Abstract
With the advent of ultra high-throughput sequencing technologies, increasingly researchers are turning to deep sequencing for gene expression studies. Here we present a set of rigorous methods for normalization, quantification of noise, and co-expression analysis of deep sequencing data. Using these methods on 122 cap analysis of gene expression (CAGE) samples of transcription start sites, we construct genome-wide 'promoteromes' in human and mouse consisting of a three-tiered hierarchy of transcription start sites, transcription start clusters, and transcription start regions. © 2009 Balwierz et al.; licensee BioMed Central Ltd.
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CITATION STYLE
Balwierz, P. J., Carninci, P., Daub, C. O., Kawai, J., Hayashizaki, Y., Van Belle, W., … van Nimwegen, E. (2009). Methods for analyzing deep sequencing expression data: Constructing the human and mouse promoterome with deepCAGE data. Genome Biology, 10(7). https://doi.org/10.1186/gb-2009-10-7-r79
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