From mims-harvard-tooluniverse
Predicts patient response to immune checkpoint inhibitors (ICIs) using multi-biomarker integration (TMB, PD-L1, MSI, mutations). Generates ICI Response Score (0-100), drug recommendations, resistance risks, monitoring plan for oncology immunotherapy decisions.
npx claudepluginhub joshuarweaver/cascade-data-analytics --plugin mims-harvard-tooluniverseThis skill uses the workspace's default tool permissions.
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.
Conducts multi-round deep research on GitHub repos via API and web searches, generating markdown reports with executive summaries, timelines, metrics, and Mermaid diagrams.
Dynamically discovers and combines enabled skills into cohesive, unexpected delightful experiences like interactive HTML or themed artifacts. Activates on 'surprise me', inspiration, or boredom cues.
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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.
Not all tumors respond to checkpoint inhibitors. Reason through the biology before running tools:
Before calling any tool, determine which biomarkers are available for this patient and which are unknown. This determines which phases can be scored with data vs. must use cancer-type priors. Do not default to "moderate" for unknowns — flag them explicitly as missing.
LOOK UP DON'T GUESS: Never assume FDA approval for a biomarker-ICI combination — always verify with fda_pharmacogenomic_biomarkers or FDA_get_indications_by_drug_name. Cancer-specific thresholds differ from pan-cancer approvals.
KEY PRINCIPLES:
When analysis requires computation (statistics, data processing, scoring, enrichment), write and run Python code via Bash. Don't describe what you would do — execute it and report actual results. Use ToolUniverse tools to retrieve data, then Python (pandas, scipy, statsmodels, matplotlib) to analyze it.
Apply when user asks:
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 for input format examples, cancer type normalization, and gene symbol normalization tables.
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
OpenTargets_get_disease_id_description_by_name{gene, variant, type}MyGene_query_genesfda_pharmacogenomic_biomarkers(drug_name='pembrolizumab')UniProt_get_function_by_accessioniedb_search_epitopesfda_pharmacogenomic_biomarkers(biomarker='Microsatellite Instability')HPA_get_cancer_prognostics_by_gene(gene_name='CD274')enrichr_gene_enrichment_analysisFDA_get_indications_by_drug_namesearch_clinical_trials (params: condition, intervention, query_term)OpenTargets_get_drug_mechanisms_of_action_by_chemblIdSee SCORING_TABLES.md for ICI drug profiles and ChEMBL IDs.
civic_search_evidence_itemsTOTAL 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:
Confidence: HIGH (all 4 biomarkers), MODERATE-HIGH (3/4), MODERATE (2/4), LOW (1), VERY LOW (cancer only)
Save as immunotherapy_response_prediction_{cancer_type}.md. See REPORT_TEMPLATE.md for the full report structure.
BEFORE calling ANY tool, verify parameters. See 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 arrayensembl_lookup_gene: REQUIRES species='homo_sapiens'| 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 |