Analysis of AML Genes in Dysregulated Molecular Networks.

Eunjung Lee, Hyunchul Jung, Predrag Radivojac, Jong-Won Kim, Doheon Lee
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Abstract

Background: Identifying disease causing genes and understanding their molecular mechanisms are essential to developing effective therapeutics. Thus, several computational methods have been proposed to prioritize candidate disease genes by integrating different data types, including sequence information, biomedical literature, and pathway information. Recently, molecular interaction networks have been incorporated to predict disease genes, but most of those methods do not utilize invaluable disease-specific information available in mRNA expression profiles of patient samples.

Results: Through the integration of protein-protein interaction networks and gene expression profiles of acute myeloid leukemia (AML) patients, we identified subnetworks of interacting proteins dysregulated in AML and characterized known mutation genes causally implicated to AML embedded in the subnetworks. The analysis shows that the set of extracted subnetworks is a reservoir rich in AML genes reflecting key leukemogenic processes such as myeloid differentiation,

Conclusion: We showed that the integrative approach both utilizing gene expression profiles and molecular networks could identify AML causing genes most of which were not detectable with gene expression analysis alone due to their minor changes in mRNA.

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AML基因在失调分子网络中的分析。
背景:确定致病基因并了解其分子机制对于开发有效的治疗方法至关重要。因此,已经提出了几种计算方法,通过整合不同的数据类型,包括序列信息、生物医学文献和途径信息,来确定候选疾病基因的优先级。最近,分子相互作用网络已被用于预测疾病基因,但大多数这些方法都没有利用患者样本mRNA表达谱中宝贵的疾病特异性信息。结果:通过整合急性髓性白血病(AML)患者的蛋白-蛋白相互作用网络和基因表达谱,我们确定了AML中相互作用蛋白失调的亚网络,并表征了嵌入在这些亚网络中与AML有因果关系的已知突变基因。分析表明,提取的亚网络集合是一个丰富的AML基因库,反映了髓细胞分化等关键的白血病发生过程。结论:我们发现,利用基因表达谱和分子网络的综合方法可以识别出导致AML的基因,其中大多数基因由于mRNA的微小变化而无法通过单独的基因表达分析检测到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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