Sneha Mitra, Jianling Zhong, David M MacAlpine, Alexander J Hartemink
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引用次数: 0
摘要
染色质是细胞核内 DNA 和蛋白质的紧密包装结构。不同蛋白质复合物沿 DNA 的排列会调节基因表达,并受基因表达的调节。因此,测量不同转录因子(TFs)和核糖体的结合位置和占据水平对于了解基因调控至关重要。基于抗体的染色质占有率检测方法能够确定特定 DNA 结合因子的结合位点,但每次只能确定一个因子。另一方面,ATAC-seq、DNase-seq和MNase-seq等表观基因组可及性数据能让人深入了解沿基因组结合的所有因子的染色质景观,但对这些因子的身份却知之甚少。在这里,我们介绍一种多变量状态空间模型 RoboCOP,它整合了来自表观基因组可及性数据和核苷酸序列的染色质信息,可同时计算数百个不同因子的核小体和 TF 占位的全基因组概率分数。RoboCOP 可以应用于任何表观基因组数据集,定量分析任何生物体的染色质可及性,但在这里我们将其应用于 MNase-seq 数据,以阐明整个酵母基因组中核小体和 150 个 TF 的蛋白质结合情况。利用文献中现有的蛋白质结合数据集,我们发现我们的模型能更准确地预测这些因子在全基因组的结合情况。
RoboCOP: Multivariate State Space Model Integrating Epigenomic Accessibility Data to Elucidate Genome-Wide Chromatin Occupancy.
Chromatin is the tightly packaged structure of DNA and protein within the nucleus of a cell. The arrangement of different protein complexes along the DNA modulates and is modulated by gene expression. Measuring the binding locations and level of occupancy of different transcription factors (TFs) and nucleosomes is therefore crucial to understanding gene regulation. Antibody-based methods for assaying chromatin occupancy are capable of identifying the binding sites of specific DNA binding factors, but only one factor at a time. On the other hand, epigenomic accessibility data like ATAC-seq, DNase-seq, and MNase-seq provide insight into the chromatin landscape of all factors bound along the genome, but with minimal insight into the identities of those factors. Here, we present RoboCOP, a multivariate state space model that integrates chromatin information from epigenomic accessibility data with nucleotide sequence to compute genome-wide probabilistic scores of nucleosome and TF occupancy, for hundreds of different factors at once. RoboCOP can be applied to any epigenomic dataset that provides quantitative insight into chromatin accessibility in any organism, but here we apply it to MNase-seq data to elucidate the protein-binding landscape of nucleosomes and 150 TFs across the yeast genome. Using available protein-binding datasets from the literature, we show that our model more accurately predicts the binding of these factors genome-wide.