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differential-splicing skill

/alternative-splicing/differential-splicing

This skill detects differential alternative splicing between conditions using rMATS-turbo or SUPPA2 diffSplice, reporting FDR-significant events and delta PSI.

npx playbooks add skill gptomics/bioskills --skill differential-splicing

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---
name: bio-differential-splicing
description: Detects differential alternative splicing between conditions using rMATS-turbo (BAM-based) or SUPPA2 diffSplice (TPM-based). Reports events with FDR-corrected significance and delta PSI effect sizes. Use when comparing splicing patterns between treatment groups, tissues, or disease states.
tool_type: mixed
primary_tool: rMATS-turbo
---

## Version Compatibility

Reference examples tested with: STAR 2.7.11+, pandas 2.2+

Before using code patterns, verify installed versions match. If versions differ:
- Python: `pip show <package>` then `help(module.function)` to check signatures
- R: `packageVersion('<pkg>')` then `?function_name` to verify parameters
- CLI: `<tool> --version` then `<tool> --help` to confirm flags

If code throws ImportError, AttributeError, or TypeError, introspect the installed
package and adapt the example to match the actual API rather than retrying.

# Differential Splicing

Detect differential alternative splicing events between experimental conditions.

## Tool Comparison

| Tool | Input | Approach | Strengths |
|------|-------|----------|-----------|
| rMATS-turbo | BAM | Junction counting | Novel junctions, statistical model |
| SUPPA2 | TPM | Transcript ratios | Speed, isoform-aware |
| leafcutter | BAM | Intron clustering | Novel events, no annotation bias |

## rMATS-turbo Analysis

**Goal:** Detect statistically significant differential splicing events between two conditions from BAM files.

**Approach:** Run rMATS-turbo on condition-grouped BAMs, then filter results by FDR and delta PSI thresholds.

**"Find differential splicing between conditions"** -> Compare junction-level inclusion across sample groups with statistical testing.
- CLI/Python: `rmats.py` + pandas filtering (rMATS-turbo)
- Python/CLI: `suppa.py diffSplice` (SUPPA2, TPM-based)
- R: `leafcutter_ds.R` (leafcutter, annotation-free)

```bash
# Create sample lists (one BAM path per line)
# condition1_bams.txt: /path/to/sample1.bam, /path/to/sample2.bam, ...
# condition2_bams.txt: /path/to/sample3.bam, /path/to/sample4.bam, ...

rmats.py \
    --b1 condition1_bams.txt \
    --b2 condition2_bams.txt \
    --gtf annotation.gtf \
    -t paired \
    --readLength 150 \
    --nthread 8 \
    --od rmats_output \
    --tmp rmats_tmp
```

```python
import pandas as pd

# Load results for skipped exons
se = pd.read_csv('rmats_output/SE.MATS.JC.txt', sep='\t')

# Filter significant differential splicing events
# |deltaPSI| > 0.1 (lenient) or > 0.2 (stringent)
# FDR < 0.05
significant = se[
    (se['FDR'] < 0.05) &
    (se['IncLevelDifference'].abs() > 0.1)
].copy()

print(f'{len(significant)} significant SE events')
print(significant[['GeneID', 'geneSymbol', 'IncLevelDifference', 'FDR']].head(10))

# Additional filtering by junction read support
# Require at least 10 reads supporting each junction type
significant = significant[
    (significant['IJC_SAMPLE_1'].str.split(',').apply(lambda x: min(map(int, x))) >= 10) |
    (significant['SJC_SAMPLE_1'].str.split(',').apply(lambda x: min(map(int, x))) >= 10)
]
```

## SUPPA2 Differential Analysis

**Goal:** Identify differential splicing from transcript quantification without alignment.

**Approach:** Compare per-event PSI distributions between conditions using SUPPA2 empirical p-value calculation.

```python
import subprocess

# Requires PSI files from suppa.py psiPerEvent
# TPM file with samples from both conditions

# Run differential splicing
subprocess.run([
    'suppa.py', 'diffSplice',
    '-m', 'empirical',  # Empirical p-value calculation
    '-i', 'events_SE_strict.ioe',
    '-p', 'condition1.psi', 'condition2.psi',
    '-e', 'condition1.tpm', 'condition2.tpm',
    '-o', 'diff_SE'
], check=True)

# Load results
import pandas as pd
diff = pd.read_csv('diff_SE.dpsi', sep='\t', index_col=0)

# SUPPA2 tends to be more stringent
significant = diff[
    (diff['p-value'] < 0.05) &
    (diff['dPSI'].abs() > 0.1)
]
```

## leafcutter Analysis

**Goal:** Detect differential intron usage without relying on transcript annotation.

**Approach:** Extract junctions from BAMs, cluster introns by shared splice sites, then test differential usage between groups.

```r
library(leafcutter)

# Convert BAMs to junction files
# leafcutter_bam_to_junc.sh uses regtools
system('for bam in *.bam; do
    regtools junctions extract -a 8 -m 50 -s 0 $bam -o ${bam%.bam}.junc
done')

# Create junction file list
writeLines(list.files(pattern = '\\.junc$'), 'juncfiles.txt')

# Cluster introns
system('python leafcutter_cluster_regtools.py -j juncfiles.txt -o leafcutter')

# Run differential analysis
groups <- data.frame(
    sample = c('sample1', 'sample2', 'sample3', 'sample4'),
    group = c('control', 'control', 'treatment', 'treatment')
)
write.table(groups, 'groups.txt', sep = '\t', quote = FALSE, row.names = FALSE)

# Differential intron usage
system('leafcutter_ds.R --num_threads 4 leafcutter_perind_numers.counts.gz groups.txt')
```

## Significance Thresholds

| Stringency | deltaPSI | FDR | Use Case |
|------------|----------|-----|----------|
| Lenient | > 0.1 | < 0.05 | Discovery, exploratory |
| Standard | > 0.15 | < 0.05 | Publication |
| Stringent | > 0.2 | < 0.01 | High-confidence set |

## Result Prioritization

**Goal:** Rank differential splicing events by combined statistical and biological significance.

**Approach:** Compute a composite score from FDR and effect size, then select top-scoring events for follow-up.

```python
# Prioritize by effect size and significance
significant['score'] = -np.log10(significant['FDR']) * significant['IncLevelDifference'].abs()
top_events = significant.nlargest(50, 'score')

# Annotate with gene function
# Consider protein domain disruption, NMD sensitivity
```

## Related Skills

- splicing-quantification - Calculate PSI values first
- isoform-switching - Functional consequence analysis
- sashimi-plots - Visualize significant events
- read-alignment/star-alignment - STAR 2-pass alignment required

Overview

This skill detects differential alternative splicing between sample groups using rMATS-turbo (BAM-based) or SUPPA2 diffSplice (TPM-based) and reports FDR-corrected significance with delta PSI effect sizes. It supports junction-level and transcript-level workflows, includes filtering and prioritization patterns, and outlines thresholds for lenient to stringent discovery. Use it to produce ranked, reproducible lists of candidate splicing events for validation or downstream interpretation.

How this skill works

For BAM-based analysis, it runs rMATS-turbo to compare junction inclusion between two condition groups, then filters events by FDR and IncLevelDifference (delta PSI) and optional read-support thresholds. For TPM-based analysis, it runs SUPPA2 diffSplice using per-event PSI or TPM inputs and empirical p-values, then filters by p-value and dPSI. It also describes alternative annotation-free workflows (leafcutter) and a simple scoring scheme that combines effect size and significance to prioritize events.

When to use it

  • Comparing splicing between treatment and control groups
  • Contrasting tissue- or cell-type-specific splicing patterns
  • Identifying disease-associated splicing changes from RNA-seq cohorts
  • Prioritizing candidate events for RT-PCR or functional follow-up
  • When you have either aligned BAMs (rMATS/leafcutter) or transcript quantifications/TPMs (SUPPA2)

Best practices

  • Group samples by condition and provide one BAM list per group for rMATS; ensure consistent read length and library type flags
  • Choose thresholds to match goals: |deltaPSI|>0.1 & FDR<0.05 for discovery; raise stringency for publication-level sets
  • Require minimal junction read support (for example ≥10) when using junction counts to avoid low-confidence calls
  • Verify tool versions and match API/CLI flags before running; adapt example commands to the installed versions
  • Prioritize events by a composite score combining -log10(FDR) and absolute deltaPSI and annotate candidate genes for domain disruption or NMD sensitivity

Example use cases

  • Run rMATS on paired-end BAMs from two experimental arms to detect skipped exon events and filter for |IncLevelDifference|>0.15 and FDR<0.05
  • Use SUPPA2 diffSplice on TPMs when alignment is not available, then select events with empirical p-value<0.05 and |dPSI|>0.1
  • Apply leafcutter for discovery of novel introns in poorly annotated genomes and test differential intron usage across groups
  • Generate a ranked candidate list, annotate for protein-coding consequences, and export top 50 events for validation by RT-PCR

FAQ

What inputs do I need for rMATS versus SUPPA2?

rMATS requires grouped BAM file lists plus a GTF; SUPPA2 uses transcript quantifications/TPMs and event PSI matrices.

How do I choose deltaPSI and FDR cutoffs?

Use lenient cutoffs (|dPSI|>0.1, FDR<0.05) for discovery, standard (|dPSI|>0.15, FDR<0.05) for publication, and stringent (|dPSI|>0.2, FDR<0.01) for high confidence.