- Developing therapeutics entails a long, arduous process. Traditional development from ideation to market is costly (magnitude of billions of dollars), lengthy (10 to 15 years), and risky (attrition of over 90%). Through advances in AI, we can discover cures that have better safety profiles, address medical conditions or diseases with low coverage, and can reach patients quicker.
- Drug discovery can be thought of as a difficult search problem that exists at the intersection of the chemical search space of 1063?medicinal compounds and the biological search space of 105?targets.
- Applications of AI to drug design include molecule property prediction for virtual screening, creation of compound libraries with de novo molecule generation, synthesis pathway prediction, and protein folding simulation.
- ML is a subfield of AI that enables computers to learn from and make decisions based on data, automatically and without explicit programming or rules on how to behave. Example ML algorithms include logistic regression and random forests. Deep learning is a subfield of ML that uses deep neural networks to extract complex patterns and representations from data.
- We can segment the early drug discovery pipeline into four main phases: target identification, hit discovery, hit-to-lead or lead identification, and lead optimization. Target identification designates a valid target whose activity is worth modulating to address some disease or disorder. Hit discovery uncovers chemical compounds with activity against the target. Lead identification selects the most promising hits and lead optimization improves their potency, selectivity, and ADMET properties to be suitable for preclinical study.
- Popular, well-maintained chemical data repositories include ChEMBL, ChEBI, PubChem, Protein Data Bank (PDB), AlphaFoldDB, and ZINC. When using a new data source, learn how it was assembled and how quality is maintained. Garbage data in, garbage model out.
Bringing Agility to Category Management II Assoc. Director@Flipkart Talks about #industry 4.0 #business #entrepreneurship #technology #productivity #personalgrowth & #life
1 周https://www.dhirubhai.net/posts/anshu-kumar-b14953301_quantumcomputing-drugdiscovery-pharmainnovation-activity-7264914501286658048-F4nx?utm_source=share&utm_medium=member_desktop