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Benchmarks
Batch integration embed
Removing batch effects while preserving biological variation (embedding output)
3 datasets ·
32 methods ·
8 control methods ·
10 metrics
Batch integration feature
Removing batch effects while preserving biological variation (feature output)
3 datasets ·
18 methods ·
7 control methods ·
11 metrics
Batch integration graph
Removing batch effects while preserving biological variation (graph output)
3 datasets ·
40 methods ·
5 control methods ·
4 metrics
Cell-Cell Communication Inference (Ligand-Target)
Detect interactions between ligands and target cell types
1 datasets ·
14 methods ·
2 control methods ·
2 metrics
Cell-Cell Communication Inference (Source-Target)
Detect interactions between source and target cell types
1 datasets ·
14 methods ·
2 control methods ·
2 metrics
Denoising
Removing noise in sparse single-cell RNA-sequencing count data
3 datasets ·
11 methods ·
2 control methods ·
2 metrics
Dimensionality reduction for visualisation
Reduction of high-dimensional datasets to 2D for visualization & interpretation
4 datasets ·
23 methods ·
3 control methods ·
10 metrics
Foundation models
Modelling of single-cells to perform multiple tasks.
Recent developments in deep-learning have led to the creation of several “foundation models” for single-cell data. These are large models that have been trained on data from…
Label Projection
Automated cell type annotation from rich, labeled reference data
8 datasets ·
16 methods ·
2 control methods ·
3 metrics
Multimodal Data Integration
Alignment of cellular profiles from two different modalities
3 datasets ·
5 methods ·
2 control methods ·
2 metrics
Perturbation Prediction
Predicting how small molecules change gene expression in different cell types.
1 datasets ·
6 methods ·
6 control methods ·
5 metrics
Spatial Decomposition
Calling cell-type compositions for spot-based spatial transcriptomics data
7 datasets ·
13 methods ·
2 control methods ·
1 metrics
Spatially Variable Genes
Spatially variable genes (SVGs) are genes whose expression levels vary significantly across different spatial regions within a tissue or across cells in a spatially structured context.
50 datasets ·
14 methods ·
2 control methods ·
1 metrics
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