染色质
基因组
表观遗传学
注释
计算生物学
计算机科学
生物
隐马尔可夫模型
基因组计划
遗传学
人工智能
DNA
基因
DNA甲基化
基因表达
作者
Jason Ernst,Manolis Kellis
出处
期刊:Nature Protocols
[Nature Portfolio]
日期:2017-11-09
卷期号:12 (12): 2478-2492
被引量:761
标识
DOI:10.1038/nprot.2017.124
摘要
This protocol describes how to use ChromHMM, a robust open-source software package that enables the learning of chromatin states, annotates their occurrences across the genome, and facilitates their biological interpretation. Noncoding DNA regions have central roles in human biology, evolution, and disease. ChromHMM helps to annotate the noncoding genome using epigenomic information across one or multiple cell types. It combines multiple genome-wide epigenomic maps, and uses combinatorial and spatial mark patterns to infer a complete annotation for each cell type. ChromHMM learns chromatin-state signatures using a multivariate hidden Markov model (HMM) that explicitly models the combinatorial presence or absence of each mark. ChromHMM uses these signatures to generate a genome-wide annotation for each cell type by calculating the most probable state for each genomic segment. ChromHMM provides an automated enrichment analysis of the resulting annotations to facilitate the functional interpretations of each chromatin state. ChromHMM is distinguished by its modeling emphasis on combinations of marks, its tight integration with downstream functional enrichment analyses, its speed, and its ease of use. Chromatin states are learned, annotations are produced, and enrichments are computed within 1 d.
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