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HMMRATAC: a Hidden Markov ModeleR for ATAC-seq

机译:HMMRATAC:ATAC-SEQ的隐藏马尔可夫建模师

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摘要

ATAC-seq has been widely adopted to identify accessible chromatin regions across the genome. However, current data analysis still utilizes approaches initially designed for ChIP-seq or DNase-seq, without considering the transposase digested DNA fragments that contain additional nucleosome positioning information. We present the first dedicated ATAC-seq analysis tool, a semi-supervised machine learning approach named HMMRATAC. HMMRATAC splits a single ATAC-seq dataset into nucleosome-free and nucleosome-enriched signals, learns the unique chromatin structure around accessible regions, and then predicts accessible regions across the entire genome. We show that HMMRATAC outperforms the popular peak-calling algorithms on published human ATAC-seq datasets. We find that single-end sequenced or size-selected ATAC-seq datasets result in a loss of sensitivity compared to paired-end datasets without size-selection.
机译:ATAC-SEQ已被广泛采用以鉴定整个基因组的可染色染色质区域。 然而,目前的数据分析仍然利用最初为芯片-SEQ或DNASE-SEQ设计的方法,而不考虑含有额外的核心定位信息的转座酶消化的DNA片段。 我们介绍了第一个专用的ATAC-SEQ分析工具,一个名为HMMRATAC的半监控机器学习方法。 HMMRATAC将单个ATAC-SEQ Dataset分成无核小体和富核心的信号,学习围绕可接近区域的独特染色质结构,然后在整个基因组上预测可接近的区域。 我们展示了HMMRATAC优于已发布的人类ATAC-SEQ数据集的流行峰值呼叫算法。 我们发现,与没有尺寸选择的配对结束数据集相比,单端序测序或尺寸选择的ATAC-SEQ数据集导致灵敏度丢失。

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