Literature DB >> 30292297

Application of ensemble deep neural network to metabolomics studies.

Taiga Asakura1, Yasuhiro Date2, Jun Kikuchi3.   

Abstract

Deep neural network (DNN) is a useful machine learning approach, although its applicability to metabolomics studies has rarely been explored. Here we describe the development of an ensemble DNN (EDNN) algorithm and its applicability to metabolomics studies. As a model case, the developed EDNN approach was applied to metabolomics data of various fish species collected from Japan coastal and estuarine environments for evaluation of a regression performance compared with conventional DNN, random forest, and support vector machine algorithms. This study also revealed that the metabolic profiles of fish muscles were correlated with fish size (growth) in a species-dependent manner. The performance of EDNN regression for fish size based on metabolic profiles was superior to that of DNN, random forest, and support vector machine algorithms. The EDNN approach, therefore, should be helpful for analyses of regression and concerns pertaining to classification in metabolomics studies.
Copyright © 2018. Published by Elsevier B.V.

Entities:  

Keywords:  Deep neural network; Ensemble learning; Machine learning; Metabolomics; Nuclear magnetic resonance

Mesh:

Year:  2018        PMID: 30292297     DOI: 10.1016/j.aca.2018.02.045

Source DB:  PubMed          Journal:  Anal Chim Acta        ISSN: 0003-2670            Impact factor:   6.558


  5 in total

Review 1.  The application of artificial neural networks in metabolomics: a historical perspective.

Authors:  Kevin M Mendez; David I Broadhurst; Stacey N Reinke
Journal:  Metabolomics       Date:  2019-10-18       Impact factor: 4.290

2.  Large-Scale Evaluation of Major Soluble Macromolecular Components of Fish Muscle from a Conventional 1H-NMR Spectral Database.

Authors:  Feifei Wei; Minoru Fukuchi; Kengo Ito; Kenji Sakata; Taiga Asakura; Yasuhiro Date; Jun Kikuchi
Journal:  Molecules       Date:  2020-04-23       Impact factor: 4.411

3.  Fish ecotyping based on machine learning and inferred network analysis of chemical and physical properties.

Authors:  Feifei Wei; Kengo Ito; Kenji Sakata; Taiga Asakura; Yasuhiro Date; Jun Kikuchi
Journal:  Sci Rep       Date:  2021-02-12       Impact factor: 4.379

Review 4.  The exposome paradigm to predict environmental health in terms of systemic homeostasis and resource balance based on NMR data science.

Authors:  Jun Kikuchi; Shunji Yamada
Journal:  RSC Adv       Date:  2021-09-13       Impact factor: 4.036

5.  Learning a confidence score and the latent space of a new supervised autoencoder for diagnosis and prognosis in clinical metabolomic studies.

Authors:  David Chardin; Cyprien Gille; Thierry Pourcher; Olivier Humbert; Michel Barlaud
Journal:  BMC Bioinformatics       Date:  2022-09-01       Impact factor: 3.307

  5 in total

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