We consider lead discovery as active search in a space of labelled graphs. In particular, we extend our recent data-driven adaptive Markov chain approach, and evaluate it on a focused drug design problem, where we search for an antagonist of an av integrin, the target protein that belongs to a group of Arg-Gly-Asp integrin receptors. This group of integrin receptors is thought to play a key role in idiopathic pulmonary fibrosis, a chronic lung disease of significant pharmaceutical interest. As an in silico proxy of the binding affinity, we use a molecular docking score to an experimentally determined avb6 protein structure. The search is driven by a probabilistic surrogate of the activity of all molecules from that space. As the process evo...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Drug discovery and design is a tedious and expensive process whose small chances of success necessit...
Drug discovery and design is a tedious and expensive process whose small chances of success necessit...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
Modern drug discovery has evolved into a rational design paradigm, where the vast chemical space is ...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
A primary aim of drug discovery is to find novel molecules that are active against a target of thera...
Active machine learning puts artificial intelligence in charge of a sequential, feedback-driven disc...
A primary aim of drug discovery is to find novel molecules that are active against a target of ther...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Drug discovery and design is a tedious and expensive process whose small chances of success necessit...
Drug discovery and design is a tedious and expensive process whose small chances of success necessit...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
We consider lead discovery as active search in a space of labelled graphs. In particular, we extend ...
Modern drug discovery has evolved into a rational design paradigm, where the vast chemical space is ...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
A primary aim of drug discovery is to find novel molecules that are active against a target of thera...
Active machine learning puts artificial intelligence in charge of a sequential, feedback-driven disc...
A primary aim of drug discovery is to find novel molecules that are active against a target of ther...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Drug discovery and design is a tedious and expensive process whose small chances of success necessit...
Drug discovery and design is a tedious and expensive process whose small chances of success necessit...