yamss
github.com/hansenlab/yamssTools to analyze and visualize high-throughput metabolomics data aquired using chromatography-mass spectrometry. These tools preprocess data in a way that enables reliable and powerful differential analysis. At the core of these methods is a peak detection phase that pools information across all samples simultaneously. This is in contrast to other methods that detect peaks in a sample-by-sample basis.
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- GitHub — github.com/hansenlab/yamss
- Bioconductor — yamss
Related resources
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