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Structural Modeling and In Silico Analysis of Human Superoxide Dismutase 2

Abstract

Aging in the world population has increased every year. Superoxide dismutase 2 (Mn-SOD or SOD2) protects against oxidative stress, a main factor influencing cellular longevity. Polymorphisms in SOD2 have been associated with the development of neurodegenerative diseases, such as Alzheimer’s and Parkinson’s disease, as well as psychiatric disorders, such as schizophrenia, depression and bipolar disorder. In this study, all of the described natural variants (S10I, A16V, E66V, G76R, I82T and R156W) of SOD2 were subjected to in silico analysis using eight different algorithms: SNPeffect, PolyPhen-2, PhD-SNP, PMUT, SIFT, SNAP, SNPs&GO and nsSNPAnalyzer. This analysis revealed disparate results for a few of the algorithms. The results showed that, from at least one algorithm, each amino acid substitution appears to harmfully affect the protein. Structural theoretical models were created for variants through comparative modelling performed using the MHOLline server (which includes MODELLER and PROCHECK) and ab initio modelling, using the I-Tasser server. The predicted models were evaluated using TM-align, and the results show that the models were constructed with high accuracy. The RMSD values of the modelled mutants indicated likely pathogenicity for all missense mutations. Structural phylogenetic analysis using ConSurf revealed that human SOD2 is highly conserved. As a result, a human-curated database was generated that enables biologists and clinicians to explore SOD2 nsSNPs, including predictions of their effects and visualisation of the alignment of both the wild-type and mutant structures. The database is freely available at http://bioinfogroup.com/database and will be regularly updated.

Introduction

Although aging is a multifactorial process, there is significant evidence that shows that oxidative stress is one of the main factors that influences cellular longevity. Interest in the factors that determine longevity has grown recently because the life expectancy of the world population is increasing. Additionally, in many countries, the main causes of death are currently comorbidities connected to age and oxidative stress.

Superoxide dismutases (SODs) protect against oxidative stress and have three forms: Cu-Zn SOD (SOD1), located in the cytosol; Mn-SOD (SOD2), located in the mitochondrial matrix; and extracellular SOD (SOD3) [1]. The disproportionate rate of intrauterine death and early fatality in Mn-SOD knock-out animals demonstrated the importance of Mn-SOD, rather than SOD1 and SOD3, in foetal development. [1].

The first 24 amino acids of Mn-SOD are the mitochondrial targeting sequence (MTS), which guides and docks the Mn-SOD protein to mitochondria. [1].

Polymorphisms in SOD2 have been associated with the development of neurodegenerative diseases, such as Alzheimer’s [2] (A16V) and Parkinson’s disease [3] [4] [1] (A16V and I82T), as well as psychiatric disorders, such as schizophrenia [5], depression [6] and bipolar disorder [7]. Similarly, clinical trials showed improvement in symptoms in response to treatment with the glutathione precursor NAC in patients with schizophrenia and bipolar disorder [8] [9], suggesting that defects in the oxidative stress pathway may contribute to the pathogenesis of various diseases and symptoms. Studies suggest that the effects of all natural variants may primarily reflect functional polymorphism of mitochondrial transport of human MnSOD. As oxidative damage is believed to be an important factor in the pathogenesis of all of these diseases, all of the known variants could possibly contribute to the associated risks. The knowledge of their molecular basis facilitates the diagnosis and design of new drugs.

In this study, we collected the natural variants of SOD2 for in silico analysis, which can determine whether these variants influence the protein’s three-dimensional structure or stability. Structural theoretical models were created for the variants using comparative modelling performed in MHOLline [10]. MHOLline includes a set of programmes for protein structure analysis, including MODELLER [11] and PROCHECK [12]. I-Tasser [13] was used for ab initio modelling. Afterwards, the predicted models were aligned to the wild-type PDB structure using TM-align [14]. Possible effects of the missense variants on protein function could be inferred using bioinformatics tools designed specifically for these types of interpretation, such as PolyPhen-2 [15]. Because of the importance of understanding which variants are disease-related, programmes such as SNPeffect [16], PhD-SNP [17], PMUT [18], SIFT [19], SNAP [20] [21], SNPs&GO [22] and nsSNPAnalyzer [23] were utilised to predict whether a given single-point protein mutation affected the protein function.

As a result, a database was generated for biologists and clinicians to explore SOD2 nsSNPs and the resulting changes in structure and function. This database is freely available at http://bioinfogroup.com/database/and will be regularly updated.

Materials and Methods

Sequence Retrieval

The sequence and natural variants of Mn-SOD were retrieved from the UniProt database.

Non-synonymous SNP Analysis

The functional effects of non-synonymous single-nucleotide substitutions (nsSNPs) were predicted using the following programmes: PhD-SNP [17], PMUT [18], PolyPhen-2 [15], SIFT (Sorting Intolerant from Tolerant) [19], SNAP [20], [21], SNPs&GO [22] and nsSNPAnalyzer [23]. SNPeffect [16] was used to evaluate aggregation tendency (TANGO), amyloid propensity (WALTZ), chaperone binding tendency (LIMBO) and protein stability (FoldX).

Comparative and ab initio Modelling

The mutant (E66V, G76R, I82T and R156W) models were built using the MHOLline workflow [10] with the crystallographic structure of human SOD2 (PDB ID: 1LUV) as the template. I-Tasser was utilised for the ab initio modelling of the S10I and A16V mutants [13]. The TM-scores and root mean square deviations (RMSDs) of the mutant structures with respect to the wild-type structure were calculated using TM-Align [14].

Structural Phylogenetic Analysis

ConSurf was used for high-throughput characterisation of the functional regions in the protein [24]. The degree of conservation of the amino-acid sites among 50 homologues with similar sequences was estimated. The conservation grades were projected onto the molecular surface of the human SOD2 to reveal the patches with highly conserved residues that are often important for biological function.

SOD2 Database Construction

The natural variants listed in the database come from UniProt. For each SNP, we provide predictions of the function effects using SNPeffect, PolyPhen-2, PhD-SNP, PMUT, SIFT, SNAP, SNPs&GO and nsSNPAnalyzer.

The database is web-accessible and can show the following in a comparative table: mutant name; a visualisation of the aligned structures and the predicted functional effects.

Results and Discussion

Sequence Retrieval

The protein sequence and the natural variants of Mn-SOD were retrieved from the UniProt database [25]. The UniProt ID is P04179, and currently, there are natural variants described at six positions. The positions, the substitutions and their references in UniProt are shown in Table 1.

Non-synonymous SNP Analysis

The Mn-SOD variants were subjected to a variety of in silico SNP analyses. The results of the non-synonymous SNP analyses are shown in Table 2.

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Table 2. Predictions of the effect of the missense variations on SOD2 protein function.

https://doi.org/10.1371/journal.pone.0065558.t002

The SNPeffect workflow evaluates aggregation tendency (TANGO), amyloid propensity (WALTZ), chaperone binding tendency (LIMBO) and protein stability (FoldX). The natural variant E66V slightly enhances the protein stability, in contrast with the G76R variant, which reduces the protein stability. The I82T variant decreases the chaperone binding tendency, and the R156W variant slightly reduces the protein stability.

According to PhD-SNP, variants S10I, A16V, G76R and I82T are neutral, whereas variants E66V and R156W cause disease.

The PMUT analysis indicates that the natural variants S10I, E66V and I82T are neutral and that A16V, G76R and R156W are pathological.

The PolyPhen-2 results show that, of the six variants, only E66V may cause damage and that all of the others are benign.

According to SIFT (Sorting Intolerant from Tolerant), tolerance was predicted for the natural variants S10I, A16V, E66V and G76R. I82T and R156W were predicted to affect protein function. The SNAP analysis indicates that variants S10I, G76R and I82T are non-neutral and that A16V, E66V and R156W are neutral.

According to SNPs&GO, variants S10I, G76R, I82T and R156W cause disease, and A16V and E66V are neutral.

The nsSNPAnalyzer results demonstrate that variants S10I and A16V are unknown and variants E66V and G76R cause disease. In contrast, I82T and R156W are neutral.

The SNP analysis, shown in Table 2, indicates that none of the natural variants have only positive results. For each single mutation, at least one algorithm indicates a harmful effect on the protein. This result demonstrates the importance of using different algorithms because each algorithm uses different parameters to evaluate the effects of natural variants.

Comparative and ab initio Modelling

The natural variants were substituted into the wild-type sequence for comparative modelling. These sequences were submitted to the MHOLline workflow [10]. The theoretical models generated using MHOLline are presented in Figure 1.

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Figure 1. Superimposed native structures (green) and mutant structures (blue) of the SOD2 produced using comparative modelling.

A) mutation E66V (E42V), RMSD: 0.21; B) mutation G76R (G52R), RMSD: 0.38; C) mutation I82T (I58T), RMSD: 0.45; D) mutation R156W (R132W), RMSD: 0.16.

https://doi.org/10.1371/journal.pone.0065558.g001

Figure 2 shows the two chains of SOD2 (PDB ID: 1LUV), four mutations (the ones that are not in the signal peptide) and the binding site for manganese. This figure indicates that 3 of the variants localise in the interaction surfaces of chains A and B. This localisation may adversely influence dimer formation, especially the I58T mutation, which affects the stability of the tetrameric (dimer-dimer) interface [26].

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Figure 2. 3D structure of human SOD2 with four missense mutation sites.

Two subunits are represented as a backbone in green and blue. Four mutation sites are shown in a sphere representation: E66V, G76R, I82T and R156. The manganese binding site is shown in ball-stick form.

https://doi.org/10.1371/journal.pone.0065558.g002

An alignment between the native and mutant structures was performed using TM-Align [14]. Parameters such as the TM-score and root mean square deviation (RMSD) were used to analyse the topology and structural similarity of the models. TM-score was used to assess the topological similarity of two protein structures, while RMSD was the measure of the average distance between the backbones of the superimposed proteins [27]. The RMSD values for the modelled mutants were significant for pathogenicity for all missense mutations (Figure 1 and Table 3). RMSD values greater than 0.15 were considered significant structural perturbations that could have functional implications for the protein [28].

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Table 3. Structure alignment comparing mutant models and wild-type SOD2 models.

https://doi.org/10.1371/journal.pone.0065558.t003

To analyse the three-dimensional effects of the S10I and A16V mutations, which are located in the signal peptide, ab initio modelling was necessary because the signalling sequence cannot be resolved experimentally. The I-Tasser server [13] was utilised for the ab initio modelling. As shown in Figure 3 and Table 4, the structural alignment of the ab initio mutant models and the ab initio native models reveals that the S10I and A16V mutations exhibited high RMSD values and disrupted the alpha helix in the signal peptide.

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Figure 3. Superimposed native structures (green) and mutant structures (blue) of the SOD2 produced using ab initio modelling.

A) S10I (S-15I) mutation highlighted in red. B) This mutation disrupts the alpha helix, RMSD: 2.02. C) A16V (A-9V) mutation highlighted in red. D) This mutation disrupts the alpha helix, RMSD: 1.94.

https://doi.org/10.1371/journal.pone.0065558.g003

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Table 4. Structure alignment of ab initio SOD2 mutant models with the ab initio wild-type model.

https://doi.org/10.1371/journal.pone.0065558.t004

Structural Phylogenetic Analysis

The ConSurf [24] results are based on the concept of identify functional regions in proteins, taking into account by considering the evolutionary relationships among their sequence homologues. An advantage of ConSurf over other methods is the accurate computation of the evolutionary rate using either an empirical Bayesian method or a maximum likelihood method. Thus, ConSurf can correctly discriminate between the conservation caused by a short evolutionary time and genuine sequence conservation. The surface residues with the most variation are depicted in blue, and the conserved residues are depicted in purple in the protein structures (Figure 4). Our findings revealed that human SOD2 is highly conserved (Figure 4). The sequence alignment of the SOD2 from various species (Figure 5) reveals that residues E66 and G76 are conserved, whereas I82 and R156 are variable.

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Figure 4. Conservation profile of the Mn-SOD (PDB ID: 1LUV) using ConSurf conservational analysis.

Mn-SOD is represented as a spacefill model, where the residue conservation scored is colour-coded onto the surface. The backbone model represents the other chain of a Mn-SOD dimer, chain B. The colour-coding bar shows the colouring scheme: conserved amino acids are coloured bordeaux, residues with average conservation are white, and variable amino acids are turquoise.

https://doi.org/10.1371/journal.pone.0065558.g004

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Figure 5. Multiple protein sequence alignment using ConSurf shows evolutionary conservation of amino acid residues.

The colour-coding bar shows the colouring scheme: conserved amino acids are coloured bordeaux, residues of average conservation are white, and variable amino acids are turquoise. SNP positions are marked by an asterisk.

https://doi.org/10.1371/journal.pone.0065558.g005

The conservation analysis of ConSurf used the evolutionary conservation scores of the residues to identify functional regions from proteins with known three-dimensional structures. The degree of conservation of the amino acid sites among the nine homologues with similar sequences (Figure 5) was estimated. The conservation grades were projected onto the molecular surface of the proteins to reveal the patches of highly conserved residues that are often important for biological function. Mutations E66 and G76 are conserved, whereas mutations I82 and R156 are variable. Generally, residues that are implicated in biological processes, such as those located in active sites, involved in protein-protein or protein-ligand interactions, or implicated in protein structure and folding stability, are subject to greater selective pressure and are usually more conserved than other residues.

SOD2 Database

The SOD2 database currently contains all of the natural variants listed in UniProt. For each SNP, we provide the predictions of functional effects, indicated as Disease/Pathological or Neutral/Tolerated, from SNPeffect, PolyPhen-2, PhD-SNP, PMUT, SIFT, SNAP, SNPs&GO and nsSNPAnalyzer.

The database interface (Figure 6) allows users to search for a mutation by its non-synonymous SNP.

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Figure 6. Screenshot of the SOD2 Database web interface for structural modelling and comparative analysis.

https://doi.org/10.1371/journal.pone.0065558.g006

The database is curated by humans and will be updated as new natural variants are discovered.

The SOD2 database allows a user to quickly retrieve and rapidly analyse the predicted effects of protein variants. In addition to predicting the effects of variants, an alignment of the wild-type and mutant structures can be visualised using the database.

The major feature that distinguishes the SOD2 database from other databases is that this database can use predictions from several algorithms for all of the known natural variants of Mn-SOD. Furthermore, the user has access to an alignment of the wild type and mutant structures and can thus visualise the damage that a SNP can cause. Our ultimate goal is to turn the database into a toolbox for researchers studying this protein. The in silico analysis of Mn-SOD in this database will help in the design and prioritisation of further experimental research.

Author Contributions

Conceived and designed the experiments: MDCC JFM. Performed the experiments: MDCC. Analyzed the data: MDCC JFM. Contributed reagents/materials/analysis tools: JFM. Wrote the paper: MDCC JFM.

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