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Article

In Silico Investigation on the Interaction of Chiral Phytochemicals from Opuntia ficus-indica with SARS-CoV-2 Mpro

1
Istituto di Biostrutture e Bioimmagini IBB-CNR, Mezzocannone Site and Headquarters, I-80134 Naples, Italy
2
Department of Chemical, Materials and Industrial Production Engineering (DICMaPI), University of Naples Federico II, Piazzale V. Tecchio 80, 80125 Naples, Italy
*
Author to whom correspondence should be addressed.
These authors contributed equally.
Submission received: 21 April 2021 / Revised: 31 May 2021 / Accepted: 7 June 2021 / Published: 9 June 2021

Abstract

:
Opuntia ficus-indica is a cactaceous plant native to America but, nowadays, widely found worldwide, having been the most common domesticated species of cactus grown as a crop plant in semiarid and arid parts of the globe, including several Mediterranean basin countries. Opuntia ficus-indica can be regarded as a medicinal plant, being source of numerous bioactive phytochemicals such as vitamins, polyphenols, and amino acids. The urgent need for therapeutic treatments for the COronaVIrus Disease 19 (COVID-19), caused by the Severe Acute Respiratory Syndrome (SARS)-Coronavirus (CoV)-2, justifies the great attention currently being paid not only to repurposed antiviral drugs, but also to natural products and herbal medications. In this context, the anti-COVID-19 utility of Opuntia ficus-indica as source of potential antiviral drugs was investigated in this work on the basis of the activity of some of its phytochemical constituents. The antiviral potential was evaluated in silico in docking experiments with Mpro, i.e., the main protease of SARS-CoV-2, that is one of the most investigated protein targets of therapeutic strategies for COVID-19. By using two web-based molecular docking programs (1-Click Mcule and COVID-19 Docking Server), we found, for several flavonols and flavonol glucosides isolated from Opuntia ficus-indica, good binding affinities for Mpro, and in particular, binding energies lower than −7.0 kcal/mol were predicted for astragalin, isorhamnetin, isorhamnetin 3-O-glucoside, 3-O-caffeoyl quinic acid, and quercetin 5,4′-dimethyl ether. Among these compounds, the chiral compound astragalin showed in our in silico studies the highest affinity for Mpro (−8.7 kcal/mol) and also a low toxicity profile, emerging, thus, as an interesting protease inhibitor candidate for anti-COVID-19 strategies.

1. Introduction

Opuntia ficus-indica, also known as Indian fig and nopal cactus [1], is a dicotyledonous angiosperm cactaceous plant widespread worldwide in tropical and subtropical regions, including those surrounding the Mediterranean sea, with semi-arid and arid climates [2]. Recently, Opuntia ficus-indica’s nutritional and health benefits have been suggested due to its phytochemical composition particularly rich in polyphenols, which are the main compounds responsible for antioxidant properties of plant extracts [3], but also in vitamins and amino acids [3,4,5,6]. Opuntia ficus-indica is a fast-growing and productive plant [7,8] with potential utility in biogas [9] and biofuel [10] production, rehabilitation of degraded soils, and desertification/climate change mitigation, with important consequent environmental benefits [11,12,13]. Fruits and cladodes are widely used for human nutrition [14,15,16], with the latter also largely being used as livestock forage in South America and Africa [17,18].
Owing to the biomedically-relevant properties of Opuntia cactuses, it is worth mentioning that several plant extracts and Opuntia-isolated compounds are endowed with antimicrobial, antioxidant, anti-inflammatory, antidiabetic, neuroprotective [3,19,20,21,22,23,24,25,26,27,28,29], and antiviral [30,31] properties. Not less importantly, some phytochemicals isolated from nopal cactus waste peels showed anti-pneumonia properties [32]. In particular, the Opuntia-derived compounds extracted in ethyl acetate phase included astragalin, isorhamnetin, isorhamnetin-3-O-glucoside, and quercetin 5,4′-dimethyl ether, with the latter exerting the most relevant activity against the pneumonia pathogen investigated [32].
Three deadly RNA viruses of the family of Coronaviridae have emerged in the last eighteen years: SARS-CoV-1 (also known simply as SARS-CoV), MERS-CoV, and SARS-CoV-2. These coronaviruses (CoVs) can cause severe pneumonia in infected patients that can be lethal in several cases. SARS-CoV-2 is causing the current pandemic of COronaVIrus Disease 19 (COVID-19) which has provoked enormous sanitary as well social and economic impacts on the globe [33]. Prophylactic [34] and therapeutic strategies are currently under investigation worldwide, and among the latter, old antiviral drug repurposing [35,36] is one of the main ways to respond to the urgency of an effective anti-COVID-19 therapy. Drug repurposing, in fact, involves drugs already known and in use for other pathologies and for which safety has already been assessed previously [35]. Similarly, plant extracts or isolated compounds already used as dietary supplements or ingredients of traditional medicine are attracting much interest in the therapy of SARS-CoV-2 [37,38].
In this context, considering the previously ascertained utility of Opuntia ficus-indica plant extracts or isolated compounds as antiviral and anti-pneumonia agents, the potential of some of the same identified molecules was tested in the present in silico study as inhibitors of Mpro (Figure 1). In fact, the main protease of SARS-CoV-2 represents one of the most attractive targets for COVID-19 drug development due to the absence of this type of proteins in humans and its essential role in viral replication [39].

2. Methods

2.1. Molecular Docking Studies

For the computational studies, we used the 3D structure of Mpro with an unliganded active site (PDB ID: 6Y84), downloaded from the Protein Data Bank [40]. The structures for the natural compounds (Figure 2) investigated as protease ligands were retrieved by us from the PubChem database (https://pubchem.ncbi.nlm.nih.gov/, all links mentioned in this work were accessed on 11 December 2020), whilst those not present in PubChem were drawn with the molecular editor of 1-Click Mcule (Mcule Inc., Palo Alto, CA, USA) [41,42,43,44], an online docking platform making use of AutoDock Vina [45], by which the docking experiments herein described were performed. For the molecular dockings, we used, as atomic coordinates of the binding site, X: 9.204, Y: −4.557, and Z: 19.602, which were previously reported in the literature for the binding center [46], and we set the size of the binding site as 22 Angstrom. The docking poses with the most negative docking scores (kcal/mol), corresponding to the highest binding affinities, were selected for further analysis (Table 1). To validate the docking method, we applied it to other literature dockings having Mpro as a protein target [47], and used the N3 inhibitor as a reference compound (Figure 2), finding that the resulting scores were in line with those previously reported for ligands like the phenolic diterpene carnosol [46], bictegravir, and other molecules docked to the same protease [48]. We made use of the molecular graphics program embedded in 1-Clik Mcule for structural visualization of protein–ligand complexes and to obtain the snapshots of Figure 3A,B, while we obtained the protein–ligand interaction diagrams reported in the same figure (Figure 3C,D) and in Figure 4 by ProteinsPlus (https://proteins.plus/) or PLIP (Protein–Ligand Interaction Profiler, https://plip-tool.biotec.tu-dresden.de/) [49,50]. For the N3 inhibitor/astragalin-bound Mpro structural comparison (Figure 3E), we made use of the matchmaker tool embedded in UCSF Chimera [51]. To this scope, we compared the structure with PDB ID: 6LU7 (containing the N3 inhibitor) and the best pose obtained from the docking of Mpro with astragalin.

2.2. COVID-19 Docking Server Studies

The docking of astragalin with Mpro was repeated with the COVID-19 Docking Server [52], a user-friendly platform realized by Kong et al. for docking peptides and antibodies, but also small organic compounds, against some of the main COVID-19-related proteins investigated by implementation of Autodock Vina and CoDockPP [45,52,53,54,55]. The ligand file in mol2 format was obtained, starting from informative details on astragalin found in Pubchem (https://pubchem.ncbi.nlm.nih.gov, PubChem CID 5282102) and using the online tool available at the link: http://pasilla.health.unm.edu/tomcat/biocomp/convert. We selected, in the COVID-19 Docking Server [52], (for ligand preparation, PDB IDs and description of protein targets, scoring and docking procedures see https://ncov.schanglab.org.cn/index.php) as ‘Computational Type’: 1-molecule Docking and as coronavirus protein target: ‘Main protease’. After the docking run, the server provided the pose views for the different binding modes and the corresponding binding energy (score value, kcal/mol) and scoring function (RF-Score, pKd) values. The server used as binding center coordinates: x = −10.85; y = 12.58; z = 68.72 and as target the structure: 6LU7, edited by the developers of the COVID-19 Docking server (the inhibitor N3 [56] was removed). Astragalin-Mpro complex was visualized in the structure viewer of the COVID-19 Docking Server and UCSF Chimera software [51]. Listed values of score values and RF score values corresponding to the top 10 poses for the complex in Table 2 were obtained as output of the docking experiment performed by the COVID-19 Docking Server (and they were found at https://ncov.schanglab.org.cn/dojmol.php?dir=202012310146538026).

2.3. LogP, Druglikeness, PAINS, and Toxicity Predictions

LogP values (as consensus LogP) were predicted by SwissADME software (http://www.swissadme.ch/ [57]), together with druglikeness and PAINS scores.
The latter of these were identical to those obtained by us using the PAINS Remover software (http://cbligand.org/PAINS/) to remove pan-assay interference compounds (PAINS) [58] among the phytochemicals under investigation.
To analyze the plant-derived compounds of the present work, we submitted to the PAINS Remover server their structure data as ‘.sdf’ or ‘.mol’ format. Toxicity properties of astragalin were predicted with ADMETlab (http://admet.scbdd.com/calcpre/calc_cf_single_mol) using the isomeric SMILES format for the compound found in the PubChem database: C1=CC(=CC=C1C2=C(C(=O)C3=C(C=C(C=C3O2)O)O)O[C@H]4[C@@H]([C@H]([C@@H]([C@H](O4)CO)O)O)O)O.

3. Results and Discussion

Mpro (also called 3CLpro) protease is considered an attractive protein target in COVID-19 drug discovery and, in particular, for the screening of compounds that could inhibit the replication of coronaviruses [39]. The SARS-CoV–2 protease shares more than 95% identity with SARS-CoV-1 Mpro [59] and has a fundamental role in the life cycle of coronaviruses. No similar homologues are present in humans, rendering it a first-choice target in selective anti-COVID-19 therapy, and noteworthily, some of the repurposed drugs [35] used for COVID-19 therapy are protease inhibitors [60]. Based on the prominent role of Mpro as a SARS-CoV–2 target, 10 phytochemicals (Figure 2) identified in Opuntia ficus-indica were docked to the Mpro structure with Mcule-1-Click [41,44], a docking server powered by Autodock Vina [45].
Five of the studied phytochemicals (from two phytochemical families: polyphenol acids and flavonoids) were endowed with a high affinity towards Mpro, with binding energy values lower than −7.0 kcal/mol associated with the top ranked poses, as reported in Table 1.
In particular, astragalin showed, in silico, the highest affinity score (with a binding energy of −7.9 kcal/mol computed for the top scoring pose, Table 1) and, thus, the most stable complex for Mpro. The predicted stability was also higher than that previously reported for the protease N3 inhibitor [61]. Interestingly, astragalin showed higher affinity than both commercial anti-COVID-19 drugs, like chloroquine, and natural molecules supposed to fight against the SARS-CoV-2 infection, like artemisinin and hesperidin, that showed binding energies ranging from −4.1 to −5.8 kcal/mol as emerged from previous computational studies on Mpro inhibitors [62]. Other good binding energy scores were predicted for isorhamnetin, quercetin 5,4′-dimethyl ether, and isorhamnetin 3-O-glucoside, as well as for 3-O-caffeoyl quinic acid (−7.1 kcal/mol, for the top ranked pose).
Figure 2. Structure representations for the Mpro ligands investigated in this work with IUPAC and use names, SMILES strings, predicted LogP values, druglikeness, and PAINS scores (where applicable).
Figure 2. Structure representations for the Mpro ligands investigated in this work with IUPAC and use names, SMILES strings, predicted LogP values, druglikeness, and PAINS scores (where applicable).
Symmetry 13 01041 g002
Table 1. Binding affinities of Opuntia-derived compounds to Mpro. Compound structures were found in the PubChem database (https://pubchem.ncbi.nlm.nih.gov/), from which SMILES strings were extracted, or drawn in 2D using the molecular editor of Mcule 1-Click docking platform [44] and docked against the crystal structure of unliganded SARS-CoV-2 main protease (PDB ID: 6Y84). The binding energy (BE) values (scores of top ranked poses and averages of the top four poses ± standard deviation, in kcal/mol) are listed below.
Table 1. Binding affinities of Opuntia-derived compounds to Mpro. Compound structures were found in the PubChem database (https://pubchem.ncbi.nlm.nih.gov/), from which SMILES strings were extracted, or drawn in 2D using the molecular editor of Mcule 1-Click docking platform [44] and docked against the crystal structure of unliganded SARS-CoV-2 main protease (PDB ID: 6Y84). The binding energy (BE) values (scores of top ranked poses and averages of the top four poses ± standard deviation, in kcal/mol) are listed below.
Compound NameMpro
BE of Top Scoring Pose
Mpro
BE-Average Score
Standard DeviationReference
on Compound Detection in Opuntia spp.
sinapic acid−6.1−5.70.2Elkadi et al. [32]
ferulic acid−5.7−5.650.05Guevara-Figueroa et al. [63]
ferulic acid hexoside−6.8−6.6250.178Elkadi et al. [32]
3-O-caffeoyl quinic acid−7.1−6.9250.249Elkadi et al. [32]
quinic acid−5.7−5.250.36Ammar et al. [64]
caffeic acid−5.7−5.6250.083Ammar et al. [64]
isorhamnetin−7.3−6.6250.536Elkadi et al. [32]
isorhamnetin 3-O-glucoside−7.5−6.750.46Guevara-Figueroa et al. [63]
quercetin 5,4′-dimethyl ether−7.3−6.3750.683Elkadi et al. [32]
astragalin−7.9−7.20.4Elkadi et al. [32]
N3 inhibitor [61]−7.6 Bharadwaj et al. [61]
We examined the astragalin–protease complex structure for the pose with the lowest binding energy by the ProteinPlus software and noticed that the plant compound was involved in multiple H-bonding, with residues Phe140 and Glu166 of the viral protein, two main amino acid residues also involved in the interaction of N3 inhibitor with the same protease target [56,65]. Interestingly, these two residues were also previously associated with the interaction of other molecules investigated as anti-COVID-19 drugs and endowed with Mpro inhibitory activity [66,67].
Multiple H-bonding was also predicted by ProteinPlus in the cases of 3-O-caffeoyl quinic acid and SARS-CoV-2 Mpro Cys145, Ser144, His163, Leu141, and Thr26 (Figure 4A), as well of isorhamnetin with protease Gln189, Thr26, and Asn142 residues (Figure 4B).
Figure 3. Top ranked pose views (A,B), 2D protein–ligand interaction diagrams obtained by ProteinPlus (C) and PLIP (Protein–Ligand Interaction Profiler, D) for the interaction between astragalin and Mpro and the N3 inhibitor/astragalin(cyan)-bound Mpro structural comparison (E), obtained by the matchmaker tool embedded in UCSF Chimera [51].
Figure 3. Top ranked pose views (A,B), 2D protein–ligand interaction diagrams obtained by ProteinPlus (C) and PLIP (Protein–Ligand Interaction Profiler, D) for the interaction between astragalin and Mpro and the N3 inhibitor/astragalin(cyan)-bound Mpro structural comparison (E), obtained by the matchmaker tool embedded in UCSF Chimera [51].
Symmetry 13 01041 g003aSymmetry 13 01041 g003b
Isorhamnetin 3-O-glucoside and quercetin 5,4′-dimethyl ether were predicted to bind Mpro not only by means of the molecule H-bonding with Thr26, Thr24, Gln189, Leu141, Gly143, Asn142 (isorhamnetin 3-O-glucoside), His41, and Asn142 (quercetin 5,4′-dimethyl ether), but also due to the hydrophobic contacts with Thr25 and His41, respectively (Figure 4C,D).
Figure 4. 2D protein–ligand interaction diagrams obtained by ProteinPlus at the active site of Mpro for 3-O-caffeoyl quinic acid (A), isorhamnetin (B), isorhamnetin 3-O-glucoside (C), and quercetin 5,4′-dimethyl ether (D).
Figure 4. 2D protein–ligand interaction diagrams obtained by ProteinPlus at the active site of Mpro for 3-O-caffeoyl quinic acid (A), isorhamnetin (B), isorhamnetin 3-O-glucoside (C), and quercetin 5,4′-dimethyl ether (D).
Symmetry 13 01041 g004
In our prediction, isorhamnetin formed H-bonds with three protease residues, while its glucoside form interacted with six amino acids involving three additional H-bonds, as we expected for its more highly hydroxylated nature, and the hydrophobic interaction with Thr25 (Figure 4C,D).
Comparing isorhamnetin and quercetin 5,4′-dimethyl ether, the latter was involved in a hydrophobic interaction with protease His41, while the former, with an additional phenolic OH, showed a higher propensity for H-bonding (Figure 4B,D). Nevertheless, the overall binding energies (BE for the top-ranked poses and BE-average scores) that emerged from our simulation for the complexes formed by these two compounds with Mpro were quite similar, as shown in Table 1.
Overall, despite more H-bonding interaction being observed for 3-O-caffeoyl quinic acid, isorhamnetin, and isorhamnetin 3-O-glucoside, astragalin was predicted by ProteinPlus to interact with Phe140 and Glu166, which are two main acceptors that have already been described in the literature for the interaction of sugar-containing ligands with the same target [68] and for the N3 inhibitor of Mpro [56].
However, the higher affinity for Mpro predicted for astragalin with respect to the other natural ligands could not be fully explained by the only two H-bonds evidenced by ProteinPlus, and thus, we decided to investigate this aspect in more detail, using the program PLIP (Protein–Ligand Interaction Profiler, https://plip-tool.biotec.tu-dresden.de/), for better describing the interactions occurring between the protease binding site amino acids and the ligand.
Additional H-bondings with His163 and Gln189, as well as hydrophobic interactions with Thr25 and Glu166, were revealed for astragalin in a complex with Mpro by PLIP (Figure 3D). We superimposed and aligned the protein complex structures containing the N3 inhibitor (PDB ID: 6LU7) and astragalin (using the best ranked pose for the docking of the protease with the natural compound). By complex structures comparison, we observed that the sugar moiety of astragalin, whose H-bonding with Gln189 was evidenced by PLIP software, was found in the spatial region where the two Val3-involving amide bonds of N3 inhibitor were placed (Figure 3E), whilst the aromatic flavonol moieties lay in the region occupied by the hydrophobic/aromatic 2-oxo-3-pyrrolidinyl and benzyl moieties of the N3 inhibitor (Figure 3E), where they formed hydrophobic interactions with Thr25 and Glu166, as well as H-bonding with His163 (Figure 3D).
The docking experiment with astragalin was repeated using COVID-19 Docking Server [52], a web platform for docking different classes of ligands to SARS-CoV-2-associated protein targets. The dockings on this web-based server were performed by us choosing the exhaustiveness level as 12, with a higher level of this parameter being considered to provide more precise docking results [52]. This web-based docking platform has been carefully validated by the developers to evaluate their docking protocols, by conducting several re-dock experiments for those targets whose experimental complex structures were available. Most of the complex structures, including that of the Mpro with N3 inhibitor, were reproduced by using the docking procedure on the web server (Tables S1 and S2 in Supplementary Information of [52]).
The main results of this investigation are reported in Table 2. Interestingly, astragalin showed a high affinity for the selected COVID-19 protein target, with binding energy scores ranging from −6.90 to −8.70 kcal/mol and RF (pKd) scores varying between 5.40 and 6.03.
Table 2. COVID-19 Docking Server [52] analysis of astragalin-Mpro binding. Pose numbers, scoring function (RF-Score, pKd), and binding energy (score value, kcal/mol) values are reported.
Table 2. COVID-19 Docking Server [52] analysis of astragalin-Mpro binding. Pose numbers, scoring function (RF-Score, pKd), and binding energy (score value, kcal/mol) values are reported.
Pose n.RF-Score
(pKd)
Score Value
(Kcal/mol)
16.03−8.70
25.95−8.40
35.51−7.60
45.40−7.40
55.93−7.40
65.68−7.30
75.57−7.00
85.52−6.90
95.34−6.90
105.48−6.80
The binding affinity predicted for the top ranked pose of the compound-Mpro complex (−8.7 kcal/mol) was higher than that (−7.9 kcal/mol) indicated by 1-Click Mcule (Table 1) [44], whilst the structure of the complex (Figure 5A,B) resembled only partially that shown in 1-Click Mcule structure viewer. In the complex structure predicted by COVID-19 Docking Server the sugar moiety replaced the astragalin phenol in the proximity of the region of the β-sheet made of His163-Glu166, belonging to the catalytic pocket (Figure 5A,B).
We identified pan-assay interference compounds (PAINS) in our collection of Opuntia-derived compounds to exclude the molecules with promiscuous behavior that, due to their chemical structures, could lead to false positive results in different biological screening assays. [69] To this scope, we used the PAINS Remover, a software able to identify PAINS in screening libraries. [58]
Out of the 10 evaluated compounds, only 3-O-caffeoyl quinic acid and caffeic acid were filtered out by the PAINS Remover and by SwissADME [57] (Figure 2), indicating no potential PAINS in the majority of the investigated Opuntia phytochemicals, including astragalin, the leading compound that emerged from our study (Figure 2).
Figure 5. Top ranked pose views (A) for the interaction between astragalin and Mpro, as predicted by the COVID-19 Docking Server [52]. Comparison of the complex structures predicted for astragalin by 1-Click (B, left) [44] and the COVID-19 Docking Server (B, right) [52], as visualized with UCSF Chimera [51].
Figure 5. Top ranked pose views (A) for the interaction between astragalin and Mpro, as predicted by the COVID-19 Docking Server [52]. Comparison of the complex structures predicted for astragalin by 1-Click (B, left) [44] and the COVID-19 Docking Server (B, right) [52], as visualized with UCSF Chimera [51].
Symmetry 13 01041 g005aSymmetry 13 01041 g005b
The last aspect examined in the present computational study was the potential hepatotoxicity of the most promising Opuntia-derived compound emerging from our work, together with other toxicity properties.
As can be seen in Table 3, there was no significant hepatotoxic effect predicted for astragalin.
This is in accord with what has been reported previously on this flavonol glycoside, including the astragalin hepatoprotective effect [70], and suggests that this compound could be well-tolerated by the liver in a hypothetic therapeutic approach. Moreover, no drug-induced mutagenicity nor any important skin sensitization was predicted (Table 3).
Table 3. Toxicity properties of astragalin predicted by ADMETlab. Notice the low toxic potential of the Opuntia-derived compound under investigation.
Table 3. Toxicity properties of astragalin predicted by ADMETlab. Notice the low toxic potential of the Opuntia-derived compound under investigation.
Human Hepatotoxicity
(H-HT)
Skin SensitizationAmes Mutagenicity
(Ames)
Category *000
Probability0.0320.260.48
* Category 0: H-HT negative (−); not-sensitizer; Ames negative (−). Category 1: H-HT positive (+); sensitizer; Ames positive (+).
The findings of this study are interesting, opening the way to further in silico and in vitro investigations on astragalin and, more generally, on the flavonol glycosides with similar structures extracted from Opuntia spp. for anti-COVID-19 therapeutic approaches.

4. Conclusions

We examined 10 compounds discovered in Opuntia ficus-indica, a typical cactus plant of common dietary and phytotherapeutic use, and found that five of them showed a good predicted affinity for the main protease of SARS-CoV-2, a first choice target in the COVID-19 drug discovery. Among these phytochemicals, the chiral astragalin emerged as the most promising potential inhibitor of Mpro. This compound showed binding energy scores of −7.9 kcal/mol and −8.7 kcal/mol (corresponding to the top scoring poses obtained by 1-Click Mcule [44] and the COVID-19 Docking Server [52], respectively), higher than the Mpro N3 inhibitor, revealing a strong interaction with the protease target. Overall, this chiral compound interacted with Mpro amino acids like Phe140, His163, Glu166, and Gln189 by H-bonding and with Thr25 and Glu166 by hydrophobic interactions. Interestingly, these are also residues involved in the Mpro binding of the N3 inhibitor [56]. Moreover, our computational studies suggested that Opuntia-derived flavonol glycosides are interesting derivatives with low toxic potential. These natural products show good binding affinities for Mpro, and their direct use or chemical derivatization could lead to potentially effective treatments for COVID-19. Despite a predicted affinity for Mpro lower than astragalin, quercetin 5,4′-dimethyl ether, a phytochemical isolated not only from Opuntia ficus-indica, but also from other plants like Rhododendron ellipticum [71], used as folk medicine to suppress cough [72], was an interesting candidate as an Mpro inhibitor that was still endowed with a good binding affinity (−7.3 kcal/mol predicted for the top scoring pose). Since Autodock Vina software tends to underestimate the binding affinity of the ligands for the target [73], our complex could be endowed with an even lower binding energy and, thus, a higher affinity than that computed. In other terms, our study could inspire future clinical trials using some of the several commercially available Opuntia ficus-indica dietary supplements to ameliorate health conditions of COVID-19 patients, and from a molecular perspective, it could serve as a starting point for experimental investigations directed towards characterizing the above ligand–protease interactions and the in vitro/in vivo anti-SARS-CoV-2 effects of the different compounds extracted from Opuntia ficus-indica and from other Cactaceae family members.

Author Contributions

All authors contributed equally to the literature collection, writing, experimental design and research, data analysis, editing, and reviewing of the article. All authors have read and agreed to the published version of the manuscript.

Funding

This research did not receive any specific grants from funding agencies in the public, commercial, or not-for-profit sectors.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Acknowledgments

Some of the molecular graphics shown in this work were realized with UCSF Chimera, developed by the Resource for Biocomputing, Visualization, and Informatics at the University of California, San Francisco, with support from NIH P41-GM103311. We are grateful to Gergely Prikler and Gergely Takács (https://mcule.com, Mcule team, Hungary) for their kind support in molecular docking studies. In silico studies were performed by the authors in a smart-working mode (activated by Consiglio Nazionale delle Ricerche-CNR and University of Naples Federico II-UNINA during the COVID-19 crisis). We dedicate this study to all the health care workers and to all the people who suffered and still suffer around the world as a result of the COVID-19 pandemic.

Conflicts of Interest

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

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Figure 1. Photograph of Opuntia ficus-indica (fruits and cladodes, photograph taken by G. Roviello in Aversa, Italy) and schematic representation of the main strategy of the present study: literature data analysis and selection of Opuntia phytochemicals, followed by their computational evaluation as potential anti-COVID-19 drugs using Mpro as SARS-CoV-2 protein target.
Figure 1. Photograph of Opuntia ficus-indica (fruits and cladodes, photograph taken by G. Roviello in Aversa, Italy) and schematic representation of the main strategy of the present study: literature data analysis and selection of Opuntia phytochemicals, followed by their computational evaluation as potential anti-COVID-19 drugs using Mpro as SARS-CoV-2 protein target.
Symmetry 13 01041 g001
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Vicidomini, C.; Roviello, V.; Roviello, G.N. In Silico Investigation on the Interaction of Chiral Phytochemicals from Opuntia ficus-indica with SARS-CoV-2 Mpro. Symmetry 2021, 13, 1041. https://0-doi-org.brum.beds.ac.uk/10.3390/sym13061041

AMA Style

Vicidomini C, Roviello V, Roviello GN. In Silico Investigation on the Interaction of Chiral Phytochemicals from Opuntia ficus-indica with SARS-CoV-2 Mpro. Symmetry. 2021; 13(6):1041. https://0-doi-org.brum.beds.ac.uk/10.3390/sym13061041

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Vicidomini, Caterina, Valentina Roviello, and Giovanni N. Roviello. 2021. "In Silico Investigation on the Interaction of Chiral Phytochemicals from Opuntia ficus-indica with SARS-CoV-2 Mpro" Symmetry 13, no. 6: 1041. https://0-doi-org.brum.beds.ac.uk/10.3390/sym13061041

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