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网络信息可改善癌症预后预测。

Network information improves cancer outcome prediction.

作者信息

Roy Janine, Winter Christof, Isik Zerrin, Schroeder Michael

出版信息

Brief Bioinform. 2014 Jul;15(4):612-25. doi: 10.1093/bib/bbs083. Epub 2012 Dec 18.

Abstract

Disease progression in cancer can vary substantially between patients. Yet, patients often receive the same treatment. Recently, there has been much work on predicting disease progression and patient outcome variables from gene expression in order to personalize treatment options. Despite first diagnostic kits in the market, there are open problems such as the choice of random gene signatures or noisy expression data. One approach to deal with these two problems employs protein-protein interaction networks and ranks genes using the random surfer model of Google's PageRank algorithm. In this work, we created a benchmark dataset collection comprising 25 cancer outcome prediction datasets from literature and systematically evaluated the use of networks and a PageRank derivative, NetRank, for signature identification. We show that the NetRank performs significantly better than classical methods such as fold change or t-test. Despite an order of magnitude difference in network size, a regulatory and protein-protein interaction network perform equally well. Experimental evaluation on cancer outcome prediction in all of the 25 underlying datasets suggests that the network-based methodology identifies highly overlapping signatures over all cancer types, in contrast to classical methods that fail to identify highly common gene sets across the same cancer types. Integration of network information into gene expression analysis allows the identification of more reliable and accurate biomarkers and provides a deeper understanding of processes occurring in cancer development and progression.

摘要

癌症患者的疾病进展在个体之间可能有很大差异。然而,患者通常接受相同的治疗。最近,为了实现个性化治疗方案,人们在通过基因表达预测疾病进展和患者预后变量方面开展了大量工作。尽管市场上已有首批诊断试剂盒,但仍存在一些未解决的问题,比如随机基因特征的选择或有噪声的表达数据。解决这两个问题的一种方法是利用蛋白质 - 蛋白质相互作用网络,并使用谷歌网页排名算法的随机冲浪模型对基因进行排序。在这项工作中,我们创建了一个基准数据集集合,其中包含从文献中获取的25个癌症预后预测数据集,并系统地评估了网络和一种网页排名衍生算法NetRank在特征识别方面的应用。我们表明,NetRank的表现明显优于诸如倍数变化或t检验等传统方法。尽管网络规模相差一个数量级,但调控网络和蛋白质 - 蛋白质相互作用网络的表现同样出色。对所有25个基础数据集进行的癌症预后预测实验评估表明,与无法在相同癌症类型中识别高度共同基因集的传统方法相比,基于网络的方法能识别出所有癌症类型中高度重叠的特征。将网络信息整合到基因表达分析中,能够识别出更可靠、准确的生物标志物,并能更深入地理解癌症发生和发展过程中所发生的过程。

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