Inferring gene expression from ribosomal promoter sequences, a crowdsourcing approach

dc.contributor.author Meyer, Pablo
dc.contributor.author Siwo, Geoffrey
dc.contributor.author Zeevi, Danny
dc.contributor.author Sharon, Eilon
dc.contributor.author Norel, Raquel
dc.contributor.author Segal, Eran
dc.contributor.author Stolovitzky, Gustavo
dc.contributor.author Rider, Andrew K.
dc.contributor.author Tan, Asako
dc.contributor.author Pinapati, Richard S.
dc.contributor.author Emrich, Scott
dc.contributor.author Chawla, Nitesh
dc.contributor.author Ferdig, Michael T.
dc.contributor.author Tung, Yi An
dc.contributor.author Chen, Yong Syuan
dc.contributor.author Chen, Mei Ju May
dc.contributor.author Chen, Chien Yu
dc.contributor.author Knight, Jason M.
dc.contributor.author Sahraeian, Sayed Mohammad Ebrahim
dc.contributor.author Esfahani, Mohammad Shahrokh
dc.contributor.author Dreos, Rene
dc.contributor.author Bucher, Philipp
dc.contributor.author Maier, Ezekiel
dc.contributor.author Saeys, Yvan
dc.contributor.author Szczurek, Ewa
dc.contributor.author Myšicková, Alena
dc.contributor.author Vingron, Martin
dc.contributor.author Klein, Holger
dc.contributor.author Kielbasa, Szymon M.
dc.contributor.author Knisley, Jeff
dc.contributor.author Bonnell, Jeff
dc.contributor.author Knisley, Debra
dc.contributor.author Kursa, Miron B.
dc.contributor.author Rudnicki, Witold R.
dc.contributor.author Bhattacharjee, Madhuchhanda
dc.contributor.author Sillanpää, Mikko J.
dc.contributor.author Yeung, James
dc.contributor.author Meysman, Pieter
dc.contributor.author Rodríguez, Aminael Sánchez
dc.contributor.author Engelen, Kristof
dc.contributor.author Marchal, Kathleen
dc.contributor.author Huang, Yezhou
dc.contributor.author Mordelet, Fantine
dc.contributor.author Hartemink, Alexander
dc.contributor.author Pinello, Luca
dc.contributor.author Yuan, Guo Cheng
dc.date.accessioned 2022-03-27T04:08:23Z
dc.date.available 2022-03-27T04:08:23Z
dc.date.issued 2013-11-01
dc.description.abstract The Gene Promoter Expression Prediction challenge consisted of predicting gene expression from promoter sequences in a previously unknown experimentally generated data set. The challenge was presented to the community in the framework of the sixth Dialogue for Reverse Engineering Assessments and Methods (DREAM6), a community effort to evaluate the status of systems biology modeling methodologies. Nucleotide-specific promoter activity was obtained by measuring fluorescence from promoter sequences fused upstream of a gene for yellow fluorescence protein and inserted in the same genomic site of yeast Saccharomyces cerevisiae. Twenty-one teams submitted results predicting the expression levels of 53 different promoters from yeast ribosomal protein genes. Analysis of participant predictions shows that accurate values for low-expressed and mutated promoters were difficult to obtain, although in the latter case, only when the mutation induced a large change in promoter activity compared to the wild-type sequence. As in previous DREAM challenges, we found that aggregation of participant predictions provided robust results, but did not fare better than the three best algorithms. Finally, this study not only provides a benchmark for the assessment of methods predicting activity of a specific set of promoters from their sequence, but it also shows that the top performing algorithm, which used machine-learning approaches, can be improved by the addition of biological features such as transcription factor binding sites.
dc.identifier.citation Genome Research. v.23(11)
dc.identifier.issn 10889051
dc.identifier.uri 10.1101/gr.157420.113
dc.identifier.uri http://genome.cshlp.org/lookup/doi/10.1101/gr.157420.113
dc.identifier.uri https://dspace.uohyd.ac.in/handle/1/6438
dc.title Inferring gene expression from ribosomal promoter sequences, a crowdsourcing approach
dc.type Journal. Article
dspace.entity.type
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