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Investigating the utility of clinical outcome-guided mutual information network in network-based Cox regression

机译:调查基于网络的COX回归中的临床结果导向互信息网络的效用

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Background: Network-based approaches have recently gained considerable popularity in high- dimensional regression settings. For example, the Cox regression model is widely used in expression analysis to predict the survival of patients. However, as the number of genes becomes substantially larger than the number of samples, the traditional Cox or ^-regularized Cox models are still prone to noise and produce unreliable estimations of regression coefficients. A recent approach called the network-basedCox (Net-Cox) model attempts to resolve this issue by incorporating prior gene network information into the Cox regression. The Net-Cox model has shown to outperform the models that do not use this network information.Results: In this study, we demonstrate an alternative network construction method for the outcome-guided gene interaction network, and we investigate its utility in survival analysis using Net-Cox regression as compared with conventional networks, such as co-expression or static networks obtained from the existing knowledgebase. Our network edges consist of gene pairs that are significantly associated with the clinical outcome. We measure the strength of this association using mutual information betweenthe gene pair and the clinical outcome. We applied this approach to ovarian cancer patients' data in The Cancer Genome Atlas (TCGA) and compared the predictive performance of the proposed approach with those that use other types of networks.Conclusions: We found that the alternative outcome-guided mutual information network further improved the prediction power of the network-based Cox regression. We expect that a modification of the network regularization term in the Net-Cox model could further improve its prediction power because the properties of our network edges are not optimally reflected in its current form.
机译:背景:基于网络的方法在高维回归设置最近获得了相当的知名度。例如,Cox回归模型被广泛用于表达分析来预测患者的生存期。然而,随着基因的数目变为基本上大于样品的传统考克斯或^ -regularized Cox模型的数量,较大仍然容易产生噪音,并产生回归系数的不可靠的估算。最近的一个方法叫做网络basedCox(净考克斯)模型试图通过将前基因网络信息进入Cox回归来解决这个问题。净Cox模型已经证明优于不使用这个网络information.Results模型:在本研究中,我们演示了结果导向基因相互作用网络的替代网络构造方法,我们利用探讨其生存分析工具净Cox回归与传统网络,如共表达或从现有的知识库获得静态网络相比。我们的网络的边缘由被显著与临床结果相关的基因对。我们衡量这个协会利用互信息betweenthe基因对和临床结果的力量。我们把这种方法用于卵巢癌患者在癌症基因组图谱(TCGA)的数据,并与那些使用其它类型的networks.Conclusions的提出方法的预测性能:我们发现可供选择的结果导向互信息网络进一步改进的基于网络的Cox回归的预测功率。我们预计,在Net-Cox模型的网络则项可进一步改善其预测能力的改进,因为我们的网络边缘的性能不能很好地体现在其目前的形式。

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