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- The Physics of Drug Discovery -




           Shourjya Sanyal
Table of Content

        Topic          No Of Slides
Introduction To Drug        5
Designing
Molecular Dynamics          5
(MD) Simulation
Free Energy                 5
Calculations
Hands on Training :
MD Simulation Setup        10
and Run
Rational Drug Designing
Rational Drug Designing
Rational Drug Designing
Rational Drug Designing
Rational Drug Designing


Absorption
Distribution
Metabolism
Elimination
MD Simulations

Dynamics: calculating trajectories

• Trajectory: positions as function of time: r i (t)
• How does one determine r i (t) from Fi = mi . ai ?
      Fi = mi . Ai = mi . dvi /dti = mi . d2 ri /dti 2
• Simple case where acceleration is constant
              a = dv/dt         v = at + vo
MD Simulations

      Treatment of solvent

• Implicit: The macromolecule
interacts only with itself, but the
electrostatic   interactions    are
modified to account for the solvent
•    Explicit  representation   The
macromolecule is surrounded by
solvent molecules (water, ions) with
which the macromolecule interacts.
Specific nonbond interactions are
calculated
MD Simulations

   Periodic boundary
       conditions

For explicit representation of
solvent the boundaries of the
system must be represented
for periodic system.

Permits the modeling of very
large systems, but introduces
a level of periodicity not
present in nature.
MD Simulations
MD Simulations

  Timescale Limitations



             Molecular dynamics:
      Integration timestep - 1 fs, set by
      fastest varying force.

      Accessible timescale: about 10
      nanoseconds.
Free Energy Calculations

Energy of binding ∆H must become more negative
The energetic interactions between ligand and
receptor have to become more favorable
Free Energy Calculations

The energy terms can be calculated according to
force fields
Free Energy Calculations
Dispersive interactions: London forces and van der Waals
Free Energy Calculations
Free Energy Calculations




         Energy Surface
    Exploration by Simulation..
MD Simulation Setup
Methods for Determining Atomic Structures

NMR (nuclear magnetic resonance) : Absorption of electromagnetic waves
MD Simulation Setup

Obtaining X-Ray structures
The arrangement of atoms in the crystal gives rise to a
diffraction pattern.
MD Simulation Setup
MD Simulation Setup
MD Simulation Setup

Step One: Prepare the Protein Topology

> For this tutorial, we will utilize T4 lysozyme L99A/M102Q
(PDB code 3HTB). Go to the RCSB website and download the
PDB text for the crystal structure.

> Seperate out Ligand and Parent Molecule.
grep JZ4 3HTB_clean.pdb > JZ4.pdb

> Create Topology File for Molecule.
pdb2gmx -f 3HTB_clean.pdb -o 3HTB_processed.gro -water spc
MD Simulation Setup

Step Two : Prepare the Ligand Topology

For this tutorial, we will use PRODRG to generate a starting
topology for our ligand, JZ4. Go to the PRODRG site and
upload your JZ4.pdb file. The server presents you with several
options for how to treat your ligand.

> Include topology of ligand
; Include ligand topology
#include "JZ4.itp"
MD Simulation Setup

Step Three : Solvate The System In Box

Define the box
editconf -f 3HTB_JZ4.gro -o 3HTB_JZ4_box.gro -bt cubic -d 1.0

Adding water ions to the box
genbox -cp 3HTB_JZ4_box.gro -cs spc216.gro -p 3HTB_JZ4.top -o
3HTB_JZ4_boxwater.gro
MD Simulation Setup

Step Four : Energy Minimization

Now that the system is assembled, create the binary input
using grompp using this input parameter file:
grompp -f enermin.mdp -c 3HTB_JZ4_boxwater.gro -p 3HTB_JZ4.top -o
em.tpr

We are now ready to invoke mdrun to carry out the EM:
mdrun -v -deffnm em
MD Simulation Setup

Step Five : Analysis

Energy Landscape
g_energy -f em.edr -o tot.xvg

Structural Analysis
g_rama -f em.trr -s em.tpr -o myrama.xvg
PRESENTATION
DEVELOPMENT


   Shourjya Sanyal
Academic : shourjya.sanyal@ucdconnect.ie
Business : shourjya@thinkbiosolution.com
Think Biosolution Pvt. Ltd. is a young startup aimed at providing low
cost solutions to enterprise ranging from biotechnology to bio-medical
instrumentation. We are a global team of young scientists and
technocrats who aims to serve towards making a better future, by
incorporating innovative technology within framework of current
operations for a given corporation.
It is our dream to accelerate technology growth and development
towards building a better tomorrow I welcome you all to be a part of
this dream.

             http://www.thinkbiosolution.com

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The physics of computational drug discovery

  • 1. - The Physics of Drug Discovery - Shourjya Sanyal
  • 2. Table of Content Topic No Of Slides Introduction To Drug 5 Designing Molecular Dynamics 5 (MD) Simulation Free Energy 5 Calculations Hands on Training : MD Simulation Setup 10 and Run
  • 8. MD Simulations Dynamics: calculating trajectories • Trajectory: positions as function of time: r i (t) • How does one determine r i (t) from Fi = mi . ai ? Fi = mi . Ai = mi . dvi /dti = mi . d2 ri /dti 2 • Simple case where acceleration is constant a = dv/dt v = at + vo
  • 9. MD Simulations Treatment of solvent • Implicit: The macromolecule interacts only with itself, but the electrostatic interactions are modified to account for the solvent • Explicit representation The macromolecule is surrounded by solvent molecules (water, ions) with which the macromolecule interacts. Specific nonbond interactions are calculated
  • 10. MD Simulations Periodic boundary conditions For explicit representation of solvent the boundaries of the system must be represented for periodic system. Permits the modeling of very large systems, but introduces a level of periodicity not present in nature.
  • 12. MD Simulations Timescale Limitations Molecular dynamics: Integration timestep - 1 fs, set by fastest varying force. Accessible timescale: about 10 nanoseconds.
  • 13. Free Energy Calculations Energy of binding ∆H must become more negative The energetic interactions between ligand and receptor have to become more favorable
  • 14. Free Energy Calculations The energy terms can be calculated according to force fields
  • 15. Free Energy Calculations Dispersive interactions: London forces and van der Waals
  • 17. Free Energy Calculations Energy Surface Exploration by Simulation..
  • 18. MD Simulation Setup Methods for Determining Atomic Structures NMR (nuclear magnetic resonance) : Absorption of electromagnetic waves
  • 19. MD Simulation Setup Obtaining X-Ray structures The arrangement of atoms in the crystal gives rise to a diffraction pattern.
  • 22. MD Simulation Setup Step One: Prepare the Protein Topology > For this tutorial, we will utilize T4 lysozyme L99A/M102Q (PDB code 3HTB). Go to the RCSB website and download the PDB text for the crystal structure. > Seperate out Ligand and Parent Molecule. grep JZ4 3HTB_clean.pdb > JZ4.pdb > Create Topology File for Molecule. pdb2gmx -f 3HTB_clean.pdb -o 3HTB_processed.gro -water spc
  • 23. MD Simulation Setup Step Two : Prepare the Ligand Topology For this tutorial, we will use PRODRG to generate a starting topology for our ligand, JZ4. Go to the PRODRG site and upload your JZ4.pdb file. The server presents you with several options for how to treat your ligand. > Include topology of ligand ; Include ligand topology #include "JZ4.itp"
  • 24. MD Simulation Setup Step Three : Solvate The System In Box Define the box editconf -f 3HTB_JZ4.gro -o 3HTB_JZ4_box.gro -bt cubic -d 1.0 Adding water ions to the box genbox -cp 3HTB_JZ4_box.gro -cs spc216.gro -p 3HTB_JZ4.top -o 3HTB_JZ4_boxwater.gro
  • 25. MD Simulation Setup Step Four : Energy Minimization Now that the system is assembled, create the binary input using grompp using this input parameter file: grompp -f enermin.mdp -c 3HTB_JZ4_boxwater.gro -p 3HTB_JZ4.top -o em.tpr We are now ready to invoke mdrun to carry out the EM: mdrun -v -deffnm em
  • 26. MD Simulation Setup Step Five : Analysis Energy Landscape g_energy -f em.edr -o tot.xvg Structural Analysis g_rama -f em.trr -s em.tpr -o myrama.xvg
  • 27. PRESENTATION DEVELOPMENT Shourjya Sanyal Academic : shourjya.sanyal@ucdconnect.ie Business : shourjya@thinkbiosolution.com
  • 28. Think Biosolution Pvt. Ltd. is a young startup aimed at providing low cost solutions to enterprise ranging from biotechnology to bio-medical instrumentation. We are a global team of young scientists and technocrats who aims to serve towards making a better future, by incorporating innovative technology within framework of current operations for a given corporation. It is our dream to accelerate technology growth and development towards building a better tomorrow I welcome you all to be a part of this dream. http://www.thinkbiosolution.com