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MOLECULAR MODELING AND
DRUG DESIGNING
STRCUTURE BASED DRUG
DESIGN
M.THILAKAR,
LS1154,
4’th M.Sc. LIFE
SCIENCES,
BDU,
TRICHY.
ROAD TO NEW DRUGS
BASIC STUDIES PRE
CLINICAL
TRIAL
CLINICA
L TRAIL
REGISTRATIO
N
1-4 YEARS 5-6 YEARS 6-12.5
YEARS
12.5-14
YEARS
3/19/2015 LS1154 - M. THILAKAR 2
ROAD TO NEW DRUGS
3/19/2015 LS1154 - M. THILAKAR 3
STRUCTUAL
BIOINFORMATICS
Structural bioinformatics can facilitate the discovery, design, and
optimization of new chemical entities.
Range from : Drugs and Biological probes to biomaterials, catalysts, and
new macromolecules.
Molecular design is important in fields as diverse as organic chemistry,
physical chemistry, chemical engineering, chemical physics, bioengineering,
and molecular biology.
No single strategy or method has come forward that provides an optimum
solution to the many different challenges involved in designing materials
with new properties
3/19/2015 LS1154 - M. THILAKAR 4
STARTING A STRUCTURE-BASED
DRUG DISCOVERY PROJECT –
GENERAL CONSIDERATIONS
Starts with target identification and verification to obtain a “verified drug
target”.
For structure-based drug design the three-dimensional structure of the
protein needs to be determined.
When identifying a drug target, we first need to answer some general
questions:
DRUG TARGET..??
Does the target protein
belong to a biochemical
pathway
If our aim is to inhibit a
protein belongs to a
pathogen, Are there any
related proteins in the
human host
If the protein is not so
well studied one could
also ask if it is actually
drugable.?
3/19/2015 LS1154 - M. THILAKAR 5
WHY TARGET
IDENTIFICATIONS..????
Helps in mapping available interactions within the active site,
which in turn will help in the next step when new compounds will be
designed.
If there is no three-dimensional structure available for the protein target
one could try to find a structure of a homologous protein,
which may subsequently be used for homology modeling.
A search of sequence databases followed by sequence alignment and
analysis may easily answer questions related to the specificity of a particular
target in a given organism.
3/19/2015 LS1154 - M. THILAKAR 6
3/19/2015 LS1154 - M. THILAKAR 7
STRUCTURE-BASED DESIGN
The first step in structure based drug design is the determination of the 3D
structure of the target macromolecule,
Primarily by X-ray crystallography and NMR spectroscopy or computational
methods such as homology modeling or ab-initio methods
The negative image of the receptor defines the space available for ligand
binding.
There may be many potential binding sites.
The actual binding site can be located by comparison with known protein–
ligand complexes or through homology to related complexes.
3/19/2015 LS1154 - M. THILAKAR 8
SOURCE :
Structural Bioinformatics Edited by Philip E Bourne and Helge Weissig
3/19/2015 LS1154 - M. THILAKAR 9
SITE-DIRECTED LIGAND
GENERATION
Site-directed ligand generation branches into two main approaches:
Docking methods search available databases for matches to an active site,
whereas de novo design seeks to generate new ligands by connecting atoms or
molecular fragments uniquely chosen for a particular receptor.
Docking is the computational equivalent of high-throughput screening.
De novo design can suggest chemically novel ligand classes that are not
limited to previously synthesized compounds .
SITE-DIRECTED
LIGAND
GENERATION
DOCKING
BUILDING
(DE NOVO DESIGN)
3/19/2015 LS1154 - M. THILAKAR 10
DOCKING
The aim of molecular docking is to evaluate the feasible binding
genome tries of a putative ligand with a target whose 3D
structure is known.
The binding geometries, often called binding modes or poses
include both the positioning of the ligand relative to the receptor
(ligand configuration) and the conformational state(s) of the
ligand and the receptor.
Docking methods can therefore be evaluated by their ability to
rapidly and accurately dock large numbers of small molecules
into the binding site of a receptor, allowing for a rank ordering
in terms of strength of interaction with a particular receptor.
Therefore, the essential feature of any treatment of ligand-
receptor interaction is the correct estimation of free energy of
binding.
3/19/2015 LS1154 - M. THILAKAR 11
TASKS OF DOCKING
There are three basic tasks any docking procedure must accomplish:
(1) Characterization of the binding site;
(2) Positioning of the ligand into the binding site (orienting); and
(3) Evaluating the strength of interaction for a specific ligand-receptor complex
(“scoring”).
In order to screen large databases, automated docking is required.
GEOMETRIC SEARCH METHODS : Include systematic search grids as well as descriptor
matching.
ENERGY SEARCH METHODS : Include accomplishes the alignment of the ligands by
minimizing the ligand-receptor interaction energy using Monte Carlo or molecular
dynamics simulations or genetic algorithms
AUTOMATED
SEARCHING METHODS
GEOMETRIC SEARCH
METHOD
ENERGY SEARCH
METHOD
3/19/2015 LS1154 - M. THILAKAR 12
3/19/2015 LS1154 - M. THILAKAR 13
VIRTUAL LIBRARY DESIGN
The advent of combinatorial chemistry has stimulated the development of
computational screening of libraries of compounds that, themselves, might
either be real or assembled on the computer.
It is possible to make many more compounds computationally than can be
synthesized or screened experimentally.
Virtual screening and the use of library design principles are thus being
used to prioritize experimental efforts to make the best use of chemical and
screening resources.
The advantage of virtual screening over random high-throughput
screening is the generation of directed libraries considering molecular
properties that meet criteria required for drug-likeness ADME and exhibit
specificity for the selected target.
The limiting aspect in designing virtual libraries is the synthetic
accessibility of the products by combinatorial library synthesis techniques.3/19/2015 LS1154 - M. THILAKAR 14
3/19/2015 LS1154 - M. THILAKAR 15
SOURCE :
STRUCTURAL BIOINFORMATICS EDITED BY PHILIP E BOURNE AND
HELGE WEISSIG
DE-NOVO
DESIGN
The central concept of de novo
design is the construction of
molecules that have not
necessarily been synthesized
previously.
There are three basic classes of
de novo design methods:
Fragment-positioning methods,
Fragment-connecting methods,
and
Sequential-grow methods.
3/19/2015 LS1154 - M. THILAKAR 16
1. FRAGMENT PLACEMENT
Instead of completely building up a new ligand, these methods
determine favorable binding positions for single atoms or small
fragments (GRID [Goodford, 1985]; MCSS [Miranker and Karplus, 1991.
The underlying assumption is that a small number of well-placed
fragments will account for significant binding interaction, while the
rest of the molecule serves as a scaffold that links active fragments
together.
The fragments are chosen to capture the basic molecular interactions
such as hydrogen bonding (donor/acceptor) and hydrophobicity, and to
optimally represent the functional groups and structural subunits
present in a larger diverse library.
The placement procedure uses either a molecular mechanics force
field or a rule-based approach derived from an analysis of structural
databases.
Both the fragment connection method and the anchor-and-grow
3/19/2015 LS1154 - M. THILAKAR 17
2. CONNECTION METHODS
Site point connection methods attempt to place small molecules in the
binding pocket to match site points that provide favorable interactions.
The site points are either derived directly by rules or by previous
fragment placement, as described in fragment placement.
Fragment connection methods retrieve scaffolds from a database in
order to connect isolated fragments by overlaying corresponding bond
vectors.
A suitable linker (rigid or flexible) provides a compatible geometry
for connecting the critical fragments.
In a final step, the linker has to be tested for overlap with the
receptor.
The large number of available programs using connection strategies
reflects the fact that molecular fragments are a standard tool of
chemists.3/19/2015 LS1154 - M. THILAKAR 18
3. SEQUENTIAL GROW
The step-by-step construction of ligand within a binding pocket is another
useful approach for generating new potential leads or optimizing the
functionality of a known inhibitor.
First, a seed atom or fragment is placed in the binding site and then the new
ligand is successively built up by bonding additional structural elements.
Flexibility is introduced by conformational searching and minimization or by
random orientations accepted by Monte Carlo criteria.
The building procedure is guided by scoring the growing ligand at each
step.
The final results often depend on the selection of the initial position.
Since the selection of each added unit is based on its binding score, smaller
binding ligands are generated compared to fragment joining methods.
Another, less obvious, difficulty is the vastness of chemical space compared
with the (relatively) small number of compounds that are feasible from the
standpoint of synthetic chemistry (Clark, Murray, and Li, 1997).3/19/2015 LS1154 - M. THILAKAR 19
LIMITATIONS
All the de novo methods face a common set of problems.
Since the overall shape of the generated compounds is imposed by the
binding site, it is not guaranteed that the generated conformations of the
ligands are energetically optimal.
Point charges (used in force fields) are constantly changing during the
building process.
Also, as noted the synthetic accessibility has to be addressed.
Linking methods have not yet been thoroughly explored.
3/19/2015 LS1154 - M. THILAKAR 20
3/19/2015 LS1154 - M. THILAKAR 21
COMPUTER-AIDED DRUG DESIGN
CADD – STRUCTUR BASED DRUG DESIGN
LIGAND-BASED
(ANALOG-BASED) DESIGN
> Relies on a set of known ligands and is
particularly valuable
If no structural information about the receptor is
available.
> Hence, it is generally applicable to all classes of
drugs.
TARGET-BASED
(RECEPTOR-BASED) DESIGN
> Usually starts with the structure of a receptor
site.
Such as the active site in a protein
> This structure can be generated from direct
experimentation or can be deduced from
experimental structures through homology
modeling.
(Al-Lazikani et al., 2001).
3/19/2015 LS1154 - M. THILAKAR 22
LIGAND-BASED DESIGN
Based on the known Ligands and their structural activity.
It is necessary to have experimental affinities and molecular properties
of a set of active compounds, for which the chemical structures are
known.
ANALOG BASED DRUG
DESIGN
PHARMACOPHORE
MAPS
QUANTITATIVE
STRUCTURE-ACTIVITY
RELATIONSHIPS (QSAR)
3/19/2015 LS1154 - M. THILAKAR 23
LIGAND-BASED DRUG
DESIGNVIRTUAL
SCREENING
•2D, 3D and QSAR
method.
DE NOVO DRUG
DESIGN
• MODELS :
Simulations and
Knowledge based
modelling
• CONSTRUCTION OF
ALGORITHMS : Incremental3/19/2015 LS1154 - M. THILAKAR 24
2D STRUCTURE MATCHING
3/19/2015 LS1154 - M. THILAKAR 25
2D SUB - STRUCTURE MATCHING
3/19/2015 LS1154 - M. THILAKAR 26
3D STRUCTURE MATCHING
3/19/2015 LS1154 - M. THILAKAR 27
3/19/2015 LS1154 - M. THILAKAR 28
FRONT PAGE OF
MOLECULAR
ENVIRONMENT3/19/2015 LS1154 - M. THILAKAR 29
3/19/2015 LS1154 - M. THILAKAR 30
3/19/2015 LS1154 - M. THILAKAR 31
IDENTIFYING THE TARGET
AND DOCKING
3/19/2015 LS1154 - M. THILAKAR 32
3/19/2015 LS1154 - M. THILAKAR 33
3/19/2015 LS1154 - M. THILAKAR 34
3/19/2015 LS1154 - M. THILAKAR 35
HOW TO DRAW DRUG IN
CHEMDRAW
3/19/2015 LS1154 - M. THILAKAR 36
3/19/2015 LS1154 - M. THILAKAR 37
DOCKING WITH OUR NEW
DRUG
3/19/2015 LS1154 - M. THILAKAR 38
3/19/2015 LS1154 - M. THILAKAR 39
3/19/2015 LS1154 - M. THILAKAR 40
3/19/2015 LS1154 - M. THILAKAR 41
LIGAND INTERACTIONS
3/19/2015 LS1154 - M. THILAKAR 42
3/19/2015 LS1154 - M. THILAKAR 43
3/19/2015 LS1154 - M. THILAKAR 44
3/19/2015 LS1154 - M. THILAKAR 45
3/19/2015 LS1154 - M. THILAKAR 46
3/19/2015 LS1154 - M. THILAKAR 47
REFERENCES
 Structural Bioinformatics Edited by Philip E Bourne and Helge Weissig Pg :
441-497
Structure-Based Drug Design: Docking and Scoring by Romano T. Kroemer
Current Protein and Peptide Science, 2007, 8, 312-328
Virtual screening and molecular docking by Dr. Sander B Nabruus, Centre for
Molecular and Biomolecular informatics, Radboud university.
Introduction to structure based drug design - A practical guide by Tara
phillips, Christophe lmj verlinde and Wim Gj HOL Structure 15 July
1994, 2:577-587.
Structure-Based Drug Design By Thomas Funkhouser, Princeton University
CS597A, Fall 2005
From laptop to benchtop to bedside: Structure-based Drug Design on
Protein Targets Lu Chen et al., Curr Pharm Des . 2012 ; 18(9): 1217–1239.
http://www.proteinstructures.com/SBDD/structure-drug.html
http://publications.nigms.nih.gov/structlife/chapter4.html
3/19/2015 LS1154 - M. THILAKAR 48
3/19/2015 LS1154 - M. THILAKAR 49
3/19/2015 LS1154 - M. THILAKAR 50

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STRUCTURE BASED DRUG DESIGN - MOLECULAR MODELLING AND DRUG DISCOVERY

  • 1. MOLECULAR MODELING AND DRUG DESIGNING STRCUTURE BASED DRUG DESIGN M.THILAKAR, LS1154, 4’th M.Sc. LIFE SCIENCES, BDU, TRICHY.
  • 2. ROAD TO NEW DRUGS BASIC STUDIES PRE CLINICAL TRIAL CLINICA L TRAIL REGISTRATIO N 1-4 YEARS 5-6 YEARS 6-12.5 YEARS 12.5-14 YEARS 3/19/2015 LS1154 - M. THILAKAR 2
  • 3. ROAD TO NEW DRUGS 3/19/2015 LS1154 - M. THILAKAR 3
  • 4. STRUCTUAL BIOINFORMATICS Structural bioinformatics can facilitate the discovery, design, and optimization of new chemical entities. Range from : Drugs and Biological probes to biomaterials, catalysts, and new macromolecules. Molecular design is important in fields as diverse as organic chemistry, physical chemistry, chemical engineering, chemical physics, bioengineering, and molecular biology. No single strategy or method has come forward that provides an optimum solution to the many different challenges involved in designing materials with new properties 3/19/2015 LS1154 - M. THILAKAR 4
  • 5. STARTING A STRUCTURE-BASED DRUG DISCOVERY PROJECT – GENERAL CONSIDERATIONS Starts with target identification and verification to obtain a “verified drug target”. For structure-based drug design the three-dimensional structure of the protein needs to be determined. When identifying a drug target, we first need to answer some general questions: DRUG TARGET..?? Does the target protein belong to a biochemical pathway If our aim is to inhibit a protein belongs to a pathogen, Are there any related proteins in the human host If the protein is not so well studied one could also ask if it is actually drugable.? 3/19/2015 LS1154 - M. THILAKAR 5
  • 6. WHY TARGET IDENTIFICATIONS..???? Helps in mapping available interactions within the active site, which in turn will help in the next step when new compounds will be designed. If there is no three-dimensional structure available for the protein target one could try to find a structure of a homologous protein, which may subsequently be used for homology modeling. A search of sequence databases followed by sequence alignment and analysis may easily answer questions related to the specificity of a particular target in a given organism. 3/19/2015 LS1154 - M. THILAKAR 6
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  • 8. STRUCTURE-BASED DESIGN The first step in structure based drug design is the determination of the 3D structure of the target macromolecule, Primarily by X-ray crystallography and NMR spectroscopy or computational methods such as homology modeling or ab-initio methods The negative image of the receptor defines the space available for ligand binding. There may be many potential binding sites. The actual binding site can be located by comparison with known protein– ligand complexes or through homology to related complexes. 3/19/2015 LS1154 - M. THILAKAR 8
  • 9. SOURCE : Structural Bioinformatics Edited by Philip E Bourne and Helge Weissig 3/19/2015 LS1154 - M. THILAKAR 9
  • 10. SITE-DIRECTED LIGAND GENERATION Site-directed ligand generation branches into two main approaches: Docking methods search available databases for matches to an active site, whereas de novo design seeks to generate new ligands by connecting atoms or molecular fragments uniquely chosen for a particular receptor. Docking is the computational equivalent of high-throughput screening. De novo design can suggest chemically novel ligand classes that are not limited to previously synthesized compounds . SITE-DIRECTED LIGAND GENERATION DOCKING BUILDING (DE NOVO DESIGN) 3/19/2015 LS1154 - M. THILAKAR 10
  • 11. DOCKING The aim of molecular docking is to evaluate the feasible binding genome tries of a putative ligand with a target whose 3D structure is known. The binding geometries, often called binding modes or poses include both the positioning of the ligand relative to the receptor (ligand configuration) and the conformational state(s) of the ligand and the receptor. Docking methods can therefore be evaluated by their ability to rapidly and accurately dock large numbers of small molecules into the binding site of a receptor, allowing for a rank ordering in terms of strength of interaction with a particular receptor. Therefore, the essential feature of any treatment of ligand- receptor interaction is the correct estimation of free energy of binding. 3/19/2015 LS1154 - M. THILAKAR 11
  • 12. TASKS OF DOCKING There are three basic tasks any docking procedure must accomplish: (1) Characterization of the binding site; (2) Positioning of the ligand into the binding site (orienting); and (3) Evaluating the strength of interaction for a specific ligand-receptor complex (“scoring”). In order to screen large databases, automated docking is required. GEOMETRIC SEARCH METHODS : Include systematic search grids as well as descriptor matching. ENERGY SEARCH METHODS : Include accomplishes the alignment of the ligands by minimizing the ligand-receptor interaction energy using Monte Carlo or molecular dynamics simulations or genetic algorithms AUTOMATED SEARCHING METHODS GEOMETRIC SEARCH METHOD ENERGY SEARCH METHOD 3/19/2015 LS1154 - M. THILAKAR 12
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  • 14. VIRTUAL LIBRARY DESIGN The advent of combinatorial chemistry has stimulated the development of computational screening of libraries of compounds that, themselves, might either be real or assembled on the computer. It is possible to make many more compounds computationally than can be synthesized or screened experimentally. Virtual screening and the use of library design principles are thus being used to prioritize experimental efforts to make the best use of chemical and screening resources. The advantage of virtual screening over random high-throughput screening is the generation of directed libraries considering molecular properties that meet criteria required for drug-likeness ADME and exhibit specificity for the selected target. The limiting aspect in designing virtual libraries is the synthetic accessibility of the products by combinatorial library synthesis techniques.3/19/2015 LS1154 - M. THILAKAR 14
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  • 16. SOURCE : STRUCTURAL BIOINFORMATICS EDITED BY PHILIP E BOURNE AND HELGE WEISSIG DE-NOVO DESIGN The central concept of de novo design is the construction of molecules that have not necessarily been synthesized previously. There are three basic classes of de novo design methods: Fragment-positioning methods, Fragment-connecting methods, and Sequential-grow methods. 3/19/2015 LS1154 - M. THILAKAR 16
  • 17. 1. FRAGMENT PLACEMENT Instead of completely building up a new ligand, these methods determine favorable binding positions for single atoms or small fragments (GRID [Goodford, 1985]; MCSS [Miranker and Karplus, 1991. The underlying assumption is that a small number of well-placed fragments will account for significant binding interaction, while the rest of the molecule serves as a scaffold that links active fragments together. The fragments are chosen to capture the basic molecular interactions such as hydrogen bonding (donor/acceptor) and hydrophobicity, and to optimally represent the functional groups and structural subunits present in a larger diverse library. The placement procedure uses either a molecular mechanics force field or a rule-based approach derived from an analysis of structural databases. Both the fragment connection method and the anchor-and-grow 3/19/2015 LS1154 - M. THILAKAR 17
  • 18. 2. CONNECTION METHODS Site point connection methods attempt to place small molecules in the binding pocket to match site points that provide favorable interactions. The site points are either derived directly by rules or by previous fragment placement, as described in fragment placement. Fragment connection methods retrieve scaffolds from a database in order to connect isolated fragments by overlaying corresponding bond vectors. A suitable linker (rigid or flexible) provides a compatible geometry for connecting the critical fragments. In a final step, the linker has to be tested for overlap with the receptor. The large number of available programs using connection strategies reflects the fact that molecular fragments are a standard tool of chemists.3/19/2015 LS1154 - M. THILAKAR 18
  • 19. 3. SEQUENTIAL GROW The step-by-step construction of ligand within a binding pocket is another useful approach for generating new potential leads or optimizing the functionality of a known inhibitor. First, a seed atom or fragment is placed in the binding site and then the new ligand is successively built up by bonding additional structural elements. Flexibility is introduced by conformational searching and minimization or by random orientations accepted by Monte Carlo criteria. The building procedure is guided by scoring the growing ligand at each step. The final results often depend on the selection of the initial position. Since the selection of each added unit is based on its binding score, smaller binding ligands are generated compared to fragment joining methods. Another, less obvious, difficulty is the vastness of chemical space compared with the (relatively) small number of compounds that are feasible from the standpoint of synthetic chemistry (Clark, Murray, and Li, 1997).3/19/2015 LS1154 - M. THILAKAR 19
  • 20. LIMITATIONS All the de novo methods face a common set of problems. Since the overall shape of the generated compounds is imposed by the binding site, it is not guaranteed that the generated conformations of the ligands are energetically optimal. Point charges (used in force fields) are constantly changing during the building process. Also, as noted the synthetic accessibility has to be addressed. Linking methods have not yet been thoroughly explored. 3/19/2015 LS1154 - M. THILAKAR 20
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  • 22. COMPUTER-AIDED DRUG DESIGN CADD – STRUCTUR BASED DRUG DESIGN LIGAND-BASED (ANALOG-BASED) DESIGN > Relies on a set of known ligands and is particularly valuable If no structural information about the receptor is available. > Hence, it is generally applicable to all classes of drugs. TARGET-BASED (RECEPTOR-BASED) DESIGN > Usually starts with the structure of a receptor site. Such as the active site in a protein > This structure can be generated from direct experimentation or can be deduced from experimental structures through homology modeling. (Al-Lazikani et al., 2001). 3/19/2015 LS1154 - M. THILAKAR 22
  • 23. LIGAND-BASED DESIGN Based on the known Ligands and their structural activity. It is necessary to have experimental affinities and molecular properties of a set of active compounds, for which the chemical structures are known. ANALOG BASED DRUG DESIGN PHARMACOPHORE MAPS QUANTITATIVE STRUCTURE-ACTIVITY RELATIONSHIPS (QSAR) 3/19/2015 LS1154 - M. THILAKAR 23
  • 24. LIGAND-BASED DRUG DESIGNVIRTUAL SCREENING •2D, 3D and QSAR method. DE NOVO DRUG DESIGN • MODELS : Simulations and Knowledge based modelling • CONSTRUCTION OF ALGORITHMS : Incremental3/19/2015 LS1154 - M. THILAKAR 24
  • 25. 2D STRUCTURE MATCHING 3/19/2015 LS1154 - M. THILAKAR 25
  • 26. 2D SUB - STRUCTURE MATCHING 3/19/2015 LS1154 - M. THILAKAR 26
  • 27. 3D STRUCTURE MATCHING 3/19/2015 LS1154 - M. THILAKAR 27
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  • 32. IDENTIFYING THE TARGET AND DOCKING 3/19/2015 LS1154 - M. THILAKAR 32
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  • 36. HOW TO DRAW DRUG IN CHEMDRAW 3/19/2015 LS1154 - M. THILAKAR 36
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  • 38. DOCKING WITH OUR NEW DRUG 3/19/2015 LS1154 - M. THILAKAR 38
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  • 48. REFERENCES  Structural Bioinformatics Edited by Philip E Bourne and Helge Weissig Pg : 441-497 Structure-Based Drug Design: Docking and Scoring by Romano T. Kroemer Current Protein and Peptide Science, 2007, 8, 312-328 Virtual screening and molecular docking by Dr. Sander B Nabruus, Centre for Molecular and Biomolecular informatics, Radboud university. Introduction to structure based drug design - A practical guide by Tara phillips, Christophe lmj verlinde and Wim Gj HOL Structure 15 July 1994, 2:577-587. Structure-Based Drug Design By Thomas Funkhouser, Princeton University CS597A, Fall 2005 From laptop to benchtop to bedside: Structure-based Drug Design on Protein Targets Lu Chen et al., Curr Pharm Des . 2012 ; 18(9): 1217–1239. http://www.proteinstructures.com/SBDD/structure-drug.html http://publications.nigms.nih.gov/structlife/chapter4.html 3/19/2015 LS1154 - M. THILAKAR 48
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Notas do Editor

  1. 2D STURCTURE USES (PREVIOUSLY) * Does the target protein belong to a biochemical pathway, which can be bypassed by the cell, if inhibited? Obviously, if the pathway can be bypassed, inhibiting it will not make much difference. If our aim is to inhibit a protein belongs to a pathogen, Are there any related proteins in the human host, which may be affected by the drug? If the protein is not so well studied one could also ask if it is actually drugable.? In the sense that it has a small-molecule binding site for which a binding compound can be designed.
  2. LIGAND : A molecule (of any size) that binds or interacts with another molecule through non-covalent forces (chemical bond formation) TARGET or receptor is typically the larger species. There are many physical, chemical, and biological properties of the complex that will be influenced by changes in the ligand. The nature of the interaction between ligand and receptor depends on a balance in the chemical/physical forces between them and the forces between each of these molecules and the solvent or environment. These forces basically arise from the interaction of electrons and are studied at the most fundamental level using quantum mechanics (QM). However, the direct application of quantum theory to molecules of biological interest remains limited by computational resources for systems larger than a few amino acids.
  3. PHARMACOPHORE : An explicit geometric hypothesis of the critical features of a ligand. Functional groups of the leads, it is necessary to specify the individual compounds bound state. Hydrogen-bond donors and acceptors, charged groups, and hydrophobic patterns. ** QSAR : The goal of QSAR studies is to predict the activity of new compounds based solely on their chemical structure. The underlying assumption is that the biological activity can be attributed to incremental contributions of the molecular fragments, determining the biological activity. This assumption is called the linear free energy principle. 3D-QSAR The predictive nature of a QSAR approach is limited to new compounds that are similar to the compounds from the training set. There is also a risk of chance correlations.