4.7 Article

Critical assessment of structure-based approaches to improve protein resistance in aqueous ionic liquids by enzyme-wide saturation mutagenesis

Journal

Publisher

ELSEVIER
DOI: 10.1016/j.csbj.2021.12.018

Keywords

Protein engineering; Protein stability; Ionic liquids; Site-saturation mutagenesis; Bacillus subtilis lipase A

Funding

  1. Juelich-Aachen Research Alliance Center for Simulation and Data Science (JARA-CSD) School for Simulations and Data Science (SSD)
  2. German Federal Ministry of Education and Research (BMBF) [031B0837A]
  3. German Research Foundation (DFG) [INST 208/704-1 FUGG, INST 208/654-1 FUGG]
  4. state of North-Rhine Westphalia (NRW)
  5. European Regional Development Fund (EFRE) [34-EFRE-0300096]

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The study evaluated different methods to increase enzyme resistance to aqueous ionic liquids (aIL). Most of the methods showed low prediction precision, but using experimental information and predictions of structural weak spots improved the precision. Combining physicochemical and evolutionary properties also increased the accuracy. Finally, combining these methods further improved the prediction precision.
Ionic liquids (IL) and aqueous ionic liquids (aIL) are attractive (co-)solvents for green industrial processes involving biocatalysts, but often reduce enzyme activity. Experimental and computational methods are applied to predict favorable substitution sites and, most often, subsequent site-directed surface charge modifications are introduced to enhance enzyme resistance towards aIL. However, almost no studies evaluate the prediction precision with random mutagenesis or the application of simple data-driven filtering processes. Here, we systematically and rigorously evaluated the performance of 22 previously described structure-based approaches to increase enzyme resistance to aIL based on an experimental complete site-saturation mutagenesis library of Bacillus subtilis Lipase A (BsLipA) screened against four aIL. We show that, surprisingly, most of the approaches yield low gain-in-precision (GiP) values, particularly for predicting relevant positions: 14 approaches perform worse than random mutagenesis. Encouragingly, exploiting experimental information on the thermostability of BsLipA or structural weak spots of BsLipA predicted by rigidity theory yields GiP = 3.03 and 2.39 for relevant variants and GiP = 1.61 and 1.41 for relevant positions. Combining five simple-to-compute physicochemical and evolutionary properties substantially increases the precision of predicting relevant variants and positions, yielding GiP = 3.35 and 1.29. Finally, combining these properties with predictions of structural weak spots identified by rigidity theory additionally improves GiP for relevant variants up to 4-fold to similar to 10 and sustains or increases GiP for relevant positions, resulting in a prediction precision of similar to 90% compared to similar to 9% in random mutagenesis. This combination should be applicable to other enzyme systems for guiding protein engineering approaches towards improved aIL resistance. (C) 2021 The Authors. Published by Elsevier B.V. on behalf of Research Network of Computational and Structural Biotechnology.

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