Automated cell type annotation and exploration of single cell signalling dynamics using mass cytometry and machine learning
收藏Zenodo2024-04-19 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.10984477
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资源简介:
In this repository we share processed data that were generated using the bioinformatics framework we developed in publication "Automated cell type annotation and exploration of single cell signalling dynamics using mass cytometry and machine learning".
These datasets accompany the source codes provided in our GitHub page https://github.com/dkleftogi/singleCellClassification.
The datasets are as follows:
cofactors_v2.RDa : antibody-specific co-factors used to harmonise fcs files from different batches
ctrl_annotated.RDa : the annotated cohort of seven healthy donors
data_umap.RDa : UMAP representation of the data used to generate the figures in our paper
DREMI_feature_matrix.RDa : the DREMI feature matrix used for ML-based modelling presented in our paper
median_feature_matrix.RDa : the baseline feature matrix based on medians used for ML-bases modelling in the paper
patient_annotated.RDa : the annotated cohort of leukemia patients (n=43)
We note that the raw files of the leukemia cohort can be found in http://flowrepository.org/id/RvFr0LLv9McDJ89jgK50G4lwnfDFRTrcMelxYgnSIcE2Cymrpf2qh2NaWybtWDNH
提供机构:
Zenodo
创建时间:
2024-04-19



