Allows generating dummy spatialdata objects, which can be useful for testing purposes.
pip install dummy-spatialdatafrom dummy_spatialdata import generate_dataset
import dummy_anndata
import spatialdata_plot as sdp
import spatialdata as sd
import matplotlib.pyplot as plt
import anndata as ad
# generate dummy anndata
adata = dummy_anndata.generate_dataset(n_obs=12, n_vars=20)
# generate dummy spatialdata
sdata = generate_dataset(
images = [
{"type": "rgb", "n_layers": 4, "shape": {"x": 1000, "y": 1000}, "transformations": {"trans_0": ["affine"]}},
{"type": "grayscale", "n_layers": 1, "shape": {"x": 1000, "y": 1000}, "transformations": {"trans_0": ["affine"]}},
],
labels = [
{"n_labels": 12, "n_layers": 4, "shape": {"x": 1000, "y": 1000}},
{"n_labels": 12, "n_layers": 0, "shape": {"x": 100, "y": 100}},
],
shapes = [
{"n_shapes": 12, "shape": {"x": 1000, "y": 1000}},
{"n_shapes": 20, "shape": {"x": 1000, "y": 1000}},
],
tables = [
{"table": adata, "element": "shape", "element_index": 0}
],
SEED=13
)
sdata
SpatialData object
├── Images
│ ├── 'image_0': DataTree[cyx] (3, 1000, 1000), (3, 500, 500), (3, 250, 250), (3, 125, 125)
│ └── 'image_1': DataTree[cyx] (1, 1000, 1000)
├── Labels
│ ├── 'label_0': DataTree[yx] (1000, 1000), (500, 500), (250, 250), (125, 125)
│ └── 'label_1': DataTree[yx] (100, 100)
├── Shapes
│ ├── 'shape_0': GeoDataFrame shape: (12, 1) (2D shapes)
│ └── 'shape_1': GeoDataFrame shape: (20, 1) (2D shapes)
└── Tables
└── 'table_0': AnnData (12, 20)
with coordinate systems:
▸ 'global', with elements:
image_0 (Images), image_1 (Images), label_0 (Labels), label_1 (Labels), shape_0 (Shapes), shape_1 (Shapes)
▸ 'trans_0', with elements:
image_0 (Images), image_1 (Images)
You can plot the demo data now!
sdata.pl.render_images("image_0", ).pl.render_shapes("shape_0", color="Gene001", table_name = "table_0", table_layer = "float_matrix").pl.show(coordinate_systems = "global")