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首页> 外文期刊>Molecular medicine. >Differential network analysis and protein-protein interaction study reveals active protein modules in glucocorticoid resistance for infant acute lymphoblastic leukemia
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Differential network analysis and protein-protein interaction study reveals active protein modules in glucocorticoid resistance for infant acute lymphoblastic leukemia

机译:差异网络分析和蛋白质-蛋白质相互作用研究揭示了婴儿急性淋巴细胞白血病对糖皮质激素抵抗的活性蛋白质模块

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Acute lymphoblastic leukemia (ALL) is the most common type of cancer diagnosed in children and Glucocorticoids (GCs) form an essential component of the standard chemotherapy in most treatment regimens. The category of infant ALL patients carrying a translocation involving the mixed lineage leukemia (MLL) gene (gene KMT2A) is characterized by resistance to GCs and poor clinical outcome. Although some studies examined GC-resistance in infant ALL patients, the understanding of this phenomenon remains limited and impede the efforts to improve prognosis. This study integrates differential co-expression (DC) and protein-protein interaction (PPI) networks to find active protein modules associated with GC-resistance in MLL-rearranged infant ALL patients. A network was constructed by linking differentially co-expressed gene pairs between GC-resistance and GC-sensitive samples and later integrated with PPI networks by keeping the links that are also present in the PPI network. The resulting network was decomposed into two sub-networks, specific to each phenotype. Finally, both sub-networks were clustered into modules using weighted gene co-expression network analysis (WGCNA) and further analyzed with functional enrichment analysis. Through the integration of DC analysis and PPI network, four protein modules were found active under the GC-resistance phenotype but not under the GC-sensitive. Functional enrichment analysis revealed that these modules are related to proteasome, electron transport chain, tRNA-aminoacyl biosynthesis, and peroxisome signaling pathways. These findings are in accordance with previous findings related to GC-resistance in other hematological malignancies such as pediatric ALL. Differential co-expression analysis is a promising approach to incorporate the dynamic context of gene expression profiles into the well-documented protein interaction networks. The approach allows the detection of relevant protein modules that are highly enriched with DC gene pairs. Functional enrichment analysis of detected protein modules generates new biological hypotheses and may help in explaining the GC-resistance in MLL-rearranged infant ALL patients.
机译:急性淋巴细胞性白血病(ALL)是儿童中最常见的癌症类型,糖皮质激素(GCs)是大多数治疗方案中标准化疗的重要组成部分。携带混合谱系白血病(MLL)基因(基因KMT2A)的易位婴儿ALL患者的特点是对GC耐药且临床预后较差。尽管一些研究检查了婴儿ALL患者的GC耐药性,但对该现象的了解仍然有限,并阻碍了改善预后的努力。这项研究整合了差异共表达(DC)和蛋白质-蛋白质相互作用(PPI)网络,以发现与MLL重组婴儿ALL患者的GC耐药相关的活性蛋白质模块。通过在GC耐药性和GC敏感样品之间链接差异共表达的基因对,构建了一个网络,随后通过保持PPI网络中也存在的链接,将其与PPI网络整合。将得到的网络分解为每个表型特有的两个子网。最后,使用加权基因共表达网络分析(WGCNA)将两个子网聚类为模块,并通过功能丰富分析进行进一步分析。通过DC分析和PPI网络的集成,发现四个蛋白模块在GC耐药表型下有活性,但在GC敏感表型下没有活性。功能富集分析显示,这些模块与蛋白酶体,电子转运链,tRNA-氨酰基生物合成和过氧化物酶体信号通路有关。这些发现与先前与其他血液系统恶性肿瘤(如小儿ALL)中的GC耐药性相关的发现一致。差异共表达分析是一种有前途的方法,可以将基因表达谱的动态背景整合到有据可查的蛋白质相互作用网络中。该方法可以检测到富含DC基因对的相关蛋白质模块。检测到的蛋白质模块的功能富集分析产生了新的生物学假设,并可能有助于解释MLL重排的婴儿ALL患者的GC耐药性。

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