MLSeq: Machine learning interface for RNA-sequencing data
Yazar
ÖZTÜRK, AHMET
Eldem, Vahap
KORKMAZ, SELÇUK
Zararsiz, Gozde Erturk
Ozcetin, Erdener
KARAAĞAOĞLU, AHMET ERGUN
GÖKSÜLÜK, DİNÇER
ZARARSIZ, GÖKMEN
Üst veri
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Background and Objective: In the last decade, RNA-sequencing technology has become method-of-choice and prefered to microarray technology for gene expression based classification and differential expression analysis since it produces less noisy data. Although there are many algorithms proposed for microarray data, the number of available algorithms and programs are limited for classification of RNA-sequencing data. For this reason, we developed MLSeq, to bring not only frequently used classification algorithms but also novel approaches together and make them available to be used for classification of RNA sequencing data. This package is developed using R language environment and distributed through BIOCONDUCTOR network.
Koleksiyonlar
- Makale [92796]