Literature DB >> 21470169

Quantitative chemogenomics: machine-learning models of protein-ligand interaction.

Claes R Andersson1, Mats G Gustafsson, Helena Strömbergsson.   

Abstract

Chemogenomics is an emerging interdisciplinary field that lies in the interface of biology, chemistry, and informatics. Most of the currently used drugs are small molecules that interact with proteins. Understanding protein-ligand interaction is therefore central to drug discovery and design. In the subfield of chemogenomics known as proteochemometrics, protein-ligand-interaction models are induced from data matrices that consist of both protein and ligand information along with some experimentally measured variable. The two general aims of this quantitative multi-structure-property-relationship modeling (QMSPR) approach are to exploit sparse/incomplete information sources and to obtain more general models covering larger parts of the protein-ligand space, than traditional approaches that focuses mainly on specific targets or ligands. The data matrices, usually obtained from multiple sparse/incomplete sources, typically contain series of proteins and ligands together with quantitative information about their interactions. A useful model should ideally be easy to interpret and generalize well to new unseen protein-ligand combinations. Resolving this requires sophisticated machine-learning methods for model induction, combined with adequate validation. This review is intended to provide a guide to methods and data sources suitable for this kind of protein-ligand-interaction modeling. An overview of the modeling process is presented including data collection, protein and ligand descriptor computation, data preprocessing, machine-learning-model induction and validation. Concerns and issues specific for each step in this kind of data-driven modeling will be discussed.
© 2011 Bentham Science Publishers

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Year:  2011        PMID: 21470169     DOI: 10.2174/156802611796391249

Source DB:  PubMed          Journal:  Curr Top Med Chem        ISSN: 1568-0266            Impact factor:   3.295


  4 in total

1.  Elucidating protein inter- and intramolecular interacting domains using chemical cross-linking and matrix-assisted laser desorption ionization-time of flight/time of flight mass spectrometry.

Authors:  Gwënaël Pottiez; Pawel Ciborowski
Journal:  Anal Biochem       Date:  2011-12-13       Impact factor: 3.365

2.  Unsupervised Machine Learning-Based Analysis of Clinical Features, Bone Mineral Density Features and Medical Care Costs of Rotator Cuff Tears.

Authors:  Tong-Fu Wang; De-Sheng Chen; Jia-Wang Zhu; Bo Zhu; Zeng-Liang Wang; Jian-Gang Cao; Cai-Hong Feng; Jun-Wei Zhao
Journal:  Risk Manag Healthc Policy       Date:  2021-09-22

Review 3.  A review on computer-aided chemogenomics and drug repositioning for rational COVID-19 drug discovery.

Authors:  Saeid Maghsoudi; Bahareh Taghavi Shahraki; Fatemeh Rameh; Masoomeh Nazarabi; Yousef Fatahi; Omid Akhavan; Mohammad Rabiee; Ebrahim Mostafavi; Eder C Lima; Mohammad Reza Saeb; Navid Rabiee
Journal:  Chem Biol Drug Des       Date:  2022-09-22       Impact factor: 2.873

4.  Chemically Aware Model Builder (camb): an R package for property and bioactivity modelling of small molecules.

Authors:  Daniel S Murrell; Isidro Cortes-Ciriano; Gerard J P van Westen; Ian P Stott; Andreas Bender; Thérèse E Malliavin; Robert C Glen
Journal:  J Cheminform       Date:  2015-08-28       Impact factor: 5.514

  4 in total

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