Javascript must be enabled to continue!
Machine Learning for Discovery of New ADORA Modulators
View through CrossRef
Adenosine (ADO) is an extracellular signaling molecule generated locally under conditions that produce ischemia, hypoxia, or inflammation. It is involved in modulating a range of physiological functions throughout the brain and periphery through the membrane-bound G protein-coupled receptors, called adenosine receptors (ARs) A1AR, A2AAR, A2BAR, and A3AR. These are therefore important targets for neurological, cardiovascular, inflammatory, and autoimmune diseases and are the subject of drug development directed toward the cyclic adenosine monophosphate and other signaling pathways. Initially using public data for A1AR agonists we generated and validated a Bayesian machine learning model (Receiver Operator Characteristic of 0.87) that we used to identify molecules for testing. Three selected molecules, crisaborole, febuxostat and paroxetine, showed initial activity in vitro using the HEK293 A1AR Nomad cell line. However, radioligand binding, β-arrestin assay and calcium influx assay did not confirm this A1AR activity. Nevertheless, several other AR activities were identified. Febuxostat and paroxetine both inhibited orthosteric radioligand binding in the µM range for A2AAR and A3AR. In HEK293 cells expressing the human A2AAR, stimulation of cAMP was observed for crisaborole (EC50 2.8 µM) and paroxetine (EC50 14 µM), but not for febuxostat. Crisaborole also increased cAMP accumulation in A2BAR-expressing HEK293 cells, but it was weaker than at the A2AAR. At the human A3AR, paroxetine did not show any agonist activity at 100 µM, although it displayed binding with a Ki value of 14.5 µM, suggesting antagonist activity. We have now identified novel modulators of A2AAR, A2BAR and A3AR subtypes that are clinically used for other therapeutic indications, and which are structurally distinct from previously reported tool compounds or drugs.
Frontiers Media SA
Title: Machine Learning for Discovery of New ADORA Modulators
Description:
Adenosine (ADO) is an extracellular signaling molecule generated locally under conditions that produce ischemia, hypoxia, or inflammation.
It is involved in modulating a range of physiological functions throughout the brain and periphery through the membrane-bound G protein-coupled receptors, called adenosine receptors (ARs) A1AR, A2AAR, A2BAR, and A3AR.
These are therefore important targets for neurological, cardiovascular, inflammatory, and autoimmune diseases and are the subject of drug development directed toward the cyclic adenosine monophosphate and other signaling pathways.
Initially using public data for A1AR agonists we generated and validated a Bayesian machine learning model (Receiver Operator Characteristic of 0.
87) that we used to identify molecules for testing.
Three selected molecules, crisaborole, febuxostat and paroxetine, showed initial activity in vitro using the HEK293 A1AR Nomad cell line.
However, radioligand binding, β-arrestin assay and calcium influx assay did not confirm this A1AR activity.
Nevertheless, several other AR activities were identified.
Febuxostat and paroxetine both inhibited orthosteric radioligand binding in the µM range for A2AAR and A3AR.
In HEK293 cells expressing the human A2AAR, stimulation of cAMP was observed for crisaborole (EC50 2.
8 µM) and paroxetine (EC50 14 µM), but not for febuxostat.
Crisaborole also increased cAMP accumulation in A2BAR-expressing HEK293 cells, but it was weaker than at the A2AAR.
At the human A3AR, paroxetine did not show any agonist activity at 100 µM, although it displayed binding with a Ki value of 14.
5 µM, suggesting antagonist activity.
We have now identified novel modulators of A2AAR, A2BAR and A3AR subtypes that are clinically used for other therapeutic indications, and which are structurally distinct from previously reported tool compounds or drugs.
Related Results
Trisiklik Antidepresan Zehirlenmelerinde Adora Risk Skorlaması
Trisiklik Antidepresan Zehirlenmelerinde Adora Risk Skorlaması
Amaç: Trisiklik antidepresan (TSA) zehirlenmeleri ciddi klinik sonuçlara neden olabilir. TCA zehirlenmesi olan hastaların değerlendirilmesinde “Antidepresan Doz Aşımı Risk Değerlen...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
Clinical pharmacology of CFTR modulators
Clinical pharmacology of CFTR modulators
With the development of cystic fibrosis transmembrane receptor (CFTR) modulating drugs, the landscape in cystic fibrosis (CF) care has changed dramatically. These drugs enable the ...
Review on allosteric modulators of dopamine receptors so far
Review on allosteric modulators of dopamine receptors so far
AbstractBackgroundContemporary research is predominantly directed towards allosteric modulators, a class of compounds designed to interact with specific sites distinct from the ort...
Management of Neuropathic Pain—Current Insights and Future Perspectives
Management of Neuropathic Pain—Current Insights and Future Perspectives
The management of neuropathic pain remains very challenging and very much an art. Despite the publication of multiple consensus guidelines on the management of neuropathic pain, a ...
Systematics of Literature Reviews: Learning Model of Discovery Learning in Science Learning
Systematics of Literature Reviews: Learning Model of Discovery Learning in Science Learning
The development of the 21st century has affected the world of education. Current education students must be led to learn more creatively and actively. This study aims Furthermore, ...
Service discovery mechanisms in cloud computing: a comprehensive and systematic literature review
Service discovery mechanisms in cloud computing: a comprehensive and systematic literature review
PurposeThe main goal of this paper is to study the cloud service discovery mechanisms. In this paper, the discovery mechanisms are ranked in three major classes: centralized, decen...

