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Class-paired Fuzzy SubNETs:A paired variant of the rank-based network analysis family for feature selection based on protein complexes

机译:基于蛋白质复合物的特征选择的基于秩的网络分析系列的配对变体

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摘要

Identifying reproducible yet relevant protein features in proteomics data is a major challenge. Analysis at the level of protein complexes can resolve this issue and we have developed a suite of feature-selection methods collectively referred to as Rank-Based Network Analysis (RBNA). RBNAs differ in their individual statistical test setup but are similar in the sense that they deploy rank-defined weights among proteins per sample. This procedure is known as gene fuzzy scoring. Currently, no RBNA exists for paired-sample scenarios where both control and test tissues originate from the same source (e.g. same patient). It is expected that paired tests, when used appropriately, are more powerful than approaches intended for unpaired samples. We report that the class-paired RBNA, PPFSNET, dominates in both simulated and real data scenarios. Moreover, for the first time, we explicitly incorporate batch-effect resistance as an additional evaluation criterion for feature-selection approaches. Batch effects are class irrelevant variations arising from different handlers or processing times, and can obfuscate analysis. We demonstrate that PPFSNET and an earlier RBNA, PFSNET, are particularly resistant against batch effects, and only select features strongly correlated with class but not batch.
机译:鉴定蛋白质组学数据中的再现且相关的蛋白质特征是一个主要挑战。蛋白质复合物水平分析可以解决这个问题,我们开发了一套统称基于秩的网络分析(RBNA)的特征选择方法。 RBNAS在各个统计测试设置中有所不同,但它们的意义类似,它们在每个样本的蛋白质中部署了蛋白质中的排名定义的权重。该过程称为基因模糊评分。目前,不存在RBNA用于配对样本场景,其中控件和测试组织源自同一源(例如相同的患者)。预计将配对测试在适当使用时比不配对样本的方法更强大。我们报告称,类配对的RBNA,PPFSNet,占据模拟和实际数据方案的主导。此外,我们首次明确地将批量效应阻力作为用于特征选择方法的额外评估标准。批量效应是不同的处理程序或加工时间引起的类无关的变化,并且可以混淆分析。我们证明PPFSNet和早期的RBNA,PFSNet尤为抵抗批量效应,并且只选择与类强度相关但不是批处理的功能。

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