scembed.methods.scPoliMethod#
- class scembed.methods.scPoliMethod(adata, embedding_dims=None, latent_dim=None, hidden_layer_sizes=None, dr_rate=None, use_mmd=None, mmd_on=None, beta=None, use_bn=None, use_ln=None, embedding_max_norm=None, n_epochs=None, pretraining_epochs=None, recon_loss=None, eta=None, alpha_epoch_anneal=None, unlabeled_prototype_training=None, **kwargs)#
scPoli integration method.
Wrapper around the scPoli method [DDHZM+23] for population-level integration of single-cell datasets that enables multi-scale analysis across samples.
Methods table#
|
Fit scPoli model. |
Fit the method and transform the data. |
|
Get information about the fitted model. |
|
|
Load a pre-trained model or embedding from various sources. |
|
Save embedding to file with preserved cell names as index. |
|
Save scPoli model. |
|
Setup scPoli-specific preprocessing. |
Get scPoli latent representation. |
|
|
Validate the AnnData object has required keys and structure. |
|
Validate spatial-specific data requirements. |
Methods#
- scPoliMethod.fit()#
Fit scPoli model.
- scPoliMethod.fit_transform()#
Fit the method and transform the data.
Modifies self.adata in place.
- Return type:
- scPoliMethod.get_model_info()#
Get information about the fitted model.
- scPoliMethod.load_artifact(source, artifact_type='model', embedding_key=None, **kwargs)#
Load a pre-trained model or embedding from various sources.
- Parameters:
source (
str|Path|dict) – Source of the artifact. Can be: - str/Path: Local path to model directory or embedding file - dict: WandB parameters with keys ‘run_id’, ‘entity’, ‘project’artifact_type (
Literal['model','embedding'] (default:'model')) – Type of artifact to load: ‘model’ or ‘embedding’.embedding_key (
str|None(default:None)) – Key to store embedding in adata.obsm. If None, uses self.embedding_key. Only used when artifact_type=’embedding’.**kwargs – Additional arguments passed to loading functions.
- Return type:
- scPoliMethod.save_embedding(format_type='parquet', filename=None, compression=True)#
Save embedding to file with preserved cell names as index.
- Parameters:
format_type (
Literal['parquet','pickle','h5'] (default:'parquet')) – Format to save embedding in. Options: ‘parquet’, ‘pickle’, or ‘h5’.filename (
str|None(default:None)) – Custom filename (without extension). If None, uses “embedding”.compression (
bool(default:True)) – Whether to use compression (gzip for all formats).
- Return type:
- Returns:
Path Path to the saved embedding file.
- Raises:
ValueError – If method is not fitted or embedding key not found in adata.obsm.
- scPoliMethod.transform()#
Get scPoli latent representation.
- scPoliMethod.validate_adata(adata)#
Validate the AnnData object has required keys and structure.
- Parameters:
adata (
AnnData) – Annotated data object to validate.- Raises:
ValueError – If required keys are missing or data is malformed.
- Return type:
- scPoliMethod.validate_spatial_adata(adata)#
Validate spatial-specific data requirements.
- Parameters:
adata (
AnnData) – Annotated data object to validate.- Raises:
ValueError – If required spatial keys are missing or data is malformed.
- Return type: