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Molecular Docking
Docking Challenge
• Identification of the ligand’s correct
  binding geometry in the binding site
  (Binding Mode)

• Observation:
  – Similar ligands can bind at quite
    different orientations in the active
    site.
Two main tasks of Docking
            Tools

• Sampling of conformational (Ligand)
  space


• Scoring protein-ligand complexes
Rigid-body docking algorithms
• Historically the first approaches. 
• Protein and ligand fixed.
• Search for the relative orientation
  of the two molecules with lowest
  energy.
• FLOG (Flexible Ligands Oriented on
  Grid): each ligand represented by up
  to 25 low energy conformations.
Introducing flexibility:
         Whole molecule docking
•   Monte Carlo methods (MC)
•   Molecular Dynamics (MD)
•   Simulated Annealing (SA)
•   Genetic Algorithms (GA)

    Available in packages:
    AutoDock (MC,GA,SA)
    GOLD (GA)
    Sybyl (MD)
Monte Carlo
• Start with configuration A (energy E A)
• Make random move to configuration B
  (energy EB)
• Accept move when:
  EB < EA or if
  EB > EA except with probability P:
  P = exp( − [ E A − E B ] kT )
Molecular Dynamics
• force-field is used to calculate forces on
  each atom of the simulated system
• following Newton mechanics, calculate
  accelerations, velocities and new
  coordinates from the forces.
  (Force = mass times acceleration)
• The atoms are moved slightly with respect
  to a given time step
Simulated Annealing


      Finding a global minimium
      by lowering the temperature
      during the Monte Carlo/MD simulation
Genetic Algorithms
• Ligand translation, rotation and
  configuration variables constitute the
  genes
• Crossovers mixes ligand variables from
  parent configurations
• Mutations randomly change variables
• Natural selection of current generation
  based on fitness
• Energy scoring function determines fitness
Introducing flexibility:
     Fragment Based Methods
• build small molecules inside defined
  binding sites while maximizing
  favorable contacts.
• De Novo methods construct new
  molecules in the site.
• division into two major groups:
  – Incremental construction (FlexX, Dock)
  – Place & join.
Placing Fragments and Rigid
            Molecules
• All rigid-body docking methods have in
  common that superposition of point sets is
  a fundamental sub-problem that has to be
  solved efficiently:


  – Geometric hashing
  – Pose clustering
  – Clique detection
Geometric hashing
• originates from computer vision


• Given a picture of a scene and a set
  of objects within the picture, both
  represented by points in 2d space,
  the goal is to recognize some of the
  models in the scene
Pose-Clustering

• For each triangle of receptor compute
  the transformation to each ligand
  matching triangle.
• Cluster transformations.
• Score the results.
Clique-Detection

  •




•Nodes comprise of matches between protein and ligand
•Edges connect distance compatible pairs of nodes
•In a clique all pair of nodes are connected
Scoring Functions
• Shape & Chemical Complementary
  Scores
• Empirical Scoring
• Force Field Scoring
• Knowledge-based Scoring
• Consensus Scoring
Shape & Chemical
       Complementary Scores
• Divide accessible protein surface into
  zones:
  – Hydrophobic
  – Hydrogen-bond donating
  – Hydrogen-bond accepting
• Do the same for the ligand surface
• Find ligand orientation with best
  complementarity score
Empirical Scoring

Scoring parameters fit to reproduce
Measured binding affinities

(FlexX, LUDI, Hammerhead)
Empirical scoring

∆G = ∆G0 + ∆Grot × N rot          Loss of entropy during binding

    + ∆Ghb       ∑ f (∆R, ∆α )    Hydrogen-bonding
             neutral. H −bonds

    + ∆Gio      ∑ f (∆R, ∆α )     Ionic interactions
             ionic −int .
    + ∆Garom     ∑ f (∆R, ∆α )    Aromatic interactions
                 arom.int

    + ∆Glipo      ∑ f (∆R, ∆α )   Hydrophobic interactions
               lipo.cont.
Force Field Scoring (Dock)

                 Aij Bij
            lig prot
                           qi q j 
Enonbond   = ∑∑ 12 − 6 +c        
             i j  ij
                 r   rij   r ij 
Nonbonding interactions (ligand-protein):

-van der Waals
-electrostatics

Amber force field
Knowledge-based Scoring
            Function

Free energies of molecular interactions
derived from structural information on
Protein-ligand complexes contained in PDB

Boltzmann-Like Statistics of Interatomic
Contacts.

                       [
P ( p , σ l )= Pref exp − βF ( p , σ l )
  σ                          σ             ]
Distribution of interatomic distances is converted
into energy functions by inverting Boltzmann’s law.




                          F              P(N,O)
Potential of Mean Force (PMF)

                     i             σ seg (r ) 
                                      ij

Fij (r ) = −kB T ln  fVol _corr (r ) ij
                    
                                               
                                    σ bulk   

σ    ij
     seg
           (r )   Number density of atom pairs of type ij
                  at atom pair distance r

 σ   ij
     bulk
                  Number density of atom pairs of type ij
                  in reference sphere with radius R
Consensus Scoring
Cscore:

Integrate multiple scoring functions to
produce a consensus score that is
more accurate than any single function
for predicting binding affinity.
Virtual screening by Docking
• Find weak binders in pool of non-
  binders
• Many false positives (96-100%)
• Consensus Scoring reduces rate of
  false positives
Concluding remarks

Scoring functions are the Achilles’ heel
of docking programs.

False positives rates can be reduced using several
scoring functions in a consensus-scoring strategy

Although the reliability of docking methods is
not so high, they can provide new suggestions for
protein-ligand interactions that otherwise
may be overlooked

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MOLECULAR MODELLING

  • 2. Docking Challenge • Identification of the ligand’s correct binding geometry in the binding site (Binding Mode) • Observation: – Similar ligands can bind at quite different orientations in the active site.
  • 3. Two main tasks of Docking Tools • Sampling of conformational (Ligand) space • Scoring protein-ligand complexes
  • 4. Rigid-body docking algorithms • Historically the first approaches.  • Protein and ligand fixed. • Search for the relative orientation of the two molecules with lowest energy. • FLOG (Flexible Ligands Oriented on Grid): each ligand represented by up to 25 low energy conformations.
  • 5. Introducing flexibility: Whole molecule docking • Monte Carlo methods (MC) • Molecular Dynamics (MD) • Simulated Annealing (SA) • Genetic Algorithms (GA) Available in packages: AutoDock (MC,GA,SA) GOLD (GA) Sybyl (MD)
  • 6. Monte Carlo • Start with configuration A (energy E A) • Make random move to configuration B (energy EB) • Accept move when: EB < EA or if EB > EA except with probability P: P = exp( − [ E A − E B ] kT )
  • 7. Molecular Dynamics • force-field is used to calculate forces on each atom of the simulated system • following Newton mechanics, calculate accelerations, velocities and new coordinates from the forces. (Force = mass times acceleration) • The atoms are moved slightly with respect to a given time step
  • 8. Simulated Annealing Finding a global minimium by lowering the temperature during the Monte Carlo/MD simulation
  • 9. Genetic Algorithms • Ligand translation, rotation and configuration variables constitute the genes • Crossovers mixes ligand variables from parent configurations • Mutations randomly change variables • Natural selection of current generation based on fitness • Energy scoring function determines fitness
  • 10. Introducing flexibility: Fragment Based Methods • build small molecules inside defined binding sites while maximizing favorable contacts. • De Novo methods construct new molecules in the site. • division into two major groups: – Incremental construction (FlexX, Dock) – Place & join.
  • 11. Placing Fragments and Rigid Molecules • All rigid-body docking methods have in common that superposition of point sets is a fundamental sub-problem that has to be solved efficiently: – Geometric hashing – Pose clustering – Clique detection
  • 12. Geometric hashing • originates from computer vision • Given a picture of a scene and a set of objects within the picture, both represented by points in 2d space, the goal is to recognize some of the models in the scene
  • 13.
  • 14. Pose-Clustering • For each triangle of receptor compute the transformation to each ligand matching triangle. • Cluster transformations. • Score the results.
  • 15. Clique-Detection • •Nodes comprise of matches between protein and ligand •Edges connect distance compatible pairs of nodes •In a clique all pair of nodes are connected
  • 16. Scoring Functions • Shape & Chemical Complementary Scores • Empirical Scoring • Force Field Scoring • Knowledge-based Scoring • Consensus Scoring
  • 17. Shape & Chemical Complementary Scores • Divide accessible protein surface into zones: – Hydrophobic – Hydrogen-bond donating – Hydrogen-bond accepting • Do the same for the ligand surface • Find ligand orientation with best complementarity score
  • 18. Empirical Scoring Scoring parameters fit to reproduce Measured binding affinities (FlexX, LUDI, Hammerhead)
  • 19. Empirical scoring ∆G = ∆G0 + ∆Grot × N rot Loss of entropy during binding + ∆Ghb ∑ f (∆R, ∆α ) Hydrogen-bonding neutral. H −bonds + ∆Gio ∑ f (∆R, ∆α ) Ionic interactions ionic −int . + ∆Garom ∑ f (∆R, ∆α ) Aromatic interactions arom.int + ∆Glipo ∑ f (∆R, ∆α ) Hydrophobic interactions lipo.cont.
  • 20. Force Field Scoring (Dock) Aij Bij lig prot qi q j  Enonbond = ∑∑ 12 − 6 +c  i j  ij r rij r ij  Nonbonding interactions (ligand-protein): -van der Waals -electrostatics Amber force field
  • 21. Knowledge-based Scoring Function Free energies of molecular interactions derived from structural information on Protein-ligand complexes contained in PDB Boltzmann-Like Statistics of Interatomic Contacts. [ P ( p , σ l )= Pref exp − βF ( p , σ l ) σ σ ]
  • 22. Distribution of interatomic distances is converted into energy functions by inverting Boltzmann’s law. F P(N,O)
  • 23. Potential of Mean Force (PMF)  i σ seg (r )  ij Fij (r ) = −kB T ln  fVol _corr (r ) ij    σ bulk   σ ij seg (r ) Number density of atom pairs of type ij at atom pair distance r σ ij bulk Number density of atom pairs of type ij in reference sphere with radius R
  • 24. Consensus Scoring Cscore: Integrate multiple scoring functions to produce a consensus score that is more accurate than any single function for predicting binding affinity.
  • 25. Virtual screening by Docking • Find weak binders in pool of non- binders • Many false positives (96-100%) • Consensus Scoring reduces rate of false positives
  • 26. Concluding remarks Scoring functions are the Achilles’ heel of docking programs. False positives rates can be reduced using several scoring functions in a consensus-scoring strategy Although the reliability of docking methods is not so high, they can provide new suggestions for protein-ligand interactions that otherwise may be overlooked

Editor's Notes

  1. Explain docking is fitting ligand into the receptor, steric and electrostatic match
  2. GA available in GOLD (Genetic Optimisation for Ligand Docking) MD a force field is used to calculate the forces an each atom. Following Newton Mechanics, velocities and accelerations are calculated Atoms are moved with respect to a time step MC local moves of atoms are performed randomly SA optimisation technique: 1 starting form conformation A with energy/score Ea 2 calculate random local move to configuration B with Eb 3 Accept on the Basis of Metropolis criterion: a) if Eb is lower than Ea b) with probability P=exp(-[Eb-Ea]/kT)
  3. The first group places a single fragment, or seed, in a binding cavity, and in a stepwise manner, other groups are attached to the growing structure. The second group of methods places key functional groups into a binding site and then attempts to connected these together into a single structure. GROW, LUDI, SPROUT
  4. first applied to molecular docking program sby Fischer, Norel Nussinov Wolfson (1993) CPM93, 20-34 and Fischer, Lin, Wolfson and Nussinov (1995) J. Mol. Biology 248, 459-477.
  5. Rigid –body docking in the DOCK program
  6. PLP score (Piece wise Lineair Potential score), ussually for rigid docking
  7. Example: Drugscore Potentials of Mean Force
  8. The distribution of interatomic distances is converted into energy functions by inverting Boltzmann’s law. It is not Boltzmann’s law that determines the distribution observed in the PDB in the first place. “ An ensemble of structural parameters obtained from chemically different compounds in different crystal structures does not even remotely resemble a closed system at thermal equilibrium” Assumption: pair interaction are independent.
  9. Incremental construction 1 adding next fragment in all possible conformations to all placements befor 2 search for new protein-ligand interactions 3 optimising ligand position to improve interaction and reduce strain 4 select a subset of placement with high score 5 clustering of these placements Bohm = Empirical scoring; fit coefficients of physical contributions (LUDI, FlexX) Knowledge-Based Scoring = statistical preferences can be derived between protein And ligand that are similar to potentials of mean field Force Field or Energy scoring= speaks for itself Dock score best for apolar, FlexX best for polar
  10. Creates a negative image of binding surface, matching of distances between receptor negative image and ligand positive image
  11. Some of the failures represent protein-ligand interactions are not expressed in algorithm, e.g., those between electron rich and electron dense groups Also, has no entropic element so couldn’t predict binding energies