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A novel kernel Fisher discriminant analysis: Constructing informative kernel by decision tree ensemble for metabolomics data analysis

机译:一种新颖的核Fisher判别分析:通过决策树集合构建代谢组学数据分析的信息核

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摘要

Large amounts of data from high-throughput metabolomics experiments become commonly more and more complex, which brings an enormous amount of challenges to existing statistical modeling. Thus there is a need to develop statistically efficient approach for mining the underlying metabolite information contained by metabolomics data under investigation. In the work, we developed a novel kernel Fisher discriminant analysis (KFDA) algorithm by constructing an informative kernel based on decision tree ensemble. The constructed kernel can effectively encode the similarities of metabolomics samples between informative metabolites/biomarkers in specific parts of the measurement space. Simultaneously, informative metabolites or potential biomarkers can be successfully discovered by variable importance ranking in the process of building kernel. Moreover, KFDA can also deal with nonlinear relationship in the metabolomics data by such a kernel to some extent. Finally, two real metabolomics datasets together with a simulated data were used to demonstrate the performance of the proposed approach through the comparison of different approaches.
机译:来自高通量代谢组学实验的大量数据通常变得越来越复杂,这给现有的统计建模带来了巨大的挑战。因此,需要开发一种统计上有效的方法来挖掘所研究的代谢组学数据所包含的基础代谢物信息。在工作中,我们通过基于决策树集合构造信息丰富的内核,开发了一种新颖的内核Fisher判别分析(KFDA)算法。构建的内核可以有效地编码测量空间特定部分中信息量丰富的代谢物/生物标记物之间的代谢组学样本的相似性。同时,通过在构建内核的过程中通过可变重要性排序,可以成功地发现有用的代谢物或潜在的生物标记。而且,KFDA还可以通过这种内核在某种程度上处理代谢组学数据中的非线性关系。最后,两个真实的代谢组学数据集以及一个模拟数据被用来通过比较不同方法来证明所提出方法的性能。

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