Provided by: chromhmm_1.26+dfsg-3_all 

NAME
ChromHMM - Learning and analysis chromatin states using a multivariate Hidden Markov Model
SYNOPSIS
java -Xmx[GB]g -jar /usr/share/java/chromhmm.jar [options]
DESCRIPTION
ChromHMM is software for learning and characterizing chromatin states. ChromHMM can integrate multiple
chromatin datasets such as ChIP-seq data of various histone modifications to discover de novo the major
re-occuring combinatorial and spatial patterns of marks. ChromHMM is based on a multivariate Hidden
Markov Model that explicitly models the presence or absence of each chromatin mark. The resulting model
can then be used to systematically annotate a genome in one or more cell types. By automatically
computing state enrichments for large-scale functional and annotation datasets ChromHMM facilitates the
biological characterization of each state. ChromHMM also produces files with genome-wide maps of
chromatin state annotations that can be directly visualized in a genome browser.
OPTIONS
LearnModel
Takes a set of binarized data files, learns chromatin state models, and by default produces a
segmentation, generates browser output with default settings, and calls OverlapEnrichment and
NeighborhoodEnrichments with default settings for the specified genome assembly. A webpage is a
created with links to all the files and images created.
BinarizeBed
Converts a set of bed files of aligned reads into binarized data files for model learning and
optionally prints the intermediate signal files.
BinarizeBam
Converts a set of bam files of aligned reads into binarized data files for model learning and
optionally prints the intermediate signal files.
BinarizeSignal
Converts a set of signal files into binarized files.
MakeSegmentation
Takes a learned model and binarized data and outputs a segmentation.
MakeBrowserFiles
Can convert segmentation files into a browser viewable format.
OverlapEnrichment
Shows the enrichment of each state of a segmentation for a set of external data.
NeighborhoodEnrichment
Shows the enrichment of each state relative to a set of anchor positions.
CompareModels
Can compare models with different numbers of states in terms of correlation in emission
parameters.
Reorder
Allows reordering the states of the model, the columns of the emission matrix, or adding state
labels.
EvalSubset
Can be used to evaluate the extent to which a subset of marks can recover a segmentation using the
full set of marks.
StatePruning
Can be used to prune states from a model in order to initialize models when using the non-default
two pass approach.
SEE ALSO
http://compbio.mit.edu/ChromHMM/
AUTHOR
ChromHMM was written by Jason Ernst.
1.14 March 2018 ChromHMM(1)