bio-spatial-transcriptomics-spatial-multiomics

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Analyze high-resolution spatial platforms like Slide-seq, Stereo-seq, and Visium HD. Use when working with subcellular resolution or high-density spatial data.

mdbabumiamssm By mdbabumiamssm schedule Updated 2/4/2026

name: bio-spatial-transcriptomics-spatial-multiomics description: Analyze high-resolution spatial platforms like Slide-seq, Stereo-seq, and Visium HD. Use when working with subcellular resolution or high-density spatial data. tool_type: python primary_tool: squidpy measurable_outcome: Execute skill workflow successfully with valid output within 15 minutes. allowed-tools: - read_file - run_shell_command

Spatial Multi-omics Analysis

Platform Comparison

Platform Resolution Spots/Beads Coverage
Visium 55 µm ~5,000 Tissue-wide
Visium HD 2 µm ~11M Subcellular
Slide-seq 10 µm ~100,000 High-density
Stereo-seq 0.5 µm >200M Subcellular
MERFISH Single-molecule N/A Targeted genes

Squidpy for High-Resolution Data

import squidpy as sq
import scanpy as sc

# Load spatial data
adata = sc.read_h5ad('spatial_multiomics.h5ad')

# Spatial neighbors (for high-resolution, adjust n_neighs based on density)
sq.gr.spatial_neighbors(adata, coord_type='generic', n_neighs=10, spatial_key='spatial')

# Spatial autocorrelation (Moran's I)
sq.gr.spatial_autocorr(adata, mode='moran', genes=adata.var_names[:100])

# Neighborhood enrichment analysis
sq.gr.nhood_enrichment(adata, cluster_key='cell_type')
sq.pl.nhood_enrichment(adata, cluster_key='cell_type')

# Ligand-receptor analysis
sq.gr.ligrec(adata, n_perms=100, cluster_key='cell_type')

SpatialData Framework

import spatialdata as sd
from spatialdata_io import read_visium, read_xenium

# Read Visium data
sdata = read_visium('visium_output/')

# Read Xenium data (10x Genomics subcellular)
sdata = read_xenium('xenium_output/')

# Read from Zarr
sdata = sd.read_zarr('experiment.zarr')

# Access different elements
images = sdata.images['morphology']
points = sdata.points['transcripts']
shapes = sdata.shapes['cell_boundaries']
table = sdata.tables['adata']

# Query by region
from spatialdata import bounding_box_query
roi = bounding_box_query(sdata, min_coordinate=[0, 0], max_coordinate=[1000, 1000], axes=['x', 'y'])

Slide-seq/Stereo-seq Processing

# For high-density data, bin spots into hexagonal grids
import numpy as np

# Create hexagonal bins
def hexbin_data(adata, gridsize=50):
    coords = adata.obsm['spatial']
    from matplotlib.pyplot import hexbin
    hb = hexbin(coords[:, 0], coords[:, 1], C=None, gridsize=gridsize, reduce_C_function=np.sum)
    return hb

# Squidpy visualization with hex binning
sq.pl.spatial_scatter(adata, shape='hex', size=50, color='cluster')

# Grid-based spatial neighbors for regular patterns
sq.gr.spatial_neighbors(adata, coord_type='grid', n_rings=1)

Subcellular Analysis (MERFISH/Xenium)

# Transcript-level analysis
# Assign transcripts to compartments
sq.gr.co_occurrence(adata, cluster_key='compartment', spatial_key='spatial')

# Cell segmentation integration
from cellpose import models
model = models.Cellpose(model_type='cyto2')
masks, flows, styles, diams = model.eval(image, diameter=30, channels=[0, 0])

# Map transcripts to cells
def assign_transcripts_to_cells(transcripts_df, masks):
    x, y = transcripts_df['x'].values.astype(int), transcripts_df['y'].values.astype(int)
    transcripts_df['cell_id'] = masks[y, x]
    return transcripts_df[transcripts_df['cell_id'] > 0]

Multi-Modal Integration

# Combine spatial transcriptomics with histology
sq.im.process(adata, layer='image', method='smooth', sigma=2)
sq.im.segment(adata, layer='image', method='watershed', thresh=0.1)

# Extract image features
sq.im.calculate_image_features(
    adata, layer='image', features=['texture', 'summary'],
    key_added='img_features', n_jobs=4
)

# Correlate image features with gene expression
from scipy.stats import pearsonr
for gene in ['marker1', 'marker2']:
    r, p = pearsonr(adata.obs['img_feature'], adata[:, gene].X.flatten())
    print(f'{gene}: r={r:.3f}, p={p:.3e}')

Visium HD Specific

# Visium HD produces bin files at multiple resolutions
# Load 8µm binned data (recommended starting point)
adata = sc.read_h5ad('visium_hd_8um.h5ad')

# Downsample to 16µm if needed for initial analysis
# Original 2µm data available for detailed analysis

Quality Metrics

Metric Visium High-Resolution
Genes/spot >2000 >500
UMI/spot >5000 >1000
Spatial coverage >80% >50%

Related Skills

  • spatial-transcriptomics/spatial-preprocessing - Standard spatial analysis
  • single-cell/preprocessing - scRNA-seq concepts
  • spatial-transcriptomics/image-analysis - Morphology processing
  • single-cell/cell-annotation - Cell type assignment
Install via CLI
npx skills add https://github.com/mdbabumiamssm/LLMs-Universal-Life-Science-and-Clinical-Skills- --skill bio-spatial-transcriptomics-spatial-multiomics
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