| Literature DB >> 29678128 |
Krittima Anekthanakul1, Apiradee Hongsthong2, Jittisak Senachak2, Marasri Ruengjitchatchawalya3,4.
Abstract
BACKGROUND: Bioactive peptides, including biological sources-derived peptides with different biological activities, are protein fragments that influence the functions or conditions of organisms, in particular humans and animals. Conventional methods of identifying bioactive peptides are time-consuming and costly. To quicken the processes, several bioinformatics tools are recently used to facilitate screening of the potential peptides prior their activity assessment in vitro and/or in vivo. In this study, we developed an efficient computational method, SpirPep, which offers many advantages over the currently available tools.Entities:
Keywords: Bioactive peptide discovery; Bioactive peptides; GBrowse; Genome; In silico; SpirPep
Mesh:
Substances:
Year: 2018 PMID: 29678128 PMCID: PMC5910554 DOI: 10.1186/s12859-018-2143-0
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Key performance comparison of ‘SpirPep’ to other bioactive peptide identification tools
| Category | Bioactive peptide identification tool | Input | In silico peptide digestion | Bioactive peptide prediction | Result of in silico peptide digestion/bioactive peptide prediction tool | Accessibility | |||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Bioactivity | No. of known bioactive peptide sequence | ||||||||||
| No. of protein per analysis | No. of Enzyme selection | No. of Miscleavage | Yes/No | Identification | Original protein track back | Resulting peptide categorized by enzyme | Protein-peptide alignment visualization by GBrowse | ||||
| In silico peptide digestion tool | PeptideCutter tool | 1 protein | 1–29 | N/A | No | N/A | N/A | N/A | √ | N/A |
|
| Bioactive peptide prediction tool | PeptideLocator | 1 Uniprot ID (≤10,000 aa) | N/A | N/A | Yes | N/A | Unknown | N/A | N/A | N/A |
|
| PeptideRanker | Up to 150 peptides | N/A | N/A | Yes | N/A | Unknown | N/A | N/A | N/A |
| |
| In silico peptide digestion and bioactive peptide prediction tool | mMass | 1 protein | 1 | As user input | Yes | √ | 612 sequences | N/A | N/A | N/A | Standalone version ( |
| BIOPEP | 1 protein | 1–3 | N/A | Yes | √ | 3587 sequences | N/A | N/A | N/A |
| |
| SpirPep (In this study) | Thousands proteins or the whole genome | 1–15 | 0–3 | Yes | √ | 28,892 sequences | √ | √ | √ |
| |
√ = Available; N/A = Not available
Names and descriptions of online bioactive peptide databases (Accessed 11 January 2018)
| No. | Database name | Biological Function | Database Description | Last Update | Reference |
|---|---|---|---|---|---|
| 1. | APD | Antimicrobial | Antimicrobial and anticancer peptides | Jan 2018 | [ |
| 2. | BACTIBASE | Antibacterial | Antibacterial peptides (Bacteriocins) | May 2017 | [ |
| 3. | BAGEL3 | Antibacterial | Antibacterial peptides (Bacteriocins) | a/2018 | [ |
| 4. | CAMP | Antimicrobial | Antimicrobial peptides and proteins | Apr 2010b | [ |
| 5. | Defensins knowledgebase | Defensin, Antimicrobial | Antimicrobial peptides from the defensin family | Aug 2010b | [ |
| 6. | EROP-Moscow | - | Endogenous Regulatory oligopeptides | Nov 2016 | [ |
| 7. | Hmrbase | Hormone | Hormones & receptors | May 2009 | [ |
| 8. | PenBase | Antimicrobial | Database of antimicrobial peptides from penaeid shrimps | Now not available (Jul 2008) | [ |
| 9. | PeptideDB | Various bioactivities | Biologically active peptides, peptide precursors and motifs in Metazoa. | Apr 2008 | [ |
| 10. | PhytAMP | Antimicrobial | Antimicrobial peptides and proteins of plant origin | Jan 2012 | [ |
| 11. | RAPD | Antimicrobial | Recombinant antimicrobial peptides | Now not available (Mar 2010) | [ |
| 12. | ACEpepDB | Antihypertensive | Food derived antihypertensive peptides that are available in the literature | Now not available (a/2011) | [ |
| 13. | BIOPEP | Various bioactivities | Food proteins | a/2008b | [ |
arepresents an unavailable month
bThe database is updated but not shown the date on the website
Fig. 1Database schematic diagram for all databases in the SpirPep web application: a FrontendDB, b CoreDB, c SpirPepApps and d GBrowseDB
Fig. 2SpirPep workflow: This workflow is based on the in silico peptide digestion for bioactive peptide discovery. There were three modules: a data collection and pre-processing: the protein sequences were sent to the Protein database; b in silico peptide digestion: protein sequences were digested with the selected enzymes and the miscleavage number and non-redundant digested peptides were removed to classify them into three groups by peptide length (very short, short, and long peptides); and c bioactivity identification and clustering where these peptide groups were compared against the bioactive peptide sequences with the different methods with 100% in both identity and query or subject coverage
Output comparison between SpirPep and BIOPEP, the identified bioactive peptides obtained from temperature stress – expressed protein [30] digested with trypsin and no miscleavage
| In silico peptide digestion tool | No. of peptide | No. of bioactive peptide (Percentage of No. of peptides) | |
|---|---|---|---|
| SpirPep | BIOPEP | ||
| SpirPep | 4333 | 418 (9.65) | 371 (8.56) |
| BIOPEP | 4556 | 450 (9.88) | 399 (8.76) |
Output comparison of identified bioactive peptides of genomic proteins of Arthrospira platensis strain C1 from SpirPep by selecting trypsin and thermolysin enzyme with miscleavage allowed up to three miscleavages against SpirPep in-house bioactive peptide and BIOPEP
| Selected enzymes | Miscleavage option | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 0 | 1 | 2 | 3 | |||||||||
| No. of peptide | No. of bioactive peptidea | No. of peptide | No. of bioactive peptidea | No. of peptide | No. of bioactive peptidea | No. of peptide | No. of bioactive peptidea | |||||
| SpirPep | BIOPEP | SpirPep | BIOPEP | SpirPep | BIOPEP | SpirPep | BIOPEP | |||||
| Trypsin | 99,905 | 298 (0.3%) | 247 (0.25%) | 135,899 | 48 (0.04%) | 39 (0.03%) | 137,309 | 1 (0%) | 1 (0%) | 133,145 | 0 (0%) | 0 (0%) |
| Thermolysin | 115,846 | 302 (0.26%) | 249 (0.21%) | 285,983 | 182 (0.06%) | 140 (0.05%) | 403,052 | 56 (0.01%) | 32 (0.01%) | 449,652 | 15 (0%) | 10 (0%) |
a The number in bracket is the percentage of bioactive peptide