scRNA-seq¶
Here, you’ll learn how to manage a growing number of scRNA-seq datasets as a single queryable collection:
create a dataset (an
Artifact
) and seed aCollection
()concatenate the collection to a single
tiledbsoma
array store ()
If you’re only interested in using a large curated scRNA-seq collection, see the CELLxGENE guide.
# !pip install 'lamindb[jupyter,aws,bionty]'
!lamin init --storage ./test-scrna --schema bionty
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→ connected lamindb: testuser1/test-scrna
import lamindb as ln
import bionty as bt
ln.track("Nv48yAceNSh80003")
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→ connected lamindb: testuser1/test-scrna
→ created Transform('Nv48yAce'), started new Run('esANpd5l') at 2024-12-20 15:03:59 UTC
→ notebook imports: bionty==0.53.2 lamindb==0.77.3
Populate metadata registries based on an artifact¶
Let us look at the standardized data of Conde et al., Science (2022), available from CELLxGENE. anndata_human_immune_cells()
loads a subsampled version:
adata = ln.core.datasets.anndata_human_immune_cells()
adata
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AnnData object with n_obs × n_vars = 1648 × 36503
obs: 'donor', 'tissue', 'cell_type', 'assay'
var: 'feature_is_filtered', 'feature_reference', 'feature_biotype'
uns: 'default_embedding'
obsm: 'X_umap'
Let’s curate this artifact:
curator = ln.Curator.from_anndata(
adata,
var_index=bt.Gene.ensembl_gene_id,
categoricals={
adata.obs.donor.name: ln.ULabel.name,
adata.obs.tissue.name: bt.Tissue.name,
adata.obs.cell_type.name: bt.CellType.name,
adata.obs.assay.name: bt.ExperimentalFactor.name,
},
organism="human",
)
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✓ added 4 records with Feature.name for "columns": 'donor', 'tissue', 'cell_type', 'assay'
# this runs a while, because this instance is still empty
curator.validate()
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• saving validated records of 'var_index'
✓ added 36283 records from public with Gene.ensembl_gene_id for "var_index": 'ENSG00000243485', 'ENSG00000237613', 'ENSG00000186092', 'ENSG00000238009', 'ENSG00000239945', 'ENSG00000239906', 'ENSG00000241860', 'ENSG00000241599', 'ENSG00000286448', 'ENSG00000236601', 'ENSG00000284733', 'ENSG00000235146', 'ENSG00000284662', 'ENSG00000229905', 'ENSG00000237491', 'ENSG00000177757', 'ENSG00000228794', 'ENSG00000225880', 'ENSG00000230368', 'ENSG00000272438', ...
• saving validated records of 'tissue'
✓ added 17 records from public with Tissue.name for "tissue": 'bone marrow', 'sigmoid colon', 'skeletal muscle tissue', 'liver', 'duodenum', 'ileum', 'blood', 'spleen', 'omentum', 'transverse colon', 'mesenteric lymph node', 'thoracic lymph node', 'lung', 'lamina propria', 'jejunal epithelium', 'thymus', 'caecum'
• saving validated records of 'cell_type'
✓ added 31 records from public with CellType.name for "cell_type": 'group 3 innate lymphoid cell', 'naive thymus-derived CD8-positive, alpha-beta T cell', 'mucosal invariant T cell', 'non-classical monocyte', 'regulatory T cell', 'lymphocyte', 'alveolar macrophage', 'conventional dendritic cell', 'plasma cell', 'effector memory CD4-positive, alpha-beta T cell', 'CD16-negative, CD56-bright natural killer cell, human', 'mast cell', 'naive thymus-derived CD4-positive, alpha-beta T cell', 'memory B cell', 'CD4-positive helper T cell', 'T follicular helper cell', 'germinal center B cell', 'plasmacytoid dendritic cell', 'progenitor cell', 'macrophage', ...
• saving validated records of 'assay'
✓ added 3 records from public with ExperimentalFactor.name for "assay": '10x 5' v1', '10x 3' v3', '10x 5' v2'
• mapping "var_index" on Gene.ensembl_gene_id
! 220 terms are not validated: 'ENSG00000230699', 'ENSG00000241180', 'ENSG00000226849', 'ENSG00000272482', 'ENSG00000264443', 'ENSG00000242396', 'ENSG00000237352', 'ENSG00000269933', 'ENSG00000286863', 'ENSG00000285808', 'ENSG00000261737', 'ENSG00000230427', 'ENSG00000226822', 'ENSG00000273373', 'ENSG00000259834', 'ENSG00000224167', 'ENSG00000256374', 'ENSG00000234283', 'ENSG00000263464', 'ENSG00000203812', ...
→ fix typos, remove non-existent values, or save terms via .add_new_from_var_index()
• mapping "donor" on ULabel.name
! 12 terms are not validated: 'D496', '621B', 'A29', 'A36', 'A35', '637C', 'A52', 'A37', 'D503', '640C', 'A31', '582C'
→ fix typos, remove non-existent values, or save terms via .add_new_from("donor")
✓ "tissue" is validated against Tissue.name
• mapping "cell_type" on CellType.name
! 1 term is not validated: 'animal cell'
→ fix typos, remove non-existent values, or save terms via .add_new_from("cell_type")
✓ "assay" is validated against ExperimentalFactor.name
False
curator.add_new_from_var_index()
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✓ added 220 records with Gene.ensembl_gene_id for "var_index": 'ENSG00000230699', 'ENSG00000241180', 'ENSG00000226849', 'ENSG00000272482', 'ENSG00000264443', 'ENSG00000242396', 'ENSG00000237352', 'ENSG00000269933', 'ENSG00000286863', 'ENSG00000285808', 'ENSG00000261737', 'ENSG00000230427', 'ENSG00000226822', 'ENSG00000273373', 'ENSG00000259834', 'ENSG00000224167', 'ENSG00000256374', 'ENSG00000234283', 'ENSG00000263464', 'ENSG00000203812', ...
curator.add_new_from("donor")
curator.add_new_from("cell_type")
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✓ added 12 records with ULabel.name for "donor": '640C', 'D503', '637C', 'A36', 'A29', '582C', 'A52', '621B', 'D496', 'A37', 'A31', 'A35'
✓ added 1 record with CellType.name for "cell_type": 'animal cell'
curator.validate()
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✓ "var_index" is validated against Gene.ensembl_gene_id
✓ "donor" is validated against ULabel.name
✓ "tissue" is validated against Tissue.name
✓ "cell_type" is validated against CellType.name
✓ "assay" is validated against ExperimentalFactor.name
True
When we create a Artifact
object from an AnnData
, we automatically curate it with validated features and labels:
artifact = curator.save_artifact(description="Human immune cells from Conde22")
It is annotated with rich metadata:
artifact.describe(print_types=True)
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Artifact .h5ad/AnnData ├── General │ ├── .uid = 'NAxy8G7q3xarNdqt0000' │ ├── .size = 57612943 │ ├── .hash = 't_YJQpYrAyAGhs7Ir68zKj' │ ├── .n_observations = 1648 │ ├── .path = /home/runner/work/lamin-usecases/lamin-usecases/docs/test-scrna/.lamindb/NAxy8G7q3xarNdqt0000.h5ad │ ├── .created_by = testuser1 (Test User1) │ ├── .created_at = 2024-12-20 15:04:55 │ └── .transform = 'scRNA-seq' ├── Dataset features/.feature_sets │ ├── var • 36503 [bionty.Gene] │ │ MIR1302-2HG float │ │ FAM138A float │ │ OR4F5 float │ │ OR4F29 float │ │ OR4F16 float │ │ LINC01409 float │ │ FAM87B float │ │ LINC01128 float │ │ LINC00115 float │ │ FAM41C float │ └── obs • 4 [Feature] │ assay cat[bionty.ExperimentalF… 10x 3' v3, 10x 5' v1, 10x 5' v2 │ cell_type cat[bionty.CellType] CD16-negative, CD56-bright natural kille… │ donor cat[ULabel] 582C, 621B, 637C, 640C, A29, A31, A35, A… │ tissue cat[bionty.Tissue] blood, bone marrow, caecum, duodenum, il… └── Labels └── .tissues bionty.Tissue bone marrow, sigmoid colon, skeletal mus… .cell_types bionty.CellType group 3 innate lymphoid cell, naive thym… .experimental_factors bionty.ExperimentalFactor 10x 5' v1, 10x 3' v3, 10x 5' v2 .ulabels ULabel 640C, D503, 637C, A36, A29, 582C, A52, 6…
Seed a collection¶
Let’s create a first version of a collection that will encompass many h5ad
files when more data is ingested.
Note
To see the result of the incremental growth, take a look at the CELLxGENE Census guide for an instance with ~1k h5ads and ~50 million cells.
collection = ln.Collection(artifact, name="My versioned scRNA-seq collection").save()
For this version 1 of the collection, collection and artifact match each other. But they’re independently tracked and queryable through their registries:
collection.describe()
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Collection └── General ├── .uid = 'vU9vGhm9ozKWE66f0000' ├── .hash = 'DuyXxlMxwF92YehyBLbhKg' ├── .created_by = testuser1 (Test User1) ├── .created_at = 2024-12-20 15:04:59 └── .transform = 'scRNA-seq'
Access the underlying artifacts like so:
collection.artifacts.df()
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uid | key | description | suffix | type | size | hash | n_objects | n_observations | _hash_type | _accessor | visibility | _key_is_virtual | storage_id | transform_id | version | is_latest | run_id | created_at | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
id | ||||||||||||||||||||
1 | NAxy8G7q3xarNdqt0000 | None | Human immune cells from Conde22 | .h5ad | dataset | 57612943 | t_YJQpYrAyAGhs7Ir68zKj | None | 1648 | sha1-fl | AnnData | 1 | True | 1 | 1 | None | True | 1 | 2024-12-20 15:04:55.120402+00:00 | 1 |
See data lineage:
collection.view_lineage()