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Publication Date: 01 Mar 2008
Journal: Bioinformatics and Biology Insights 2008:2 75-94
Abstract Yurong Xin1,2, Giulio Quarta1, Hin Hark Gan1 and Tamar Schlick1,2
1Department of Chemistry and 2Courant Institute of Mathematical Sciences, 251 Mercer Street, New York University, New York, NY 10012, U.S.A.
Abstract
Recent studies of mammalian transcriptomes have identified numerous RNA transcripts that do not code for proteins; their identity, however, is largely unknown. Here we explore an approach based on sequence randomness patterns to discern different RNA classes. The relative z-score we use helps identify the known ncRNA class from the genome, intergene and intron classes. This leads us to a fractional ncRNA measure of putative ncRNA datasets which we model as a mixture of genuine ncRNAs and other transcripts derived from genomic, intergenic and intronic sequences. We use this model to analyze six representative datasets identified by the FANTOM3 project and two computational approaches based on comparative analysis (RNAz and EvoFold). Our analysis suggests fewer ncRNAs than estimated by DNA sequencing and comparative analysis, but the verity of our approach and its prediction requires more extensive experimental RNA data.
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I had an excellent experience publishing our review article in Clinical Medicine Reviews. The managing editor was very helpful and the process was very timely and transparent.Professor Jonathan A. Bernstein (University of Cincinnati College of Medicine, Division of Immunology, Allergy Section, Cincinnati, OH, USA) What our authors say
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