Focused On-demand Libraries - Receptor.AI Collaboration


Explore the Potential with AI-Driven Innovation

This extensive focused library is tailor-made using the latest virtual screening and parameter assessment technology, operated by the Receptor.AI drug discovery platform. This technique is more effective than traditional methods, offering compounds with improved activity, selectivity, and safety.


We carefully select specific compounds from a vast collection of over 60 billion molecules in virtual chemical space. Reaxense helps in synthesizing and delivering these compounds.


Contained in the library are leading modulators, each labelled with 38 ADME-Tox and 32 physicochemical and drug-likeness qualities. In addition, each compound is illustrated with its optimal docking poses, affinity scores, and activity scores, giving a complete picture.


Our high-tech, dedicated method is applied to construct targeted libraries for enzymes.


 

Fig. 1. The screening workflow of Receptor.AI

This approach involves comprehensive molecular simulations of the catalytic and allosteric binding pockets and ensemble virtual screening that accounts for their conformational flexibility. In the case of designing modulators, the structural adjustments caused by reaction intermediates are considered to improve activity and selectivity.


Key features that set our library apart include:


  • The Receptor.AI platform integrates extensive information about the target protein, such as historical experiments, academic research, known ligands, and structural insights, thereby increasing the likelihood of identifying highly relevant compounds.

  • The platform’s sophisticated molecular simulations are designed to discover potential binding sites, ensuring that our focused library is optimal for the discovery of allosteric inhibitors and binders for cryptic pockets.

  • With over 50 customisable AI models, verified through extensive testing in commercial drug discovery and research, Receptor.AI is efficient, reliable, and precise. These models are essential in the production of our focused libraries.

  • Receptor.AI not only produces focused libraries but also provides full services and solutions at every stage of preclinical drug discovery, with a success-based pricing structure that aligns our interests with the success of your project.


PARTNER
Receptor.AI
 
UPACC
Q07820

UPID:
MCL1_HUMAN

ALTERNATIVE NAMES:
Bcl-2-like protein 3; Bcl-2-related protein EAT/mcl1; mcl1/EAT

ALTERNATIVE UPACC:
Q07820; B2R6B2; D3DV03; D3DV04; Q9HD91; Q9NRQ3; Q9NRQ4; Q9UHR7; Q9UHR8; Q9UHR9; Q9UNJ1

BACKGROUND:
Mcl-1, also referred to as Bcl-2-like protein 3, is integral in regulating apoptosis and cell survival. Its isoforms have opposing functions; Isoform 1 prevents cell death, while Isoform 2 facilitates it. This duality highlights Mcl-1's significant role in maintaining cellular homeostasis.

THERAPEUTIC SIGNIFICANCE:
Exploring Mcl-1's functions could lead to groundbreaking therapeutic approaches. Given its crucial role in apoptosis regulation, targeting Mcl-1 offers a promising avenue for developing novel cancer treatments by modulating the apoptotic pathways.

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