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Introduction to Chemoinformatics Irene Kouskoumvekaki Associate Professor December 12th, 2012 Biological Sequence Analysis course.

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Presentation on theme: "Introduction to Chemoinformatics Irene Kouskoumvekaki Associate Professor December 12th, 2012 Biological Sequence Analysis course."— Presentation transcript:

1 Introduction to Chemoinformatics Irene Kouskoumvekaki Associate Professor December 12th, 2012 Biological Sequence Analysis course

2 2CBS, Department of Systems Biology Drug Discovery Process Disease Drug target Drug candidate Animal studies Clinical studies Marketed drug

3 3CBS, Department of Systems Biology The drug candidate ... is a (ligand) compound that binds to a biological target (protein, enzyme, receptor,...) and in this way either initiates a process (agonist) or inhibits it (antagonist/inhibitor)  The structure/conformation of the ligand is complementary to the space defined by the protein’s active site  The binding is caused by favorable interactions between the ligand and the side chains of the amino acids in the active site. (electrostatic interactions, hydrogen bonds, hydrophobic contacts...)

4 4CBS, Department of Systems Biology

5 5 Wet-lab drug discovery process Screening collection HTS Actives 10 3 actives10 6 cmp.

6 6CBS, Department of Systems Biology Screening collection HTS Actives 10 3 actives10 6 cmp. High rate of false actives!!! High throughput is not enough to get high output….. Wet-lab drug discovery process

7 7CBS, Department of Systems Biology Screening collection HTS Actives 10 3 actives10 6 cmp. Follow-up Chemical structure Purity Mechanism Activity value Wet-lab drug discovery process

8 8CBS, Department of Systems Biology Screening collection HTS Actives 10 3 actives10 6 cmp. Follow-up Hits 1-10 hits Analogues synthesis and testing ADMET properties Wet-lab drug discovery process

9 9CBS, Department of Systems Biology Wet-lab drug discovery process Screening collection HTS Actives 10 3 actives10 6 cmp. Follow-up Hits 1-10 hits Lead series 0-3 lead series Hit-to-lead Analogues synthesis and testing ADMET properties

10 10CBS, Department of Systems Biology Wet-lab drug discovery process Screening collection HTS Actives 10 3 actives10 6 cmp. Follow-up Hits 1-10 hits Lead series 0-3 lead series Hit-to-lead Drug candidate 0-1 Lead-to-drug Analogues synthesis and testing ADMET properties

11 11CBS, Department of Systems Biology

12 12CBS, Department of Systems Biology Failures

13 13CBS, Department of Systems Biology We need more.. to find less..

14 14CBS, Department of Systems Biology Drug Discovery Process Disease Drug target Drug candidate Animal studies Clinical studies Marketed drug Chemoinformatics

15 15CBS, Department of Systems Biology Wet-lab + Dry-lab drug discovery Diverse set of molecules tested in the lab in vitro in silico + in vitro Computational methods to select subsets (to be tested in the lab) based on prediction of drug-likeness, solubility, binding, pharmacokinetics, toxicity, side effects,...

16 16CBS, Department of Systems Biology The Lipinski ‘rule of five’ for drug- likeness prediction  Molecular weight ≤ 500  # hydrogen bond acceptors (HBA) ≤ 10  # hydrogen bond donors (HBD) ≤ 5  Octanol-water partition coefficient (logP) ≤ 5 (MlogP ≤ 4.15) If two or more of these rules are violated, the compound might have problems with oral bioavailability. (Lipinski et al., Adv. Drug Delivery Rev., 23, 1997, 3.)

17 17CBS, Department of Systems Biology Exercise : Prediction of drug-likeness Go to the following webpage www.molsoft.com/mprop Draw proguanil and decide if it is a drug- like compound

18 18CBS, Department of Systems Biology

19 19CBS, Department of Systems Biology Proguanil antimalarian tablets

20 20CBS, Department of Systems Biology Chemoinformatics Gathering and systematic use of chemical information, and application of this information to predict the behavior of unknown compounds in silico. dataprediction

21 21CBS, Department of Systems Biology Major Aspects of Chemoinformatics Databases: Development of databases for storage and retrieval of small molecule structures and their properties. Machine learning: Training of Decision Trees, Neural Networks, Self Organizing Maps, etc. on molecular data. Predictions: Molecular properties relevant to drugs, virtual screening of chemical libraries, system chemical biology networks…

22 22CBS, Department of Systems Biology

23 23CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types –stereochemical configuration –charges –isotopes –3D-coordinates for atoms C 8 H 9 NO 3

24 24CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types –stereochemical configuration –charges –isotopes –3D-coordinates for atoms

25 25CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types (aromatic ring identification) –stereochemical configuration –charges –isotopes –3D-coordinates for atoms

26 26CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types –stereochemical configuration –charges –isotopes –3D-coordinates for atoms

27 27CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types –stereochemical configuration –charges –isotopes –3D-coordinates for atoms

28 28CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types –stereochemical configuration –charges –isotopes –3D-coordinates for atoms

29 29CBS, Department of Systems Biology Representing a chemical structure How much information do you want to include? –atoms present –connections between atoms bond types –stereochemical configuration –charges –isotopes –3D-coordinates for atoms

30 30CBS, Department of Systems Biology From chemists to representations

31 31CBS, Department of Systems Biology Structural representation of molecules Line notations Connection tables

32 32CBS, Department of Systems Biology SMILES (Simplified Molecular Input Line Entry System) Canonical SMILES: unique for each structure Isomeric SMILES: describe isotopism, configuration around double bonds and tetrahedral centers, chirality

33 33CBS, Department of Systems Biology InChI (IUPAC International Chemical Identifier)

34 34CBS, Department of Systems Biology MOLfile format (.sdf)

35 35CBS, Department of Systems Biology Small molecule databases

36 36CBS, Department of Systems Biology Try it yourself! Go to PubChem: pubchem.ncbi.nlm.nih.gov/ Type proguanil and press Go Click on the first result on the list

37 37CBS, Department of Systems Biology Try it yourself! Scroll down and find the SMILES and InChI

38 38CBS, Department of Systems Biology Try it yourself! Click on SDF (top right icon) Select: 2D SDF: Display

39 39CBS, Department of Systems Biology Try it yourself! Go back and click again on SDF Select: 3D SDF: Display

40 40CBS, Department of Systems Biology Questions?


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