Literature DB >> 33584612

kernInt: A Kernel Framework for Integrating Supervised and Unsupervised Analyses in Spatio-Temporal Metagenomic Datasets.

Elies Ramon1, Lluís Belanche-Muñoz2, Francesc Molist3, Raquel Quintanilla4, Miguel Perez-Enciso1,5, Yuliaxis Ramayo-Caldas4.   

Abstract

The advent of next-generation sequencing technologies allowed relative quantification of microbiome communities and their spatial and temporal variation. In recent years, supervised learning (i.e., prediction of a phenotype of interest) from taxonomic abundances has become increasingly common in the microbiome field. However, a gap exists between supervised and classical unsupervised analyses, based on computing ecological dissimilarities for visualization or clustering. Despite this, both approaches face common challenges, like the compositional nature of next-generation sequencing data or the integration of the spatial and temporal dimensions. Here we propose a kernel framework to place on a common ground the unsupervised and supervised microbiome analyses, including the retrieval of microbial signatures (taxa importances). We define two compositional kernels (Aitchison-RBF and compositional linear) and discuss how to transform non-compositional beta-dissimilarity measures into kernels. Spatial data is integrated with multiple kernel learning, while longitudinal data is evaluated by specific kernels. We illustrate our framework through a single point soil dataset, a human dataset with a spatial component, and a previously unpublished longitudinal dataset concerning pig production. The proposed framework and the case studies are freely available in the kernInt package at https://github.com/elies-ramon/kernInt.
Copyright © 2021 Ramon, Belanche-Muñoz, Molist, Quintanilla, Perez-Enciso and Ramayo-Caldas.

Entities:  

Keywords:  SVM; kPCA; kernel; metagenomics; microbiome; spatio-temporal; supervised; unsupervised

Year:  2021        PMID: 33584612      PMCID: PMC7876079          DOI: 10.3389/fmicb.2021.609048

Source DB:  PubMed          Journal:  Front Microbiol        ISSN: 1664-302X            Impact factor:   5.640


  34 in total

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Authors:  Núria Mach; Mustapha Berri; Jordi Estellé; Florence Levenez; Gaëtan Lemonnier; Catherine Denis; Jean-Jacques Leplat; Claire Chevaleyre; Yvon Billon; Joël Doré; Claire Rogel-Gaillard; Patricia Lepage
Journal:  Environ Microbiol Rep       Date:  2015-05-06       Impact factor: 3.541

2.  Pyrosequencing-based assessment of soil pH as a predictor of soil bacterial community structure at the continental scale.

Authors:  Christian L Lauber; Micah Hamady; Rob Knight; Noah Fierer
Journal:  Appl Environ Microbiol       Date:  2009-06-05       Impact factor: 4.792

3.  Unsupervised multiple kernel learning for heterogeneous data integration.

Authors:  Jérôme Mariette; Nathalie Villa-Vialaneix
Journal:  Bioinformatics       Date:  2018-03-15       Impact factor: 6.937

4.  Microvirga soli sp. nov., an alphaproteobacterium isolated from soil.

Authors:  Ram Hari Dahal; Jaisoo Kim
Journal:  Int J Syst Evol Microbiol       Date:  2017-02-20       Impact factor: 2.747

5.  Rubrobacter indicoceani sp. nov., a new marine actinobacterium isolated from Indian Ocean sediment.

Authors:  Rou-Wen Chen; Ke-Xin Wang; Fa-Zuo Wang; Yuan-Qiu He; Li-Juan Long; Xin-Peng Tian
Journal:  Int J Syst Evol Microbiol       Date:  2018-10-09       Impact factor: 2.747

6.  Disordered microbial communities in the upper respiratory tract of cigarette smokers.

Authors:  Emily S Charlson; Jun Chen; Rebecca Custers-Allen; Kyle Bittinger; Hongzhe Li; Rohini Sinha; Jennifer Hwang; Frederic D Bushman; Ronald G Collman
Journal:  PLoS One       Date:  2010-12-20       Impact factor: 3.240

7.  A phylogenetic transform enhances analysis of compositional microbiota data.

Authors:  Justin D Silverman; Alex D Washburne; Sayan Mukherjee; Lawrence A David
Journal:  Elife       Date:  2017-02-15       Impact factor: 8.140

8.  Uncovering the Horseshoe Effect in Microbial Analyses.

Authors:  James T Morton; Liam Toran; Anna Edlund; Jessica L Metcalf; Christian Lauber; Rob Knight
Journal:  mSystems       Date:  2017-02-21       Impact factor: 6.496

9.  Late weaning is associated with increased microbial diversity and Faecalibacterium prausnitzii abundance in the fecal microbiota of piglets.

Authors:  Francesca Romana Massacci; Mustapha Berri; Gaetan Lemonnier; Elodie Guettier; Fany Blanc; Deborah Jardet; Marie Noelle Rossignol; Marie-José Mercat; Joël Doré; Patricia Lepage; Claire Rogel-Gaillard; Jordi Estellé
Journal:  Anim Microbiome       Date:  2020-01-16

10.  Temporal development of the gut microbiome in early childhood from the TEDDY study.

Authors:  Christopher J Stewart; Nadim J Ajami; Jacqueline L O'Brien; Diane S Hutchinson; Daniel P Smith; Matthew C Wong; Matthew C Ross; Richard E Lloyd; HarshaVardhan Doddapaneni; Ginger A Metcalf; Donna Muzny; Richard A Gibbs; Tommi Vatanen; Curtis Huttenhower; Ramnik J Xavier; Marian Rewers; William Hagopian; Jorma Toppari; Anette-G Ziegler; Jin-Xiong She; Beena Akolkar; Ake Lernmark; Heikki Hyoty; Kendra Vehik; Jeffrey P Krischer; Joseph F Petrosino
Journal:  Nature       Date:  2018-10-24       Impact factor: 69.504

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  1 in total

1.  The value of gut microbiota to predict feed efficiency and growth of rabbits under different feeding regimes.

Authors:  María Velasco-Galilea; Miriam Piles; Yuliaxis Ramayo-Caldas; Juan P Sánchez
Journal:  Sci Rep       Date:  2021-09-30       Impact factor: 4.379

  1 in total

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