| Literature DB >> 32149573 |
Mukesh Kumar Awasthi1,2, B Ravindran3, Surendra Sarsaiya4, Hongyu Chen5, Steven Wainaina2, Ekta Singh6, Tao Liu1, Sunil Kumar6, Ashok Pandey7, Lal Singh6, Zengqiang Zhang1.
Abstract
The study of metagenomics is an emerging field that identifies the total genetic materials in an organism along with the set of all genetic materials like deoxyribonucleic acid and ribose nucleic acid, which play a key role with the maintenance of cellular functions. The best part of this technology is that it gives more flexibility to environmental microbiologists to instantly pioneer the immense genetic variability of microbial communities. However, it is intensively complex to identify the suitable sequencing measures of any specific gene that can exclusively indicate the involvement of microbial metagenomes and be able to advance valuable results about these communities. This review provides an overview of the metagenomic advancement that has been advantageous for aggregation of more knowledge about specific genes, microbial communities and its metabolic pathways. More specific drawbacks of metagenomes technology mainly depend on sequence-based analysis. Therefore, this 'targeted based metagenomics' approach will give comprehensive knowledge about the ecological, evolutionary and functional sequence of significantly important genes that naturally exist in living beings either human, animal and microorganisms from distinctive ecosystems.Entities:
Keywords: deoxyribonucleic acid; genomics; metagenomics; microbial metagenomes; ribose nucleic acid
Mesh:
Substances:
Year: 2020 PMID: 32149573 PMCID: PMC7161568 DOI: 10.1080/21655979.2020.1736238
Source DB: PubMed Journal: Bioengineered ISSN: 2165-5979 Impact factor: 6.832
Figure 1.General process of metagenomic workflow.
Characteristics of different classifiers.
| Type | Classifier | Custom databases | Generates abundance profile | Memory required | Time required | Reference |
|---|---|---|---|---|---|---|
| DNA | CLARK | Yes | Yes | 80 Gb | 2 min | [ |
| Kraken | Yes | Yes | 190 Gb | 1 min | [ | |
| MegaBLAST | Yes | No | 61 Gb | 4 h | [ | |
| Prophyle | Yes | No | 40 Gb | 40 min | [ | |
| Protein | DIAMOND | Yes | No | 110 Gb (varies) | 10 min | [ |
| Markers | MetaPhlAn2 | No | Yes | 2 Gb | 1 min | [ |
| mOTUs2 | No | Yes | 2 Gb | 1 min | [ |
Figure 4.Schematic overview of the flow of resistant microbes (bacteria) and resistance genes in the food supply chain.
Correlation between soil physicochemical parameters and bacterial OTUs.
| Taxa | Parameters | Positive correlation (+) | References |
|---|---|---|---|
| Proteobacteria | pH | + | [ |
| Total organic carbon | + | [ | |
| Total nitrogen | + | [ | |
| Phosphorus | + | [ | |
| Actinobacteria | pH | + | [ |
| Total organic carbon | - | [ | |
| Total nitrogen | - | [ | |
| Phosphorus | - | [ | |
| Acidobacteria | pH | - | [ |
| Total organic carbon | + | [ | |
| Total nitrogen | + | [ | |
| Phosphorus | + | [ | |
| Firmicutes | pH | - | [ |
| Total organic carbon | + | [ | |
| Total nitrogen | ns | [ | |
| Phosphorus | ns | [ | |
| Bacteroidetes | pH | + | [ |
| Total organic carbon | - | [ | |
| Total nitrogen | - | [ | |
| Phosphorus | + | [ | |
| Verrucomicrobia | pH | - | [ |
| Total organic carbon | + | [ | |
| Total nitrogen | ns | [ | |
| Phosphorus | + | [ | |
| Planctomycetes | pH | - | [ |
| Total organic carbon | + | [ | |
| Total nitrogen | + | [ | |
| Phosphorus | + | [ | |
| Cyanobacteria | pH | - | [ |
| Total organic carbon | + | [ | |
| Total nitrogen | + | [ | |
| Phosphorus | ns | [ | |
| Armatimonadetes | pH | + | [ |
| Total organic carbon | - | [ | |
| Total nitrogen | - | [ | |
| Phosphorus | ns | [ | |
| Chloroflexi | pH | + | [ |
| Total organic carbon | ns | [ | |
| Total nitrogen | - | [ | |
| Phosphorus | ns | [ |
ns – no significance.
Figure 2.Systematic presentation of several environmental factors influencing soil microbial diversity.
Figure 5.An overview of biotechnological tools for microbial community analysis.
Figure 3.Systematic presentation of metagenomics.
Summary of recent research literature on the microbial community.
| Region | Year | Published research themes | Process, tools and techniques | Key research outcomes | References |
|---|---|---|---|---|---|
| Saudi Arabia | 2020 | Metagenomics-based evaluation of microbial profiles | Shotgun metagenomic tools; CosmosID metagenomic software; high performance k-mer algorithm databases | Metagenomics revealed a lower alpha diversity for both bacteria and virus | [ |
| United States of America | 2019 | Whole metagenomic sequencing for microbial community | Whole metagenome sequencing; Descriptive analyses using SAS® 9.4 | whole metagenomics approach to characterize sediment microbial biodiversity | [ |
| China | 2019 | Metagenomic sequencing for microbial gene catalog | Metagenomic sequencing using an Illumina Hiseq 2000 sequencing system; MetaGene predicted an open reading frames (ORFs); Gene taxonomic classification using BLASTP search | Metagenomic sequencing is conducted to investigate the microbial gene catalog | [ |
| Singapore | 2019 | Bioinformatics analysis of metagenomics data of biogas-producing microbial communities | Next-generation sequencing (NGS) technologies used for qualitative and quantitative analysis of the microbial communities | Described the procedure of processing metagenomics data of microbial communities for revealing metagenomics characterization using bioinformatics approaches | [ |
| China | 2019 | Metatranscriptomics for rhizosphere microbiomes | Random-primed cDNA libraries using the NEBNext Ultra Directional RNA Library Prep Kit for Illumina; The cDNA libraries using the Experion DNA 12 K Analysis Kit (Bio-Rad) and quantified using the Qubit dsDNA HS Assay kit | Metatranscriptomics revealed significant eCO2 effects on the composition and activity of the grassland microbiomes | [ |
| China | 2020 | Metagenomic insights for microbial community and antimicrobial resistance genes | Shotgun metagenomics sequences processed using Trimmomatic 0.36 and Bowtie2 via the KneadData wrapper software; MEGAHIT v1.1.3 used for de novo metagenomic assembly analyses; The draft genomes annotated using Prokka software and eggNOG-mapper (based on eggNOG 4.5 orthology | The results give first metagenomic insights into the salt-mediated changes in microbial community composition and a broad view of associated antibiotic resistance genes in the process of food fermentation. | [ |
| Canada | 2018 | Mining metagenomic and metatranscriptomic data for microbial metabolic functions | Metagenomics and metatranscriptomics, including nucleic acid extraction, sequencing platform selection, library construction, quality control of sequencing outputs, compositional analysis, assembly-based functional analysis, assembly-free functional analysis, and comparative analysis. | Metagenomics and metatranscriptomics can arrest the whole genome and transcriptome range of microorganisms through sequencing entire DNA/RNA, providing both taxonomic and functional information with high resolution | [ |
| Switzerland and Israel | Microbial Metagenomics Mock Scenario-based Sample Simulation (M3S3) | Microbial Metagenomics Mock Scenario-based Sample Simulation (M3S3) workflow generate virtual samples from raw reads or assemblies | The M3S3 tool is support the progress and authentication of identical metagenomics applications | [ |
Figure 6.Illustration of potential microbial immigration in (a) waterbodies and distribution system, and (b) wastewater treatment plants.