International audienceThis mini-review describes the evolution of different algorithms dedicated to the automated discovery of chemical fragments associated to (eco)toxicological endpoints. These structural alerts correspond to one of the most interesting approach of in silico toxicology due to their direct link with specific toxicological mechanisms. A number of expert systems are already available but, since the first work in this field which considered a binomial distribution of chemical fragments between two datasets, new data miners were developed and applied with success in chemoinformatics. The frequency of a chemical fragment in a dataset is often at the core of the process for the definition of its toxicological relevance. However,...
Abstract. Structural activity prediction is one of the most important tasks in chemoinformatics. The...
The ever-increasing number of chemical compounds added every year has not been accompanied by a simi...
Chemistry today has to face a critical challenge, whose success necessitates high-performance comput...
This mini-review describes the evolution of different algorithms dedicated to the automated discover...
AbstractThis mini-review describes the evolution of different algorithms dedicated to the automated ...
The design of new alerts, collections of structural features observed to result in toxicological act...
Knowledge-based systems for toxicity prediction are typically based on rules, known as structural al...
Predicting the risk of toxic and environmental effects of chemical compounds is of great importance ...
The discovery of the relationships between chemical structure and biological function is central to ...
International audienceThis study is dedicated to an introduction of a novel method that automaticall...
The toxic chemicals from the database Registry of Toxic Effects of Chemical Substances (RTECS) were ...
: The design of new alerts, that is, collections of structural features observed to result in toxico...
Computational prediction of toxicity has reached new heights as a result of decades of growth in the...
Carcinogenicity is an important toxicological endpoint that poses high concern to drug discovery. In...
This thesis deals with graph mining and proposes methods to discover contrasts between classes and a...
Abstract. Structural activity prediction is one of the most important tasks in chemoinformatics. The...
The ever-increasing number of chemical compounds added every year has not been accompanied by a simi...
Chemistry today has to face a critical challenge, whose success necessitates high-performance comput...
This mini-review describes the evolution of different algorithms dedicated to the automated discover...
AbstractThis mini-review describes the evolution of different algorithms dedicated to the automated ...
The design of new alerts, collections of structural features observed to result in toxicological act...
Knowledge-based systems for toxicity prediction are typically based on rules, known as structural al...
Predicting the risk of toxic and environmental effects of chemical compounds is of great importance ...
The discovery of the relationships between chemical structure and biological function is central to ...
International audienceThis study is dedicated to an introduction of a novel method that automaticall...
The toxic chemicals from the database Registry of Toxic Effects of Chemical Substances (RTECS) were ...
: The design of new alerts, that is, collections of structural features observed to result in toxico...
Computational prediction of toxicity has reached new heights as a result of decades of growth in the...
Carcinogenicity is an important toxicological endpoint that poses high concern to drug discovery. In...
This thesis deals with graph mining and proposes methods to discover contrasts between classes and a...
Abstract. Structural activity prediction is one of the most important tasks in chemoinformatics. The...
The ever-increasing number of chemical compounds added every year has not been accompanied by a simi...
Chemistry today has to face a critical challenge, whose success necessitates high-performance comput...