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Survival Prediction and Gene Identification with Penalized Global AUC Maximization

机译:惩罚性全球AUC最大化对生存预测和基因鉴定

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摘要

Identifying genes (biomarkers) and predicting the clinical outcomes with censored survival times are important for cancer prognosis and pathogenesis. In this article, we propose a novel method with L1 penalized global AUC summary maximization (L1GAUCS). The L1GAUCS method is developed for simultaneous gene (feature) selection and survival prediction. L1 penalty shrinks coefficients and produces some coefficients that are exactly zero, and therefore selects a small subset of genes (features). It is a well-known fact that many genes are highly correlated in gene expression data and the highly correlated genes may function together. We, therefore, define a correlation measure to identify those genes such that their expression level may be low but they are highly correlated with the downstream highly expressed genes selected with L1GAUCS. Partial pathways associated with the correlated genes are identified with DAVID (). Experimental results with chemotherapy and gene expression data demonstrate that the proposed procedures can be used for identifying important genes and pathways that are related to time to death due to cancer and for building a parsimonious model for predicting the survival of future patients. Software is available upon request from the first author.
机译:鉴定基因(生物标志物)和预测存活时间的临床结果对于癌症的预后和发病机理很重要。在本文中,我们提出了一种具有L1罚分全局AUC摘要最大化(L1GAUCS)的新方法。 L1GAUCS方法专为同时进行基因(特征)选择和存活预测而开发。 L1罚分缩小系数并产生一些恰好为零的系数,因此选择了一小部分基因(特征)。众所周知的事实是,许多基因在基因表达数据中高度相关,并且高度相关的基因可能一起起作用。因此,我们定义了一种相关度量来鉴定那些基因,以使其表达水平可能较低,但与通过L1GAUCS选择的下游高表达基因高度相关。与相关基因相关的部分途径用DAVID()鉴定。化疗和基因表达数据的实验结果表明,所提出的方法可用于鉴定与癌症致死时间相关的重要基因和途径,并建立用于预测未来患者生存的简约模型。应第一作者的要求提供软件。

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