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--- |
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library_name: scvi-tools |
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license: cc-by-4.0 |
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tags: |
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- biology |
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- genomics |
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- single-cell |
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- model_cls_name:SCANVI |
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- scvi_version:1.2.0 |
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- anndata_version:0.11.1 |
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- modality:rna |
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- tissue:various |
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- annotated:True |
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--- |
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ScANVI is a variational inference model for single-cell RNA-seq data that can learn an underlying |
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latent space, integrate technical batches and impute dropouts. |
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In addition, to scVI, ScANVI is a semi-supervised model that can leverage labeled data to learn a |
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cell-type classifier in the latent space and afterward predict cell types of new data. |
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The learned low-dimensional latent representation of the data can be used for visualization and |
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clustering. |
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scANVI takes as input a scRNA-seq gene expression matrix with cells and genes as well as a |
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cell-type annotation for a subset of cells. |
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We provide an extensive [user guide](https://docs.scvi-tools.org/en/1.2.0/user_guide/models/scanvi.html). |
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- See our original manuscript for further details of the model: |
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[scANVI manuscript](https://www.embopress.org/doi/full/10.15252/msb.20209620). |
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- See our manuscript on [scvi-hub](https://www.biorxiv.org/content/10.1101/2024.03.01.582887v2) |
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how to leverage pre-trained models. |
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This model can be used for fine tuning on new data using our Arches framework: |
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[Arches tutorial](https://docs.scvi-tools.org/en/1.0.0/tutorials/notebooks/scarches_scvi_tools.html). |
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# Model Description |
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Tabula Sapiens is a benchmark, first-draft human cell atlas of nearly 500,000 cells from 24 organs of 15 normal human subjects. |
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# Metrics |
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We provide here key performance metrics for the uploaded model, if provided by the data uploader. |
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<details> |
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<summary><strong>Coefficient of variation</strong></summary> |
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The cell-wise coefficient of variation summarizes how well variation between different cells is |
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preserved by the generated model expression. Below a squared Pearson correlation coefficient of 0.4 |
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, we would recommend not to use generated data for downstream analysis, while the generated latent |
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space might still be useful for analysis. |
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**Cell-wise Coefficient of Variation**: |
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| Metric | Training Value | Validation Value | |
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|-------------------------|----------------|------------------| |
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| Mean Absolute Error | 1.24 | 1.25 | |
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| Pearson Correlation | 0.99 | 0.99 | |
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| Spearman Correlation | 0.96 | 0.96 | |
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| R² (R-Squared) | 0.98 | 0.98 | |
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The gene-wise coefficient of variation summarizes how well variation between different genes is |
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preserved by the generated model expression. This value is usually quite high. |
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**Gene-wise Coefficient of Variation**: |
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| Metric | Training Value | |
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|-------------------------|----------------| |
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| Mean Absolute Error | 23.70 | |
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| Pearson Correlation | 0.72 | |
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| Spearman Correlation | 0.78 | |
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| R² (R-Squared) | -0.70 | |
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</details> |
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<details> |
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<summary><strong>Differential expression metric</strong></summary> |
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The differential expression metric provides a summary of the differential expression analysis |
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between cell types or input clusters. We provide here the F1-score, Pearson Correlation |
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Coefficient of Log-Foldchanges, Spearman Correlation Coefficient, and Area Under the Precision |
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Recall Curve (AUPRC) for the differential expression analysis using Wilcoxon Rank Sum test for each |
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cell-type. |
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**Differential expression**: |
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| Index | gene_f1 | lfc_mae | lfc_pearson | lfc_spearman | roc_auc | pr_auc | n_cells | |
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| --- | --- | --- | --- | --- | --- | --- | --- | |
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| erythrocyte | 0.97 | 1.08 | 0.71 | 0.88 | 0.09 | 0.98 | 10061.00 | |
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| neutrophil | 0.97 | 1.02 | 0.74 | 0.95 | 0.21 | 0.90 | 8432.00 | |
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| classical monocyte | 0.94 | 0.56 | 0.73 | 0.97 | 0.62 | 0.95 | 7211.00 | |
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| mature NK T cell | 0.95 | 1.34 | 0.65 | 0.92 | 0.62 | 0.93 | 2332.00 | |
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| naive B cell | 0.97 | 1.70 | 0.63 | 0.87 | 0.47 | 0.87 | 1526.00 | |
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| CD8-positive, alpha-beta cytokine secreting effector T cell | 0.94 | 1.60 | 0.62 | 0.87 | 0.64 | 0.93 | 1493.00 | |
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| CD4-positive, alpha-beta memory T cell | 0.95 | 1.64 | 0.56 | 0.86 | 0.58 | 0.88 | 949.00 | |
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| memory B cell | 0.98 | 2.07 | 0.62 | 0.86 | 0.54 | 0.88 | 597.00 | |
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| type I NK T cell | 0.90 | 2.31 | 0.62 | 0.79 | 0.62 | 0.89 | 518.00 | |
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| plasma cell | 0.76 | 1.25 | 0.77 | 0.95 | 0.61 | 0.94 | 487.00 | |
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| naive thymus-derived CD4-positive, alpha-beta T cell | 0.95 | 2.45 | 0.64 | 0.80 | 0.46 | 0.82 | 412.00 | |
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| CD8-positive, alpha-beta T cell | 0.94 | 2.07 | 0.66 | 0.82 | 0.57 | 0.87 | 376.00 | |
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| platelet | 0.77 | 2.74 | 0.70 | 0.81 | 0.42 | 0.83 | 239.00 | |
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| hematopoietic stem cell | 0.93 | 2.67 | 0.68 | 0.77 | 0.65 | 0.90 | 47.00 | |
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| T cell | 0.93 | 3.83 | 0.62 | 0.51 | 0.55 | 0.77 | 31.00 | |
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| basophil | 0.87 | 3.13 | 0.68 | 0.77 | 0.62 | 0.88 | 29.00 | |
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| CD141-positive myeloid dendritic cell | 0.90 | 4.76 | 0.59 | 0.60 | 0.50 | 0.76 | 15.00 | |
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| plasmacytoid dendritic cell | 0.85 | 5.24 | 0.55 | 0.49 | 0.46 | 0.72 | 11.00 | |
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</details> |
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# Model Properties |
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We provide here key parameters used to setup and train the model. |
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<details> |
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<summary><strong>Model Parameters</strong></summary> |
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These provide the settings to setup the original model: |
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```json |
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{ |
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"n_hidden": 128, |
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"n_latent": 20, |
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"n_layers": 3, |
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"dropout_rate": 0.05, |
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"dispersion": "gene", |
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"gene_likelihood": "nb", |
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"linear_classifier": false, |
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"latent_distribution": "normal", |
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"use_batch_norm": "none", |
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"use_layer_norm": "both", |
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"encode_covariates": true |
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} |
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``` |
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</details> |
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<details> |
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<summary><strong>Setup Data Arguments</strong></summary> |
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Arguments passed to setup_anndata of the original model: |
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```json |
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{ |
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"labels_key": "cell_ontology_class", |
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"unlabeled_category": "unknown", |
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"layer": null, |
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"batch_key": "donor_assay", |
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"size_factor_key": null, |
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"categorical_covariate_keys": null, |
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"continuous_covariate_keys": null, |
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"use_minified": false |
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} |
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``` |
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</details> |
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<details> |
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<summary><strong>Data Registry</strong></summary> |
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Registry elements for AnnData manager: |
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| Registry Key | scvi-tools Location | |
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|-------------------|--------------------------------------| |
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| X | adata.X | |
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| batch | adata.obs['_scvi_batch'] | |
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| labels | adata.obs['_scvi_labels'] | |
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| latent_qzm | adata.obsm['scanvi_latent_qzm'] | |
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| latent_qzv | adata.obsm['scanvi_latent_qzv'] | |
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| minify_type | adata.uns['_scvi_adata_minify_type'] | |
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| observed_lib_size | adata.obs['observed_lib_size'] | |
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- **Data is Minified**: False |
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</details> |
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<details> |
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<summary><strong>Summary Statistics</strong></summary> |
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| Summary Stat Key | Value | |
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|--------------------------|-------| |
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| n_batch | 6 | |
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| n_cells | 34766 | |
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| n_extra_categorical_covs | 0 | |
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| n_extra_continuous_covs | 0 | |
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| n_labels | 19 | |
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| n_latent_qzm | 20 | |
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| n_latent_qzv | 20 | |
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| n_vars | 3000 | |
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</details> |
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<details> |
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<summary><strong>Training</strong></summary> |
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<!-- If your model is not uploaded with any data (e.g., minified data) on the Model Hub, then make |
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sure to provide this field if you want users to be able to access your training data. See the |
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scvi-tools documentation for details. --> |
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**Training data url**: Not provided by uploader |
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If provided by the original uploader, for those interested in understanding or replicating the |
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training process, the code is available at the link below. |
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**Training Code URL**: https://github.com/YosefLab/scvi-hub-models/blob/main/src/scvi_hub_models/TS_train_all_tissues.ipynb |
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</details> |
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# References |
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The Tabula Sapiens Consortium. The Tabula Sapiens: A multiple-organ, single-cell transcriptomic atlas of humans. Science, May 2022. doi:10.1126/science.abl4896 |
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