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dc.contributor.authorZararsiz, Gozde Erturk
dc.contributor.authorEldem, Vahap
dc.contributor.authorKorkmaz, Selcuk
dc.contributor.authorDuru, Izzet Parug
dc.contributor.authorÖZTÜRK, AHMET
dc.contributor.authorZararsiz, Gokmen
dc.contributor.authorGoksuluk, Dincer
dc.date.accessioned2021-03-06T20:09:46Z
dc.date.available2021-03-06T20:09:46Z
dc.date.issued2017
dc.identifier.citationZararsiz G., Goksuluk D., Korkmaz S., Eldem V., Zararsiz G. E. , Duru I. P. , ÖZTÜRK A., "A comprehensive simulation study on classification of RNA-Seq data", PLOS ONE, cilt.12, sa.8, 2017
dc.identifier.issn1932-6203
dc.identifier.otherav_f908dbc6-759a-4112-85b3-58bf9d263e6d
dc.identifier.othervv_1032021
dc.identifier.urihttp://hdl.handle.net/20.500.12627/163116
dc.identifier.urihttps://doi.org/10.1371/journal.pone.0182507
dc.description.abstractRNA sequencing (RNA-Seq) is a powerful technique for the gene-expression profiling of organisms that uses the capabilities of next-generation sequencing technologies. Developing gene-expression-based classification algorithms is an emerging powerful method for diagnosis, disease classification and monitoring at molecular level, as well as providing potential markers of diseases. Most of the statistical methods proposed for the classification of gene-expression data are either based on a continuous scale (eg. microarray data) or require a normal distribution assumption. Hence, these methods cannot be directly applied to RNASeq data since they violate both data structure and distributional assumptions. However, it is possible to apply these algorithms with appropriate modifications to RNA-Seq data. One way is to develop count-based classifiers, such as Poisson linear discriminant analysis and negative binomial linear discriminant analysis. Another way is to bring the data closer to microarrays and apply microarray-based classifiers. In this study, we compared several classifiers including PLDA with and without power transformation, NBLDA, single SVM, bagging SVM (bagSVM), classification and regression trees (CART), and random forests (RF). We also examined the effect of several parameters such as overdispersion, sample size, number of genes, number of classes, differential-expression rate, and the transformation method on model performances. A comprehensive simulation study is conducted and the results are compared with the results of two miRNA and two mRNA experimental datasets. The results revealed that increasing the sample size, differential-expression rate and decreasing the dispersion parameter and number of groups lead to an increase in classification accuracy. Similar with differential-expression studies, the classification of RNA-Seq data requires careful attention when handling data overdispersion. We conclude that, as a count-based classifier, the power transformed PLDA and, as a microarray-based classifier, vst or rlog transformed RF and SVM classifiers may be a good choice for classification. An R/BIOCONDUCTOR package, MLSeq, is freely available at https://www. bioconductor. org/packages/release/bioc/ html/MLSeq. html.
dc.language.isoeng
dc.subjectTemel Bilimler
dc.subjectÇOK DİSİPLİNLİ BİLİMLER
dc.subjectDoğa Bilimleri Genel
dc.subjectTemel Bilimler (SCI)
dc.titleA comprehensive simulation study on classification of RNA-Seq data
dc.typeMakale
dc.relation.journalPLOS ONE
dc.contributor.departmentTurcosa Analyt Solut Ltd Co , ,
dc.identifier.volume12
dc.identifier.issue8
dc.contributor.firstauthorID85896


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