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Graph embedding and unsupervised learning predict genomic sub-compartments from HiC chromatin interaction data

机译:图形嵌入和无监督学习预测HIC染色质交互数据的基因组子隔室

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Chromatin interaction studies can reveal how the genome is organized into spatially confined sub-compartments in the nucleus. However, accurately identifying sub-compartments from chromatin interaction data remains a challenge in computational biology. Here, we present Sub-Compartment Identifier (SCI), an algorithm that uses graph embedding followed by unsupervised learning to predict sub-compartments using Hi-C chromatin interaction data. We find that the network topological centrality and clustering performance of SCI sub-compartment predictions are superior to those of hidden Markov model (HMM) sub-compartment predictions. Moreover, using orthogonal Chromatin Interaction Analysis by in-situ Paired-End Tag Sequencing (ChIA-PET) data, we confirmed that SCI sub-compartment prediction outperforms HMM. We show that SCI-predicted sub-compartments have distinct epigenetic marks, transcriptional activities, and transcription factor enrichment. Moreover, we present a deep neural network to predict sub-compartments using epigenome, replication timing, and sequence data. Our neural network predicts more accurate sub-compartment predictions when SCI-determined sub-compartments are used as labels for training.
机译:染色质相互作用研究可以揭示基因组如何在细胞核中被组织成空间局限性的子隔室。然而,准确地识别来自染色质交互数据的子隔室仍然是计算生物学的挑战。在这里,我们存在子隔室标识符(SCI),该算法使用曲线图嵌入,然后无监督学习,以预测使用Hi-C染色质交互数据来预测子隔室。我们发现,SCI子隔室预测的网络拓扑中心和聚类性能优于隐马尔可夫模型(HMM)子隔室预测。此外,使用原位配对结束标签测序(Chia-PET)数据的正交染色质相互作用分析,我们证实了SCI子隔室预测优于HMM。我们表明,SCI预测的子隔室具有不同的表观遗传标记,转录活动和转录因子富集。此外,我们介绍了一个深度神经网络,用于使用外延片,复制定时和序列数据来预测子隔室。当SCI确定的子隔室用作训练标签时,我们的神经网络预测更准确的子隔室预测。

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