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A computational method using the random walk with restart algorithm for identifying novel epigenetic factors

机译:使用随机散步的计算方法用重启算法来识别新颖的表观遗传因素

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Epigenetic regulation has long been recognized as a significant factor in various biological processes, such as development, transcriptional regulation, spermatogenesis, and chromosome stabilization. Epigenetic alterations lead to many human diseases, including cancer, depression, autism, and immune system defects. Although efforts have been made to identify epigenetic regulators, it remains a challenge to systematically uncover all the components of the epigenetic regulation in the genome level using experimental approaches. The advances of constructing protein-protein interaction (PPI) networks provide an excellent opportunity to identify novel epigenetic factors computationally in the genome level. In this study, we identified potential epigenetic factors by using a computational method that applied the random walk with restart (RWR) algorithm on a protein-protein interaction (PPI) network using reported epigenetic factors as seed nodes. False positives were identified by their specific roles in the PPI network or by a low-confidence interaction and a weak functional relationship with epigenetic regulators. After filtering out the false positives, 26 candidate epigenetic factors were finally accessed. According to previous studies, 22 of these are thought to be involved in epigenetic regulation, suggesting the robustness of our method. Our study provides a novel computational approach which successfully identified 26 potential epigenetic factors, paving the way on deepening our understandings on the epigenetic mechanism.
机译:表观遗传调节长期被认为是各种生物过程中的重要因素,如开发,转录调控,精子发生和染色体稳定性。表观遗传改变导致许多人类疾病,包括癌症,抑郁,自闭症和免疫系统缺陷。尽管已经努力识别表观遗传调节因子,但使用实验方法仍然是系统地揭示基因组水平中表观遗传调控的所有组分仍有挑战。构建蛋白质 - 蛋白质相互作用(PPI)网络的进展提供了在基因组水平上识别新颖的表观遗传因素的绝佳机会。在这项研究中,我们通过使用报告的表观遗传因子作为种子节点,使用将随机步行应用于蛋白质 - 蛋白质相互作用(PPI)网络的随机步行的计算方法来识别潜在的表观遗传因素。通过PPI网络中的特定角色或通过与表观遗传调节剂的低置信相互作用和弱功能关系来鉴定假阳性。过滤出误报后,最终获得26个候选表观遗传因素。根据以往的研究,其中22个被认为参与表观遗传调控,表明我们方法的稳健性。我们的研究提供了一种新颖的计算方法,该计算方法成功地确定了26个潜在的表观遗传因素,铺平了深化关于表观遗传机制的理解。

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