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.


We pick out particular compounds from an extensive virtual database of more than 60 billion molecules. The preparation and shipment of these compounds are facilitated by Reaxense.


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.


We utilise our cutting-edge, exclusive workflow to develop focused libraries.


 

Fig. 1. The screening workflow of Receptor.AI

By deploying molecular simulations, our approach comprehensively covers a broad array of proteins, tracking their flexibility and dynamics individually and within complexes. Ensemble virtual screening is utilised to take into account conformational dynamics, identifying pivotal binding sites located within functional regions and at allosteric locations. This thorough exploration ensures that every conceivable mechanism of action is considered, aiming to identify new therapeutic targets and advance lead compounds throughout a vast spectrum of biological functions.


Our library distinguishes itself through several key aspects:


  • The Receptor.AI platform integrates all available data about the target protein, including past experiments, literature data, known ligands, structural information and more. This consolidated approach maximises the probability of prioritising highly relevant compounds.

  • The platform uses sophisticated molecular simulations to identify possible binding sites so that the compounds in the focused library are suitable for discovering allosteric inhibitors and the binders for cryptic pockets.

  • The platform integrates over 50 highly customisable AI models, which are thoroughly tested and validated on a multitude of commercial drug discovery programs and research projects. It is designed to be efficient, reliable and accurate. All this power is utilised when producing the focused libraries.

  • In addition to producing the focused libraries, Receptor.AI provides services and end-to-end solutions at every stage of preclinical drug discovery. The pricing model is success-based, which reduces your risks and leverages the mutual benefits of the project's success.


PARTNER
Receptor.AI
 
UPACC
Q9BUP0

UPID:
EFHD1_HUMAN

ALTERNATIVE NAMES:
EF-hand domain-containing protein 1; Swiprosin-2

ALTERNATIVE UPACC:
Q9BUP0; B2RD83; E9PFH3; Q9BTF8; Q9H8I2; Q9HBQ0

BACKGROUND:
The EF-hand domain-containing protein D1, known alternatively as Swiprosin-2, is integral to mitochondrial function and neuronal development. It serves as a calcium sensor, triggering mitoflash events marked by superoxide production. Such flashes are essential for maintaining mitochondrial health and signaling, with implications for cellular energy management and apoptosis.

THERAPEUTIC SIGNIFICANCE:
Exploring the functions of EF-hand domain-containing protein D1 offers a promising pathway for drug discovery. Given its central role in mitochondrial function and neuronal differentiation, targeting this protein could lead to innovative treatments for diseases related to mitochondrial dysfunction and neurodevelopmental disorders.

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