Literature DB >> 29897777

Computational Design To Reduce Conformational Flexibility and Aggregation Rates of an Antibody Fab Fragment.

Cheng Zhang1, Maariyah Samad1, Haoran Yu1, Nesrine Chakroun1, David Hilton1, Paul A Dalby1.   

Abstract

Computationally guided semirational design has significant potential for improving the aggregation kinetics of protein biopharmaceuticals. While improvement in the global conformational stability can stabilize proteins to aggregation under some conditions, previous studies suggest that such an approach is limited, because thermal transition temperatures ( Tm) and the fraction of protein unfolded ( fT) tend to only correlate with aggregation kinetics where the protein is incubated at temperatures approaching the Tm. This is because under these conditions, aggregation from globally unfolded protein becomes dominant. However, under native conditions, the aggregation kinetics are presumed to be dependent on local structural fluctuations or partial unfolding of the native state, which reveal regions of high propensity to form protein-protein interactions that lead to aggregation. In this work, we have targeted the design of stabilizing mutations to regions of the A33 Fab surface structure, which were predicted to be more flexible. This Fab already has high global stability, and global unfolding is not the main cause of aggregation under most conditions. Therefore, the aim was to reduce the conformational flexibility and entropy of the native protein at various locations and thus identify which of those regions has the greatest influence on the aggregation kinetics. Highly dynamic regions of structure were identified through both molecular dynamics simulation and B-factor analysis of related X-ray crystal structures. The most flexible residues were mutated into more stable variants, as predicted by Rosetta, which evaluates the ΔΔ GND for each potential point mutation. Additional destabilizing variants were prepared as controls to evaluate the prediction accuracy and also to assess the general influence of conformational stability on aggregation kinetics. The thermal conformational stability, and aggregation rates of 18 variants at 65 °C, were each examined at pH 4, 200 mM ionic strength, under which conditions the initial wild-type protein was <5% unfolded. Variants with decreased Tm values led to more rapid aggregation due to an increase in the fraction of protein unfolded under the conditions studied. As expected, no significant improvements were observed in the global conformational stability as measured by Tm. However, 6 of the 12 stable variants led to an increase in the cooperativity of unfolding, consistent with lower conformational flexibility and entropy in the native ensemble. Three of these had 5-11% lower aggregation rates, and their structural clustering indicated that the local dynamics of the C-terminus of the heavy chain had a role in influencing the aggregation rate.

Entities:  

Keywords:  Fab; aggregation; cooperativity; entropy; global unfolding; melting temperature (Tm); molecular dynamics; mutagenesis; protein engineering; thermal stability

Mesh:

Substances:

Year:  2018        PMID: 29897777     DOI: 10.1021/acs.molpharmaceut.8b00186

Source DB:  PubMed          Journal:  Mol Pharm        ISSN: 1543-8384            Impact factor:   4.939


  5 in total

1.  Exploiting correlated molecular-dynamics networks to counteract enzyme activity-stability trade-off.

Authors:  Haoran Yu; Paul A Dalby
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2.  The uniqueness of flow in probing the aggregation behavior of clinically relevant antibodies.

Authors:  Leon F Willis; Amit Kumar; Tushar Jain; Isabelle Caffry; Yingda Xu; Sheena E Radford; Nikil Kapur; Maximiliano Vásquez; David J Brockwell
Journal:  Eng Rep       Date:  2020-03-15

Review 3.  Toward Drug-Like Multispecific Antibodies by Design.

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Journal:  Int J Mol Sci       Date:  2020-10-12       Impact factor: 5.923

4.  Comparison of the pH- and thermally-induced fluctuations of a therapeutic antibody Fab fragment by molecular dynamics simulation.

Authors:  Cheng Zhang; Nuria Codina; Jiazhi Tang; Haoran Yu; Nesrine Chakroun; Frank Kozielski; Paul A Dalby
Journal:  Comput Struct Biotechnol J       Date:  2021-05-04       Impact factor: 7.271

5.  Machine learning reveals hidden stability code in protein native fluorescence.

Authors:  Hongyu Zhang; Yang Yang; Cheng Zhang; Suzanne S Farid; Paul A Dalby
Journal:  Comput Struct Biotechnol J       Date:  2021-04-28       Impact factor: 7.271

  5 in total

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