Another look at microbe–metabolite interactions: how scale invariant correlations can outperform a neural network
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[1] Jean M. Macklaim,et al. Unifying the analysis of high-throughput sequencing datasets: characterizing RNA-seq, 16S rRNA gene sequencing and selective growth experiments by compositional data analysis , 2014, Microbiome.
[2] Matthew B. Scholz,et al. Multi-Omic Analysis of the Microbiome and Metabolome in Healthy Subjects Reveals Microbiome-Dependent Relationships Between Diet and Metabolites , 2019, Front. Genet..
[3] Jan Dallinga,et al. Volatile metabolites in breath strongly correlate with gut microbiome in CD patients. , 2018, Analytica chimica acta.
[4] James R. Foulds,et al. Learning accurate representations of microbe-metabolite interactions , 2019, Nature Methods.
[5] Tomoyoshi Soga,et al. Metagenomic and metabolomic analyses reveal distinct stage-specific phenotypes of the gut microbiota in colorectal cancer , 2019, Nature Medicine.
[6] Jürg Bähler,et al. Proportionality: A Valid Alternative to Correlation for Relative Data , 2014, bioRxiv.
[7] John Aitchison,et al. The Statistical Analysis of Compositional Data , 1986 .
[8] Thomas P. Quinn,et al. Understanding sequencing data as compositions: an outlook and review , 2017, bioRxiv.
[9] Kevin S. Bonham,et al. Multi-omics of the gut microbial ecosystem in inflammatory bowel diseases , 2019, Nature.