Abstract
Bioinformatic analysis can not only accelerate drug target identification and drug candidate screening and refinement, but also facilitate characterization of side effects and predict drug resistance. High-throughput data such as genomic, epigenetic, genome architecture, cistromic, transcriptomic, proteomic, and ribosome profiling data have all made significant contribution to mechanismbased drug discovery and drug repurposing. Accumulation of protein and RNA structures, as well as development of homology modeling and protein structure simulation, coupled with large structure databases of small molecules and metabolites, paved the way for more realistic protein-ligand docking experiments and more informative virtual screening. I present the conceptual framework that drives the collection of these high-throughput data, summarize the utility and potential of mining these data in drug discovery, outline a few inherent limitations in data and software mining these data, point out news ways to refine analysis of these diverse types of data, and highlight commonly used software and databases relevant to drug discovery.
Keywords: Drug target, Drug candidate, Drug screening, Genomics, Epigenetics, Transcriptomics, Proteomics, Structure.
Current Topics in Medicinal Chemistry
Title:Bioinformatics and Drug Discovery
Volume: 17 Issue: 15
Author(s): Xuhua Xia*
Affiliation:
- Department of Biology, Faculty of Science, University of Ottawa, Ottawa, Ontario,Canada
Keywords: Drug target, Drug candidate, Drug screening, Genomics, Epigenetics, Transcriptomics, Proteomics, Structure.
Abstract: Bioinformatic analysis can not only accelerate drug target identification and drug candidate screening and refinement, but also facilitate characterization of side effects and predict drug resistance. High-throughput data such as genomic, epigenetic, genome architecture, cistromic, transcriptomic, proteomic, and ribosome profiling data have all made significant contribution to mechanismbased drug discovery and drug repurposing. Accumulation of protein and RNA structures, as well as development of homology modeling and protein structure simulation, coupled with large structure databases of small molecules and metabolites, paved the way for more realistic protein-ligand docking experiments and more informative virtual screening. I present the conceptual framework that drives the collection of these high-throughput data, summarize the utility and potential of mining these data in drug discovery, outline a few inherent limitations in data and software mining these data, point out news ways to refine analysis of these diverse types of data, and highlight commonly used software and databases relevant to drug discovery.
Export Options
About this article
Cite this article as:
Xia Xuhua*, Bioinformatics and Drug Discovery, Current Topics in Medicinal Chemistry 2017; 17 (15) . https://dx.doi.org/10.2174/1568026617666161116143440
DOI https://dx.doi.org/10.2174/1568026617666161116143440 |
Print ISSN 1568-0266 |
Publisher Name Bentham Science Publisher |
Online ISSN 1873-4294 |
Call for Papers in Thematic Issues
Adaptogens—History and Future Perspectives
Adaptogens are pharmacologically active compounds or plant extracts that are associated with the ability to enhance the body’s stability against stress. The intake of adaptogens is associated not only with a better ability to adapt to stress and maintain or normalise metabolic functions but also with better mental and physical ...read more
AlphaFold in Medicinal Chemistry: Opportunities and Challenges
AlphaFold, a groundbreaking AI tool for protein structure prediction, is revolutionizing drug discovery. Its near-atomic accuracy unlocks new avenues for designing targeted drugs and performing efficient virtual screening. However, AlphaFold's static predictions lack the dynamic nature of proteins, crucial for understanding drug action. This is especially true for multi-domain proteins, ...read more
Artificial intelligence for Natural Products Discovery and Development
Our approach involves using computational methods to predict the potential therapeutic benefits of natural products by considering factors such as drug structure, targets, and interactions. We also employ multitarget analysis to understand the role of drug targets in disease pathways. We advocate for the use of artificial intelligence in predicting ...read more
Challenges, Consequences and Possible Treatments of Anticancer Drug Discovery ll
The use of several compounds has been the subject of increasing interest in phytochemistry, biochemistry, and other fields of research at the chemistry-biology-ecosystems interface. In spite of the continued search for new anticancer drugs, cancer remains a leading cause of death. Cancer mortalities are expected to increase to 12.9 million, ...read more
- Author Guidelines
- Graphical Abstracts
- Fabricating and Stating False Information
- Research Misconduct
- Post Publication Discussions and Corrections
- Publishing Ethics and Rectitude
- Increase Visibility of Your Article
- Archiving Policies
- Peer Review Workflow
- Order Your Article Before Print
- Promote Your Article
- Manuscript Transfer Facility
- Editorial Policies
- Allegations from Whistleblowers
- Announcements
Related Articles
-
Disease Progression in HIV Late Presenters: the Role of HIV Clinical Indicator Diseases Prior to HIV Diagnosis
Current HIV Research Clinical Applications of the Urokinase Receptor (uPAR) for Cancer Patients
Current Pharmaceutical Design Adenoviral Vector-Mediated Gene Transfer for Human Gene Therapy
Current Gene Therapy Kinase Phosphorylation-based Mechanisms of PARP Inhibitor Resistance During Synthetic Lethal Oncotherapy
Current Signal Transduction Therapy Potential Therapeutic Targets of Curcumin, Most Abundant Active Compound of Turmeric Spice: Role in the Management of Various Types of Cancer
Recent Patents on Anti-Cancer Drug Discovery Delivery Methods of Camptothecin and Its Hydrosoluble Analogue Irinotecan for Treatment of Colorectal Cancer
Current Drug Delivery HIV-Infected Patients and Liver Transplantation: Who, When and Why
Current HIV Research Chemical Modifications of Synthetic RNAi Agents and in vivo Delivery Techniques
Current Bioactive Compounds The Emerging Role of Bcr-Abl-Induced Cystoskeletal Remodeling in Systemic Persistence of Leukemic Stem Cells
Current Drug Delivery Immunoliposomes: Synthesis, Structure, and their Potential as Drug Delivery Carriers
Current Cancer Therapy Reviews Pyrazolo[4,3-<i>H</i>]quinazolines as Cyclin-dependent Kinase Inhibitors for Treating Cancer
Current Medicinal Chemistry Current Concepts on the Management of Chordoma
Current Drug Therapy Toll-Like Receptors in Human Multiple Myeloma: New Insight into Inflammation-Related Pathogenesis
Current Molecular Medicine The Role of Mammalian Target of Rapamycin (mTOR) Inhibitors in the Treatment of Solid Tumors
Current Cancer Therapy Reviews Oncogenic MicroRNA-27a is a Target for Genistein in Ovarian Cancer Cells
Anti-Cancer Agents in Medicinal Chemistry Nanoparticles and the Mononuclear Phagocyte System: Pharmacokinetics and Applications for Inflammatory Diseases
Current Rheumatology Reviews Lack of Association between NOD2 rs3135500 and IL12B rs1368439 microRNA Binding Site SNPs and Colorectal Cancer Susceptibility in an Iranian Population
MicroRNA Meet Our Regional Editor
Applied Clinical Research, Clinical Trials and Regulatory Affairs Potential Use of Polymeric Nanoparticles for Drug Delivery Across the Blood-Brain Barrier
Current Medicinal Chemistry Polymeric Nanocarriers for Drug Delivery in Osteosarcoma Treatment
Current Pharmaceutical Design