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GEARS is a geometric deep learning model that predicts outcomes of novel multi-gene perturbations

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GEARS: Predicting transcriptional outcomes of novel multi-gene perturbations

This repository hosts the official implementation of GEARS, a method that can predict transcriptional response to both single and multi-gene perturbations using single-cell RNA-sequencing data from perturbational screens.

gears

Installation

Install PyG, and then do pip install cell-gears.

[New] Updates in v0.1.1

  • Fixed training breakpoint bug from v0.1.0
  • Preprocessed dataloader now available for Replogle 2022 RPE1 and K562 essential datasets
  • Added custom split, fixed no-test split

A note on usage:

  • GEARS is currently not designed to handle training across multiple cell types or cross-cell type transfer of predictions
  • GEARS has not been tested for training with bulk sequencing data.
  • When trained on single-gene perturbation data alone, GEARS cannot reliably predict outcomes for combinatorial perturbations. The model must be trained on some combinatorial perturbation data to make such predictions.
  • GEARS has been tested using datasets that contain multiple perturbation types, and multiple cells within each perturbation type. Datasets with too few cells per perturbation or too few perturbations may not work well with our model.

Core API Interface

Using the API, you can (1) reproduce the results in our paper and (2) train GEARS on your perturbation dataset using a few lines of code.

from gears import PertData, GEARS

# get data
pert_data = PertData('./data')
# load dataset in paper: norman, adamson, dixit.
pert_data.load(data_name = 'norman')
# specify data split
pert_data.prepare_split(split = 'simulation', seed = 1)
# get dataloader with batch size
pert_data.get_dataloader(batch_size = 32, test_batch_size = 128)

# set up and train a model
gears_model = GEARS(pert_data, device = 'cuda:8')
gears_model.model_initialize(hidden_size = 64)
gears_model.train(epochs = 20)

# save/load model
gears_model.save_model('gears')
gears_model.load_pretrained('gears')

# predict
gears_model.predict([['CBL', 'CNN1'], ['FEV']])
gears_model.GI_predict(['CBL', 'CNN1'], GI_genes_file=None)

To use your own dataset, create a scanpy adata object with a gene_name column in adata.var, and two columns condition, cell_type in adata.obs. Then run:

pert_data.new_data_process(dataset_name = 'XXX', adata = adata)
# to load the processed data
pert_data.load(data_path = './data/XXX')

Demos

Name Description
Dataset Tutorial Tutorial on how to use the dataset loader and read customized data
Model Tutorial Tutorial on how to train GEARS
Plot top 20 DE genes Tutorial on how to plot the top 20 DE genes
Uncertainty Tutorial on how to train an uncertainty-aware GEARS model

Colab

Name Description
Using Trained Model Use a model trained on Norman et al. 2019 to make predictions (Needs Colab Pro)

Cite Us

@article{roohani2023predicting,
  title={Predicting transcriptional outcomes of novel multigene perturbations with gears},
  author={Roohani, Yusuf and Huang, Kexin and Leskovec, Jure},
  journal={Nature Biotechnology},
  year={2023},
  publisher={Nature Publishing Group US New York}
}

Paper: Link

Code for reproducing figures: Link

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