Genetic interactions confer robustness on cells in response to genetic perturbations. This often occurs through molecular buffering mechanisms that can be predicted by using, among other features, the degree of coexpression between genes, which is commonly estimated through marginal measures of association such as Pearson or Spearman correlation coefficients. However, marginal correlations are sensitive to indirect effects and often partial correlations are used instead. Yet, partial correlations convey no information about the (linear) influence of the coexpressed genes on the entire multivariate system, which may be crucial to discriminate functional associations from genetic interactions. To address these two shortcomings, here we propos...
International audienceDescribing at a genomic scale how mutations in different genes influence one a...
Abstract — In this paper we suggest a method to reconstruct the gene interaction network of the cell...
We analyze gene expression time-series data of yeast (S. cerevisiae) measured along two full cell-cy...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Despite the emerging experimental techniques for perturbing multiple genes and measuring their quant...
With an abundance of data resulting from high-throughput technologies, like DNA microarrays, a race ...
Large amounts of gene expression data available in the public realm, provide us with the opportunity...
Global quantitative analysis of genetic interactions provides a powerful approach for deciphering th...
Genetic interactions help map biological processes and their functional relationships. A genetic int...
<div><p>Genetic interactions help map biological processes and their functional relationships. A gen...
Global quantitative analysis of genetic interactions is a powerful approach for deciphering the role...
Genetic interactions are being quantitatively characterized in a comprehensive way in several model ...
International audienceDescribing at a genomic scale how mutations in different genes influence one a...
Abstract — In this paper we suggest a method to reconstruct the gene interaction network of the cell...
We analyze gene expression time-series data of yeast (S. cerevisiae) measured along two full cell-cy...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Genetic interactions confer robustness on cells in response to genetic perturbations. This often occ...
Despite the emerging experimental techniques for perturbing multiple genes and measuring their quant...
With an abundance of data resulting from high-throughput technologies, like DNA microarrays, a race ...
Large amounts of gene expression data available in the public realm, provide us with the opportunity...
Global quantitative analysis of genetic interactions provides a powerful approach for deciphering th...
Genetic interactions help map biological processes and their functional relationships. A genetic int...
<div><p>Genetic interactions help map biological processes and their functional relationships. A gen...
Global quantitative analysis of genetic interactions is a powerful approach for deciphering the role...
Genetic interactions are being quantitatively characterized in a comprehensive way in several model ...
International audienceDescribing at a genomic scale how mutations in different genes influence one a...
Abstract — In this paper we suggest a method to reconstruct the gene interaction network of the cell...
We analyze gene expression time-series data of yeast (S. cerevisiae) measured along two full cell-cy...