SlideShare a Scribd company logo
1 of 22
Applying Computational Models for
Transporters to Predict Toxicity
Sean Ekins
Collaborations in Chemistry,
5616 Hilltop Needmore Road,
Fuquay Varina, NC27526, USA.
Clinical importance of transporters
• Increased attention on transporter inhibition
• Drug-drug interactions
• Effects of polymorphisms in transporters
• Many new potential drug targets
• in vitro models may be limited in throughput
• in vivo more complicated - multiple transporters with
overlapping substrate specificities.
• in silico – in vitro approach has value in targeting
testing of compounds with a high probability of
activity.
Nature Reviews Drug Discovery 9, 215–236 (1 March 2010)
Transporters in this presentation
Ideal when we have few molecules for training
In silico database searching
Accelrys (Biovia) 3D QSAR pharmacophore or
common feature pharmacophore in Discovery Studio
Geometric arrangement of functional groups necessary
for a biological response
•Generate 3D conformations
•Align molecules
•Select features contributing to activity
•Regress hypothesis
•Evaluate with new molecules
•Excluded volumes – relate to inactive molecules
Pharmacophores applied broadly
Created for
P-gp
OATPs
OCT1
OCT2
BCRP
hOCTN2
ASBT
hPEPT1
hPEPT2
NTCP
MATE1
MRP4
Bayesian machine learning
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
Used with simple descriptors and FCFP_6 fingerprints
Bayesian approach used widely with other ADME/Tox
datasets
PAPER ID: 22183 “Progress in computational toxicology”
(final paper number: 125)
hOCTN2 – Organic Cation transporter
• High affinity cation/carnitine transporter - expressed in kidney, skeletal muscle, heart,
placenta and small intestine
• Inhibition correlation with muscle weakness - rhabdomyolysis
• A common features pharmacophore developed with 7 inhibitors
• Searched a database of over 600 FDA approved drugs - selected drugs for in vitro testing.
• 33 tested drugs predicted to map to the pharmacophore, 27 inhibited hOCTN2 in
vitro
• Compounds were more likely to cause rhabdomyolysis if the Cmax/Ki ratio was higher than
0.0025
Diao, Ekins, and Polli, Pharm Res, 26, 1890, (2009)
Diao, Ekins, and Polli, Pharm Res, 26, 1890, (2009)
+ve
-ve
hOCTN2 quantitative pharmacophore and Bayesian model
Diao et al., Mol Pharm, 7: 2120-2131, 2010
r = 0.89
vinblastine
cetirizine
emetine
Bayesian Model - Leaving 50% out 97 times
external ROC 0.90
internal ROC 0.79
concordance 73.4%;
specificity 88.2%;
sensitivity 64.2%.
Lab test set (N = 27) Bayesian model has better correct
predictions (> 80%) and lower false positives and
negatives than pharmacophore (> 70%)
Rhabdomyolysis or carnitine deficiency was
associated with a Cmax/Ki value above 0.0025
(Pearson’s chi-square test p = 0.0382).
limitations of Cmax/Ki serving as a predictor for
rhabdomyolysis
-- Cmax/Ki does not consider the effects of drug
tissue distribution
or plasma protein binding.
vinblastine
Substrate
Affinity for
hOCTN2 Km
(uM)
Principal
Acetyl-L-Carnitine 8.5 2
Ipratropium 53 1
Ketoprofen-Glycine-L-Carnitine 58.5 1
Ketoprofen-L-Carnitine 77 1
L-Carnitine 5.3 2
Mildronate 26 1
Naproxen-L-Carnitine 257 0
Valproyl-Glycolic Acid-L-
Carnitine
161 0
Valproyl L-Carnitine 132 0
hOCTN2 Substrate pharmacophore
Overlap of substrate and inhibitor pharmacophores
Training set from various literature sources L-carnitine mapped to substrate pharmacophore
Green = HBA
Blue = hydrophobic
Red = +ve ionizable
Grey = exclude volume
Pharmacophore used to search drugs database – 16/30 compounds associated with rhabdomyolysis
Ekins et al., Mol Pharmaceutics 9:905-913 (2012)
MATE1
• Multidrug and toxin extruder – organic cations
• Little work on SAR
• Combined in vitro with pharmacophore and
Bayesian models
• Weak correlation with LogP for hMATE1
• 26 molecule common feature and quantitative
models for hMATE1
• Multiple iterations
Astorga et al., JPET 341: 743-755 (2012)
Common feature hMATE1
pharmacophore
Quantitative hMATE1
pharmacophores
N= 24
N=43
N=46
Green = HBA
Blue = hydrophobic
Red = +ve ionizable
Purple = HBD
Astorga et al., JPET 341: 743-755 (2012)
hMATE1 Bayesian Model Features
• Features
+ve -ve
ROC = 0.88, leave out 50% x 100 ROC = 0.82
Bad features pyrole -low basicity
Charge important for increasing interaction with transporter
Astorga et al., JPET 341: 743-755 (2012)
Pharmacophores with different substrate probes
• Used the 6 compounds from Kido et al., 2011
• Compared with N46 model
• Different features – possible different binding sites
• Probe dependent in vitro effects analogous to P4503A4
Astorga et al., JPET 341: 743-755 (2012)
MRP4
• Multidrug resitance protein 4 (MRP4)
• Expressed widely
• Transports protease inhibitors (HIV treatments
HAART) and anticancer drugs
• Increase in cancer (Hodgkin’s lymphoma, lung,
testicular etc) in these patients requires HIV and
anticancer drugs
• Potential for interactions –inhibitors increase
toxicity of substrates
Fukuda et al., Mol Pharmacol 84: 361-371 (2013)
MRP4 Pharmacophore
• Nelfinavir> Ritonavir> amprenavir, indinavir, saquinavir
Common feature pharmacophore
• Literature dataset of 10 MRP inhibitors (Russel et al., Trends
Pharm Sci 29: 200-207, 2008) common feature and quantitative
models
• Searched drug dataset and retrieved 9 known MRP4 substrates
• PGE2 (red) shared most features, quercetin (grey) poor match
to features
• Nelfinavir enhances cytotox of methotrexate
Green = HBA
Blue = hydrophobic
Purple = HBD
Fukuda et al., Mol Pharmacol
84: 361-371 (2013)
NTCP
• Human Sodium taurocholate
cotransporting polypeptide (NTCP)
• Bile acid transporter – basolateral
membrane of hepatocytes
• Also transports drugs (rosuvastatins)
• Potential for clinically relevant drug-
drug interactions
– Micafungin and Cyclosprin A (Clin
Pharmacol 45: 954 (2005)
• Goal – find additional FDA drugs and
develop models
Dong et al., Mol Pharmaceutics 10: 1008-1019 (2013)
NTCP Common feature Pharmacophore
• 11 inhibitors and 12 inactives
• Screened FDA drugs (ezetimibe shape feature)
• Test more compounds
• Develop Bayesian model (N = 50)
• Identified 27 novel inhibitors including
Angiotensin II antagonists SAR in series from
12 -3000uM
Dong et al., Mol Pharmaceutics
10: 1008-1019 (2013)
NTCP Bayesian Model
+ve -ve
Using 8 simple descriptors and FCFP_6 fingerprints
ROC = 0.77, leave out testing ROC declined as group size increased
Model able to predict 7/10 High scoring molecules in test set and 7/12 low scoring
Dong et al., Mol Pharmaceutics 10: 1008-1019 (2013)
Summary
• Proactive database searching - Prioritize compounds for testing in
vitro
• Provide novel insights into the molecular interaction of inhibitors
• Repurpose - reposition FDA drugs
• NTCP – recent work – quantitative pharmacophore + testing
• NTCP – substrate model
• Predominant - inhibitor data
• Open to using models for prospective testing of new molecules
• Potential to apply the same technique with other transporters
• Parallel profiling
• Make models available on website / mobile app?
PAPER ID: 22104 “Collaborative sharing of molecules and data in the mobile age” (final paper number: 43)
DIVISION: COMP; DAY & TIME OF PRESENTATION: August 10, 2014 from 4:45 pm to 5:15 pm
LOCATION: Moscone Center, West Bldg., Room: 2005
PAPER ID: 22094 “Expanding the metabolite mimic approach to identify hits for Mycobacterium tuberculosis ” (final paper number: 78)
DIVISION: COMP: DAY & TIME OF PRESENTATION: August 11, 2014 from 9:00 am to 9:30 am
LOCATION: Moscone Center, West Bldg., Room: 2005
PAPER ID: 22120 “Why there needs to be open data for ultrarare and rare disease drug discovery” (final paper number: 48)
DIVISION: CINF:SESSION DAY & TIME OF PRESENTATION: August 11, 2014 from 10:50 am to 11:20 am
LOCATION: Palace Hotel, Room: Marina
PAPER ID: 22183 “Progress in computational toxicology” (final paper number: 125)
DIVISION: TOXI: DAY & TIME OF PRESENTATION: August 12, 2014 from 6:30 pm to 10:30 pm
LOCATION: Moscone Center, North Bldg. , Room: 134
PAPER ID: 22091 “Examples of how to inspire the next generation to pursue computational chemistry/cheminformatics” (final paper
number: 100)
DIVISION: CINF: Division of Chemical Information DAY & TIME OF PRESENTATION: August 13, 2014 from 8:25 am to 8:50 am
LOCATION: Palace Hotel, Room: Presidio
PAPER ID: 22176 “Applying computational models for transporters to predict toxicity” (final paper number: 132)
DIVISION: TOXI: DAY & TIME OF PRESENTATION: August 13, 2014 from 9:45 am to 10:05 am
LOCATION: InterContinental San Francisco, Room: Grand Ballroom A
PAPER ID: 22186 “New target prediction and visualization tools incorporating open source molecular fingerprints for TB mobile version 2”
(final paper number: 123)
DIVISION: CINF: DAY & TIME OF PRESENTATION: August 13, 2014 from 1:35 pm to 2:05 pm
LOCATION: Palace Hotel, Room: California Parlor
You can find me @...
Collaborators
 James E. Polli (University of Maryland)
 Zhongqi Dong
 Lei Diao
 John D. Schuetz and Lab (St Jude Childrens research Hospital)
 Stephen H. Wright and Lab (University of Arizona)
 Bethzaida Astorga
 Peter Swaan (University of Maryland)
 Email: ekinssean@yahoo.com
 Slideshare: http://www.slideshare.net/ekinssean
 Twitter: collabchem
 Blog: http://www.collabchem.com/
 Website: http://www.collaborations.com/CHEMISTRY.HTM

More Related Content

What's hot

High throughput screening (hts) copy
High throughput screening (hts)   copyHigh throughput screening (hts)   copy
High throughput screening (hts) copy
Iqrar Ansari
 
Alternatives to animal screening methods p'screening. mohammadhusain
Alternatives to animal screening methods p'screening. mohammadhusainAlternatives to animal screening methods p'screening. mohammadhusain
Alternatives to animal screening methods p'screening. mohammadhusain
Vasaya Mohammadhusain
 
Drug discovery process style 3 powerpoint presentation templates
Drug discovery process style 3 powerpoint presentation templatesDrug discovery process style 3 powerpoint presentation templates
Drug discovery process style 3 powerpoint presentation templates
SlideTeam.net
 
LC-MS methods for regulated bioequivalence
LC-MS methods for regulated bioequivalenceLC-MS methods for regulated bioequivalence
LC-MS methods for regulated bioequivalence
Bhaswat Chakraborty
 
An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)
An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)
An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)
mjamei
 
Drug discovery process style 5 powerpoint presentation templates
Drug discovery process style 5 powerpoint presentation templatesDrug discovery process style 5 powerpoint presentation templates
Drug discovery process style 5 powerpoint presentation templates
SlideTeam.net
 

What's hot (20)

High throughput screening (hts) copy
High throughput screening (hts)   copyHigh throughput screening (hts)   copy
High throughput screening (hts) copy
 
Ultra performance liquid chromatographic method for simultaneous quantificati...
Ultra performance liquid chromatographic method for simultaneous quantificati...Ultra performance liquid chromatographic method for simultaneous quantificati...
Ultra performance liquid chromatographic method for simultaneous quantificati...
 
Back Rapid lead compounds discovery through high-throughput screening
 Back Rapid lead compounds discovery through high-throughput screening Back Rapid lead compounds discovery through high-throughput screening
Back Rapid lead compounds discovery through high-throughput screening
 
Alternative to Animal Experimentation.pptx
Alternative to Animal Experimentation.pptxAlternative to Animal Experimentation.pptx
Alternative to Animal Experimentation.pptx
 
High throughput screening
High throughput screeningHigh throughput screening
High throughput screening
 
New high thoughput screening copy
New high thoughput screening   copyNew high thoughput screening   copy
New high thoughput screening copy
 
Reverse pharmacognosy
Reverse pharmacognosyReverse pharmacognosy
Reverse pharmacognosy
 
Matrix Effect
Matrix EffectMatrix Effect
Matrix Effect
 
High Throughput Screening Technology
High Throughput Screening TechnologyHigh Throughput Screening Technology
High Throughput Screening Technology
 
Analytical Method Development and validation of UV-Visible spectroscopy
Analytical Method Development and validation of UV-Visible spectroscopyAnalytical Method Development and validation of UV-Visible spectroscopy
Analytical Method Development and validation of UV-Visible spectroscopy
 
Alternatives to animal screening methods p'screening. mohammadhusain
Alternatives to animal screening methods p'screening. mohammadhusainAlternatives to animal screening methods p'screening. mohammadhusain
Alternatives to animal screening methods p'screening. mohammadhusain
 
presentation on in silico studies
presentation on in silico studiespresentation on in silico studies
presentation on in silico studies
 
Drug discovery process style 3 powerpoint presentation templates
Drug discovery process style 3 powerpoint presentation templatesDrug discovery process style 3 powerpoint presentation templates
Drug discovery process style 3 powerpoint presentation templates
 
LC-MS methods for regulated bioequivalence
LC-MS methods for regulated bioequivalenceLC-MS methods for regulated bioequivalence
LC-MS methods for regulated bioequivalence
 
Perspective on QSAR modeling of transport
Perspective on QSAR modeling of transportPerspective on QSAR modeling of transport
Perspective on QSAR modeling of transport
 
An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)
An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)
An Introduction to:In Vitro-In VivoExtrapolation (IVIVE)
 
High-throughput screening (HTS)
High-throughput screening (HTS)High-throughput screening (HTS)
High-throughput screening (HTS)
 
Drug discovery process style 5 powerpoint presentation templates
Drug discovery process style 5 powerpoint presentation templatesDrug discovery process style 5 powerpoint presentation templates
Drug discovery process style 5 powerpoint presentation templates
 
Docking
DockingDocking
Docking
 
Extracting actionable knowledge from large scale in vitro pharmacology data
Extracting actionable knowledge from large scale in vitro pharmacology dataExtracting actionable knowledge from large scale in vitro pharmacology data
Extracting actionable knowledge from large scale in vitro pharmacology data
 

Similar to Applying computational models for transporters to predict toxicity

Applying cheminformatics and bioinformatics approaches to neglected tropical ...
Applying cheminformatics and bioinformatics approaches to neglected tropical ...Applying cheminformatics and bioinformatics approaches to neglected tropical ...
Applying cheminformatics and bioinformatics approaches to neglected tropical ...
Sean Ekins
 
Session 1 part 2
Session 1 part 2Session 1 part 2
Session 1 part 2
plmiami
 
Hu cal platnimm alis adds
Hu cal platnimm alis addsHu cal platnimm alis adds
Hu cal platnimm alis adds
Brandon Chackel
 

Similar to Applying computational models for transporters to predict toxicity (20)

Metabolic engineering approaches in medicinal plants
Metabolic engineering approaches in medicinal plantsMetabolic engineering approaches in medicinal plants
Metabolic engineering approaches in medicinal plants
 
SOT short course on computational toxicology
SOT short course on computational toxicology SOT short course on computational toxicology
SOT short course on computational toxicology
 
Development and evaluation of in silico toxicity screening panels
Development and evaluation of in silico toxicity screening panelsDevelopment and evaluation of in silico toxicity screening panels
Development and evaluation of in silico toxicity screening panels
 
Unc slides on computational toxicology
Unc slides on computational toxicologyUnc slides on computational toxicology
Unc slides on computational toxicology
 
2016 bioinformatics i_bio_cheminformatics_wimvancriekinge
2016 bioinformatics i_bio_cheminformatics_wimvancriekinge2016 bioinformatics i_bio_cheminformatics_wimvancriekinge
2016 bioinformatics i_bio_cheminformatics_wimvancriekinge
 
2015 bioinformatics bio_cheminformatics_wim_vancriekinge
2015 bioinformatics bio_cheminformatics_wim_vancriekinge2015 bioinformatics bio_cheminformatics_wim_vancriekinge
2015 bioinformatics bio_cheminformatics_wim_vancriekinge
 
Bioinformatics t9-t10-biocheminformatics v2014
Bioinformatics t9-t10-biocheminformatics v2014Bioinformatics t9-t10-biocheminformatics v2014
Bioinformatics t9-t10-biocheminformatics v2014
 
Applying cheminformatics and bioinformatics approaches to neglected tropical ...
Applying cheminformatics and bioinformatics approaches to neglected tropical ...Applying cheminformatics and bioinformatics approaches to neglected tropical ...
Applying cheminformatics and bioinformatics approaches to neglected tropical ...
 
Development of machine learning-based prediction models for chemical modulato...
Development of machine learning-based prediction models for chemical modulato...Development of machine learning-based prediction models for chemical modulato...
Development of machine learning-based prediction models for chemical modulato...
 
Drug development approaches
Drug development approaches Drug development approaches
Drug development approaches
 
Data drivenapproach to medicinalchemistry
Data drivenapproach to medicinalchemistryData drivenapproach to medicinalchemistry
Data drivenapproach to medicinalchemistry
 
Session 1 part 2
Session 1 part 2Session 1 part 2
Session 1 part 2
 
Using antitumor agents to probe the sensitivity contexts of cancer cells and ...
Using antitumor agents to probe the sensitivity contexts of cancer cells and ...Using antitumor agents to probe the sensitivity contexts of cancer cells and ...
Using antitumor agents to probe the sensitivity contexts of cancer cells and ...
 
Accelrys UGM slides 2011
Accelrys UGM slides 2011Accelrys UGM slides 2011
Accelrys UGM slides 2011
 
MRCT's Centre for Therapeutics Discovery
MRCT's Centre for Therapeutics DiscoveryMRCT's Centre for Therapeutics Discovery
MRCT's Centre for Therapeutics Discovery
 
Hu cal platnimm alis adds
Hu cal platnimm alis addsHu cal platnimm alis adds
Hu cal platnimm alis adds
 
Innovative clinical trial designs
Innovative clinical trial designs Innovative clinical trial designs
Innovative clinical trial designs
 
project presentation
project presentationproject presentation
project presentation
 
PAH Drug Discovery and Development: State of the Art in 2022
PAH Drug Discovery and Development: State of the Art in 2022PAH Drug Discovery and Development: State of the Art in 2022
PAH Drug Discovery and Development: State of the Art in 2022
 
Pasteur Institute User Story - Cheminfo Stories 2020 Day 5
Pasteur Institute User Story - Cheminfo Stories 2020 Day 5Pasteur Institute User Story - Cheminfo Stories 2020 Day 5
Pasteur Institute User Story - Cheminfo Stories 2020 Day 5
 

More from Sean Ekins

More from 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
 
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...
 
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 -
 
Slas talk 2016
Slas talk 2016Slas talk 2016
Slas talk 2016
 
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
 

Recently uploaded

LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.
Silpa
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
1301aanya
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Sérgio Sacani
 
development of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusdevelopment of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virus
NazaninKarimi6
 
CYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptxCYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptx
Silpa
 

Recently uploaded (20)

module for grade 9 for distance learning
module for grade 9 for distance learningmodule for grade 9 for distance learning
module for grade 9 for distance learning
 
Clean In Place(CIP).pptx .
Clean In Place(CIP).pptx                 .Clean In Place(CIP).pptx                 .
Clean In Place(CIP).pptx .
 
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
 
LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.LUNULARIA -features, morphology, anatomy ,reproduction etc.
LUNULARIA -features, morphology, anatomy ,reproduction etc.
 
Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....
Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....
Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....
 
Cyanide resistant respiration pathway.pptx
Cyanide resistant respiration pathway.pptxCyanide resistant respiration pathway.pptx
Cyanide resistant respiration pathway.pptx
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
 
Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
 
development of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusdevelopment of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virus
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
 
Genetics and epigenetics of ADHD and comorbid conditions
Genetics and epigenetics of ADHD and comorbid conditionsGenetics and epigenetics of ADHD and comorbid conditions
Genetics and epigenetics of ADHD and comorbid conditions
 
Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspects
 
Use of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptxUse of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptx
 
PATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICE
PATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICEPATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICE
PATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICE
 
Genome sequencing,shotgun sequencing.pptx
Genome sequencing,shotgun sequencing.pptxGenome sequencing,shotgun sequencing.pptx
Genome sequencing,shotgun sequencing.pptx
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its Functions
 
Atp synthase , Atp synthase complex 1 to 4.
Atp synthase , Atp synthase complex 1 to 4.Atp synthase , Atp synthase complex 1 to 4.
Atp synthase , Atp synthase complex 1 to 4.
 
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate ProfessorThyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
 
CYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptxCYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptx
 

Applying computational models for transporters to predict toxicity

  • 1. Applying Computational Models for Transporters to Predict Toxicity Sean Ekins Collaborations in Chemistry, 5616 Hilltop Needmore Road, Fuquay Varina, NC27526, USA.
  • 2. Clinical importance of transporters • Increased attention on transporter inhibition • Drug-drug interactions • Effects of polymorphisms in transporters • Many new potential drug targets • in vitro models may be limited in throughput • in vivo more complicated - multiple transporters with overlapping substrate specificities. • in silico – in vitro approach has value in targeting testing of compounds with a high probability of activity.
  • 3. Nature Reviews Drug Discovery 9, 215–236 (1 March 2010) Transporters in this presentation
  • 4.
  • 5. Ideal when we have few molecules for training In silico database searching Accelrys (Biovia) 3D QSAR pharmacophore or common feature pharmacophore in Discovery Studio Geometric arrangement of functional groups necessary for a biological response •Generate 3D conformations •Align molecules •Select features contributing to activity •Regress hypothesis •Evaluate with new molecules •Excluded volumes – relate to inactive molecules Pharmacophores applied broadly Created for P-gp OATPs OCT1 OCT2 BCRP hOCTN2 ASBT hPEPT1 hPEPT2 NTCP MATE1 MRP4
  • 6. Bayesian machine learning 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 Used with simple descriptors and FCFP_6 fingerprints Bayesian approach used widely with other ADME/Tox datasets PAPER ID: 22183 “Progress in computational toxicology” (final paper number: 125)
  • 7. hOCTN2 – Organic Cation transporter • High affinity cation/carnitine transporter - expressed in kidney, skeletal muscle, heart, placenta and small intestine • Inhibition correlation with muscle weakness - rhabdomyolysis • A common features pharmacophore developed with 7 inhibitors • Searched a database of over 600 FDA approved drugs - selected drugs for in vitro testing. • 33 tested drugs predicted to map to the pharmacophore, 27 inhibited hOCTN2 in vitro • Compounds were more likely to cause rhabdomyolysis if the Cmax/Ki ratio was higher than 0.0025 Diao, Ekins, and Polli, Pharm Res, 26, 1890, (2009)
  • 8. Diao, Ekins, and Polli, Pharm Res, 26, 1890, (2009) +ve -ve hOCTN2 quantitative pharmacophore and Bayesian model Diao et al., Mol Pharm, 7: 2120-2131, 2010 r = 0.89 vinblastine cetirizine emetine Bayesian Model - Leaving 50% out 97 times external ROC 0.90 internal ROC 0.79 concordance 73.4%; specificity 88.2%; sensitivity 64.2%. Lab test set (N = 27) Bayesian model has better correct predictions (> 80%) and lower false positives and negatives than pharmacophore (> 70%) Rhabdomyolysis or carnitine deficiency was associated with a Cmax/Ki value above 0.0025 (Pearson’s chi-square test p = 0.0382). limitations of Cmax/Ki serving as a predictor for rhabdomyolysis -- Cmax/Ki does not consider the effects of drug tissue distribution or plasma protein binding. vinblastine
  • 9. Substrate Affinity for hOCTN2 Km (uM) Principal Acetyl-L-Carnitine 8.5 2 Ipratropium 53 1 Ketoprofen-Glycine-L-Carnitine 58.5 1 Ketoprofen-L-Carnitine 77 1 L-Carnitine 5.3 2 Mildronate 26 1 Naproxen-L-Carnitine 257 0 Valproyl-Glycolic Acid-L- Carnitine 161 0 Valproyl L-Carnitine 132 0 hOCTN2 Substrate pharmacophore Overlap of substrate and inhibitor pharmacophores Training set from various literature sources L-carnitine mapped to substrate pharmacophore Green = HBA Blue = hydrophobic Red = +ve ionizable Grey = exclude volume Pharmacophore used to search drugs database – 16/30 compounds associated with rhabdomyolysis Ekins et al., Mol Pharmaceutics 9:905-913 (2012)
  • 10. MATE1 • Multidrug and toxin extruder – organic cations • Little work on SAR • Combined in vitro with pharmacophore and Bayesian models • Weak correlation with LogP for hMATE1 • 26 molecule common feature and quantitative models for hMATE1 • Multiple iterations Astorga et al., JPET 341: 743-755 (2012)
  • 11. Common feature hMATE1 pharmacophore Quantitative hMATE1 pharmacophores N= 24 N=43 N=46 Green = HBA Blue = hydrophobic Red = +ve ionizable Purple = HBD Astorga et al., JPET 341: 743-755 (2012)
  • 12. hMATE1 Bayesian Model Features • Features +ve -ve ROC = 0.88, leave out 50% x 100 ROC = 0.82 Bad features pyrole -low basicity Charge important for increasing interaction with transporter Astorga et al., JPET 341: 743-755 (2012)
  • 13. Pharmacophores with different substrate probes • Used the 6 compounds from Kido et al., 2011 • Compared with N46 model • Different features – possible different binding sites • Probe dependent in vitro effects analogous to P4503A4 Astorga et al., JPET 341: 743-755 (2012)
  • 14. MRP4 • Multidrug resitance protein 4 (MRP4) • Expressed widely • Transports protease inhibitors (HIV treatments HAART) and anticancer drugs • Increase in cancer (Hodgkin’s lymphoma, lung, testicular etc) in these patients requires HIV and anticancer drugs • Potential for interactions –inhibitors increase toxicity of substrates Fukuda et al., Mol Pharmacol 84: 361-371 (2013)
  • 15. MRP4 Pharmacophore • Nelfinavir> Ritonavir> amprenavir, indinavir, saquinavir Common feature pharmacophore • Literature dataset of 10 MRP inhibitors (Russel et al., Trends Pharm Sci 29: 200-207, 2008) common feature and quantitative models • Searched drug dataset and retrieved 9 known MRP4 substrates • PGE2 (red) shared most features, quercetin (grey) poor match to features • Nelfinavir enhances cytotox of methotrexate Green = HBA Blue = hydrophobic Purple = HBD Fukuda et al., Mol Pharmacol 84: 361-371 (2013)
  • 16. NTCP • Human Sodium taurocholate cotransporting polypeptide (NTCP) • Bile acid transporter – basolateral membrane of hepatocytes • Also transports drugs (rosuvastatins) • Potential for clinically relevant drug- drug interactions – Micafungin and Cyclosprin A (Clin Pharmacol 45: 954 (2005) • Goal – find additional FDA drugs and develop models Dong et al., Mol Pharmaceutics 10: 1008-1019 (2013)
  • 17. NTCP Common feature Pharmacophore • 11 inhibitors and 12 inactives • Screened FDA drugs (ezetimibe shape feature) • Test more compounds • Develop Bayesian model (N = 50) • Identified 27 novel inhibitors including Angiotensin II antagonists SAR in series from 12 -3000uM Dong et al., Mol Pharmaceutics 10: 1008-1019 (2013)
  • 18. NTCP Bayesian Model +ve -ve Using 8 simple descriptors and FCFP_6 fingerprints ROC = 0.77, leave out testing ROC declined as group size increased Model able to predict 7/10 High scoring molecules in test set and 7/12 low scoring Dong et al., Mol Pharmaceutics 10: 1008-1019 (2013)
  • 19. Summary • Proactive database searching - Prioritize compounds for testing in vitro • Provide novel insights into the molecular interaction of inhibitors • Repurpose - reposition FDA drugs • NTCP – recent work – quantitative pharmacophore + testing • NTCP – substrate model • Predominant - inhibitor data • Open to using models for prospective testing of new molecules • Potential to apply the same technique with other transporters • Parallel profiling • Make models available on website / mobile app?
  • 20. PAPER ID: 22104 “Collaborative sharing of molecules and data in the mobile age” (final paper number: 43) DIVISION: COMP; DAY & TIME OF PRESENTATION: August 10, 2014 from 4:45 pm to 5:15 pm LOCATION: Moscone Center, West Bldg., Room: 2005 PAPER ID: 22094 “Expanding the metabolite mimic approach to identify hits for Mycobacterium tuberculosis ” (final paper number: 78) DIVISION: COMP: DAY & TIME OF PRESENTATION: August 11, 2014 from 9:00 am to 9:30 am LOCATION: Moscone Center, West Bldg., Room: 2005 PAPER ID: 22120 “Why there needs to be open data for ultrarare and rare disease drug discovery” (final paper number: 48) DIVISION: CINF:SESSION DAY & TIME OF PRESENTATION: August 11, 2014 from 10:50 am to 11:20 am LOCATION: Palace Hotel, Room: Marina PAPER ID: 22183 “Progress in computational toxicology” (final paper number: 125) DIVISION: TOXI: DAY & TIME OF PRESENTATION: August 12, 2014 from 6:30 pm to 10:30 pm LOCATION: Moscone Center, North Bldg. , Room: 134 PAPER ID: 22091 “Examples of how to inspire the next generation to pursue computational chemistry/cheminformatics” (final paper number: 100) DIVISION: CINF: Division of Chemical Information DAY & TIME OF PRESENTATION: August 13, 2014 from 8:25 am to 8:50 am LOCATION: Palace Hotel, Room: Presidio PAPER ID: 22176 “Applying computational models for transporters to predict toxicity” (final paper number: 132) DIVISION: TOXI: DAY & TIME OF PRESENTATION: August 13, 2014 from 9:45 am to 10:05 am LOCATION: InterContinental San Francisco, Room: Grand Ballroom A PAPER ID: 22186 “New target prediction and visualization tools incorporating open source molecular fingerprints for TB mobile version 2” (final paper number: 123) DIVISION: CINF: DAY & TIME OF PRESENTATION: August 13, 2014 from 1:35 pm to 2:05 pm LOCATION: Palace Hotel, Room: California Parlor You can find me @...
  • 21. Collaborators  James E. Polli (University of Maryland)  Zhongqi Dong  Lei Diao  John D. Schuetz and Lab (St Jude Childrens research Hospital)  Stephen H. Wright and Lab (University of Arizona)  Bethzaida Astorga  Peter Swaan (University of Maryland)
  • 22.  Email: ekinssean@yahoo.com  Slideshare: http://www.slideshare.net/ekinssean  Twitter: collabchem  Blog: http://www.collabchem.com/  Website: http://www.collaborations.com/CHEMISTRY.HTM