Biological systems are driven by intricate interactions among molecules. Many methods have been developed that draw on large numbers of expression samples to infer connections between genes (or their products). The result is an aggregate network representing a single estimate for the likelihood of each interaction, or “edge,” in the network. Although informative, aggregate models fail to capture population heterogeneity. Here we propose a method to reverse engineer sample-specific networks from aggregate networks. We demonstrate our approach in several contexts, including simulated, yeast microarray, and human lymphoblastoid cell line RNA sequencing data. We use these sample-specific networks to study changes in network topology across time...
Background: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
BACKGROUND: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
Background: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
Summary: Biological systems are driven by intricate interactions among molecules. Many methods have ...
Reverse engineering approaches to constructing gene regulatory networks (GRNs) based on genome-wide ...
<div><p>Reverse engineering approaches to constructing gene regulatory networks (GRNs) based on geno...
Reverse engineering approaches to constructing gene regulatory networks (GRNs) based on genome-wide ...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Recent technological breakthroughs in single-cell RNA sequencing are revolutionizing modern experime...
Recent technological breakthroughs in single-cell RNA sequencing are revolutionizing modern experime...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Inferring comprehensive regulatory networks from high-throughput data is one of the foremost challen...
Background: Transcriptional gene regulation is one of the most important mechanisms in controlling m...
Recent technological breakthroughs in single-cell RNA sequencing are revolutionizing modern experime...
Background: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
BACKGROUND: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
Background: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
Summary: Biological systems are driven by intricate interactions among molecules. Many methods have ...
Reverse engineering approaches to constructing gene regulatory networks (GRNs) based on genome-wide ...
<div><p>Reverse engineering approaches to constructing gene regulatory networks (GRNs) based on geno...
Reverse engineering approaches to constructing gene regulatory networks (GRNs) based on genome-wide ...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Recent technological breakthroughs in single-cell RNA sequencing are revolutionizing modern experime...
Recent technological breakthroughs in single-cell RNA sequencing are revolutionizing modern experime...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Gene regulatory networks are composed of sub-networks that are often shared across biological proces...
Inferring comprehensive regulatory networks from high-throughput data is one of the foremost challen...
Background: Transcriptional gene regulation is one of the most important mechanisms in controlling m...
Recent technological breakthroughs in single-cell RNA sequencing are revolutionizing modern experime...
Background: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
BACKGROUND: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...
Background: Sparse Gaussian graphical models are popular for inferring biological networks, such as ...