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VIRTUAL SCREENING STUDIES IN SEARCH OF 
DOPAMINE D1 RECEPTOR LIGANDS AS ANTIPSYCHOTIC AGENTS 
Adam Bucki,1 Marcin Feder,2 Maciej Pawłowski,1 and Marcin Kołaczkowski 1,2 
1Jagiellonian University Collegium Medicum, Cracow, Poland; 2Adamed Ltd., Pieńków, Poland 
adam.bucki@uj.edu.pl 
Introduction Prospective virtual screening 
Compound Structure GlideScore 
% inhibition of control 
specific binding* 
ADN-0958 -7.25 99.2 
ADN-2039 -7.86 100 
ADN-1300 -9.87 100 
ADN-1435 -8.22 100 
ADN-3772 -11.81 100 
Olanzapine - - 94 
1. Kołaczkowski M., Bucki A., Feder M., Pawłowski M. Ligand-optimized homology models of D1 and D2 
dopamine receptors: Application for virtual screening. J. Chem. Inf. Model. 2013, 53, 638-48. 
2. Goldman-Rakic P. S., Castner S. A., Svensson T. H., Siever L. J., Williams G. V. Targeting the Dopamine D1 
Receptor in Schizophrenia: Insights for Cognitive Dysfunction. Psychopharmacology (Berl.) 2004, 174, 3–16. 
3. Kolaczkowski M., Marcinkowska M., Bucki A., Pawlowski M., Krukowski A., Rusiecki R., Siwek A., Wolak M. 
Sulphonamide Derivatives of Alicyclic Amines for the Treatment of Central Nervous System Diseases. 
WO2013001505 (A2), January 3, 2013. 
Glide, Induced Fit Docking and Phase were implemented in Schrödinger Suite 2010, licensed for Jagiellonian University Collegium Medicum. 
Virtual screening (VS) utilizing homology models of target receptors is a widely practised computational 
approach of structure-based drug design (SBDD). It allows for a rapid and increasingly efficacious assessment 
of biological activity of large libraries of chemical entities by high-throughput docking (HTD). We have 
developed method of building reliable ligand-optimized homology models of D1 and D2 dopamine receptors 
(D1R and D2R) and described several issues connected with their preparation and applicability in VS trials.1 
Dopamine D1 receptors are involved in regulation of a variety of physiological processes affecting e.g. 
cognition, behavior and motor functions. Therefore compounds possessing D1R activity are supposed to be 
effective in therapy of cognition impairment and negative symptoms of schizophrenia.2 
Dopamine D2 receptor ligands are well known to be effective in ameliorating positive symptoms of 
schizophrenia. 
Excessive 
stimulation of D2R in 
the limbic structures 
Dopamine 
transmission 
deficit in frontal 
cortex (D1R) 
Rational design of novel D1R / D2R ligands is difficult because of distinct requirements for ligand spatial 
configuration, resulting from their binding sites. We therefore carried out VS study of our in house database of 
approximately 4200 compounds designed as monoaminergic receptors ligands in search of potential D1R 
affinity. 
Homology model preparation 
Homology model validation – retrospective virtual screening 
References 
Active ligands library 
100 
80 
60 
40 
20 
For virtual screening trials, the database was enriched with a set of 340 high-affinity ligands of D1R. 
Ligands displaying the lowest Ki values for D1R (< 100nM) were acquired from ChEMBL database. 
VS decoy database 
The database was prepared based on ZINC’s usual CNS permeable subset which contains 344 596 
chemical entities, characterized by properties, which favor blood−brain barrier permeability (PSA: 0 − 60, 
MW:150 − 400, and predicted xlogP: 1.5 − 2.7). 
In order to exclude compounds considered to be unable to bind with monoaminergic receptors, the database 
was filtered with a simple pharmacophore model, representative for monoaminergic receptor ligands. To 
prepare this model, we selected several known antipsychotic drugs and found common pharmacophore 
features employing Phase. The two most important were taken into account: positively charged amine group 
and aromatic ring, situated in a distance of 6±1 Å from each other. 
The designed database consisted of 17 196 compounds. 
In vitro binding results 
Conclusions 
Homology models used in docking experiments performed well in VS studies. The obtained 
enrichments in test VS were significantly higher than random distribution, particularly when using combined 
results obtained from docking to 3 receptor models. 
VS of 4200 compounds followed by in vitro binding assay of 411 selected compounds, resulted in 172 
confirmed hits (hit rate 42%), verifying high capacity of VS tool in prediction of D1R affinity. 
Amongst 5 distinct chemotypes, 4 may be considered as analogs of known antipsychotics displaying affinity 
for D1R (i.e. olanzapine, risperidone, ziprasidone) and therefore being somehow obvious. 
One of them - arylsulfonamide derivative of aryloxyethylazetidine was recognized as a novel scaffold 
of D1R / D2R ligands. The representative compound (ADN-3772) displayed affinity for D1R equal 100%, while 
for D2R – 99% (inhibition of control specific binding in the concentration of 1μM). 
3 Functional assays revealed its 
partial agonism efficacy in D2R (57% agonist effect and 97% antagonist effect in 1.0E-06 M concentration) 
and antagonism to D1R. 
Negative symptoms Positive symptoms 
Optimization of binding site 
through induced-fit docking 
of active ligands 
„RECONSTRUCTION 
OF A LOCK ON A KEY” 
Single ligand‐optimized model 
EF1% = 17 BEDROC = 0.325 
Combination of 3 best‐performing models 
EF1% = 19 BEDROC = 0.330 
Random distribution 
0 
0 10 20 30 40 50 60 70 80 90 100 
% of active compounds found 
% database 
D1R/β2AR 
sequence 
alignment: 
GeneSilico 
Metaserver 
Crude receptor 
models: 
Swiss-Model 
Model 
selection: 
Glide XP VS criterion: 
BEDROC 
(1) EF1% = 17 BEDROC = 0.325 
(2) EF1% = 17 BEDROC = 0.306 
(3) EF1% = 19 BEDROC = 0.305 
Library of 4190* original chemical entities: 
compounds designed as monoaminergic receptors ligands, 
potentially active in CNS disorders 
*1213 structures published in 5 international patent applications 
Automated docking to 3 homology models of D1R 
(Glide XP) 
Affinity of best-scored (Glidescore) 411 compounds was 
determined by in vitro radioligand binding studies (Cerep, France) 
172 compounds of substantial affinity for D1R identified (hit rate = 42%) 
>90% inhibition of control specific binding at 1.0E-06 M 
5 (out of 9 in total) clusters representing distinct chemotypes: 
*Test compound concentration: 1.0E-06 M 
Assay carried out in duplicate (n=2) 
Hot ligand: SCH23390 (Ki = 1.3E-10 M)

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Virtual screening studies in search of dopamine D1 receptor ligands as antipsychotic agents

  • 1. VIRTUAL SCREENING STUDIES IN SEARCH OF DOPAMINE D1 RECEPTOR LIGANDS AS ANTIPSYCHOTIC AGENTS Adam Bucki,1 Marcin Feder,2 Maciej Pawłowski,1 and Marcin Kołaczkowski 1,2 1Jagiellonian University Collegium Medicum, Cracow, Poland; 2Adamed Ltd., Pieńków, Poland adam.bucki@uj.edu.pl Introduction Prospective virtual screening Compound Structure GlideScore % inhibition of control specific binding* ADN-0958 -7.25 99.2 ADN-2039 -7.86 100 ADN-1300 -9.87 100 ADN-1435 -8.22 100 ADN-3772 -11.81 100 Olanzapine - - 94 1. Kołaczkowski M., Bucki A., Feder M., Pawłowski M. Ligand-optimized homology models of D1 and D2 dopamine receptors: Application for virtual screening. J. Chem. Inf. Model. 2013, 53, 638-48. 2. Goldman-Rakic P. S., Castner S. A., Svensson T. H., Siever L. J., Williams G. V. Targeting the Dopamine D1 Receptor in Schizophrenia: Insights for Cognitive Dysfunction. Psychopharmacology (Berl.) 2004, 174, 3–16. 3. Kolaczkowski M., Marcinkowska M., Bucki A., Pawlowski M., Krukowski A., Rusiecki R., Siwek A., Wolak M. Sulphonamide Derivatives of Alicyclic Amines for the Treatment of Central Nervous System Diseases. WO2013001505 (A2), January 3, 2013. Glide, Induced Fit Docking and Phase were implemented in Schrödinger Suite 2010, licensed for Jagiellonian University Collegium Medicum. Virtual screening (VS) utilizing homology models of target receptors is a widely practised computational approach of structure-based drug design (SBDD). It allows for a rapid and increasingly efficacious assessment of biological activity of large libraries of chemical entities by high-throughput docking (HTD). We have developed method of building reliable ligand-optimized homology models of D1 and D2 dopamine receptors (D1R and D2R) and described several issues connected with their preparation and applicability in VS trials.1 Dopamine D1 receptors are involved in regulation of a variety of physiological processes affecting e.g. cognition, behavior and motor functions. Therefore compounds possessing D1R activity are supposed to be effective in therapy of cognition impairment and negative symptoms of schizophrenia.2 Dopamine D2 receptor ligands are well known to be effective in ameliorating positive symptoms of schizophrenia. Excessive stimulation of D2R in the limbic structures Dopamine transmission deficit in frontal cortex (D1R) Rational design of novel D1R / D2R ligands is difficult because of distinct requirements for ligand spatial configuration, resulting from their binding sites. We therefore carried out VS study of our in house database of approximately 4200 compounds designed as monoaminergic receptors ligands in search of potential D1R affinity. Homology model preparation Homology model validation – retrospective virtual screening References Active ligands library 100 80 60 40 20 For virtual screening trials, the database was enriched with a set of 340 high-affinity ligands of D1R. Ligands displaying the lowest Ki values for D1R (< 100nM) were acquired from ChEMBL database. VS decoy database The database was prepared based on ZINC’s usual CNS permeable subset which contains 344 596 chemical entities, characterized by properties, which favor blood−brain barrier permeability (PSA: 0 − 60, MW:150 − 400, and predicted xlogP: 1.5 − 2.7). In order to exclude compounds considered to be unable to bind with monoaminergic receptors, the database was filtered with a simple pharmacophore model, representative for monoaminergic receptor ligands. To prepare this model, we selected several known antipsychotic drugs and found common pharmacophore features employing Phase. The two most important were taken into account: positively charged amine group and aromatic ring, situated in a distance of 6±1 Å from each other. The designed database consisted of 17 196 compounds. In vitro binding results Conclusions Homology models used in docking experiments performed well in VS studies. The obtained enrichments in test VS were significantly higher than random distribution, particularly when using combined results obtained from docking to 3 receptor models. VS of 4200 compounds followed by in vitro binding assay of 411 selected compounds, resulted in 172 confirmed hits (hit rate 42%), verifying high capacity of VS tool in prediction of D1R affinity. Amongst 5 distinct chemotypes, 4 may be considered as analogs of known antipsychotics displaying affinity for D1R (i.e. olanzapine, risperidone, ziprasidone) and therefore being somehow obvious. One of them - arylsulfonamide derivative of aryloxyethylazetidine was recognized as a novel scaffold of D1R / D2R ligands. The representative compound (ADN-3772) displayed affinity for D1R equal 100%, while for D2R – 99% (inhibition of control specific binding in the concentration of 1μM). 3 Functional assays revealed its partial agonism efficacy in D2R (57% agonist effect and 97% antagonist effect in 1.0E-06 M concentration) and antagonism to D1R. Negative symptoms Positive symptoms Optimization of binding site through induced-fit docking of active ligands „RECONSTRUCTION OF A LOCK ON A KEY” Single ligand‐optimized model EF1% = 17 BEDROC = 0.325 Combination of 3 best‐performing models EF1% = 19 BEDROC = 0.330 Random distribution 0 0 10 20 30 40 50 60 70 80 90 100 % of active compounds found % database D1R/β2AR sequence alignment: GeneSilico Metaserver Crude receptor models: Swiss-Model Model selection: Glide XP VS criterion: BEDROC (1) EF1% = 17 BEDROC = 0.325 (2) EF1% = 17 BEDROC = 0.306 (3) EF1% = 19 BEDROC = 0.305 Library of 4190* original chemical entities: compounds designed as monoaminergic receptors ligands, potentially active in CNS disorders *1213 structures published in 5 international patent applications Automated docking to 3 homology models of D1R (Glide XP) Affinity of best-scored (Glidescore) 411 compounds was determined by in vitro radioligand binding studies (Cerep, France) 172 compounds of substantial affinity for D1R identified (hit rate = 42%) >90% inhibition of control specific binding at 1.0E-06 M 5 (out of 9 in total) clusters representing distinct chemotypes: *Test compound concentration: 1.0E-06 M Assay carried out in duplicate (n=2) Hot ligand: SCH23390 (Ki = 1.3E-10 M)