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RECOMMENDING PATHWAY GENES USING A COMPENDIUM OF CLUSTERING SOLUTIONS

机译:使用丛集解决方案推荐途径基因

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A common approach for identifying pathways from gene expression data is to cluster the genes without using prior information about a pathway, which often identifies only the dominant coexpression groups. Recommender systems are well-suited for using the known genes of a pathway to identify the appropriate experiments for predicting new members. However, existing systems, such as the GeneRecom-mender, ignore how genes naturally group together within specific experiments. We present a collaborative filtering approach which uses the pattern of how genes cluster together in different experiments to recommend new genes in a pathway. Clusters are first identified within a single experiment series. Informative clusters, in which the user-supplied query genes appear together, are identified. New genes that cluster with the known genes, in a significant fraction of the informative clusters, are recommended. We implemented a prototype of our system and measured its performance on hundreds of pathways. We find that our method performs as well as an established approach while significantly increasing the speed and scalability of searching large datasets.
机译:从基因表达数据中鉴定途径的一种常用方法是在不使用有关途径的先验信息的情况下对基因进行聚类,后者通常只能鉴定出主要的共表达组。推荐系统非常适合使用途径的已知基因来识别预测新成员的适当实验。但是,现有的系统(例如GeneRecom-mender)忽略了基因在特定实验中如何自然地组合在一起。我们提出了一种协作过滤方法,该方法使用在不同实验中基因如何聚集在一起的模式来推荐途径中的新基因。首先在单个实验系列中确定簇。确定了用户提供的查询基因一起出现的信息簇。推荐新的基因与已知基因聚类,在信息性聚类中占很大比例。我们实现了系统的原型,并在数百条路径上测量了其性能。我们发现,我们的方法在性能上与既定方法一样好,同时显着提高了搜索大型数据集的速度和可伸缩性。

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