Predicting enhancers in mammalian genomes using supervised hidden Markov models.
Tobias ZehnderPhilipp BennerMartin VingronPublished in: BMC bioinformatics (2019)
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.