Downloads provided by UsageCountsSerial co-expression analysis of host factors from SARS-CoV viruses highly converges with former high-throughput screenings and proposes key regulators
Serial co-expression analysis of host factors from SARS-CoV viruses highly converges with former high-throughput screenings and proposes key regulators
Abstract The current genomics era is bringing an unprecedented growth in the amount of gene expression data, only comparable to the exponential growth of sequences in databases during the last decades. This data allow the design of secondary analyses that take advantage of this information to create new knowledge. One of these feasible analyses is the evaluation of the expression level for a gene through a series of different conditions or cell types. Based on this idea, we have developed Automatic and Serial Analysis of CO-expression, which performs expression profiles for a given gene along hundreds of heterogeneous and normalized transcriptomics experiments and discover other genes that show either a similar or an inverse behavior. It might help to discover co-regulated genes, and common transcriptional regulators in any biological model. The present severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) pandemic is an opportunity to test this novel approach due to the wealth of data that are being generated, which could be used for validating results. Thus, we have identified 35 host factors in the literature putatively involved in the infectious cycle of SARS-CoV viruses and searched for genes tightly co-expressed with them. We have found 1899 co-expressed genes whose assigned functions are strongly related to viral cycles. Moreover, this set of genes heavily overlaps with those identified by former laboratory high-throughput screenings (with P-value near 0). Our results reveal a series of common regulators, involved in immune and inflammatory responses that might be key virus targets to induce the coordinated expression of SARS-CoV-2 host factors.
Gene Expression Regulation, Viral, SARS-CoV-2, coronavirus, COVID-19, Computational Biology, Co-expressed genes, SARS-CoV, co-expressed genes, High-Throughput Screening Assays, Coronavirus, reverse engineering, Humans, Interferons, Reverse engineering, Co-regulated genes, Molecular Biology, Algorithms, Information Systems, co-regulated genes
Gene Expression Regulation, Viral, SARS-CoV-2, coronavirus, COVID-19, Computational Biology, Co-expressed genes, SARS-CoV, co-expressed genes, High-Throughput Screening Assays, Coronavirus, reverse engineering, Humans, Interferons, Reverse engineering, Co-regulated genes, Molecular Biology, Algorithms, Information Systems, co-regulated genes
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