Submitted:
21 April 2026
Posted:
24 April 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. A Categorized Overview of the Major Plant Peptide Databases
2.1. Focus on Model Plant Species
2.1.1. Arabidopsis-Centric Databases
2.1.2. Databases for Other Model Species
2.2. Data Type and Peptide Classes
2.2.1. Proteome Databases
2.2.2. Phosphoproteome Databases
2.2.3. Specialized Peptide Databases
2.3. Data Integration and Aggregation
2.3.1. Integrative Databases
2.3.2. Aggregative Portals
3. A Comparative Analysis of Database Features and Functionalities
3.1. Data Search and Retrieval
3.1.1. Search Capabilities
3.1.2. Data Filtering and Sorting
3.1.3. Data Visualization
3.2. Data Annotation and Curation
3.2.1. Annotation Quality
3.2.2. Data Validation
3.2.3. Data Update Frequency
3.3. Data Accessibility and User Friendliness
3.3.1. Web Interface Design
3.3.2. Data Download Options
3.3.3. Documentation and Support
| SL.No. | Peptide Database | Description | URL |
| 1 | Plant Genome Database (PGDB) | Provides genomic data on plants, including peptide sequences derived from transcriptomics and proteomics studies. | https://www.plantgenome.org/ |
| 2 | Plant Peptide Database (PPD) | One of the largest plant peptide databases, containing both known and predicted peptides across various plant species. | https://plantpeptide.science.ddbj.nig.ac.jp |
| 3 | PeptideDB | A focused database on antimicrobial peptides (AMPs) in plants, crucial for plant defense mechanisms. | https://www.peptidedb.org |
| 4 | PLANTCYC | Integrates peptide data with metabolic pathways, providing insights into the biochemistry and functions of plant peptides. | https://plantcyc.org |
| 5 | AntiPlantPePdb | A database dedicated to plant peptides with antimicrobial properties, often involved in plant-pathogen interactions. | http://antiplantpepd.jnu.ac.in |
| 6 | PlantGDB | A major resource for plant gene data, including those coding for peptides. It covers a wide variety of species. | http://www.plantgdb.org |
| 7 | PlantAMP Database | A focused database on antimicrobial peptides (AMPs) in plants, crucial for plant defense mechanisms. |
https://www.cbs.dtu.dk/services/PlantAMP |
| 8 | PepBind | Focuses on plant peptides that interact with binding proteins, playing roles in signaling and regulation. | http://pepbinding.org |
| 9 | Peptaibol Database | A database for peptaibols, a class of plant peptides with antimicrobial properties. | http://www.peptaibol.org |
| 10 | PhyPep | A comprehensive database cataloging peptides from various plant species with evolutionary insights and functional data. | https://www.phypep.org |
| 11 | Arabidopsis Peptide Database (AtPePDB) | A specialized database for peptides from the model plant Arabidopsis thaliana. | https://www.arabidopsis-peptide-db.org |
| 12 | Soybean Peptide Database (SoyPepDB) | Focuses on peptides from Glycine max, including those involved in plant stress response and defense. | https://www.soypepd.org |
| 13 | LegumePePdb | This database focuses on peptides from legumes, an important group of plants for agriculture. | http://legumepedb.jnu.ac.in |
| 14 | MASCP Gator | MASCP Gator offers features like peptide search, peptide hover, enhanced track navigation, and data visualization tracks for various aspects of peptide and protein information related to Arabidopsis thaliana. | http://gator.masc-proteomics.org/ |
| 15 | PhosPhAt 4.0 | Arabidopsis Protein Phosphorylation Site Database (PhosPhAt 4.0) predict phosphorylation site and insight about peptide properties. | https://phosphat.uni-hohenheim.de/ |
| 16 | PhytAMP | PhytAMP database provides valuable information on antimcrobial plant peptides. | http://phytamp.pfba-lab-tun.org/main.php |
| 17 | C-PAmP | C-PAmP database of computationally predicted plant antimicrobial peptides. | http://bioserver-2.bioacademy.gr/Bioserver/C-PAmP/ |
| 18 | MFPPDB | A comprehensive multi-functional plant peptide database with 1,482,409 peptides from 121 plant | http://124.223.195.214:9188/mfppdb/index |
| 19 | GabiPD | GabiPD provide Proteomics data, PTM and functional plant protein. | https://www.gabipd.org/ |
| 20 | ncPlantDB | ncPlantDB is a non-coding RNA database for plants that focuses on cataloging non-coding RNAs (ncRNAs, ncRNAs are important for the regulation of peptide and protein functions in plants. | http://www.ncplantdb.com/ |
| 21 | PGSB/MIPS PlantsDB | The PlantsDB at PGSB/MIPS serves as a resource for genomic, transcriptomic, proteomic data as well as includes peptide sequences and protein-coding genes. of a wide range of plant species. | https://plants.ensembl.org |
| 22 | PlantAFP | It is a specialized database dedicated to Antifungal Peptides (AFPs) in plants. | http://bioinformatics.cimap.res.in/sharma/PlantAFP/. |
| 23 | BIOPEP-UWM | This bioinformatics resource designed to analyze and predict bioactive peptides. | https://biochemia.uwm.edu.pl/biopep/start_biopep.php |
| 24 | Phytoserf | Phytoserf is a database that integrates information on small secreted proteins (SSPs) and peptides from plants including SSP sequences, annotations, and functional classifications. |
http://phytoserf.com/ |
| 25 | AHPD | Arabidopsis Hormone Peptide Database (AHPD) is a specialized database that focuses on peptide hormones in Arabidopsis thaliana. | https://www.ahpd.uni-bayreuth.de |
4. Methodological Considerations in Plant Peptide Database Construction
4.1. Data Acquisition Techniques
4.1.1. Mass Spectrometry
4.1.2. High-Performance Liquid Chromatography (HPLC)
4.1.3. Bioinformatics Tools
4.2. Data Curation and Validation
4.2.1. Data Cleaning and Filtering
4.2.2. Data Validation Strategies
4.2.3. Quality Control Metrics
5. Applications of Plant Peptide Databases in Research
5.1. Discovery of Novel Peptides
5.2. Functional Annotation of Peptides
5.3. Predictive Modeling
5.4. Studies of Peptide-Protein Interactions
5.4.1. Docking and Molecular Dynamics Simulations
5.4.2. Experimental Validation of Predicted Interactions
6. Future Directions and Challenges in Plant Peptide Database Development
6.1. Data Integration and Standardization
6.2. Data Quality and Validation
6.2.1. Development of Improved Data Validation Methods
6.2.2. Implementation of Quality Control Metrics
6.2.3. Enhanced Data Accessibility and User Friendliness
6.2.4. Development of User-Friendly Web Interfaces
6.2.5. Development of Improved Search and Data Visualization Tools
6.3. Addressing Gaps in Coverage
7. Conclusion: Plant Peptide Databases as Essential Tools for Plant Biology Research
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