Peptipedia: a user-friendly web application and a comprehensive database for peptide research supported by Machine Learning approach

Quiroz, Cristofer; Saavedra, Yasna Barrera; Armijo-Galdames, Benjamin; Amado-Hinojosa, Juan; Olivera-Nappa, Alvaro; Sanchez-Daza, Anamaria; Medina-Ortiz, David

Abstract

Peptides have attracted attention during the last decades due to their extraordinary therapeutic properties. Different computational tools have been developed to take advantage of existing information, compiling knowledge and making available the information for common users. Nevertheless, most related tools available are not user-friendly, present redundant information, do not clearly display the data, and usually are specific for particular biological activities, not existing so far, an integrated database with consolidated information to help research peptide sequences. To solve these necessities, we developed Peptipedia, a user-friendly web application and comprehensive database to search, characterize and analyse peptide sequences. Our tool integrates the information from 30 previously reported databases with a total of 92 055 amino acid sequences, making it the biggest repository of peptides with recorded activities to date. Furthermore, we make available a variety of bioinformatics services and statistical modules to increase our tool's usability. Moreover, we incorporated a robust assembled binary classification system to predict putative biological activities for peptide sequences. Our tools' significant differences with other existing alternatives become a substantial contribution for developing biotechnological and bioengineering applications for peptides. Peptipedia is available for non-commercial use as an open-access software, licensed under the GNU General Public License, version GPL 3.0. The web platform is publicly available at peptipedia.cl.

Más información

Título según WOS: Peptipedia: a user-friendly web application and a comprehensive database for peptide research supported by Machine Learning approach
Título de la Revista: DATABASE-THE JOURNAL OF BIOLOGICAL DATABASES AND CURATION
Editorial: OXFORD UNIV PRESS
Fecha de publicación: 2021
DOI:

10.1093/database/baab055

Notas: ISI