Literature DB >> 28674640

In-silico prediction and modeling of the Entamoeba histolytica proteins: Serine-rich Entamoeba histolytica protein and 29 kDa Cysteine-rich protease.

Kumar Manochitra1, Subhash Chandra Parija1.   

Abstract

BACKGROUND: Amoebiasis is the third most common parasitic cause of morbidity and mortality, particularly in countries with poor hygienic settings. There exists an ambiguity in the diagnosis of amoebiasis, and hence there arises a necessity for a better diagnostic approach. Serine-rich Entamoeba histolyticaprotein (SREHP), peroxiredoxin and Gal/GalNAc lectin are pivotal in E. histolyticavirulence and are extensively studied as diagnostic and vaccine targets. For elucidating the cellular function of these proteins, details regarding their respective quaternary structures are essential. However, studies in this aspect are scant. Hence, this study was carried out to predict the structure of these target proteins and characterize them structurally as well as functionally using appropriate in-silicomethods.
METHODS: The amino acid sequences of the proteins were retrieved from National Centre for Biotechnology Information database and aligned using ClustalW. Bioinformatic tools were employed in the secondary structure and tertiary structure prediction. The predicted structure was validated, and final refinement was carried out.
RESULTS: The protein structures predicted by i-TASSER were found to be more accurate than Phyre2 based on the validation using SAVES server. The prediction suggests SREHP to be an extracellular protein, peroxiredoxin a peripheral membrane protein while Gal/GalNAc lectin was found to be a cell-wall protein. Signal peptides were found in the amino-acid sequences of SREHP and Gal/GalNAc lectin, whereas they were not present in the peroxiredoxin sequence. Gal/GalNAc lectin showed better antigenicity than the other two proteins studied. All the three proteins exhibited similarity in their structures and were mostly composed of loops. DISCUSSION: The structures of SREHP and peroxiredoxin were predicted successfully, while the structure of Gal/GalNAc lectin could not be predicted as it was a complex protein composed of sub-units. Also, this protein showed less similarity with the available structural homologs. The quaternary structures of SREHP and peroxiredoxin predicted from this study would provide better structural and functional insights into these proteins and may aid in development of newer diagnostic assays or enhancement of the available treatment modalities.

Entities:  

Keywords:  29 kDa cysteine-rich protease; Entamoeba histolytica; Gal/GalNAc lectin; Peroxiredoxin; SREHP; Thioredoxin peroxidase

Year:  2017        PMID: 28674640      PMCID: PMC5493030          DOI: 10.7717/peerj.3160

Source DB:  PubMed          Journal:  PeerJ        ISSN: 2167-8359            Impact factor:   2.984


Introduction

Amoebiasis is one of the most common parasitic diseases and is associated with high morbidity and mortality (Bansal, Malla & Mahajan, 2006), killing about 50 million people each year, predominantly in countries with poor hygienic settings (Centres for Disease Control and Prevention, 2010). Amoebiasis remains a serious public health problem even today particularly in the developing and underdeveloped countries. Globally, the prevalence is 2%–60%, whereas in India it ranges between 3.6%–47.4% (Khairnar & Parija, 2007; Mukherjee et al., 2010). Diagnosis is primarily based on microscopical observations, which can be erroneous, as it fails to distinguish the pathogenic and the non-pathogenic forms of the parasite. Currently, nested-multiplex PCR based on detection of the 18S rRNA region of E. histolytica, E. dispar and E. moshkovskii is being widely followed. Also, TaqMan and SYBR Green-based real-time PCR assays are also helpful for differentiation of the parasite and other look-alike species, but the usage is limited due to the cost involved. Same is the case with microarray development for diagnosis of amoebiasis, Due to a high level of uncertainty associated with the specificity of the available diagnostic assays, there is a need for a specific diagnostic target (Parija, Mandal & Ponnambath, 2014). Identifying new targets and exploring alternate strategies with high sensitivity and specificity for the early diagnosis of amoebiasis is important. Metronidazole is the drug of choice for treatment of various intestinal parasitic infections including amoebic colitis. There are reports of parasite persisting in the intestine of 40–60% of patients, even after adequate therapy (Stephen et al., 2008). It has generally been granted that a majority of the individuals infected with E. histolytica do not develop a symptomatic disease and remain as asymptomatic carriers (Ghosh et al., 2000). Studies have also shown strains resistant to metronidazole under in-vitro conditions (Bansal, Malla & Mahajan, 2006). Considering these scenarios, development of newer treatment strategies or identification of novel drug targets is the only choice for the fight against the parasite E. histolytica. Proteins mediate most of the biological processes in living organisms. Identifying target proteins and ascertaining their role in pathogenesis will aid in selecting better diagnostic markers. The proteins involved in E. histolytica virulence and extensively studied as diagnostic and vaccine targets are Serine-rich E. histolytica protein (SREHP), peroxiredoxin or thioredoxin peroxidase or 29 KDa cysteine-rich protease (Eh29) and galactose-N-acetyl-D-galactosamine inhibitable (Gal/GalNAc) lectin (Stanley Jr, 2006). SREHP is highly immunogenic of all the Entamoeba proteins identified so far, possessing the largest number of conserved epitopes. It was found that more than 80% of the antibodies elicited among the patients with amoebic liver abscess are specific against SREHP. Peroxiredoxin also plays a significant role in regulating enzymatic activities, restoring oxidized proteins, cellular transcription and apoptosis (Arias et al., 2012). However, knowledge regarding the quaternary structure, which is essential for elucidating the cellular and molecular ontology of these proteins, is currently lacking (Stephen et al., 2008). Structural characterization by modeling the proteins may shed light on the biological function and inter/ intramolecular interactions. Thus, detailed studies regarding accurate prediction of the protein structures and elucidation of their function are crucial in bridging the information gap necessary for identifying new diagnostic markers, vaccine candidates, and drug targets precisely. 3D structure modeling is based on the alignment of query protein to previously known homologous structures (Homology modeling) or by fold recognition, for proteins that do not have homologous proteins with known structure (Threading method). Prediction methods may involve sequence analysis, model building, structure analysis and functional annotation. The aim of the current study is to predict the structure of SREHP and Eh29 proteins and to characterize them structurally as well as functionally using relevant in-silico methods. Threading method has been utilized in this study as there were no homologous known target structures. We have also attempted functional analysis using various bioinformatic tools.

Materials and Methods

Protein sequence retrieval and analysis

At first, the amino-acid sequences of the target proteins were retrieved from National Centre for Biotechnology Information database (NCBI) and aligned using ClustalW software to determine the appropriate sequence for protein structure prediction. The sequences AAA29117.1, P19476.2, and XP_656181.1, were found most suited for structure prediction of SREHP, peroxiredoxin and Gal/GalNAc lectin respectively as they had the entire stretch of amino acids comprising the N-terminal as well as C-terminal ends. Using a sequence similarity model, the availability of the structural homologs for the retrieved sequences was verified from the available structures present in the protein data bank (PDB). The overall workflow of the present study has been summarized in Fig. 1.
Figure 1

Flowchart summarizing the methodology of the study.

Physiochemical profiling

Considering the target protein sequence as the template, its molecular profile was determined using Protparam tool of ExPASy, and the solubility of these proteins was determined using Predict Protein. Structural properties of the proteins were predicted using SOPMA, SAPS and FindMod. Analysis of the sub-cellular localization helps in understanding the protein function. Prediction of subcellular localization was done using PSortB and CELLO v2.5. The presence of signal peptides within the amino-acid sequence was verified using SignalP 4.1 server. The antigenicity of the proteins was predicted using Predicted Antigenic Peptides, and the results were further validated using EMBOSS.

Structure modeling

The similarity of the proteins included in our study was compared with the available protein homologs against non-redundant databases like BLASTP program of NCBI and PDB. The percentage of similarity between the query and template proteins was found to be less than 40%. Hence, the structure of the protein was predicted by fold recognition methodology using i-TASSER and Phyre2 prediction server. The proteins were further analyzed for the presence of conserved domains using NCBI Conserved Domains Database (NCBI CDD) and Protein families database (Pfam).

Structure validation and refinement

The protein structures generated using i-TASSER and Phyre2 servers were then validated by SAVes server. The quality of the structure was determined using QMEAN6 program of the SWISS-MODEL workspace. The energy levels were minimized, and the structures were reformed based on the generated Ramachandran plot. Finally, the modeled structures were visualized using PyMOL v1.7.4.5.

Active site determination

The active sites present in the proteins were located by the computed atlas of surface topography of proteins (CASTp) server. This server acts as an online resource for locating and measuring concave surface regions from the constructed 3D model of proteins.

Results

Sequence analysis of SREHP, 29 kDa cysteine-rich protease, and Gal/GalNAc lectin

The sequence analysis to understand the physiochemical properties of the proteins revealed the length of the protein to be 233aa, 233aa and 1286aa for SREHP, peroxiredoxin and Gal/GalNAc proteins respectively. The molecular mass, total number of atoms, net charge of the proteins and the isoelectric point of these proteins are tabulated (Table 1). The grand average of hydropathicity (GRAVY) index was calculated to be −1.218, −0.320 and −0.546 indicating that the proteins are hydrophilic (Figs. 2 and 3). The same has been confirmed by Kyte and Doolittle hydropathy plot (Figs. 4 and 5).
Table 1

Molecular profile of the proteins SREHP, peroxiredoxin and Gal/GalNAc lectin.

No.PropertiesSREHPPeroxiredoxinGal/Gal/NAcLectin
1No of amino acids2332331,286
2Molecular weight24.72 kDa26.25 kDa144.33 KDa
3FormulaC1032H1623N281O418S2C1162H1837N307O342S21C6205H9714N1668O2054S118
4Total no. of atoms3,3563,66919,759
5Net charge of the protein−25+4−26
6Theoretical pI4.26 7.79 5.16
8Ext. coefficient1,49032,400159,925
9Estimated half-life30 hr (mammalian reticulocytes, in vitro). >20 hr (yeast, in vivo) >10 hr (E. coli, in vivo)30 hr (mammalian reticulocytes, in vitro). >20 hr (yeast, in vivo). >10 hr (E. coli, in vivo)30 hr (mammalian reticulocytes, in vitro). >20 hr (yeast, in vivo). >10 hr (E. coli, in vivo)
10Aliphatic index41.6376.5763.20
11Grand average of hydropathicity (GRAVY)−1.218 (hydrophilic)−0.320 (moderately hydrophilic)−0.546 (moderately hydrophilic)
12Localization scores:
Cytoplasmic1.509.060.241
Cellwall3.500.027.05
Extracellular4.500.012.87
Peripheral membrane9.96
Final predictionExtracellularPeripheral membrane proteinCell wall
13Instability index54.79 (protein is stable)30.44 (protein is stable)36.34 (protein is stable)
Figure 2

Protein hydrophobicity—SREHP.

The figure depicts that the protein SREHP is hydrophilic. Blue represents the most hydrophilic areas, white is 0.0 and red represents mostly hydrophobic regions in the protein.

Figure 3

Protein hydrophobicity—Peroxiredoxin.

The figure depicts that the protein Eh29 is moderately hydrophilic. Blue represents the most hydrophilic areas, white is 0.0 and red represents mostly hydrophobic regions in the protein.

Figure 4

Protein hydropathy-SREPH.

The protein is essentially hydrophilic as analysed by the Kyte & Doolittle Hydropathy plot with apolar residues assigned negative values. (y axis: hydrophobicity scores; x axis: position in the protein seq.)

Figure 5

Protein hydropathy-Peroxiredoxin.

The protein is moderately hydrophilic as analysed by the Kyte & Doolittle Hydropathy plot.

Protein hydrophobicity—SREHP.

The figure depicts that the protein SREHP is hydrophilic. Blue represents the most hydrophilic areas, white is 0.0 and red represents mostly hydrophobic regions in the protein.

Protein hydrophobicity—Peroxiredoxin.

The figure depicts that the protein Eh29 is moderately hydrophilic. Blue represents the most hydrophilic areas, white is 0.0 and red represents mostly hydrophobic regions in the protein.

Protein hydropathy-SREPH.

The protein is essentially hydrophilic as analysed by the Kyte & Doolittle Hydropathy plot with apolar residues assigned negative values. (y axis: hydrophobicity scores; x axis: position in the protein seq.)

Protein hydropathy-Peroxiredoxin.

The protein is moderately hydrophilic as analysed by the Kyte & Doolittle Hydropathy plot. The function of the proteins is generally confined to its specific location. Thus predicting the localization may shed light on the function of the protein and also for better understanding of the disease mechanism. The Predict Protein and CELLO v2.5 servers results for localization show that SREHP is an extracellular protein, peroxiredoxin is a peripheral membrane protein, and Gal/GalNAc lectin is a cell-wall protein. Signal peptides were found within the amino-acid sequences of SREHP (Fig. 6) and Gal/GalNAc lectin. However, no signal peptides were found within the peroxiredoxin sequence (Fig. 7), and this finding is consistent with that from a previous study (Clark et al., 2007).
Figure 6

Signal peptide prediction by SignalP server for SREHP.

Signal peptide cleavage site was found between position 13 and 14. No internal helices/motifs were found within the sequence.

Figure 7

Signal peptide prediction by SignalP server for Peroxiredoxin.

No signal cleavage sites/internal helices/motifs were found within the sequence.

Signal peptide prediction by SignalP server for SREHP.

Signal peptide cleavage site was found between position 13 and 14. No internal helices/motifs were found within the sequence.

Signal peptide prediction by SignalP server for Peroxiredoxin.

No signal cleavage sites/internal helices/motifs were found within the sequence. The results of the Predicted antigenic peptides tool suggest that SREHP contains three antigenic determinants with an average antigenic propensity of 0.9748 (Fig. 8; Table 2); peroxiredoxin possesses 11 antigenic determinants with an average antigenic propensity of 1.0318 (Fig. 9; Table 3). However, Gal/GalNAc lectin has 51 antigenic determinants with the maximum average antigenic propensity of 1.0410. This may be due to the fact that Gal/GalNAc consists of more number of amino-acids and has higher molecular weight compared to the other two proteins. Thus, it is known to be critical in eliciting anti-amoebic host immune response mechanism(s) (Rasti et al., 2006).
Figure 8

Antigenicity profile and antigenic determinants of SREHP.

The grey lines indicate the position of the three antigenic determinants present in SREHP.

Table 2

Antigenic determinants of SREHP.

The table shows the sequence details of the antigenic determinants present in SREHP.

S.noStart positionSequenceEnd position
14FLLFIAFTSATNIILDLDQ22
228NIYGVFLKN36
3215DAASSPFIVFCAIII229
Figure 9

Antigenicity profile and antigenic determinants of Eh29.

The grey lines indicate the position of the three antigenic determinants present in Eh29.

Table 3

Antigenic determinants of Eh29.

The table shows the number of antigenic determinants and the sequence and their respective start and end positions in the protein. These determinants may be involved in the antigenicity associated with the target protein Eh29.

nStart positionSequenceEnd position
14NQQKECCKK12
215QEKECCKECCCPRI28
349EFKAPAYCPCGS60
470RGKYVVLLFYPLDWTFVCPT89
593GYSELAGQ100
6102KEINCEVIGVSVDSVYCHQAWCEA125
7131GVGKLTFPLVSDIKRCISIK150
8152GMLNVEA158
9162RRGYVII168
10192TIRIVKAIQF200
11203EHGAVCPL210

Antigenicity profile and antigenic determinants of SREHP.

The grey lines indicate the position of the three antigenic determinants present in SREHP.

Antigenic determinants of SREHP.

The table shows the sequence details of the antigenic determinants present in SREHP.

Antigenicity profile and antigenic determinants of Eh29.

The grey lines indicate the position of the three antigenic determinants present in Eh29.

Antigenic determinants of Eh29.

The table shows the number of antigenic determinants and the sequence and their respective start and end positions in the protein. These determinants may be involved in the antigenicity associated with the target protein Eh29. Analysis of the proteins by NCBI-CDD and Pfam suggests that SREHP consists of a C-terminal domain that belongs to peptidase_ S64 superfamily and the 29 kDa cysteine-rich protease is formed of 2 domains: domain belonging to AhpC/TSA family and a C-terminal 1-Cys Prx domain.

Structure analysis of SREHP and 29 kDa cysteine-rich protease

The predicted structures suggest that SREHP contained 51.5% loop, 30.9% helix and 17.6% strands; peroxiredoxin had 57.51% loop, 27.9% helix and 14.59% strands and Gal/GalNAc lectin comprised 67% loop, 25.5% helix and 7.4% strand. Thus, all the three proteins were found to be primarily composed of loops followed by helix and strands. The lack of 3D structures of these novel proteins in PDB was a trigger to carry out this study. The tertiary structures of SREHP and peroxiredoxin were successfully predicted using i-TASSER & Phyre2 server via threading (Yang et al., 2015; Roy, Kucukural & Zhang, 2010; Zhang, 2008; Kelley & Sternberg, 2009). However, Gal/GalNAc lectin consists of different subunits that make it difficult for prediction of the tertiary structure using the conventional bioinformatic tools. The quality of the predicted structures was analyzed through SAVes (Procheck, WHATCHECK, Verify-3D, Errat& Prove) server (Laskowski et al., 1993; Hooft et al., 1996; Luthy, Bowie & Eisenberg, 1992; Pontius, Richelle & Wodak, 1996). The validation of the results also included the evaluation of the Psi/Phi Ramachandran plots and further quality check against the structures deposited in the non-redundant set of protein data banks at the QMEAN6 server. The results determine that the predicted 3D models by i-TASSER (Figs. 10 and 11) were more accurate than Phyre2 based 3D models.
Figure 10

Structure of SREHP.

Figure 11

Structure of Peroxiredoxin.

Based on the higher QMEAN6 score suitable models were selected from iTASSER results and were further refined by energy minimization using Swiss-PDB viewer. Model 1 with a Z-score value of −7.8 and QMEAN6 value of 0.052 was selected for SREHP and Model_12 with a QMEAN6 value of 0.59 and Z-score of −1.79 was selected for peroxiredoxin for energy minimization. PROCHECK is the tool used for analyzing the structural and stereochemical efficiency of a protein structure by analyzing overall and residue-by-residue geometry (Supplemental Information 4–7). This tool was used to determine the Psi/Phi Ramachandran plot to assure the quality of the model which revealed that 84.7% of the residues were present in the most favoured regions; 12.9% in the additionally allowed regions; 52.4% generously allowed regions and none of the residues were seen in the disallowed regions for the constructed model of SREHP (Supplemental Information 1). Similarly, the Psi/Phi Ramachandran plots show that 84.8% of the residues were present in the most favored regions; 14.6% in the additionally allowed regions; 0.6% generously allowed regions and none of the residues were seen in the disallowed regions in the constructed model of peroxiredoxin (Supplemental Information 1). Also, the reliability of the model was further confirmed by ERRAT. This tool analyzes the statistics of non-bonded interactions between different atom types. It plots the value of the error function versus position of a 9-residue sliding window that is calculated by comparison with statistics from highly refined structures (Colovos & Yeates, 1993). The overall quality factor assessment by ERRAT and results of PROVE was satisfactory, thus proving the constructed models to be valid (Supplemental Information 2 and 3). The results of the various tools used in the analysis of 3D modeling of proteins indicate acceptable model quality and similar structures may exist in nature.

Functional annotation of SREHP and 29 kDa cysteine-rich protease

Predict protein and ProFunc servers were used to annotate the function of the proteins hypothetically. The results suggest that the protein were involved in different biological and metabolic processes. SREHP was found to participate in pathogenesis, phosphorylation, proteolysis and protein modification processes (Supplemental Information 8). It was also found to have peptidase activity. Peroxiredoxin was found to be involved in regulation of cellular processes and cell redox homeostasis as it has thioreductase and alkyl hydroperoxidase activity (Supplemental Information 9).

Discussion

The enteric protozoan parasite E. histolytica usually resides in the large bowel of the host causing amoebic colitis. However, it can occasionally penetrate the intestinal mucosa and spread to the liver or other organs causing amoebic liver abscess (Mukherjee et al., 2010). The ability of the parasite to cope up with increasing oxygen pressures and high concentration of reactive oxygen species (ROS) and reactive nitrogen species (RNS), contributes to its virulence (Koushik et al., 2014) and a previous study has demonstrated the involvement of peroxiredoxin in this regard (Arias et al., 2012). Gal/GalNAc lectin is accountable for the virulence of E. histolytica and is reported to be involved in almost all the steps of pathogenesis (García, Kobeh & Vancell, 2015). Hence, it serves as a potential target for diagnosis and vaccination. The details regarding physiochemical properties of these proteins such as their quaternary structure, antigenicity, structural and functional properties will be informative and may assist in identifying their role in disease progression. In-silico based approach plays an indispensable role in structural genomics using bioinformatic tools for modeling of various unknown structures. As studies related to the crystal structures of these proteins were scarce, we have predicted the structures using in-silico methods which would assist in further exploring these target proteins as diagnostic markers, drug targets and vaccine candidates. The SREHP molecule serves as a potent chemoattractant for amoebic trophozoites and is unique when compared to other E. histolytica proteins because of its phosphorylation and glycosylation patterns (Teixeira & Huston, 2008). In our study, we predicted that SREHP is an extracellular protein, thus being easily accessible to the host immune system. It was found to possess a signal peptide which signifies that this protein is involved in signaling pathways, which may be important in the pathogenesis. This protein also possesses three antigenic determinants and was also found to have a domain with peptidase activity, which suggests that it may help in processing the signaling peptide to be passed to the nucleus, where amino-acid uptake takes place. The amino-acid residues within the peptide sequence of SREHP were predicted to be highly conserved when compared with other E. histolytica proteins. Findings from our study suggest that SREHP possesses multi-hydrophilic conserved dodecapeptides, a detail that has also been reported previously from in-vitro analysis of this protein (Koushik et al., 2014). As SREHP is an extra-cellular protein, the low QMEAN6 score and Z-score value were obtained for the constructed structure. However, the validation by the Psi/Phi Ramachandran plot suggests that the structure is satisfactory. Thus, targeting this protein based on the predicted structure for identification of alternative drug targets may be appropriate. Peroxiredoxin plays a major role in the parasite defense against the reactive species of the host. This protein is critical in the extra-intestinal phase of amoebic infection (Cheng et al., 2004). In-depth characterization of its activity and its functional properties are available (Arias et al., 2012); however, its structural properties are undetermined. In our study, we found peroxiredoxin to be the most stable of the three proteins with an instability index of 54.79, which is remarkable. Peroxiredoxin was found to be a peripheral membrane protein, with more antigenic determinants (11) than SREHP. The protein was found to belong to the Thioredoxin (TRX)-like superfamily, and it has an AhpC domain. The proteins of the family 2-Cys peroxiredoxin (PRX) are said to confer protective role through the peroxidase activity which is responsible for the survival of the parasite in th host. The AhpC domain or alkyl hydroperoxide reductase subunit acts as a defense mechanism. The presence of this domain has also been closely related to cysteine proteinase isolated from Homo sapiens. The QMEAN6, Z-score and Psi/ Phi Ramachandran plot show that the 3D predicted model of peroxiredoxin is of high-quality. Active sites and ligand binding sites were also present in the modeled structure by analysis using CASTp server. Given its high stability and its pathophysiological role in extra-intestinal amoebic infection, this protein can be considered as a potential candidate for vaccine trials or enhanced treatment strategies. Gal/GalNAc lectin being a multimeric protein with a light subunit, heavy subunit and an intermediate subunit surmounted the other two proteins in all aspects of antigenicity with 51 potent antigenic determinants within its sequence. This distinct feature of the lectin compared to the other proteins may be attributed to its size and also its localization. Apart from its antigenic propensity, Gal/GalNAc lectin is structurally a highly conserved antigen (García, Kobeh & Vancell, 2015). Moreover, Gal/GalNAc lectin is a cell-wall protein that is easily accessible and recognized by the host immune system (Stanley et al., 1991; García, Kobeh & Vancell, 2015), thereby enhancing its antigenic profile. It mediates attachment of trophozoites to colonic mucins, increases parasite phospholipase A activity, maintains an acidic pH in amoebic intracellular vesicles and enhances cytolytic activity (Ravdin, 1989). Thus, by hydrolyzing this protein, the host immune system can counteract invasion by the parasite. Considering all these molecular features of Gal/GalNAc lectin, our study suggests that, this protein could be a prime vaccine candidate and diagnostic target. Many studies have been carried out regarding Gal/GalNAc lectin; however, they are inadequate whilst considering its significance. A thorough investigation is essential as its impact would be far-reaching. The structures of SREHP and peroxiredoxin were predicted successfully, and on validation, they were found to be more than 95% accurate which implies a real probability of the predicted structure being existent in nature. In both the structures, torsion angle conventions were found to be accurate and the improper dihedral angle distribution was found to be normal. The RMS Z-score for all improper dihedrals in the structure was within normal ranges. No missing atoms were detected. All required C-terminal oxygen atoms were present. The results generated from the bioinformatic analysis employed in the present study are not mere pre-experimental findings but can also serve as a reliable lead for future in-vitro experiments. SREHP being a highly conserved protein and peroxiredoxin involved in the redox metabolism can serve as vaccine candidates with other E. histolytica antigenic proteins such as Gal/GalNAc lectin, and help in enhancing host immunity. Studies by various research groups have shown the use of SREHP and Eh29 as vaccine candidates (Quach, St-Pierre & Chadee, 2014; Sultan et al., 1998). However, it has also been clearly stated that the function of these proteins remains unexplored. This study has provided groundwork not only for the structure but also for functional annotation of the key proteins involved in the pathogenesis of amoebiasis. It is a well-known fact that culturing of the parasite is technically challenging and a laborious process. It also requires highly qualified personnel and a lot of resources. Utilization of the various computational tools and bioinformatic web-servers has cut down the necessity for culturing the parasite, thus opening a whole new research area in parasitology, reducing the cost of the experiments involved previously for vaccine or drug discovery. To obtain newer insights into the conformational changes of the proteins, in- depth analysis of the post-translational modification of the protein is a requisite. The modeled structures can be further utilized to study protein-protein interactions or protein-ligand interactions and binding efficiency of co-factors by docking studies which may aid in the discovery of newer drug molecules for combating the disease.

Ramachandran plot of SREHP and Eh29

The Ramachandran plot shows the percentage of amino acids in the allowed and disallowed regions for determining if the predicted structure is stable in nature. Click here for additional data file.

ERRAT results of SREHP and Eh29

ERRAT is part of the SAVEs platform which analyses the non-bonded interactions between the atoms in the predicted structure by plotting the error function against a sliding 9-residue widow. Click here for additional data file.

PROVE results of SREHP and Eh29

By comparing the highly refined PDB-deposited structures, PROVE calculates the volume of the atom in the predicted structure using a statistical Z-score. Click here for additional data file.

Stereochemical parameters of SREHP and Eh29

Stereochemical properties of the proteins are checked by analysing the overall and residue-by-residue geometry Click here for additional data file.

Main-chain parameters for SREHP and Eh29

The graphs on the main-chain parameters plot show how the structure compares with well-refined structures at a similar resolution. The dark band represents the results from the well-refined structures; the central line is a least-squares fit to the mean trend as a function of resolution, while the width of the band on either side of it corresponds to a variation of one standard deviation about the mean. Click here for additional data file.

Side-chain parameters of SREHP and Eh29

The 5 graphs in the side-chain parameters consider the following properties for each protein.1. Standard deviation of the chi-1 gauche minus torsion angles. 2. Standard deviation of the chi-1 trans torsion angles. 3. Standard deviation of the chi-1 gauche plus torsion angles. 4. Pooled standard deviation of all chi-1 torsion angles. 5. Standard deviation of the chi-2 trans torsion angles. Click here for additional data file.

Residue properties of SREHP and Eh29

The PROCHECK performs post-structure analysis by completely analysing the individual residues and their interactions in the predicted structure. Click here for additional data file.

Functional ontology of SREHP

The functional ontology of SREHP shows that it is involved in pathogenesis, protein phosphrylation and in regulation of signal transduction. Click here for additional data file.

Functional ontology of Eh29

Functional ontology of Eh29 protein shows that it is involved in the mechanism of cell redox homeostasis. Click here for additional data file.

Antigenic determinants of Gal/GalNAc lectin

The table summarizes the 51 antigenic regions found in the Gal/GalNAc lectin. The sequence details with start and end position has been tabulated. Click here for additional data file.
  24 in total

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Authors:  Lawrence A Kelley; Michael J E Sternberg
Journal:  Nat Protoc       Date:  2009       Impact factor: 13.491

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Authors:  S L Stanley
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Journal:  Hum Vaccin Immunother       Date:  2014-02-06       Impact factor: 3.452

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Authors:  Devendra Bansal; Nancy Malla; R C Mahajan
Journal:  Indian J Med Res       Date:  2006-02       Impact factor: 2.375

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Authors:  S Ghosh; M Frisardi; L Ramirez-Avila; S Descoteaux; K Sturm-Ramirez; O A Newton-Sanchez; J I Santos-Preciado; C Ganguly; A Lohia; S Reed; J Samuelson
Journal:  J Clin Microbiol       Date:  2000-10       Impact factor: 5.948

6.  Molecular characterization of peroxiredoxin from Entamoeba moshkovskii and a comparison with Entamoeba histolytica.

Authors:  Xun-Jia Cheng; Eisaku Yoshihara; Tsutomu Takeuchi; Hiroshi Tachibana
Journal:  Mol Biochem Parasitol       Date:  2004-12       Impact factor: 1.759

7.  Molecular modeling on pyruvate phosphate dikinase of Entamoeba histolytica and in silico virtual screening for novel inhibitors.

Authors:  Preyesh Stephen; Ramachandran Vijayan; Audesh Bhat; N Subbarao; R N K Bamezai
Journal:  J Comput Aided Mol Des       Date:  2007-08-21       Impact factor: 3.686

8.  Entamoeba histolytica thioredoxin reductase: molecular and functional characterization of its atypical properties.

Authors:  Diego G Arias; Erika L Regner; Alberto A Iglesias; Sergio A Guerrero
Journal:  Biochim Biophys Acta       Date:  2012-09-03

9.  I-TASSER server for protein 3D structure prediction.

Authors:  Yang Zhang
Journal:  BMC Bioinformatics       Date:  2008-01-23       Impact factor: 3.169

10.  A novel nested multiplex polymerase chain reaction (PCR) assay for differential detection of Entamoeba histolytica, E. moshkovskii and E. dispar DNA in stool samples.

Authors:  Krishna Khairnar; Subhash C Parija
Journal:  BMC Microbiol       Date:  2007-05-24       Impact factor: 3.605

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1.  Antigenic membrane proteins of virulent variant of Entamoeba histolytica HM-1:IMSS.

Authors:  Gaayathri Kumarasamy; Asmahani Azira Abdus Sani; Alfonso Olivos-García; Rahmah Noordin; Nurulhasanah Othman
Journal:  Pathog Glob Health       Date:  2020-06-15       Impact factor: 2.894

Review 2.  A Review: Natural and Synthetic Compounds Targeting Entamoeba histolytica and Its Biological Membrane.

Authors:  Nurhana Jasni; Syazwan Saidin; Norsyahida Arifin; Daruliza Kernain Azman; Lai Ngit Shin; Nurulhasanah Othman
Journal:  Membranes (Basel)       Date:  2022-04-01

3.  Climate adaptation impacting parasitic infection.

Authors:  Subhash Chandra Parija
Journal:  Trop Parasitol       Date:  2022-06-26

4.  Computational-approach understanding the structure-function prophecy of Fibrinolytic Protease RFEA1 from Bacillus cereus RSA1.

Authors:  Chhavi Sharma; Arti Nigam; Rajni Singh
Journal:  PeerJ       Date:  2021-06-04       Impact factor: 2.984

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