J 2019

Computational Design of Stable and Soluble Biocatalysts

MUSIL, Miloš, Hannes KONEGGER, Jiří HON, David BEDNÁŘ, Jiří DAMBORSKÝ et. al.

Basic information

Original name

Computational Design of Stable and Soluble Biocatalysts

Authors

MUSIL, Miloš (203 Czech Republic, belonging to the institution), Hannes KONEGGER (40 Austria, belonging to the institution), Jiří HON (203 Czech Republic, belonging to the institution), David BEDNÁŘ (203 Czech Republic, belonging to the institution) and Jiří DAMBORSKÝ (203 Czech Republic, guarantor, belonging to the institution)

Edition

ACS Catalysis, Washington, D.C. American Chemical Society, 2019, 2155-5435

Other information

Language

English

Type of outcome

Article in a journal

Country of publisher

United States of America

Confidentiality degree

is not subject to a state or trade secret

References:

RIV identification code

RIV/00216224:14310/19:00113346

Organization

Přírodovědecká fakulta – Repository – Repository

UT WoS

000458707000028

EID Scopus

2-s2.0-85059802317

Keywords in English

aggregation; computational design; force field; expressibility; machine learning; phylogenetic analysis; enzyme stability; enzyme solubility

Links

EF16_013/0001761, research and development project. LM2015047, research and development project. LM2015051, research and development project. LM2015055, research and development project.
Changed: 16/2/2023 04:23, RNDr. Daniel Jakubík

Abstract

V originále

Natural enzymes are delicate biomolecules possessing only marginal thermodynamic stability. Poorly stable, misfolded, and aggregated proteins lead to huge economic losses in the biotechnology and biopharmaceutical industries. Consequently, there is a need to design optimized protein sequences that maximize stability, solubility, and activity over a wide range of temperatures and pH values in buffers of different composition and in the presence of organic cosolvents. This has created great interest in using computational methods to enhance biocatalysts' robustness and solubility. Suitable methods include (i) energy calculations, (ii) machine learning, (iii) phylogenetic analyses, and (iv) combinations of these approaches. We have witnessed impressive progress in the design of stable enzymes over the last two decades, but predictions of protein solubility and expressibility are scarce. Stabilizing mutations can be predicted accurately using available force fields, and the number of sequences available for phylogenetic analyses is growing. In addition, complex computational workflows are being implemented in intuitive web tools, enhancing the quality of protein stability predictions. Conversely, solubility predictors are limited by the lack of robust and balanced experimental data, an inadequate understanding of fundamental principles of protein aggregation, and a dearth of structural information on folding intermediates. Here we summarize recent progress in the development of computational tools for predicting protein stability and solubility, critically assess their strengths and weaknesses, and identify apparent gaps in data and knowledge. We also present perspectives on the computational design of stable and soluble biocatalysts.

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