Recent advances in experimental biology studies have produced large amount of molecular activity data. In particular, individual patient data provide non-time series information for the molecular activities in disease conditions. The challenge is how to design effective algorithms to infer regulatory networks using the individual patient datasets and consequently address the issue of network symmetry. This work is aimed at developing an efficient pipeline to reverse-engineer regulatory networks based on the individual patient proteomic data. The first step uses the SCOUT algorithm to infer the pseudo-time trajectory of individual patients. Then the path-consistent method with part mutual information is used to construct a static network tha...
peer reviewedWe discuss the propagation of constraints in eukaryotic interaction networks in relatio...
Recent studies have suggested that molecular interaction networks within cells could be decomposed i...
Advances in experimental techniques resulted in abundant genomic, transcriptomic, epigenomic, and pr...
International audienceQuantitative proteomics allows the characterization of molecular changes betwe...
This work focuses on the use of network graph theory in biological networks. I explore how network g...
Abstract Background Most methods that integrate network and mutation data to study cancer focus on t...
Abstract: We present a computational approach for studying the effect of potential drug combinations...
We consider statistical inference for potentially heterogeneous patterns of association characterizi...
The overall goal is to establish a reliable human protein-protein interaction network and develop co...
Understanding the pathological properties of dysregulated protein networks in individual patients’ t...
Understanding networks of biological interactions is essential to all life sciences. Nowadays, a lar...
BACKGROUND: We present a statistical method of analysis of biological networks based on the exponent...
International audienceWe discuss the propagation of constraints in eukaryotic interaction networks i...
The functional characterization of all genes and their gene products is the main challenge of the po...
In the field of cancer biology, numerous genes or proteins form extremely complex regulatory network...
peer reviewedWe discuss the propagation of constraints in eukaryotic interaction networks in relatio...
Recent studies have suggested that molecular interaction networks within cells could be decomposed i...
Advances in experimental techniques resulted in abundant genomic, transcriptomic, epigenomic, and pr...
International audienceQuantitative proteomics allows the characterization of molecular changes betwe...
This work focuses on the use of network graph theory in biological networks. I explore how network g...
Abstract Background Most methods that integrate network and mutation data to study cancer focus on t...
Abstract: We present a computational approach for studying the effect of potential drug combinations...
We consider statistical inference for potentially heterogeneous patterns of association characterizi...
The overall goal is to establish a reliable human protein-protein interaction network and develop co...
Understanding the pathological properties of dysregulated protein networks in individual patients’ t...
Understanding networks of biological interactions is essential to all life sciences. Nowadays, a lar...
BACKGROUND: We present a statistical method of analysis of biological networks based on the exponent...
International audienceWe discuss the propagation of constraints in eukaryotic interaction networks i...
The functional characterization of all genes and their gene products is the main challenge of the po...
In the field of cancer biology, numerous genes or proteins form extremely complex regulatory network...
peer reviewedWe discuss the propagation of constraints in eukaryotic interaction networks in relatio...
Recent studies have suggested that molecular interaction networks within cells could be decomposed i...
Advances in experimental techniques resulted in abundant genomic, transcriptomic, epigenomic, and pr...