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SlimR

Adaptive Machine Learning-Powered, Context-Matching Tool for Single-Cell and Spatial Transcriptomics Annotation

Annotates single-cell and spatial-transcriptomic (ST) data using context-matching marker datasets. It creates a unified marker list (`Markers_list`) from multiple sources: built-in curated databases ('Cellmarker2', 'PanglaoDB', 'ScType', 'scIBD', 'TCellSI', 'PCTIT', 'PCTAM'), Seurat objects with cell labels, or user-provided Excel tables. SlimR first uses adaptive machine learning for parameter optimization, and then offers two automated annotation approaches: 'cluster-based' and 'per-cell'. Cluster-based annotation assigns one label per cluster, expression-based probability calculation, and AUC validation. Per-cell annotation assigns labels to individual cells using three scoring methods with adaptive thresholds and ratio-based confidence filtering, plus optional UMAP spatial smoothing, making it ideal for heterogeneous clusters and rare cell types. The package also supports semi-automated workflows with heatmaps, feature plots, and combined visualizations for manual annotation. For more information, see the package documentation at <https://github.com/zhaoqing-wang/SlimR>.

Versions across snapshots

VersionRepositoryFileSize
1.1.3 rolling linux/jammy R-4.5 SlimR_1.1.3.tar.gz 3.9 MiB
1.1.3 rolling linux/noble R-4.5 SlimR_1.1.3.tar.gz 3.9 MiB
1.1.3 rolling source/ R- SlimR_1.1.3.tar.gz 2.7 MiB
1.1.3 latest linux/jammy R-4.5 SlimR_1.1.3.tar.gz 3.9 MiB
1.1.3 latest linux/noble R-4.5 SlimR_1.1.3.tar.gz 3.9 MiB
1.1.3 latest source/ R- SlimR_1.1.3.tar.gz 2.7 MiB
1.1.3 2026-04-26 source/ R- SlimR_1.1.3.tar.gz 2.7 MiB
1.1.3 2026-04-23 source/ R- SlimR_1.1.3.tar.gz 2.7 MiB
1.1.3 2026-04-09 windows/windows R-4.5 SlimR_1.1.3.zip 3.9 MiB

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