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整合多组学数据以鉴定子宫内膜癌中失调的模块。

Integrating multi-omics data to identify dysregulated modules in endometrial cancer.

出版信息

Brief Funct Genomics. 2022 Jul 27;21(4):310-324. doi: 10.1093/bfgp/elac010.

Abstract

Cancer is generally caused by genetic mutations, and differentially expressed genes are closely associated with genetic mutations. Therefore, mutated genes and differentially expressed genes can be used to study the dysregulated modules in cancer. However, it has become a big challenge in cancer research how to accurately and effectively detect dysregulated modules that promote cancer in massive data. In this study, we propose a network-based method for identifying dysregulated modules (Netkmeans). Firstly, the study constructs an undirected-weighted gene network based on the characteristics of high mutual exclusivity, high coverage and complex network topology among genes widely existed in the genome. Secondly, the study constructs a comprehensive evaluation function to select the number of clusters scientifically and effectively. Finally, the K-means clustering method is applied to detect the dysregulated modules. Compared with the results detected by IBA and CCEN methods, the results of Netkmeans proposed in this study have higher statistical significance and biological relevance. Besides, compared with the dysregulated modules detected by MCODE, CFinder and ClusterONE, the results of Netkmeans have higher accuracy, precision and F-measure. The experimental results show that the multiple dysregulated modules detected by Netkmeans are essential in the generation, development and progression of cancer, and thus they play a vital role in the precise diagnosis, treatment and development of new medications for cancer patients.

摘要

癌症通常是由基因突变引起的,差异表达基因与基因突变密切相关。因此,突变基因和差异表达基因可用于研究癌症中失调的模块。然而,如何在海量数据中准确有效地检测促进癌症的失调模块已成为癌症研究中的一大挑战。在本研究中,我们提出了一种基于网络的方法来识别失调模块(Netkmeans)。首先,该研究基于基因之间广泛存在的高互斥性、高覆盖度和复杂网络拓扑结构的特点,构建了一个无向加权基因网络。其次,该研究构建了一个综合评价函数,以科学有效地选择聚类的数量。最后,应用 K-means 聚类方法来检测失调模块。与 IBA 和 CCEN 方法检测到的结果相比,本研究中提出的 Netkmeans 的结果具有更高的统计意义和生物学相关性。此外,与 MCODE、CFinder 和 ClusterONE 检测到的失调模块相比,Netkmeans 的结果具有更高的准确性、精度和 F 值。实验结果表明,Netkmeans 检测到的多个失调模块在癌症的发生、发展和进展中至关重要,因此它们在癌症患者的精确诊断、治疗和新药物开发中发挥着重要作用。

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