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Hierarchical closeness-based properties reveal cancer survivability and biomarker genes in molecular signaling networks

机译:基于层次接近性的特性揭示了分子信号网络中的癌症生存能力和生物标志物基因

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摘要

Specific molecular signaling networks underlie different cancer types and quantitative analyses on those cancer networks can provide useful information about cancer treatments. Their structural metrics can reveal survivability of cancer patients and be used to identify biomarker genes for early cancer detection. In this study, we devised a novel structural metric called hierarchical closeness (HC) entropy and found that it was negatively correlated with 5-year survival rates. We also made an interesting observation that a network of higher HC entropy was likely to be more robust against mutations. This finding suggested that cancers of high HC entropy tend to be incurable because their signaling networks are robust to perturbations caused by treatment. We also proposed a novel core identification method based on the reachability factor in the HC measure. The cores were permitted to decompose such that the negative relationship between HC entropy and cancer survival rate was consistently conserved in every core level. Interestingly, we observed that many promising biomarker genes for early cancer detection reside in the innermost core of a signaling network. Taken together, the proposed analyses of the hierarchical structure of cancer signaling networks may be useful in developing future novel cancer treatments.
机译:特定的分子信号网络是不同癌症类型的基础,对这些癌症网络的定量分析可以提供有关癌症治疗的有用信息。它们的结构指标可以揭示癌症患者的生存能力,并可以用于识别生物标志物基因以进行早期癌症检测。在这项研究中,我们设计了一种新颖的结构度量方法,称为层次紧密度(HC)熵,发现它与5年生存率负相关。我们还做了一个有趣的观察,即较高的HC熵网络可能更有效地抵抗突变。这一发现表明,HC熵高的癌症往往是无法治愈的,因为它们的信号网络对治疗引起的扰动具有鲁棒性。我们还提出了一种基于HC度量中可达性因子的新型核心识别方法。允许核心分解,从而在每个核心水平上始终保持HC熵与癌症生存率之间的负相关关系。有趣的是,我们观察到许多用于早期癌症检测的有前途的生物标记基因位于信号网络的最内层。综上所述,对癌症信号网络层次结构的拟议分析可能有助于开发未来的新型癌症治疗方法。

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