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

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 longitud...

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Main Authors: Zhaozhou Lin, Qiao Zhang, Shengyun Dai, Xiaoyan Gao
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Metabolites
Subjects:
Online Access:https://www.mdpi.com/2218-1989/10/1/33
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spelling doaj-96d416f6926b4022aa87005650bb52902020-11-25T02:13:03ZengMDPI AGMetabolites2218-19892020-01-011013310.3390/metabo10010033metabo10010033Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate RegressionZhaozhou Lin0Qiao Zhang1Shengyun Dai2Xiaoyan Gao3Beijing Institute of Chinese Materia Medica, Beijing 100035, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing 10029, ChinaDivision of Chinese Materia Medica, National Institutes for Food and Drug Control, China Food and Drug Administration, Beijing 100050, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing 10029, ChinaTemporal 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.https://www.mdpi.com/2218-1989/10/1/33nontargeted metabolomicslongitudinal studyantipyretic effectsmultitask learningstructural regularization
collection DOAJ
language English
format Article
sources DOAJ
author Zhaozhou Lin
Qiao Zhang
Shengyun Dai
Xiaoyan Gao
spellingShingle Zhaozhou Lin
Qiao Zhang
Shengyun Dai
Xiaoyan Gao
Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression
Metabolites
nontargeted metabolomics
longitudinal study
antipyretic effects
multitask learning
structural regularization
author_facet Zhaozhou Lin
Qiao Zhang
Shengyun Dai
Xiaoyan Gao
author_sort Zhaozhou Lin
title Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression
title_short Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression
title_full Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression
title_fullStr Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression
title_full_unstemmed Discovering Temporal Patterns in Longitudinal Nontargeted Metabolomics Data via Group and Nuclear Norm Regularized Multivariate Regression
title_sort discovering temporal patterns in longitudinal nontargeted metabolomics data via group and nuclear norm regularized multivariate regression
publisher MDPI AG
series Metabolites
issn 2218-1989
publishDate 2020-01-01
description 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.
topic nontargeted metabolomics
longitudinal study
antipyretic effects
multitask learning
structural regularization
url https://www.mdpi.com/2218-1989/10/1/33
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AT shengyundai discoveringtemporalpatternsinlongitudinalnontargetedmetabolomicsdataviagroupandnuclearnormregularizedmultivariateregression
AT xiaoyangao discoveringtemporalpatternsinlongitudinalnontargetedmetabolomicsdataviagroupandnuclearnormregularizedmultivariateregression
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