Mercurial > repos > iuc > scanpy_filter
diff README.md @ 17:713a0c65b1fe draft
planemo upload for repository https://github.com/galaxyproject/tools-iuc/tree/master/tools/scanpy/ commit 91121b1e72696f17478dae383badaa71e9f96dbb
author | iuc |
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date | Sat, 14 Sep 2024 12:42:13 +0000 |
parents | 6a76b60e05f5 |
children |
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--- a/README.md Tue Aug 20 09:53:08 2024 +0000 +++ b/README.md Sat Sep 14 12:42:13 2024 +0000 @@ -25,6 +25,7 @@ `pp.highly_variable_genes` | Extract highly variable genes `pp.subsample` | Subsample to a fraction of the number of observations `pp.downsample_counts` | Downsample counts so that each cell has no more than target_counts + `pp.scrublet` | Predict doublets 3. Normalize (`normalize.xml`) @@ -34,14 +35,18 @@ `pp.recipe_zheng17` | Normalization and filtering as of [Zheng17] `pp.recipe_weinreb17` | Normalization and filtering as of [Weinreb17] `pp.recipe_seurat` | Normalization and filtering as of Seurat [Satija15] + `external.pp.magic` | Denoising using Markov Affinity-based Graph Imputation of Cells (MAGIC) API 4. Remove confounders (`remove_confounder.xml`) Methods | Description --- | --- `pp.regress_out` | Regress out unwanted sources of variation - `pp.mnn_correct` | Correct batch effects by matching mutual nearest neighbors + <!-- `pp.mnn_correct` | Correct batch effects by matching mutual nearest neighbors --> `pp.combat` | ComBat function for batch effect correction + `external.pp.bbknn` | Batch effect removal with Batch balanced KNN (BBKNN) + `external.pp.harmony_integrate` | Integrate multiple single-cell experiments with Harmony + `external.pp.scanorama_integrate` | Integrate multiple single-cell experiments with Scanorama 5. Clustering, embedding and trajectory inference (`cluster_reduce_dimension.xml`) @@ -49,14 +54,14 @@ --- | --- `tl.louvain` | Cluster cells into subgroups `tl.leiden` | Cluster cells into subgroups - `tl.pca` | Principal component analysis - `pp.pca` | Principal component analysis (appears to be the same func...) + `pp.pca` | Principal component analysis `tl.diffmap` | Diffusion Maps `tl.tsne` | t-SNE `tl.umap` | Embed the neighborhood graph using UMAP `tl.draw_graph` | Force-directed graph drawing `tl.dpt` | Infer progression of cells through geodesic distance along the graph `tl.paga` | Mapping out the coarse-grained connectivity structures of complex manifolds + `tl.embedding_density` | Calculate the density of cells in an embedding (per condition) 6. Plot (`plot.xml`) @@ -66,18 +71,20 @@ --- | --- `pl.scatter` | Scatter plot along observations or variables axes `pl.heatmap` | Heatmap of the expression values of set of genes + `pl.tracksplot` | Tracks plot of the expression values per cell `pl.dotplot` | Makes a dot plot of the expression values `pl.violin` | Violin plot `pl.stacked_violin` | Stacked violin plots `pl.matrixplot` | Heatmap of the mean expression values per cluster `pl.clustermap` | Hierarchically-clustered heatmap - + 2. Preprocessing Methods | Description --- | --- `pl.highest_expr_genes` | Plot the fraction of counts assigned to each gene over all cells `pl.highly_variable_genes` | Plot dispersions versus means for genes + `pl.scrublet_score_distribution` | Histogram of doublet scores 3. PCA @@ -96,12 +103,13 @@ `pl.umap` | Scatter plot in UMAP basis `pl.diffmap` | Scatter plot in Diffusion Map basis `pl.draw_graph` | Scatter plot in graph-drawing basis + `pl.embedding_density` | Density of cells in an embedding (per condition) 5. Branching trajectories and pseudotime, clustering Methods | Description --- | --- - `pl.dpt_groups_pseudotime` | Plot groups and pseudotime + <!-- `pl.dpt_groups_pseudotime` | Plot groups and pseudotime --> `pl.dpt_timeseries` | Heatmap of pseudotime series `pl.paga` | Plot the abstracted graph through thresholding low-connectivity edges `pl.paga_compare` | Scatter and PAGA graph side-by-side @@ -113,3 +121,8 @@ --- | --- `pl.rank_genes_groups` | Plot ranking of genes using dotplot plot `pl.rank_genes_groups_violin` | Plot ranking of genes for all tested comparisons + `pl.rank_genes_groups_stacked_violin` | Plot ranking of genes as stacked violin plot + `pl.rank_genes_groups_heatmap` | Plot ranking of genes as heatmap plot + `pl.rank_genes_groups_dotplot` | Plot ranking of genes as dotplot plot + `pl.rank_genes_groups_matrixplot` | Plot ranking of genes as matrixplot plot + `pl.rank_genes_groups_tracksplot` | Plot ranking of genes as tracksplot plot