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Super fast identification and optimization of high quality drug candidates. Our Goals Constructing highly enriched and efficient molecular libraries for the development of new and selective drug-like leads
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Super fast identification and optimization of high quality drug candidates
Our Goals • Constructing highly enriched and efficient molecular libraries for the development of new and selective drug-like leads • Minimizing false positives by early identification of drug failures, resulting in reduced cost/time of drug development
Preclinical Drug Discovery We reduce lead identification and optimization to 1-3 months, and identify highestquality drug candidates
Competing state-of-the-art computational drug discovery technologies in Pharma • Rules for drug-like properties(Lipinski, Veber): binary, many false positives • Data Mining from HTS: requires innovative algortihms • “Similarity” searches (mostly structural) : limit innovation • Drug-target “Docking” algorithms: at their infancy, false positives & negatives • ADME/Tox models: can not accurately predict a molecule’s chance to become a drug
Our Technology:what do we do best ? Grading drug likeness and molecular bioactivity Drug-Target: “Molecular Bioactivity Index”(MBI) Drug-Body: “Drug Like Index”(DLI) ISE (Iterative Stochastic Elimination) engine Experimental Datasets (drugs, Non-drugs, agonists, antagonists, inhibitors) DLI and/or MBI
MBI andDLI • MBI is a number that expresses the chance of a molecule being a high affinity ligand for a specific biological target • DLI is a number that expresses the chance of a molecule to become a drug • Double focusing using MBI and DLI provides: combined target specificity and drug-likeness
MBI and DLI can make a difference in: • High Throughput Screening • Combinatorial Synthesis • Hit to lead development • Lead optimization • Construction of Focused libraries • Molecular scaffold optimization • Selectivity optimization
Iterative Stochastic Elimination: A new tool for optimizing highly complex problems • First prize in emerging technologies symposium of ACS • Patent in National phase examination in several countries • PCT on the derived technology of DLI
IPA stochastic method to determine in silico the drug like character of molecules • By Rayan, Goldblum, Yissum (PCT stage) • A new provisional patent application covering the MBI algorithm will be submitted
1-2 days ISE for identification of high quality leads TRAINING SET TEST SET Validation INPUT ISE Engine MBI MODEL Huge Commercial Database of chemicals Database ordered By Bioactivity Index
Double focusing with MBI and DLI Database ordered By Bioactivity Index MBI MODEL Huge Commercial Database of chemicals Few hours DLI Assumed high affinity leads Validations: Docking, Scifinder, “fishing” tests Optimized leads for in vitro and animal tests 2 - 4 days
MODELS • Matrix metalloproteinase-2 (MMP-2) • Endothelin receptor • D2- dopaminergic receptor • DHFR • Histaminergic receptors • HIV-1 protease • Cannabinoid receptor • And others..
Current technological status: • Excellent enrichment of “actives” from “non-actives” using MBI • Excellent separation of drugs from “non-drugs” using DLI • Discovering molecules for a known drug target, validated by a docking algorithm • Successful validation of MBI technology by big Pharma
Molecular Bioactivity Index (MBI): Fishing actives from a “bath” of “non-actives” Mix 10 in 100,000 - find 9 in best 100, 5 in best 10 Enrichment of 5000
Drug Likeness Index (DLI): Randomly mixing 10 Drugs + 100 Non-drugs Enrichment of ~7
DLI vs. the Medicinal Chemist-2 5 top Medicinal chemists examined
MMP-2 as a target for POC • Identifying high affinity ligands for Matrix metalloproteinase-2 (MMP-2) was chosen as proof of concept for our technology • MMP-2 (or Gelatinase A) is involved in several types of cancer, such as Breast cancer, Hepatocellular carcinoma, Smooth muscle hyperplasia and possibly others • We have large datasets for training • Chemicals easy to purchase • In vitro assay available • Animal model available (murine leukemia) • Israel Science Foundation collaboration
Typical MMP-2 actives - nanomolar Typically - hydroxamates and sulphonamides
ISE for identification of high quality leads MBI MODEL For MMP-2 ZINC database with 2 million molecules Zinc ordered by MBI values Picking 104 molecules with top MBI values above 30
New Chemical Entities (> 90 !) Less Similar Similar
Non-typical MMP-2 suspected nanomolar candidates 1.00 0.04 0.02 0.09 0.04 0.08 0.11 0.02 0.04 1.00 0.16 0.04 0.26 0.15 0.17 0.09 0.02 0.16 1.00 0.07 0.14 0.08 0.09 0.06 0.09 0.04 0.07 1.00 0.12 0.06 0.21 0.11 0.04 0.26 0.14 0.12 1.00 0.15 0.15 0.14 0.08 0.15 0.08 0.06 0.15 1.00 0.20 0.06 0.11 0.17 0.09 0.21 0.15 0.20 1.00 0.07 0.02 0.09 0.06 0.11 0.14 0.06 0.07 1.00 8 of highest diversity were picked Scifinder – none ever examined on any MMP The first MMP-2 candidate inhibitors picked for purchasing and testing in the lab are devoid of the characteristics of MMP-2 or other MMP inhibitors. These molecules are not known to have any prior biological activity and have a very low similarity index (Tanimoto) to each other (the highest similarities are marked in yellow in the matrix above).
Independent validation by docking 7 out of the 8 dock well to the active site of MMP- 2
The Big Pharma technology test Enrichment Curves Our ISE
Our superiority claim • Highly innovative Prize winning optimization algorithm • The best enrichment algorithm currently available • MBI: “actives” from “non-actives” • DLI: drugs from “non-drugs” • Identification of highly diverse drug candidates • Reduction of time for lead identification and optimization