<!-- COPYRIGHT NOTICE This file is part of the "Universal Biomedical Skills" project. Copyright c 2026 MD BABU MIA, PhD <md.babu.mia@mssm.edu All Rights Reserved. This code is proprietary and confidential. Unauthorized copying of this file, via any medium is strictly prohibited. Provenance:
Install with the open skills CLI (global, non-interactive — available in every Claude Code session):
npx skills add FreedomIntelligence/OpenClaw-Medical-Skills --skill "spatial-proteomics" -g -a claude-code -yOr manually — clone and copy the skill directory (SKILL.md + companion files):
git clone --depth 1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills /tmp/OpenClaw-Medical-Skills && cp -r /tmp/OpenClaw-Medical-Skills/skills/spatial-transcriptomics-analysis/bioSkills/spatial-proteomics ~/.claude/skills/spatial-proteomicsPart of the spatial-transcriptomics-analysis skill collection — installing the parent includes this skill.
This skill is a directory: SKILL.md is the entry point; the files below ship with it.
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# This file is part of the "Universal Biomedical Skills" project.
# Copyright (c) 2026 MD BABU MIA, PhD <md.babu.mia@mssm.edu>
# All Rights Reserved.
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# This code is proprietary and confidential.
# Unauthorized copying of this file, via any medium is strictly prohibited.
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---
name: bio-spatial-transcriptomics-spatial-proteomics
description: Analyzes spatial proteomics data from CODEX, IMC, and MIBI platforms including cell segmentation and protein colocalization. Use when working with multiplexed imaging data, analyzing protein spatial patterns, or integrating spatial proteomics with transcriptomics.
tool_type: python
primary_tool: scimap
measurable_outcome: Execute skill workflow successfully with valid output within 15 minutes.
allowed-tools:
- read_file
- run_shell_command
---
# Spatial Proteomics Analysis
## Data Loading
```python
import scimap as sm
import anndata as ad
# Load CODEX/IMC data (cell x marker matrix with spatial coordinates)
adata = ad.read_h5ad('spatial_proteomics.h5ad')
# Required: spatial coordinates in adata.obsm['spatial']
# Required: protein intensities in adata.X
```
## Preprocessing
```python
# Log transform intensities
sm.pp.log1p(adata)
# Rescale markers (0-1 per marker)
sm.pp.rescale(adata)
# Combat batch correction if multiple FOVs
sm.pp.combat(adata, batch_key='fov')
```
## Phenotyping Cells
```python
# Manual gating approach
phenotype_markers = {
'T_cell': ['CD3', 'CD45'],
'B_cell': ['CD20', 'CD45'],
'Macrophage': ['CD68', 'CD163'],
'Tumor': ['panCK', 'Ki67']
}
sm.tl.phenotype_cells(adata, phenotype=phenotype_markers,
gate=0.5, label='phenotype')
# Clustering-based phenotyping
sm.tl.cluster(adata, method='leiden', resolution=1.0)
```
## Spatial Analysis
```python
# Build spatial neighbors graph
sm.tl.spatial_distance(adata, x_coordinate='X', y_coordinate='Y')
# Neighborhood enrichment
sm.tl.spatial_interaction(adata, phenotype='phenotype',
method='knn', knn=10)
# Spatial clustering (communities of cells)
sm.tl.spatial_cluster(adata, phenotype='phenotype')
```
## Visualization
```python
# Spatial scatter plot
sm.pl.spatial_scatterPlot(adata, colorBy='phenotype',
x='X', y='Y', s=5)
# Heatmap of spatial interactions
sm.pl.spatial_interaction(adata)
# Marker expression overlay
sm.pl.image_viewer(adata, markers=['CD3', 'CD20', 'panCK'])
```
## Integration with Transcriptomics
```python
import squidpy as sq
# If matched spatial transcriptomics available
# Transfer labels or integrate modalities
sq.gr.spatial_neighbors(adata_protein)
sq.gr.spatial_neighbors(adata_rna)
# Compare spatial patterns across modalities
```
## Platform-Specific Notes
| Platform | Markers | Resolution | Notes |
|----------|---------|------------|-------|
| CODEX | 40-60 | Subcellular | Cyclic staining |
| IMC | 40+ | 1 um | Metal-tagged antibodies |
| MIBI | 40+ | 260 nm | Mass spectrometry |
## Related Skills
- spatial-transcriptomics/spatial-neighbors - Spatial graph construction
- spatial-transcriptomics/spatial-domains - Domain identification
- imaging-mass-cytometry/phenotyping - IMC-specific analysis
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