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Transcript of academic / small company collaborations for rare and neglected diseasesv2
Academic/Small Company Collaborations for Rare and Neglected Diseases
Sean Ekins
Collaborations in Chemistry, Inc. Fuquay Varina, NC.
Wikipedia
Christina’s world – Andrew Wyeth
MOMA
RodinWilliam Kent - Peter the Wild Boy
Rare Diseases
Charcot-Marie-Tooth
Pitt-Hopkins
Kensington Palace
• In the USA -a rare disease affects less than 200,000 individuals, in aggregate, rare diseases affect 6-7% of the population
• In Europe – a disease or disorder is defined as rare when it affects less than 1 in 2000.
• impacting nearly 30 million Americans. • Eighty percent of these diseases have a genetic origin
F1000Res. 2015 Feb 26;4:53 F1000Res. 2014 Oct 31;3:261
DISEASED CELLS HEALTHY CELLS
Source: BioMarin
Sanfilippo Syndrome
Build up of Heparan sulfate in lysosomes leads to:
development and/or behavioral problems,
intellectual decline,
behavioural disturbance
hyperactivity,
sleep disturbance
develop swallowing difficulties and seizures
Immobility
Shortened lifespan usually <20
1. Replace enzyme with
Enzyme
Replacement
treatment
2. Gene therapy
3. Chaperone therapy
4. Substrate reduction
therapy
Sanfilippo Syndrome (MPS IIIC) - MPS IIIC
caused by genetic deficiency of heparan
sulfate acetyl CoA: a-glucosaminide N-
acetyltransferase, (HGSNAT).
Chaperone therapy
JJB has funded Dr. Joel Freundlich (Rutgers) to synthesize
analogs and Dr. Alexey Pshezhetsky (Univ Montreal) to
perform in vitro testing. Alexey discovered glycosamine as a
chaperone in 2009.
Glycosamine used to build a pharmacophore and search drug
databases for compounds for testing – updated as new
compounds tested
If you have similar compounds – please let us know…
Are there other rare diseases we could apply a generalizable
approach too?
glucosamineGlucosamine with
IIIC pharmacophore
Orphanet J Rare Dis. 2012 Jun 15;7:39
67.5
125
245
350
Value ($M)
Return on Investment = Priority Review Voucher
From FDA
When a rare pediatric disease or tropical disease
treatment is approved owner gets a Voucher
has value
Used Not UsedPrice Not
Disclosed
tropical tropical tropicalrare rare rare rare
Neglected Tropical Disease Examples
• To discover new leads• Tuberculosis – from public data to open models to create IP
• Chagas Disease - from public data to create new IP
• Ebola virus – from little data to create open data and IP
• Zika virus – Starting from scratch- what can we do?
Tuberculosis kills 1.6-1.7m/yr (~1 every 8 seconds)
1/3rd of worlds population infected!!!!
streptomycin (1943)para-aminosalicyclic acid (1949)isoniazid (1952) pyrazinamide (1954)cycloserine (1955)ethambutol (1962)rifampicin (1967)
Multi drug resistance in 4.3% of cases
Extensively drug resistant increasing incidence
one new drug (bedaquiline) in 40 yrs
Tuberculosis
Tested >350,000 molecules Tested ~2M 2M >300,000
>1500 active and non toxic Published 177 100s 800
Bigger Open Data: Screening for New Tuberculosis Treatments
How many will become a new drug?
TBDA screened over 2 million
TB Alliance + Japanese pharma screens
R43 LM011152-01
Over 8 years analyzed in vitro data and built models
Top scoring molecules
assayed for
Mtb growth inhibition
Mtb screening
molecule
database/s
High-throughput
phenotypic
Mtb screening
Descriptors + Bioactivity (+Cytotoxicity)
Bayesian Machine Learning classification Mtb Model
Molecule Database
(e.g. GSK malaria
actives)
virtually scored
using Bayesian Models
New bioactivity data
may enhance models
Identify in vitro hits and test models3 x published prospective tests ~750
molecules were tested in vitro
198 actives were identified
>20 % hit rate
Multiple retrospective tests 3-10 fold
enrichment
NH
S
N
Ekins et al., Pharm Res 31: 414-435, 2014
Ekins, et al., Tuberculosis 94; 162-169, 2014
Ekins, et al., PLOSONE 8; e63240, 2013
Ekins, et al., Chem Biol 20: 370-378, 2013
Ekins, et al., JCIM, 53: 3054−3063, 2013
Ekins and Freundlich, Pharm Res, 28, 1859-1869, 2011
Ekins et al., Mol BioSyst, 6: 840-851, 2010
Ekins, et al., Mol. Biosyst. 6, 2316-2324, 2010,
R43 LM011152-01
5 active compounds vs Mtb in a few months
7 tested, 5 active (70% hit rate)
Ekins et al.,Chem
Biol 20, 370–378,
2013
1. Virtually screen 13,533-member GSK antimalarial hit library
2. Bayesian Model = SRI TAACF-CB2 dose response + cytotoxicity model
3. Top 46 commercially available compounds visually inspected
4. 7 compounds chosen for Mtb testing based on
- drug-likeness- chemotype diversity
GSK #Bayesian
Score Chemical Structure
Mtb H37Rv MIC
(mg/mL)
GSK Reported
% Inhibition HepG2 @ 10 mM cmpd
TCMDC-123868 5.73 >32 40
TCMDC-125802 5.63 0.0625 5
TCMDC-124192 5.27 2.0 4
TCMDC-124334 5.20 2.0 4
TCMDC-123856 5.09 1.0 83
TCMDC-123640 4.66 >32 10
TCMDC-124922 4.55 1.0 9
R43 LM011152-01
• BAS00521003/ TCMDC-125802 reported to be a P.
falciparum lactate dehydrogenase inhibitor
• Only one report of antitubercular activity from 1969
- solid agar MIC = 1 mg/mL (“wild strain”)
- “no activity” in mouse model up to 400 mg/kg
- however, activity was solely judged by
extension of survival!
Bruhin, H. et al., J. Pharm. Pharmac. 1969, 21, 423-433.
.
MIC of 0.0625 ug/mL • 64X MIC affords 6 logs of
kill
• Resistance and/or drug
instability beyond 14 d
Vero cells : CC50 = 4.0
mg/mL
Selectivity Index SI =
CC50/MICMtb = 16 – 64
In mouse no toxicity but
also no efficacy in GKO
model – probably
metabolized.
Ekins et al.,Chem Biol 20, 370–378, 2013
Taking a compound in vivo identifies issues
R43 LM011152-01
Optimizing the triazine series as part of this project, improve solubility and show in
vivo efficacy
1U19AI109713-01
Chagas Disease
• About 7 million to 8 million people estimated to be infected worldwide
• Vector-borne transmission occurs in the Americas.
• A triatomine bug carries the parasite Trypanosoma cruzi which causes the disease.
• The disease is curable if treatment is initiated soon after infection.
• No FDA approved drug, pipe line sparse
Hotez et al., PLoS Negl Trop Dis. 2013 Oct 31;7(10):e2300
R41-AI108003-01
T. cruzi
C2C12 cells
6-8 days
infect
T. cruzi(Trypomastigote)
T. cruzi high-content screening assay
Plate containing
compounds
T.cruzi
Myocyte
Fixing & Staining
Reading
3 days
R41-AI108003-01
• Dataset from PubChem AID 2044 – Broad Institute data
• Dose response data (1853 actives and 2203 inactives)
• Dose response and cytotoxicity (1698 actives and 2363 inactives)
• EC50 values less than 1 mM were selected as actives.
• For cytotoxicity greater than 10 fold difference compared with EC50
• Models generated using : molecular function class fingerprints of maximum
diameter 6 (FCFP_6), AlogP, molecular weight, number of rotatable bonds,
number of rings, number of aromatic rings, number of hydrogen bond
acceptors, number of hydrogen bond donors, and molecular fractional polar
surface area.
• 5-fold cross validation or leave out 50% x 100 fold cross validation was used
to calculate the ROC for the models generated
T. cruzi Machine Learning models
R41-AI108003-01 Ekins et al., PLoS Negl Trop Dis. 2015 Jun 26;9(6):e0003878
ModelBest
cutoff
Leave-one out
ROC
5-fold cross
validation ROC
5-fold cross
validation sensitivity
(%)
5-fold cross
validation
specificity (%)
5-fold cross
validation
concordance (%)
Dose response
(1853 actives,
2203 inactives)
-0.676 0.81 0.78 77 89 84
Dose response
and cytotoxicity
(1698 actives,
2363 inactives)
-0.337 0.82 0.80 80 88 84
External ROC Internal ROC
Concordance
(%)
Specificity
(%) Sensitivity (%)
0.79 ± 0.01 0.80 ± 0.01 73.48 ± 1.05 79.08 ± 3.73 65.68 ± 3.89
5 fold cross validation
Dual event 50% x 100 fold cross validation
R41-AI108003-01 Ekins et al., PLoS Negl Trop Dis. 2015 Jun 26;9(6):e0003878
Good Bad
Ekins et al., PLoS Negl Trop Dis. 2015 Jun 26;9(6):e0003878
T. cruzi Dose Response and cytotoxicity Machine Learning model features
Tertiary amines, piperidines and aromatic fragments with basic Nitrogen
Cyclic hydrazines and electron poor chlorinated aromatics
R41-AI108003-01
Bayesian Machine Learning Models
- Selleck Chemicals natural product lib. (139 molecules);- GSK kinase library (367 molecules);- Malaria box (400 molecules);- Microsource Spectrum (2320 molecules);- CDD FDA drugs (2690 molecules);- Prestwick Chemical library (1280 molecules);- Traditional Chinese Medicine components (373 molecules)
7569 molecules
99 molecules
R41-AI108003-01 Ekins et al., PLoS Negl Trop Dis. 2015 Jun 26;9(6):e0003878
Synonyms Infection Ratio EC50 (µM) EC90 (µM) Hill slopeCytotoxicity CC50
(µM)
Chagas mouse model (4
days treatment,
luciferase): In vivo
efficacy at 50 mg/kg bid
(IP) (%)
(±)-Verapamil hydrochloride, 715730,
SC-00117620.02, 0.02 0.0383 0.143 1.67 >10.0 55.1
29781612, Pyronaridine 0.00, 0.00 0.225 0.665 2.03 3.0 85.2
511176, Furazolidone 0.00, 0.00 0.257 0.563 2.81 >10.0 100.5
501337, SC-0011777, Tetrandrine
0.00, 0.00 0.508 1.57 1.95 1.3 43.6
SC-0011754,Nitrofural 0.01, 0.01 0.775 6.98 1.00 >10.0 78.5*
* Used hydroxymethylnitrofurazone for in vivo study (nitrofural pro-drug)
Ekins et al., PLoS Negl Trop Dis. 2015 Jun 26;9(6):e0003878
H3C
O
N
CH3
N
CH3
H3C
O
CH3
O
H3C
O
H3C
N
N
HN
N
N
OH
Cl
O
CH3
O
NN
+
N
O
O–
O
O
O
N+
O
O–
N
HN
NH2
O
In vitro and in vivo data for compounds selected
R41-AI108003-01
7,569 cpds => 99 cpds => 17 hits (5 in nM range)
Infection Treatment Reading
0 1 2 3 4 5 6 7
Pyronaridine Furazolidone Verapamil
Nitrofural Tetrandrine Benznidazole
In vivo efficacy of the 5 tested compounds
Vehicle
Ekins et al., PLoS Negl Trop Dis. 2015 Jun 26;9(6):e0003878R41-AI108003-01
Pyronaridine: New anti-Chagas and known anti-Malarial
EMA approved in combination with artesunate
The IC50 value 2 nM against the growth of KT1 and KT3 P. falciparum
Known P-gp inhibitor
Active against Babesia and TheileriaParasites tick-transmitted
R41-AI108003-01
Work provided starting point for grants (submitted) and further work
N
N
HN
N
N
OH
Cl
O
CH3
2014-2015 Ebola outbreak
March 2014, the World Health Organization (WHO) reported a major Ebola outbreak in Guinea, a western African nation
8 August 2014, the WHO declared the epidemic to be an international public health emergency
I urge everyone involved in all aspects of this epidemic to openly and rapidly report their experiences and findings. Information will be one of our key weapons in defeating the Ebola epidemic. Peter Piot
Wikipedia
Wikipedia
Madrid PB, et al. (2013) A Systematic Screen of FDA-Approved Drugs for Inhibitors of Biological Threat Agents. PLoS ONE 8(4): e60579. doi:10.1371/journal.pone.0060579
Chloroquine in mouse
Pharmacophore based on 4 compounds
Ekins S, Freundlich JS and Coffee M, 2014 F1000Research 2014, 3:277
amodiaquine, chloroquine, clomiphene
toremifene all are active in vitro
may have common features and bind
common site / target / mechanism
Could they be targeting proteins like viral
protein 35 (VP35)
component of the viral RNA polymerase
complex, a viral assembly factor, and an
inhibitor of host interferon (IFN) production
VP35 contributes to viral escape from host
innate immunity - required for virulence,
Machine Learning for EBOV
• 868 molecules from the viral pseudotype entry assay and the EBOV replication assay
• Salts were stripped and duplicates removed using Discovery Studio 4.1 (Biovia, San
Diego, CA)
• IC50 values less than 50 mM were selected as actives.
• Models generated using : molecular function class fingerprints of maximum diameter 6
(FCFP_6), AlogP, molecular weight, number of rotatable bonds, number of rings,
number of aromatic rings, number of hydrogen bond acceptors, number of hydrogen
bond donors, and molecular fractional polar surface area.
• Models were validated using five-fold cross validation (leave out 20% of the database).
• Bayesian, Support Vector Machine and Recursive Partitioning Forest and single tree
models built.
• RP Forest and RP Single Tree models used the standard protocol in Discovery Studio.
• 5-fold cross validation or leave out 50% x 100 fold cross validation was used to
calculate the ROC for the models generated
Models
(training set 868 compounds)
RP Forest
(Out of bag
ROC)
RP Single Tree
(With 5 fold
cross validation
ROC)
SVM
(with 5 fold
cross validation
ROC)
Bayesian
(with 5 fold
cross validation
ROC)
Bayesian
(leave out
50% x 100
ROC)
Ebola replication (actives = 20) 0.70 0.78 0.73 0.86 0.86
Ebola Pseudotype (actives = 41) 0.85 0.81 0.76 0.85 0.82
Ebola HTS Machine learning model cross validation
Receiver Operator Curve Statistics.
Discovery Studio pseudotype Bayesian model
B
Discovery Studio EBOV replication model
Good Bad
Good Bad
Effect of drug treatment on infection with Ebola-GFP
3 Molecules selected from MicroSource Spectrum virtual screen and tested in vitroAll of them nM activity
Data from Robert Davey, Manu Anantpadma and Peter Madrid
-8 -7 -6 -5 -4-10
0102030405060708090
100110
Chloroquine
Pyronaridine
Quinacrine
Tilorone
Untreated control
Log Conc. (M)%
Eb
ola
In
fecti
on
F1000Res Submitted 2015
Compound EC50 (mM) [95% CI] Cytotoxicity CC50 (µM)
Chloroquine 4.0 [1.0 – 15] 250
Pyronaridine 0.42 [0.31 – 0.56] 3.1
Quinacrine 0.35 [0.28 – 0.44] 6.2
Tilorone 0.23 [0.09 – 0.62] 6.2
Duplicate experiments
control
Ebola models• Collaborated with lab to open up their screening data, build models,
identified more active inhibitors
• To date the most potent drugs and drug-like molecules
• Still a need for a drug that could be used ASAP
• Lead to proposal for in vivo testing compound/s
More data continues to be published
• We collated 55 molecules from the literature
• A second review lists 60 hits– Picazo, E. and F. Giordanetto, Drug Discovery Today. 2015 Feb;20(2):277-86
• Additional screens have identified 53 hits and 80 hits respectively– Kouznetsova, J., et al., Emerg Microbes Infect, 2014. 3(12): p. e84.
– Johansen, L.M., et al., Sci Transl Med, 2015. 7(290): p. 290ra89.
Litterman N, Lipinski C and Ekins S 2015 F1000Research 2015, 4:38
Proposed workflow for rapid drug discovery against Zika virus
Ekins S, Mietchen D, Coffee M et al. 2016 [version 1; referees: awaiting peer review]
F1000Research 2016, 5:150 (doi: 10.12688/f1000research.8013.1)
Homology models for Zika Proteins published months before first cryo-EM structure
Ekins S, Liebler J, Neves BJ et al. 2016 [version 1; referees: awaiting peer review] F1000Research 2016, 5:275 (doi: 10.12688/f1000research.8213.1)
Structures being used to dock molecules on:Selected ZIKV NS5 (A), FtsJ (B), HELICc (C), DEXDc (D), Peptidase S7 (E), NS1 (F), E Stem (G), Glycoprotein M (H), Propeptide (I), Capsid (J), and Glycoprotein E (K) homology models (minimized proteins) that had good sequence coverage with template proteins developed with SWISS-MODEL.
• Minimal data for using computational approaches for rare diseases
• Data available to produce models for neglected diseases
• modeled Lassa, Marburg, dengue viruses
• Ebola had enough data to build models and suggest compounds to test in 2014
• Computational and experimental collaborations have lead to :– New hits and leads
– New IP
– New grants for collaborators
– Global collaborative project – Open Zika
• Zika is starting from no screening data, so need for several approaches
• Make findings open and publish immediately
• Need for facilities to test compounds
• Challenges still – sharing and accessing information / knowledge
• How do we prepare for next pathogen?
Conclusions
Joel FreundlichJair Lage de Siqueira-NetoPeter MadridRobert DaveyAlex ClarkAlex PerrymanRobert Reynolds
Megan CoffeeEthan PerlsteinNadia LittermanChristopher LipinskiChristopher SouthanAntony WilliamsMike PollastriNi AiBarry Bunin and all colleagues at CDDJill WoodAlexey Pshezhetsky
Acknowledgments and contact info
collabchem
Using Pharmacophores