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SRSF shape analysis for sequencing data reveal new differentiating patterns
Institution:1. Yildiz Technical University, Department of Physics, 34220, Esenler, Istanbul, Turkey;2. Yildiz Technical University, Department of Chemistry, 34220, Esenler, Istanbul, Turkey;3. Istanbul Technical University, Department of Physics Engineering, 34469, Maslak, Istanbul, Turkey
Abstract:MotivationSequencing-based methods to examine fundamental features of the genome, such as gene expression and chromatin structure, rely on inferences from the abundance and distribution of reads derived from Illumina sequencing. Drawing sound inferences from such experiments relies on appropriate mathematical methods to model the distribution of reads along the genome, which has been challenging due to the scale and nature of these data.ResultsWe propose a new framework (SRSFseq) based on square root slope functions shape analysis to analyse Illumina sequencing data. In the new approach the basic unit of information is the density of mapped reads over region of interest located on the known reference genome. The densities are interpreted as shapes and a new shape analysis model is proposed. An equivalent of a Fisher test is used to quantify the significance of shape differences in read distribution patterns between groups of density functions in different experimental conditions. We evaluated the performance of this new framework to analyze RNA-seq data at the exon level, which enabled the detection of variation in read distributions and abundances between experimental conditions not detected by other methods. Thus, the method is a suitable supplement to the state-of-the-art count based techniques. The variety of density representations and flexibility of mathematical design allow the model to be easily adapted to other data types or problems in which the distribution of reads is to be tested. The functional interpretation and SRSF phase-amplitude separation technique give an efficient noise reduction procedure improving the sensitivity and specificity of the method.
Keywords:Next generation sequencing  RNA-seq  MNase-seq  Genomics  Functional data analysis  Dynamic time warping  Shape analysis  Statistics  Functional statistics  Square root slope functions
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