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Knowledge-based 
Compound Design 
Fernando F. Huerta 
Chemnotia AB powered by 
InfoChem GmbH
QSAR models 
Ligand Based 
Pharmacophore 
models 
Structure Based 
HTS 
Compound (Drug) Design 
Fragment Based
How Drugs Look? 
HN 
N 
N 
N 
O 
S 
O 
OH 
NH2 O 
O 
F 
F 
N 
HN 
N 
O 
OH 
HN 
N 
NH2 O 
F 
F 
N 
O 
HN 
O O 
N 
O 
OH 
NH2 O 
F 
F 
N 
HN 
HN 
N 
O 
OH 
O 
F 
F 
N 
HN 
Norfloxacin 
(Noroxin™) 
Ciprofloxacin 
(Cipro™) 
Sparfloxacin 
(Zagam™) 
Grepafloxacin 
(Raxar™) 
N 
Drug Discovery Today 2011, 16, 722 
Drug Discovery Today 2011, 16, 779 
N 
S 
O 
N 
O 
O 
N 
S 
O 
N 
F O 
F 
Nexium® 
Rabeprazole® 
PANTOPRAZOLE® 
O 
N 
N 
Cl S 
N 
N O 
HO 
Loxapine® 
Seroquel®
Why Do Drugs Look Similar? 
Protein 
Binding 
Site 
Drug Design Paradigm 
Activity, Selectivity, 
ADMET,.. 
Similar structural motif 
share similar properties(?)
Compound (Drug) Design 
What would you do?
Knowledge-based 
Compound Design
Transforms from Reaction Databases 
Reaction database 
e.g. SPRESI 
proprietary databases 
commercial databases 
1. Pre-processing 
Template (2 levels): 
Transform: 
Transform library 
Automatic transform 
extraction 
(ICMAP/CLASSIFY) 
N 
Remove bond 1-3 
1 
11 
R1 
12 
R2 
10 9 
2 
6 
3 
4 
O 
5 
7 8 
13 
14 
Remove bond between atoms 3 and 6. 
Make new single bond bReetwmeoevne abtoonmds 1 3- 2and 5 
Decrease bond order of double bond 2=4 by 1. 
Make new single bond between atoms 3 and 4 
Make new single bond between atoms 2 and 6. 
Add group to atom 3: -OH 
2. Retrosynthesis 
Lookup 
stored 
example 
reactions 
H 
O 
O 
H 
Target molecule 
Precursor(s) 1 
Precursor(s) 2 
... 
Precursor(s) n 
Transform x 
Transform y 
... 
Transform z
Transforms from Reaction Databases 
Reaction database 
e.g. SPRESI 
proprietary databases 
commercial databases 
Transform library 
2. Forward 
Reaction 
Lookup 
stored 
example 
reactions 
Starting Material 
or Reactant 
Transform x 
Transform y 
Transform z 
Product(s) 1 
Product(s) 2 
... 
Product(s) n 
... 
N 
Cl N 
O
Retrosynthetic 
Analysis 
• Target orientated 
• Complexity reduction 
• Availability of starting 
materials 
• Multistep process 
Reaction 
Prediction 
• Unknown product 
molecules 
• Molecular size 
• Reagents 
• Single reaction step
Forward Reaction Prediction (cont.) 
• Number of transforms 
NH N 2 
O 
S 
OH 
O O 
N 
OH 
H H
ICSYNTH Strategy Parameters 
• Strategy: defined by a set of parameters 
• Rating of generated precursors/products 
• 42 parameters (Retrosynthesis / FRP) 
ICSYNTH FRP Parameters 
O OH 
Reactant 
Transform 
Product(s)
Strategy Parameters Optimization 
42 parameters 
(reactant, transform, product) 
optimization algorithm
ICSYNTH FRP Strategies 
Reactivity Mapping 
FG Library Design 
Ring Introduction 
Scaffold Modification: Not Scaffold Hopping!!
FRP Examples / Applications 
Reactivity Mapping 
N 
N O 
N NH 
O 
N 
N O 
N NH 
O 
R 
N 
O R 
N N 
N NH 
N 
N O 
N NH 
O 
Hal 
N 
N O 
N N 
O 
N 
N O 
O N NH 
O 
R
FRP Examples / Applications 
FG Library Design 
N 
HO O 
N NH 
reaction center
Knowledge-based 
Compound Design 
Other Databases
Knowledge-based Drug Design 
• One synthetic step (reliable?) 
• Novelty 
• Drug like 
• Physicochemical properties 
• Lipinski
Knowledge-based Drug Design 
inspired by “de novo design using reaction vectors” 
Example 1 
HN 
O N 
S 
OH 
O 
O 
Penicillin G 
Example 
from 
J. 
Chem. 
Inf. 
Model., 
Vol. 
49, 
No. 
5, 
2009, 
1163-­‐1184
Knowledge-based Drug Design 
inspired by “de novo design using reaction vectors” 
Example 1 
HN 
O N 
S 
OH 
O 
O 
Penicillin G 
Example 
from 
J. 
Chem. 
Inf. 
Model., 
Vol. 
49, 
No. 
5, 
2009, 
1163-­‐1184 
HN 
O N 
S 
OH 
O 
O 
Reaction Vectors 
ICSYNTH FRP (precision Medium) 
ICSYNTH FRP (precision High)
Knowledge-based Drug Design 
Example 1
Knowledge-based Drug Design 
Example 1 
• 30 suggested cpds from ICSYNTH vs 1000 cpds (Reaxys, 
penicillinG sss) 
• Fingerprint similarities calculated (30000) 
• Identical compounds filtered off (similarity = 1) 
• Compounds with Tanimoto distance between 0.5-0.9 
were selected 
• Synthetic data (ICSYNTH) available 
• Calculated med chem properties of new suggestions as 
well as med chem properties of previously reported 
ones available for analysis
Knowledge-based Drug Design 
Example 2 
N 
Cl N 
O 
Core Structure 
(Diazepam) 
Reaxys search 
214 reactions / products 
N 
Cl 
N 
F 
O 
N 
Cl 
HO 
O 
N 
O 
N O 
O 
N 
O 
N 
Cl 
O 
NH 
O 
NH 
… Cl N 
N O 
100 suggestions
Knowledge-based Drug Design 
Example 2 
Processing Information 
• 80 new reactions identified 
• 10 Identical matches 
• 8 suggested products with a Tanimoto 
distance <0.2 
• 2 abstraction errors (knime) 
but… it’s not enough for compound design…
Knowledge-based Drug Design 
Example 2 (part II) 
N 
Cl N 
O 
Core Structure 
(Diazepam) 
80 new suggested 
reactions/products 
versus 
Reaxys substructure search 
2564 related compounds
Knowledge-based Drug Design 
Example 2 (part II) 
• Fingerprints calculated 
• Identical compounds filtered off (Tanimoto = 1) 
• 13 suggested products with a Tanimoto 0.7-0.9 
• Physicochemical properties calculated and compared 
New “suggested” molecules show 
similar properties to the known-ones
Knowledge-based Drug Design 
Example 3 
Cl 
N 
O 
N 
N 
Cl 
HN 
O 
O 
Intermediate* used for 
ICSynth FRP and Reaxys sss 
Loxapine® 
• 61 suggestions ICSYNTH FRP (one synthetic step away from intermediate) 
• 922 related compounds in the literature (Loxapine included) 
• 6 new compounds with Tanimoto distance between 0.5-0.9 were suggested 
N 
O 
R 
N 
N 
Cl O 
* Not real precursor for the final molecule 
N 
N 
Cl 
Ar 
Z 
O 
NH 
Cl 
Ar 
O 
X 
Cl
One more thing… 
building synthetic confidence 
filtering ICSYNTH cpds with low synthetic background 
• number of precedent reactions of the same type 
• precedent yield reported 
• level of similarity from the original reaction
Summary
ACKNOWLEDGMENTS 
InfoChem 
Peter Loew 
Heinz Saller 
Christoph Oppawsky 
Mike Hutchings 
Hans Kraut 
Valentina Eigner-Pitto 
Josef Eiblmaier 
Ulf Frieske 
Stephanie North 
Chemnotia 
Anders Bogevig 
Tobias Rein 
THANK YOU

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ICIC 2014 Knowledge-Based De Novo Molecular Design Using ICSYNTH FRP

  • 1. Knowledge-based Compound Design Fernando F. Huerta Chemnotia AB powered by InfoChem GmbH
  • 2. QSAR models Ligand Based Pharmacophore models Structure Based HTS Compound (Drug) Design Fragment Based
  • 3. How Drugs Look? HN N N N O S O OH NH2 O O F F N HN N O OH HN N NH2 O F F N O HN O O N O OH NH2 O F F N HN HN N O OH O F F N HN Norfloxacin (Noroxin™) Ciprofloxacin (Cipro™) Sparfloxacin (Zagam™) Grepafloxacin (Raxar™) N Drug Discovery Today 2011, 16, 722 Drug Discovery Today 2011, 16, 779 N S O N O O N S O N F O F Nexium® Rabeprazole® PANTOPRAZOLE® O N N Cl S N N O HO Loxapine® Seroquel®
  • 4. Why Do Drugs Look Similar? Protein Binding Site Drug Design Paradigm Activity, Selectivity, ADMET,.. Similar structural motif share similar properties(?)
  • 5. Compound (Drug) Design What would you do?
  • 7. Transforms from Reaction Databases Reaction database e.g. SPRESI proprietary databases commercial databases 1. Pre-processing Template (2 levels): Transform: Transform library Automatic transform extraction (ICMAP/CLASSIFY) N Remove bond 1-3 1 11 R1 12 R2 10 9 2 6 3 4 O 5 7 8 13 14 Remove bond between atoms 3 and 6. Make new single bond bReetwmeoevne abtoonmds 1 3- 2and 5 Decrease bond order of double bond 2=4 by 1. Make new single bond between atoms 3 and 4 Make new single bond between atoms 2 and 6. Add group to atom 3: -OH 2. Retrosynthesis Lookup stored example reactions H O O H Target molecule Precursor(s) 1 Precursor(s) 2 ... Precursor(s) n Transform x Transform y ... Transform z
  • 8. Transforms from Reaction Databases Reaction database e.g. SPRESI proprietary databases commercial databases Transform library 2. Forward Reaction Lookup stored example reactions Starting Material or Reactant Transform x Transform y Transform z Product(s) 1 Product(s) 2 ... Product(s) n ... N Cl N O
  • 9. Retrosynthetic Analysis • Target orientated • Complexity reduction • Availability of starting materials • Multistep process Reaction Prediction • Unknown product molecules • Molecular size • Reagents • Single reaction step
  • 10. Forward Reaction Prediction (cont.) • Number of transforms NH N 2 O S OH O O N OH H H
  • 11. ICSYNTH Strategy Parameters • Strategy: defined by a set of parameters • Rating of generated precursors/products • 42 parameters (Retrosynthesis / FRP) ICSYNTH FRP Parameters O OH Reactant Transform Product(s)
  • 12. Strategy Parameters Optimization 42 parameters (reactant, transform, product) optimization algorithm
  • 13. ICSYNTH FRP Strategies Reactivity Mapping FG Library Design Ring Introduction Scaffold Modification: Not Scaffold Hopping!!
  • 14. FRP Examples / Applications Reactivity Mapping N N O N NH O N N O N NH O R N O R N N N NH N N O N NH O Hal N N O N N O N N O O N NH O R
  • 15. FRP Examples / Applications FG Library Design N HO O N NH reaction center
  • 17. Knowledge-based Drug Design • One synthetic step (reliable?) • Novelty • Drug like • Physicochemical properties • Lipinski
  • 18. Knowledge-based Drug Design inspired by “de novo design using reaction vectors” Example 1 HN O N S OH O O Penicillin G Example from J. Chem. Inf. Model., Vol. 49, No. 5, 2009, 1163-­‐1184
  • 19. Knowledge-based Drug Design inspired by “de novo design using reaction vectors” Example 1 HN O N S OH O O Penicillin G Example from J. Chem. Inf. Model., Vol. 49, No. 5, 2009, 1163-­‐1184 HN O N S OH O O Reaction Vectors ICSYNTH FRP (precision Medium) ICSYNTH FRP (precision High)
  • 21. Knowledge-based Drug Design Example 1 • 30 suggested cpds from ICSYNTH vs 1000 cpds (Reaxys, penicillinG sss) • Fingerprint similarities calculated (30000) • Identical compounds filtered off (similarity = 1) • Compounds with Tanimoto distance between 0.5-0.9 were selected • Synthetic data (ICSYNTH) available • Calculated med chem properties of new suggestions as well as med chem properties of previously reported ones available for analysis
  • 22. Knowledge-based Drug Design Example 2 N Cl N O Core Structure (Diazepam) Reaxys search 214 reactions / products N Cl N F O N Cl HO O N O N O O N O N Cl O NH O NH … Cl N N O 100 suggestions
  • 23. Knowledge-based Drug Design Example 2 Processing Information • 80 new reactions identified • 10 Identical matches • 8 suggested products with a Tanimoto distance <0.2 • 2 abstraction errors (knime) but… it’s not enough for compound design…
  • 24. Knowledge-based Drug Design Example 2 (part II) N Cl N O Core Structure (Diazepam) 80 new suggested reactions/products versus Reaxys substructure search 2564 related compounds
  • 25. Knowledge-based Drug Design Example 2 (part II) • Fingerprints calculated • Identical compounds filtered off (Tanimoto = 1) • 13 suggested products with a Tanimoto 0.7-0.9 • Physicochemical properties calculated and compared New “suggested” molecules show similar properties to the known-ones
  • 26. Knowledge-based Drug Design Example 3 Cl N O N N Cl HN O O Intermediate* used for ICSynth FRP and Reaxys sss Loxapine® • 61 suggestions ICSYNTH FRP (one synthetic step away from intermediate) • 922 related compounds in the literature (Loxapine included) • 6 new compounds with Tanimoto distance between 0.5-0.9 were suggested N O R N N Cl O * Not real precursor for the final molecule N N Cl Ar Z O NH Cl Ar O X Cl
  • 27. One more thing… building synthetic confidence filtering ICSYNTH cpds with low synthetic background • number of precedent reactions of the same type • precedent yield reported • level of similarity from the original reaction
  • 29.
  • 30. ACKNOWLEDGMENTS InfoChem Peter Loew Heinz Saller Christoph Oppawsky Mike Hutchings Hans Kraut Valentina Eigner-Pitto Josef Eiblmaier Ulf Frieske Stephanie North Chemnotia Anders Bogevig Tobias Rein THANK YOU