Abstract Background Functional networks play an important role in the analysis of biological processes and systems. The inference of these networks from high-throughput (-omics) data is an area of intense research. So far, the similarity-based inference paradigm (e.g. gene co-expression) has been the most popular approach. It assumes a functional relationship between genes which are expressed at similar levels across different samples. An alternative to this paradigm is the inference of relationships from the structure of machine learning models. These models are able to capture complex relationships between variables, that often are different/complementary to the similarity-based methods. Results We propose a protocol to infer functional n...
It remains unclear whether causal, rather than merely correlational, relationships in molecular netw...
Motivation: Gene regulatory network (GRN) inference reveals the influences genes have on one another...
Uncovering the interpretability of models for complex health-related problems is a crucial task that...
<p>FuNeL is a protocol to infer functional networks from machine learning models. It is a general ap...
Most machine learning-based methods predict outcomes rather than understanding causality. Machine le...
Mapping of the human genome has been instrumental in understanding diseasescaused by changes in sing...
Abstract Background Estimation of functional connectivity in gene sets derived from genome-wide or o...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
Background: Computational methods that make use of heterogeneous biological datasets to predict gene...
Background: Protein-protein interaction (PPI) networks carry vital information about proteins’ funct...
<p>(A) A functional relationship network is constructed for each organism through Bayesian integrati...
Abstract The use of networks to analyze biological data, such as large gene or protein expression da...
textHigh-throughput technology is changing the face of research biology, generating an ever growing ...
Understanding the role of genes in human disease is of high importance. However, identifying genes a...
MOTIVATION: Although many network inference algorithms have been presented in the bioinformatics lit...
It remains unclear whether causal, rather than merely correlational, relationships in molecular netw...
Motivation: Gene regulatory network (GRN) inference reveals the influences genes have on one another...
Uncovering the interpretability of models for complex health-related problems is a crucial task that...
<p>FuNeL is a protocol to infer functional networks from machine learning models. It is a general ap...
Most machine learning-based methods predict outcomes rather than understanding causality. Machine le...
Mapping of the human genome has been instrumental in understanding diseasescaused by changes in sing...
Abstract Background Estimation of functional connectivity in gene sets derived from genome-wide or o...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
Background: Computational methods that make use of heterogeneous biological datasets to predict gene...
Background: Protein-protein interaction (PPI) networks carry vital information about proteins’ funct...
<p>(A) A functional relationship network is constructed for each organism through Bayesian integrati...
Abstract The use of networks to analyze biological data, such as large gene or protein expression da...
textHigh-throughput technology is changing the face of research biology, generating an ever growing ...
Understanding the role of genes in human disease is of high importance. However, identifying genes a...
MOTIVATION: Although many network inference algorithms have been presented in the bioinformatics lit...
It remains unclear whether causal, rather than merely correlational, relationships in molecular netw...
Motivation: Gene regulatory network (GRN) inference reveals the influences genes have on one another...
Uncovering the interpretability of models for complex health-related problems is a crucial task that...