AAV vector design: capsid selection, promoter optimization, payload capacity.
cryoem-ai-drug-design-agent
维护者 FreedomIntelligence · 最近更新 2026年4月1日
AI-guided drug design from cryo-EM structures: binding site analysis and docking.
原始来源
FreedomIntelligence/OpenClaw-Medical-Skills
https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/cryoem-ai-drug-design-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
- Cryo-EM AI Drug Design Agent integrates cryo-electron microscopy structural data ,支持 AlphaFold3,generative AI,、 molecular dynamics ,用于 structure-based drug design. It enables targeting of previously "undruggable" proteins ,涵盖 flexible,membrane-bound,、 large macromolecular complexes through high-resolution structure-guided optimization。
- When designing drugs against cryo-EM-solved targets。
- 用于 fragment-based drug discovery ,支持 EM structures。
- To model ligand binding in flexible protein regions。
- When targeting membrane proteins 、 large complexes。
原始文档
SKILL.md 摘录
Core Capabilities
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Density-Guided Design: Fit ligands into cryo-EM density maps.
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AlphaFold Integration: Combine AF3 predictions with EM data.
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Flexible Docking: Account for protein dynamics in binding.
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Fragment Screening: Virtual fragment screening with EM structures.
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Complex Targeting: Design for multi-protein assemblies.
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Dynamics-Based Design: Incorporate conformational flexibility.
Cryo-EM for Drug Discovery
| Target Class | Cryo-EM Advantage | Drug Discovery Application |
|---|---|---|
| GPCRs | Native lipid environment | Allosteric sites |
| Ion Channels | Multiple conformations | State-specific design |
| Transporters | Conformational states | Mechanism-based |
| Ribosomes | Antibiotic binding | New antibiotics |
| Viral Proteins | Large assemblies | Vaccines, antivirals |
| Intrinsically Disordered | Flexible regions | Challenging targets |
Workflow
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Input: Cryo-EM density map, protein sequence, ligand/fragment.
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Structure Refinement: AlphaFold + density-guided refinement.
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Binding Site Identification: Detect pockets in EM structure.
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Ligand Placement: Density-guided ligand fitting.
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MD Simulation: Flexible binding simulation.
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Optimization: Generative design around hits.
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Output: Optimized ligands, binding models, design recommendations.
适用场景
- When designing drugs against cryo-EM-solved targets。
- 用于 fragment-based drug discovery ,支持 EM structures。
- To model ligand binding in flexible protein regions。
- When targeting membrane proteins 、 large complexes。
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
- Time_Resolved_CryoEM_Agent - Dynamics from EM
- PROTAC_Design_Agent - Degrader design
- Molecular_Glue_Discovery_Agent - Glue design
- AlphaFold3_Agent - Structure prediction
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