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多形性胶质母细胞瘤(GBM)微小RNA动态的意外性分析揭示了肿瘤特异性表型。

Surprisal analysis of Glioblastoma Multiform (GBM) microRNA dynamics unveils tumor specific phenotype.

作者信息

Zadran Sohila, Remacle Francoise, Levine Raphael

机构信息

Institute of Molecular Medicine, David Geffen School of Medicine, University of California Los Angeles, Los Angeles, California, United States of America.

Department of Chemistry, B6c, University of Liege, Liege, Belgium.

出版信息

PLoS One. 2014 Sep 29;9(9):e108171. doi: 10.1371/journal.pone.0108171. eCollection 2014.

Abstract

Gliomablastoma multiform (GBM) is the most fatal form of all brain cancers in humans. Currently there are limited diagnostic tools for GBM detection. Here, we applied surprisal analysis, a theory grounded in thermodynamics, to unveil how biomolecule energetics, specifically a redistribution of free energy amongst microRNAs (miRNAs), results in a system deviating from a non-cancer state to the GBM cancer -specific phenotypic state. Utilizing global miRNA microarray expression data of normal and GBM patients tumors, surprisal analysis characterizes a miRNA system response capable of distinguishing GBM samples from normal tissue biopsy samples. We indicate that the miRNAs contributing to this system behavior is a disease phenotypic state specific to GBM and is therefore a unique GBM-specific thermodynamic signature. MiRNAs implicated in the regulation of stochastic signaling processes crucial in the hallmarks of human cancer, dominate this GBM-cancer phenotypic state. With this theory, we were able to distinguish with high fidelity GBM patients solely by monitoring the dynamics of miRNAs present in patients' biopsy samples. We anticipate that the GBM-specific thermodynamic signature will provide a critical translational tool in better characterizing cancer types and in the development of future therapeutics for GBM.

摘要

多形性胶质母细胞瘤(GBM)是人类所有脑癌中最致命的一种。目前,用于GBM检测的诊断工具有限。在此,我们应用了基于热力学的意外分析理论,以揭示生物分子能量学,特别是微小RNA(miRNA)之间自由能的重新分布,是如何导致系统从非癌症状态转变为GBM癌症特异性表型状态的。利用正常患者和GBM患者肿瘤的全局miRNA微阵列表达数据,意外分析表征了一种能够区分GBM样本与正常组织活检样本的miRNA系统反应。我们指出,促成这种系统行为的miRNA是GBM特有的疾病表型状态,因此是一种独特的GBM特异性热力学特征。参与调控对人类癌症特征至关重要的随机信号传导过程的miRNA,主导了这种GBM癌症表型状态。基于这一理论,我们仅通过监测患者活检样本中miRNA的动态,就能以高保真度区分GBM患者。我们预计,GBM特异性热力学特征将为更好地表征癌症类型以及开发未来GBM治疗方法提供关键的转化工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/49dc/4180445/d1ce8d913569/pone.0108171.g001.jpg

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