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Publication | Open Access

Predicting enhancers in mammalian genomes using supervised hidden Markov models

16

Citations

45

References

2019

Year

Abstract

eHMM predicts active enhancers based on data from chromatin accessibility assays and a minimal set of histone modification ChIP-seq experiments. In comparison to other 'black box' methods its parameters are easy to interpret. eHMM can be used as a stand-alone tool for enhancer prediction without the need for additional training or a tuning of parameters. The high spatial precision of enhancer predictions gives valuable targets for potential knockout experiments or downstream analyses such as motif search.

References

YearCitations

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