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Microbiome Multi-Omics Network Analysis: Statistical Considerations, Limitations, and Opportunities

Overview
Journal Front Genet
Date 2019 Nov 30
PMID 31781153
Citations 67
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Abstract

The advent of large-scale microbiome studies affords newfound analytical opportunities to understand how these communities of microbes operate and relate to their environment. However, the analytical methodology needed to model microbiome data and integrate them with other data constructs remains nascent. This emergent analytical toolset frequently ports over techniques developed in other multi-omics investigations, especially the growing array of statistical and computational techniques for integrating and representing data through networks. While network analysis has emerged as a powerful approach to modeling microbiome data, oftentimes by integrating these data with other types of omics data to discern their functional linkages, it is not always evident if the statistical details of the approach being applied are consistent with the assumptions of microbiome data or how they impact data interpretation. In this review, we overview some of the most important network methods for integrative analysis, with an emphasis on methods that have been applied or have great potential to be applied to the analysis of multi-omics integration of microbiome data. We compare advantages and disadvantages of various statistical tools, assess their applicability to microbiome data, and discuss their biological interpretability. We also highlight on-going statistical challenges and opportunities for integrative network analysis of microbiome data.

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References
1.
Yang Y, Chen N, Chen T . Inference of Environmental Factor-Microbe and Microbe-Microbe Associations from Metagenomic Data Using a Hierarchical Bayesian Statistical Model. Cell Syst. 2017; 4(1):129-137.e5. DOI: 10.1016/j.cels.2016.12.012. View

2.
Morgun A, Dzutsev A, Dong X, Greer R, Sexton D, Ravel J . Uncovering effects of antibiotics on the host and microbiota using transkingdom gene networks. Gut. 2015; 64(11):1732-43. PMC: 5166700. DOI: 10.1136/gutjnl-2014-308820. View

3.
Stadler N, Dondelinger F, Hill S, Akbani R, Lu Y, Mills G . Molecular heterogeneity at the network level: high-dimensional testing, clustering and a TCGA case study. Bioinformatics. 2017; 33(18):2890-2896. PMC: 5590725. DOI: 10.1093/bioinformatics/btx322. View

4.
Akavia U, Litvin O, Kim J, Sanchez-Garcia F, Kotliar D, Causton H . An integrated approach to uncover drivers of cancer. Cell. 2010; 143(6):1005-17. PMC: 3013278. DOI: 10.1016/j.cell.2010.11.013. View

5.
Jovanovic I, Zivkovic M, Jovanovic J, Djuric T, Stankovic A . The co-inertia approach in identification of specific microRNA in early and advanced atherosclerosis plaque. Med Hypotheses. 2014; 83(1):11-5. DOI: 10.1016/j.mehy.2014.04.019. View