Literature DB >> 34078670

High-throughput developability assays enable library-scale identification of producible protein scaffold variants.

Alexander W Golinski1, Katelynn M Mischler1, Sidharth Laxminarayan1, Nicole L Neurock1, Matthew Fossing1, Hannah Pichman1, Stefano Martiniani1, Benjamin J Hackel2.   

Abstract

Proteins require high developability-quantified by expression, solubility, and stability-for robust utility as therapeutics, diagnostics, and in other biotechnological applications. Measuring traditional developability metrics is low throughput in nature, often slowing the developmental pipeline. We evaluated the ability of 10 variations of three high-throughput developability assays to predict the bacterial recombinant expression of paratope variants of the protein scaffold Gp2. Enabled by a phenotype/genotype linkage, assay performance for 105 variants was calculated via deep sequencing of populations sorted by proxied developability. We identified the most informative assay combination via cross-validation accuracy and correlation feature selection and demonstrated the ability of machine learning models to exploit nonlinear mutual information to increase the assays' predictive utility. We trained a random forest model that predicts expression from assay performance that is 35% closer to the experimental variance and trains 80% more efficiently than a model predicting from sequence information alone. Utilizing the predicted expression, we performed a site-wise analysis and predicted mutations consistent with enhanced developability. The validated assays offer the ability to identify developable proteins at unprecedented scales, reducing the bottleneck of protein commercialization.

Entities:  

Keywords:  developability; predictive modeling; protein engineering

Year:  2021        PMID: 34078670      PMCID: PMC8201827          DOI: 10.1073/pnas.2026658118

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  48 in total

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Authors:  Scott A Lesley; Jim Graziano; Charles Y Cho; Mark W Knuth; Heath E Klock
Journal:  Protein Eng       Date:  2002-02

Review 2.  Stress induced by recombinant protein production in Escherichia coli.

Authors:  Frank Hoffmann; Ursula Rinas
Journal:  Adv Biochem Eng Biotechnol       Date:  2004       Impact factor: 2.635

3.  Computational methods to predict therapeutic protein aggregation.

Authors:  Patrick M Buck; Sandeep Kumar; Xiaoling Wang; Neeraj J Agrawal; Bernhardt L Trout; Satish K Singh
Journal:  Methods Mol Biol       Date:  2012

4.  Assessing computational methods for predicting protein stability upon mutation: good on average but not in the details.

Authors:  Vladimir Potapov; Mati Cohen; Gideon Schreiber
Journal:  Protein Eng Des Sel       Date:  2009-06-26       Impact factor: 1.650

5.  Teaching an old scaffold new tricks: monobodies constructed using alternative surfaces of the FN3 scaffold.

Authors:  Akiko Koide; John Wojcik; Ryan N Gilbreth; Robert J Hoey; Shohei Koide
Journal:  J Mol Biol       Date:  2011-12-16       Impact factor: 5.469

6.  Development of a high-throughput solubility screening assay for use in antibody discovery.

Authors:  Qing Chai; James Shih; Caroline Weldon; Samantha Phan; Bryan E Jones
Journal:  MAbs       Date:  2019-03-26       Impact factor: 5.857

7.  Global analysis of protein folding using massively parallel design, synthesis, and testing.

Authors:  Gabriel J Rocklin; Tamuka M Chidyausiku; Inna Goreshnik; Alex Ford; Scott Houliston; Alexander Lemak; Lauren Carter; Rashmi Ravichandran; Vikram K Mulligan; Aaron Chevalier; Cheryl H Arrowsmith; David Baker
Journal:  Science       Date:  2017-07-14       Impact factor: 47.728

8.  Developability studies before initiation of process development: improving manufacturability of monoclonal antibodies.

Authors:  Xiaoyu Yang; Wei Xu; Svetlana Dukleska; Sabrina Benchaar; Selina Mengisen; Valentyn Antochshuk; Jason Cheung; Leslie Mann; Zulfia Babadjanova; Jason Rowand; Rico Gunawan; Alexander McCampbell; Maribel Beaumont; David Meininger; Daisy Richardson; Alexandre Ambrogelly
Journal:  MAbs       Date:  2013-06-07       Impact factor: 5.857

9.  Biophysical Characterization Platform Informs Protein Scaffold Evolvability.

Authors:  Alexander W Golinski; Patrick V Holec; Katelynn M Mischler; Benjamin J Hackel
Journal:  ACS Comb Sci       Date:  2019-02-18       Impact factor: 3.784

10.  Machine Learning Enables Accurate Prediction of Asparagine Deamidation Probability and Rate.

Authors:  Jared A Delmar; Jihong Wang; Seo Woo Choi; Jason A Martins; John P Mikhail
Journal:  Mol Ther Methods Clin Dev       Date:  2019-10-01       Impact factor: 6.698

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  1 in total

1.  A Platform for Deep Sequence-Activity Mapping and Engineering Antimicrobial Peptides.

Authors:  Matthew P DeJong; Seth C Ritter; Katharina A Fransen; Daniel T Tresnak; Alexander W Golinski; Benjamin J Hackel
Journal:  ACS Synth Biol       Date:  2021-09-10       Impact factor: 5.249

  1 in total

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