Development of a Quantum Mechanical Computational Model for the Catalytic Active Site of Sulfite Oxidase

Development of a Quantum Mechanical Computational Model for the Catalytic Active Site of Sulfite Oxidase

Author: Lindsay S. Farr

Publisher:

Published: 2022

Total Pages: 0

ISBN-13:

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The molybdenum-containing sulfite oxidase enzyme is a mitochondrial protein that catalyzes the terminal step in sulfur containing amino acid degradation. It is a highly conserved enzyme across all eukaryotic organisms, excluding yeasts. In humans, the oxidation reaction catalyzed by sulfite oxidase is essential for infant development, and a rare genetic disease occurs in the absence of a functional sulfite oxidase. The structural and mechanistic details of this enzyme are currently ambiguous. Previous computational approaches have failed to provide details of the mechanism or establish the validity of their computational model. Here, we investigate the complex active site environment of the enzyme using computational tools and report a realistic in silico model. In agreement with previous model developments for molybdenum containing enzymes by the Biswas Research Lab, we have emphasized the importance of secondary and third sphere residues on the geometric structures of the active site. We investigated three distinct models and propose that our model 3 (~248 atoms) is a realistic computational model for SO. These models are developed using a systematic approach of model growth to include all necessary second and third sphere residues. We also investigate the proton network of the active site by allowing different protonation states of certain residues within the proximity of the site of reaction. We are in the process of validating this model using experimental data (such as redox potential). The catalytic mechanism of SO may be more reliably investigated with our proposed quantum mechanical model once the model is validated using experimental data.


From Enzyme Models to Model Enzymes

From Enzyme Models to Model Enzymes

Author: Anthony John Kirby

Publisher: Royal Society of Chemistry

Published: 2009

Total Pages: 286

ISBN-13: 0854041753

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Designing artificial systems with catalytic efficiencies to rival those of natural enzymes is one of the great challenges facing science today. This introduction to the exciting area of artificial enzymes is suitable for both students and more senior researchers.


Multi-scale Quantum Models for Biocatalysis

Multi-scale Quantum Models for Biocatalysis

Author: Darrin M. York

Publisher: Springer Science & Business Media

Published: 2009-05-30

Total Pages: 426

ISBN-13: 1402099568

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“Multi-scale Quantum Models for Biocatalysis” explores various molecular modelling techniques and their applications in providing an understanding of the detailed mechanisms at play during biocatalysis in enzyme and ribozyme systems. These areas are reviewed by an international team of experts in theoretical, computational chemistry, and biophysics. This book presents detailed reviews concerning the development of various techniques, including ab initio molecular dynamics, density functional theory, combined QM/MM methods, solvation models, force field methods, and free-energy estimation techniques, as well as successful applications of multi-scale methods in the biocatalysis systems including several protein enzymes and ribozymes. This book is an excellent source of information for research professionals involved in computational chemistry and physics, material science, nanotechnology, rational drug design and molecular biology and for students exposed to these research areas.


Computer Simulations of Enzymes

Computer Simulations of Enzymes

Author: Jianzhuang Yao

Publisher:

Published: 2014

Total Pages: 244

ISBN-13:

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Enzymes are important catalysts in living systems, and understanding catalytic mechanisms of enzymes is an important task for modern biophysics and biochemistry. Computer simulations have emerged as very useful tools for understanding how enzymes work. In this dissertation, QM/MM MD simulations were applied to study the catalytic mechanisms of several enzymes, including sedolisin, S-adenosyl-L-methionine (AdoMet)-dependent methyltransferases, and salicylic acid binding protein 2. For sedolisin, we focus on the acylation and deacylation reactions catalyzed by the enzymes. We proposed a general acid/base mechanism involving the Glu/Asp residues at the active site. MD and QM/MM free energy simulations on pro-kumamolisin show that the protonation of Asp164 would be able to trigger conformational changes and generate the functional active site for autocatalysis. The free energy simulations reported for SAMT, an AdoMet-dependent methyltransferase, showed that while the structure of the reactant complex containing salicylate, its natural substrate, is rather close to the corresponding TS structure, this is not the case for 4-hydroxybenzoate. The simulations demonstrated that additional energy is required to generate the TS-like structure for 4-hydroxybenzoate, consistent with the low activity of the enzyme toward this substrate. For protein lysine methyltransferase SET7/9, we showed that while the wild type SET7/9 may act like a mono-methylase, the Y245→A mutation could increase the ability of SET7/9 to add two more methyl groups on the target lysine. The substrate specificity of salicylic acid binding protein 2 (SABP2) has also been studied during my graduate study. This enzyme has promiscuous esterase activity toward a series of substrates, but shows high activity toward its natural substrate methyl salicylate (MeSA). We demonstrated that SABP2 seems to represent a case in which the enzyme itself might have not been perfectly evolved and that substrate-assisted catalysis (SAC) involving its natural substrate may be used to enhance the activity and achieve substrate discrimination. In addition to enzymes, the prediction of protein-protein interactions (PPI) is also included in my dissertation. We established a robust pipeline for PPI prediction by integrating multiple classifiers using random forests algorithm. This pipeline could be very useful for predicting PPI.


Computational Approaches to Understand the Atomistic Drivers of Enzyme Catalysis

Computational Approaches to Understand the Atomistic Drivers of Enzyme Catalysis

Author: Natasha Seelam

Publisher:

Published: 2021

Total Pages: 213

ISBN-13:

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Enzymes readily perform chemical reactions several orders of magnitude faster than their uncatalyzed versions in ambient conditions with high specificity, making them attractive design targets for industrial purposes. Traditionally, enzyme reactivity has been contextualized through transition-state theory (TST), in which catalytic strategies are described by their ability to minimize the activation energy to cross the reaction barrier through a combination of ground-state destabilization (GSD) and transition-state stabilization (TSS). While excellent progress has been made to rationally design enzymes, the complexity of the design space and the highly optimized nature of enzymes make general application of these approaches difficult. This thesis presents a set of computational methods and applications in order to investigate the larger perspective of enzyme-assisted kinetic processes. For the first part of the thesis, we analyzed the energetics and dynamics of proficient catalyst orotidine 5'-monophosphate decarboxylase (OMPDC), an enzyme that catalyzes decarboxylation nearly 17 orders of magnitude more proficiently than the uncatalyzed reaction in aqueous solvent. Potential-of-mean-force (PMF) calculations on wild type (WT) and two catalytically hindered mutants, S127A and V155D (representing TSS and GSD, respectively), characterized the energy barriers associated with decarboxylation as a function of two parameters: the distance between the breaking C–C bond and a proton-transfer coordinate from the nearby side chain of K72, a conserved lysine in the active site. Coupling PMF analyses with transition path sampling (TPS) approaches revealed two distinct decarboxylation strategies: a simultaneous, K72-assisted pathway and a stepwise, relatively K72-independent pathway. Both PMF and TPS rate calculations reasonably reproduced the empirical differences in relative rates between WT and mutant systems, suggesting these approaches can enable in silico inquiry into both pathway and mechanism identification in enzyme kinetics. For the second study, we investigated the electronic determinants of reactivity, using the enzyme ketol-acid reductoisomerase (KARI). KARI catalyzes first a methyl isomerization and then reduction with an active site comprised of several polar residues, two magnesium divalent cations, and NADPH. This study focused on isomerization, which is rate limiting, with two objectives: characterization of chemical mechanism in successful catalytic events (“reactive”) versus failed attempts to cross the barrier ("non-reactive"), and the interplay between atomic positions, electronic descriptors, and reactivity. Natural bonding orbital (NBO) analyses provided detailed electronic description of the dynamics through the reaction and revealed that successful catalytic events crossed the reaction barrier through a 3-center-2-electron (3C) bond, concurrent to isomerization of hydroxyl/carbonyls on the substrate. Interestingly, the non-reactive ensemble adopted a similar electronic pathway as the reactive ensemble, but its members were generally unable to form and sustain the 3C bond. Supervised machine learning classifiers then identified small subsets of geometric and electronic descriptors, “features”, that predicted reactivity; our results indicated that fewer electronic features were able to predict reactivity as effectively as a larger set of geometric features. Of these electronic features, the models selected diverse descriptors representing several facets of the chemical mechanism (charge, breaking–bond order, atomic orbital hybridization states, etc.). We then inquired how geometric features reported on electronic features with classifiers that leveraged pairs of geometric features to predict the relative magnitude of each electronic feature. Our findings indicated that the geometric, pair-feature models predicted electronic structure with comparable performance as cumulative geometric models, suggesting small subsets of features were capable of reporting on electronic descriptors, and that different subsets could be leveraged to describe various aspects of a chemical mechanism. Lastly, we revisited OMPDC in order to learn the key geometric features that distinguished between the simultaneous and stepwise pathways of decarboxylation, aggregating and labeling pathways drawn from WT and mutant systems ensembles. We leveraged classifiers that predicted between reactive pathways by selecting small subsets of structural features from 620 geometric features comprised of atoms from the active site. The classifiers performed comparably, with greater than 80% testing accuracy and AUC, between times starting from in the reactant basin to 30 fs into crossing the reaction barrier. Remarkably, model-selected features reported on chemically meaningful interactions despite no explicit prior knowledge of the mechanism in training. To illustrate this, we focused analyses on two particular features shown to be predictive while in the reactant basin, prior to crossing the barrier: a potential hydrogen-bond between D75*, an aspartate in the active site, and the 2'-hydroxyl of OMP, and electrostatic repulsion through the proximity of a different aspartate, D70, to the leaving group carboxylate of OMP. Analysis between the simultaneous and stepwise ensembles demonstrated that the simultaneous ensemble adopted shorter distances for both features, generally suggesting stronger interactions. Both features were additionally shown to be associated with the ability to distort the planarity of the orotidyl ring, where shorter distances for either feature were correlated with larger degrees of distortion. Taken together, this suggested the simultaneous ensemble was more effective at distorting the ground state structure prior to crossing the reaction barrier.


Radical SAM Enzymes

Radical SAM Enzymes

Author:

Publisher: Academic Press

Published: 2018-08-09

Total Pages: 0

ISBN-13: 9780128127940

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Radical SAM Enzymes, Volume 606, the latest release in the Methods in Enzymology series, highlights new advances in the field, with this new volume presenting interesting chapters on the Characterization of the glycyl radical enzyme choline trimethylamine-lyase and its radical S-adenosylmethionine activating enzyme, Diphathimide biosynthesis, Radical SAM glycyl radical activating enzymes, Radical SAM enzyme BioB in the biosynthesis of biotin, Biogenesis of the PQQ cofactor, Role of MoaAC in the biogenesis of the molybdenum cofactor, Biosynthesis of the nitrogenase cofactor, Bioinformatics of the radical SAM superfamily, The involvement of SAM radical enzymes in the biosynthesis of methanogenic coenzymes, methanopterin and coenzyme F420, and more.