ExpoRiskR

github.com/ppchaudhary/exporiskr
Active0updated 4 months ago
R
MIT

ExpoRiskR provides tools for exposure-aware multi-omics risk modeling in translational and environmental health studies. The package aligns sample identifiers across exposure and multi-omics blocks, performs lightweight preprocessing, and fits exposure-adjusted association models to build interpretable microbe–metabolite networks. It also computes simple exposure perturbation summaries and generates publication-ready visualizations. Workflows support both matrix-based inputs and SummarizedExperiment objects.

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  • BioconductorExpoRiskR
  • GitHubgithub.com/ppchaudhary/exporiskr

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