Peptides in chemical space

Peptides, defined as sequences of amino acids up to approximately 50 residues in length, represent an extremely large reservoir of potentially bioactive compounds, referred to here as the peptide chemical space. Recent advances in computer hardware and software have led to a wide application of comp...

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Main Authors: Alice Capecchi, Jean-Louis Reymond
Format: Article
Language:English
Published: Elsevier 2021-03-01
Series:Medicine in Drug Discovery
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2590098621000026
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spelling doaj-5d7cccc298da429bb4d470138871ddfc2021-02-27T04:40:11ZengElsevierMedicine in Drug Discovery2590-09862021-03-019100081Peptides in chemical spaceAlice Capecchi0Jean-Louis Reymond1Department of Chemistry and Biochemistry, University of Bern, Freiestrasse 3, 3012 Bern, SwitzerlandCorresponding author.; Department of Chemistry and Biochemistry, University of Bern, Freiestrasse 3, 3012 Bern, SwitzerlandPeptides, defined as sequences of amino acids up to approximately 50 residues in length, represent an extremely large reservoir of potentially bioactive compounds, referred to here as the peptide chemical space. Recent advances in computer hardware and software have led to a wide application of computational methods to explore this chemical space. Here, we review different in silico approaches including structure-based design, genetic algorithms, and machine learning. We also review the use of molecular fingerprints to sample virtual libraries and to visualize the peptide chemical space. Finally, we present an overview of the known peptide chemical space in form of an interactive map representing 40,531 peptides collected from eleven open-access peptide and peptide-containing databases, accessible at https://tm.gdb.tools/map4/peptide_databases_tmap/. These peptides are displayed as TMAP (Tree-Map) according to their molecular fingerprint similarity computed using MAP4, a MinHashed atom pair fingerprint well suited to analyze large molecules.http://www.sciencedirect.com/science/article/pii/S2590098621000026peptideschemical spacemachine learninggenetic algorithmmolecular fingerprintsdata visualization
collection DOAJ
language English
format Article
sources DOAJ
author Alice Capecchi
Jean-Louis Reymond
spellingShingle Alice Capecchi
Jean-Louis Reymond
Peptides in chemical space
Medicine in Drug Discovery
peptides
chemical space
machine learning
genetic algorithm
molecular fingerprints
data visualization
author_facet Alice Capecchi
Jean-Louis Reymond
author_sort Alice Capecchi
title Peptides in chemical space
title_short Peptides in chemical space
title_full Peptides in chemical space
title_fullStr Peptides in chemical space
title_full_unstemmed Peptides in chemical space
title_sort peptides in chemical space
publisher Elsevier
series Medicine in Drug Discovery
issn 2590-0986
publishDate 2021-03-01
description Peptides, defined as sequences of amino acids up to approximately 50 residues in length, represent an extremely large reservoir of potentially bioactive compounds, referred to here as the peptide chemical space. Recent advances in computer hardware and software have led to a wide application of computational methods to explore this chemical space. Here, we review different in silico approaches including structure-based design, genetic algorithms, and machine learning. We also review the use of molecular fingerprints to sample virtual libraries and to visualize the peptide chemical space. Finally, we present an overview of the known peptide chemical space in form of an interactive map representing 40,531 peptides collected from eleven open-access peptide and peptide-containing databases, accessible at https://tm.gdb.tools/map4/peptide_databases_tmap/. These peptides are displayed as TMAP (Tree-Map) according to their molecular fingerprint similarity computed using MAP4, a MinHashed atom pair fingerprint well suited to analyze large molecules.
topic peptides
chemical space
machine learning
genetic algorithm
molecular fingerprints
data visualization
url http://www.sciencedirect.com/science/article/pii/S2590098621000026
work_keys_str_mv AT alicecapecchi peptidesinchemicalspace
AT jeanlouisreymond peptidesinchemicalspace
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