Literature DB >> 30084866

Recent applications of deep learning and machine intelligence on in silico drug discovery: methods, tools and databases.

Ahmet Sureyya Rifaioglu1,2, Heval Atas3, Maria Jesus Martin4, Rengul Cetin-Atalay1, Volkan Atalay1, Tunca Doğan5.   

Abstract

The identification of interactions between drugs/compounds and their targets is crucial for the development of new drugs. In vitro screening experiments (i.e. bioassays) are frequently used for this purpose; however, experimental approaches are insufficient to explore novel drug-target interactions, mainly because of feasibility problems, as they are labour intensive, costly and time consuming. A computational field known as 'virtual screening' (VS) has emerged in the past decades to aid experimental drug discovery studies by statistically estimating unknown bio-interactions between compounds and biological targets. These methods use the physico-chemical and structural properties of compounds and/or target proteins along with the experimentally verified bio-interaction information to generate predictive models. Lately, sophisticated machine learning techniques are applied in VS to elevate the predictive performance. The objective of this study is to examine and discuss the recent applications of machine learning techniques in VS, including deep learning, which became highly popular after giving rise to epochal developments in the fields of computer vision and natural language processing. The past 3 years have witnessed an unprecedented amount of research studies considering the application of deep learning in biomedicine, including computational drug discovery. In this review, we first describe the main instruments of VS methods, including compound and protein features (i.e. representations and descriptors), frequently used libraries and toolkits for VS, bioactivity databases and gold-standard data sets for system training and benchmarking. We subsequently review recent VS studies with a strong emphasis on deep learning applications. Finally, we discuss the present state of the field, including the current challenges and suggest future directions. We believe that this survey will provide insight to the researchers working in the field of computational drug discovery in terms of comprehending and developing novel bio-prediction methods.
© The Author(s) 2018. Published by Oxford University Press.

Entities:  

Keywords:  compound and bioactivity databases; deep learning; drug-target interactions; gold-standard data sets; ligand-based VS and proteochemometric modelling; machine learning; virtual screening

Mesh:

Year:  2019        PMID: 30084866      PMCID: PMC6917215          DOI: 10.1093/bib/bby061

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  209 in total

1.  Amino acid substitution matrices from protein blocks.

Authors:  S Henikoff; J G Henikoff
Journal:  Proc Natl Acad Sci U S A       Date:  1992-11-15       Impact factor: 11.205

Review 2.  Drug repositioning: identifying and developing new uses for existing drugs.

Authors:  Ted T Ashburn; Karl B Thor
Journal:  Nat Rev Drug Discov       Date:  2004-08       Impact factor: 84.694

Review 3.  Evaluation of machine-learning methods for ligand-based virtual screening.

Authors:  Beining Chen; Robert F Harrison; George Papadatos; Peter Willett; David J Wood; Xiao Qing Lewell; Paulette Greenidge; Nikolaus Stiefl
Journal:  J Comput Aided Mol Des       Date:  2007-01-05       Impact factor: 3.686

4.  Using multi-data hidden Markov models trained on local neighborhoods of protein structure to predict residue-residue contacts.

Authors:  Patrik Björkholm; Pawel Daniluk; Andriy Kryshtafovych; Krzysztof Fidelis; Robin Andersson; Torgeir R Hvidsten
Journal:  Bioinformatics       Date:  2009-03-16       Impact factor: 6.937

5.  Comparison of structure- and ligand-based virtual screening protocols considering hit list complementarity and enrichment factors.

Authors:  Dennis M Krüger; Andreas Evers
Journal:  ChemMedChem       Date:  2010-01       Impact factor: 3.466

6.  New chemical descriptors relevant for the design of biologically active peptides. A multivariate characterization of 87 amino acids.

Authors:  M Sandberg; L Eriksson; J Jonsson; M Sjöström; S Wold
Journal:  J Med Chem       Date:  1998-07-02       Impact factor: 7.446

7.  Predicting new molecular targets for known drugs.

Authors:  Michael J Keiser; Vincent Setola; John J Irwin; Christian Laggner; Atheir I Abbas; Sandra J Hufeisen; Niels H Jensen; Michael B Kuijer; Roberto C Matos; Thuy B Tran; Ryan Whaley; Richard A Glennon; Jérôme Hert; Kelan L H Thomas; Douglas D Edwards; Brian K Shoichet; Bryan L Roth
Journal:  Nature       Date:  2009-11-01       Impact factor: 49.962

Review 8.  Building a virtual ligand screening pipeline using free software: a survey.

Authors:  Enrico Glaab
Journal:  Brief Bioinform       Date:  2015-06-20       Impact factor: 11.622

9.  Predicting drug-target interactions using restricted Boltzmann machines.

Authors:  Yuhao Wang; Jianyang Zeng
Journal:  Bioinformatics       Date:  2013-07-01       Impact factor: 6.937

10.  PubChem Substance and Compound databases.

Authors:  Sunghwan Kim; Paul A Thiessen; Evan E Bolton; Jie Chen; Gang Fu; Asta Gindulyte; Lianyi Han; Jane He; Siqian He; Benjamin A Shoemaker; Jiyao Wang; Bo Yu; Jian Zhang; Stephen H Bryant
Journal:  Nucleic Acids Res       Date:  2015-09-22       Impact factor: 16.971

View more
  63 in total

Review 1.  Generative chemistry: drug discovery with deep learning generative models.

Authors:  Yuemin Bian; Xiang-Qun Xie
Journal:  J Mol Model       Date:  2021-02-04       Impact factor: 1.810

Review 2.  Applications of machine learning in drug discovery and development.

Authors:  Jessica Vamathevan; Dominic Clark; Paul Czodrowski; Ian Dunham; Edgardo Ferran; George Lee; Bin Li; Anant Madabhushi; Parantu Shah; Michaela Spitzer; Shanrong Zhao
Journal:  Nat Rev Drug Discov       Date:  2019-06       Impact factor: 84.694

3.  PreDTIs: prediction of drug-target interactions based on multiple feature information using gradient boosting framework with data balancing and feature selection techniques.

Authors:  S M Hasan Mahmud; Wenyu Chen; Yongsheng Liu; Md Abdul Awal; Kawsar Ahmed; Md Habibur Rahman; Mohammad Ali Moni
Journal:  Brief Bioinform       Date:  2021-03-12       Impact factor: 11.622

Review 4.  Advances in the study of drug metabolism - symposium report of the 12th Meeting of the International Society for the Study of Xenobiotics (ISSX).

Authors:  Laura E Russell; Mary Alexandra Schleiff; Eric Gonzalez; Aaron G Bart; Fabio Broccatelli; Jessica H Hartman; W Griffith Humphreys; Volker M Lauschke; Iain Martin; Chukwunonso Nwabufo; Bhagwat Prasad; Emily E Scott; Matthew Segall; Ryan Takahashi; Mitchell E Taub; Jasleen K Sodhi
Journal:  Drug Metab Rev       Date:  2020-05-26       Impact factor: 4.518

5.  Exploiting machine learning for end-to-end drug discovery and development.

Authors:  Sean Ekins; Ana C Puhl; Kimberley M Zorn; Thomas R Lane; Daniel P Russo; Jennifer J Klein; Anthony J Hickey; Alex M Clark
Journal:  Nat Mater       Date:  2019-04-18       Impact factor: 43.841

6.  STarFish: A Stacked Ensemble Target Fishing Approach and its Application to Natural Products.

Authors:  Nicholas T Cockroft; Xiaolin Cheng; James R Fuchs
Journal:  J Chem Inf Model       Date:  2019-10-24       Impact factor: 4.956

Review 7.  Airway-On-A-Chip: Designs and Applications for Lung Repair and Disease.

Authors:  Tanya J Bennet; Avineet Randhawa; Jessica Hua; Karen C Cheung
Journal:  Cells       Date:  2021-06-26       Impact factor: 6.600

8.  Deep learning of pharmacogenomics resources: moving towards precision oncology.

Authors:  Yu-Chiao Chiu; Hung-I Harry Chen; Aparna Gorthi; Milad Mostavi; Siyuan Zheng; Yufei Huang; Yidong Chen
Journal:  Brief Bioinform       Date:  2020-12-01       Impact factor: 11.622

9.  Decoding regulatory structures and features from epigenomics profiles: A Roadmap-ENCODE Variational Auto-Encoder (RE-VAE) model.

Authors:  Ruifeng Hu; Guangsheng Pei; Peilin Jia; Zhongming Zhao
Journal:  Methods       Date:  2019-10-28       Impact factor: 3.608

Review 10.  Machine learning approaches and databases for prediction of drug-target interaction: a survey paper.

Authors:  Maryam Bagherian; Elyas Sabeti; Kai Wang; Maureen A Sartor; Zaneta Nikolovska-Coleska; Kayvan Najarian
Journal:  Brief Bioinform       Date:  2021-01-18       Impact factor: 11.622

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.