2012
DOI: 10.1093/bioinformatics/bts405
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Bayesian assignment of gene ontology terms to gene expression experiments

Abstract: Motivation: Gene expression assays allow for genome scale analyses of molecular biological mechanisms. State-of-the-art data analysis provides lists of involved genes, either by calculating significance levels of mRNA abundance or by Bayesian assessments of gene activity. A common problem of such approaches is the difficulty of interpreting the biological implication of the resulting gene lists. This lead to an increased interest in methods for inferring high-level biological information. A common approach for… Show more

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Cited by 4 publications
(2 citation statements)
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“…A major advance made by embedding is its capability to learn without the need of existing knowledge base. Similar works had been done by inferring ontologies from similarities matrix of molecular networks either as unsupervised or semi-supervised (Dutkowski et al, 2013;Kramer, Dutkowski, Yu, Bafna, &Ideker, 2014;Li &Yip, 2016;Paul &Shill, 2018;Sykacek, 2012). However, both studies worked on similarities matrix rather than raw expression data.…”
Section: Discussionmentioning
confidence: 97%
“…A major advance made by embedding is its capability to learn without the need of existing knowledge base. Similar works had been done by inferring ontologies from similarities matrix of molecular networks either as unsupervised or semi-supervised (Dutkowski et al, 2013;Kramer, Dutkowski, Yu, Bafna, &Ideker, 2014;Li &Yip, 2016;Paul &Shill, 2018;Sykacek, 2012). However, both studies worked on similarities matrix rather than raw expression data.…”
Section: Discussionmentioning
confidence: 97%
“…This non-linearity potentially enables embedding to surpass conventional bioinformatic analysis approach in discovering biological data relationships, such as biclustering and co-expression provided by Oncomine, cBioPortal, and TCGAbiolinks. Furthermore, a recent landmark paper (Sykacek, 2012) on using a visible neural network to model yeast cell system has implicated the potential advantage of such computational inferred data (i.e., CliXO (Dutkowski et al, 2013) or entity matrix) over manually curated database [GO (The Gene Ontology Consortium, 2017)] by experts in discovering new biological process.…”
Section: Discussionmentioning
confidence: 99%