A ligand-based computational drug repurposing pipeline using KNIME and Programmatic Data Access: case studies for rare diseases and COVID-19

被引:0
作者
Alzbeta Tuerkova
Barbara Zdrazil
机构
[1] University of Vienna,Department of Pharmaceutical Chemistry, Division of Drug Design and Medicinal Chemistry
来源
Journal of Cheminformatics | / 12卷
关键词
Drug repurposing; Data integration; Data mining; Data access; Application programming interface; Substructure search; Rare disease; KNIME workflow; COVID-19; SARS-CoV-2; GLUT-1 deficiency syndrome; ChEMBL; Open targets platform; DrugBank; PDB; UniProtKB; Guide-to-pharmacology; PubChem;
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摘要
Biomedical information mining is increasingly recognized as a promising technique to accelerate drug discovery and development. Especially, integrative approaches which mine data from several (open) data sources have become more attractive with the increasing possibilities to programmatically access data through Application Programming Interfaces (APIs). The use of open data in conjunction with free, platform-independent analytic tools provides the additional advantage of flexibility, re-usability, and transparency. Here, we present a strategy for performing ligand-based in silico drug repurposing with the analytics platform KNIME. We demonstrate the usefulness of the developed workflow on the basis of two different use cases: a rare disease (here: Glucose Transporter Type 1 (GLUT-1) deficiency), and a new disease (here: COVID 19). The workflow includes a targeted download of data through web services, data curation, detection of enriched structural patterns, as well as substructure searches in DrugBank and a recently deposited data set of antiviral drugs provided by Chemical Abstracts Service. Developed workflows, tutorials with detailed step-by-step instructions, and the information gained by the analysis of data for GLUT-1 deficiency syndrome and COVID-19 are made freely available to the scientific community. The provided framework can be reused by researchers for other in silico drug repurposing projects, and it should serve as a valuable teaching resource for conveying integrative data mining strategies.
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[1]  
Karaman B(2019)Computational drug repurposing: current trends Curr Med Chem 26 5389-5409
[2]  
Sippl W(2019)ChEMBL: towards direct deposition of bioassay data Nucleic Acids Res. 47 D930-D940
[3]  
Mendez D(2019)PubChem 2019 update: improved access to chemical data Nucleic Acids Res 47 D1102-D1109
[4]  
Gaulton A(2019)UniProt: a worldwide hub of protein knowledge Nucleic Acids Res 47 D506-D515
[5]  
Bento AP(2018)DrugBank 5.0: a major update to the DrugBank database for 2018 Nucleic Acids Res. 46 D1074-D1082
[6]  
Chambers J(2019)Use of big data in drug development for precision medicine: an update Expert Rev Precis Med Drug Dev 4 189-200
[7]  
De Veij M(2009)KNIME—the Konstanz information miner: version 2.0 and beyond ACM SIGKDD Explor Newsl. 11 26-31
[8]  
Félix E(2013)KNIME-CDK: Workflow-driven cheminformatics BMC Bioinform. 14 257-58
[9]  
Kim S(2011)Indigo: universal cheminformatics API J Cheminformatics. 3 P4-160
[10]  
Chen J(2019)Drug repurposing: progress, challenges and recommendations Nat Rev Drug Discov 18 41-1315