Design armored CAR-T cells with cytokine payloads and resistance mechanisms.
immune-checkpoint-combination-agent
维护者 FreedomIntelligence · 最近更新 2026年4月1日
Predict optimal immune checkpoint combination strategies from tumor immune microenvironment.
原始来源
FreedomIntelligence/OpenClaw-Medical-Skills
https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/immune-checkpoint-combination-agent
- 维护者
- FreedomIntelligence
- 许可
- MIT
- 最近更新
- 2026年4月1日
技能摘要
来自 SKILL.md 的关键信息
核心说明
- Immune Checkpoint Combination Agent analyzes tumor molecular profiles to predict optimal immune checkpoint inhibitor (ICI) combinations. It integrates TME characterization,checkpoint expression,resistance mechanisms,、 clinical evidence ,用于 rational immunotherapy combination design。
- When selecting checkpoint inhibitor combinations ,用于 individual patients。
- To predict response to ICI combinations (PD-1/PD-L1 + CTLA-4,TIGIT,LAG-3)。
- 用于 identifying resistance mechanisms suggesting specific combinations。
- When analyzing tumor microenvironment to guide combination selection。
原始文档
SKILL.md 摘录
Core Capabilities
-
Checkpoint Expression Profiling: Quantify expression of PD-1, PD-L1, CTLA-4, TIGIT, LAG-3, TIM-3, and others.
-
TME Characterization: Classify tumors as "hot" (inflamed), "excluded", or "cold" (desert) for combination rationale.
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Resistance Mechanism Analysis: Identify primary and acquired resistance patterns.
-
Combination Prediction: ML models predicting response to specific checkpoint combinations.
-
Synergy Scoring: Evaluate potential synergies based on mechanism of action overlap.
-
Clinical Evidence Integration: Match combinations to published efficacy data.
Checkpoint Inhibitor Landscape
| Target | Approved Agents | Mechanism | Combination Rationale |
|---|---|---|---|
| PD-1 | Pembrolizumab, Nivolumab | Block T-cell inhibition | Backbone therapy |
| PD-L1 | Atezolizumab, Durvalumab | Block tumor immune evasion | Alternative backbone |
| CTLA-4 | Ipilimumab, Tremelimumab | Enhance T-cell priming | Non-redundant to PD-1 |
| LAG-3 | Relatlimab | Block exhausted T-cells | PD-1 refractory |
| TIGIT | Tiragolumab | Block NK/T suppression | NK cell engagement |
| TIM-3 | Multiple in trials | Terminal exhaustion | Highly exhausted TME |
Workflow
-
Input: Tumor RNA-seq, IHC markers, TMB/MSI status, clinical data.
-
Checkpoint Profiling: Quantify checkpoint ligand/receptor expression.
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TME Classification: Determine immune infiltration pattern.
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Resistance Analysis: Identify potential resistance mechanisms.
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Combination Scoring: Rank combinations by predicted efficacy.
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Evidence Matching: Link to clinical trial data.
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Output: Ranked combinations, rationale, supporting evidence, trial matches.
适用场景
- When selecting checkpoint inhibitor combinations ,用于 individual patients。
- To predict response to ICI combinations (PD-1/PD-L1 + CTLA-4,TIGIT,LAG-3)。
- 用于 identifying resistance mechanisms suggesting specific combinations。
不适用场景
- Do not rely on this catalog entry alone ,用于 installation 或 maintenance details。
上游相关技能
- TCell_Exhaustion_Analysis_Agent - For exhaustion profiling
- Tumor_Microenvironment - For TME characterization
- Neoantigen_Vaccine_Agent - For vaccine combinations
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