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Structure-based virtual screening and Molecular Dynamic Simulations identified FDA-approved molecules as potential inhibitors against the surface proteins of H1N1

biorxiv(2023)

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Abstract
H1N1, a subtype of influenza A virus, remains a global concern due to its ability to cause highly contagious, and fatal infections of the respiratory tract that can lead to seasonal pandemics. Factors such as genetic reassortment and antigenic shift due to the segmented nature of its RNA genome, lead to its rapid evolution that impacts drug and vaccine interactions. Thus, there is growing interest in identifying small-molecules against H1N1 to address the challenges posed by its ever-changing nature and enhance ability to combat the virus. By targeting the surface proteins crucial in the viral life cycle and interactions with host cells, we conducted structure-based virtual screening of 2,471 FDA-approved small molecules against H1N1’s hemagglutinin (HA) and neuraminidase (NA) using molecular docking, and molecular dynamic simulations. A binding pocket for HA was identified at the interface of the three protomers, close to the fusion peptide, while in the case of NA the co-crystal ligand binding site was targeted. We identified 5 molecules, namely Econazole, Butoconazole, Miconazole, Isoconazole, and Tioconazole with higher binding affinity to HA and 4 molecules, namely Acarbose, Rutin, Paromomycin, and Idarubicin showing superior binding affinity to NA. Further molecular dynamic simulation of these molecules bound with HA and NA reaffirm the stability of the complexes. These molecules are known to have antifungal and antiviral properties. Thus, this study elucidates the importance of targeting HA and NA and paves the way for repurposing existing antivirals, antibacterials, and antifungals as inhibitors of the H1N1 viral entry into host cells. ### Competing Interest Statement The authors have declared no competing interest.
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