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Investigating ego modules and pathways in osteosarcoma by integrating the EgoNet algorithm and pathway analysis

机译:通过整合EgoNet算法和途径分析研究骨肉瘤中的自我模块和途径

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Osteosarcoma (OS) is the most common primary bone malignancy, but current therapies are far from effective for all patients. A better understanding of the pathological mechanism of OS may help to achieve new treatments for this tumor. Hence, the objective of this study was to investigate ego modules and pathways in OS utilizing EgoNet algorithm and pathway-related analysis, and reveal pathological mechanisms underlying OS. The EgoNet algorithm comprises four steps: constructing background protein-protein interaction (PPI) network (PPIN) based on gene expression data and PPI data; extracting differential expression network (DEN) from the background PPIN; identifying ego genes according to topological features of genes in reweighted DEN; and collecting ego modules using module search by ego gene expansion. Consequently, we obtained 5 ego modules (Modules 2, 3, 4, 5, and 6) in total. After applying the permutation test, all presented statistical significance between OS and normal controls. Finally, pathway enrichment analysis combined with Reactome pathway database was performed to investigate pathways, and Fisher's exact test was conducted to capture ego pathways for OS. The ego pathway for Module 2 was CLEC7A/inflammasome pathway, while for Module 3 a tetrasaccharide linker sequence was required for glycosaminoglycan (GAG) synthesis, and for Module 6 was the Rho GTPase cycle. Interestingly, genes in Modules 4 and 5 were enriched in the same pathway, the 2-LTR circle formation. In conclusion, the ego modules and pathways might be potential biomarkers for OS therapeutic index, and give great insight of the molecular mechanism underlying this tumor.
机译:骨肉瘤(OS)是最常见的原发性骨恶性肿瘤,但目前的治疗方法对所有患者均无效。更好地了解OS的病理机制可能有助于获得对该肿瘤的新治疗方法。因此,本研究的目的是利用EgoNet算法和与途径相关的分析来研究OS中的自我模块和途径,并揭示OS的病理机制。 EgoNet算法包括四个步骤:基于基因表达数据和PPI数据构建背景蛋白质-蛋白质相互作用(PPI)网络(PPIN)。从背景PPIN中提取差异表达网络(DEN);根据重加权DEN中基因的拓扑特征鉴定自我基因;通过自我基因扩增的模块搜索收集自我模块。因此,我们总共获得了5个自我模块(模块2、3、4、5和6)。应用置换测试后,所有结果均显示OS和正常对照之间具有统计学意义。最后,结合Reactome途径数据库进行途径富集分析以研究途径,并进行了Fisher精确检验以捕获OS的自我途径。模块2的自我途径是CLEC7A /炎性体途径,而模块3的自我糖途径是糖胺聚糖(GAG)合成所需要的四糖接头序列,模块6则是Rho GTPase循环。有趣的是,模块4和模块5中的基因在相同的途径(2-LTR环形成)中富集。总之,自我模块和途径可能是OS治疗指数的潜在生物标志物,并提供了对该肿瘤潜在分子机制的深刻见解。

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