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README.md
# MetaboDynamics: [![](https://img.shields.io/badge/lifecycle-stable-brightgreen.svg)](https://lifecycle.r-lib.org/articles/stages.html#stable) [![](https://img.shields.io/badge/doi-10.18129/B9.bioc.MetaboDynamics%20-yellow.svg)](https://doi.org/10.18129/B9.bioc.MetaboDynamics ) [![License: GPL](https://img.shields.io/badge/license-GPL-blue.svg)](https://cran.r-project.org/web/licenses/GPL) MetaboDynamics provides a framework of Bayesian models for robust and easy analysis of longitudinal metabolomics Data. It takes concentration tables with at least three replicates and KEGG IDs of metabolites as input and provides robust estimation of mean concentrations, functional enrichment analysis employing the KEGG database and comparison of clusters of metabolite dynamics patterns (“dynamics clusters”) under different biological conditions. ## Installation MetaboDynamics is an [R](https://cran.r-project.org/) package available from the [Bioconductor](https://www.bioconductor.org) "devel branch". URL: https://www.bioconductor.org/packages/devel/bioc/html/MetaboDynamics.html To install MetaboDynamics, start R (>4.4) and enter: ``` r if (!require("BiocManager", quietly = TRUE)) install.packages("BiocManager") # The following initializes usage of Bioc devel BiocManager::install(version='devel') BiocManager::install("MetaboDynamics") ``` You can also install the development version (current bug fixes and added features can be found in the [NEWS](https://github.com/KatjaDanielzik/MetaboDynamics/blob/main/inst/NEWS.md) file) of MetaboDynamics from [GitHub](https://github.com/) with: ``` r if (!require("devtools", quietly = TRUE)) install.packages("devtools") devtools::install_github("KatjaDanielzik/MetaboDynamics",build_vignettes=TRUE) ``` ## Overview MetaboDynamics facilitates the analysis of longitudinal metabolomics data e.g. from untargeted LC-MS. Common tools mostly only allow the comparison between two time points instead of analyzing the full observed dynamics profile of metabolite concentrations over multiple time points. Furthermore common tools mostly only allow to compare two experimental conditions and are using frequentist statistical methods. As metabolomics data is often noisy, robust methods for the estimation of mean metabolite concentrations per time point are needed. MetaboDynamics allows longitudinal analysis over multiple time points and experimental conditions employing three probabilistic models: 1) A hierarchical Bayesian model for the robust estimation of means at every time point despite varying spread between time points.Hierarchical Bayesian models are known to balance between over- and underfitting, allowing to gain as much information from the noisy data as possible while not being overly confident about the estimates. Its outputs are A) differences between time points for every metabolite (differential concentrations), and B) metabolite specific dynamics profiles that can be used for clustering. 2) Over-representation analysis of KEGG-functional modules such as Amino acid metabolism or KEGG pathways in dynamics clusters with a quantitative model that employs a hypergeometric distribution and reports probabilities of a functional module or pathway being over-represented in a cluster. Can also estimate under-representation of functional modules. 3) Estimation of the dynamics similarity between metabolite clusters of different experimental conditions with a Bayesian model. This model infers the mean pairwise Euclidean distance of composing metabolite dynamics between two clusters (i.e. every metabolite dynamics from cluster A is compared with every metabolite dynamics of cluster B). In combination with the comparison of metabolites that compose two clusters this allows to spot differences and similarities between experimental conditions. For examples clusters of metabolites with similar metabolite composition but different dynamics between experimental conditions. ## Workflow For a worked example on simulated data see [Vignette](https://www.bioconductor.org/packages/devel/bioc/vignettes/MetaboDynamics/inst/doc/MetaboDynamics.html) or if package is installed: ``` r browseVignettes("MetaboDynamics") ``` ![](man/figures/README-MetaboDynamics_pitch.png)