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A torch-based integration method for single-cell multi-omic data.

Project description

MIDAS

MIDAS Logo

MIDAS turns raw mosaic single-cell multimodal data into imputed, batch-corrected matrices and disentangled latent representations.

CI Status PyPI version Documentation Status License Open In Colab GitHub Stars

Documentation: scmidas.readthedocs.io

Key features

  • Mosaic integration — handle datasets where different batches measure different modality combinations (e.g. some batches have RNA + ATAC, others only RNA).
  • Multi-modal support — RNA, ADT, ATAC out of the box; configurable for additional modalities.
  • Imputation — fill in missing modalities with model-derived values.
  • Batch correction — remove technical variation across batches.
  • Knowledge transfer — fine-tune a pre-trained reference model on a query dataset.
  • Multi-GPU training — built on PyTorch Lightning, with DDP support for mosaic data.
  • TensorBoard integration — live training loss and UMAP visualisations.

Installation

conda create -n scmidas python=3.12
conda activate scmidas
pip install scmidas

Quick start

A bundled 1600-cell PBMC RNA+ADT mosaic dataset lets you go from pip install to a UMAP in about a minute on a single GPU — no extra downloads, no config files. Click the Colab badge to run it without installing anything, or copy the snippet:

import scanpy as sc
import scmidas

mdata = scmidas.datasets.quickstart()       # bundled toy MuData
model = scmidas.integrate(mdata)            # ~1 min on a mid-range GPU; writes mdata.obsm['X_midas']
sc.pp.neighbors(mdata, use_rep='X_midas')   # any scanpy downstream works directly

This produces lineage-separated clusters that mix freely across batches:

quickstart UMAP

⚠️ scmidas.integrate() defaults are tuned for the bundled toy dataset. For your own data, override max_epochs (1000-2000 is typical) and consider letting batch_size default back to 256, e.g. scmidas.integrate(my_mdata, max_epochs=2000, batch_size=256). See the full demos for end-to-end pipelines on real-sized data, including imputation, batch correction, and cross-modality translation.

Bring your own data

If you already have an :class:AnnData per modality, the bridge to MIDAS is one cell:

import mudata as mu
import scmidas

mdata = mu.MuData({'rna': adata_rna, 'adt': adata_adt})  # share a 'batch' obs column
scmidas.MIDAS.setup_mudata(mdata, batch_key='batch')
model = scmidas.MIDAS(mdata)
model.train(max_epochs=2000)
mdata.obsm['X_midas'] = model.get_latent_representation()

For a full scanpy-native walkthrough (download a 10x CITE-seq sample → QC → HVG → MuData → MIDAS), see Preparing your data. For the data contract (what goes where in the MuData), see Data layout.

Reproducibility

Code and data to reproduce the results in the paper live on the reproducibility branch.

Citation

If you use MIDAS in your research, please cite:

@article{he2024mosaic,
  title   = {Mosaic integration and knowledge transfer of single-cell multimodal data with {MIDAS}},
  author  = {He, Zhen and Hu, Shuofeng and Chen, Yaowen and An, Sijing
             and Zhou, Jiahao and Liu, Runyan and Shi, Junfeng and Wang, Jing
             and Dong, Guohua and Shi, Jinhui and Zhao, Jiaxin and Ou-Yang, Le
             and Zhu, Yuan and Bo, Xiaochen and Ying, Xiaomin},
  journal = {Nature Biotechnology},
  volume  = {42},
  number  = {10},
  pages   = {1594--1605},
  year    = {2024},
  doi     = {10.1038/s41587-023-02040-y},
  publisher = {Nature Publishing Group}
}

Contributing

Bug reports and feature requests: please open a GitHub issue. For code contributions, branch from main, make sure pytest tests/ passes, and open a pull request — for non-trivial changes, an issue first to discuss the design is appreciated.

License

MIT.

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