General
tooluniverse-immunotherapy-response-prediction - Claude MCP Skill
Predict patient response to immune checkpoint inhibitors (ICIs) using multi-biomarker integration. Given a cancer type, somatic mutations, and optional biomarkers (TMB, PD-L1, MSI status), performs systematic analysis across 11 phases covering TMB classification, neoantigen burden estimation, MSI/MMR assessment, PD-L1 evaluation, immune microenvironment profiling, mutation-based resistance/sensitivity prediction, clinical evidence retrieval, and multi-biomarker score integration. Generates a quantitative ICI Response Score (0-100), response likelihood tier, specific ICI drug recommendations with evidence, resistance risk factors, and a monitoring plan. Use when oncologists ask about immunotherapy eligibility, checkpoint inhibitor selection, or biomarker-guided ICI treatment decisions.
SEO Guide: Enhance your AI agent with the tooluniverse-immunotherapy-response-prediction tool. This Model Context Protocol (MCP) server allows Claude Desktop and other LLMs to predict patient response to immune checkpoint inhibitors (icis) using multi-biomarker integration. g... Download and configure this skill to unlock new capabilities for your AI workflow.
Documentation
SKILL.md# Immunotherapy Response Prediction
Predict patient response to immune checkpoint inhibitors (ICIs) using multi-biomarker integration. Transforms a patient tumor profile (cancer type + mutations + biomarkers) into a quantitative ICI Response Score with drug-specific recommendations, resistance risk assessment, and monitoring plan.
**KEY PRINCIPLES**:
1. **Report-first approach** - Create report file FIRST, then populate progressively
2. **Evidence-graded** - Every finding has an evidence tier (T1-T4)
3. **Quantitative output** - ICI Response Score (0-100) with transparent component breakdown
4. **Cancer-specific** - All thresholds and predictions are cancer-type adjusted
5. **Multi-biomarker** - Integrate TMB + MSI + PD-L1 + neoantigen + mutations
6. **Resistance-aware** - Always check for known resistance mutations (STK11, PTEN, JAK1/2, B2M)
7. **Drug-specific** - Recommend specific ICI agents with evidence
8. **Source-referenced** - Every statement cites the tool/database source
9. **English-first queries** - Always use English terms in tool calls
---
## When to Use
Apply when user asks:
- "Will this patient respond to immunotherapy?"
- "Should I give pembrolizumab to this melanoma patient?"
- "Patient has NSCLC with TMB 25, PD-L1 80% - predict ICI response"
- "MSI-high colorectal cancer - which checkpoint inhibitor?"
- "Patient has BRAF V600E melanoma, TMB 15 - immunotherapy or targeted?"
- "Compare pembrolizumab vs nivolumab for this patient profile"
---
## Input Parsing
**Required**: Cancer type + at least one of: mutation list OR TMB value
**Optional**: PD-L1 expression, MSI status, immune infiltration data, HLA type, prior treatments, intended ICI
See [INPUT_REFERENCE.md](INPUT_REFERENCE.md) for input format examples, cancer type normalization, and gene symbol normalization tables.
---
## Workflow Overview
```
Input: Cancer type + Mutations/TMB + Optional biomarkers (PD-L1, MSI, etc.)
Phase 1: Input Standardization & Cancer Context
Phase 2: TMB Analysis
Phase 3: Neoantigen Analysis
Phase 4: MSI/MMR Status Assessment
Phase 5: PD-L1 Expression Analysis
Phase 6: Immune Microenvironment Profiling
Phase 7: Mutation-Based Predictors
Phase 8: Clinical Evidence & ICI Options
Phase 9: Resistance Risk Assessment
Phase 10: Multi-Biomarker Score Integration
Phase 11: Clinical Recommendations
```
---
## Phase 1: Input Standardization & Cancer Context
1. **Resolve cancer type** to EFO ID via `OpenTargets_get_disease_id_description_by_name`
2. **Parse mutations** into structured format: `{gene, variant, type}`
3. **Resolve gene IDs** via `MyGene_query_genes`
4. Look up cancer-specific ICI baseline ORR from the cancer context table (see [SCORING_TABLES.md](SCORING_TABLES.md))
## Phase 2: TMB Analysis
1. Classify TMB: Very-Low (<5), Low (5-9.9), Intermediate (10-19.9), High (>=20)
2. Check FDA TMB-H biomarker via `fda_pharmacogenomic_biomarkers(drug_name='pembrolizumab')`
3. Apply cancer-specific TMB thresholds (see [SCORING_TABLES.md](SCORING_TABLES.md))
4. Note: RCC responds to ICIs despite low TMB; TMB is less predictive in some cancers
## Phase 3: Neoantigen Analysis
1. Estimate neoantigen burden: missense_count * 0.3 + frameshift_count * 1.5
2. Check mutation impact via `UniProt_get_function_by_accession`
3. Query known epitopes via `iedb_search_epitopes`
4. POLE/POLD1 mutations indicate ultra-high neoantigen load
## Phase 4: MSI/MMR Status Assessment
1. Integrate MSI status if provided (MSI-H = 25 pts, MSS = 5 pts)
2. Check mutations in MMR genes: MLH1, MSH2, MSH6, PMS2, EPCAM
3. Check FDA MSI-H approvals via `fda_pharmacogenomic_biomarkers(biomarker='Microsatellite Instability')`
## Phase 5: PD-L1 Expression Analysis
1. Classify PD-L1: High (>=50%), Positive (1-49%), Negative (<1%)
2. Apply cancer-specific PD-L1 thresholds and scoring methods (TPS vs CPS)
3. Get baseline expression via `HPA_get_cancer_prognostics_by_gene(gene_name='CD274')`
## Phase 6: Immune Microenvironment Profiling
1. Query immune checkpoint gene expression for: CD274, PDCD1, CTLA4, LAG3, HAVCR2, TIGIT, CD8A, CD8B, GZMA, GZMB, PRF1, IFNG
2. Classify tumor: Hot (T cell inflamed), Cold (immune desert), Immune excluded, Immune suppressed
3. Run immune pathway enrichment via `enrichr_gene_enrichment_analysis`
## Phase 7: Mutation-Based Predictors
1. **Resistance mutations** (apply PENALTIES): STK11 (-10), PTEN (-5), JAK1/2 (-10 each), B2M (-15), KEAP1 (-5), MDM2/4 (-5), EGFR (-5)
2. **Sensitivity mutations** (apply BONUSES): POLE (+10), POLD1 (+5), BRCA1/2 (+3), ARID1A (+3), PBRM1 (+5 RCC only)
3. Check CIViC and OpenTargets for driver mutation ICI context
4. Check DDR pathway genes: ATM, ATR, CHEK1/2, BRCA1/2, PALB2, RAD50, MRE11
## Phase 8: Clinical Evidence & ICI Options
1. Query FDA indications for ICI drugs via `FDA_get_indications_by_drug_name`
2. Search clinical trials via `clinical_trials_search` or `search_clinical_trials`
3. Search PubMed for biomarker-specific response data
4. Get drug mechanisms via `OpenTargets_get_drug_mechanisms_of_action_by_chemblId`
See [SCORING_TABLES.md](SCORING_TABLES.md) for ICI drug profiles and ChEMBL IDs.
## Phase 9: Resistance Risk Assessment
1. Check CIViC for resistance evidence via `civic_search_evidence_items`
2. Assess pathway-level resistance: IFN-g signaling, antigen presentation, WNT/b-catenin, MAPK, PI3K/AKT/mTOR
3. Summarize risk: Low / Moderate / High
## Phase 10: Multi-Biomarker Score Integration
```
TOTAL SCORE = TMB_score + MSI_score + PDL1_score + Neoantigen_score + Mutation_bonus + Resistance_penalty
TMB_score: 5-30 points MSI_score: 5-25 points
PDL1_score: 5-20 points Neoantigen_score: 5-15 points
Mutation_bonus: 0-10 points Resistance_penalty: -20 to 0 points
Floor: 0, Cap: 100
```
**Response Likelihood Tiers**:
- 70-100 HIGH (50-80% ORR): Strong ICI candidate
- 40-69 MODERATE (20-50% ORR): Consider ICI, combo preferred
- 0-39 LOW (<20% ORR): ICI alone unlikely effective
**Confidence**: HIGH (all 4 biomarkers), MODERATE-HIGH (3/4), MODERATE (2/4), LOW (1), VERY LOW (cancer only)
## Phase 11: Clinical Recommendations
1. **ICI drug selection** using cancer-specific algorithm (see [SCORING_TABLES.md](SCORING_TABLES.md))
2. **Monitoring plan**: CT/MRI q8-12wk, ctDNA at 4-6wk, thyroid/liver function, irAEs
3. **Alternative strategies** if LOW response: targeted therapy, chemotherapy, ICI+chemo combo, ICI+anti-angiogenic, ICI+CTLA-4 combo, clinical trials
---
## Output Report
Save as `immunotherapy_response_prediction_{cancer_type}.md`. See [REPORT_TEMPLATE.md](REPORT_TEMPLATE.md) for the full report structure.
---
## Tool Parameter Reference
**BEFORE calling ANY tool**, verify parameters. See [TOOLS_REFERENCE.md](TOOLS_REFERENCE.md) for verified tool parameters table.
Key reminders:
- `MyGene_query_genes`: use `query` (NOT `q`)
- `EnsemblVEP_annotate_rsid`: use `variant_id` (NOT `rsid`)
- `drugbank_*` tools: ALL 4 params required (`query`, `case_sensitive`, `exact_match`, `limit`)
- `cBioPortal_get_mutations`: `gene_list` is a STRING not array
- `ensembl_lookup_gene`: REQUIRES `species='homo_sapiens'`
---
## Evidence Tiers
| Tier | Description | Source Examples |
|------|-------------|----------------|
| T1 | FDA-approved biomarker/indication | FDA labels, NCCN guidelines |
| T2 | Phase 2-3 clinical trial evidence | Published trial data, PubMed |
| T3 | Preclinical/computational evidence | Pathway analysis, in vitro data |
| T4 | Expert opinion/case reports | Case series, reviews |
---
## References
- OpenTargets: https://platform.opentargets.org
- CIViC: https://civicdb.org
- FDA Drug Labels: https://dailymed.nlm.nih.gov
- DrugBank: https://go.drugbank.com
- PubMed: https://pubmed.ncbi.nlm.nih.gov
- IEDB: https://www.iedb.org
- HPA: https://www.proteinatlas.org
- cBioPortal: https://www.cbioportal.orgSignals
Information
- Repository
- mims-harvard/ToolUniverse
- Author
- mims-harvard
- Last Sync
- 3/12/2026
- Repo Updated
- 3/12/2026
- Created
- 2/19/2026
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