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Drawing networks of rejection – a systems biological approach to the identification of candidate genes in heart transplantation

机译:绘制排斥网络-一种用于心脏移植中候选基因鉴定的系统生物学方法

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摘要

Technological development led to an increased interest in systems biological approaches to characterize disease mechanisms and candidate genes relevant to specific diseases. We suggested that the human peripheral blood mononuclear cells (PBMC) network can be delineated by cellular reconstruction to guide identification of candidate genes. Based on 285 microarrays (7370 genes) from 98 heart transplant patients enrolled in the Cardiac Allograft Rejection Gene Expression Observational study, we used an information-theoretic, reverse-engineering algorithm called ARACNe (algorithm for the reconstruction of accurate cellular networks) and chromatin immunoprecipitation assay to reconstruct and validate a putative gene PBMC interaction network. We focused our analysis on transcription factor (TF) genes and developed a priority score to incorporate aspects of network dynamics and information from published literature to supervise gene discovery. ARACNe generated a cellular network and predicted interactions for each TF during rejection and quiescence. Genes ranked highest by priority score included those related to apoptosis, humoural and cellular immune response such as GA binding protein transcription factor (GABP), nuclear factor of κ light polypeptide gene enhancer in B-cells (NFκB), Fas (TNFRSF6)-associated via death domain (FADD) and c-AMP response element binding protein. We used the TF CREB to validate our network. ARACNe predicted 29 putative first-neighbour genes of CREB. Eleven of these (37%) were previously reported. Out of the 18 unknown predicted interactions, 14 primers were identified and 11 could be immunoprecipitated (78.6%). Overall, 75% (n= 22) inferred CREB targets were validated, a significantly higher fraction than randomly expected (P < 0.001, Fisher’s exact test). Our results confirm the accuracy of ARACNe to reconstruct the PBMC transcriptional network and show the utility of systems biological approaches to identify possible molecular targets and biomarkers.
机译:技术发展导致人们对系统生物学方法越来越感兴趣,这些方法可用于表征疾病机制和与特定疾病相关的候选基因。我们建议可以通过细胞重建来描述人外周血单核细胞(PBMC)网络,以指导候选基因的鉴定。基于来自98位心脏移植患者的285个微阵列(7370个基因)的研究,该研究参加了同种异体移植排斥基因表达观察研究,我们使用了一种信息理论,逆向工程算法,称为ARACNe(用于重建精确细胞网络的算法)和染色质免疫沉淀重建和验证推定基因PBMC相互作用网络的检测方法。我们将分析重点放在转录因子(TF)基因上,并开发了优先级评分,以结合网络动态和已发表文献中的信息来监督基因发现。 ARACNe生成了一个蜂窝网络,并在排斥和静止期间预测了每个TF的相互作用。优先得分最高的基因包括与凋亡,体液和细胞免疫反应有关的基因,例如GA结合蛋白转录因子(GABP),B细胞中κ轻多肽基因增强子的核因子(NFκB),Fas(TNFRSF6)相关的基因通过死亡域(FADD)和c-AMP反应元件结合蛋白。我们使用TF CREB来验证我们的网络。 ARACNe预测了CREB的29个推定的近邻基因。其中11个(37%)先前已报告。在18种未知的预测相互作用中,鉴定出14条引物,其中11条可以进行免疫沉淀(78.6%)。总体而言,验证了75%(n = 22)个推断的CREB目标,比随机预期的分数高得多(P <0.001,Fisher精确检验)。我们的结果证实了ARACNe重建PBMC转录网络的准确性,并显示了系统生物学方法用于识别可能的分子靶标和生物标记物的实用性。

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