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Bagging classification tree-based robust variable selection for radial basis function network modeling in metabonomics data analysis

机译:基于组的径向基函数网络建模在代谢管理数据分析中的袋装分类基于树的鲁棒变量选择

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摘要

Complex datasets can be routinely produced from modem analytical platforms in metabonomics surveys, which brings enormous challenges to existing chemometrics tools. In the current study, inspired by the characteristic of classification tree (CT) in automatically selecting the most informative variables and measuring their importance, the potential of bagging in improving the reliability and robustness of a single model, and the promising modeling performance of radial basis function network (RBFN), we designed a new chemometrics tool, i.e., bagging classification tree-radial basis function network (BAGCT-EBFN), for metabonomics data analysis. In BAGCT-RBFN, a series of parallel CT models were firstly established based on the idea of bagging (BAGCT). The informative variables can be successfully spied via inspecting the variable importance values over all CTs in BAGCT. Then, RBFN was utilized to relate the identified informative variables to the class memberships. To demonstrate the practical application of BAGCT-RBFN in metabonomics, an H-1 NMR-based metabonomics dataset associated with lung cancer was applied. The results showed that BAGCT-RBFN can find a shortlist of discriminatory variables with reliability while attain more satisfactory classification accuracy than traditional CT and RBFN.
机译:复杂的数据集可以常规地从代谢型调查中的调制解调器分析平台生产,这给现有的化学计量器工具带来了巨大的挑战。在目前的研究中,灵感来自分类树(CT)的特征,在自动选择最具信息丰富的变量和测量它们的重要性时,袋装的潜力提高了单一型号的可靠性和鲁棒性,以及径向基础的有希望的建模性能功能网络(RBFN),我们设计了一种新的化学计量工具,即装袋分类树径向基函数网络(BAGCT-EBFN),用于代谢管理数据分析。在BAGCT-RBFN中,首先基于装袋(BAGCT)的想法建立了一系列并行CT模型。可以通过检查BAGCT中所有CTS的可变重要性值来成功地体现信息变量。然后,利用RBFN将所识别的信息变量与班级成员资格相关联。为了证明BAGCT-RBFN在代谢族中的实际应用,应用与肺癌相关的基于H-1 NMR的代谢族数据集。结果表明,BAGCT-RBFN可以找到具有可靠性的歧视变量的候选变量,而比传统的CT和RBFN达到更令人满意的分类精度。

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  • 作者单位

    Cent China Normal Univ Coll Chem Minist Educ Key Lab Pesticide &

    Chem Biol Wuhan 430079 Hubei Peoples R China;

    Cent China Normal Univ Coll Chem Minist Educ Key Lab Pesticide &

    Chem Biol Wuhan 430079 Hubei Peoples R China;

    Tongren Univ Coll Mat &

    Chem Engn Tongren 554300 Guizhou Peoples R China;

    Cent China Normal Univ Coll Chem Minist Educ Key Lab Pesticide &

    Chem Biol Wuhan 430079 Hubei Peoples R China;

    Cent China Normal Univ Coll Chem Minist Educ Key Lab Pesticide &

    Chem Biol Wuhan 430079 Hubei Peoples R China;

    South Cent Univ Nationalities Coll Pharm Wuhan 430074 Hubei Peoples R China;

    Cent China Normal Univ Coll Chem Minist Educ Key Lab Pesticide &

    Chem Biol Wuhan 430079 Hubei Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 计量学;
  • 关键词

    Chemometrics; Metabonomics; Bagging classification tree-radial basis function network (BAGCT-RBFN);

    机译:化学计量学;代谢组学;装袋分类树径向基函数网络(BAGCT-RBFN);

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