Background: Causal graphs are an increasingly popular tool for the analysis of biological datasets. In particular, signed causal graphs--directed graphs whose edges additionally have a sign denoting upregulation or downregulation--can be used to model regulatory networks within a cell. Such models allow prediction of downstream effects of regulation of biological entities; conversely, they also enable inference of causative agents behind observed expression changes. However, due to their complex nature, signed causal graph models present special challenges with respect to assessing statistical significance. In this paper we frame and solve two fundamental computational problems that arise in practice when computing appropriate null distribu...
The use of biological networks such as protein–protein interaction and transcriptional regulatory ne...
This dissertation covers techniques for the estimation of parameters related to making causal infere...
Paper on arXiv (arXiv:1310.8341), currently in review with Scientific Reports (as of 29 May 2015).Ge...
Biological network diagrams provide a natural means to characterize the association between biologic...
Causal network inference is an important methodological challenge in biology as well as other areas ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Biological Engineering, February,...
Causal network inference is an important methodological challenge in biology as well as other areas ...
Networks represent now an important part of post‐genomic data. This gives rise to a wide variety o...
Abstract Background Factor graphs provide a flexible and general framework for specifying probabilit...
Motivation: Our work is motivated by an interest in constructing a protein–protein interaction netwo...
Getting and analyzing biological interaction networks is at the core of systems biology. To help und...
Abstract: The complexity of biological systems is encoded in gene regulatory networks. Unravelling t...
Abstract Summary Designing interventions to c...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
International audienceFor many data analysis tasks, obtaining the causal relationships between inter...
The use of biological networks such as protein–protein interaction and transcriptional regulatory ne...
This dissertation covers techniques for the estimation of parameters related to making causal infere...
Paper on arXiv (arXiv:1310.8341), currently in review with Scientific Reports (as of 29 May 2015).Ge...
Biological network diagrams provide a natural means to characterize the association between biologic...
Causal network inference is an important methodological challenge in biology as well as other areas ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Biological Engineering, February,...
Causal network inference is an important methodological challenge in biology as well as other areas ...
Networks represent now an important part of post‐genomic data. This gives rise to a wide variety o...
Abstract Background Factor graphs provide a flexible and general framework for specifying probabilit...
Motivation: Our work is motivated by an interest in constructing a protein–protein interaction netwo...
Getting and analyzing biological interaction networks is at the core of systems biology. To help und...
Abstract: The complexity of biological systems is encoded in gene regulatory networks. Unravelling t...
Abstract Summary Designing interventions to c...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
International audienceFor many data analysis tasks, obtaining the causal relationships between inter...
The use of biological networks such as protein–protein interaction and transcriptional regulatory ne...
This dissertation covers techniques for the estimation of parameters related to making causal infere...
Paper on arXiv (arXiv:1310.8341), currently in review with Scientific Reports (as of 29 May 2015).Ge...