peer reviewedBackground: Elucidating biological networks between proteins appears nowadays as one of the most important challenges in systems biology. Computational approaches to this problem are important to complement high-throughput technologies and to help biologists in designing new experiments. In this work, we focus on the completion of a biological network from various sources of experimental data. Results: We propose a new machine learning approach for the supervised inference of biological networks, which is based on a kernelization of the output space of regression trees. It inherits several features of tree-based algorithms such as interpretability, robustness to irrelevant variables, and input scalability. We applied this metho...
Predicting protein functions is an important issue in the post-genomic era. In this paper, we studie...
International audienceBACKGROUND: Much recent work in bioinformatics has focused on the inference of...
Ranking genes in functional networks according to a specific biological function is a challenging ta...
Background: Elucidating biological networks between proteins appears nowadays as one of the most imp...
International audienceThe inference of biological networks from various sources of experimental data...
Networks or graphs provide a natural representation of molecular biology knowledge, in particular to...
National audienceIn this work, we address the problem of protein-protein interaction network inferen...
International audienceMOTIVATION: An increasing number of observations support the hypothesis that m...
There is significant interest in inferring the structure of subcellular networks of interaction. Her...
We review a recent trend in computational systems biology which aims at using pattern recognition al...
Nowadays, machine learning techniques are widely used for extracting knowledge from data in a large ...
In this paper we apply machine learning methods for predicting protein interactions in fungal secret...
Biological systems are complex in that they comprise large number of interacting entities, and their...
In this paper we apply machine learning methods for predicting protein interactions in fungal secret...
In this paper we apply machine learning methods for predicting protein interactions in fungal secret...
Predicting protein functions is an important issue in the post-genomic era. In this paper, we studie...
International audienceBACKGROUND: Much recent work in bioinformatics has focused on the inference of...
Ranking genes in functional networks according to a specific biological function is a challenging ta...
Background: Elucidating biological networks between proteins appears nowadays as one of the most imp...
International audienceThe inference of biological networks from various sources of experimental data...
Networks or graphs provide a natural representation of molecular biology knowledge, in particular to...
National audienceIn this work, we address the problem of protein-protein interaction network inferen...
International audienceMOTIVATION: An increasing number of observations support the hypothesis that m...
There is significant interest in inferring the structure of subcellular networks of interaction. Her...
We review a recent trend in computational systems biology which aims at using pattern recognition al...
Nowadays, machine learning techniques are widely used for extracting knowledge from data in a large ...
In this paper we apply machine learning methods for predicting protein interactions in fungal secret...
Biological systems are complex in that they comprise large number of interacting entities, and their...
In this paper we apply machine learning methods for predicting protein interactions in fungal secret...
In this paper we apply machine learning methods for predicting protein interactions in fungal secret...
Predicting protein functions is an important issue in the post-genomic era. In this paper, we studie...
International audienceBACKGROUND: Much recent work in bioinformatics has focused on the inference of...
Ranking genes in functional networks according to a specific biological function is a challenging ta...