Analyzing differential regulatory networks modulated by continuous-state genomic features in glioblastoma multiforme

Yu-Chiao Chiu, Kai-Wen Liang, T. Hsiao, Yidong Chen, E. Chuang
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引用次数: 3

Abstract

Gene regulatory networks are a global representation of complex interactions between molecules that dictate cellular behavior. Study of a regulatory network modulated by single or multiple modulators' expression levels, including microRNAs (miRNAs) and transcription factors (TFs), in different conditions can further reveal the modulators' roles in diseases such as cancers. Existing computational methods for identifying such modulated regulatory networks are typically carried out by comparing groups of samples dichotomized with respect to the modulator status, ignoring the fact that most biological features are intrinsically continuous variables. Here we devised a sliding window-based regression scheme and proposed the Regression-based Inference of Modulation (RIM) algorithm to infer the dynamic gene regulation modulated by continuous-state modulators. We demonstrated the improvement in performance as well as computation efficiency achieved by RIM. Applying RIM to genome-wide expression profiles of 520 glioblastoma multiforme (GBM) tumors, we investigated miRNA- and TF-modulated gene regulatory networks and showed their association with dynamic cellular processes and brain-related functions in GBM. Overall, the proposed algorithm provides an efficient and robust scheme for comprehensively studying modulated gene regulatory networks.
多形性胶质母细胞瘤中连续状态基因组特征调控的差异调控网络分析
基因调控网络是决定细胞行为的分子之间复杂相互作用的全球代表。研究单个或多个调节剂(包括microRNAs (miRNAs)和转录因子(tf))在不同条件下表达水平所调节的调节网络,可以进一步揭示调节剂在癌症等疾病中的作用。现有的识别这种调制调节网络的计算方法通常是通过比较相对于调制器状态二分类的样本组来进行的,忽略了大多数生物特征本质上是连续变量的事实。本文设计了一种基于滑动窗口的回归方案,并提出了基于回归的调制推理(RIM)算法来推断连续状态调制器调制的动态基因调控。我们展示了RIM在性能和计算效率方面的改进。我们将RIM应用于520个多形性胶质母细胞瘤(GBM)肿瘤的全基因组表达谱,研究了miRNA和tf调节的基因调控网络,并显示了它们与GBM中动态细胞过程和脑相关功能的关联。总的来说,该算法为全面研究基因调控网络提供了一种高效、稳健的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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