This is a Pytorch implementation of Harmony algorithm on single-cell sequencing data integration. Please see Ilya Korsunsky et al., 2019 for details.
This package is published on PyPI:
pip install harmony-pytorch
Given an embedding X
as a N-by-d matrix in numpy array structure (N for number of cells, d for embedding components) and cell attributes as a Data Frame df_metadata
, use Harmony for data integration as the following:
from harmony import harmonize Z = harmonize(X, df_metadata, batch_key = 'Channel')
where Channel
is the attribute in df_metadata
for batches.
Alternatively, if there are multiple attributes for batches, write:
Z = harmonize(X, df_metadata, batch_key = ['Lab', 'Date'])
It's easy for Harmony-pytorch to work with count matrix data structure from PegasusIO package. Let data
be a MultimodalData object in Python:
from harmony import harmonize Z = harmonize(data.obsm['X_pca'], data.obs, batch_key = 'Channel') data.obsm['X_pca_harmony'] = Z
This will calculate the harmonized PCA matrix for the default UnimodalData of data
.
Given a UnimodalData object unidata
, you can also use the code above to perform Harmony algorithm: simply substitute unidata
for data
there.
It's easy for Harmony-pytorch to work with annotated count matrix data structure from anndata package. Let adata
be an AnnData object in Python:
from harmony import harmonize Z = harmonize(adata.obsm['X_pca'], adata.obs, batch_key = '<your-batch-key>') adata.obsm['X_harmony'] = Z
where <your-batch-key>
should be replaced by the actual batch key attribute name in your data.
For details about AnnData
data structure, please refer to its documentation.