| name | bio-chipseq-motif-analysis |
| description | De novo motif discovery and known motif enrichment analysis using HOMER and MEME-ChIP. Identify transcription factor binding motifs in ChIP-seq, ATAC-seq, or other genomic peak data. Use when finding enriched DNA motifs in peak sequences. |
| tool_type | cli |
| primary_tool | HOMER |
Version Compatibility
Reference examples tested with: BioPython 1.83+, bedtools 2.31+, matplotlib 3.8+, 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
- 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.
Motif Analysis
"Find enriched motifs in my ChIP-seq peaks" → Discover de novo DNA-binding motifs and test for known TF motif enrichment in peak sequences.
- CLI:
findMotifsGenome.pl peaks.bed hg38 output/ (HOMER), meme-chip -db JASPAR peaks.fa (MEME)
Identify DNA sequence motifs enriched in ChIP-seq or ATAC-seq peaks to discover transcription factor binding sites.
Tool Comparison
| Tool | Strengths | Use Case |
|---|
| HOMER | Fast, comprehensive, built-in databases | General motif analysis |
| MEME-ChIP | Multiple algorithms, web interface | Publication-quality |
| MEME | De novo discovery only | Simple discovery |
| FIMO | Known motif scanning | Genome-wide scanning |
HOMER
Installation
conda install -c bioconda homer
perl /path/to/homer/configureHomer.pl -install hg38
perl /path/to/homer/configureHomer.pl -install mm10
De Novo Motif Discovery
Goal: Discover enriched DNA-binding motifs directly from ChIP-seq peak sequences.
Approach: Run findMotifsGenome.pl on a peak BED file with a specified fragment size, optionally providing background regions and target motif lengths.
findMotifsGenome.pl peaks.bed hg38 output_dir/ -size 200
findMotifsGenome.pl peaks.bed hg38 output_dir/ -size 200 -bg background.bed
findMotifsGenome.pl peaks.bed hg38 output_dir/ -size 200 -len 8,10,12
Key Options
| Option | Description |
|---|
-size <#> | Fragment size for analysis (default 200) |
-size given | Use actual peak sizes |
-bg <file> | Background regions (BED) |
-len <#,#,...> | Motif lengths to search |
-mask | Mask repeats |
-p <#> | Number of CPUs |
-S <#> | Number of motifs to find (default 25) |
-mis <#> | Mismatches allowed (default 2) |
-noweight | Don't adjust for GC content |
Output Files
output_dir/
├── homerResults.html # Main results page
├── knownResults.html # Known motif enrichment
├── homerMotifs.all.motifs # All discovered motifs
├── knownResults.txt # Known motif statistics
└── motif1.motif # Individual motif files
Known Motif Enrichment Only
findMotifsGenome.pl peaks.bed hg38 output_dir/ -size 200 -nomotif
Scan for Specific Motifs
annotatePeaks.pl peaks.bed hg38 -m motif.motif > annotated.txt
scanMotifGenomeWide.pl motif.motif hg38 > motif_sites.bed
Motif Comparison
compareMotifs.pl motifs.motif output_dir/ -known
Create Custom Motif
seq2profile.pl CACGTG 4 > MYC.motif
cat aligned_seqs.txt | alignAndConvert.pl - > custom.motif
MEME Suite
Installation
conda install -c bioconda meme
Extract Sequences from Peaks
bedtools getfasta -fi genome.fa -bed peaks.bed -fo peaks.fa
bedtools slop -i peaks.bed -g genome.sizes -b 100 | \
bedtools getfasta -fi genome.fa -bed - -fo peaks_centered.fa
MEME (De Novo Discovery)
meme peaks.fa -dna -oc meme_output -mod zoops -nmotifs 10 -minw 6 -maxw 20
fasta-get-markov peaks.fa > background.model
meme peaks.fa -dna -oc meme_output -bfile background.model -mod zoops -nmotifs 10
MEME Options
| Option | Description |
|---|
-mod zoops | Zero or one per sequence (default for ChIP) |
-mod oops | Exactly one per sequence |
-mod anr | Any number of repeats |
-nmotifs <#> | Number of motifs to find |
-minw <#> | Minimum motif width |
-maxw <#> | Maximum motif width |
-revcomp | Search both strands |
-bfile <file> | Background model file |
MEME-ChIP (Comprehensive Pipeline)
Goal: Run a comprehensive motif analysis pipeline combining de novo discovery, central enrichment testing, and database comparison.
Approach: Provide peak FASTA sequences and a motif database to MEME-ChIP, which runs MEME, DREME, CentriMo, TOMTOM, and FIMO in a single invocation.
meme-chip -oc meme_chip_output -db motif_database.meme peaks.fa
MEME-ChIP runs:
- MEME - De novo discovery (central enrichment)
- DREME - Short motif discovery
- CentriMo - Central enrichment analysis
- TOMTOM - Compare to known motifs
- FIMO - Find motif instances
DREME (Short Motifs)
dreme -oc dreme_output -p peaks.fa -n background.fa
CentriMo (Central Enrichment)
centrimo -oc centrimo_output peaks.fa motif_database.meme
TOMTOM (Motif Comparison)
tomtom -oc tomtom_output discovered.meme database.meme
FIMO (Motif Scanning)
fimo --oc fimo_output motif.meme sequences.fa
fimo --oc fimo_output --max-stored-scores 1000000 motif.meme genome.fa
Motif Databases
HOMER Built-in
ls /path/to/homer/data/knownTFs/
findMotifsGenome.pl peaks.bed hg38 output/ -mknown vertebrates/known.motifs
JASPAR
wget https://jaspar.genereg.net/download/data/2024/CORE/JASPAR2024_CORE_vertebrates_non-redundant_pfms_meme.txt
meme-chip -db JASPAR2024_CORE_vertebrates_non-redundant_pfms_meme.txt peaks.fa
HOCOMOCO
wget https://hocomoco11.autosome.org/final_bundle/hocomoco11/core/HUMAN/mono/HOCOMOCOv11_core_HUMAN_mono_meme_format.meme
tomtom discovered.meme HOCOMOCOv11_core_HUMAN_mono_meme_format.meme
Python: Parse HOMER Results
import pandas as pd
def parse_homer_known(results_file):
'''Parse HOMER knownResults.txt.'''
df = pd.read_csv(results_file, sep='\t')
df.columns = ['Motif', 'Consensus', 'P-value', 'Log P-value',
'q-value', 'Targets', 'Target%', 'Background', 'Background%']
df['P-value'] = df['P-value'].astype(float)
return df.sort_values('P-value')
known = parse_homer_known('output_dir/knownResults.txt')
print(known[['Motif', 'P-value', 'Target%']].head(20))
Python: Parse MEME Results
from Bio import motifs
def parse_meme_file(meme_file):
'''Parse MEME output file.'''
with open(meme_file) as f:
record = motifs.parse(f, 'meme')
return record
record = parse_meme_file('meme_output/meme.txt')
for m in record:
print(f'{m.name}: {m.consensus}')
print(m.counts)
Complete Workflows
ChIP-seq Motif Analysis
Goal: Run a complete motif analysis workflow combining HOMER and MEME-ChIP on ChIP-seq peaks.
Approach: Run HOMER findMotifsGenome.pl for fast de novo and known motif discovery, then extract centered peak sequences and run MEME-ChIP for a complementary analysis.
#!/bin/bash
set -euo pipefail
PEAKS=$1
GENOME=$2
OUTDIR=$3
mkdir -p $OUTDIR
echo "Running HOMER..."
findMotifsGenome.pl $PEAKS $GENOME ${OUTDIR}/homer \
-size 200 -p 8 -mask
echo "Extracting sequences..."
bedtools slop -i $PEAKS -g ${GENOME}.chrom.sizes -b 0 | \
awk 'BEGIN{OFS="\t"} {center=int(($2+$3)/2); print $1,center-100,center+100}' | \
bedtools getfasta -fi ${GENOME}.fa -bed - -fo ${OUTDIR}/peaks.fa
echo "Running MEME-ChIP..."
meme-chip -oc ${OUTDIR}/meme_chip \
-db /path/to/JASPAR.meme \
${OUTDIR}/peaks.fa
echo "Done. Results in ${OUTDIR}/"
ATAC-seq Footprint Motifs
findMotifsGenome.pl footprints.bed hg38 footprint_motifs/ \
-size given -mask -p 8
findMotifsGenome.pl footprints.bed hg38 footprint_motifs/ \
-size given -bg accessible_peaks.bed -mask -p 8
Visualization
HOMER Logo
motif2Logo.pl motif.motif > logo.eps
Plot with Python
import logomaker
import pandas as pd
import matplotlib.pyplot as plt
def plot_motif(pwm_file):
'''Plot sequence logo from HOMER PWM.'''
pwm = pd.read_csv(pwm_file, sep='\t', skiprows=1, header=None)
pwm.columns = ['A', 'C', 'G', 'T']
logo = logomaker.Logo(pwm, shade_below=0.5, fade_below=0.5)
plt.show()
Quality Metrics
| Metric | Good | Concerning |
|---|
| P-value | < 1e-10 | > 1e-5 |
| Target % | > 20% | < 5% |
| Background % | < Target/2 | Similar to Target |
| Bit score | > 10 | < 5 |
Common Issues
No Significant Motifs
- Check peak quality (too few peaks?)
- Try different peak sizes (
-size)
- Ensure genome build matches
- Check for repeat masking issues
Too Many Motifs
- Increase significance threshold
- Use
-S to limit number of motifs
- Filter by target percentage
Wrong Background
- Use matched GC content background
- Consider using input/control peaks
- Try shuffled sequences
Related Skills
- peak-calling - Generate input peaks
- peak-annotation - Annotate peaks with genes
- atac-seq/footprinting - TF footprint analysis
- genome-intervals - BED file operations