--- dataset_name: riken2018_pbmc_supercentenarians annotations_creators: - expert-generated language: - en multilinguality: "no" pretty_name: PBMCs from Supercentenarians and Controls (Hashimoto et al. 2018) task_categories: - cell-type-classification size_categories: - 100K *Single-cell transcriptomics reveals expansion of cytotoxic CD4 T cells in supercentenarians* > — Hashimoto et al., *PNAS* (2019) > [DOI:10.1073/pnas.1907883116](https://doi.org/10.1073/pnas.1907883116) The final object includes cells from three experimental batches (firstrun, SC1, SC2) and supports aging-focused immunology research. ## Transformation Summary Raw data was downloaded from [http://gerg.gsc.riken.jp/SC2018/](http://gerg.gsc.riken.jp/SC2018/) and processed with the following steps: 1. **Download and Extraction**: - Retrieved UMI matrix (`01.UMI.txt.gz`) and cell barcodes (`03.Cell.Barcodes.txt.gz`). - Extracted expression matrices from `SC1.tar` and `SC2.tar` using `scanpy.read_10x_mtx`. 2. **UMI Matrix Assembly**: - Constructed an `AnnData` object from the UMI count matrix and matched barcodes. - Gene names were mapped to Ensembl IDs using SC1 reference. 3. **Batch Merging**: - Merged `firstrun`, `SC1`, and `SC2` into one `AnnData` object using `scanpy.concat`, with batch labels preserved. 4. **Metadata Curation**: - Filled in missing columns for sample origin (`SC1`, `SC2`, etc.) based on batch labels. - Added standardized columns: `age_int`, `assay_simple`, `cell_type`, and `centenarian_status`. 5. **Output**: - Saved final object to `raw/riken2018/processed/riken2018_processed.h5ad`. ## Supported Tasks and Benchmarks - **Immune Aging Analysis**: Especially suited for studying the immune profile of extreme aging. - **CD4 T Cell Phenotyping**: Detects rare CD4 cytotoxic T cell expansions. - **Batch Integration**: Includes multiple experimental runs merged with consistent annotations. ## Languages Textual metadata and annotations are in English. ## Dataset Structure ### Data Instances Each instance represents a single PBMC with: - Raw UMI expression data - Batch origin (firstrun, SC1, SC2) - Age group metadata (`centenarian_status`, `age_int`) - Cell type label (`PBMC`) ### Data Splits - No formal train/test split provided. Users may stratify by `centenarian_status`. ## Dataset Creation ### Curation Rationale The dataset was assembled to study cellular aging phenotypes by comparing PBMC populations between centenarians and controls, with a focus on adaptive immunity. ### Source Data - 7 supercentenarians and 5 controls - Collected and sequenced using 10x Genomics Chromium 3' technology - Published by RIKEN Center for Integrative Medical Sciences ### Preprocessing Details - Raw count matrix: `01.UMI.txt.gz` - Barcode matching and gene name alignment using 10x `SC1` reference - Minor cleanup of missing metadata and consistent column naming - Concatenation with `scanpy` after aligning gene and barcode identifiers ## Licensing Information This dataset is distributed under the **Creative Commons BY 4.0** license. Please cite the original paper when using this dataset in publications. ## Citation ```bibtex @article{hashimoto2019supercentenarians, title={Single-cell transcriptomics reveals expansion of cytotoxic CD4 T cells in supercentenarians}, author={Hashimoto, Kosuke and Kouno, Tsukasa and Ikawa, Tomokatsu and et al.}, journal={Proceedings of the National Academy of Sciences}, volume={116}, number={48}, pages={24242--24251}, year={2019}, publisher={National Academy of Sciences} }