| Literature DB >> 32375367 |
Reuben Maghembe1,2,3, Donath Damian1, Abdalah Makaranga2,4, Stephen Samwel Nyandoro5, Sylvester Leonard Lyantagaye1,6, Souvik Kusari7, Rajni Hatti-Kaul3.
Abstract
"Omics" represent a combinatorial approach to high-throughput analysis of biological entities for various purposes. It broadly encompasses genomics, transcriptomics, proteomics, lipidomics, and metabolomics. Bacteria and microalgae exhibit a wide range of genetic, biochemical and concomitantly, physiological variations owing to their exposure to biotic and abiotic dynamics in their ecosystem conditions. Consequently, optimal conditions for adequate growth and production of useful bacterial or microalgal metabolites are critically unpredictable. Traditional methods employ microbe isolation and 'blind'-culture optimization with numerous chemical analyses making the bioprospecting process laborious, strenuous, and costly. Advances in the next generation sequencing (NGS) technologies have offered a platform for the pan-genomic analysis of microbes from community and strain downstream to the gene level. Changing conditions in nature or laboratory accompany epigenetic modulation, variation in gene expression, and subsequent biochemical profiles defining an organism's inherent metabolic repertoire. Proteome and metabolome analysis could further our understanding of the molecular and biochemical attributes of the microbes under research. This review provides an overview of recent studies that have employed omics as a robust, broad-spectrum approach for screening bacteria and microalgae to exploit their potential as sources of drug leads by focusing on their genomes, secondary metabolite biosynthetic pathway genes, transcriptomes, and metabolomes. We also highlight how recent studies have combined molecular biology with analytical chemistry methods, which further underscore the need for advances in bioinformatics and chemoinformatics as vital instruments in the discovery of novel bacterial and microalgal strains as well as new drug leads.Entities:
Keywords: bacteria; biosynthetic gene clusters; drug discovery; microalgae; omics
Year: 2020 PMID: 32375367 PMCID: PMC7277505 DOI: 10.3390/antibiotics9050229
Source DB: PubMed Journal: Antibiotics (Basel) ISSN: 2079-6382
Figure 1A typical workflow for conventional bioprospecting and drug discovery.
Figure 2A typical workflow for omics, integrating molecular, chemical, and computational science to elucidate the potential of microorganisms and molecules for therapeutics.
Figure 3Structures of selected bioactive metabolites from bacteria and microalgae: (a) 5-methoxy-2-[(4-methylbenzyl)sulfanyl]-1H-benzimidazole, a potent antibiofilm compound; (b) 2-[(4-chloro-benzyl)thio]-5-methoxy-1H-benzimidazole, an antibiofilm compound; (c) γ-linolenic acid, a fatty acid with multiple bioactivities. i.e., neuromodulatory, antimicrobial activity etc.; (d) sulfoquinovosyl diacyl glycerol, an antiviral sulfo-glycolipid; (e) oleandomycin; an antibacterial molecule; (f) C-phycocyanin, a pigment with pluripotecy; antiviral, anticancer, antioxidant activities, etc.; (g) 3-((6-methylpyrazin-2-yl)methyl)-1H-indole, an antibacterial alkaloid; (h) 2-(furan-2-yl)-6-(2,3,4-trihydroxybutyl)pyrazine, an antiviral alkaloid; (i) geosmin, a biomarker for several soil actinomycetes; (j) clavulatriene A; (k) clavulatriene B, antibacterial and anticancer lead compounds (j,k).
Full genomes of selected bacteria and microalgal species available in databases.
| Strain | Domain | Phylum | Genome Size | Reference |
|---|---|---|---|---|
|
| Prokaryota | Cyanobacteria | 6.0 Mb | [ |
|
| Prokaryota | Cyanobacteria | 6.62 Mb | [ |
|
| Prokaryota | Cyanobacteria | 6.0 Mb | NCBI |
|
| Eukaryota | Chlorophyta | 40.934 | NCBI |
|
| Eukaryota | Chlorophyta | 37.34 Mb | [ |
|
| Prokaryota | Cyanobacteria | 7.97 Mb | [ |
|
| Prokaryota | Actinobacteria | 8.345 Mbp | [ |
| Prokaryota | Actinobacteria | 5.715 Mb | [ | |
| Prokaryota | Firmicutes | 3.7 Mb | [ |
Examples of bioactive lipids from bacteria and microalgae.
| Lipid | Source Microorganisms | Bioactivity | Reference |
|---|---|---|---|
| Sulfoquinovosyldiacyl glycerol (SQDG) | Antiviral and immunomodulatory | [ | |
| Sulfoquinovosylmonoacyl glycerol (SQMG) | Antiviral and immunomodulatory | [ | |
| Gamma-linoleic acid | Immunomodulatory and neurological | [ | |
| Alpha-linoleic acid | Neuroprotective | [ | |
| Kalkitoxin |
| Neurotoxin | [ |
| Antillatoxin |
| Neurotoxin | [ |
Examples of heterologously expressed genes for biosynthetic pathways of selected biologically active compounds from bacteria and microalgae.
| Metabolite | Metabolite Classes | Gene | Source Microorganism | Bioactivities | Factory | Reference |
|---|---|---|---|---|---|---|
| Lyngbyatoxin | NRP | NRPS |
| Anticancer |
| [ |
| Epoxomicin | NRP/PK | NRPS/PKS complex | S. | Anti-inflammatory, Anticancer, Antiplasmodium | [ | |
| Eponemycin | NRP | NRPS/PKS complex | S. | Anti-inflammatory, Anticancer, Antiplasmodium | [ | |
| Cyanovirin N | RP | RiPPs |
| Antiviral |
| [ |
| Oleandomycin | PKS | OlePKS |
| Antibacterial |
| [ |
| Cinnamycin | RP | RiPPs | Antibiotic |
| [ |
Figure 4A typical workflow of the OSMAC approach for the discovery of versatile drug leads.
Figure 5Chemical structures of some selected bacterial and microalgal compounds screened by computer-aided drug design, demonstrating their relevance in vitro and promising further testing. (a) (E)-dec-5-enoic acid; (b) heptanoic acid; (c) (E)-17-(5-isopropylhept-5-en-2-yl)-10,13-dimethyl 2,3,4,7,8,9,10,11,12,13,14,15,16,17-tetradecahydro-1H-cyclopenta[a]phenanthrene; (d) 17-(5-ethyl-6-methylheptan-2-yl)-10,13-dimethyl 2,3,4,7,8,9,10,11,12,13,14,15,16,17-tetradecahydro-1H-cyclopenta-[a]phenanthrene; (e) (E)-undec-4-enoic acid.
Databases and software tools for virtual screening of drug leads.
| Tool | Database/Software | Application | URL |
|---|---|---|---|
| DrugBank | Drug Database | Pharmacological assessment of compounds through search |
|
| BinBase | Metabolomic database | Similarity search for metabolites |
|
| MetaboLights database | Metabolomic database | Search for metabolites |
|
| HMDB | Metabolomic database | Clinical chemistry, biomarker discovery and general education |
|
| Click2Drug | Browser/Database | Search for integrated tools for CADD |
|
| PubChem | Database | Chemical molecule search |
|
| SciFinder | Database | Chemical molecule search |
|
| LiSiCA | Software | Searches for 2D and 3D similarities between a reference compound and a database of target compounds |
|
| MedChem Studio | Software | Data visualization, compound clustering, high throughput screening analysis, lead identification and prioritization, de novo design, scaffold hopping, lead optimization |
|
| PyRx | Software | Virtual Screening for Computational Drug Discovery, target screening |
|
| CRISPRdisco | Software | Identification of CRISPR repeat-spacer arrays and |
|