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Chromatin module inference on cellular trajectories identifies key transition points and poised epigenetic states in diverse developmental processes

机译:染色蛋白模块蜂窝轨迹的推断识别在不同发展过程中的关键过渡点和预期的表观遗传状态

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Changes in chromatin state play important roles in cell fate transitions. Current computational approaches to analyze chromatin modifications across multiple cell types do not model how the cell types are related on a lineage or over time. To overcome this limitation, we developed a method called Chromatin Module INference on Trees (CMINT), a probabilistic clustering approach to systematically capture chromatin state dynamics across multiple cell types. Compared to existing approaches, CMINT can handle complex lineage topologies, capture higher quality clusters, and reliably detect chromatin transitions between cell types. We applied CMINT to gain novel insights in two complex processes: reprogramming to induced pluripotent stem cells (iPSCs) and hematopoiesis. In reprogramming, chromatin changes could occur without large gene expression changes, different combinations of activating marks were associated with specific reprogramming factors, there was an order of acquisition of chromatin marks at pluripotency loci, and multivalent states (comprising previously undetermined combinations of activating and repressive histone modifications) were enriched for CTCF. In the hematopoietic system, we defined critical decision points in the lineage tree, identified regulatory elements that were enriched in cell-type-specific regions, and found that the underlying chromatin state was achieved by specific erasure of preexisting chromatin marks in the precursor cell or by de novo assembly. Our method provides a systematic approach to model the dynamics of chromatin state to provide novel insights into the relationships among cell types in diverse cell-fate specification processes.
机译:染色质状态的变化在细胞命运转换中发挥重要作用。分析多个单元格类型的染色质修改的当前计算方法不会模拟细胞类型如何在谱系上或随时间相关。为了克服这种限制,我们开发了一种称为染色质模块推断的方法(CMINT),概率聚类方法,以跨多个细胞类型系统捕获染色质状态动态。与现有方法相比,CMINT可以处理复杂的谱系拓扑,捕获更高质量的簇,并且可靠地检测细胞类型之间的染色质转变。我们应用CMINT在两个复杂的过程中获得新颖的见解:重新编程为诱导多能干细胞(IPSC)和血液缺陷。在重新编程中,染色质变化可能发生没有大的基因表达的变化,激活标记的不同组合与特定的重编程因子相关,存在多能性基因座和多价状态的染色质标记的获取命令(包括先前未确定的激活和压抑的组合组蛋白修饰富集CTCF。在造血系统中,我们在谱系中定义了谱系中的关键决策点,确定了富含细胞类型特异性区域的调节元件,发现通过在前体细胞中的预先存在的染色质标记的特定擦除来实现潜在的染色质状态通过德诺瓦集会。我们的方法提供了一种系统的方法来模拟染色质状态的动态,以提供对不同细胞命运规范过程中细胞类型之间关系的新颖见解。

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