SlideShare ist ein Scribd-Unternehmen logo
1 von 31
1
Outline
• Overview of computer aided drug designing.
• Clinical and Pre-clinical trials.
• Prediction of properties and Drug-likeness.
• Advanced treatments of protein-ligand
binding.
• Summary
2
Computer aided drug designing.
• 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
3
http://en.wikipedia.org/wiki/Drug_design#Computer-aided_drug_design
Computer aided drug designing.
4
• the classical project-collaboration approach between chemistry, biology
and drug metabolism (ADME) groups in the 1990s
• a much more automated world at the start of this millennium in which
combinatorial chemistry (Combi-Chem), high-throughput screening and
ADME studies are linked together in a streamlined fashion.
ADMET in silico modeling towards Prediction Paradise?, Nature
Computer aided drug designing.
• In order to overcome the insufficient prediction of binding affinity
calculated by recent scoring functions, the protein-ligand
interaction and compound 3D structure information are used to
analysis. For structure-based drug design, several post-screening
analysis focusing on protein-ligand interaction has been developed
for improving enrichment and effectively mining potential
candidates:
– Consensus scoring
• Selecting candidates by voting of multiple scoring functions
• May lose the relationship between protein-ligand structural information and
scoring criterion
– Geometric analysis
• Comparing protein-ligand interactions by visually inspecting individual
structures
• Becoming intractable when the number of complexes to be analyzed
increasing
– Cluster analysis
• Represent and cluster candidates according to protein-ligand 3D information
• Needs meaningful representation of protein-ligand interactions.
5
http://en.wikipedia.org/wiki/Drug_design#Computer-aided_drug_design
Clinical Trials
• Sets of tests in medical research and drug development
that generate safety and efficacy data
• Only after satisfactory information has been gathered on
the quality of the nonclinical safety, and health
authority/ethics committee approval is granted
• The most commonly performed clinical trials evaluate
new drugs, medical devices (like a new catheter),
biologics, psychological therapies, or other interventions.
6
http://en.wikipedia.org/wiki/Clinical_trial
Clinical Trials
• Clinical trial may be designed to do:
– Assess the safety and effectiveness of a new medication or device on
a specific kind of patient
– Assess the safety and effectiveness of a different dose of a medication
than is commonly used
– Assess the safety and effectiveness of an already marketed
medication or device for a new indication
– Assess whether the new medication or device is more effective for the
patient's condition than the already used ("the gold standard" or
"standard therapy")
– Compare the effectiveness in patients with a specific disease (e.g.,
device A vs. device B, therapy A vs. therapy B)
http://en.wikipedia.org/wiki/Clinical_trial
7
Clinical Trials
• 5 different types
– Prevention trials
• find better ways to prevent disease in people (medicines, vitamins, vaccines,
minerals, or lifestyle changes)
– Screening trials
• test the best way to detect certain diseases or health conditions.
– Diagnostic trials
• find better tests or procedures for diagnosing a particular disease or condition.
– Treatment trials
• test experimental treatments, new combinations of drugs, or new approaches to
surgery or radiation therapy.
– Quality of life trials
• ways to improve comfort and the quality of life for individuals with a chronic
illness.
– Compassionate use trials
• provide partially tested, unapproved therapeutics to a small number of patients
who have no other realistic options.
http://en.wikipedia.org/wiki/Clinical_trial
8
Clinical Trials
• Clinical trials involving new drugs are commonly classified into
four phases.
– Phase 0: Pharmacodynamics and Pharmacokinetics
– Phase 1: Screening for safety
– Phase 2: Establishing the testing protocol
– Phase 3: Final testing
– Phase 4: Post approval studies
• Each phase has a different purpose and helps scientists
answer a different question:
• Before pharmaceutical companies start clinical trials on a
drug, they conduct extensive preclinical studies.
http://en.wikipedia.org/wiki/Clinical_trial
9
Preclinical Trials
• Before clinical trials, during which important feasibility,
iterative testing and drug safety data is collected
• To determine a product's ultimate safety profile
– Pharmacodynamics (what the drug does to the body) (PD)
– pharmacokinetics (what the body does to the drug) (PK)
– ADME
– toxicity testing through animal testing
• Both in vitro and in vivo tests will be performed
• Based on pre-clinical trials, No Observable Effect Levels
(NOEL) on drugs are established, which are used to determine
initial phase 1 clinical trial dosage levels on a mass API per
mass patient basis.
http://en.wikipedia.org/wiki/Pre-clinical_development
10
Prediction of Properties and Drug-likeness
• Credits and Thanks for raising the awareness on the
properties and structural features
– Lipinski, Murcko, co-workers at Pfizer and Vertex
• Main Goal = Apply MADE early in pre clinical
development to avoid late stage failures
• Analyses of classes of compounds are informative
• Avoidance of the extremes seems to be safe strategy
The Many Roles of Computation in Drug Discovery, Science
11
Prediction of Properties and Drug-likeness
• Why?
• Which?
• How?
• When?
• What?
– Predict
– Tools
12
Why computational ADME required?
• Traditional drug designing is a Multi step Time consuming
process.
• Adverse pharmacokinetic properties were investigated in
development stage.
ADMET in silico modeling towards Prediction Paradise?, Nature
13
• The rate at which biological screening data are obtained has
dramatically increased
• Combinatorial chemistry feeds these hit-finding machines
• Increased the demands for absorption, distribution,
metabolism, excretion and toxicity data early
Why computational ADME required?
• Attrition in the drug development
• Early decision
ADMET in silico modeling towards Prediction Paradise?, Nature
14
Why computational ADME required?
• The promising
compound went over
the line and was
abandoned in the later
stage due to its oral
bioavailability of only
1%.
Peptide like thrombin inhibitor
The Many Roles of Computation in Drug Discovery, Science
15
Which properties make drugs different
from other chemicals?
• Numerous studies
• Influential one = LIPINSKI’s “Rule of Five”
• Mol mass < 500 da
• Calc octanol/water
partition coefficient < 5
• H-bond donors <5
• H-bond acceptors <10
• Physicochemical and Structural Properties characteristic
of a good drug
The Many Roles of Computation in Drug Discovery, Science
16
Which properties make drugs different
from other chemicals?
• These properties = Build ADME models == Property based
design
• Similar molecules =~= Similar ADME properties
• Predict properties like
– Lipophilicity
– Solubility
– Amount absorbed
ADMET in silico modeling towards Prediction Paradise?, Nature
17
How are ADMET data obtained?
• Three ways
– Automated in vitro assays
– In silico selection of both the relevant assays and the compounds that go
through them
– Predictive models that can possibly replace in vitro or in vivo experiments
• The predictions come from regression equations or neural
networks
• QikProp – Fast and executed for large libraries
– Input is 3D structure
– Output is profile of
• Structural features (Surf Area and H bonding potentials)
• ADME properties
• Undesirable functionality
• Primary metabolites
• Comparison with other drugs
The Many Roles of Computation in Drug Discovery, Science
18
How are ADMET data obtained?
• The two drugs approach hydrophobic and Hydrophilic extremes
• Hydrophobic
– Poor solubility
– High serum protein binding
– Good Cell permeability
• The Opposite is true in case of hydrophilic compounds
• This is responsible for the solubility vs. permeability struggle
The Many Roles of Computation in Drug Discovery, Science
19
When is ADMET data needed?
Design of New
compounds
Need of
properties
Traditional
or Combo
Chemistry
• Predictions are not perfect at this point.
• series of molecules is focused around a lead and is further
optimized towards a clinical candidate, more robust mechanistic
models will be required.
ADMET in silico modeling towards Prediction Paradise?, Nature
20
What ADME properties do we want to
predict?
DOSAGE Amount DOSAGE Frequency
Volume of
Distribution
Volume of
Distribution
ClearanceClearance AbsorptionAbsorption
Oral
bioavailability
Oral
bioavailability
Half LifeHalf Life
ADMET in silico modeling towards Prediction Paradise?, Nature
21
What computational tools are used?
Molecular Modeling
• Protein Modeling that uses
Quantum mechanical
methods for interaction
study
• 3D structural info needed
• No structure available
– Homology modeling (related
structures)
– Pharmacophore modeling
(superposition of known
substrates)
Data Modeling
• QSAR and QSPR with
biological and
physicochemical data
– search for correlations
between a given property and
a set of molecular and
structural descriptors of the
molecules in question
• QSAR
– Mol size
– H bonding
– simple multiple linear regression
to modern MULTIVARIATE
ANALYSIS techniques
ADMET in silico modeling towards Prediction Paradise?, Nature
22
What computational tools are used?
ADMET in silico modeling towards Prediction Paradise?, Nature
23
What computational tools are used?
• UC – 781 is most hydrophobic. It is potent in vitro. It is
seen as microbicide than oral drug.
– Poor solubility and high serum binding
• Long BB predictions are also interesting from standpoint
of potential CNS penetration.
– Beneficial for attack on HIV reservoirs
– Concern CNS side effects
The Many Roles of Computation in Drug Discovery, Science
24
Prediction of Properties and Drug-likeness
• Good predictive models for ADMET parameters depend
crucially on
– selecting the right mathematical approach
– the right molecular descriptors for the particular
ADMET endpoint
– sufficiently large set of experimental data for the
validation of the model
• Several published ADME data sets are available for data
modeling, but the quality of the data and the number of
available training examples remain important issues.
ADMET in silico modeling towards Prediction Paradise?, Nature
25
Advanced treatments of protein-ligand
binding.
• For obtaining better accuracy and to match
computing demands
• Monte Carlo statistical mechanics or
Molecular Dynamics simulations are applied
– Classical force field is used
– Sampling all degrees of freedom of complexes
– Representation of water molecule in aqueous
surroundings
The Many Roles of Computation in Drug Discovery, Science
26
Advanced treatments of protein-ligand
binding.
• Free Energy Perturbation and Thermodynamic
Integration compute free energy changes.
• Perturbations are made to convert one ligand to another
using Thermodynamic cycles
• Δ Δ Gb = Δ GX – ΔGY = Δ GF – ΔGC gives the difference in
free energies of ligands binding X and Y
• Two series of mutations are performed to convert X to Y
unbound in water and complexed with biomolecule
which yield Δ GF and ΔGC.
• Same cycle can be performed with One inhibitor and 2
proteins
The Many Roles of Computation in Drug Discovery, Science
27
Advanced treatments of protein-ligand
binding.
• Inclusion of water makes the representation more realistic
• water molecules that form hydrogen-bonded bridges
between inhibitors and protein hosts are well illustrated
• Water molecules form specific clathrate-like networks
around nonpolar groups
• Optimization of the water structure is becoming a more
common part of inhibitor design
• Other Strengths
– rigor
– extensive sampling
– binding affinities.
• remains difficult to handle large structural differences
between ligands as in changing the core structure
The Many Roles of Computation in Drug Discovery, Science
28
Advanced treatments of protein-ligand
binding.
• Hybrid Methods
– Linear response theory
– free energy of interaction of a solute with its environment is given by one-half
the electrostatic energy plus the van der Waals energy scaled by an empirical
parameter
– For binding a ligand to a protein, the differences in the interactions between
the ligand in the unbound state and bound in the complex then provide an
estimate of the free energy of binding.
– Energy components are obtained from MC or MD simulations for inhibitors in
water and for the protein-inhibitor complexes in water.
• Advantages
– absolute free energies of binding can be approximated
– only simulations at the endpoints of a mutation are required
– computing demands are reduced to a few hours per compound.
– Easy to treat structurally diverse ligands
– Better accuracy
The Many Roles of Computation in Drug Discovery, Science
29
30
ADMET in silico modeling towards Prediction Paradise?, Nature
SUMMARY
References
• William L. Jorgensen, et al., The Many Roles of
Computation in Drug Discovery, Science 303, 1813
(2004);
• Han van de Waterbeemd and Eric Gifford, ADMET in
silico modeling towards Prediction Paradise?, Nature
reviews/drugdisc, March 2003;
• Wikipedia
• The future of computation in drug discovery, By
Wavefunction on Monday, November 28, 2011
• anchorquery.ccbb.pitt.edu/class/lecture.pdf
• http://en.wikipedia.org/wiki/Pre-clinical_development
• http://en.wikipedia.org/wiki/Clinical_trial
• http://en.wikipedia.org/wiki/Drug_design#Computer-
aided_drug_design
31

Weitere ähnliche Inhalte

Was ist angesagt?

Was ist angesagt? (20)

Molecular docking
Molecular dockingMolecular docking
Molecular docking
 
Lipinski rule
Lipinski rule Lipinski rule
Lipinski rule
 
3 D QSAR Approaches and Contour Map Analysis
3 D QSAR Approaches and Contour Map Analysis3 D QSAR Approaches and Contour Map Analysis
3 D QSAR Approaches and Contour Map Analysis
 
Drug discovery hit to lead
Drug discovery hit to leadDrug discovery hit to lead
Drug discovery hit to lead
 
CADD
CADDCADD
CADD
 
Virtual screening ppt
Virtual screening pptVirtual screening ppt
Virtual screening ppt
 
Computational Drug Design
Computational Drug DesignComputational Drug Design
Computational Drug Design
 
Pharmacophore
PharmacophorePharmacophore
Pharmacophore
 
Qsar
QsarQsar
Qsar
 
In silico drug design/Molecular docking
In silico drug design/Molecular dockingIn silico drug design/Molecular docking
In silico drug design/Molecular docking
 
PHARMACOHORE MAPPING AND VIRTUAL SCRRENING FOR RESEARCH DEPARTMENT
PHARMACOHORE MAPPING AND VIRTUAL SCRRENING FOR RESEARCH DEPARTMENTPHARMACOHORE MAPPING AND VIRTUAL SCRRENING FOR RESEARCH DEPARTMENT
PHARMACOHORE MAPPING AND VIRTUAL SCRRENING FOR RESEARCH DEPARTMENT
 
Lead identification
Lead identification Lead identification
Lead identification
 
3d qsar
3d qsar3d qsar
3d qsar
 
De novo drug design
De novo drug designDe novo drug design
De novo drug design
 
Cheminformatics-1.ppt
Cheminformatics-1.pptCheminformatics-1.ppt
Cheminformatics-1.ppt
 
Molecular and Quantum Mechanics in drug design
Molecular and Quantum Mechanics in drug designMolecular and Quantum Mechanics in drug design
Molecular and Quantum Mechanics in drug design
 
QSAR : Activity Relationships Quantitative Structure
QSAR : Activity Relationships Quantitative StructureQSAR : Activity Relationships Quantitative Structure
QSAR : Activity Relationships Quantitative Structure
 
PREDICTION AND ANALYSIS OF ADMET PROPERTIES OF NEW.pptx
PREDICTION AND ANALYSIS OF ADMET PROPERTIES OF NEW.pptxPREDICTION AND ANALYSIS OF ADMET PROPERTIES OF NEW.pptx
PREDICTION AND ANALYSIS OF ADMET PROPERTIES OF NEW.pptx
 
Molecular Modeling and virtual screening techniques
Molecular Modeling and virtual screening techniquesMolecular Modeling and virtual screening techniques
Molecular Modeling and virtual screening techniques
 
De Novo Drug Design
De Novo Drug DesignDe Novo Drug Design
De Novo Drug Design
 

Andere mochten auch

CoMFA CoMFA Comparative Molecular Field Analysis)
CoMFA CoMFA Comparative Molecular Field Analysis)CoMFA CoMFA Comparative Molecular Field Analysis)
CoMFA CoMFA Comparative Molecular Field Analysis)
Pinky Vincent
 
Protein-Ligand Docking
Protein-Ligand DockingProtein-Ligand Docking
Protein-Ligand Docking
baoilleach
 
Applications Of Bioinformatics In Drug Discovery And Process
Applications Of Bioinformatics In Drug Discovery And ProcessApplications Of Bioinformatics In Drug Discovery And Process
Applications Of Bioinformatics In Drug Discovery And Process
Prof. Dr. Basavaraj Nanjwade
 
Computer aided drug design
Computer aided drug designComputer aided drug design
Computer aided drug design
N K
 

Andere mochten auch (15)

Computer aided drug designing (CADD)
Computer aided drug designing (CADD)Computer aided drug designing (CADD)
Computer aided drug designing (CADD)
 
Qsar and drug design ppt
Qsar and drug design pptQsar and drug design ppt
Qsar and drug design ppt
 
Computer Aided Drug Design ppt
Computer Aided Drug Design pptComputer Aided Drug Design ppt
Computer Aided Drug Design ppt
 
Finland Helsinki Drug Research slides 2011
Finland Helsinki Drug Research slides 2011Finland Helsinki Drug Research slides 2011
Finland Helsinki Drug Research slides 2011
 
De novo drug design
De novo drug designDe novo drug design
De novo drug design
 
CoMFA CoMFA Comparative Molecular Field Analysis)
CoMFA CoMFA Comparative Molecular Field Analysis)CoMFA CoMFA Comparative Molecular Field Analysis)
CoMFA CoMFA Comparative Molecular Field Analysis)
 
Denovo Drug Design
Denovo Drug DesignDenovo Drug Design
Denovo Drug Design
 
Protein-Ligand Docking
Protein-Ligand DockingProtein-Ligand Docking
Protein-Ligand Docking
 
Qsar
QsarQsar
Qsar
 
Structure based computer aided drug design
Structure based computer aided drug designStructure based computer aided drug design
Structure based computer aided drug design
 
presentation on in silico studies
presentation on in silico studiespresentation on in silico studies
presentation on in silico studies
 
STRUCTURE BASED DRUG DESIGN - MOLECULAR MODELLING AND DRUG DISCOVERY
STRUCTURE BASED DRUG DESIGN - MOLECULAR MODELLING AND DRUG DISCOVERYSTRUCTURE BASED DRUG DESIGN - MOLECULAR MODELLING AND DRUG DISCOVERY
STRUCTURE BASED DRUG DESIGN - MOLECULAR MODELLING AND DRUG DISCOVERY
 
Applications Of Bioinformatics In Drug Discovery And Process
Applications Of Bioinformatics In Drug Discovery And ProcessApplications Of Bioinformatics In Drug Discovery And Process
Applications Of Bioinformatics In Drug Discovery And Process
 
Computer aided drug design
Computer aided drug designComputer aided drug design
Computer aided drug design
 
In-silico Drug designing
In-silico Drug designing In-silico Drug designing
In-silico Drug designing
 

Ähnlich wie The Many Roles of Computation in Drug Discovery

Ähnlich wie The Many Roles of Computation in Drug Discovery (20)

Drug Discovery subject (clinical research)
Drug Discovery subject (clinical research)Drug Discovery subject (clinical research)
Drug Discovery subject (clinical research)
 
PreClinical Development_Final_clinical.pdf
PreClinical Development_Final_clinical.pdfPreClinical Development_Final_clinical.pdf
PreClinical Development_Final_clinical.pdf
 
Drug discovery clinical evaluation of new drugs
Drug discovery clinical evaluation of new drugsDrug discovery clinical evaluation of new drugs
Drug discovery clinical evaluation of new drugs
 
Drug discovery clinical evaluation of new drugs
Drug discovery clinical evaluation of new drugsDrug discovery clinical evaluation of new drugs
Drug discovery clinical evaluation of new drugs
 
Drug Discovery Method (Bioinformatics)
Drug Discovery Method (Bioinformatics)Drug Discovery Method (Bioinformatics)
Drug Discovery Method (Bioinformatics)
 
Clinical Research, A Basic Understanding...........
Clinical Research, A Basic Understanding...........Clinical Research, A Basic Understanding...........
Clinical Research, A Basic Understanding...........
 
Drug development process
Drug development processDrug development process
Drug development process
 
Molecule to medicine
Molecule to medicineMolecule to medicine
Molecule to medicine
 
1
11
1
 
In silico drug desigining
In silico drug desiginingIn silico drug desigining
In silico drug desigining
 
Cadd
CaddCadd
Cadd
 
drug research.pptx
drug research.pptxdrug research.pptx
drug research.pptx
 
insilicodrugdesigining-170222171857 (1).pptx
insilicodrugdesigining-170222171857 (1).pptxinsilicodrugdesigining-170222171857 (1).pptx
insilicodrugdesigining-170222171857 (1).pptx
 
Introduction to drug discovery and development.pptx
Introduction to drug discovery and development.pptxIntroduction to drug discovery and development.pptx
Introduction to drug discovery and development.pptx
 
lecture 2 slides.pptxlecture 2 slides sdfswssdsdsdsdsdsdsdsd.pptxlecture 2 sl...
lecture 2 slides.pptxlecture 2 slides sdfswssdsdsdsdsdsdsdsd.pptxlecture 2 sl...lecture 2 slides.pptxlecture 2 slides sdfswssdsdsdsdsdsdsdsd.pptxlecture 2 sl...
lecture 2 slides.pptxlecture 2 slides sdfswssdsdsdsdsdsdsdsd.pptxlecture 2 sl...
 
Drug design and development
Drug design and developmentDrug design and development
Drug design and development
 
Natural products in drug discovery
Natural products in drug discoveryNatural products in drug discovery
Natural products in drug discovery
 
Computer aided drug designing (cadd)
Computer aided drug designing (cadd)Computer aided drug designing (cadd)
Computer aided drug designing (cadd)
 
drug discovery- history, evolution and stages
drug discovery- history, evolution and stagesdrug discovery- history, evolution and stages
drug discovery- history, evolution and stages
 
Drug discovery
Drug discoveryDrug discovery
Drug discovery
 

Kürzlich hochgeladen

Kürzlich hochgeladen (20)

This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
REMIFENTANIL: An Ultra short acting opioid.pptx
REMIFENTANIL: An Ultra short acting opioid.pptxREMIFENTANIL: An Ultra short acting opioid.pptx
REMIFENTANIL: An Ultra short acting opioid.pptx
 
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
 
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
 
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptxCOMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
 
Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptx
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POS
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structure
 
Understanding Accommodations and Modifications
Understanding  Accommodations and ModificationsUnderstanding  Accommodations and Modifications
Understanding Accommodations and Modifications
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.ppt
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
Wellbeing inclusion and digital dystopias.pptx
Wellbeing inclusion and digital dystopias.pptxWellbeing inclusion and digital dystopias.pptx
Wellbeing inclusion and digital dystopias.pptx
 
NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...
NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...
NO1 Top Black Magic Specialist In Lahore Black magic In Pakistan Kala Ilam Ex...
 
How to setup Pycharm environment for Odoo 17.pptx
How to setup Pycharm environment for Odoo 17.pptxHow to setup Pycharm environment for Odoo 17.pptx
How to setup Pycharm environment for Odoo 17.pptx
 
Plant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptxPlant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptx
 
Interdisciplinary_Insights_Data_Collection_Methods.pptx
Interdisciplinary_Insights_Data_Collection_Methods.pptxInterdisciplinary_Insights_Data_Collection_Methods.pptx
Interdisciplinary_Insights_Data_Collection_Methods.pptx
 

The Many Roles of Computation in Drug Discovery

  • 1. 1
  • 2. Outline • Overview of computer aided drug designing. • Clinical and Pre-clinical trials. • Prediction of properties and Drug-likeness. • Advanced treatments of protein-ligand binding. • Summary 2
  • 3. Computer aided drug designing. • 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 3 http://en.wikipedia.org/wiki/Drug_design#Computer-aided_drug_design
  • 4. Computer aided drug designing. 4 • the classical project-collaboration approach between chemistry, biology and drug metabolism (ADME) groups in the 1990s • a much more automated world at the start of this millennium in which combinatorial chemistry (Combi-Chem), high-throughput screening and ADME studies are linked together in a streamlined fashion. ADMET in silico modeling towards Prediction Paradise?, Nature
  • 5. Computer aided drug designing. • In order to overcome the insufficient prediction of binding affinity calculated by recent scoring functions, the protein-ligand interaction and compound 3D structure information are used to analysis. For structure-based drug design, several post-screening analysis focusing on protein-ligand interaction has been developed for improving enrichment and effectively mining potential candidates: – Consensus scoring • Selecting candidates by voting of multiple scoring functions • May lose the relationship between protein-ligand structural information and scoring criterion – Geometric analysis • Comparing protein-ligand interactions by visually inspecting individual structures • Becoming intractable when the number of complexes to be analyzed increasing – Cluster analysis • Represent and cluster candidates according to protein-ligand 3D information • Needs meaningful representation of protein-ligand interactions. 5 http://en.wikipedia.org/wiki/Drug_design#Computer-aided_drug_design
  • 6. Clinical Trials • Sets of tests in medical research and drug development that generate safety and efficacy data • Only after satisfactory information has been gathered on the quality of the nonclinical safety, and health authority/ethics committee approval is granted • The most commonly performed clinical trials evaluate new drugs, medical devices (like a new catheter), biologics, psychological therapies, or other interventions. 6 http://en.wikipedia.org/wiki/Clinical_trial
  • 7. Clinical Trials • Clinical trial may be designed to do: – Assess the safety and effectiveness of a new medication or device on a specific kind of patient – Assess the safety and effectiveness of a different dose of a medication than is commonly used – Assess the safety and effectiveness of an already marketed medication or device for a new indication – Assess whether the new medication or device is more effective for the patient's condition than the already used ("the gold standard" or "standard therapy") – Compare the effectiveness in patients with a specific disease (e.g., device A vs. device B, therapy A vs. therapy B) http://en.wikipedia.org/wiki/Clinical_trial 7
  • 8. Clinical Trials • 5 different types – Prevention trials • find better ways to prevent disease in people (medicines, vitamins, vaccines, minerals, or lifestyle changes) – Screening trials • test the best way to detect certain diseases or health conditions. – Diagnostic trials • find better tests or procedures for diagnosing a particular disease or condition. – Treatment trials • test experimental treatments, new combinations of drugs, or new approaches to surgery or radiation therapy. – Quality of life trials • ways to improve comfort and the quality of life for individuals with a chronic illness. – Compassionate use trials • provide partially tested, unapproved therapeutics to a small number of patients who have no other realistic options. http://en.wikipedia.org/wiki/Clinical_trial 8
  • 9. Clinical Trials • Clinical trials involving new drugs are commonly classified into four phases. – Phase 0: Pharmacodynamics and Pharmacokinetics – Phase 1: Screening for safety – Phase 2: Establishing the testing protocol – Phase 3: Final testing – Phase 4: Post approval studies • Each phase has a different purpose and helps scientists answer a different question: • Before pharmaceutical companies start clinical trials on a drug, they conduct extensive preclinical studies. http://en.wikipedia.org/wiki/Clinical_trial 9
  • 10. Preclinical Trials • Before clinical trials, during which important feasibility, iterative testing and drug safety data is collected • To determine a product's ultimate safety profile – Pharmacodynamics (what the drug does to the body) (PD) – pharmacokinetics (what the body does to the drug) (PK) – ADME – toxicity testing through animal testing • Both in vitro and in vivo tests will be performed • Based on pre-clinical trials, No Observable Effect Levels (NOEL) on drugs are established, which are used to determine initial phase 1 clinical trial dosage levels on a mass API per mass patient basis. http://en.wikipedia.org/wiki/Pre-clinical_development 10
  • 11. Prediction of Properties and Drug-likeness • Credits and Thanks for raising the awareness on the properties and structural features – Lipinski, Murcko, co-workers at Pfizer and Vertex • Main Goal = Apply MADE early in pre clinical development to avoid late stage failures • Analyses of classes of compounds are informative • Avoidance of the extremes seems to be safe strategy The Many Roles of Computation in Drug Discovery, Science 11
  • 12. Prediction of Properties and Drug-likeness • Why? • Which? • How? • When? • What? – Predict – Tools 12
  • 13. Why computational ADME required? • Traditional drug designing is a Multi step Time consuming process. • Adverse pharmacokinetic properties were investigated in development stage. ADMET in silico modeling towards Prediction Paradise?, Nature 13
  • 14. • The rate at which biological screening data are obtained has dramatically increased • Combinatorial chemistry feeds these hit-finding machines • Increased the demands for absorption, distribution, metabolism, excretion and toxicity data early Why computational ADME required? • Attrition in the drug development • Early decision ADMET in silico modeling towards Prediction Paradise?, Nature 14
  • 15. Why computational ADME required? • The promising compound went over the line and was abandoned in the later stage due to its oral bioavailability of only 1%. Peptide like thrombin inhibitor The Many Roles of Computation in Drug Discovery, Science 15
  • 16. Which properties make drugs different from other chemicals? • Numerous studies • Influential one = LIPINSKI’s “Rule of Five” • Mol mass < 500 da • Calc octanol/water partition coefficient < 5 • H-bond donors <5 • H-bond acceptors <10 • Physicochemical and Structural Properties characteristic of a good drug The Many Roles of Computation in Drug Discovery, Science 16
  • 17. Which properties make drugs different from other chemicals? • These properties = Build ADME models == Property based design • Similar molecules =~= Similar ADME properties • Predict properties like – Lipophilicity – Solubility – Amount absorbed ADMET in silico modeling towards Prediction Paradise?, Nature 17
  • 18. How are ADMET data obtained? • Three ways – Automated in vitro assays – In silico selection of both the relevant assays and the compounds that go through them – Predictive models that can possibly replace in vitro or in vivo experiments • The predictions come from regression equations or neural networks • QikProp – Fast and executed for large libraries – Input is 3D structure – Output is profile of • Structural features (Surf Area and H bonding potentials) • ADME properties • Undesirable functionality • Primary metabolites • Comparison with other drugs The Many Roles of Computation in Drug Discovery, Science 18
  • 19. How are ADMET data obtained? • The two drugs approach hydrophobic and Hydrophilic extremes • Hydrophobic – Poor solubility – High serum protein binding – Good Cell permeability • The Opposite is true in case of hydrophilic compounds • This is responsible for the solubility vs. permeability struggle The Many Roles of Computation in Drug Discovery, Science 19
  • 20. When is ADMET data needed? Design of New compounds Need of properties Traditional or Combo Chemistry • Predictions are not perfect at this point. • series of molecules is focused around a lead and is further optimized towards a clinical candidate, more robust mechanistic models will be required. ADMET in silico modeling towards Prediction Paradise?, Nature 20
  • 21. What ADME properties do we want to predict? DOSAGE Amount DOSAGE Frequency Volume of Distribution Volume of Distribution ClearanceClearance AbsorptionAbsorption Oral bioavailability Oral bioavailability Half LifeHalf Life ADMET in silico modeling towards Prediction Paradise?, Nature 21
  • 22. What computational tools are used? Molecular Modeling • Protein Modeling that uses Quantum mechanical methods for interaction study • 3D structural info needed • No structure available – Homology modeling (related structures) – Pharmacophore modeling (superposition of known substrates) Data Modeling • QSAR and QSPR with biological and physicochemical data – search for correlations between a given property and a set of molecular and structural descriptors of the molecules in question • QSAR – Mol size – H bonding – simple multiple linear regression to modern MULTIVARIATE ANALYSIS techniques ADMET in silico modeling towards Prediction Paradise?, Nature 22
  • 23. What computational tools are used? ADMET in silico modeling towards Prediction Paradise?, Nature 23
  • 24. What computational tools are used? • UC – 781 is most hydrophobic. It is potent in vitro. It is seen as microbicide than oral drug. – Poor solubility and high serum binding • Long BB predictions are also interesting from standpoint of potential CNS penetration. – Beneficial for attack on HIV reservoirs – Concern CNS side effects The Many Roles of Computation in Drug Discovery, Science 24
  • 25. Prediction of Properties and Drug-likeness • Good predictive models for ADMET parameters depend crucially on – selecting the right mathematical approach – the right molecular descriptors for the particular ADMET endpoint – sufficiently large set of experimental data for the validation of the model • Several published ADME data sets are available for data modeling, but the quality of the data and the number of available training examples remain important issues. ADMET in silico modeling towards Prediction Paradise?, Nature 25
  • 26. Advanced treatments of protein-ligand binding. • For obtaining better accuracy and to match computing demands • Monte Carlo statistical mechanics or Molecular Dynamics simulations are applied – Classical force field is used – Sampling all degrees of freedom of complexes – Representation of water molecule in aqueous surroundings The Many Roles of Computation in Drug Discovery, Science 26
  • 27. Advanced treatments of protein-ligand binding. • Free Energy Perturbation and Thermodynamic Integration compute free energy changes. • Perturbations are made to convert one ligand to another using Thermodynamic cycles • Δ Δ Gb = Δ GX – ΔGY = Δ GF – ΔGC gives the difference in free energies of ligands binding X and Y • Two series of mutations are performed to convert X to Y unbound in water and complexed with biomolecule which yield Δ GF and ΔGC. • Same cycle can be performed with One inhibitor and 2 proteins The Many Roles of Computation in Drug Discovery, Science 27
  • 28. Advanced treatments of protein-ligand binding. • Inclusion of water makes the representation more realistic • water molecules that form hydrogen-bonded bridges between inhibitors and protein hosts are well illustrated • Water molecules form specific clathrate-like networks around nonpolar groups • Optimization of the water structure is becoming a more common part of inhibitor design • Other Strengths – rigor – extensive sampling – binding affinities. • remains difficult to handle large structural differences between ligands as in changing the core structure The Many Roles of Computation in Drug Discovery, Science 28
  • 29. Advanced treatments of protein-ligand binding. • Hybrid Methods – Linear response theory – free energy of interaction of a solute with its environment is given by one-half the electrostatic energy plus the van der Waals energy scaled by an empirical parameter – For binding a ligand to a protein, the differences in the interactions between the ligand in the unbound state and bound in the complex then provide an estimate of the free energy of binding. – Energy components are obtained from MC or MD simulations for inhibitors in water and for the protein-inhibitor complexes in water. • Advantages – absolute free energies of binding can be approximated – only simulations at the endpoints of a mutation are required – computing demands are reduced to a few hours per compound. – Easy to treat structurally diverse ligands – Better accuracy The Many Roles of Computation in Drug Discovery, Science 29
  • 30. 30 ADMET in silico modeling towards Prediction Paradise?, Nature SUMMARY
  • 31. References • William L. Jorgensen, et al., The Many Roles of Computation in Drug Discovery, Science 303, 1813 (2004); • Han van de Waterbeemd and Eric Gifford, ADMET in silico modeling towards Prediction Paradise?, Nature reviews/drugdisc, March 2003; • Wikipedia • The future of computation in drug discovery, By Wavefunction on Monday, November 28, 2011 • anchorquery.ccbb.pitt.edu/class/lecture.pdf • http://en.wikipedia.org/wiki/Pre-clinical_development • http://en.wikipedia.org/wiki/Clinical_trial • http://en.wikipedia.org/wiki/Drug_design#Computer- aided_drug_design 31