Awesome
Deconvoluting Spatial Transcriptomics data through Graph-based convolutional networks (DSTG)
This is a TensorFlow implementation of DSTG for decomposing spatial transcriptomics data, which is described in our paper:
Installation
python setup.py install
Requirements
- tensorflow (>0.12)
- networkx
Run the demo
load the example data using the convert_data.R script In the example data, we provide two synthetic spatial transcriptomics data generated from scRNA-seq data (GSE72056). Each synthetic data consists of 1,000 spots, which can be found in folder synthetic_data.
cd DSTG
Rscript convert_data.R # load example data
python train.py # run DSTG
Predicted compositions within each spot are saved in will be shown in the DSTG_Result folder.
Performance of JSD score will be shown if you run
Rscript evaluation.R
If you want to use your own scRNA-seq data to deconvolute your spatail transcriptomcis data, provide you data to script below:
Run your own data
When using your own scRNA-seq data to deconvolute your spatail transcriptomcis data, you have to provide
- the raw scRNA-seq data matrix and label, which are saved as .RDS format (e.g. 'scRNAseq_data.RDS' & 'scRNAseq_label.RDS')
- the raw spatial transcriptomics data matrix saved as .RDS format (e.g. 'spatial_data.RDS')
cd DSTG
Rscript convert_data.R scRNAseq_data.RDS spatial_data.RDS scRNAseq_label.RDS
python train.py # run DSTG
Then you will get your results in the DSTG_Result folder.
Cite
Please cite our paper if you use this code in your own work:
Qianqian Song, Jing Su, DSTG: deconvoluting spatial transcriptomics data through graph-based artificial intelligence, Briefings in Bioinformatics, 2021;, bbaa414, https://doi.org/10.1093/bib/bbaa414