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Quantifying the effect of experimental perturbations in scRNA-seq data.

Quick Start - check out our guided tutorial in python.

For a more in depth explanation of MELD, read our manuscript on BioRxiv:

Enhancing experimental signals in single-cell RNA-sequencing data using graph signal processing. Daniel B Burkhardt, Jay S Stanley, Ana Luisa Perdigoto, Scott A Gigante, Kevan C Herold, Guy Wolf, Antonio Giraldez, David van Dijk, Smita Krishnaswamy. BioRxiv. doi:10.1101/532846.


pip install --user git+git://


MELD requires Python >= 3.5. All other requirements are installed automatically by pip.

Usage example

import meld
import graphtools
G = graphtools.Graph(data, use_pygsp=True)
meld_score = meld.meld(label, G=G, beta=0.5)

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