Comprehensive modeling of microRNA targets predicts functional non-conserved and non-canonical sites
Doron Betel(Memorial Sloan Kettering Cancer Center), Anjali Koppal(Columbia University), Phaedra Agius(Memorial Sloan Kettering Cancer Center), Chris Sander(Memorial Sloan Kettering Cancer Center), Christina S. Leslie(Memorial Sloan Kettering Cancer Center)
Cited by 1,629Open Access
Abstract
mirSVR is a new machine learning method for ranking microRNA target sites by a down-regulation score. The algorithm trains a regression model on sequence and contextual features extracted from miRanda-predicted target sites. In a large-scale evaluation, miRanda-mirSVR is competitive with other target prediction methods in identifying target genes and predicting the extent of their downregulation at the mRNA or protein levels. Importantly, the method identifies a significant number of experimentally determined non-canonical and non-conserved sites.
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