From tooluniverse
Optimizes therapeutic antibodies from lead to clinical candidate: humanization, affinity maturation, developability assessment, immunogenicity prediction, and structure modeling.
How this skill is triggered — by the user, by Claude, or both
Slash command
/tooluniverse:tooluniverse-antibody-engineeringThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
AI-guided antibody optimization pipeline from preclinical lead to clinical candidate. Covers sequence humanization, structure modeling, affinity optimization, developability assessment, immunogenicity prediction, and manufacturing feasibility.
AI-guided antibody optimization pipeline from preclinical lead to clinical candidate. Covers sequence humanization, structure modeling, affinity optimization, developability assessment, immunogenicity prediction, and manufacturing feasibility.
KEY PRINCIPLES:
When uncertain about any scientific fact, SEARCH databases first (PubMed, UniProt, ChEMBL, ClinVar, etc.) rather than reasoning from memory. A database-verified answer is always more reliable than a guess.
Apply when user asks:
antibody_optimization_report.mdoptimized_sequences.fasta - All optimized variantshumanization_comparison.csv - Before/after comparisondevelopability_assessment.csv - Detailed scoresSee REPORT_TEMPLATE.md for the full report template with section formats.
Every optimization MUST include per-variant documentation with:
| Tool | Purpose | Category |
|---|---|---|
IMGT_search_genes | Germline gene identification | Humanization |
IMGT_get_sequence | Human framework sequences | Humanization |
SAbDab_search_structures | Antibody structure precedents | Structure |
TheraSAbDab_search_by_target | Clinical antibody benchmarks | Validation |
alphafold_get_prediction | Structure modeling | Structure |
iedb_search_epitopes | Epitope identification | Immunogenicity |
iedb_search_bcell | B-cell epitope prediction | Immunogenicity |
UniProt_get_entry_by_accession | Target antigen information | Target |
STRING_get_interaction_partners | Protein interaction network | Bispecifics |
PubMed_search_articles | Literature precedents | Validation |
CRITICAL: SOAP tools (IMGT, SAbDab, TheraSAbDab) require an operation parameter. See QUICK_START.md for correct usage.
Phase 1: Input Analysis & Characterization
├── Sequence annotation (CDRs, framework)
├── Species identification
├── Target antigen identification
├── Clinical precedent search
└── OUTPUT: Input characterization
↓
Phase 2: Humanization Strategy
├── Germline gene alignment (IMGT)
├── Framework selection
├── CDR grafting design
├── Backmutation identification
└── OUTPUT: Humanization plan
↓
Phase 3: Structure Modeling & Analysis
├── AlphaFold prediction
├── CDR conformation analysis
├── Epitope mapping
├── Interface analysis
└── OUTPUT: Structural assessment
↓
Phase 4: Affinity Optimization
├── In silico mutation screening
├── CDR optimization strategies
├── Interface improvement
└── OUTPUT: Affinity variants
↓
Phase 5: Developability Assessment
├── Aggregation propensity
├── PTM site identification
├── Stability prediction
├── Expression prediction
└── OUTPUT: Developability score
↓
Phase 6: Immunogenicity Prediction
├── MHC-II epitope prediction (IEDB)
├── T-cell epitope risk
├── Aggregation-related immunogenicity
└── OUTPUT: Immunogenicity risk score
↓
Phase 7: Manufacturing Feasibility
├── Expression level prediction
├── Purification considerations
├── Formulation stability
└── OUTPUT: Manufacturing assessment
↓
Phase 8: Final Report & Recommendations
├── Ranked variant list
├── Experimental validation plan
├── Next steps
└── OUTPUT: Comprehensive report
Goal: Annotate sequences, identify species/germline, find clinical precedents.
Key steps:
IMGT_search_genesTheraSAbDab_search_by_targetUniProt_get_entry_by_accessionOutput: Sequence information table, CDR annotation, target info, clinical precedent list.
See WORKFLOW_DETAILS.md Phase 1 for code examples.
Goal: Select human framework, design CDR grafting, identify backmutations.
Key steps:
Output: Framework selection rationale, grafting design, backmutation analysis, humanized sequences.
See WORKFLOW_DETAILS.md Phase 2 for code examples.
Goal: Predict structure, analyze CDR conformations, map epitope.
Key steps:
alphafold_get_prediction (VH:VL)iedb_search_epitopesSAbDab_search_structuresOutput: Structure quality table, CDR conformation analysis, epitope mapping, structural comparison.
See WORKFLOW_DETAILS.md Phase 3 for code examples.
Goal: Design affinity-improving mutations via computational screening.
Key steps:
Output: Ranked mutation list, combination strategy, expected affinity improvements.
See WORKFLOW_DETAILS.md Phase 4 for code examples.
Goal: Comprehensive developability scoring (0-100) across five dimensions.
Key steps:
Scoring: Weighted average (aggregation 0.30, PTM 0.25, stability 0.20, expression 0.15, solubility 0.10). Tiers: T1 (>75), T2 (60-75), T3 (<60).
Output: Component scores, overall score, tier classification, mitigation recommendations.
See WORKFLOW_DETAILS.md Phase 5 and CHECKLISTS.md for scoring details.
Goal: Predict immunogenicity risk and design deimmunization strategy.
Key steps:
Output: T-cell epitope list, risk score breakdown, deimmunization strategy, clinical comparison.
See WORKFLOW_DETAILS.md Phase 6 for code examples.
Goal: Assess expression, purification, formulation, and CMC feasibility.
Key steps:
Output: Expression assessment, purification strategy, formulation recommendation, CMC timeline.
See MANUFACTURING.md for detailed manufacturing content and WORKFLOW_DETAILS.md Phase 7 for code.
Goal: Compile all findings into a ranked recommendation with validation plan.
Key outputs:
See REPORT_TEMPLATE.md for the full report template.
IMGT_search_genes: Search germline genes (IGHV, IGKV, etc.)IMGT_get_sequence: Get germline sequencesIMGT_get_gene_info: Database informationSAbDab_search_structures: Search antibody structuresSAbDab_get_structure: Get structure detailsTheraSAbDab_search_therapeutics: Search by nameTheraSAbDab_search_by_target: Search by target antigeniedb_search_epitopes: Search epitopesiedb_search_bcell: B-cell epitopesiedb_search_mhc: MHC-II epitopesiedb_get_epitope_references: Citationsalphafold_get_prediction: Structure predictionUniProt_get_entry_by_accession: Target infoRCSBData_get_entry: Experimental structuresSTRING_get_interaction_partners: Protein interactionsSTRING_get_enrichment: Pathway analysis| File | Contents |
|---|---|
QUICK_START.md | Getting started guide, SOAP tool parameters, Python SDK and MCP usage |
WORKFLOW_DETAILS.md | Code examples for all 8 phases |
REPORT_TEMPLATE.md | Full report template with section formats and example tables |
MANUFACTURING.md | Detailed manufacturing content (expression, purification, formulation, CMC) |
EXAMPLES.md | Complete clinical scenario examples (humanization, affinity, bispecific) |
CHECKLISTS.md | Evidence grading, completeness checklists, scoring details, special considerations |
npx claudepluginhub mims-harvard/tooluniverse --plugin tooluniverseImmunology research skill for antibody-antigen interactions, T/B cell repertoire, MHC/HLA binding prediction, autoimmune genetics, vaccine epitope mapping. Uses IEDB, IMGT, SAbDab, UniProt.
Analyzes protein glycosylation: scans N-glycosylation sequons (N-X-S/T), predicts O-glycosylation hotspots, and links glycoengineering tools. Useful for antibody and vaccine design.
Analyzes and engineers protein glycosylation: scans for N-glycosylation sequons, predicts O-glycosylation hotspots, and curates glycoengineering tools for therapeutic antibody optimization and vaccine design.