Agent Skillssynthetic-sciences/openscience › cellxgene-census

cellxgene-census

GitHub

用于编程式查询CELLxGENE Census单细胞基因组数据库,支持按组织、疾病或细胞类型获取6100万+细胞的表达数据、元信息及预计算嵌入,适用于大规模参考图谱对比和机器学习训练。

backend/cli/skills/databases/cellxgene-census/SKILL.md synthetic-sciences/openscience

Trigger Scenarios

查询单细胞基因表达数据 探索单细胞数据集和元数据 基于细胞类型、组织或疾病筛选数据 进行大规模跨数据集分析 获取预计算嵌入或统计信息

Install

npx skills add synthetic-sciences/openscience --skill cellxgene-census -g -y
More Options

Non-standard path

npx skills add https://github.com/synthetic-sciences/openscience/tree/main/backend/cli/skills/databases/cellxgene-census -g -y

Use without installing

npx skills use synthetic-sciences/openscience@cellxgene-census

指定 Agent (Claude Code)

npx skills add synthetic-sciences/openscience --skill cellxgene-census -a claude-code -g -y

安装 repo 全部 skill

npx skills add synthetic-sciences/openscience --all -g -y

预览 repo 内 skill

npx skills add synthetic-sciences/openscience --list

SKILL.md

Frontmatter
{
    "name": "cellxgene-census",
    "license": "Unknown",
    "category": "databases",
    "metadata": {
        "skill-author": "Synthetic Sciences"
    },
    "description": "Query the CELLxGENE Census (61M+ cells) programmatically. Use when you need expression data across tissues, diseases, or cell types from the largest curated single-cell atlas. Best for population-scale queries, reference atlas comparisons. For analyzing your own data use scanpy or scvi-tools."
}

CZ CELLxGENE Census

Overview

The CZ CELLxGENE Census provides programmatic access to a comprehensive, versioned collection of standardized single-cell genomics data from CZ CELLxGENE Discover. This skill enables efficient querying and analysis of millions of cells across thousands of datasets.

The Census includes:

  • 61+ million cells from human and mouse
  • Standardized metadata (cell types, tissues, diseases, donors)
  • Raw gene expression matrices
  • Pre-calculated embeddings and statistics
  • Integration with PyTorch, scanpy, and other analysis tools

When to Use This Skill

This skill should be used when:

  • Querying single-cell expression data by cell type, tissue, or disease
  • Exploring available single-cell datasets and metadata
  • Training machine learning models on single-cell data
  • Performing large-scale cross-dataset analyses
  • Integrating Census data with scanpy or other analysis frameworks
  • Computing statistics across millions of cells
  • Accessing pre-calculated embeddings or model predictions

Installation and Setup

Install the Census API:

uv pip install cellxgene-census

For machine learning workflows, install additional dependencies:

uv pip install cellxgene-census[experimental]

Core Workflow Patterns

1. Opening the Census

Always use the context manager to ensure proper resource cleanup:

import cellxgene_census

# Open latest stable version
with cellxgene_census.open_soma() as census:
    # Work with census data

# Open specific version for reproducibility
with cellxgene_census.open_soma(census_version="2023-07-25") as census:
    # Work with census data

Key points:

  • Use context manager (with statement) for automatic cleanup
  • Specify census_version for reproducible analyses
  • Default opens latest "stable" release

2. Exploring Census Information

Before querying expression data, explore available datasets and metadata.

Access summary information:

# Get summary statistics
summary = census["census_info"]["summary"].read().concat().to_pandas()
print(f"Total cells: {summary['total_cell_count'][0]}")

# Get all datasets
datasets = census["census_info"]["datasets"].read().concat().to_pandas()

# Filter datasets by criteria
covid_datasets = datasets[datasets["disease"].str.contains("COVID", na=False)]

Query cell metadata to understand available data:

# Get unique cell types in a tissue
cell_metadata = cellxgene_census.get_obs(
    census,
    "homo_sapiens",
    value_filter="tissue_general == 'brain' and is_primary_data == True",
    column_names=["cell_type"]
)
unique_cell_types = cell_metadata["cell_type"].unique()
print(f"Found {len(unique_cell_types)} cell types in brain")

# Count cells by tissue
tissue_counts = cell_metadata.groupby("tissue_general").size()

Important: Always filter for is_primary_data == True to avoid counting duplicate cells unless specifically analyzing duplicates.

3. Querying Expression Data (Small to Medium Scale)

For queries returning < 100k cells that fit in memory, use get_anndata():

# Basic query with cell type and tissue filters
adata = cellxgene_census.get_anndata(
    census=census,
    organism="Homo sapiens",  # or "Mus musculus"
    obs_value_filter="cell_type == 'B cell' and tissue_general == 'lung' and is_primary_data == True",
    obs_column_names=["assay", "disease", "sex", "donor_id"],
)

# Query specific genes with multiple filters
adata = cellxgene_census.get_anndata(
    census=census,
    organism="Homo sapiens",
    var_value_filter="feature_name in ['CD4', 'CD8A', 'CD19', 'FOXP3']",
    obs_value_filter="cell_type == 'T cell' and disease == 'COVID-19' and is_primary_data == True",
    obs_column_names=["cell_type", "tissue_general", "donor_id"],
)

Filter syntax:

  • Use obs_value_filter for cell filtering
  • Use var_value_filter for gene filtering
  • Combine conditions with and, or
  • Use in for multiple values: tissue in ['lung', 'liver']
  • Select only needed columns with obs_column_names

Getting metadata separately:

# Query cell metadata
cell_metadata = cellxgene_census.get_obs(
    census, "homo_sapiens",
    value_filter="disease == 'COVID-19' and is_primary_data == True",
    column_names=["cell_type", "tissue_general", "donor_id"]
)

# Query gene metadata
gene_metadata = cellxgene_census.get_var(
    census, "homo_sapiens",
    value_filter="feature_name in ['CD4', 'CD8A']",
    column_names=["feature_id", "feature_name", "feature_length"]
)

4. Large-Scale Queries (Out-of-Core Processing)

For queries exceeding available RAM, use axis_query() with iterative processing:

import tiledbsoma as soma

# Create axis query
query = census["census_data"]["homo_sapiens"].axis_query(
    measurement_name="RNA",
    obs_query=soma.AxisQuery(
        value_filter="tissue_general == 'brain' and is_primary_data == True"
    ),
    var_query=soma.AxisQuery(
        value_filter="feature_name in ['FOXP2', 'TBR1', 'SATB2']"
    )
)

# Iterate through expression matrix in chunks
iterator = query.X("raw").tables()
for batch in iterator:
    # batch is a pyarrow.Table with columns:
    # - soma_data: expression value
    # - soma_dim_0: cell (obs) coordinate
    # - soma_dim_1: gene (var) coordinate
    process_batch(batch)

Computing incremental statistics:

# Example: Calculate mean expression
n_observations = 0
sum_values = 0.0

iterator = query.X("raw").tables()
for batch in iterator:
    values = batch["soma_data"].to_numpy()
    n_observations += len(values)
    sum_values += values.sum()

mean_expression = sum_values / n_observations

5. Machine Learning with PyTorch

For training models, use the experimental PyTorch integration:

from cellxgene_census.experimental.ml import experiment_dataloader

with cellxgene_census.open_soma() as census:
    # Create dataloader
    dataloader = experiment_dataloader(
        census["census_data"]["homo_sapiens"],
        measurement_name="RNA",
        X_name="raw",
        obs_value_filter="tissue_general == 'liver' and is_primary_data == True",
        obs_column_names=["cell_type"],
        batch_size=128,
        shuffle=True,
    )

    # Training loop
    for epoch in range(num_epochs):
        for batch in dataloader:
            X = batch["X"]  # Gene expression tensor
            labels = batch["obs"]["cell_type"]  # Cell type labels

            # Forward pass
            outputs = model(X)
            loss = criterion(outputs, labels)

            # Backward pass
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()

Train/test splitting:

from cellxgene_census.experimental.ml import ExperimentDataset

# Create dataset from experiment
dataset = ExperimentDataset(
    experiment_axis_query,
    layer_name="raw",
    obs_column_names=["cell_type"],
    batch_size=128,
)

# Split into train and test
train_dataset, test_dataset = dataset.random_split(
    split=[0.8, 0.2],
    seed=42
)

6. Integration with Scanpy

Seamlessly integrate Census data with scanpy workflows:

import scanpy as sc

# Load data from Census
adata = cellxgene_census.get_anndata(
    census=census,
    organism="Homo sapiens",
    obs_value_filter="cell_type == 'neuron' and tissue_general == 'cortex' and is_primary_data == True",
)

# Standard scanpy workflow
sc.pp.normalize_total(adata, target_sum=1e4)
sc.pp.log1p(adata)
sc.pp.highly_variable_genes(adata, n_top_genes=2000)

# Dimensionality reduction
sc.pp.pca(adata, n_comps=50)
sc.pp.neighbors(adata)
sc.tl.umap(adata)

# Visualization
sc.pl.umap(adata, color=["cell_type", "tissue", "disease"])

7. Multi-Dataset Integration

Query and integrate multiple datasets:

# Strategy 1: Query multiple tissues separately
tissues = ["lung", "liver", "kidney"]
adatas = []

for tissue in tissues:
    adata = cellxgene_census.get_anndata(
        census=census,
        organism="Homo sapiens",
        obs_value_filter=f"tissue_general == '{tissue}' and is_primary_data == True",
    )
    adata.obs["tissue"] = tissue
    adatas.append(adata)

# Concatenate
combined = adatas[0].concatenate(adatas[1:])

# Strategy 2: Query multiple datasets directly
adata = cellxgene_census.get_anndata(
    census=census,
    organism="Homo sapiens",
    obs_value_filter="tissue_general in ['lung', 'liver', 'kidney'] and is_primary_data == True",
)

Key Concepts and Best Practices

Always Filter for Primary Data

Unless analyzing duplicates, always include is_primary_data == True in queries to avoid counting cells multiple times:

obs_value_filter="cell_type == 'B cell' and is_primary_data == True"

Specify Census Version for Reproducibility

Always specify the Census version in production analyses:

census = cellxgene_census.open_soma(census_version="2023-07-25")

Estimate Query Size Before Loading

For large queries, first check the number of cells to avoid memory issues:

# Get cell count
metadata = cellxgene_census.get_obs(
    census, "homo_sapiens",
    value_filter="tissue_general == 'brain' and is_primary_data == True",
    column_names=["soma_joinid"]
)
n_cells = len(metadata)
print(f"Query will return {n_cells:,} cells")

# If too large (>100k), use out-of-core processing

Use tissue_general for Broader Groupings

The tissue_general field provides coarser categories than tissue, useful for cross-tissue analyses:

# Broader grouping
obs_value_filter="tissue_general == 'immune system'"

# Specific tissue
obs_value_filter="tissue == 'peripheral blood mononuclear cell'"

Select Only Needed Columns

Minimize data transfer by specifying only required metadata columns:

obs_column_names=["cell_type", "tissue_general", "disease"]  # Not all columns

Check Dataset Presence for Gene-Specific Queries

When analyzing specific genes, verify which datasets measured them:

presence = cellxgene_census.get_presence_matrix(
    census,
    "homo_sapiens",
    var_value_filter="feature_name in ['CD4', 'CD8A']"
)

Two-Step Workflow: Explore Then Query

First explore metadata to understand available data, then query expression:

# Step 1: Explore what's available
metadata = cellxgene_census.get_obs(
    census, "homo_sapiens",
    value_filter="disease == 'COVID-19' and is_primary_data == True",
    column_names=["cell_type", "tissue_general"]
)
print(metadata.value_counts())

# Step 2: Query based on findings
adata = cellxgene_census.get_anndata(
    census=census,
    organism="Homo sapiens",
    obs_value_filter="disease == 'COVID-19' and cell_type == 'T cell' and is_primary_data == True",
)

Available Metadata Fields

Cell Metadata (obs)

Key fields for filtering:

  • cell_type, cell_type_ontology_term_id
  • tissue, tissue_general, tissue_ontology_term_id
  • disease, disease_ontology_term_id
  • assay, assay_ontology_term_id
  • donor_id, sex, self_reported_ethnicity
  • development_stage, development_stage_ontology_term_id
  • dataset_id
  • is_primary_data (Boolean: True = unique cell)

Gene Metadata (var)

  • feature_id (Ensembl gene ID, e.g., "ENSG00000161798")
  • feature_name (Gene symbol, e.g., "FOXP2")
  • feature_length (Gene length in base pairs)

Reference Documentation

This skill includes detailed reference documentation:

references/census_schema.md

Comprehensive documentation of:

  • Census data structure and organization
  • All available metadata fields
  • Value filter syntax and operators
  • SOMA object types
  • Data inclusion criteria

When to read: When you need detailed schema information, full list of metadata fields, or complex filter syntax.

references/common_patterns.md

Examples and patterns for:

  • Exploratory queries (metadata only)
  • Small-to-medium queries (AnnData)
  • Large queries (out-of-core processing)
  • PyTorch integration
  • Scanpy integration workflows
  • Multi-dataset integration
  • Best practices and common pitfalls

When to read: When implementing specific query patterns, looking for code examples, or troubleshooting common issues.

Common Use Cases

Use Case 1: Explore Cell Types in a Tissue

with cellxgene_census.open_soma() as census:
    cells = cellxgene_census.get_obs(
        census, "homo_sapiens",
        value_filter="tissue_general == 'lung' and is_primary_data == True",
        column_names=["cell_type"]
    )
    print(cells["cell_type"].value_counts())

Use Case 2: Query Marker Gene Expression

with cellxgene_census.open_soma() as census:
    adata = cellxgene_census.get_anndata(
        census=census,
        organism="Homo sapiens",
        var_value_filter="feature_name in ['CD4', 'CD8A', 'CD19']",
        obs_value_filter="cell_type in ['T cell', 'B cell'] and is_primary_data == True",
    )

Use Case 3: Train Cell Type Classifier

from cellxgene_census.experimental.ml import experiment_dataloader

with cellxgene_census.open_soma() as census:
    dataloader = experiment_dataloader(
        census["census_data"]["homo_sapiens"],
        measurement_name="RNA",
        X_name="raw",
        obs_value_filter="is_primary_data == True",
        obs_column_names=["cell_type"],
        batch_size=128,
        shuffle=True,
    )

    # Train model
    for epoch in range(epochs):
        for batch in dataloader:
            # Training logic
            pass

Use Case 4: Cross-Tissue Analysis

with cellxgene_census.open_soma() as census:
    adata = cellxgene_census.get_anndata(
        census=census,
        organism="Homo sapiens",
        obs_value_filter="cell_type == 'macrophage' and tissue_general in ['lung', 'liver', 'brain'] and is_primary_data == True",
    )

    # Analyze macrophage differences across tissues
    sc.tl.rank_genes_groups(adata, groupby="tissue_general")

Troubleshooting

Query Returns Too Many Cells

  • Add more specific filters to reduce scope
  • Use tissue instead of tissue_general for finer granularity
  • Filter by specific dataset_id if known
  • Switch to out-of-core processing for large queries

Memory Errors

  • Reduce query scope with more restrictive filters
  • Select fewer genes with var_value_filter
  • Use out-of-core processing with axis_query()
  • Process data in batches

Duplicate Cells in Results

  • Always include is_primary_data == True in filters
  • Check if intentionally querying across multiple datasets

Gene Not Found

  • Verify gene name spelling (case-sensitive)
  • Try Ensembl ID with feature_id instead of feature_name
  • Check dataset presence matrix to see if gene was measured
  • Some genes may have been filtered during Census construction

Version Inconsistencies

  • Always specify census_version explicitly
  • Use same version across all analyses
  • Check release notes for version-specific changes

Version History

  • e9844a4 Current 2026-07-11 17:24

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backend/cli/skills/ml-training/bigcode-evaluation-harness/SKILL.md
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backend/cli/skills/ml-training/deepspeed/SKILL.md
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backend/cli/skills/ml-training/hqq/SKILL.md
backend/cli/skills/ml-training/hugging-face-evaluation/SKILL.md
backend/cli/skills/ml-training/knowledge-distillation/SKILL.md
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backend/cli/skills/ml-training/llama-factory/SKILL.md
backend/cli/skills/ml-training/lm-evaluation-harness/SKILL.md
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backend/cli/skills/ml-training/ml-benchmark-evaluation/SKILL.md
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backend/cli/skills/ml-training/nanogpt/SKILL.md
backend/cli/skills/ml-training/nemo-curator/SKILL.md
backend/cli/skills/ml-training/nnsight/SKILL.md
backend/cli/skills/ml-training/openrlhf/SKILL.md
backend/cli/skills/ml-training/peft/SKILL.md
backend/cli/skills/ml-training/prime-intellect-lab/SKILL.md
backend/cli/skills/ml-training/pufferlib/SKILL.md
backend/cli/skills/ml-training/pytorch-fsdp/SKILL.md
backend/cli/skills/ml-training/pytorch-lightning/SKILL.md
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backend/cli/skills/ml-training/training-data-pipeline/SKILL.md
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backend/cli/skills/other/labarchive-integration/SKILL.md
backend/cli/skills/other/skill-installer/SKILL.md
backend/cli/skills/physics/astropy/SKILL.md
backend/cli/skills/physics/autoregressive-neural-pde-solver/SKILL.md
backend/cli/skills/physics/bayesian-inference/SKILL.md
backend/cli/skills/physics/conservation-law-discovery/SKILL.md
backend/cli/skills/physics/dimensional-analysis/SKILL.md
backend/cli/skills/physics/dynamical-systems/SKILL.md
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backend/cli/skills/physics/fluidsim/SKILL.md
backend/cli/skills/physics/hamiltonian-mechanics/SKILL.md
backend/cli/skills/physics/neural-operator/SKILL.md
backend/cli/skills/physics/ode-solver/SKILL.md
backend/cli/skills/physics/pde-solver/SKILL.md
backend/cli/skills/physics/physics-databases/SKILL.md
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backend/cli/skills/physics/physics-visualization/SKILL.md
backend/cli/skills/physics/pinn-training/SKILL.md
backend/cli/skills/physics/shock-capturing-neural-operators/SKILL.md
backend/cli/skills/physics/sindy-identification/SKILL.md
backend/cli/skills/physics/spectral-analysis/SKILL.md
backend/cli/skills/physics/statistical-mechanics/SKILL.md
backend/cli/skills/physics/symbolic-regression/SKILL.md
backend/cli/skills/physics/wave-propagation/SKILL.md
backend/cli/skills/quantum/cirq/SKILL.md
backend/cli/skills/quantum/pennylane/SKILL.md
backend/cli/skills/quantum/qiskit/SKILL.md
backend/cli/skills/quantum/qutip/SKILL.md
backend/cli/skills/research/hypothesis-generation/SKILL.md
backend/cli/skills/research/initialize-atlas-graph/SKILL.md
backend/cli/skills/research/market-research-reports/SKILL.md
backend/cli/skills/research/peer-review/SKILL.md
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backend/cli/skills/research/research-lookup/SKILL.md
backend/cli/skills/research/scientific-brainstorming/SKILL.md
backend/cli/skills/research/scientific-critical-thinking/SKILL.md
backend/cli/skills/visualization/dna-visualization/SKILL.md
backend/cli/skills/visualization/matplotlib/SKILL.md
backend/cli/skills/visualization/plotly/SKILL.md
backend/cli/skills/visualization/protein-diagram/SKILL.md
backend/cli/skills/visualization/scientific-visualization/SKILL.md
backend/cli/skills/visualization/seaborn/SKILL.md
backend/cli/skills/writing/citation-management/SKILL.md
backend/cli/skills/writing/hugging-face-paper-publisher/SKILL.md
backend/cli/skills/writing/latex-posters/SKILL.md
backend/cli/skills/writing/literature-review/SKILL.md
backend/cli/skills/writing/ml-paper-writing/SKILL.md
backend/cli/skills/writing/pptx-posters/SKILL.md
backend/cli/skills/writing/scientific-writing/SKILL.md
backend/cli/skills/writing/venue-templates/SKILL.md
backend/cli/skills/biology/clinical-decision-support/SKILL.md
backend/cli/skills/biology/esm/SKILL.md
backend/cli/skills/biology/lamindb/SKILL.md
backend/cli/skills/biology/pydicom/SKILL.md
backend/cli/skills/coding/exploratory-data-analysis/SKILL.md
backend/cli/skills/coding/matlab/SKILL.md
backend/cli/skills/coding/shap/SKILL.md
backend/cli/skills/coding/sympy/SKILL.md
backend/cli/skills/data-engineering/geopandas/SKILL.md
backend/cli/skills/ml-training/hugging-face-model-trainer/SKILL.md
backend/cli/skills/other/get-available-resources/SKILL.md
backend/cli/skills/other/hugging-face-jobs/SKILL.md
backend/cli/skills/other/iso-13485-certification/SKILL.md

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