EdinOmics Dash App
github.com/edinomics/a-python-dash-app-and-cpanel-workflow-to-automate-metabolomics-data-analyses-and-visualisationAn interactive platform that performs statistical analyses on metabolomics datasets and allows visualising results with ease. The interface gives users autonomy in creating figures suited to their reporting and publication needs.
Sourced from
- bio.tools — dash_app_to_automate_metabolomics_data_analyses
- GitHub — github.com/edinomics/a-python-dash-app-and-cpanel-workflow-to-automate-metabolomics-data-analyses-and-visualisation
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