Bioinformatic Tools for NGS-Based Metagenomics to Improve the Clinical Diagnosis of Emerging, Re-Emerging and New Viruses.
Marta Ibañez LligoñaSergi Colomer-CastellAlejandra González-SánchezJosep GregoriCarolina CamposDamir Garcia-CehicCristina AndrésMaria PiñanaTomàs PumarolaFrancisco Rodriguez-FríasAndrés AntónJosep QuerPublished in: Viruses (2023)
Epidemics and pandemics have occurred since the beginning of time, resulting in millions of deaths. Many such disease outbreaks are caused by viruses. Some viruses, particularly RNA viruses, are characterized by their high genetic variability, and this can affect certain phenotypic features: tropism, antigenicity, and susceptibility to antiviral drugs, vaccines, and the host immune response. The best strategy to face the emergence of new infectious genomes is prompt identification. However, currently available diagnostic tests are often limited for detecting new agents. High-throughput next-generation sequencing technologies based on metagenomics may be the solution to detect new infectious genomes and properly diagnose certain diseases. Metagenomic techniques enable the identification and characterization of disease-causing agents, but they require a large amount of genetic material and involve complex bioinformatic analyses. A wide variety of analytical tools can be used in the quality control and pre-processing of metagenomic data, filtering of untargeted sequences, assembly and quality control of reads, and taxonomic profiling of sequences to identify new viruses and ones that have been sequenced and uploaded to dedicated databases. Although there have been huge advances in the field of metagenomics, there is still a lack of consensus about which of the various approaches should be used for specific data analysis tasks. In this review, we provide some background on the study of viral infections, describe the contribution of metagenomics to this field, and place special emphasis on the bioinformatic tools (with their capabilities and limitations) available for use in metagenomic analyses of viral pathogens.
Keyphrases
- quality control
- data analysis
- immune response
- high throughput
- genetic diversity
- sars cov
- copy number
- antibiotic resistance genes
- genome wide
- single cell
- mass spectrometry
- working memory
- dna methylation
- liquid chromatography
- clinical practice
- inflammatory response
- gene expression
- multidrug resistant
- wastewater treatment
- antimicrobial resistance
- toll like receptor
- deep learning
- high resolution
- machine learning
- nucleic acid
- simultaneous determination
- gas chromatography
- circulating tumor