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license: cc-by-4.0 |
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The dataset contains data used in work: |
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"Perturbench: Benchmarking machine learning models for cellular perturbation analysis." |
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The data comes from the following publications: |
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- Norman, T. M., Horlbeck, M. A., Replogle, J. M., Ge, A. Y., Xu, A., Jost, M., Gilbert, L. A., and Weissman, J. S. (2019). *Exploring genetic interaction manifolds constructed from rich single-cell phenotypes.* Science, 365(6455):786–793. |
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- Srivatsan, S. R., McFaline-Figueroa, J. L., Ramani, V., Saunders, L., Cao, J., Packer, J., Pliner, H. A., Jackson, D. L., Daza, R. M., Christiansen, L., Zhang, F., Steemers, F., Shendure, J., and Trapnell, C. (2020). *Massively multiplex chemical transcriptomics at single-cell resolution.* Science, 367(6473):45–51. |
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- Frangieh, C. J., Melms, J. C., Thakore, P. I., Geiger-Schuller, K. R., Ho, P., Luoma, A. M., Cleary, B., Jerby-Arnon, L., Malu, S., Cuoco, M. S., Zhao, M., Ager, C. R., Rogava, M., Hovey, |
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L., Rotem, A., Bernatchez, C., Wucherpfennig, K. W., Johnson, B. E., Rozenblatt-Rosen, O., |
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Schadendorf, D., Regev, A., and Izar, B. (2021). *Multimodal pooled Perturb-CITE-seq screens in |
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patient models define mechanisms of cancer immune evasion*. Nat. Genet., 53(3):332–341. |
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- Jiang, L., Dalgarno, C., Papalexi, E., Mascio, I., Wessels, H.-H., Yun, H., Iremadze, N., Lithwick Yanai, G., Lipson, D., and Satija, R. (2024a). *Systematic reconstruction of molecular pathway signatures using scalable single-cell perturbation screens.* bioRxiv, page 2024.01.29.576933. |
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- McFaline-Figueroa, J. L., Srivatsan, S., Hill, A. J., Gasperini, M., Jackson, D. L., Saunders, |
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L., Domcke, S., Regalado, S. G., Lazarchuck, P., Alvarez, S., et al. |
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(2024). *Multiplex single cell chemical genomics reveals the kinase dependence of the response to targeted therapy*. Cell Genomics, 4(2) |
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- Szałata, A., Benz, A., Cannoodt, R., Cortes, M., Fong, J., Kuppasani, S., Lieberman, R., Liu, T., Mas-Rosario, J. A., Meinl, R., Nourisa, J., Tumiel, J., Tunjic, T. M., Wang, M., Weber, N., Zhao, H., Anchang, B., Theis, F. J., Luecken, M. D., Burkhardt, D. B. (2024). *A benchmark for prediction of transcriptomic responses to chemical perturbations across cell types.* NeurIPS, (38). |
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Datasets with fixed splits have their splits included as `.csv` files with two colums: the first corresponds to the cell ID (which is the `.obs_names` of the respective h5ad file) and second to the split value (`train`, `val`, `test`). Some datasets contain multiple splits in which case the split files are in a `tar.gz`. |
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