<!-- 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 "bio-data-visualization-upset-plots" -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/bio-data-visualization-upset-plots ~/.claude/skills/bio-data-visualization-upset-plotsThis skill is a directory: SKILL.md is the entry point; the files below ship with it.
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# 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: Authenticated by MD BABU MIA
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---
name: bio-data-visualization-upset-plots
description: Create UpSet plots to visualize set intersections as an alternative to Venn diagrams using UpSetR or upsetplot. Use when comparing overlapping gene sets, peak sets, or sample groups with more than 3 sets.
tool_type: mixed
primary_tool: UpSetR
measurable_outcome: Execute skill workflow successfully with valid output within 15 minutes.
allowed-tools:
- read_file
- run_shell_command
---
# UpSet Plots
## UpSetR (R) - Basic Plot
```r
library(UpSetR)
# From binary matrix (rows = elements, columns = sets)
upset(fromExpression(data), order.by = 'freq', nsets = 6)
# From list of sets
gene_sets <- list(
SetA = c('Gene1', 'Gene2', 'Gene3', 'Gene4'),
SetB = c('Gene2', 'Gene3', 'Gene5', 'Gene6'),
SetC = c('Gene1', 'Gene3', 'Gene6', 'Gene7'),
SetD = c('Gene3', 'Gene4', 'Gene7', 'Gene8')
)
upset(fromList(gene_sets), order.by = 'freq', nsets = 4)
```
## UpSetR Customization
```r
# Customized appearance
upset(fromList(gene_sets),
nsets = 6,
nintersects = 40,
order.by = 'freq',
decreasing = TRUE,
mb.ratio = c(0.6, 0.4), # Matrix to bar ratio
point.size = 3,
line.size = 1.5,
mainbar.y.label = 'Intersection Size',
sets.x.label = 'Set Size',
text.scale = c(1.5, 1.3, 1.3, 1, 1.5, 1.3),
set_size.show = TRUE,
set_size.scale_max = 500)
# Custom set colors
upset(fromList(gene_sets),
sets.bar.color = c('#E64B35', '#4DBBD5', '#00A087', '#3C5488'),
main.bar.color = '#7E6148',
matrix.color = '#7E6148')
```
## UpSetR with Queries
```r
# Highlight specific intersections
upset(fromList(gene_sets),
order.by = 'freq',
queries = list(
list(query = intersects,
params = list('SetA', 'SetB'),
color = '#E64B35',
active = TRUE),
list(query = intersects,
params = list('SetA', 'SetC', 'SetD'),
color = '#4DBBD5',
active = TRUE)
))
# Highlight elements matching criteria
# Requires attribute data frame with element names as row names
upset(fromList(gene_sets),
queries = list(
list(query = elements,
params = list('logFC', 1, 2), # column, min, max
color = 'red',
active = TRUE)
))
```
## UpSetR with Metadata Boxplots
```r
# Add attribute plots below intersection matrix
# Requires data frame with set membership columns + attribute columns
upset(data,
order.by = 'freq',
boxplot.summary = c('logFC', 'pvalue'))
# Custom attribute plots
upset(data,
order.by = 'freq',
attribute.plots = list(
gridrows = 50,
plots = list(
list(plot = histogram, x = 'logFC', queries = FALSE),
list(plot = scatter_plot, x = 'logFC', y = 'pvalue', queries = TRUE)
),
ncols = 2
))
```
## upsetplot (Python) - Basic
```python
from upsetplot import from_memberships, plot, UpSet
import matplotlib.pyplot as plt
# From membership lists
memberships = [
['SetA', 'SetB'],
['SetA'],
['SetB', 'SetC'],
['SetA', 'SetB', 'SetC'],
['SetC'],
['SetA', 'SetC']
]
data = from_memberships(memberships)
# Basic plot
plot(data, show_counts=True)
plt.savefig('upset.png', dpi=150, bbox_inches='tight')
```
## upsetplot from DataFrame
```python
import pandas as pd
from upsetplot import from_contents, UpSet
# From dict of sets
gene_sets = {
'SetA': ['Gene1', 'Gene2', 'Gene3', 'Gene4'],
'SetB': ['Gene2', 'Gene3', 'Gene5', 'Gene6'],
'SetC': ['Gene1', 'Gene3', 'Gene6', 'Gene7']
}
data = from_contents(gene_sets)
upset = UpSet(data, subset_size='count', show_counts=True, sort_by='cardinality')
upset.plot()
plt.savefig('upset.png', dpi=150, bbox_inches='tight')
```
## upsetplot Customization
```python
from upsetplot import UpSet
upset = UpSet(data,
subset_size='count',
show_counts=True,
show_percentages=True,
sort_by='cardinality', # or 'degree'
sort_categories_by='cardinality',
facecolor='#4DBBD5',
element_size=40,
intersection_plot_elements=10)
fig = plt.figure(figsize=(12, 8))
upset.plot(fig=fig)
```
## upsetplot with Metadata
```python
# Add data attributes for additional plots
df = pd.DataFrame({
'SetA': [True, True, False, True, False],
'SetB': [True, False, True, True, False],
'SetC': [False, True, True, False, True],
'logFC': [1.2, -0.8, 2.1, 0.5, -1.5],
'pvalue': [0.01, 0.05, 0.001, 0.2, 0.03]
})
df = df.set_index(['SetA', 'SetB', 'SetC'])
upset = UpSet(df, subset_size='count')
upset.add_stacked_bars(by='significant', colors=['gray', 'red'])
# Or: upset.add_catplot(value='logFC', kind='box')
upset.plot()
```
## Save UpSet Plots
```r
# R - to PDF
pdf('upset_plot.pdf', width = 10, height = 6)
upset(fromList(gene_sets), order.by = 'freq')
dev.off()
# R - to PNG
png('upset_plot.png', width = 10, height = 6, units = 'in', res = 300)
upset(fromList(gene_sets), order.by = 'freq')
dev.off()
```
```python
# Python
fig = plt.figure(figsize=(10, 6))
upset.plot(fig=fig)
plt.savefig('upset.pdf', bbox_inches='tight')
plt.savefig('upset.png', dpi=300, bbox_inches='tight')
```
## Related Skills
- data-visualization/heatmaps-clustering - Alternative for smaller sets
- pathway-analysis/enrichment-visualization - Gene set overlaps
- differential-expression/de-results - DE gene set comparisons
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