tooluniverse-infectious-disease by mims-harvard/tooluniverse
npx skills add https://github.com/mims-harvard/tooluniverse --skill tooluniverse-infectious-disease利用分类学分析、靶点识别、结构预测和计算药物重定位技术,针对新发病原体的快速响应系统。
核心原则:
当用户询问以下问题时应用:
[PATHOGEN]_outbreak_intelligence.md[PATHOGEN]_drug_candidates.csv,广告位招租
在这里展示您的产品或服务
触达数万 AI 开发者,精准高效
[PATHOGEN]_target_proteins.csv每个发现都必须有内联来源归属:
### 靶点:RNA 依赖性 RNA 聚合酶 (RdRp)
- **UniProt**: P0DTD1 (NSP12)
- **必需性**: 复制所需
*来源:通过 `UniProt_search` 查询 UniProt,文献回顾*
| 工具 | 错误参数 | 正确参数 |
|---|---|---|
NCBI_Taxonomy_search | name | query |
UniProt_search | name | query |
ChEMBL_search_targets | target | query |
NvidiaNIM_diffdock | protein_file | protein (内容) |
Phase 1: Pathogen Identification
├── Taxonomic classification (NCBI Taxonomy)
├── Closest relatives (for knowledge transfer)
├── Genome/proteome availability
└── OUTPUT: Pathogen profile
|
Phase 2: Target Identification
├── Essential genes/proteins (UniProt)
├── Conservation across strains
├── Druggability assessment (ChEMBL)
└── OUTPUT: Prioritized target list (scored by essentiality/conservation/druggability/precedent)
|
Phase 3: Structure Prediction (NvidiaNIM)
├── AlphaFold2/ESMFold for targets
├── Binding site identification
├── Quality assessment (pLDDT)
└── OUTPUT: Target structures (docking-ready if pLDDT > 70)
|
Phase 4: Drug Repurposing Screen
├── Approved drugs for related pathogens (ChEMBL)
├── Broad-spectrum antivirals/antibiotics
├── Docking screen (NvidiaNIM_diffdock)
└── OUTPUT: Ranked candidate drugs
|
Phase 4.5: Pathway Analysis
├── KEGG: Pathogen metabolism pathways
├── Essential metabolic targets
├── Host-pathogen interaction pathways
└── OUTPUT: Pathway-based drug targets
|
Phase 5: Literature Intelligence
├── PubMed: Published outbreak reports
├── BioRxiv/MedRxiv: Recent preprints (CRITICAL for outbreaks)
├── ArXiv: Computational/ML preprints
├── OpenAlex: Citation tracking
├── ClinicalTrials.gov: Active trials
└── OUTPUT: Evidence synthesis
|
Phase 6: Report Synthesis
├── Top drug candidates with evidence grades
├── Clinical trial opportunities
├── Recommended immediate actions
└── OUTPUT: Final report
通过 NCBI Taxonomy (query 参数) 进行分类。识别具有现有药物的相关病原体以进行知识迁移。确定基因组/蛋白质组的可用性。
在 UniProt 中搜索病原体蛋白质 (已审阅)。检查 ChEMBL 中的药物先例。按以下标准对靶点进行评分:必需性 (30%)、保守性 (25%)、成药性 (25%)、药物先例 (20%)。目标是找到 5 个以上靶点。
对前 3 个靶点使用 NvidiaNIM AlphaFold2。评估 pLDDT 置信度。仅对接 pLDDT > 70 的结构 (活性位点 > 90 更佳)。备用方案:alphafold_get_prediction 或 NvidiaNIM_esmfold。
候选药物来源:相关病原体药物、广谱抗病毒药物、靶点类别药物 (DGIdb)。通过 NvidiaNIM_diffdock 对接前 20 名以上候选药物。根据对接分数和证据等级进行排序。
使用 KEGG 识别必需代谢通路。绘制宿主-病原体相互作用点。识别基于通路的药物靶点,超越直接的蛋白质抑制。
搜索 PubMed (同行评审)、BioRxiv/MedRxiv (预印本 - 对疫情至关重要)、ArXiv (计算)、ClinicalTrials.gov (进行中的试验)。通过 OpenAlex 跟踪引用。注意:预印本未经同行评审。
将所有发现汇总到最终报告中。对每个候选药物进行分级。提供 3 项以上立即行动建议、临床试验机会和研究重点。
| 等级 | 符号 | 标准 | 示例 |
|---|---|---|---|
| T1 | [T1] | FDA 批准用于该病原体 | 瑞德西韦用于 COVID |
| T2 | [T2] | 临床试验证据 或 批准用于相关病原体 | 法匹拉韦 |
| T3 | [T3] | 体外活性 或 强对接 + 机制 | 索非布韦 |
| T4 | [T4] | 仅计算预测 | 新的对接命中物 |
| 主要工具 | 备用 1 | 备用 2 |
|---|---|---|
NvidiaNIM_alphafold2 | alphafold_get_prediction | NvidiaNIM_esmfold |
NvidiaNIM_diffdock | NvidiaNIM_boltz2 | 手动对接 |
NCBI_Taxonomy_search | UniProt_taxonomy | 手动分类 |
ChEMBL_search_drugs | DrugBank_search | PubChem 生物测定 |
| 文件 | 内容 |
|---|---|
| TOOLS_REFERENCE.md | 完整的工具文档 |
| phase_details.md | 每个阶段的详细代码示例和步骤 |
| report_template.md | 包含章节标题、检查清单和证据分级的报告模板 |
| CHECKLIST.md | 交付前验证检查清单 (质量、引用、对接) |
| EXAMPLES.md | 完整的工作示例 (冠状病毒、CRKP、信息有限场景) |
每周安装量
150
代码库
GitHub 星标数
1.2K
首次出现
2026年2月7日
安全审计
安装于
gemini-cli142
codex142
opencode142
github-copilot139
kimi-cli134
amp134
Rapid response system for emerging pathogens using taxonomy analysis, target identification, structure prediction, and computational drug repurposing.
KEY PRINCIPLES :
Apply when user asks:
[PATHOGEN]_outbreak_intelligence.md FIRST with section headers[PATHOGEN]_drug_candidates.csv, [PATHOGEN]_target_proteins.csvEvery finding must have inline source attribution:
### Target: RNA-dependent RNA polymerase (RdRp)
- **UniProt**: P0DTD1 (NSP12)
- **Essentiality**: Required for replication
*Source: UniProt via `UniProt_search`, literature review*
| Tool | WRONG Parameter | CORRECT Parameter |
|---|---|---|
NCBI_Taxonomy_search | name | query |
UniProt_search | name | query |
ChEMBL_search_targets | target |
Phase 1: Pathogen Identification
├── Taxonomic classification (NCBI Taxonomy)
├── Closest relatives (for knowledge transfer)
├── Genome/proteome availability
└── OUTPUT: Pathogen profile
|
Phase 2: Target Identification
├── Essential genes/proteins (UniProt)
├── Conservation across strains
├── Druggability assessment (ChEMBL)
└── OUTPUT: Prioritized target list (scored by essentiality/conservation/druggability/precedent)
|
Phase 3: Structure Prediction (NvidiaNIM)
├── AlphaFold2/ESMFold for targets
├── Binding site identification
├── Quality assessment (pLDDT)
└── OUTPUT: Target structures (docking-ready if pLDDT > 70)
|
Phase 4: Drug Repurposing Screen
├── Approved drugs for related pathogens (ChEMBL)
├── Broad-spectrum antivirals/antibiotics
├── Docking screen (NvidiaNIM_diffdock)
└── OUTPUT: Ranked candidate drugs
|
Phase 4.5: Pathway Analysis
├── KEGG: Pathogen metabolism pathways
├── Essential metabolic targets
├── Host-pathogen interaction pathways
└── OUTPUT: Pathway-based drug targets
|
Phase 5: Literature Intelligence
├── PubMed: Published outbreak reports
├── BioRxiv/MedRxiv: Recent preprints (CRITICAL for outbreaks)
├── ArXiv: Computational/ML preprints
├── OpenAlex: Citation tracking
├── ClinicalTrials.gov: Active trials
└── OUTPUT: Evidence synthesis
|
Phase 6: Report Synthesis
├── Top drug candidates with evidence grades
├── Clinical trial opportunities
├── Recommended immediate actions
└── OUTPUT: Final report
Classify via NCBI Taxonomy (query param). Identify related pathogens with existing drugs for knowledge transfer. Determine genome/proteome availability.
Search UniProt for pathogen proteins (reviewed). Check ChEMBL for drug precedent. Score targets by: Essentiality (30%), Conservation (25%), Druggability (25%), Drug precedent (20%). Aim for 5+ targets.
Use NvidiaNIM AlphaFold2 for top 3 targets. Assess pLDDT confidence. Only dock structures with pLDDT > 70 (active site > 90 preferred). Fallback: alphafold_get_prediction or NvidiaNIM_esmfold.
Source candidates from: related pathogen drugs, broad-spectrum antivirals, target class drugs (DGIdb). Dock top 20+ candidates via NvidiaNIM_diffdock. Rank by docking score and evidence tier.
Use KEGG to identify essential metabolic pathways. Map host-pathogen interaction points. Identify pathway-based drug targets beyond direct protein inhibition.
Search PubMed (peer-reviewed), BioRxiv/MedRxiv (preprints - critical for outbreaks), ArXiv (computational), ClinicalTrials.gov (active trials). Track citations via OpenAlex. Note: preprints are NOT peer-reviewed.
Aggregate all findings into final report. Grade every candidate. Provide 3+ immediate actions, clinical trial opportunities, and research priorities.
| Tier | Symbol | Criteria | Example |
|---|---|---|---|
| T1 | [T1] | FDA approved for this pathogen | Remdesivir for COVID |
| T2 | [T2] | Clinical trial evidence OR approved for related pathogen | Favipiravir |
| T3 | [T3] | In vitro activity OR strong docking + mechanism | Sofosbuvir |
| T4 | [T4] | Computational prediction only | Novel docking hits |
| Primary Tool | Fallback 1 | Fallback 2 |
|---|---|---|
NvidiaNIM_alphafold2 | alphafold_get_prediction | NvidiaNIM_esmfold |
NvidiaNIM_diffdock | NvidiaNIM_boltz2 | Manual docking |
NCBI_Taxonomy_search | UniProt_taxonomy |
| File | Contents |
|---|---|
| TOOLS_REFERENCE.md | Complete tool documentation |
| phase_details.md | Detailed code examples and procedures for each phase |
| report_template.md | Report template with section headers, checklist, and evidence grading |
| CHECKLIST.md | Pre-delivery verification checklist (quality, citations, docking) |
| EXAMPLES.md | Full worked examples (coronavirus, CRKP, limited-info scenarios) |
Weekly Installs
150
Repository
GitHub Stars
1.2K
First Seen
Feb 7, 2026
Security Audits
Gen Agent Trust HubPassSocketPassSnykWarn
Installed on
gemini-cli142
codex142
opencode142
github-copilot139
kimi-cli134
amp134
AI 代码实施计划编写技能 | 自动化开发任务分解与 TDD 流程规划工具
48,300 周安装
nx-generate 代码生成器 - dbx-components 库的 Nx 插件,提升开发效率
1 周安装
monitor-ci 监控工具 - 持续集成监控与自动化部署解决方案
1 周安装
zellij 终端复用器配置 - denolfe 的 dotfiles 仓库,提升命令行工作效率
1 周安装
macOS 系统控制命令行工具 c-system:音量、WiFi、电池、显示器等一键管理
1 周安装
c-screen:Claude屏幕截图与OCR工具,支持网络摄像头捕获和文本提取
1 周安装
c-notify终端通知工具:macOS命令行通知神器,支持分组、声音和点击操作
1 周安装
query |
NvidiaNIM_diffdock | protein_file | protein (content) |
| Manual classification |
ChEMBL_search_drugs | DrugBank_search | PubChem bioassays |