| Literature DB >> 36232363 |
Cristian Arriaga-Canon1, Laura Contreras-Espinosa1, Rosa Rebollar-Vega2, Rogelio Montiel-Manríquez1, Alberto Cedro-Tanda3, José Antonio García-Gordillo4, Rosa María Álvarez-Gómez5, Francisco Jiménez-Trejo6, Clementina Castro-Hernández1, Luis A Herrera1,3.
Abstract
SARS-CoV-2 is a coronavirus family member that appeared in China in December 2019 and caused the disease called COVID-19, which was declared a pandemic in 2020 by the World Health Organization. In recent months, great efforts have been made in the field of basic and clinical research to understand the biology and infection processes of SARS-CoV-2. In particular, transcriptome analysis has contributed to generating new knowledge of the viral sequences and intracellular signaling pathways that regulate the infection and pathogenesis of SARS-CoV-2, generating new information about its biology. Furthermore, transcriptomics approaches including spatial transcriptomics, single-cell transcriptomics and direct RNA sequencing have been used for clinical applications in monitoring, detection, diagnosis, and treatment to generate new clinical predictive models for SARS-CoV-2. Consequently, RNA-based therapeutics and their relationship with SARS-CoV-2 have emerged as promising strategies to battle the SARS-CoV-2 pandemic with the assistance of novel approaches such as CRISPR-CAS, ASOs, and siRNA systems. Lastly, we discuss the importance of precision public health in the management of patients infected with SARS-CoV-2 and establish that the fusion of transcriptomics, RNA-based therapeutics, and precision public health will allow a linkage for developing health systems that facilitate the acquisition of relevant clinical strategies for rapid decision making to assist in the management and treatment of the SARS-CoV-2-infected population to combat this global public health problem.Entities:
Keywords: RNA therapeutics; SARS-CoV-2; precision medicine; precision public health; transcriptomics
Mesh:
Substances:
Year: 2022 PMID: 36232363 PMCID: PMC9570475 DOI: 10.3390/ijms231911058
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 6.208
Figure 1Research applications of SARS-CoV-2 viral infection using transcriptome analysis. Analysis of the transcriptome of viral infection by SARS-CoV-2 has focused primarily on three areas: (A) the investigation of the biological nature and taxonomy of the virus. The study of taxonomy has focused primarily on the characterization of the SARS-CoV-2 genome and the mutations it presents, which has led to the identification of new variants of the virus. (B) Analysis of differentially expressed genes in patients with COVID-19 infection. Analysis of the transcriptome of patients who are hosts of this virus has allowed the identification of differentially expressed genes that deregulate the intracellular signaling pathways involved in infection and viral pathogenesis, as well as their relationship with the presence of variants of the virus, which, together with the characterization of variants, has allowed the identification of new therapeutic targets, as well as new molecular diagnostic biomarkers, which may be useful in the prognosis of patients with severe disease and differential diagnosis of the variants of the virus, as well as the distinction of respiratory pathologies of different etiologies. (C) The development of new methodologies for transcriptome analysis. To optimize research in these areas, new experimental strategies have been developed that allow for obtaining more information about viral pathogenesis such as spatial transcriptomics, as well as new bioinformatics strategies such as the development of new workflows that optimize the detection of variants during sequencing, as well as the joint analysis of the host transcriptome and the virus by Dual-Seq, which optimizes resources for the study of SARS-CoV-2.
Overview of software used for scRNAseq data analysis.
| Software | Category | Reference * |
|---|---|---|
| TopHat2 v2.1.1 | Read mapping | |
| STAR v2.7.10a | Read mapping | |
| HISAT2 v2.2.2 | Read mapping | |
| Cufflinks v0.17.3 | Expression | |
| RSEM v1.1.17 | Expression | |
| StringTie v2.1.0 | Expression | |
| Cell Ranger v3.1.0 | Align reads, generate feature-barcode matrices, perform clustering and other secondary analyses | |
| Seurat v4.0 | Filter based on RNA, number of detect genes, and number of | |
| Scrublet v0.2.1 | Single-cell remover of doublets | |
| SoupX v1.2.2 | estimation and removal of cell free mRNA contamination | |
| Waterfall | Dimensionality reduction | |
| TSCAN v1.0 | Dimensionality reduction |
* Recent program versions were considered. 13 September 2022 was taken as the latest date to access.
Figure 2Single-cell RNA-seq applications for COVID-19 clinical research. (A) A typical scRNAseq workflow consists of sampling followed by single-cell sorting and library preparation, which involve the ligation of adapters and sample indices, allowing for the pooling and sequencing of multiple libraries on a next-generation short read sequencer and the subsequent cell type identification by transcriptomic analysis. This approach has multiple applications in COVID-19 clinical research, such as: (B) the characterization of new cell-type-specific interactions, particularly among epithelial and immune cells, mediated by ACE2 receptor and pro-inflammatory elements such as CCL2, CXCL1, IL1B, and TNF, which together are involved in viral transmission and could allow the identification of novel potential sites for viral transmission; (C) the identification of cell-type-specific expression profiles associated with clinical features of interest, such as the characterization of cell subpopulations by their expression of ACE2, TMPRSS2, and CTSL, which together have been associated with clinical variables such as age, sex, and severity of disease in COVID-19 patients, allowing for the identification of prognostic clinical biomarkers; and (D) finally, scRNA transcriptomics in COVID-19 allows for the identification of biomarkers for differential diagnostic and prognostic tests using the characterization of transcriptomic changes in CD4+ and CD8+ cell subtypes, which mediate the host adaptative immune response, regulate viral infection and pathogenic processes, and are associated with disease stages and COVID-19 severity.
Clinical studies related to COVID-19 and scRNAseq.
| Study | Status | Interventions | Outcome Measures | Enrolled Patients | Locations | Identifier |
|---|---|---|---|---|---|---|
| COVID-2019 Vaccine Immune Response Based on Single Cell Multi-Omics | Recruiting | Biological: recent vaccination | Changes in classification of human peripheral blood mononuclear cells | 50 | China | NCT04871932 |
| Virological and Immunological Monitoring in Patients (Suspected of/Confirmed With) COVID-19 | Active, not recruiting | Procedure: blood draw | Identification of cytokines and chemokines associated with COVID-19 severity and outcome | 109 | Belgium | NCT04904692 |
| COVID-19 in Baselland: Investigation and Validation of Serological Diagnostic Assays and Epidemiological Study of SARS-CoV-2 Specific Antibody Responses | Recruiting | Diagnostic test: blood draw | Qualitative method validation (yes/no) | 550 | Switzerland | NCT04483908 |
| Myeloid Cells in Patients with COVID-19 Pneumonia | Not yet recruiting | Other: blood sampling | Myeloid cell subpopulation phenotype | 120 | France | NCT04590261 |
Figure 3Approaches to nucleic acid-based therapy against SARS-CoV-2. (A) Scheme of viral infection with SARS-CoV-2. After viral binding to cell receptors, the viral particle is internalized and then releases viral RNA to the cytoplasm, where viral components are synthesized. At this point, free viral RNA in the cytoplasm can be targeted. (B) One of the strategies for targeting viral RNA inside the cell is the use of siRNAs; these small molecules (~20 nt) regulate RNA degradation through their interaction with the RISC complex. The activated RISC complex binds to its target, resulting in RNA cleavage and degradation; the use of siRNAs targeting SARS-CoV-2 has been successful in vitro and in vivo. (C) Another approach to targeting this virus is the use of ASOs; these molecules mediate RNA cleavage by recruiting RNAse H and interfere with replication, transcription, and transduction, resulting in decreased viral RNA and protein levels. ASOs have been successfully used to target SARS-CoV-2 in vitro. (D) The use of genome-editing tools has increased the possibilities for SARS-CoV-2 treatment, while the use of CRISPR-Cas13 has been successful in targeting this virus in vitro and in vivo, resulting in a reduction in viral RNA and protein, a decrease in viral infection, and a decrease in COVID-19-associated symptoms. (E) For the successful targeting of viral RNA, the use of an efficient delivery method that guarantee the proper release of the therapeutic nucleic acid to the cell is important. For the internalization of negatively charged nucleic acids into the cell, the use of cationic compounds and lipid-based delivery methods have been successfully used for this particular therapy via intravenous or inhalation delivery.
Figure 4Precision public health and precision medicine in the SARS-CoV-2 era. Conceptual framework showing the integrated relevance of PPH and PM in response to the emergence of the COVID-19 pandemic. (A) Respiratory illness outbreak. Cases of a new respiratory illness began to increase. (B) Molecular diagnosis. Access to accurate tests allowed the confirmation of cases, and RT–qPCR is the gold standard (sensitivity 93% and specificity 100%) [231,232]. (C) Epidemiological surveillance. Clinical and population data are integrated by the epidemiological surveillance centers of the region. (D) Measures to mitigate infections. Social distancing and mask use are implemented to reduce contagions. (E) Clinical and pathological features. Eventually, with the increase in the number of cases, it is possible to build a clinical and epidemiological profile, identifying risk factors and prognostic tools [233]. (F) Deep pathogenic and immunological characterization. In an approach driven by technological development, it was possible to perform a molecular characterization of the viral agent and to establish its infectious nature, as well as the susceptibilities of populations in cellular, transcriptomic, genomic, and epigenomic approaches [228]. (G) Machine learning (ML)- and deep learning (DL)-based models for identifying new molecular targets. The complementary method to conventional health care has been implemented based on AI such as ML and DL to identify patterns of susceptibility and potential targets for drug development and vaccine development [234]. (H) Vaccine development and new and repurposed drugs for SARS-CoV-2 infection. Ultimately, with the advent of vaccines [235] and new drugs [236,237] useful against COVID-19, they open the door to evaluating their efficacy on an ongoing basis with the goal of targeting the right intervention to the right population at the right time.