Note
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Plot circular embedding¶
This example shows how to plot absorption probabilities using circular a posteriori projection as used in [Velten17].
import cellrank as cr
adata = cr.datasets.pancreas_preprocessed("../example.h5ad")
adata
Out:
AnnData object with n_obs × n_vars = 2531 × 2000
obs: 'day', 'proliferation', 'G2M_score', 'S_score', 'phase', 'clusters_coarse', 'clusters', 'clusters_fine', 'louvain_Alpha', 'louvain_Beta', 'initial_size_unspliced', 'initial_size_spliced', 'initial_size', 'n_counts', 'velocity_self_transition', 'dpt_pseudotime'
var: 'highly_variable_genes', 'gene_count_corr', 'means', 'dispersions', 'dispersions_norm', 'fit_r2', 'fit_alpha', 'fit_beta', 'fit_gamma', 'fit_t_', 'fit_scaling', 'fit_std_u', 'fit_std_s', 'fit_likelihood', 'fit_u0', 'fit_s0', 'fit_pval_steady', 'fit_steady_u', 'fit_steady_s', 'fit_variance', 'fit_alignment_scaling', 'velocity_genes'
uns: 'clusters_colors', 'clusters_fine_colors', 'diffmap_evals', 'iroot', 'louvain_Alpha_colors', 'louvain_Beta_colors', 'neighbors', 'pca', 'recover_dynamics', 'velocity_graph', 'velocity_graph_neg', 'velocity_params'
obsm: 'X_diffmap', 'X_pca', 'X_umap', 'velocity_umap'
varm: 'PCs', 'loss'
layers: 'Ms', 'Mu', 'fit_t', 'fit_tau', 'fit_tau_', 'spliced', 'unspliced', 'velocity', 'velocity_u'
obsp: 'connectivities', 'distances'
First, we compute the absorption probabilities.
cr.tl.terminal_states(
adata,
cluster_key="clusters",
weight_connectivities=0.2,
n_states=3,
softmax_scale=4,
show_progress_bar=False,
)
cr.tl.lineages(adata)
We can now visualize the absorption probabilities by projecting them onto a unit circle. The tips of the simplex indicate the probability of 1.0 for the lineages and the midpoints of the edges of the edges mark where the probabilities of the lineages connected by an edge are equal.
cr.pl.circular_projection(
adata, keys=["clusters", "to_terminal_states_dp"], legend_loc="upper right"
)

Total running time of the script: ( 0 minutes 40.159 seconds)
Estimated memory usage: 633 MB