Publication: BayMeth: improved DNA methylation quantification for affinity capture sequencing data using a flexible Bayesian approach
BayMeth: improved DNA methylation quantification for affinity capture sequencing data using a flexible Bayesian approach
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Riebler, A., Menigatti, M., Song, J. Z., Statham, A. L., Stirzaker, C., Mahmud, N., Mein, C. A., Clark, S. J., & Robinson, M. D. (2014). BayMeth: improved DNA methylation quantification for affinity capture sequencing data using a flexible Bayesian approach. Genome Biology, 15(2), R35. https://doi.org/10.1186/gb-2014-15-2-r35
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Affinity capture of DNA methylation combined with high-throughput sequencing strikes a good balancebetween the high cost of whole genome bisulfite sequencing and the low coverage of methylationarrays. We present BayMeth, an empirical Bayes approach that uses a fully methylated control sampleto transform observed read counts into regional methylation levels. In our model, inefficient capturecan readily be distinguished from low methylation levels. BayMeth improves on existing methods,allows explicit modeling of copy number variation, a
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Riebler, A., Menigatti, M., Song, J. Z., Statham, A. L., Stirzaker, C., Mahmud, N., Mein, C. A., Clark, S. J., & Robinson, M. D. (2014). BayMeth: improved DNA methylation quantification for affinity capture sequencing data using a flexible Bayesian approach. Genome Biology, 15(2), R35. https://doi.org/10.1186/gb-2014-15-2-r35