Single Cell Rna Qc
Performs quality control on single-cell RNA-seq data (.h5ad or .h5 files) using scverse best practices with MAD-based filtering and comprehensive visualizations. Use when users request QC analysis, filtering low-quality cells, assessing data quality, or following scverse/scanpy best practices for single-cell analysis.
$ npx promptcreek add single-cell-rna-qcAuto-detects your installed agents and installs the skill to each one.
What This Skill Does
This skill automates the quality control (QC) workflow for single-cell RNA-seq data, following scverse best practices. It helps users filter low-quality cells, assess data quality, and generate QC visualizations. It is designed for researchers who need to perform standard QC on their single-cell data.
When to Use
- Perform quality control on single-cell RNA-seq data.
- Filter low-quality cells based on various metrics.
- Assess data quality using visualizations and metrics.
- Follow scverse/scanpy best practices for QC.
- Detect outliers using MAD-based filtering.
- Batch process QC for multiple datasets.
Key Features
Installation
$ npx promptcreek add single-cell-rna-qcAuto-detects your installed agents (Claude Code, Cursor, Codex, etc.) and installs the skill to each one.
View Full Skill Content
Single-Cell RNA-seq Quality Control
Automated QC workflow for single-cell RNA-seq data following scverse best practices.
When to Use This Skill
Use when users:
- Request quality control or QC on single-cell RNA-seq data
- Want to filter low-quality cells or assess data quality
- Need QC visualizations or metrics
- Ask to follow scverse/scanpy best practices
- Request MAD-based filtering or outlier detection
Supported input formats:
.h5adfiles (AnnData format from scanpy/Python workflows).h5files (10X Genomics Cell Ranger output)
Default recommendation: Use Approach 1 (complete pipeline) unless the user has specific custom requirements or explicitly requests non-standard filtering logic.
Approach 1: Complete QC Pipeline (Recommended for Standard Workflows)
For standard QC following scverse best practices, use the convenience script scripts/qc_analysis.py:
python3 scripts/qc_analysis.py input.h5ad
or for 10X Genomics .h5 files:
python3 scripts/qc_analysis.py raw_feature_bc_matrix.h5
The script automatically detects the file format and loads it appropriately.
When to use this approach:
- Standard QC workflow with adjustable thresholds (all cells filtered the same way)
- Batch processing multiple datasets
- Quick exploratory analysis
- User wants the "just works" solution
Requirements: anndata, scanpy, scipy, matplotlib, seaborn, numpy
Parameters:
Customize filtering thresholds and gene patterns using command-line parameters:
--output-dir- Output directory--mad-counts,--mad-genes,--mad-mt- MAD thresholds for counts/genes/MT%--mt-threshold- Hard mitochondrial % cutoff--min-cells- Gene filtering threshold--mt-pattern,--ribo-pattern,--hb-pattern- Gene name patterns for different species
Use --help to see current default values.
Outputs:
All files are saved to directory by default (or to the directory specified by --output-dir):
qc_metrics_before_filtering.png- Pre-filtering visualizationsqc_filtering_thresholds.png- MAD-based threshold overlaysqc_metrics_after_filtering.png- Post-filtering quality metrics- Clean, filtered dataset ready for downstream analysis_filtered.h5ad - Original data with QC annotations preserved_with_qc.h5ad
If copying outputs for user access, copy individual files (not the entire directory) so users can preview them directly.
Workflow Steps
The script performs the following steps:
- Calculate QC metrics - Count depth, gene detection, mitochondrial/ribosomal/hemoglobin content
- Apply MAD-based filtering - Permissive outlier detection using MAD thresholds for counts/genes/MT%
- Filter genes - Remove genes detected in few cells
- Generate visualizations - Comprehensive before/after plots with threshold overlays
Approach 2: Modular Building Blocks (For Custom Workflows)
For custom analysis workflows or non-standard requirements, use the modular utility functions from scripts/qc_core.py and scripts/qc_plotting.py:
# Run from scripts/ directory, or add scripts/ to sys.path if needed
import anndata as ad
from qc_core import calculate_qc_metrics, detect_outliers_mad, filter_cells
from qc_plotting import plot_qc_distributions # Only if visualization needed
adata = ad.read_h5ad('input.h5ad')
calculate_qc_metrics(adata, inplace=True)
... custom analysis logic here
When to use this approach:
- Different workflow needed (skip steps, change order, apply different thresholds to subsets)
- Conditional logic (e.g., filter neurons differently than other cells)
- Partial execution (only metrics/visualization, no filtering)
- Integration with other analysis steps in a larger pipeline
- Custom filtering criteria beyond what command-line params support
Available utility functions:
From qc_core.py (core QC operations):
calculate_qc_metrics(adata, mt_pattern, ribo_pattern, hb_pattern, inplace=True)- Calculate QC metrics and annotate adatadetect_outliers_mad(adata, metric, n_mads, verbose=True)- MAD-based outlier detection, returns boolean maskapply_hard_threshold(adata, metric, threshold, operator='>', verbose=True)- Apply hard cutoffs, returns boolean maskfilter_cells(adata, mask, inplace=False)- Apply boolean mask to filter cellsfilter_genes(adata, min_cells=20, min_counts=None, inplace=True)- Filter genes by detectionprint_qc_summary(adata, label='')- Print summary statistics
From qc_plotting.py (visualization):
plot_qc_distributions(adata, output_path, title)- Generate comprehensive QC plotsplot_filtering_thresholds(adata, outlier_masks, thresholds, output_path)- Visualize filtering thresholdsplot_qc_after_filtering(adata, output_path)- Generate post-filtering plots
Example custom workflows:
Example 1: Only calculate metrics and visualize, don't filter yet
adata = ad.read_h5ad('input.h5ad')
calculate_qc_metrics(adata, inplace=True)
plot_qc_distributions(adata, 'qc_before.png', title='Initial QC')
print_qc_summary(adata, label='Before filtering')
Example 2: Apply only MT% filtering, keep other metrics permissive
adata = ad.read_h5ad('input.h5ad')
calculate_qc_metrics(adata, inplace=True)
Only filter high MT% cells
high_mt = apply_hard_threshold(adata, 'pct_counts_mt', 10, operator='>')
adata_filtered = filter_cells(adata, ~high_mt)
adata_filtered.write('filtered.h5ad')
Example 3: Different thresholds for different subsets
adata = ad.read_h5ad('input.h5ad')
calculate_qc_metrics(adata, inplace=True)
Apply type-specific QC (assumes cell_type metadata exists)
neurons = adata.obs['cell_type'] == 'neuron'
other_cells = ~neurons
Neurons tolerate higher MT%, other cells use stricter threshold
neuron_qc = apply_hard_threshold(adata[neurons], 'pct_counts_mt', 15, operator='>')
other_qc = apply_hard_threshold(adata[other_cells], 'pct_counts_mt', 8, operator='>')
Best Practices
- Be permissive with filtering - Default thresholds intentionally retain most cells to avoid losing rare populations
- Inspect visualizations - Always review before/after plots to ensure filtering makes biological sense
- Consider dataset-specific factors - Some tissues naturally have higher mitochondrial content (e.g., neurons, cardiomyocytes)
- Check gene annotations - Mitochondrial gene prefixes vary by species (mt- for mouse, MT- for human)
- Iterate if needed - QC parameters may need adjustment based on the specific experiment or tissue type
Reference Materials
For detailed QC methodology, parameter rationale, and troubleshooting guidance, see references/scverse_qc_guidelines.md. This reference provides:
- Detailed explanations of each QC metric and why it matters
- Rationale for MAD-based thresholds and why they're better than fixed cutoffs
- Guidelines for interpreting QC visualizations (histograms, violin plots, scatter plots)
- Species-specific considerations for gene annotations
- When and how to adjust filtering parameters
- Advanced QC considerations (ambient RNA correction, doublet detection)
Load this reference when users need deeper understanding of the methodology or when troubleshooting QC issues.
Next Steps After QC
Typical downstream analysis steps:
- Ambient RNA correction (SoupX, CellBender)
- Doublet detection (scDblFinder)
- Normalization (log-normalize, scran)
- Feature selection and dimensionality reduction
- Clustering and cell type annotation
Supported Agents
Attribution
Details
- License
- MIT
- Source
- admin
- Published
- 3/18/2026
Tags
Related Skills
Nextflow Development
Run nf-core bioinformatics pipelines (rnaseq, sarek, atacseq) on sequencing data. Use when analyzing RNA-seq, WGS/WES, or ATAC-seq data—either local FASTQs or public datasets from GEO/SRA. Triggers on nf-core, Nextflow, FASTQ analysis, variant calling, gene expression, differential expression, GEO reanalysis, GSE/GSM/SRR accessions, or samplesheet creation.
Scientific Problem Selection
This skill should be used when scientists need help with research problem selection, project ideation, troubleshooting stuck projects, or strategic scientific decisions. Use this skill when users ask to pitch a new research idea, work through a project problem, evaluate project risks, plan research strategy, navigate decision trees, or get help choosing what scientific problem to work on. Typical requests include "I have an idea for a project", "I'm stuck on my research", "help me evaluate this project", "what should I work on", or "I need strategic advice about my research".
Scvi Tools
Deep learning for single-cell analysis using scvi-tools. This skill should be used when users need (1) data integration and batch correction with scVI/scANVI, (2) ATAC-seq analysis with PeakVI, (3) CITE-seq multi-modal analysis with totalVI, (4) multiome RNA+ATAC analysis with MultiVI, (5) spatial transcriptomics deconvolution with DestVI, (6) label transfer and reference mapping with scANVI/scArches, (7) RNA velocity with veloVI, or (8) any deep learning-based single-cell method. Triggers include mentions of scVI, scANVI, totalVI, PeakVI, MultiVI, DestVI, veloVI, sysVI, scArches, variational autoencoder, VAE, batch correction, data integration, multi-modal, CITE-seq, multiome, reference mapping, latent space.