratory experiments, we then developed a variational autoencoder model with properties that hopefully improve the outcomes of antibody humanization experiments. In the second study, we outline our plans and initial results to develop a bioelectrocatalytic system for the conversion of N2 to ammonia using nitrogenase. Most of the world’s ammonia is used for agricultural purposes and is produced via the environmentally damaging Haber-Bosch process. Engineering nitrogenase for the bioelectrocatalytic production of ammonia is not trivial and a high throughput is not guaranteed. We present preliminary results in how throughput can be increased through diazotrophic pre-selection of nitrogenase variants, as well as a quest to find the ideal starting point for engineering using a combination of ancestral sequence reconstruction and generative protein language models. In the third and final study we present a directed evolution campaign to evolve protoglobins for the enantioselective catalytic formation of cis-trifluoromethyl substituted cyclopropanes, the first such reaction in both the chemical and biological world. Not only is the enzyme ApePgb LQ capable of efficiently performing carbene insertions into double-bonds, but it also shows a much more diverse substrate scope than similar enantioselective formations of trans-trifluoromethyl substituted cyclopropanes. After demonstrating that ApePgb LQ reactions can be increased to a 1-mmol scale, we investigated the nature of protoglobin cis-selectivity using various computational methods.</p

    An illustrated key to male Actinote from Southeastern Brazil (Lepidoptera, Nymphalidae)

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    Architecture of the linker-scaffold in the nuclear pore

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    Quantitative docking of crystal and single particle cryo-EM structures into low resolution human and S. cerevisiae cryo-ET and X. laevis cryo-EM maps of the nuclear pore complex.Related Publication: Architecture of the linker-scaffold in the nuclear pore Petrovic, Stefan Caltech Samanta, Dipanjan Caltech Perriches, Thibaud Caltech Bley, Christopher Caltech Thierbach, Karsten Caltech Brown, Bonnie Caltech Nie, Si Caltech Mobbs, George Caltech Stevens, Taylor Caltech Liu, Xiaoyu Caltech Tomaleri, Giovani Pinton Caltech Schaus, Lucas Caltech Hoelz, Andre Caltech Science 2022-06-10 https://doi.org/10.1126/science.abm9798 en
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