Single Cell Perturbation Datasets
scPerturb.org is a resource of standardized datasets reporting targeted perturbations with single-cell readouts and to facilitate the development and benchmarking of computational approaches in system biology.
Read more and cite scPerturb
scPerturb: Information Resource for Harmonized Single-Cell Perturbation Data Stefan Peidli, Tessa Durakis Green, Ciyue Shen, Torsten Gross, Joseph Min, Jake Taylor-King, Debora Marks, Augustin Luna, Nils Bluthgen, Chris Sander bioRxiv 2022.08.20.504663; doi: 10.1101/2022.08.20.504663
Data Explorer
Explore dataset properties here (e.g., links to publications, perturbation type, perturbation counts, etc.)
Data
- RNA-seq datasets: zenodo.org/record/7041849
- ATAC-seq: zenodo.org/record/7058382
- Dataset information: bioRxiv Supplementary Table 1
Source Code
- Source code and bug reports on GitHub
- scPerturb Python Package for the use of E-distance to compare and statistically test how much cells in high-dimensional singe-cell data differ (e.g., untreated vs treated)
Funding and Acknowledgements
National Resource for Network Biology (NRNB, P41GM103504) ● Supported by the Wellcome Leap ∆Tissue Program ● Deutsche Forschungsgemeinschaft (DFG, RTG2424 CompCancer) ● Einstein Stiftung Berlin (Einstein visiting fellow program) ● Computation was in part performed on the HPC for Research cluster of the Berlin Institute of Health
Chris Sander Lab on Twitter: @sandercbio