Literature DB >> 29060840

Using convolutional neural networks to explore the microbiome.

Derek Reiman, Ahmed Metwally.   

Abstract

The microbiome has been shown to have an impact on the development of various diseases in the host. Being able to make an accurate prediction of the phenotype of a genomic sample based on its microbial taxonomic abundance profile is an important problem for personalized medicine. In this paper, we examine the potential of using a deep learning framework, a convolutional neural network (CNN), for such a prediction. To facilitate the CNN learning, we explore the structure of abundance profiles by creating the phylogenetic tree and by designing a scheme to embed the tree to a matrix that retains the spatial relationship of nodes in the tree and their quantitative characteristics. The proposed CNN framework is highly accurate, achieving a 99.47% of accuracy based on the evaluation on a dataset 1967 samples of three phenotypes. Our result demonstrated the feasibility and promising aspect of CNN in the classification of sample phenotype.

Mesh:

Year:  2017        PMID: 29060840     DOI: 10.1109/EMBC.2017.8037799

Source DB:  PubMed          Journal:  Conf Proc IEEE Eng Med Biol Soc        ISSN: 1557-170X


  8 in total

1.  MetaPheno: A critical evaluation of deep learning and machine learning in metagenome-based disease prediction.

Authors:  Nathan LaPierre; Chelsea J-T Ju; Guangyu Zhou; Wei Wang
Journal:  Methods       Date:  2019-03-16       Impact factor: 3.608

2.  Predicting microbiome compositions from species assemblages through deep learning.

Authors:  Sebastian Michel-Mata; Xu-Wen Wang; Yang-Yu Liu; Marco Tulio Angulo
Journal:  Imeta       Date:  2022-03-01

3.  MetaLonDA: a flexible R package for identifying time intervals of differentially abundant features in metagenomic longitudinal studies.

Authors:  Ahmed A Metwally; Jie Yang; Christian Ascoli; Yang Dai; Patricia W Finn; David L Perkins
Journal:  Microbiome       Date:  2018-02-13       Impact factor: 14.650

4.  Utilizing longitudinal microbiome taxonomic profiles to predict food allergy via Long Short-Term Memory networks.

Authors:  Ahmed A Metwally; Philip S Yu; Derek Reiman; Yang Dai; Patricia W Finn; David L Perkins
Journal:  PLoS Comput Biol       Date:  2019-02-04       Impact factor: 4.475

5.  animalcules: interactive microbiome analytics and visualization in R.

Authors:  Yue Zhao; Anthony Federico; Tyler Faits; Solaiappan Manimaran; Daniel Segrè; Stefano Monti; W Evan Johnson
Journal:  Microbiome       Date:  2021-03-28       Impact factor: 16.837

6.  Increasing prediction performance of colorectal cancer disease status using random forests classification based on metagenomic shotgun sequencing data.

Authors:  Yilin Gao; Zifan Zhu; Fengzhu Sun
Journal:  Synth Syst Biotechnol       Date:  2022-01-27

7.  A Framework for Effective Application of Machine Learning to Microbiome-Based Classification Problems.

Authors:  Begüm D Topçuoğlu; Nicholas A Lesniak; Mack T Ruffin; Jenna Wiens; Patrick D Schloss
Journal:  mBio       Date:  2020-06-09       Impact factor: 7.867

8.  Massive metagenomic data analysis using abundance-based machine learning.

Authors:  Zachary N Harris; Eliza Dhungel; Matthew Mosior; Tae-Hyuk Ahn
Journal:  Biol Direct       Date:  2019-08-01       Impact factor: 4.540

  8 in total

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