2020
DOI: 10.1093/bib/bbaa290
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NetCoMi: network construction and comparison for microbiome data in R

Abstract: Motivation Estimating microbial association networks from high-throughput sequencing data is a common exploratory data analysis approach aiming at understanding the complex interplay of microbial communities in their natural habitat. Statistical network estimation workflows comprise several analysis steps, including methods for zero handling, data normalization and computing microbial associations. Since microbial interactions are likely to change between conditions, e.g. between healthy indi… Show more

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Cited by 321 publications
(227 citation statements)
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References 110 publications
(138 reference statements)
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“…to subsets of nodes and edges, and to rearrange the graph using layout algorithms with the purpose of identifying modules or hubs. The inference of microbial associations (or of more complex associations in meta-omic data) requires specialized tools (Liu et al, 2020;Peschel et al, 2020;Röttjers and Faust, 2018). Unfortunately, interactions between taxa, or between taxa and metabolites, are still being inferred from correlation (either Pearsons's r or rank order correlations) matrices using some sort of arbitrary threshold for sparsification (i.e.…”
Section: Methods For the Inference And Visualisation Of Microbial Association Networkmentioning
confidence: 99%
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“…to subsets of nodes and edges, and to rearrange the graph using layout algorithms with the purpose of identifying modules or hubs. The inference of microbial associations (or of more complex associations in meta-omic data) requires specialized tools (Liu et al, 2020;Peschel et al, 2020;Röttjers and Faust, 2018). Unfortunately, interactions between taxa, or between taxa and metabolites, are still being inferred from correlation (either Pearsons's r or rank order correlations) matrices using some sort of arbitrary threshold for sparsification (i.e.…”
Section: Methods For the Inference And Visualisation Of Microbial Association Networkmentioning
confidence: 99%
“…The interested readers are encouraged to peruse one of the many recent reviews on the subject (Jiang et al, 2019;Liu et al, 2020;Röttjers and Faust, 2018). A few approaches have been used more frequently or tested in comparative studies and are available in NetCoMi, a R package specialized in microbial association network inference and network comparisons (Peschel et al, 2020). SparCC (Sparse Correlations for Compositional data; Friedman and Alm, 2012) infers networks based on Pearson correlations on log-ratio transformed data, thus addressing, at least in part, the issue of compositionality, and has been frequently used.…”
Section: Methods For the Inference And Visualisation Of Microbial Association Networkmentioning
confidence: 99%
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“…Correlation network inference on clr-normalized abundances was performed using the SparCC [ 45 ] approach, as implemented in the R package NetCoMi (v1.0.2) [ 46 ], and significant edges were selected using Student’s t -test. Community structures were estimated using greedy optimization of modularity, hub node detection was performed using a threshold of 0.8, and quantitative assessment of the network was performed using a permutation approach (100,000 bootstraps) with an adaptive Benjamini–Hochberg correction to adjust p -values for multiple testing.…”
Section: Methodsmentioning
confidence: 99%