| Literature DB >> 36066672 |
Massimiliano Chetta1, Marina Tarsitano2, Maria Oro2, Maria Rivieccio2, Nenad Bukvic3.
Abstract
BACKGROUND: In the last 2 years, we have been fighting against SARS-CoV-2 viral infection, which continues to claim victims all over the world. The entire scientific community has been mobilized in an attempt to stop and eradicate the infection. A well-known feature of RNA viruses is their high mutational rate, particularly in specific gene regions. The SARS-CoV-2 S protein is also affected by these changes, allowing viruses to adapt and spread more easily. The vaccines developed using mRNA coding protein S undoubtedly contributed to the "fight" against the COVID-19 pandemic even though the presence of new variants in the spike protein could result in protein conformational changes, which could affect vaccine immunogenicity and thus vaccine effectiveness.Entities:
Keywords: Exogenous RNA; Host cell network modulation; Human miRNAs; In silico analysis; RNA-binding proteins (RBPs); SARS-CoV-2
Year: 2022 PMID: 36066672 PMCID: PMC9446605 DOI: 10.1186/s43141-022-00413-5
Source DB: PubMed Journal: J Genet Eng Biotechnol ISSN: 1687-157X
Fig. 1The analysis pipeline's main steps and bioinformatics tools. There are five steps in the pipeline: Step 1: Identify conserved motifs by aligning and analyzing all RNA coding spike protein and vaccine sequences. MEME output is the second step. The analysis reveals the presence of three distinct motifs across the entire S sequence (box red, light blue, and green). The identified nucleotide sequences are listed below the alignment. Step 3: The sequences were fed into TomTom, which compared the newly discovered motifs to the database of Homo sapiens RNA-binding motifs. For all motif queries, a list of Human RNA-binding proteins was obtained (box red, light blue, and green). Step 4: STRING is used to look for RBP protein interactions in metabolic pathways. Step 5: The same motifs are used as a query for TomTom to find mature microRNAs within conserved sequences using the micro-RNA database. The list of 39 miRNA was obtained and used in GeneCodis4 and MIENTURNET as a query. The results of the two software programs are combined to infer possible shreds of evidence of significant concurrent annotations (computational or experimental), with those that are significantly enriched being evaluated
The in silico sequences of the three motifs identified in S protein-encoding mRNA, the RBPs capable of binding the sequences, and the miRNAs with similar sequences to the motif are reported in the table
Fig. 3GeneCodis4 provided the network plots and bar chart results. Co-annotation and enrichment network plot (A). Only three miRNA interact with each other with a primary cytoplasmic localization as part of cytoplasmic ribonucleoprotein granules processing bodies, according to GeneCodis4 analysis of all 39 miRNA interactions (P-bodies). Each bar’s length corresponds to the −log10 (Adj. Pval) and the number of significant annotations found to agree with the color intensity (B)
Fig. 2STRING output showing the possible connection between RBPs. The specific RBPs capable of binding the identified target are highlighted in red, light blue, and green
Fig. 4The output of MIENTURNET. The miRNAs that are similar to each motif are separated into boxes. The three miRNAs identified by GeneCodis4 analysis are highlighted in the networks