Netmes: Assessing Gene Network Inference Algorithms by Network-Based Measures

Gene regulatory network inference (GRNI) algorithms are essential for efficiently utilizing large-scale microarray datasets to elucidate biochemical interactions among molecules in a cell. Recently, the combination of network-based error measures complemented with an ensemble approach became popular...

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Vydané v:Evolutionary Bioinformatics Ročník 2014; číslo 2014; s. 1 - 9
Hlavní autori: Altay, Gökmen, Kurt, Zeyneb, Dehmer, Matthias, Emmert-Streib, Frank
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: London, England Libertas Academica 01.01.2014
SAGE Publishing
SAGE Publications
Sage Publications Ltd. (UK)
Sage Publications Ltd
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ISSN:1176-9343, 1176-9343
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Shrnutí:Gene regulatory network inference (GRNI) algorithms are essential for efficiently utilizing large-scale microarray datasets to elucidate biochemical interactions among molecules in a cell. Recently, the combination of network-based error measures complemented with an ensemble approach became popular for assessing the inference performance of the GRNI algorithms. For this reason, we developed a software package to facilitate the usage of such metrics. In this paper, we present netmes, an R software package that allows the assessment of GRNI algorithms. The software package netmes is available from the R-Forge web site https://r-forge.r-project.org/projects/netmes/.
Bibliografia:ObjectType-Article-1
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ACADEMIC EDITOR: Jike Cui, Associate Editor
ISSN:1176-9343
1176-9343
DOI:10.4137/EBO.S13481