Medicinal chemists today are facing a
serious challenge because of the
increased cost and enormous amount of
time taken to discover a new drug, and
also because of fierce competition
amongst different drug companies
                      Drug Discovery & Development
          Identify disease                                    Drug Design
                                                              - Molecular Modeling
                                                              - Virtual Screening
                                   Find a drug effective
                                   against disease protein
Isolate protein                    (2-5 years)
involved in                                         Scale-up
disease (2-5 years)
                  Preclinical testing
                  (1-3 years)                                         Human clinical trials
                                                           D
                                                        IN
                                                                             (2-10 years)
                                                         le
                                                      Fi
                                        Formulation
                                                                                A
                                                                              ND
                                                                              le
                                                                           Fi
                                                                           FDA approval
                                                                             (2-3 years)
      Technology is impacting this process
                                         GENOMICS, PROTEOMICS & BIOPHARM.
                                                  Potentially producing many more targets
                                                  and “personalized” targets
                                                    HIGH THROUGHPUT SCREENING
Identify disease                                      Screening up to 100,000 compounds a
                                                      day for activity against a target protein
                                                               VIRTUAL SCREENING
                                                                Using a computer to
                     Isolate protein                            predict activity
COMBINATORIAL CHEMISTRY
  Rapidly producing vast numbers                      Find drug
  of compounds
   MOLECULAR MODELING
     Computer graphics & models help improve activity
                                                                  Preclinical testing
    IN VITRO & IN SILICO ADME MODELS
        Tissue and computer models begin to replace animal testing
      History of Drug Discovery….
•1909 - First rational drug design.
•Goal: safer syphilis treatment than Atoxyl.
•Paul Erhlich and Sacachiro Hata wanted to maximize toxicity to
pathogen and minimize toxicity to human (therapeutic index).
•They found Salvarsan (which was replaced by penicillin in the
1940’s)
                  HO O
                              ClH.H 2N                  NH2 .HCl
                   As
                      O
                               HO               As As     OH
        H 2N            Na+
               Atoxyl
                                         Salvarsan
•1960 - First successful attempt to relate chemical structure to
biological action quantitatively (QSAR = Quantitative structure-
activity relationships). Hansch and Fujita
             History of Drug Discovery
• Mid to late 20th century
  - understand disease states, biological structures, processes,
    drug transport, distribution, metabolism.
 Medicinal chemists use this knowledge to modify chemical
structure to influence a drug’s activity, stability, etc.
• procaine = local anaesthetic; Procainamide = antirhythmic
             O                                    O
H 2N             OCH2CH2N(C2H5 )2   H 2N              NHCH2CH 2N(C 2H5) 2
          Procaine                          Procainamide
Evolutionary drug designing
Ancient times: Natural products with
biological activities used as drugs.
Chemical Era: Synthetic organic
compounds
Rationalizing design process: SAR &
Computational Chemistry based Drugs
Biochemical era: To elucidate biochemical
pathways and macromolecular structures
as target as well as drug.
                 Molecular Modeling
         NMR and X-ray                                           QSAR/3D QSAR
     structure determination                               Structure-based drug design
                                                               Rational drug design
                                 Model construction
                                Molecular mechanics
QM, MM methods                                                    Homology modeling
                               Conformational searches
                                 Molecular dynamics
         Combinatorial chemistry                          Bioinformatics
           Chemical similarity                           Chemoinformatics
           Chemical diversity
What is Molecular Modeling?
     Molecular Graphics: Visual representation
     of molecules & their properties.
!   Computational Chemistry: Simulation of
    atomic/molecular properties of compound
    through computer solvable equations.
    SS ( b’-b’0)[ V1cosf] b’f SS (q-q0) [V1cosf]
! Statistical Modeling: D-R, QSAR/3-D QSAR Molecular data
! Information Management: Organizational databases retrieval
/search & processing of properties of 1000… of compounds.
MM = Computation + Visualization + Statistical modeling
          + Molecular Data Management
COMPUTATIONAL TOOLS:
      QM/MM
(A) MOLECULAR MECHANICS (MM)
(B) QUANTUM MECHANICS (QM)
COMPUTATIONAL TOOLS
Quantum Mechanics (QM)
Ab-initio and semi-empirical methods
Considers electronic effect & electronic
structure of the molecule
Calculates charge distribution and orbital
energies
Can simulate bond breaking and formation
Upper atom limit of about 100-120 atoms
     COMPUTATIONAL TOOLS
Molecular Mechanics (MM)
!   Totally empirical technique applicable to
    both small and macromolecular systems
!   a molecule is described as a series of
    charged points (atoms) linked by springs
    (bonds)
!   The potential energy of molecule is
    described by a mathematical function called
    a FORCE FIELD
Sir Isaac Newton   Erwin Schrödinger
 (1642 - 1727)       (1887 - 1961)
   F = ma             ĤY = eY
      Quantitative Structure Activity
         Relationships (QSAR)
QSARs are        the mathematical relationships linking chemical
structures with biological activity using physicochemical or any other
derived property as an interface.
Biological Activity = f (Physico-chemical properties)
Mathematical Methods used in QSAR includes various regression
and pattern recognition techniques.
Physicochemical or any other property used for generating QSARs is
termed as Descriptors and treated as independent variable.
Biological property is treated as dependent variable.
 QSAR and Drug Design
Compounds + biological activity
                                  QSAR
   New compounds with
 improved biological activity
Types of QSARs
Two Dimensional QSAR
     - Classical Hansh Analysis
     - Two dimensional molecular properties
Three Dimensional QSAR
     - Three dimensional molecular properties
     - Molecular Field Analysis
     - Molecular Shape Analysis
     - Distance Geometry
     - Receptor Surface Analysis
                 QSAR ASSUMPTIONS
The Effect is produced by model compound and not it’s
metabolites.
The proposed conformation is the bioactive one.
The binding site is same for all modeled compounds.
The Bioactivity explain the direct interaction of molecule and
target.
Pharmacokinetics aspects, solvent effects, diffusion, transport
are not under consideration.
  QSAR Generation Process
1. Selection of training set
2. Enter biological activity data
3. Generate conformations
4. Calculate descriptors
5. Selection of statistical method
6. Generate a QSAR equation
7. Validation of QSAR equation
8. Predict for Unknown
 Descriptors
1.   Structural descriptors
2.   Electronic descriptors
3.   Quantum Mech. descriptors
4.   Thermodynamic descriptors
5.   Shape descriptors
6.   Spatial descriptors
7.   Conformational descriptors
8.   Receptor descriptors
        PHARMACOPHORE APPROCH
Pharmacophore:
The Spatial orientation of various functional groups or
features in 3D necessary to show biological activity.
Types of Pharmacophore Models
Distance Geometry based Qualitative Common
Feature Hypothesis.
Quantitative Predictive Pharmacophores from a
training set with known biological activities.
Pharmacophore-based Drug Design
•Examine features of inactive small molecules (ligands) and the
features of active small molecules.
•Generate a hypothesis about what chemical groups on the ligand
are necessary for biological function; what chemical groups
suppress biological function.
•Generate new ligands which have the same necessary chemical
groups in the same 3D locations. (“Mimic” the active groups)
 Advantage: Don’t need to know the biological target structure
      Pharmacophore Features
  HB Acceptor & HB Donor
  Hydrophobic
  Hydrophobic aliphatic
  Hydrophobic aromatic
  Positive charge/Pos. Ionizable
  Negative charge/Neg. Ionizable
  Ring Aromatic
Each feature consists of four parts:
    1. Chemical function
    2. Location and orientation in 3D space
    3. Tolerance in location
    4. Weight
Receptor-based Drug Design
•Examine the 3D structure of the biological target (an X-ray/ NMR
structure.
•Hopefully one where the target is complexed with a small molecule
ligand (Co-crystallized)
•Look for specific chemical groups that could be part of an attractive
interaction between the target protein and the ligand.
•Design a new ligands that will have sites of complementary
interactions with the biological target.
                                    Advantage: Visualization allows
                                    direct design of molecules
             Docking Process
Put a compound in the approximate area where
binding occurs
Docking algorithm encodes orientation of
compound and conformations.
Optimize binding to protein
– Minimize energy
– Hydrogen bonding
– Hydrophobic interactions
Scoring
“Docking” compounds into
 proteins computationally
De Novo Drug Design
Build compounds that are complementary to a target binding site
on a protein via “random” combination of small molecular
fragments to make complete molecule with better binding profile.
• Can pursue both receptor and pharmacophore-based approaches
independently
• If the binding mode of the ligand and target is known,
information from each approach can be used to help the other
Ideally, identify a structural model that explains the biological
activities of the known small molecules on the basis of their
interactions with the 3D structure of the target protein.
     Cheminformatics - Data Management
Need to be able to store chemical structure and
biological data for millions of data points
 – Computational representation of 2D structure
Need to be able to organize thousands of active
compounds into meaningful groups
 – Group similar structures together and relate to activity
Need to learn as much information as possible from the
data (data mining)
 – Apply statistical methods to the structures and related
   information
VIRTUAL SCREENING PROTOCOL
    Objective - To search chemical compounds similar to active structure.
    Essential components of protocol are as follows
    • Substructure Hypothesis
    • Pharmacophore Hypothesis
    • Shape Similarity Hypothesis
    • Electronic Similarity Hypothesis
- VIRTUAL SCREENING
    Library of ~ 2 lac compounds was screened
    • Initially 800 compounds were short listed applying above filters.
    • Further 30 compounds were selected by applying diversity & similarity
    analysis.
-   Compounds have been in vitro screened and found various new scaffolds
                      Virtual Screening
    Build a computational model of activity for a particular
    target
    Use model to score compounds from “virtual” or real
    libraries
    Use scores to decide which to make and pass through a
    real screen
We may want to virtual screen
   - All of a company’s in-house compounds, to see which to
     screen first
   - A compound collection that could be purchased
   - A potential chemistry library, to see if it is worth making,
     and if so which to make
Virtual Screening
    In-Silico ADMET Models
Computational methods can predict compound properties
important to ADMET
–   Solubility
–   Permeability
–   Absorption
–   Cytochrome p450 metabolism
–   Toxicity
Estimates can be made for millions of compounds, helping
reduce “attrition” – the failure rate of compounds in late
stage