We present an algorithm to find fragments in a set of molecules that help to discriminate between different classes of, for instance, activity in a drug discovery context. Instead of carrying out a brute-force search, our method generates fragments by embedding them in all appropriate molecules in parallel and prunes the search tree based on a local order of the atoms and bonds, which results in substantially faster search by eliminating the need for frequent, computationally expensive reembeddings and by suppressing redundant search. We prove the usefulness of our algorithm by demonstrating the discovery of activity-related groups of chemical compounds in the well-known National Cancer Institute s HIV-screening dataset
Frequent pattern discovery in structured data is receiving an increasing attention in many applicat...
In real world applications sequential algorithms of data mining and data exploration are often unsu...
In recent years several algorithms for mining frequent subgraphs in graph databases have been propos...
We present an algorithm to find fragments in a set of molecules that help to discriminate between di...
We present an algorithm to find fragments in a set of molecules that help to discriminate between di...
We present an algorithm to find fragments in a set of molecules that help to discriminate between di...
Abstract. The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compo...
Abstract. This paper discusses methods to discover frequent, discriminative connected subgraphs (fra...
The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compounds that,...
Substructure mining is a well-established technique used frequently in drug discovery. Its aim is to...
Abstract. The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compo...
Abstract. The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compo...
konstanz.de Molecular substructure mining is currently an intensively studied research area. In this...
In real world applications sequential algorithms of data mining and data exploration are often unsui...
The main task of drug discovery is to find novel bioactive molecules. Bioactive molecules are for in...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicat...
In real world applications sequential algorithms of data mining and data exploration are often unsu...
In recent years several algorithms for mining frequent subgraphs in graph databases have been propos...
We present an algorithm to find fragments in a set of molecules that help to discriminate between di...
We present an algorithm to find fragments in a set of molecules that help to discriminate between di...
We present an algorithm to find fragments in a set of molecules that help to discriminate between di...
Abstract. The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compo...
Abstract. This paper discusses methods to discover frequent, discriminative connected subgraphs (fra...
The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compounds that,...
Substructure mining is a well-established technique used frequently in drug discovery. Its aim is to...
Abstract. The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compo...
Abstract. The main task of drug discovery is to find novel bioactive molecules, i.e., chemical compo...
konstanz.de Molecular substructure mining is currently an intensively studied research area. In this...
In real world applications sequential algorithms of data mining and data exploration are often unsui...
The main task of drug discovery is to find novel bioactive molecules. Bioactive molecules are for in...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicat...
In real world applications sequential algorithms of data mining and data exploration are often unsu...
In recent years several algorithms for mining frequent subgraphs in graph databases have been propos...