Literature DB >> 30382244

A computational framework to integrate high-throughput '-omics' datasets for the identification of potential mechanistic links.

Helle Krogh Pedersen1, Sofia K Forslund2,3, Valborg Gudmundsdottir4, Anders Østergaard Petersen4, Falk Hildebrand3, Tuulia Hyötyläinen5, Trine Nielsen1, Torben Hansen1, Peer Bork3, S Dusko Ehrlich6,7, Søren Brunak4,8, Matej Oresic9,10, Oluf Pedersen11, Henrik Bjørn Nielsen12.   

Abstract

We recently presented a three-pronged association study that integrated human intestinal microbiome data derived from shotgun-based sequencing with untargeted serum metabolome data and measures of host physiology. Metabolome and microbiome data are high dimensional, posing a major challenge for data integration. Here, we present a step-by-step computational protocol that details and discusses the dimensionality-reduction techniques used and methods for subsequent integration and interpretation of such heterogeneous types of data. Dimensionality reduction was achieved through a combination of data normalization approaches, binning of co-abundant genes and metabolites, and integration of prior biological knowledge. The use of prior knowledge to overcome functional redundancy across microbiome species is one central advance of our method over available alternative approaches. Applying this framework, other investigators can integrate various '-omics' readouts with variables of host physiology or any other phenotype of interest (e.g., connecting host and microbiome readouts to disease severity or treatment outcome in a clinical cohort) in a three-pronged association analysis to identify potential mechanistic links to be tested in experimental settings. Although we originally developed the framework for a human metabolome-microbiome study, it is generalizable to other organisms and environmental metagenomes, as well as to studies including other -omics domains such as transcriptomics and proteomics. The provided R code runs in ~1 h on a standard PC.

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Year:  2018        PMID: 30382244     DOI: 10.1038/s41596-018-0064-z

Source DB:  PubMed          Journal:  Nat Protoc        ISSN: 1750-2799            Impact factor:   13.491


  30 in total

Review 1.  Network Medicine in Pathobiology.

Authors:  Laurel Yong-Hwa Lee; Joseph Loscalzo
Journal:  Am J Pathol       Date:  2019-04-20       Impact factor: 4.307

Review 2.  Gut microbiota in human metabolic health and disease.

Authors:  Yong Fan; Oluf Pedersen
Journal:  Nat Rev Microbiol       Date:  2020-09-04       Impact factor: 60.633

3.  MIMOSA2: A metabolic network-based tool for inferring mechanism-supported relationships in microbiome-metabolome data.

Authors:  Cecilia Noecker; Alexander Eng; Efrat Muller; Elhanan Borenstein
Journal:  Bioinformatics       Date:  2022-01-06       Impact factor: 6.937

4.  Multi-omics analyses of airway host-microbe interactions in chronic obstructive pulmonary disease identify potential therapeutic interventions.

Authors:  Zhengzheng Yan; Boxuan Chen; Yuqiong Yang; Xinzhu Yi; Mingyuan Wei; Gertrude Ecklu-Mensah; Mary M Buschmann; Haiyue Liu; Jingyuan Gao; Weijie Liang; Xiaomin Liu; Junhao Yang; Wei Ma; Zhenyu Liang; Fengyan Wang; Dandan Chen; Lingwei Wang; Weijuan Shi; Martin R Stampfli; Pan Li; Shenhai Gong; Xia Chen; Wensheng Shu; Emad M El-Omar; Jack A Gilbert; Martin J Blaser; Hongwei Zhou; Rongchang Chen; Zhang Wang
Journal:  Nat Microbiol       Date:  2022-08-22       Impact factor: 30.964

5.  Age-related compositional changes and correlations of gut microbiome, serum metabolome, and immune factor in rats.

Authors:  Xia Zhang; Yuping Yang; Juan Su; Xiaojiao Zheng; Chongchong Wang; Shaoqiu Chen; Jiajian Liu; Yingfang Lv; Shihao Fan; Aihua Zhao; Tianlu Chen; Wei Jia; Xiaoyan Wang
Journal:  Geroscience       Date:  2020-05-17       Impact factor: 7.713

Review 6.  Multi-omics integration in biomedical research - A metabolomics-centric review.

Authors:  Maria A Wörheide; Jan Krumsiek; Gabi Kastenmüller; Matthias Arnold
Journal:  Anal Chim Acta       Date:  2020-10-22       Impact factor: 6.558

Review 7.  Immune monitoring using mass cytometry and related high-dimensional imaging approaches.

Authors:  Felix J Hartmann; Sean C Bendall
Journal:  Nat Rev Rheumatol       Date:  2019-12-31       Impact factor: 20.543

Review 8.  A practical guide to amplicon and metagenomic analysis of microbiome data.

Authors:  Yong-Xin Liu; Yuan Qin; Tong Chen; Meiping Lu; Xubo Qian; Xiaoxuan Guo; Yang Bai
Journal:  Protein Cell       Date:  2020-05-11       Impact factor: 14.870

9.  Different Reactions in Each Enterotype Depending on the Intake of Probiotic Yogurt Powder.

Authors:  Songhee Lee; Heesang You; Minho Lee; Doojin Kim; Sunghee Jung; Youngsook Park; Sunghee Hyun
Journal:  Microorganisms       Date:  2021-06-11

10.  2dFDR: a new approach to confounder adjustment substantially increases detection power in omics association studies.

Authors:  Sangyoon Yi; Xianyang Zhang; Lu Yang; Jinyan Huang; Yuanhang Liu; Chen Wang; Daniel J Schaid; Jun Chen
Journal:  Genome Biol       Date:  2021-07-13       Impact factor: 13.583

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