Network propagation refers to a class of algorithms that integrate information from input data across connected nodes in a given network. These algorithms have wide applications in systems biology, protein function prediction, inferring condition-specifically altered sub-networks, and prioritizing disease genes. Despite the popularity of network propagation, there is a lack of comparative analyses of different algorithms on real data and little guidance on how to select and parameterize the various algorithms. Here, we address this problem by analyzing different combinations of network normalization and propagation methods and by demonstrating schemes for the identification of optimal parameter settings on real proteome and transcriptome da...
In line with the advances in high-throughput technologies, multiple omic datasets have accumulated t...
Motivation: Graphs or networks are common ways of depicting information. In biology in particular, m...
Motivation Several molecular events are known to be cancer-related, including genomic aberrations...
A relation exists between network proximity of molecular entities in interaction networks, functiona...
The advent of advanced high-throughput biological technologies provides opportunities to measure the...
Network propagation is a central tool in biological research. While a number of variants and normali...
With the advent of big data, scientists are collecting biological data faster than they have in the ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
Network propagation is a central tool in biological research. While a number of variants and normali...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
<div><p>High-throughput, ‘omic’ methods provide sensitive measures of biological responses to pertur...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
The aim of this thesis is to provide a framework for the estimation and analysis of transcription ne...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...
In line with the advances in high-throughput technologies, multiple omic datasets have accumulated t...
Motivation: Graphs or networks are common ways of depicting information. In biology in particular, m...
Motivation Several molecular events are known to be cancer-related, including genomic aberrations...
A relation exists between network proximity of molecular entities in interaction networks, functiona...
The advent of advanced high-throughput biological technologies provides opportunities to measure the...
Network propagation is a central tool in biological research. While a number of variants and normali...
With the advent of big data, scientists are collecting biological data faster than they have in the ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
Network propagation is a central tool in biological research. While a number of variants and normali...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
One methodology that has met success to infer gene networks from gene expression data is based upon ...
<div><p>High-throughput, ‘omic’ methods provide sensitive measures of biological responses to pertur...
For many complex diseases the cause/mechanism can be tied not to a single gene and in order to cope ...
The aim of this thesis is to provide a framework for the estimation and analysis of transcription ne...
A large number and variety of genome-wide genomics and proteomics datasets are now available for mod...
In line with the advances in high-throughput technologies, multiple omic datasets have accumulated t...
Motivation: Graphs or networks are common ways of depicting information. In biology in particular, m...
Motivation Several molecular events are known to be cancer-related, including genomic aberrations...