Skillquality 0.51
protein-design-workflow
End-to-end guidance for protein design pipelines. Use this skill when: (1) Starting a new protein design project, (2) Need step-by-step workflow guidance, (3) Understanding the full design pipeline, (4) Planning compute resources and timelines, (5) Integrating multiple design too
Price
free
Protocol
skill
Verified
no
What it does
Protein Design Workflow Guide
Standard binder design pipeline
Overview
Target Preparation --> Backbone Generation --> Sequence Design
| | |
v v v
(pdb skill) (rfdiffusion) (proteinmpnn)
| |
v v
Structure Validation --> Filtering
| |
v v
(alphafold/chai) (protein-qc)
Phase 1: Target preparation
1.1 Obtain target structure
# Download from PDB
curl -o target.pdb "https://files.rcsb.org/download/XXXX.pdb"
1.2 Clean and prepare
# Extract target chain
# Remove waters, ligands if needed
# Trim to binding region + 10A buffer
1.3 Select hotspots
- Choose 3-6 exposed residues
- Prefer charged/aromatic (K, R, E, D, W, Y, F)
- Check surface accessibility
- Verify residue numbering
Output: target_prepared.pdb, hotspot list
Phase 2: Backbone generation
Option A: RFdiffusion (diverse exploration)
modal run modal_rfdiffusion.py \
--pdb target_prepared.pdb \
--contigs "A1-150/0 70-100" \
--hotspot "A45,A67,A89" \
--num-designs 500
Option B: BindCraft (end-to-end)
modal run modal_bindcraft.py \
--target-pdb target_prepared.pdb \
--hotspots "A45,A67,A89" \
--num-designs 100
Output: 100-500 backbone PDBs
Phase 3: Sequence design
For RFdiffusion backbones
for backbone in backbones/*.pdb; do
modal run modal_proteinmpnn.py \
--pdb-path "$backbone" \
--num-seq-per-target 8 \
--sampling-temp 0.1
done
Output: 8 sequences per backbone (800-4000 total)
Phase 4: Structure validation
Predict complexes
# Prepare FASTA with binder + target
# binder:target format for multimer
modal run modal_colabfold.py \
--input-faa all_sequences.fasta \
--out-dir predictions/
Output: AF2 predictions with pLDDT, ipTM, PAE
Phase 5: Filtering and selection
Apply standard thresholds
import pandas as pd
# Load metrics
designs = pd.read_csv('all_metrics.csv')
# Filter
filtered = designs[
(designs['pLDDT'] > 0.85) &
(designs['ipTM'] > 0.50) &
(designs['PAE_interface'] < 10) &
(designs['scRMSD'] < 2.0) &
(designs['esm2_pll'] > 0.0)
]
# Rank by composite score
filtered['score'] = (
0.3 * filtered['pLDDT'] +
0.3 * filtered['ipTM'] +
0.2 * (1 - filtered['PAE_interface'] / 20) +
0.2 * filtered['esm2_pll']
)
top_designs = filtered.nlargest(50, 'score')
Output: 50-200 filtered candidates
Resource planning
Compute requirements
| Stage | GPU | Time (100 designs) |
|---|---|---|
| RFdiffusion | A10G | 30 min |
| ProteinMPNN | T4 | 15 min |
| ColabFold | A100 | 4-8 hours |
| Filtering | CPU | 15 min |
Total timeline
- Small campaign (100 designs): 8-12 hours
- Medium campaign (500 designs): 24-48 hours
- Large campaign (1000+ designs): 2-5 days
Quality checkpoints
After backbone generation
- Visual inspection of diverse backbones
- Secondary structure present
- No clashes with target
After sequence design
- ESM2 PLL > 0.0 for most sequences
- No unwanted cysteines (unless intentional)
- Reasonable sequence diversity
After validation
- pLDDT > 0.85
- ipTM > 0.50
- PAE_interface < 10
- Self-consistency RMSD < 2.0 A
Final selection
- Diverse sequences (cluster if needed)
- Manufacturable (no problematic motifs)
- Reasonable molecular weight
Common issues
| Problem | Solution |
|---|---|
| Low ipTM | Check hotspots, increase designs |
| Poor diversity | Higher temperature, more backbones |
| High scRMSD | Backbone may be unusual |
| Low pLDDT | Check design quality |
Advanced workflows
Multi-tool combination
- RFdiffusion for initial backbones
- ColabDesign for refinement
- ProteinMPNN diversification
- AF2 final validation
Iterative refinement
- Run initial campaign
- Analyze failures
- Adjust hotspots/parameters
- Repeat with insights
Capabilities
skillsource-adaptyvbioskill-protein-design-workflowtopic-agent-skillstopic-claude-codetopic-protein-designtopic-protein-engineering
Install
Installnpx skills add adaptyvbio/protein-design-skills
Transportskills-sh
Protocolskill
Quality
0.51/ 1.00
deterministic score 0.51 from registry signals: · indexed on github topic:agent-skills · 126 github stars · SKILL.md body (4,330 chars)
Provenance
Indexed fromgithub
Enriched2026-05-02 12:54:48Z · deterministic:skill-github:v1 · v1
First seen2026-04-18
Last seen2026-05-02