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Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression

机译:通过组和核形态正则多变量回归发现纵向不设的代谢组数据中的时间模式

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Temporal associations in longitudinal nontargeted metabolomics data are generally ignored by common pattern recognition methods such as partial least squares discriminant analysis (PLS-DA) and orthogonal partial least squares discriminant analysis (OPLS-DA). To discover temporal patterns in longitudinal metabolomics, a multitask learning (MTL) method employing structural regularization was proposed. The group regularization term of the proposed MTL method enables the selection of a small number of tentative biomarkers while maintaining high prediction accuracy. Meanwhile, the nuclear norm imposed into the regression coefficient accounts for the interrelationship of the metabolomics data obtained on consecutive time points. The effectiveness of the proposed method was demonstrated by comparison study performed on a metabolomics dataset and a simulating dataset. The results showed that a compact set of tentative biomarkers charactering the whole antipyretic process of Qingkailing injection were selected with the proposed method. In addition, the nuclear norm introduced in the new method could help the group norm to improve the method’s recovery ability.
机译:纵向非靶向代谢组数据中的时间关联通常通过常见的模式识别方法忽略诸如偏最小二乘判别分析(PLS-DA)和正交部分最小二乘判别分析(OPLS-DA)。为了发现纵向代谢组中的时间模式,提出了采用结构正规化的多任务学习(MTL)方法。所提出的MTL方法的组正则化项使得能够选择少量的暂定生物标志物,同时保持高预测精度。同时,施加到回归系数的核规范占在连续时间点获得的代谢组数据的相互关系。通过对代谢组合数据集和模拟数据集进行的比较研究证明了所提出的方法的有效性。结果表明,采用所提出的方法,选择一种表征Qingkailing注射的整个解热过程的紧凑型暂定生物标志物。此外,新方法中引入的核规范可以帮助集团规范提高方法的回收能力。

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