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Reconstructing dynamic gene regulatory networks from sample-based transcriptional data

机译:从基于样本的转录数据重建动态基因调控网络

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The current method for reconstructing gene regulatory networks faces a dilemma concerning the study of bio-medical problems. On the one hand, static approaches assume that genes are expressed in a steady state and thus cannot exploit and describe the dynamic patterns of an evolving process. On the other hand, approaches that can describe the dynamical behaviours require time-course data, which are normally not available in many biomedical studies. To overcome the limitations of both the static and dynamic approaches, we propose a dynamic cascaded method (DCM) to reconstruct dynamic gene networks from sample-based transcriptional data. Our method is based on the intra-stage steady-rate assumption and the continuity assumption, which can properly characterize the dynamic and continuous nature of gene transcription in a biological process. Our simulation study showed that compared with static approaches, the DCM not only can reconstruct dynamical network but also can significantly improve network inference performance. We further applied our method to reconstruct the dynamic gene networks of hepatocellular carcinoma (HCC) progression. The derived HCC networks were verified by functional analysis and network enrichment analysis. Furthermore, it was shown that the modularity and network rewiring in the HCC networks can clearly characterize the dynamic patterns of HCC progression.
机译:当前重建基因调控网络的方法面临着有关生物医学问题研究的难题。一方面,静态方法假设基因以稳定状态表达,因此无法利用和描述进化过程的动态模式。另一方面,可以描述动力学行为的方法需要时程数据,这在许多生物医学研究中通常不可用。为了克服静态和动态方法的局限性,我们提出了一种动态级联方法(DCM),用于从基于样本的转录数据中重建动态基因网络。我们的方法基于阶段内稳态速率假设和连续性假设,可以正确地表征生物过程中基因转录的动态和连续性质。我们的仿真研究表明,与静态方法相比,DCM不仅可以重建动态网络,而且可以显着提高网络推理性能。我们进一步将我们的方法应用于重建肝细胞癌(HCC)进展的动态基因网络。通过功能分析和网络富集分析验证了衍生的HCC网络。此外,研究表明,HCC网络中的模块化和网络重新布线可以清楚地表征HCC进展的动态模式。

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