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New KEGG pathway-based interpretable features for classifying ageing-related mouse proteins

机译:新的基于KEGG途径的可解释特征可用于分类与衰老相关的小鼠蛋白质

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Motivation: The incidence of ageing-related diseases has been constantly increasing in the last decades, raising the need for creating effective methods to analyze ageing-related protein data. These methods should have high predictive accuracy and be easily interpretable by ageing experts. To enable this, one needs interpretable classification models (supervised machine learning) and features with rich biological meaning. In this paper we propose two interpretable feature types based on Kyoto Encyclopedia of Genes and Genomes (KEGG) pathways and compare them with traditional feature types in hierarchical classification (a more challenging classification task regarding predictive performance) and binary classification (a classification task producing easier to interpret classification models). As far as we know, this work is the first to: (i) explore the potential of the KEGG pathway data in the hierarchical classification setting, (i) use the graph structure of KEGG pathways to create a feature type that quantifies the influence of a current protein on another specific protein within a KEGG pathway graph and (iii) propose a method for interpreting the classification models induced using KEGG features.
机译:动机:在过去的几十年中,与衰老相关的疾病的发生率一直在增加,这需要建立有效的方法来分析与衰老相关的蛋白质数据。这些方法应具有较高的预测准确性,并且易于老化的专家解释。为此,人们需要可解释的分类模型(有监督的机器学习)和具有丰富生物学意义的特征。在本文中,我们提出了两种基于京都基因组和基因组百科全书(KEGG)途径的可解释特征类型,并将它们与传统特征类型进行比较,以进行分层分类(有关预测性能的更具挑战性的分类任务)和二元分类(使分类任务更容易实现)解释分类模型)。据我们所知,这项工作是第一个:(i)探索KEGG通路数据在分层分类设置中的潜力,(i)使用KEGG通路的图结构来创建特征类型,以量化KEGG途径图中另一种特定蛋白质上的当前蛋白质,并且(iii)提出了一种方法来解释使用KEGG特征诱导的分类模型。

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