Literature DB >> 25849257

Machine learning assisted design of highly active peptides for drug discovery.

Sébastien Giguère1, François Laviolette1, Mario Marchand1, Denise Tremblay2, Sylvain Moineau2, Xinxia Liang3, Éric Biron3, Jacques Corbeil4.   

Abstract

The discovery of peptides possessing high biological activity is very challenging due to the enormous diversity for which only a minority have the desired properties. To lower cost and reduce the time to obtain promising peptides, machine learning approaches can greatly assist in the process and even partly replace expensive laboratory experiments by learning a predictor with existing data or with a smaller amount of data generation. Unfortunately, once the model is learned, selecting peptides having the greatest predicted bioactivity often requires a prohibitive amount of computational time. For this combinatorial problem, heuristics and stochastic optimization methods are not guaranteed to find adequate solutions. We focused on recent advances in kernel methods and machine learning to learn a predictive model with proven success. For this type of model, we propose an efficient algorithm based on graph theory, that is guaranteed to find the peptides for which the model predicts maximal bioactivity. We also present a second algorithm capable of sorting the peptides of maximal bioactivity. Extensive analyses demonstrate how these algorithms can be part of an iterative combinatorial chemistry procedure to speed up the discovery and the validation of peptide leads. Moreover, the proposed approach does not require the use of known ligands for the target protein since it can leverage recent multi-target machine learning predictors where ligands for similar targets can serve as initial training data. Finally, we validated the proposed approach in vitro with the discovery of new cationic antimicrobial peptides. Source code freely available at http://graal.ift.ulaval.ca/peptide-design/.

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Year:  2015        PMID: 25849257      PMCID: PMC4388847          DOI: 10.1371/journal.pcbi.1004074

Source DB:  PubMed          Journal:  PLoS Comput Biol        ISSN: 1553-734X            Impact factor:   4.475


  33 in total

1.  Improved prediction of signal peptides: SignalP 3.0.

Authors:  Jannick Dyrløv Bendtsen; Henrik Nielsen; Gunnar von Heijne; Søren Brunak
Journal:  J Mol Biol       Date:  2004-07-16       Impact factor: 5.469

2.  Kernels for small molecules and the prediction of mutagenicity, toxicity and anti-cancer activity.

Authors:  S Joshua Swamidass; Jonathan Chen; Jocelyne Bruand; Peter Phung; Liva Ralaivola; Pierre Baldi
Journal:  Bioinformatics       Date:  2005-06       Impact factor: 6.937

3.  Kernel methods for predicting protein-protein interactions.

Authors:  Asa Ben-Hur; William Stafford Noble
Journal:  Bioinformatics       Date:  2005-06       Impact factor: 6.937

4.  Cyclic peptidyl inhibitors of Grb2 and tensin SH2 domains identified from combinatorial libraries.

Authors:  Yanyan Zhang; Shanggen Zhou; Anne-Sophie Wavreille; James DeWille; Dehua Pei
Journal:  J Comb Chem       Date:  2008-02-08

5.  A new type of synthetic peptide library for identifying ligand-binding activity.

Authors:  K S Lam; S E Salmon; E M Hersh; V J Hruby; W M Kazmierski; R J Knapp
Journal:  Nature       Date:  1991-11-07       Impact factor: 49.962

6.  General method for rapid synthesis of multicomponent peptide mixtures.

Authors:  A Furka; F Sebestyén; M Asgedom; G Dibó
Journal:  Int J Pept Protein Res       Date:  1991-06

7.  Affinity chromatography based on a combinatorial strategy for rerythropoietin purification.

Authors:  María C Martínez-Ceron; Mariela M Marani; Marta Taulés; Marina Etcheverrigaray; Fernando Albericio; Osvaldo Cascone; Silvia A Camperi
Journal:  ACS Comb Sci       Date:  2011-04-15       Impact factor: 3.784

8.  Further studies on the structure-activity relationships of bradykinin-potentiating peptides.

Authors:  J G Ufkes; B J Visser; G Heuver; H J Wynne; C Van der Meer
Journal:  Eur J Pharmacol       Date:  1982-04-08       Impact factor: 4.432

9.  High-throughput screening of one-bead-one-compound libraries: identification of cyclic peptidyl inhibitors against calcineurin/NFAT interaction.

Authors:  Tao Liu; Ziqing Qian; Qing Xiao; Dehua Pei
Journal:  ACS Comb Sci       Date:  2011-08-26       Impact factor: 3.784

10.  Stability selection for regression-based models of transcription factor-DNA binding specificity.

Authors:  Fantine Mordelet; John Horton; Alexander J Hartemink; Barbara E Engelhardt; Raluca Gordân
Journal:  Bioinformatics       Date:  2013-07-01       Impact factor: 6.937

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  11 in total

1.  Machine Learning of Global Phosphoproteomic Profiles Enables Discrimination of Direct versus Indirect Kinase Substrates.

Authors:  Evgeny Kanshin; Sébastien Giguère; Cheng Jing; Mike Tyers; Pierre Thibault
Journal:  Mol Cell Proteomics       Date:  2017-03-06       Impact factor: 5.911

Review 2.  What can machine learning do for antimicrobial peptides, and what can antimicrobial peptides do for machine learning?

Authors:  Ernest Y Lee; Michelle W Lee; Benjamin M Fulan; Andrew L Ferguson; Gerard C L Wong
Journal:  Interface Focus       Date:  2017-10-20       Impact factor: 3.906

Review 3.  A review on antimicrobial peptides databases and the computational tools.

Authors:  Shahin Ramazi; Neda Mohammadi; Abdollah Allahverdi; Elham Khalili; Parviz Abdolmaleki
Journal:  Database (Oxford)       Date:  2022-03-19       Impact factor: 4.462

Review 4.  Design of Membrane Active Peptides Considering Multi-Objective Optimization for Biomedical Application.

Authors:  Niels Röckendorf; Christian Nehls; Thomas Gutsmann
Journal:  Membranes (Basel)       Date:  2022-02-02

Review 5.  Machine learning-enabled discovery and design of membrane-active peptides.

Authors:  Ernest Y Lee; Gerard C L Wong; Andrew L Ferguson
Journal:  Bioorg Med Chem       Date:  2017-07-08       Impact factor: 3.641

6.  Cheminformatics-aided discovery of small-molecule Protein-Protein Interaction (PPI) dual inhibitors of Tumor Necrosis Factor (TNF) and Receptor Activator of NF-κB Ligand (RANKL).

Authors:  Georgia Melagraki; Evangelos Ntougkos; Vagelis Rinotas; Christos Papaneophytou; Georgios Leonis; Thomas Mavromoustakos; George Kontopidis; Eleni Douni; Antreas Afantitis; George Kollias
Journal:  PLoS Comput Biol       Date:  2017-04-20       Impact factor: 4.475

7.  Development of models for classification of action between heat-clearing herbs and blood-activating stasis-resolving herbs based on theory of traditional Chinese medicine.

Authors:  Zhao Chen; Yanfeng Cao; Shuaibing He; Yanjiang Qiao
Journal:  Chin Med       Date:  2018-02-27       Impact factor: 5.455

Review 8.  Computer-aided design of amino acid-based therapeutics: a review.

Authors:  Tayebeh Farhadi; Seyed MohammadReza Hashemian
Journal:  Drug Des Devel Ther       Date:  2018-05-14       Impact factor: 4.162

9.  Rational Discovery of Antimicrobial Peptides by Means of Artificial Intelligence.

Authors:  Paola Ruiz Puentes; Maria C Henao; Javier Cifuentes; Carolina Muñoz-Camargo; Luis H Reyes; Juan C Cruz; Pablo Arbeláez
Journal:  Membranes (Basel)       Date:  2022-07-14

10.  Morphing of Amphipathic Helices to Explore the Activity and Selectivity of Membranolytic Antimicrobial Peptides.

Authors:  Alex T Müller; Gernot Posselt; Gisela Gabernet; Claudia Neuhaus; Simon Bachler; Markus Blatter; Bernhard Pfeiffer; Jan A Hiss; Petra S Dittrich; Karl-Heinz Altmann; Silja Wessler; Gisbert Schneider
Journal:  Biochemistry       Date:  2020-09-16       Impact factor: 3.162

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