Focused On-demand Libraries - Receptor.AI Collaboration


Explore the Potential with AI-Driven Innovation

The focused library is created on demand with the latest virtual screening and parameter assessment technology, supported by the Receptor.AI drug discovery platform. This method is more effective than traditional methods and results in higher-quality compounds with better activity, selectivity, and safety.


Our selection of compounds is from a large virtual library of over 60 billion molecules. The production and distribution of these compounds are managed by Reaxense.


The library features a range of promising modulators, each detailed with 38 ADME-Tox and 32 physicochemical and drug-likeness parameters. Plus, each compound is presented with its ideal docking poses, affinity scores, and activity scores, ensuring a thorough insight.


We use our state-of-the-art dedicated workflow for designing focused libraries for enzymes.


 

Fig. 1. The screening workflow of Receptor.AI

It includes in-depth molecular simulations of both the catalytic and allosteric binding pockets, with ensemble virtual screening focusing on their conformational flexibility. For modulators, the process includes considering the structural shifts due to reaction intermediates to boost activity and selectivity.


Our library is unique due to several crucial aspects:


  • Receptor.AI compiles all relevant data on the target protein, such as past experimental results, literature findings, known ligands, and structural data, thereby enhancing the likelihood of focusing on the most significant compounds.

  • By utilizing advanced molecular simulations, the platform is adept at locating potential binding sites, rendering the compounds in the focused library well-suited for unearthing allosteric inhibitors and binders for hidden pockets.

  • The platform is supported by more than 50 highly specialized AI models, all of which have been rigorously tested and validated in diverse drug discovery and research programs. Its design emphasizes efficiency, reliability, and accuracy, crucial for producing focused libraries.

  • Receptor.AI extends beyond just creating focused libraries; it offers a complete spectrum of services and solutions during the preclinical drug discovery phase, with a success-dependent pricing strategy that reduces risk and fosters shared success in the project.


PARTNER
Receptor.AI
 
UPACC
P04075

UPID:
ALDOA_HUMAN

ALTERNATIVE NAMES:
Lung cancer antigen NY-LU-1; Muscle-type aldolase

ALTERNATIVE UPACC:
P04075; B4DXI7; Q6FH76; Q6FI10; Q96B15; Q9BWD9; Q9UCN2

BACKGROUND:
The enzyme Fructose-bisphosphate aldolase A, known for its critical function in energy metabolism through glycolysis and gluconeogenesis, is also recognized as Lung cancer antigen NY-LU-1. It serves not only in metabolic pathways but also as a scaffolding protein, indicating its multifunctional role.

THERAPEUTIC SIGNIFICANCE:
Understanding the role of Fructose-bisphosphate aldolase A could open doors to potential therapeutic strategies for conditions like Glycogen storage disease 12, offering hope for advancements in metabolic disorder treatments.

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