by davila7
单细胞基因组学分析需要专门的概率模型来进行降维、批次校正以及跨不同模态的整合。scvi-tools 提供基于 PyTorch 构建的深度生成模型,用于全面的单细胞数据分析。
1. 打开 Claude 聊天界面
2. 点击下方 "📋 复制" 按钮
3. 粘贴到 Claude 聊天框中并发送
4. 输入 "使用 scvi-tools 技能" 开始使用
=== scvi-tools 技能 === 作者: davila7 描述: 单细胞基因组学分析需要专门的概率模型来进行降维、批次校正以及跨不同模态的整合。scvi-tools 提供基于 PyTorch 构建的深度生成模型,用于全面的单细胞数据分析。 使用方法: 1. 调用技能: "使用 scvi-tools 技能" 2. 提供相关信息: 根据技能要求提供必要参数 3. 查看结果: 技能会返回处理结果 示例: "使用 scvi-tools 技能,帮我分析一下这段代码"
这种方法适用于所有 Claude 用户,不需要安装额外工具。
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scvi-tools is a comprehensive Python framework for probabilistic models in single-cell genomics. Built on PyTorch and PyTorch Lightning, it provides deep generative models using variational inference for analyzing diverse single-cell data modalities.
Use this skill when:
scvi-tools provides models organized by data modality:
Core models for expression analysis, batch correction, and integration. See references/models-scrna-seq.md for:
Models for analyzing single-cell chromatin data. See references/models-atac-seq.md for:
Joint analysis of multiple data types. See references/models-multimodal.md for:
Spatially-resolved transcriptomics analysis. See references/models-spatial.md for:
Additional specialized analysis tools. See references/models-specialized.md for:
All scvi-tools models follow a consistent API pattern:
# 1. Load and preprocess data (AnnData format)
import scvi
import scanpy as sc
adata = scvi.data.heart_cell_atlas_subsampled()
sc.pp.filter_genes(adata, min_counts=3)
sc.pp.highly_variable_genes(adata, n_top_genes=1200)
# 2. Register data with model (specify layers, covariates)
scvi.model.SCVI.setup_anndata(
adata,
layer="counts", # Use raw counts, not log-normalized
batch_key="batch",
categorical_covariate_keys=["donor"],
continuous_covariate_keys=["percent_mito"]
)
# 3. Create and train model
model = scvi.model.SCVI(adata)
model.train()
# 4. Extract latent representations and normalized values
latent = model.get_latent_representation()
normalized = model.get_normalized_expression(library_size=1e4)
# 5. Store in AnnData for downstream analysis
adata.obsm["X_scVI"] = latent
adata.layers["scvi_normalized"] = normalized
# 6. Downstream analysis with scanpy
sc.pp.neighbors(adata, use_rep="X_scVI")
sc.tl.umap(adata)
sc.tl.leiden(adata)
Key Design Principles:
Probabilistic DE analysis using the learned generative models:
de_results = model.differential_expression(
groupby="cell_type",
group1="TypeA",
group2="TypeB",
mode="change", # Use composite hypothesis testing
delta=0.25 # Minimum effect size threshold
)
See references/differential-expression.md for detailed methodology and interpretation.
Save and load trained models:
# Save model
model.save("./model_directory", overwrite=True)
# Load model
model = scvi.model.SCVI.load("./model_directory", adata=adata)
Integrate datasets across batches or studies:
# Register batch information
scvi.model.SCVI.setup_anndata(adata, batch_key="study")
# Model automatically learns batch-corrected representations
model = scvi.model.SCVI(adata)
model.train()
latent = model.get_latent_representation() # Batch-corrected
scvi-tools is built on:
See references/theoretical-foundations.md for detailed background on the mathematical framework.
references/workflows.md contains common workflows, best practices, hyperparameter tuning, and GPU optimizationreferences/ directoryuv pip install scvi-tools
# For GPU support
uv pip install scvi-tools[cuda]
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