基于链接预测的无监督秩聚集信息基因选择算法

Kang Li, Nan Du, A. Zhang
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引用次数: 5

摘要

信息性基因选择是识别在生物学过程中显著和差异表达的相关基因的过程。为此目的进行的微阵列实验通常只实施不到100个样本来对数千个基因的相关性进行排序。因此,由于小样本问题的随机性,许多不相关的基因可能会获得统计重要性,而相关的基因可能会以同样的方式失去重点。克服这样的问题超越了单个微阵列数据集所能提供的,并强调使用多个实验结果,这被定义为秩聚合。本文提出了一种新的基于链接预测的排序聚合算法,用于信息基因选择。每个等级被转移到一个完全连接和加权的网络中,其中节点代表基因,链路的权重代表连接节点(基因)之间的优先级。然后将多基因排序的整合表述为多网络上的链路预测优化问题,准则函数倾向于各网络间的加权一致性最大化。我们通过权重的迭代估计和它们之间一致性的最大化来解决问题。在实验评估中,我们在前列腺癌数据集上演示了我们的方法,并将其与其他基线方法进行了比较。结果表明,基于链接预测的排序聚合方法明显优于所有比较方法,证明了我们的框架在从多个微阵列实验结果中寻找信息基因方面的有效性。
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A link prediction based unsupervised rank aggregation algorithm for informative gene selection
Informative Gene Selection is the process of identifying relevant genes that are significantly and differentially expressed in biological procedures. The microarray experiments conducted for this purpose usually implement only less than a hundred of samples to rank the relevance of over thousands of genes. Many irrelevant genes thus may gain statistical importance due to the randomness caused by the small sample problem, while relevant genes may lose focus in the same way. Overcoming such a problem goes beyond what a single microarray dataset can offer and stresses the use of multiple experiment results, which is defined as rank aggregation. In this paper, we propose a novel link prediction based rank aggregation algorithm for the purpose of informative gene selection. Each rank is transferred into a fully connected and weighted network, in which the nodes represent genes and the weights of links stand for priorities between connected nodes (genes). The integration of multiple gene ranks is then formulated as an optimization problem of link prediction on multiple networks, with criterion function favoring the maximization of weighted consensus among each network. We solve the problem through iterative estimation of weights and maximization of consensus among them. In the experimental evaluation, we demonstrate our method on the Prostate Cancer Dataset and compare it with other baseline methods. The results show that our link prediction based rank aggregation method remarkably outperforms all the compared methods, which proves the effectiveness of our framework in finding informative genes from multiple microarray experimental results.
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