Recently, using artificial intelligence (AI) in drug discovery has received much attention since it significantly shortens the time and cost of developing new drugs. Deep learning (DL) …
X Zeng, X Tu, Y Liu, X Fu, Y Su - Current opinion in structural biology, 2022 - Elsevier
Drug discovery is the process of new drug identification. This process is driven by the increasing data from existing chemical libraries and data banks. The knowledge graph is …
R Oughtred, C Stark, BJ Breitkreutz, J Rust… - Nucleic acids …, 2019 - academic.oup.com
Abstract The Biological General Repository for Interaction Datasets (BioGRID: https://thebiogrid. org) is an open access database dedicated to the curation and archival …
Drug development is time‐consuming and expensive. Repurposing existing drugs for new therapies is an attractive solution that accelerates drug development at reduced …
By targeting invasive organisms, antibiotics insert themselves into the ancient struggle of the host-pathogen evolutionary arms race. As pathogens evolve tactics for evading antibiotics …
G Koscielny, P An, D Carvalho-Silva… - Nucleic acids …, 2017 - academic.oup.com
We have designed and developed a data integration and visualization platform that provides evidence about the association of known and potential drug targets with diseases. The …
X Chen, CC Yan, X Zhang, X Zhang, F Dai… - Briefings in …, 2016 - academic.oup.com
Identification of drug–target interactions is an important process in drug discovery. Although high-throughput screening and other biological assays are becoming available …
Motivation Computational approaches for predicting drug–target interactions (DTIs) can provide valuable insights into the drug mechanism of action. DTI predictions can help to …
Absorption, distribution, metabolism, excretion, and toxicity (ADMET) properties play key roles in the discovery/development of drugs, pesticides, food additives, consumer products …