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Huska, M. R.: Using machine learning to predict and better understand DNA methylation and genomic enhancers. Dissertation, viii, 143 pp., Freie Universität, Berlin (2018)
Scientists at the Max Planck Institute for Molecular Genetics describe tissue-specific formation of architectural stripes driven by enhancer activity and CTCF elements