| Literature DB >> 31052532 |
Abstract
Oceans abound in resources of various kinds for R&D and for commercial applications. Monitoring and bioprospecting allow the identification of an increasing number of key natural resources. Macroalgae are essential elements of marine ecosystems as well as a natural resource influenced by dynamic environmental factors. They are not only nutritionally attractive but have also demonstrated potential health benefits such as antioxidant, antihypertensive, and anti-inflammatory activities. Several bioactive peptides have been observed following enzymatic hydrolysis of macroalgal proteins. In addition, significant differences in protein bioactivities and peptide extracts of wild and cultivated macroalgae have been highlighted, but the metabolic pathways giving rise to these bioactive molecules remain largely elusive. Surprisingly, the biochemistry that underlies the environmental stress tolerance of macroalgae has not been well investigated and remains poorly understood. Proteomic and functional genomic approaches based on identifying precursor proteins and bioactive peptides of macroalgae through integrated multi-omics analysis can give insights into their regulation as influenced by abiotic factors. These strategies allow evaluating the proteomics profile of regulation of macroalgae in response to different growth conditions as well as establishing a comparative transcriptome profiling targeting structural protein-coding genes. Elucidation of biochemical pathways in macroalgae could provide an innovative means of enhancing the protein quality of edible macroalgae. This could be ultimately viewed as a powerful way to drive the development of a tailored production and extraction of high value molecules. This review provides an overview of algal proteins and bioactive peptide characterization using proteomics and transcriptomic analyses.Entities:
Keywords: bioactive peptides; edible macroalgae; health food; metabolic pathways; protein quality; proteomics; transcriptomics
Mesh:
Substances:
Year: 2019 PMID: 31052532 PMCID: PMC6539653 DOI: 10.3390/molecules24091708
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.411
Figure 1General strategy for the characterization of macroalgal proteins and bioactive peptides and the determination of their gene coding sequence using proteomic and transcriptomic analyses.
Bioactivity of peptides derived from marine macroalgae protein hydrolysates.
| Macroalgae | Activity | References |
|---|---|---|
| Cardioprotective, antidiabetic, antioxidant | [ | |
| Angiotensin converting enzyme (ACE) inhibitor, antioxidant | [ | |
| Antioxidant | [ | |
| Renin inhibitor | [ | |
| Antioxydant, ACE inhibitor | [ | |
| ACE inhibitor | [ | |
| Antioxidant, anti-acetylcholinesterase, anti-inflammatory | [ | |
| Anti-hypertensive, antidiabetic, antioxidant | [ | |
| Anti-proliferative | [ | |
| ACE inhibitor | [ | |
| ACE inhibitor | [ | |
| Antioxidant | [ | |
| Antioxidant | [ | |
| Antibacterial | [ |
Typical Proteomic approaches according to the investigation of how protein regulation in macroalgae can be influenced by abiotic stress.
| Macroalgae | Proteomic Approaches | Generating Raw Data | Alignment and Identification | Data Analysis | Reference |
|---|---|---|---|---|---|
|
| Proteins analyzed by MS by a bottom–up approach (smaller peptides derived from enzymatic digestion of proteins) | 2D-Electrophoresis; MALDI-TOF MS | Mascot aligner; MoverZ and NCBI non-redundant protein database | Protein identification was accepted with a MASCOT score higher than 60 with more than five matched peptides. The MASCOT protein search was performed via all plants’ database. | [ |
| Proteins analyzed by MS by a bottom–up approach | 2D-Electrophoresis; MALDI-TOF/TOF MS | Mascot aligner; NCBI and SwissProt database | According to the search engine parameters, scores greater than 65 ( | [ | |
| Proteins analyzed by MS by a bottom–up approach | 2D-Electrophoresis; Nano-LC-MS/MS coupled on-line to a LTQ Orbitrap Discovery system mass spectrometer | PEAKS Studio software. | ExPASy Compute pI/MW tool; Protein functional classification using KEGG pathway analysis. | [ | |
| Proteins analyzed by MS by a bottom–up approach | 2D-Electrophoresis; MALDI-TOF/TOF MS | Mascot aligner; NCBI non-redundant FASTA database and UniProt database | Protein functional classification using KEGG pathway analysis; Protein-protein association information evaluated with the STRING database against | [ |
Typical transcriptomic approaches according to the investigation of how gene expression in macroalgae can be influenced by abiotic stress.
| Macroalgae | Planning and Data Generation | Transcriptome Assembly | Expression Quantification | Differential Expression | Reference |
|---|---|---|---|---|---|
| Copper treatments were conducted by transferring the juvenile sporophytes to fresh seawater with final Cu2+ concentrations of 10, 100, and 200 μg L−1. Illumina Hiseq sequencing. | De novo transcriptome assembly with Trinity. Functional annotation using the basic local alignment search tool and a translated nucleotide query (BLASTX) against the non-redundant protein and non-redundant nucleotide databases of the NCBI, Protein family, SwissProt, eukaryotic Ortholog Groups (KOG), and the KEGG databases. Functional annotation by Gene Ontology (GO) was performed using Blast2GO software. | Transcript quantification with RSEM. Validation of the differentially expressed genes (DEGs) by RT-qPCR. | Compared with the control, the number of DEGs was 11,350 (4944 up- and 6406 downregulated) in the 200 μg L−1 treatment group and 2868 (1075 up- and 1793 downregulated) in the 100 μg L−1 treatment group, whereas much fewer DEGs were detected in the 10 μg L−1 treatment group. | [ | |
| Three specimens of | The assembly was aligned against the Florideophyceae. EST NCBI database. Taxonomic and functional analysis performed on assembled sequences using the Newbler software, and annotated, using the MG-RAST server, through BLAST, against the GenBank, COG, KEGG and Subsystems databases. | PCR amplification. | A total of 6 transcriptomes were obtained from specimens of | [ | |
| Three different stresses: (hyposaline, hypersaline, oxidative). 90,637 EST sequences used for the microarray design. | Sequences were annotated with KEGG orthology (KO) numbers using KOBAS and with GO terms using GOPET. Protein sequences corresponding to the assembled EST sequences were predicted using ORF predictor. | RT-qPCR validation of the microarray. | 70% of the expressed genes are regulated in response to at least one of these stressors. | [ |