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Computer aided
drug design
By Dr Sameh Ahmad M- Abdelghany
Basic Drug designingSection 01
Drug Design SLIDE 3
 is the inventive process of finding new
medications based on the knowledge of a
biological target.
 It involves the design of molecules that are
complementary in shape and charge to the
biomolecular target with which they interact and
therefore will bind to it.
Life Cylce of Drug Design
SLIDE 4
Synthetic or
Natural
Compounds
Preclinical Trails Clinical Trails
1st step 2nd step Drug3rd step
 Traditional Life Cycle
Modern Drug Design SLIDE 5
Target
selection Identification of
Target
 Verification of
target
 Target Selection
Lead
Identificatio
n Screen Development
 High throughput
screening
 Secondary assay
Lead
Optimization
 Lead explosion
 Potency in disease
 Pharmacokinetics
Final
1st step 2nd step Drug3rd step
Drug Designing… SLIDE 6
 Selected/designed molecule
should be:
 Organic small molecule.
 Complementary in shape to the
target.
 Oppositely charge to the
biomolecular target .
Drug Designing… SLIDE 7
This molecule will:
 interact with target
 bind to the target
 activates or inhibits the function
of a biomolecule such as a protein
Drug Designing… SLIDE 8
 Drug design frequently but not
necessarily relies on computer
modeling techniques.
 This type of modeling is sometimes
referred to as computer-aided drug
design.
Mechanism based drug
design SLIDE 9
 When the disease process is understood
at the molecular level and the target
molecule(s) are defined, drugs can be
designed specifically to interact with
the target molecule in such a way as to
disrupt the disease.
Computer-aided drug
design(CADD) SLIDE 10
 CADD represents computational
methods and resources that are used to
facilitate the design and discovery of
new therapeutic solutions.
Introduction to CADD
SLIDE 11
 Drug design with the help of computers may be used at any of the following
stages of drug discovery:
 hit identification using virtual screening (structure- or ligand-based design)
 hit-to-lead optimization of affinity and selectivity (structure-based
design, QSAR, etc.)
 lead optimization: optimization of other pharmaceutical properties while
maintaining affinity.
Objective of CADD
SLIDE 12
 To change from:
 Random screening against disease assays
 Natural products, synthetic chemicals
 To:
 Rational drug design and testing
 Speed-up screening process
 Efficient screening (focused, target directed)
 De novo design (target directed)
 Integration of testing into design process
 Fail drugs fast (remove hopeless ones as early as
possible)
Types of drug design SLIDE 13
1) Ligand based drug design 2)Structure based drug design
Ligand-based drug design SLIDE 14
 relies on knowledge of other
molecules that bind to the biological
target of interest.
 used to derive a pharmacophore
model that defines the minimum
necessary structural characteristics a
molecule must possess in order to
bind to the target.
Ligand-based drug design
SLIDE 15
 a model of the biological target may be built based on the knowledge of what
binds to it, and this model in turn may be used to design new molecular
entities that interact with the target.
 Alternatively, a quantitative structure-activity relationship (QSAR), in which
a correlation between calculated properties of molecules and their
experimentally determined biological activity, may be derived. These QSAR
relationships in turn may be used to predict the activity of new analogs.
Structure-based drug design: SLIDE 16
 relies on knowledge of the three
dimensional structure of the
biological target obtained through :
1. x-ray crystallography
2. NuclearMagnetic Resonance
(NMR) spectroscopy.
NMR
spectroscopy
X-ray
crystallography
Structure-based drug design
SLIDE 17
 If an experimental structure of a target is not available,
it may be possible to create a homology model of the
target based on the experimental structure of a related
protein.
 Homology modeling, also known as comparative
modeling of protein, refers to constructing an atomic-
resolution model of the "target" and an experimental
three-dimensional structure of a related homologous
protein (the "template").
Structure-based drug design
SLIDE 18
 Using the structure of the biological target, candidate
drugs that are predicted to bind with high affinity and
selectivity to the target may be designed using:
 interactive graphics
 Intelligence of a medicinal chemist.
 various automated computational procedures may be
used to suggest new drug candidates.
Methods SLIDE 19
1) Virtual screening :
 The first method is identification of new ligands for a given receptor by searching large
databases of 3D structures of small molecules to find those fitting the binding pocket of
the receptor using fast approximate docking programs.
2) de novo design of new ligands:
 In this method, ligand molecules are built up within the constraints of the binding pocket
by assembling small pieces in a stepwise manner. These pieces can be either individual
atoms or molecular fragments. The key advantage of such a method is that novel structures
can be suggested.
3) optimization of known ligands by evaluating proposed analogs within the binding cavity.
Binding site identification
SLIDE 20
 It is the first step in structure based design.
 relies on identification of concave surfaces
on the protein that can accommodate drug
sized molecules that also possess appropriate
"hot spots" (hydrophobic surfaces, hydrogen
bonding sites, etc.) that drive ligand binding.
Docking & Scoring
SLIDE 21
 Docking attempts to find the “best”
matching between two molecules
 It includes finding the Right Key for
the Lock
 To place a ligand (small molecule) into
the binding site of a receptor in the
manners appropriate for optimal
interactions with a receptor.
 To evaluate the ligand-receptor
interactions in a way that may
discriminate the experimentally
observed mode from others and
estimate the binding affinity.
Components of Docking
SLIDE 22
I- pre- and/or during docking:
 Representation of receptor binding site and ligand
II- during docking:
 Sampling of configuration space of the ligand-
receptor complex
III- during docking and scoring:
 Evaluation of ligand-receptor interactions
Advantages of CADD
SLIDE 23
 Time
 Cost
 Accuracy
 information about the disease
 screening is reduced
 Database screening
 less manpower is required
Success stories of CADD
SLIDE 24
 K+ ion channel blocker
 structural based discovery
 Ca2+ antagonist / T-channel blocker
 chemical descriptor based discovery
Success stories of CADD
SLIDE 25
Glyceraldehyde-phosphate DH inhibitors (anti-trypanosomatid drugs)
 combinatorial docking
 Thrombin inhibitor
 docking, de-novo design
Computational Tools
For Drug DesigningSection 02
1
2
3
4
5
6
Categories of software
SLIDE 27
Databases & Draw Tools
Molecular Modeling & Homology Modeling
Binding site prediction & Docking
Ligand design Screening -QSAR
Binding free energy estimation
ADME Toxicity
Databases
SLIDE 28
 ZincDatabase, Zinc15Database
 ChEMBL
 JChemforExcel
 ProteinDataBank(PDB)
 BindingMOAD(MotherOfAllDatabase)
 PDBbind
 STITCH,SMPDB
Databases
SLIDE 29
Databases
SLIDE 30
Draw Tools SLIDE 31
 ChemDraw
 MarvinSketch
 ACD/ChemSketch
 Marvin molecule editor and viewer
 ChemWriter
 UCSFChimera
 Pymol
Medchem SLIDE 32
SLIDE 33UCSF Chimera
SLIDE 34Chem Office
Molecular Modeling SLIDE 35
 CHARMM
 GROMACS
 Amber
 SwissParam
 CHARMM-GUI
 CHARMMing.org
 SwissSideChain
Hyperchem SLIDE 36
Homology Modeling SLIDE 37
 Modeller
 I-TASSER
 LOMETS
 SWISS-MODEL
 SWISS-MODELRepository
 Robetta
 LOMETS SLIDE 38
Binding site prediction SLIDE 39
 MED-SuMo
 CAVER
 FINDSITE
 sc-PDB
 Pocketome
 PocketAnnotatedatabase
 3DLigandSite,
 metaPocket
 PocketAnnotate
CAVER SLIDE 40
Docking SLIDE 41
 Autodock
 DOCK
 GOLD
 SwissDock
 DockingServer
 1-ClickDocking
 iGemdock
iGemdock SLIDE 42
Screening SLIDE 43
 Pharmer
 Catalyst
 PharmaGist
 SwissSimilarity
 Blaster
 AnchorQuery
 ligandscout
 Discovery Studio
Discovery Studio SLIDE 44
Target prediction SLIDE 45
 MolScore-Antivirals
 MolScore-Antibiotics
 Swiss Target Prediction
 SEA
 ChemProt
Ligand design SLIDE 46
 GANDI
 LUDI
 AutoT&T2
 SwissBioisostere
 VAMMPIRE
 sc-PDB-Frag
 e-LEA3D
 eDesign
 iScreen
Binding free energy
estimation SLIDE 47
 Hyde, X-score
 NNScore
 DSXONLINE
 BAPPLserver
 BAPPL-Zserver,
QSAR SLIDE 48
 cQSAR
 clogP
 ClogP/CMR
 MOLEdb
 ChemDB/Datasets
 OCHEM
 E-Dragon
 PatternMatchCounter
 avogadro
Avogadro SLIDE 49
ADME Toxicity SLIDE 50
 VolSurf
 GastroPlus
 MedChemStudio
 ALOGPS
 OSIRISPropertyExplorer
 SwissADME
 Metrabase
 PACT-F, TOXNET
GastroPlus SLIDE 51
That’s all. Thank you very much! 
Any Questions?

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Computer aided drug design(CADD)

  • 1. Computer aided drug design By Dr Sameh Ahmad M- Abdelghany
  • 3. Drug Design SLIDE 3  is the inventive process of finding new medications based on the knowledge of a biological target.  It involves the design of molecules that are complementary in shape and charge to the biomolecular target with which they interact and therefore will bind to it.
  • 4. Life Cylce of Drug Design SLIDE 4 Synthetic or Natural Compounds Preclinical Trails Clinical Trails 1st step 2nd step Drug3rd step  Traditional Life Cycle
  • 5. Modern Drug Design SLIDE 5 Target selection Identification of Target  Verification of target  Target Selection Lead Identificatio n Screen Development  High throughput screening  Secondary assay Lead Optimization  Lead explosion  Potency in disease  Pharmacokinetics Final 1st step 2nd step Drug3rd step
  • 6. Drug Designing… SLIDE 6  Selected/designed molecule should be:  Organic small molecule.  Complementary in shape to the target.  Oppositely charge to the biomolecular target .
  • 7. Drug Designing… SLIDE 7 This molecule will:  interact with target  bind to the target  activates or inhibits the function of a biomolecule such as a protein
  • 8. Drug Designing… SLIDE 8  Drug design frequently but not necessarily relies on computer modeling techniques.  This type of modeling is sometimes referred to as computer-aided drug design.
  • 9. Mechanism based drug design SLIDE 9  When the disease process is understood at the molecular level and the target molecule(s) are defined, drugs can be designed specifically to interact with the target molecule in such a way as to disrupt the disease.
  • 10. Computer-aided drug design(CADD) SLIDE 10  CADD represents computational methods and resources that are used to facilitate the design and discovery of new therapeutic solutions.
  • 11. Introduction to CADD SLIDE 11  Drug design with the help of computers may be used at any of the following stages of drug discovery:  hit identification using virtual screening (structure- or ligand-based design)  hit-to-lead optimization of affinity and selectivity (structure-based design, QSAR, etc.)  lead optimization: optimization of other pharmaceutical properties while maintaining affinity.
  • 12. Objective of CADD SLIDE 12  To change from:  Random screening against disease assays  Natural products, synthetic chemicals  To:  Rational drug design and testing  Speed-up screening process  Efficient screening (focused, target directed)  De novo design (target directed)  Integration of testing into design process  Fail drugs fast (remove hopeless ones as early as possible)
  • 13. Types of drug design SLIDE 13 1) Ligand based drug design 2)Structure based drug design
  • 14. Ligand-based drug design SLIDE 14  relies on knowledge of other molecules that bind to the biological target of interest.  used to derive a pharmacophore model that defines the minimum necessary structural characteristics a molecule must possess in order to bind to the target.
  • 15. Ligand-based drug design SLIDE 15  a model of the biological target may be built based on the knowledge of what binds to it, and this model in turn may be used to design new molecular entities that interact with the target.  Alternatively, a quantitative structure-activity relationship (QSAR), in which a correlation between calculated properties of molecules and their experimentally determined biological activity, may be derived. These QSAR relationships in turn may be used to predict the activity of new analogs.
  • 16. Structure-based drug design: SLIDE 16  relies on knowledge of the three dimensional structure of the biological target obtained through : 1. x-ray crystallography 2. NuclearMagnetic Resonance (NMR) spectroscopy. NMR spectroscopy X-ray crystallography
  • 17. Structure-based drug design SLIDE 17  If an experimental structure of a target is not available, it may be possible to create a homology model of the target based on the experimental structure of a related protein.  Homology modeling, also known as comparative modeling of protein, refers to constructing an atomic- resolution model of the "target" and an experimental three-dimensional structure of a related homologous protein (the "template").
  • 18. Structure-based drug design SLIDE 18  Using the structure of the biological target, candidate drugs that are predicted to bind with high affinity and selectivity to the target may be designed using:  interactive graphics  Intelligence of a medicinal chemist.  various automated computational procedures may be used to suggest new drug candidates.
  • 19. Methods SLIDE 19 1) Virtual screening :  The first method is identification of new ligands for a given receptor by searching large databases of 3D structures of small molecules to find those fitting the binding pocket of the receptor using fast approximate docking programs. 2) de novo design of new ligands:  In this method, ligand molecules are built up within the constraints of the binding pocket by assembling small pieces in a stepwise manner. These pieces can be either individual atoms or molecular fragments. The key advantage of such a method is that novel structures can be suggested. 3) optimization of known ligands by evaluating proposed analogs within the binding cavity.
  • 20. Binding site identification SLIDE 20  It is the first step in structure based design.  relies on identification of concave surfaces on the protein that can accommodate drug sized molecules that also possess appropriate "hot spots" (hydrophobic surfaces, hydrogen bonding sites, etc.) that drive ligand binding.
  • 21. Docking & Scoring SLIDE 21  Docking attempts to find the “best” matching between two molecules  It includes finding the Right Key for the Lock  To place a ligand (small molecule) into the binding site of a receptor in the manners appropriate for optimal interactions with a receptor.  To evaluate the ligand-receptor interactions in a way that may discriminate the experimentally observed mode from others and estimate the binding affinity.
  • 22. Components of Docking SLIDE 22 I- pre- and/or during docking:  Representation of receptor binding site and ligand II- during docking:  Sampling of configuration space of the ligand- receptor complex III- during docking and scoring:  Evaluation of ligand-receptor interactions
  • 23. Advantages of CADD SLIDE 23  Time  Cost  Accuracy  information about the disease  screening is reduced  Database screening  less manpower is required
  • 24. Success stories of CADD SLIDE 24  K+ ion channel blocker  structural based discovery  Ca2+ antagonist / T-channel blocker  chemical descriptor based discovery
  • 25. Success stories of CADD SLIDE 25 Glyceraldehyde-phosphate DH inhibitors (anti-trypanosomatid drugs)  combinatorial docking  Thrombin inhibitor  docking, de-novo design
  • 26. Computational Tools For Drug DesigningSection 02
  • 27. 1 2 3 4 5 6 Categories of software SLIDE 27 Databases & Draw Tools Molecular Modeling & Homology Modeling Binding site prediction & Docking Ligand design Screening -QSAR Binding free energy estimation ADME Toxicity
  • 28. Databases SLIDE 28  ZincDatabase, Zinc15Database  ChEMBL  JChemforExcel  ProteinDataBank(PDB)  BindingMOAD(MotherOfAllDatabase)  PDBbind  STITCH,SMPDB
  • 31. Draw Tools SLIDE 31  ChemDraw  MarvinSketch  ACD/ChemSketch  Marvin molecule editor and viewer  ChemWriter  UCSFChimera  Pymol
  • 35. Molecular Modeling SLIDE 35  CHARMM  GROMACS  Amber  SwissParam  CHARMM-GUI  CHARMMing.org  SwissSideChain
  • 37. Homology Modeling SLIDE 37  Modeller  I-TASSER  LOMETS  SWISS-MODEL  SWISS-MODELRepository  Robetta
  • 39. Binding site prediction SLIDE 39  MED-SuMo  CAVER  FINDSITE  sc-PDB  Pocketome  PocketAnnotatedatabase  3DLigandSite,  metaPocket  PocketAnnotate
  • 41. Docking SLIDE 41  Autodock  DOCK  GOLD  SwissDock  DockingServer  1-ClickDocking  iGemdock
  • 43. Screening SLIDE 43  Pharmer  Catalyst  PharmaGist  SwissSimilarity  Blaster  AnchorQuery  ligandscout  Discovery Studio
  • 45. Target prediction SLIDE 45  MolScore-Antivirals  MolScore-Antibiotics  Swiss Target Prediction  SEA  ChemProt
  • 46. Ligand design SLIDE 46  GANDI  LUDI  AutoT&T2  SwissBioisostere  VAMMPIRE  sc-PDB-Frag  e-LEA3D  eDesign  iScreen
  • 47. Binding free energy estimation SLIDE 47  Hyde, X-score  NNScore  DSXONLINE  BAPPLserver  BAPPL-Zserver,
  • 48. QSAR SLIDE 48  cQSAR  clogP  ClogP/CMR  MOLEdb  ChemDB/Datasets  OCHEM  E-Dragon  PatternMatchCounter  avogadro
  • 50. ADME Toxicity SLIDE 50  VolSurf  GastroPlus  MedChemStudio  ALOGPS  OSIRISPropertyExplorer  SwissADME  Metrabase  PACT-F, TOXNET
  • 52. That’s all. Thank you very much!  Any Questions?