SlideShare ist ein Scribd-Unternehmen logo
1 von 29
A Predictive Ligand-Based Bayesian Model for Human Drug Induced Liver Injury Sean Ekins Collaborations in Chemistry, Jenkintown, PA. Collaborative Drug Discovery, Burlingame, CA. School of Pharmacy, Department of Pharmaceutical Sciences, University of Maryland.
Pharma reached a productivity tipping point Cost of drug development high Failure in clinic due to toxicity How to predict failure earlier
Why We Need Models ,[object Object],[object Object],[object Object],[object Object]
The future: crowdsourced drug discovery Williams et al., Drug Discovery World, Winter 2009
What is DILI? ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],https://dilin.dcri.duke.edu/for-researchers/info/
Drug Examples for DILI + and - Troglitazone DILI + Pioglitazone DILI - Rosiglitazone DILI - Sulindac DILI + Aspirin DILI - Diclofenac DILI + Xu et al., Toxicol Sci 105: 97-105 (2008).
Limitations of DILI? ,[object Object],[object Object],[object Object],[object Object],[object Object],Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Tools for big datasets P-gp +ve  P-gp -ve Balakin et al.,Curr Drug Disc Technol 2:99-113, 2005.
DILI Computational Models ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
DILI data ,[object Object],[object Object],[object Object],[object Object],[object Object]
CRIMALDDI Meeting 2010 www.collaborativedrug.com Linking databases ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[email_address] Data curation
Bayesian machine learning ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Extended connectivity fingerprints
Bayesian machine learning Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Bayesian classification is a simple probabilistic classification model. It is based on Bayes’ theorem h  is the hypothesis or model d  is the observed data p ( h ) is the prior belief (probability of hypothesis  h  before observing any data) p ( d ) is the data evidence (marginal probability of the data) p ( d|h ) is the likelihood (probability of data  d  if hypothesis  h  is true)  p ( h|d ) is the posterior probability (probability of hypothesis  h  being true given the observed data  d )  A weight is calculated for each feature using a Laplacian-adjusted probability estimate to account for the different sampling frequencies of different features.  The weights are summed to provide a probability estimate
Examples of using Bayesian Models Integrated in Silico-in Vitro Strategy for Addressing Cytochrome P450 3A4 Time-Dependent Inhibition Zientek et al., Chem Res Toxicol 23: 664-676 (2010) Challenges predicting ligand-receptor interactions of promiscuous proteins: the nuclear receptor PXR  Ekins S, Kortagere S, Iyer M, Reschly EJ, Lill MA, Redinbo MR and Krasowski MD, PLoS Comput Biol 5(12): e1000594, (2009) . Computational models for drug inhibition of the human apical sodium-dependent bile acid transporter  Zheng X, et al., Mol Pharm, 6: 1591-1603, (2009) Quantitative structure activity relationship for inhibition of human organic cation/carnitine transporter Diao et al., Mol Pharm, 7: 2120-2131, (2010)
Features in DILI + Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Avoid Long aliphatic chains Phenols Ketones Diols ïĄ -methyl styrene Conjugated structures Cyclohexenones Amides ?
Features in DILI - Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
Results ,[object Object],[object Object],[object Object],[object Object],[object Object],Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
Test set analysis ,[object Object],[object Object],Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
Training vs test set PCA Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Yellow = test Blue = training retinyl  palmitate
Compare to newer drugs  ,[object Object],[object Object],[object Object],[object Object],Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
Fingolimod (Gilenya) for MS (EMEA and FDA)  Paliperidone for schizophrenia Pirfenidone for Idiopathic pulmonary fibrosis Roflumilast for pulmonary disease Predictions for newly approved EMEA compounds Can we get DILI experimental data for these?
SMARTS FIlters Smartsfilter kindly provided by Dr. Jeremy Yang (University of New Mexico, Albuquerque, NM, http://pasilla.health.unm.edu/tomcat/biocomp/smartsfilter). Substructure Alerts used to filter libraries – remove reactive groups etc. Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
SMARTS Filters vs Rule of 5 Ekins and Freundlich, Pharm Res, In press 2011  Correlation between the number of SMARTS filter failures and the number of Lipinski violations for different types of rules sets with FDA drug set from CDD (N = 2804) Suggests # of Lipinski violations may also be an indicator of undesirable chemical features that result in reactivity
Open source tools for modeling ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],$  $$$$$$
[object Object],[object Object],[object Object],[object Object],The next opportunities for crowdsourcing
 Models Inside company Collaborators Current investments >$1M/yr >$10-100’s M/yr Databases, servers Commercial Descriptors  Algorithms In house  data  generation Data
Pfizer Merck GSK Novartis Lilly BMS Could combining models give greater coverage of ADME/ Tox chemistry space and improve predictions? Lundbeck Allergan Bayer AZ Roche BI Merk KGaA Expanding computational model coverage of chemical space
More collaborations, integrating models into scientific social networks Drug Disc Today, 14: 261-270, 2009
Conclusions  ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
Acknowledgments ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]

Weitere Àhnliche Inhalte

Was ist angesagt?

Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO
Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO
Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO
csandit
 
working_example_poster
working_example_posterworking_example_poster
working_example_poster
Huikun Zhang
 
Articulo4
Articulo4Articulo4
Articulo4
Genieve1
 
a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...
a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...
a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...
Shannon Chesley
 

Was ist angesagt? (20)

Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO
Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO
Stable Drug Designing by Minimizing Drug Protein Interaction Energy Using PSO
 
acs talk open source drug discovery
acs talk open source drug discoveryacs talk open source drug discovery
acs talk open source drug discovery
 
working_example_poster
working_example_posterworking_example_poster
working_example_poster
 
Novel Hybrid Molecules of Isoxazole Chalcone Derivatives: Synthesis and Study...
Novel Hybrid Molecules of Isoxazole Chalcone Derivatives: Synthesis and Study...Novel Hybrid Molecules of Isoxazole Chalcone Derivatives: Synthesis and Study...
Novel Hybrid Molecules of Isoxazole Chalcone Derivatives: Synthesis and Study...
 
Collaborative Drug Discovery: A Platform For Transforming Neglected Disease R...
Collaborative Drug Discovery: A Platform For Transforming Neglected Disease R...Collaborative Drug Discovery: A Platform For Transforming Neglected Disease R...
Collaborative Drug Discovery: A Platform For Transforming Neglected Disease R...
 
Crimson Publishers-Allometry Scalling in Drug Development
Crimson Publishers-Allometry Scalling in Drug DevelopmentCrimson Publishers-Allometry Scalling in Drug Development
Crimson Publishers-Allometry Scalling in Drug Development
 
Alternatives to Animal Testing
Alternatives to Animal TestingAlternatives to Animal Testing
Alternatives to Animal Testing
 
Animal Experiments and Alternatives
Animal Experiments and AlternativesAnimal Experiments and Alternatives
Animal Experiments and Alternatives
 
QSAR Modeling of Bisbenzofuran Compounds using 2D-Descriptors as Antimalarial...
QSAR Modeling of Bisbenzofuran Compounds using 2D-Descriptors as Antimalarial...QSAR Modeling of Bisbenzofuran Compounds using 2D-Descriptors as Antimalarial...
QSAR Modeling of Bisbenzofuran Compounds using 2D-Descriptors as Antimalarial...
 
PAMAM/5-fluorouracil drug conjugate for targeting E6 and E7 oncoproteins in c...
PAMAM/5-fluorouracil drug conjugate for targeting E6 and E7 oncoproteins in c...PAMAM/5-fluorouracil drug conjugate for targeting E6 and E7 oncoproteins in c...
PAMAM/5-fluorouracil drug conjugate for targeting E6 and E7 oncoproteins in c...
 
Alternative methods to animal toxicity testing
Alternative methods to animal toxicity testingAlternative methods to animal toxicity testing
Alternative methods to animal toxicity testing
 
Articulo4
Articulo4Articulo4
Articulo4
 
Computational design of novel candidate drug molecules for schistosomiasis
Computational design of novel candidate drug molecules for schistosomiasisComputational design of novel candidate drug molecules for schistosomiasis
Computational design of novel candidate drug molecules for schistosomiasis
 
RecA foscused antibacterial screening
RecA foscused antibacterial screeningRecA foscused antibacterial screening
RecA foscused antibacterial screening
 
Study on multi-target mechanism of Radix et Rhizoma Rhei (Dahuang) and Semen ...
Study on multi-target mechanism of Radix et Rhizoma Rhei (Dahuang) and Semen ...Study on multi-target mechanism of Radix et Rhizoma Rhei (Dahuang) and Semen ...
Study on multi-target mechanism of Radix et Rhizoma Rhei (Dahuang) and Semen ...
 
s.s.c (Alternative to animal study)
s.s.c (Alternative to animal study)s.s.c (Alternative to animal study)
s.s.c (Alternative to animal study)
 
Micronucleus Assay
Micronucleus AssayMicronucleus Assay
Micronucleus Assay
 
a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...
a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...
a-rat-pharmacokinetic-pharmacodynamic-model-for-assessment-of-lipopolysacchar...
 
Martinez use of in silico models to support canine drug development
Martinez use of in silico models to support canine drug developmentMartinez use of in silico models to support canine drug development
Martinez use of in silico models to support canine drug development
 
Fragment Based Drug Discovery
Fragment Based Drug DiscoveryFragment Based Drug Discovery
Fragment Based Drug Discovery
 

Andere mochten auch

Toxic and drug induced hepatitis
Toxic and drug induced hepatitisToxic and drug induced hepatitis
Toxic and drug induced hepatitis
MD Specialclass
 
Blood Vessel Diseases
Blood Vessel DiseasesBlood Vessel Diseases
Blood Vessel Diseases
MD Specialclass
 
Alcoholic Liver Disease PPT.
Alcoholic Liver Disease PPT.Alcoholic Liver Disease PPT.
Alcoholic Liver Disease PPT.
JDLona
 
Introduction to pathology
Introduction to pathologyIntroduction to pathology
Introduction to pathology
Ghie Santos
 
Drug induce liver disease mita
Drug induce liver disease mitaDrug induce liver disease mita
Drug induce liver disease mita
arymita
 

Andere mochten auch (18)

Xenobiotic induced liver pathology
Xenobiotic induced liver pathologyXenobiotic induced liver pathology
Xenobiotic induced liver pathology
 
DILI
DILIDILI
DILI
 
FDA 2013 Clinical Investigator Training Course: Serious Drug Induced Liver In...
FDA 2013 Clinical Investigator Training Course: Serious Drug Induced Liver In...FDA 2013 Clinical Investigator Training Course: Serious Drug Induced Liver In...
FDA 2013 Clinical Investigator Training Course: Serious Drug Induced Liver In...
 
Common drug induced liver injury in children -dr. harshad devarbhai
Common drug induced liver injury in children -dr.  harshad devarbhaiCommon drug induced liver injury in children -dr.  harshad devarbhai
Common drug induced liver injury in children -dr. harshad devarbhai
 
Dermo toxicology
Dermo toxicologyDermo toxicology
Dermo toxicology
 
Toxic and drug induced hepatitis
Toxic and drug induced hepatitisToxic and drug induced hepatitis
Toxic and drug induced hepatitis
 
Liver Trauma (Liver Injury)
Liver Trauma (Liver Injury)Liver Trauma (Liver Injury)
Liver Trauma (Liver Injury)
 
Gastrocon 2016 - Drug Induced Liver Disease
Gastrocon 2016 - Drug Induced Liver DiseaseGastrocon 2016 - Drug Induced Liver Disease
Gastrocon 2016 - Drug Induced Liver Disease
 
Molecular mechanism of drug induced hepatotoxicity
Molecular mechanism of drug induced hepatotoxicityMolecular mechanism of drug induced hepatotoxicity
Molecular mechanism of drug induced hepatotoxicity
 
Drug induced hepatotoxicity and its regulatory implications
Drug induced hepatotoxicity and its regulatory implicationsDrug induced hepatotoxicity and its regulatory implications
Drug induced hepatotoxicity and its regulatory implications
 
Blood Vessel Diseases
Blood Vessel DiseasesBlood Vessel Diseases
Blood Vessel Diseases
 
Drug induced hepatitis by muhammad umer
Drug induced hepatitis by muhammad umer Drug induced hepatitis by muhammad umer
Drug induced hepatitis by muhammad umer
 
Hepatotoxicity
HepatotoxicityHepatotoxicity
Hepatotoxicity
 
Alcoholic Liver Disease PPT.
Alcoholic Liver Disease PPT.Alcoholic Liver Disease PPT.
Alcoholic Liver Disease PPT.
 
Pathology healing and repair
Pathology healing and repairPathology healing and repair
Pathology healing and repair
 
Introduction to pathology
Introduction to pathologyIntroduction to pathology
Introduction to pathology
 
Drug induce liver disease mita
Drug induce liver disease mitaDrug induce liver disease mita
Drug induce liver disease mita
 
Cirrhosis of liver
Cirrhosis of liverCirrhosis of liver
Cirrhosis of liver
 

Ähnlich wie BioIT Drug induced liver injury talk 2011

A predictive ligand based Bayesian model for human drug induced liver injury
A predictive ligand based Bayesian model for human drug induced liver injury A predictive ligand based Bayesian model for human drug induced liver injury
A predictive ligand based Bayesian model for human drug induced liver injury
US Environmental Protection Agency (EPA), Center for Computational Toxicology and Exposure
 
Genomica Yquimiot
Genomica YquimiotGenomica Yquimiot
Genomica Yquimiot
Sandra Gallaga
 
EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...
EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...
EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...
Kamel Mansouri
 
ABT 609 PPT
ABT 609 PPTABT 609 PPT
ABT 609 PPT
Jane Awah
 

Ähnlich wie BioIT Drug induced liver injury talk 2011 (20)

Unc slides on computational toxicology
Unc slides on computational toxicologyUnc slides on computational toxicology
Unc slides on computational toxicology
 
A predictive ligand based Bayesian model for human drug induced liver injury
A predictive ligand based Bayesian model for human drug induced liver injury A predictive ligand based Bayesian model for human drug induced liver injury
A predictive ligand based Bayesian model for human drug induced liver injury
 
Montreal 8th world congress
Montreal 8th world congressMontreal 8th world congress
Montreal 8th world congress
 
The Future of Computational Models for Predicting Human Toxicities
The Future of Computational Models for Predicting Human ToxicitiesThe Future of Computational Models for Predicting Human Toxicities
The Future of Computational Models for Predicting Human Toxicities
 
Genomica Yquimiot
Genomica YquimiotGenomica Yquimiot
Genomica Yquimiot
 
Network Pharmacology Tri-Con 022212
Network Pharmacology Tri-Con 022212Network Pharmacology Tri-Con 022212
Network Pharmacology Tri-Con 022212
 
Slides for st judes
Slides for st judesSlides for st judes
Slides for st judes
 
Mel Reichman on Pool Shark’s Cues for More Efficient Drug Discovery
Mel Reichman on Pool Shark’s Cues for More Efficient Drug DiscoveryMel Reichman on Pool Shark’s Cues for More Efficient Drug Discovery
Mel Reichman on Pool Shark’s Cues for More Efficient Drug Discovery
 
Collaborative Database and Computational Models for Tuberculosis Drug Discovery
Collaborative Database and Computational Models for Tuberculosis Drug DiscoveryCollaborative Database and Computational Models for Tuberculosis Drug Discovery
Collaborative Database and Computational Models for Tuberculosis Drug Discovery
 
Systems Pharmacology as a tool for future therapy development: a feasibility ...
Systems Pharmacology as a tool for future therapy development: a feasibility ...Systems Pharmacology as a tool for future therapy development: a feasibility ...
Systems Pharmacology as a tool for future therapy development: a feasibility ...
 
Pre-clinical drug prioritization via prognosis-guided genetic interaction net...
Pre-clinical drug prioritization via prognosis-guided genetic interaction net...Pre-clinical drug prioritization via prognosis-guided genetic interaction net...
Pre-clinical drug prioritization via prognosis-guided genetic interaction net...
 
Accelrys UGM slides 2011
Accelrys UGM slides 2011Accelrys UGM slides 2011
Accelrys UGM slides 2011
 
TDRtargets.org: an open-access resource for prioritizing possible drug target...
TDRtargets.org: an open-access resource for prioritizing possible drug target...TDRtargets.org: an open-access resource for prioritizing possible drug target...
TDRtargets.org: an open-access resource for prioritizing possible drug target...
 
Role of bioinformatics of drug designing
Role of bioinformatics of drug designingRole of bioinformatics of drug designing
Role of bioinformatics of drug designing
 
Alternative to animal toxicit testing.pptx
Alternative to animal toxicit testing.pptxAlternative to animal toxicit testing.pptx
Alternative to animal toxicit testing.pptx
 
Predicting Drug Candidates Safety : the Role and Usage of Knowledge Bases
Predicting Drug Candidates Safety : the Role and Usage of Knowledge BasesPredicting Drug Candidates Safety : the Role and Usage of Knowledge Bases
Predicting Drug Candidates Safety : the Role and Usage of Knowledge Bases
 
Introduction to the drug discovery process
Introduction to the drug discovery processIntroduction to the drug discovery process
Introduction to the drug discovery process
 
EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...
EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...
EDSP Prioritization: Collaborative Estrogen Receptor Activity Prediction Proj...
 
ABT 609 PPT
ABT 609 PPTABT 609 PPT
ABT 609 PPT
 
Using Machine Learning Models Based on Phenotypic Data to Discover New Molecu...
Using Machine Learning Models Based on Phenotypic Data to Discover New Molecu...Using Machine Learning Models Based on Phenotypic Data to Discover New Molecu...
Using Machine Learning Models Based on Phenotypic Data to Discover New Molecu...
 

Mehr von Sean Ekins

Mehr von Sean Ekins (20)

How to Win a small business grant.pptx
How to Win a small business grant.pptxHow to Win a small business grant.pptx
How to Win a small business grant.pptx
 
Evaluating Multiple Machine Learning Models for Biodegradation and Aquatic To...
Evaluating Multiple Machine Learning Models for Biodegradation and Aquatic To...Evaluating Multiple Machine Learning Models for Biodegradation and Aquatic To...
Evaluating Multiple Machine Learning Models for Biodegradation and Aquatic To...
 
A presentation at the Global Genes rare drug development symposium on governm...
A presentation at the Global Genes rare drug development symposium on governm...A presentation at the Global Genes rare drug development symposium on governm...
A presentation at the Global Genes rare drug development symposium on governm...
 
Leveraging Science Communication and Social Media to Build Your Brand and Ele...
Leveraging Science Communication and Social Media to Build Your Brand and Ele...Leveraging Science Communication and Social Media to Build Your Brand and Ele...
Leveraging Science Communication and Social Media to Build Your Brand and Ele...
 
Bayesian Models for Chagas Disease
Bayesian Models for Chagas DiseaseBayesian Models for Chagas Disease
Bayesian Models for Chagas Disease
 
Assay Central: A New Approach to Compiling Big Data and Preparing Machine Lea...
Assay Central: A New Approach to Compiling Big Data and Preparing Machine Lea...Assay Central: A New Approach to Compiling Big Data and Preparing Machine Lea...
Assay Central: A New Approach to Compiling Big Data and Preparing Machine Lea...
 
Drug Discovery Today March 2017 special issue
Drug Discovery Today March 2017 special issueDrug Discovery Today March 2017 special issue
Drug Discovery Today March 2017 special issue
 
Using In Silico Tools in Repurposing Drugs for Neglected and Orphan Diseases
Using In Silico Tools in Repurposing Drugs for Neglected and Orphan DiseasesUsing In Silico Tools in Repurposing Drugs for Neglected and Orphan Diseases
Using In Silico Tools in Repurposing Drugs for Neglected and Orphan Diseases
 
Five Ways to Use Social Media to Raise Awareness for Your Paper or Research
Five Ways to Use Social Media to Raise Awareness for Your Paper or ResearchFive Ways to Use Social Media to Raise Awareness for Your Paper or Research
Five Ways to Use Social Media to Raise Awareness for Your Paper or Research
 
Open zika presentation
Open zika presentation Open zika presentation
Open zika presentation
 
academic / small company collaborations for rare and neglected diseasesv2
 academic / small company collaborations for rare and neglected diseasesv2 academic / small company collaborations for rare and neglected diseasesv2
academic / small company collaborations for rare and neglected diseasesv2
 
CDD models case study #3
CDD models case study #3 CDD models case study #3
CDD models case study #3
 
CDD models case study #2
CDD models case study #2 CDD models case study #2
CDD models case study #2
 
CDD Models case study #1
CDD Models case study #1 CDD Models case study #1
CDD Models case study #1
 
CDD: Vault, CDD: Vision and CDD: Models software for biologists and chemists ...
CDD: Vault, CDD: Vision and CDD: Models software for biologists and chemists ...CDD: Vault, CDD: Vision and CDD: Models software for biologists and chemists ...
CDD: Vault, CDD: Vision and CDD: Models software for biologists and chemists ...
 
The future of computational chemistry b ig
The future of computational chemistry b igThe future of computational chemistry b ig
The future of computational chemistry b ig
 
#ZikaOpen: Homology Models -
#ZikaOpen: Homology Models - #ZikaOpen: Homology Models -
#ZikaOpen: Homology Models -
 
Pros and cons of social networking for scientists
Pros and cons of social networking for scientistsPros and cons of social networking for scientists
Pros and cons of social networking for scientists
 
CDD: Vault, CDD: Vision and CDD: Models for Drug Discovery Collaborations
CDD: Vault, CDD: Vision and CDD: Models for Drug Discovery CollaborationsCDD: Vault, CDD: Vision and CDD: Models for Drug Discovery Collaborations
CDD: Vault, CDD: Vision and CDD: Models for Drug Discovery Collaborations
 
Rare pediatric and neglected tropical diseases priority review voucher and tr...
Rare pediatric and neglected tropical diseases priority review voucher and tr...Rare pediatric and neglected tropical diseases priority review voucher and tr...
Rare pediatric and neglected tropical diseases priority review voucher and tr...
 

KĂŒrzlich hochgeladen

Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...
Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...
Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...
chetankumar9855
 
đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...
đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...
đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...
Call Girls In Delhi Whatsup 9873940964 Enjoy Unlimited Pleasure
 

KĂŒrzlich hochgeladen (20)

Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...
Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...
Call Girl In Pune 👉 Just CALL ME: 9352988975 💋 Call Out Call Both With High p...
 
Call Girls Service Jaipur {8445551418} ❀VVIP BHAWNA Call Girl in Jaipur Raja...
Call Girls Service Jaipur {8445551418} ❀VVIP BHAWNA Call Girl in Jaipur Raja...Call Girls Service Jaipur {8445551418} ❀VVIP BHAWNA Call Girl in Jaipur Raja...
Call Girls Service Jaipur {8445551418} ❀VVIP BHAWNA Call Girl in Jaipur Raja...
 
Best Rate (Guwahati ) Call Girls Guwahati ⟟ 8617370543 ⟟ High Class Call Girl...
Best Rate (Guwahati ) Call Girls Guwahati ⟟ 8617370543 ⟟ High Class Call Girl...Best Rate (Guwahati ) Call Girls Guwahati ⟟ 8617370543 ⟟ High Class Call Girl...
Best Rate (Guwahati ) Call Girls Guwahati ⟟ 8617370543 ⟟ High Class Call Girl...
 
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
 
All Time Service Available Call Girls Marine Drive 📳 9820252231 For 18+ VIP C...
All Time Service Available Call Girls Marine Drive 📳 9820252231 For 18+ VIP C...All Time Service Available Call Girls Marine Drive 📳 9820252231 For 18+ VIP C...
All Time Service Available Call Girls Marine Drive 📳 9820252231 For 18+ VIP C...
 
Call Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service Available
Call Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service AvailableCall Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service Available
Call Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service Available
 
VIP Hyderabad Call Girls Bahadurpally 7877925207 â‚č5000 To 25K With AC Room 💚😋
VIP Hyderabad Call Girls Bahadurpally 7877925207 â‚č5000 To 25K With AC Room 💚😋VIP Hyderabad Call Girls Bahadurpally 7877925207 â‚č5000 To 25K With AC Room 💚😋
VIP Hyderabad Call Girls Bahadurpally 7877925207 â‚č5000 To 25K With AC Room 💚😋
 
Call Girls Raipur Just Call 9630942363 Top Class Call Girl Service Available
Call Girls Raipur Just Call 9630942363 Top Class Call Girl Service AvailableCall Girls Raipur Just Call 9630942363 Top Class Call Girl Service Available
Call Girls Raipur Just Call 9630942363 Top Class Call Girl Service Available
 
Call Girls Service Jaipur {9521753030} ❀VVIP RIDDHI Call Girl in Jaipur Raja...
Call Girls Service Jaipur {9521753030} ❀VVIP RIDDHI Call Girl in Jaipur Raja...Call Girls Service Jaipur {9521753030} ❀VVIP RIDDHI Call Girl in Jaipur Raja...
Call Girls Service Jaipur {9521753030} ❀VVIP RIDDHI Call Girl in Jaipur Raja...
 
đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...
đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...
đŸŒčAttapurâŹ…ïž Vip Call Girls Hyderabad đŸ“±9352852248 Book Well Trand Call Girls In...
 
8980367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
8980367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad8980367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
8980367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
 
Premium Call Girls In Jaipur {8445551418} ❀VVIP SEEMA Call Girl in Jaipur Ra...
Premium Call Girls In Jaipur {8445551418} ❀VVIP SEEMA Call Girl in Jaipur Ra...Premium Call Girls In Jaipur {8445551418} ❀VVIP SEEMA Call Girl in Jaipur Ra...
Premium Call Girls In Jaipur {8445551418} ❀VVIP SEEMA Call Girl in Jaipur Ra...
 
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
 
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
 
Call Girls Hyderabad Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Hyderabad Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Hyderabad Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Hyderabad Just Call 8250077686 Top Class Call Girl Service Available
 
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated  Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...Top Rated  Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
 
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
 
Call Girls Kolkata Kalikapur 💯Call Us 🔝 8005736733 🔝 💃 Top Class Call Girl Se...
Call Girls Kolkata Kalikapur 💯Call Us 🔝 8005736733 🔝 💃 Top Class Call Girl Se...Call Girls Kolkata Kalikapur 💯Call Us 🔝 8005736733 🔝 💃 Top Class Call Girl Se...
Call Girls Kolkata Kalikapur 💯Call Us 🔝 8005736733 🔝 💃 Top Class Call Girl Se...
 
Coimbatore Call Girls in Thudiyalur : 7427069034 High Profile Model Escorts |...
Coimbatore Call Girls in Thudiyalur : 7427069034 High Profile Model Escorts |...Coimbatore Call Girls in Thudiyalur : 7427069034 High Profile Model Escorts |...
Coimbatore Call Girls in Thudiyalur : 7427069034 High Profile Model Escorts |...
 
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀ night ...Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀ night ...
 

BioIT Drug induced liver injury talk 2011

  • 1. A Predictive Ligand-Based Bayesian Model for Human Drug Induced Liver Injury Sean Ekins Collaborations in Chemistry, Jenkintown, PA. Collaborative Drug Discovery, Burlingame, CA. School of Pharmacy, Department of Pharmaceutical Sciences, University of Maryland.
  • 2. Pharma reached a productivity tipping point Cost of drug development high Failure in clinic due to toxicity How to predict failure earlier
  • 3.
  • 4. The future: crowdsourced drug discovery Williams et al., Drug Discovery World, Winter 2009
  • 5.
  • 6. Drug Examples for DILI + and - Troglitazone DILI + Pioglitazone DILI - Rosiglitazone DILI - Sulindac DILI + Aspirin DILI - Diclofenac DILI + Xu et al., Toxicol Sci 105: 97-105 (2008).
  • 7.
  • 8.
  • 9.
  • 10.
  • 11.
  • 12.
  • 13. Bayesian machine learning Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Bayesian classification is a simple probabilistic classification model. It is based on Bayes’ theorem h is the hypothesis or model d is the observed data p ( h ) is the prior belief (probability of hypothesis h before observing any data) p ( d ) is the data evidence (marginal probability of the data) p ( d|h ) is the likelihood (probability of data d if hypothesis h is true) p ( h|d ) is the posterior probability (probability of hypothesis h being true given the observed data d ) A weight is calculated for each feature using a Laplacian-adjusted probability estimate to account for the different sampling frequencies of different features. The weights are summed to provide a probability estimate
  • 14. Examples of using Bayesian Models Integrated in Silico-in Vitro Strategy for Addressing Cytochrome P450 3A4 Time-Dependent Inhibition Zientek et al., Chem Res Toxicol 23: 664-676 (2010) Challenges predicting ligand-receptor interactions of promiscuous proteins: the nuclear receptor PXR Ekins S, Kortagere S, Iyer M, Reschly EJ, Lill MA, Redinbo MR and Krasowski MD, PLoS Comput Biol 5(12): e1000594, (2009) . Computational models for drug inhibition of the human apical sodium-dependent bile acid transporter Zheng X, et al., Mol Pharm, 6: 1591-1603, (2009) Quantitative structure activity relationship for inhibition of human organic cation/carnitine transporter Diao et al., Mol Pharm, 7: 2120-2131, (2010)
  • 15. Features in DILI + Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Avoid Long aliphatic chains Phenols Ketones Diols ïĄ -methyl styrene Conjugated structures Cyclohexenones Amides ?
  • 16. Features in DILI - Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
  • 17.
  • 18.
  • 19. Training vs test set PCA Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010 Yellow = test Blue = training retinyl palmitate
  • 20.
  • 21. Fingolimod (Gilenya) for MS (EMEA and FDA) Paliperidone for schizophrenia Pirfenidone for Idiopathic pulmonary fibrosis Roflumilast for pulmonary disease Predictions for newly approved EMEA compounds Can we get DILI experimental data for these?
  • 22. SMARTS FIlters Smartsfilter kindly provided by Dr. Jeremy Yang (University of New Mexico, Albuquerque, NM, http://pasilla.health.unm.edu/tomcat/biocomp/smartsfilter). Substructure Alerts used to filter libraries – remove reactive groups etc. Ekins, Williams and Xu, Drug Metab Dispos 38: 2302-2308, 2010
  • 23. SMARTS Filters vs Rule of 5 Ekins and Freundlich, Pharm Res, In press 2011 Correlation between the number of SMARTS filter failures and the number of Lipinski violations for different types of rules sets with FDA drug set from CDD (N = 2804) Suggests # of Lipinski violations may also be an indicator of undesirable chemical features that result in reactivity
  • 24.
  • 25.
  • 26. Pfizer Merck GSK Novartis Lilly BMS Could combining models give greater coverage of ADME/ Tox chemistry space and improve predictions? Lundbeck Allergan Bayer AZ Roche BI Merk KGaA Expanding computational model coverage of chemical space
  • 27. More collaborations, integrating models into scientific social networks Drug Disc Today, 14: 261-270, 2009
  • 28.
  • 29.

Hinweis der Redaktion

  1. CDD Experienced Team Innovates and Executes Barry Bunin, PhD (Pres. & Cofounder as first Eli Lilly EIR) Libraria (CEO, Pres.-CSO), Arris Pharmaceuticals (Sr. Scientist), Genentech, UC Berkeley (Ellman), Columbia University, author. Moses Hohman, PhD (Director Software Engineering) Northwestern Assoc. Director of Bioinformatics, Thoughtworks, Inc., U of Chicago (PhD), Harvard ( magna cum laude, Physics) Sylvia Ernst, PhD (Director Community Growth & Sales) Left 800-lb Gorillas: Accelrys-Scitegic, MDL-Elsevier-Beilstein Peter Cohan (BOD & Overall Sales Strategy) Symyx (VP Bus Dev & President-Discovery Tools), MDL (VP Customer Marketing), www.secondderivative.com, author. Omidyar Network, Founders Fund, & Lilly (BOD observers) WSGR (Corporate Counsel), Rina Accountancy (GAAP compliance) Partners: Hub Consortium Members, ChemAxon, DNDi, MMV, Sandler Center
 CDD SAB: Christopher Lipinski PhD, James McKerrow, MD PhD, David Roos PhD, Adam Renslo PhD, Wes Van Voorhis, MD PhD