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Liquid Handling Processes Impact
Computational Modeling in Drug
Discovery

Joe Olechno1, Sean Ekins2, Antony Williams3, Rich Ellson1
Pittcon 2013
Session 2670
3:55 PM, March 21, 2013



1. Labcyte Inc.
2. Collaboration in Chemistry
3. Royal Society of Chemistry
Agenda


• What is Acoustic Liquid Handling?
• Serial Dilutions vs. Direct Dilutions
• Lead Optimization and Pharmacophores
• The Impact of Serial Dilutions on Drug Discovery
• Conclusions




                                                     2
Acoustic Droplet Ejection (ADE)




                                  Comley J, Nanolitre Dispensing, Drug Discovery
                                  World, Summer 2004, 43-54




                                                                                   3
Acoustic Droplet Ejection (ADE)
Acoustic energy expels droplets without physical contact
                                   15.0

• Extremely precise                12.5

• Extremely accurate               10.0

• Rapid                        %CV 7.5

• Auto-calibrating                  5.0

• Completely touchless              2.5

 – No cross-contamination            0
                                          0.1      1         10       100       1000       10000
 – No leachates                                             Volume (nL)
                                          Comley J, Nanolitre Dispensing, Drug Discovery
 – No binding                             World, Summer 2004, 43-54




                                                                                              4
Agenda


• What is Acoustic Liquid Handling?
• Serial Dilutions vs. Direct Dilutions
• Lead Optimization and Pharmacophores
• The Impact of Serial Dilutions on Drug Discovery
• Conclusions




                                                     5
Conventional Dose-Response Set-up by Serial Dilution



 Source Plate




                                                       Assay Plate




                  Intermediate Buffer Dilution Plate
Serial Dilution vs. Direct Dilution
Serial with Tips                         Direct with Acoustics
• Equal volumes of changing              • Changing volumes of equal
  concentrations                           concentrations
• Compounds are sequentially             • Maximum of one dilution step
  diluted. Each new dilution is the
  source for the next step.

• Many ―touches‖ with tips (or           • Touchless—no carry-
  significant potential for carry-over     over, leachates or binding
  or leachates)                            No solute lost

• Errors are compounded                  Serial Dilution
                                         • Reduced error

• Low-volume assays with high            • Low-volume
                                         Direct Dilution assays with low
  solvent concentration (or               solvent concentration
  compound loss)

                                                                           7
Direct Dilution Process


                                        Third Step
                                        Transfer 75, 25,
                                        7.5 and 2.5 nL
                                        of each hit
                                        to four consecutive                                      12-point
                                        wells
                                                                                                 curves
                                        (30, 10, 3 and one
                                        droplets, respectively)
                       Source Plate                                                Assay Plate
                                                                  Fourth Step
                   First Step                                     Transfer 75, 25, 7.5 and
                   Transfer 252.5                                 2.5 nL of each diluted
                   and 2.5 nL to                                  sample to four consecutive
                   two wells in an                                wells of the assay plate
                   intermediate plate                             (30, 10, 3 and one
                                                                  droplets, respectively)


                                         Second Step
                                         Dilute intermediate
                                         plate with 25 L
                                         DMSO in each well




                   Intermediate Plate                                      Intermediate Plate
Agenda


• What is Acoustic Liquid Handling?
• Serial Dilutions vs. Direct Dilutions
• Lead Optimization and Pharmacophores
• The Impact of Serial Dilutions on Drug Discovery
• Conclusions




                                                     9
Traditional Scaffold Modifications
Fibrinogen Receptor Inhibitor
                                                  Poor stability, poor
                                IC50 = 29 µM      bioavailability, non-
                                                  patentable


                                                  Poor stability, poor
                                IC50 = 3 µM
                                                  bioavailability




                                IC50 = 0.15 µM    Poor oral availability



                                                  Excellent oral
                                IC50 = 0.067 µM   availability, good
                                                  stability

                                                                         10
But what to do if the structures are dissimilar?




                                                        Both compounds bind
                                                        strongly to the GABAA
                                                        receptor.




       Diazepam                  CGS-9896

      These compounds are extremely different in structure but
      both have the same effect. Is there a way to reconcile this
      and generate information to make new drugs?
Pharmacophores

• Describes the optimal binding of a protein to a
  ligand.
• Shows how different structures bind to same site.
• Designed from screening data.




                                                      12
GABAA Receptor Pharmacophore

                              Hydrogen bond acceptor




                                  Hydrogen bond donor

         Hydrophobic pocket
GABAA Receptor Pharmacophore

                              Hydrogen bond acceptor




                                  Hydrogen bond donor

         Hydrophobic pocket
Agenda


• What is Acoustic Liquid Handling?
• Serial Dilutions vs. Direct Dilutions
• Lead Optimization and Pharmacophores
• The Impact of Serial Dilutions on Drug Discovery
• Conclusions




                                                     15
Real World Data – EphB4 Receptor

Compound # IC50 Acoustic (µM) IC50 Tips (µM)            Ratio IC50Tip/IC50ADE
     5              0.002               0.553                     276.5
     4              0.003               0.146                      48.7
     7              0.003               0.778                     259.3
    W7b             0.004               0.152                      42.5
     8              0.004               0.445                     111.3
    W5              0.006               0.087                      13.7
     6              0.007               0.973                     139.0
    W3              0.012               0.049                       4.2
    W1              0.014               0.112                       8.2
     9              0.052               0.170                       3.3
     10             0.064               0.817                      12.8
    W12             0.158               0.250                       1.6
    W11             0.207              14.400                      69.6
     11             0.486               3.030                       6.2
          14 compounds with structures and IC50 data.
                                                Barlaam et al., WO2009/010794
                                                Barlaam et al., US 7,718,653
Real World Data – EphB4 Receptor
                                       2


                                                              The acoustic
                                       1                      technique
                                                              always
                                                              provided a
   Log IC50-tips




                                                              more potent
                                       0                      IC50 value.
                   -3   -2   -1            0          1   2

                                                              The greater
                                      -1                      the distance
                                                              from the red
                                                              line, the
                                                              greater the
                                      -2                      difference in
                                                              IC50 values.

                                      -3

                                  Log IC50-acoustic
                                                                              17
Experimental Process Flow




                        Acoustic
                         Model

                        Generate
14 Structures
                 pharmacophore models
with Data
                   for EphB4 receptor

                       Tip-based
                         Model




Initial data set of 14
WO2009/010794, US 7,718,653


                                        18
AZ Pharmacophores

Pharmacophore    Hydrophobic   Hydrogen       Hydrogen   Observed vs
                   features      bond        bond donors  predicted
                               acceptors                     IC50
Tip-based             0           2               1            0.80
Acoustic based        2           1               1            0.92




   Tip-based pharmacophore            Acoustic-based pharmacophore
Experimental Process Flow

                                                          Results



                       Acoustic            Acoustic
                        Model               Model

                       Generate          Test models
14 Structures
                pharmacophore models     against new
with Data
                  for EphB4 receptor        data

                      Tip-based           Tip-based
                        Model               Model




                                                          Results

 Initial data set of 14                Independent data set of 12
 WO2009/010794, US 7,718,653           WO2008/132505                20
Compounds Tested with Tip-based Pharmacophore

                  Tip-based IC50    Tip-based IC50
     Name
                 Prediction (mM)     Actual (mM)
     W084.1            0.3488              0.297
     W084.2            0.3806              0.456
     W084.4            0.6994              0.374
     W082.2            0.8392              0.808
     W082.4            1.4989              6.270
     W083              2.8229              0.198
     W084.3            2.9119              0.473
     W082.1            3.3829              1.120
     WO81     NOT RETRIEVED              38.300
     WO82.3   NOT RETRIEVED                1.780

                                      Barlaam wo2008/132505
Tip-Based Pharmacophore – Predicted vs. Measured
                                     10.000                                             8


                                                                                        7
                            R² = 0.000
Measured Tip-based IC50




                                                                  Measured Rank Order
                                                                                                R² = 0.183
                                                                                        6


                                                                                        5
                                         1.000
                          0.1                    1           10                         4


                                                                                        3


                                                                                        2


                                         0.100                                          1
                                                                                            1    2    3      4    5     6    7   8
                                  Predicted Tip-based IC50                                            Predicted Rank Order




                            The pharmacophore developed from tip-based data is an
                            extremely poor predictor of measured activity.

                                                                                                                                 23
Results of Testing Pharmacophores


Acoustic Pharmacophore            Tip-based Pharmacophore
                                  Poor correlation (R2<0.0002)
                                  between predicted and measured
                                  The model was inadequate to
                                  predict activity of 20% of
Correctly predicted rank of the   compounds
most potent compounds             Compound with highest measured
                                  activity was predicted to have poor
                                  binding
                                  Compound predicted to be most
                                  active actually had poor activity
Experimental Process Flow

                                                           Results


                       Acoustic             Acoustic                     Acoustic
                        Model                Model                        Model

                       Generate           Test models              Test models against
14 Structures
                pharmacophore models      against new             X-ray crystal structure
with Data
                  for EphB4 receptor         data                   pharmacophores

                      Tip-based            Tip-based                    Tip-based
                        Model                Model                        Model



                                                           Results


 Initial data set of 14                Independent data set of 12 Independent crystallography data
 WO2009/010794, US 7,718,653           WO2008/132505              Bioorg Med Chem Lett 18:2776;
                                                                                           25
                                                                  18:5717; 20:6242; 21:2207
Final Nail in the Coffin – X-Ray Crystallography

• All pharmacophores created from X-ray structures
  had both hydrophobic and hydrogen bonding
  features.
• The EphB4-ligand crystal pharmacophore most
  closely reflects the acoustic pharmacophore.

Pharmacophore      Hydrophobic   Hydrogen bond      Hydrogen
                     features      acceptors       bond donors
Tip-based               0              2                1
Acoustic based          2              1                1
Crystal based
                        2              1                1
(consensus)
Agenda


• What is Acoustic Liquid Handling?
• Serial Dilutions vs. Direct Dilutions
• Lead Optimization and Pharmacophores
• The Impact of Serial Dilutions on Drug Discovery
• Conclusions




                                                     27
Reasons to Worry

• This case strongly suggests that
  aqueous, serial dilutions transferred with tip-
  based techniques lead researchers away from
  the most potent drugs.
• How universal is this phenomenon?
Acoustic vs. Tip-based Transfers




                                                                                                 -40 -20 0 20 40 60 80 100
                                                           Adapted from Spicer et
                                                           al., Presentation at Drug
10 20 30 40 50




                                                                                                     Acoustic % Inhibition
Serial dilution IC50 μM




                                                           Discovery
                                                           Technology, Boston, MA, August
                                                           2005



                                                               Adapted from Wingfield.
                                                               Presentation at ELRIG2012,
                                                               Manchester, UK
                          0




                              0   10 20 30 40         50                                                                     -40 -20 0 20 40 60 80 100
                                   Acoustic IC50 μM                                                                               Aqueous % Inhibition
                   104
                                                             Adapted from Wingfield et al.,
                   103
                                                             Amer. Drug Disco. 2007,
Serial dilution IC50 μM




                                                             3(3):24




                                                                                              Log IC50 tips
                   102

                          10

                           1
                                                                Data in this presentation
               10-1

               10-2

               10-3
                 10-3 10-2 10-1 1 10 102 103 104
                        Acoustic IC50 μM                                                                                         Log IC50 acoustic
Reasons to Worry

• This case strongly suggests that
  aqueous, serial dilutions transferred with tip-
  based techniques lead researchers away from
  the most potent drugs.
• How universal is this phenomenon?
• Sticky surfaces
 – Many solutes stick to walls and tips at low concentrations
 – Dose-response experiments require precision solute-handling over
   many logs.
Conclusions

• Tip-based aqueous serial dilutions
• Databases, public and private, should annotate
  this meta-data along with biological data.
• We encourage researchers to make their data
  available to expand this study.

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Liquid Handling Processes Impact Computational Modeling in Drug Discovery

  • 1. Liquid Handling Processes Impact Computational Modeling in Drug Discovery Joe Olechno1, Sean Ekins2, Antony Williams3, Rich Ellson1 Pittcon 2013 Session 2670 3:55 PM, March 21, 2013 1. Labcyte Inc. 2. Collaboration in Chemistry 3. Royal Society of Chemistry
  • 2. Agenda • What is Acoustic Liquid Handling? • Serial Dilutions vs. Direct Dilutions • Lead Optimization and Pharmacophores • The Impact of Serial Dilutions on Drug Discovery • Conclusions 2
  • 3. Acoustic Droplet Ejection (ADE) Comley J, Nanolitre Dispensing, Drug Discovery World, Summer 2004, 43-54 3
  • 4. Acoustic Droplet Ejection (ADE) Acoustic energy expels droplets without physical contact 15.0 • Extremely precise 12.5 • Extremely accurate 10.0 • Rapid %CV 7.5 • Auto-calibrating 5.0 • Completely touchless 2.5 – No cross-contamination 0 0.1 1 10 100 1000 10000 – No leachates Volume (nL) Comley J, Nanolitre Dispensing, Drug Discovery – No binding World, Summer 2004, 43-54 4
  • 5. Agenda • What is Acoustic Liquid Handling? • Serial Dilutions vs. Direct Dilutions • Lead Optimization and Pharmacophores • The Impact of Serial Dilutions on Drug Discovery • Conclusions 5
  • 6. Conventional Dose-Response Set-up by Serial Dilution Source Plate Assay Plate Intermediate Buffer Dilution Plate
  • 7. Serial Dilution vs. Direct Dilution Serial with Tips Direct with Acoustics • Equal volumes of changing • Changing volumes of equal concentrations concentrations • Compounds are sequentially • Maximum of one dilution step diluted. Each new dilution is the source for the next step. • Many ―touches‖ with tips (or • Touchless—no carry- significant potential for carry-over over, leachates or binding or leachates) No solute lost • Errors are compounded Serial Dilution • Reduced error • Low-volume assays with high • Low-volume Direct Dilution assays with low solvent concentration (or solvent concentration compound loss) 7
  • 8. Direct Dilution Process Third Step Transfer 75, 25, 7.5 and 2.5 nL of each hit to four consecutive 12-point wells curves (30, 10, 3 and one droplets, respectively) Source Plate Assay Plate Fourth Step First Step Transfer 75, 25, 7.5 and Transfer 252.5 2.5 nL of each diluted and 2.5 nL to sample to four consecutive two wells in an wells of the assay plate intermediate plate (30, 10, 3 and one droplets, respectively) Second Step Dilute intermediate plate with 25 L DMSO in each well Intermediate Plate Intermediate Plate
  • 9. Agenda • What is Acoustic Liquid Handling? • Serial Dilutions vs. Direct Dilutions • Lead Optimization and Pharmacophores • The Impact of Serial Dilutions on Drug Discovery • Conclusions 9
  • 10. Traditional Scaffold Modifications Fibrinogen Receptor Inhibitor Poor stability, poor IC50 = 29 µM bioavailability, non- patentable Poor stability, poor IC50 = 3 µM bioavailability IC50 = 0.15 µM Poor oral availability Excellent oral IC50 = 0.067 µM availability, good stability 10
  • 11. But what to do if the structures are dissimilar? Both compounds bind strongly to the GABAA receptor. Diazepam CGS-9896 These compounds are extremely different in structure but both have the same effect. Is there a way to reconcile this and generate information to make new drugs?
  • 12. Pharmacophores • Describes the optimal binding of a protein to a ligand. • Shows how different structures bind to same site. • Designed from screening data. 12
  • 13. GABAA Receptor Pharmacophore Hydrogen bond acceptor Hydrogen bond donor Hydrophobic pocket
  • 14. GABAA Receptor Pharmacophore Hydrogen bond acceptor Hydrogen bond donor Hydrophobic pocket
  • 15. Agenda • What is Acoustic Liquid Handling? • Serial Dilutions vs. Direct Dilutions • Lead Optimization and Pharmacophores • The Impact of Serial Dilutions on Drug Discovery • Conclusions 15
  • 16. Real World Data – EphB4 Receptor Compound # IC50 Acoustic (µM) IC50 Tips (µM) Ratio IC50Tip/IC50ADE 5 0.002 0.553 276.5 4 0.003 0.146 48.7 7 0.003 0.778 259.3 W7b 0.004 0.152 42.5 8 0.004 0.445 111.3 W5 0.006 0.087 13.7 6 0.007 0.973 139.0 W3 0.012 0.049 4.2 W1 0.014 0.112 8.2 9 0.052 0.170 3.3 10 0.064 0.817 12.8 W12 0.158 0.250 1.6 W11 0.207 14.400 69.6 11 0.486 3.030 6.2 14 compounds with structures and IC50 data. Barlaam et al., WO2009/010794 Barlaam et al., US 7,718,653
  • 17. Real World Data – EphB4 Receptor 2 The acoustic 1 technique always provided a Log IC50-tips more potent 0 IC50 value. -3 -2 -1 0 1 2 The greater -1 the distance from the red line, the greater the -2 difference in IC50 values. -3 Log IC50-acoustic 17
  • 18. Experimental Process Flow Acoustic Model Generate 14 Structures pharmacophore models with Data for EphB4 receptor Tip-based Model Initial data set of 14 WO2009/010794, US 7,718,653 18
  • 19. AZ Pharmacophores Pharmacophore Hydrophobic Hydrogen Hydrogen Observed vs features bond bond donors predicted acceptors IC50 Tip-based 0 2 1 0.80 Acoustic based 2 1 1 0.92 Tip-based pharmacophore Acoustic-based pharmacophore
  • 20. Experimental Process Flow Results Acoustic Acoustic Model Model Generate Test models 14 Structures pharmacophore models against new with Data for EphB4 receptor data Tip-based Tip-based Model Model Results Initial data set of 14 Independent data set of 12 WO2009/010794, US 7,718,653 WO2008/132505 20
  • 21. Compounds Tested with Tip-based Pharmacophore Tip-based IC50 Tip-based IC50 Name Prediction (mM) Actual (mM) W084.1 0.3488 0.297 W084.2 0.3806 0.456 W084.4 0.6994 0.374 W082.2 0.8392 0.808 W082.4 1.4989 6.270 W083 2.8229 0.198 W084.3 2.9119 0.473 W082.1 3.3829 1.120 WO81 NOT RETRIEVED 38.300 WO82.3 NOT RETRIEVED 1.780 Barlaam wo2008/132505
  • 22. Tip-Based Pharmacophore – Predicted vs. Measured 10.000 8 7 R² = 0.000 Measured Tip-based IC50 Measured Rank Order R² = 0.183 6 5 1.000 0.1 1 10 4 3 2 0.100 1 1 2 3 4 5 6 7 8 Predicted Tip-based IC50 Predicted Rank Order The pharmacophore developed from tip-based data is an extremely poor predictor of measured activity. 23
  • 23. Results of Testing Pharmacophores Acoustic Pharmacophore Tip-based Pharmacophore Poor correlation (R2<0.0002) between predicted and measured The model was inadequate to predict activity of 20% of Correctly predicted rank of the compounds most potent compounds Compound with highest measured activity was predicted to have poor binding Compound predicted to be most active actually had poor activity
  • 24. Experimental Process Flow Results Acoustic Acoustic Acoustic Model Model Model Generate Test models Test models against 14 Structures pharmacophore models against new X-ray crystal structure with Data for EphB4 receptor data pharmacophores Tip-based Tip-based Tip-based Model Model Model Results Initial data set of 14 Independent data set of 12 Independent crystallography data WO2009/010794, US 7,718,653 WO2008/132505 Bioorg Med Chem Lett 18:2776; 25 18:5717; 20:6242; 21:2207
  • 25. Final Nail in the Coffin – X-Ray Crystallography • All pharmacophores created from X-ray structures had both hydrophobic and hydrogen bonding features. • The EphB4-ligand crystal pharmacophore most closely reflects the acoustic pharmacophore. Pharmacophore Hydrophobic Hydrogen bond Hydrogen features acceptors bond donors Tip-based 0 2 1 Acoustic based 2 1 1 Crystal based 2 1 1 (consensus)
  • 26. Agenda • What is Acoustic Liquid Handling? • Serial Dilutions vs. Direct Dilutions • Lead Optimization and Pharmacophores • The Impact of Serial Dilutions on Drug Discovery • Conclusions 27
  • 27. Reasons to Worry • This case strongly suggests that aqueous, serial dilutions transferred with tip- based techniques lead researchers away from the most potent drugs. • How universal is this phenomenon?
  • 28. Acoustic vs. Tip-based Transfers -40 -20 0 20 40 60 80 100 Adapted from Spicer et al., Presentation at Drug 10 20 30 40 50 Acoustic % Inhibition Serial dilution IC50 μM Discovery Technology, Boston, MA, August 2005 Adapted from Wingfield. Presentation at ELRIG2012, Manchester, UK 0 0 10 20 30 40 50 -40 -20 0 20 40 60 80 100 Acoustic IC50 μM Aqueous % Inhibition 104 Adapted from Wingfield et al., 103 Amer. Drug Disco. 2007, Serial dilution IC50 μM 3(3):24 Log IC50 tips 102 10 1 Data in this presentation 10-1 10-2 10-3 10-3 10-2 10-1 1 10 102 103 104 Acoustic IC50 μM Log IC50 acoustic
  • 29. Reasons to Worry • This case strongly suggests that aqueous, serial dilutions transferred with tip- based techniques lead researchers away from the most potent drugs. • How universal is this phenomenon? • Sticky surfaces – Many solutes stick to walls and tips at low concentrations – Dose-response experiments require precision solute-handling over many logs.
  • 30. Conclusions • Tip-based aqueous serial dilutions • Databases, public and private, should annotate this meta-data along with biological data. • We encourage researchers to make their data available to expand this study.