Fang Y, Xie L-N, Liu X-M, Yu Z, Kong F-S, Song N-X, Zhou F
Department of Hematology, Jinan Military General Hospital, Jinan, China.
Eur Rev Med Pharmacol Sci. 2015 Dec;19(24):4811-26.
To identify disrupted genes and pathways involved in acute myelocytic leukemia (AML) by systematically tracking the dysregulated modules across normal and AML conditions.
In this study, we firstly integrated the protein interaction data and expression profiles to infer and reweight the normal and AML networks using Pearson correlation coefficient (PCC). Next, clustering-based on maximal cliques (CMC) approach and a maximum weight bipartite matching method were implemented to infer the condition-specific modules and capture the disturbed modules, respectively, from two conditional networks. Then, the gene compositions and functional enrichment analysis were performed to identify the dysregulated genes and pathways. Finally, reverse transcription polymerase chain reaction (RT-PCR) was implemented to study the expression level of several key genes in AML patients.
In two conditional-specific networks, universal changes of gene correlations were revealed, making the differential correlation density among disrupted module pairs. In this work, a total of 84 altered modules were identified by comparing modules in normal and AML networks. Functional enrichment analysis showed that genes in altered modules mainly involved in cell cycle, nucleic acids and cancer signaling process, and differentially expressed genes (DEGs) and changed gene correlations were mainly participated in natural killer cell-mediated cytotoxicity and acute myeloid leukemia pathway. The key genes, such as MYC, EGFR, MAPK1 and CCNA1, were all significantly differentially expressed in AML patients.
This module approach effectively identifies dysregulated pathways and genes associated with AML. The considerable differences of gene correlations yield to these dysfunctional modules, and the coordinated disruption of these very modules contributes to leukemogenesis.
通过系统追踪正常和急性髓细胞白血病(AML)条件下失调的模块,鉴定参与AML的基因和通路。
在本研究中,我们首先整合蛋白质相互作用数据和表达谱,使用Pearson相关系数(PCC)推断并重新加权正常和AML网络。接下来,分别基于最大团的聚类(CMC)方法和最大权重二分匹配方法,从两个条件网络中推断条件特异性模块并捕获受干扰的模块。然后,进行基因组成和功能富集分析以鉴定失调的基因和通路。最后,实施逆转录聚合酶链反应(RT-PCR)来研究AML患者中几个关键基因的表达水平。
在两个条件特异性网络中,揭示了基因相关性的普遍变化,使得受干扰模块对之间的差异相关密度得以体现。在这项工作中,通过比较正常和AML网络中的模块,共鉴定出84个改变的模块。功能富集分析表明,改变模块中的基因主要涉及细胞周期、核酸和癌症信号传导过程,差异表达基因(DEGs)和改变的基因相关性主要参与自然杀伤细胞介导的细胞毒性和急性髓系白血病通路。关键基因,如MYC、EGFR、MAPK1和CCNA1,在AML患者中均显著差异表达。
这种模块方法有效地鉴定了与AML相关的失调通路和基因。基因相关性的显著差异导致了这些功能失调的模块,而这些模块的协同破坏促成了白血病的发生。