tooluniverse-multiomic-disease-characterization by mims-harvard/tooluniverse
npx skills add https://github.com/mims-harvard/tooluniverse --skill tooluniverse-multiomic-disease-characterization通过多个分子层面(基因组学、转录组学、蛋白质组学、通路)表征疾病,以提供对疾病机制的系统层面理解,识别治疗机会,并发现潜在的生物标志物。
核心原则:
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tooluniverse-drug-target-validationtooluniverse-adverse-event-detectiontooluniverse-disease-researchtooluniverse-variant-interpretationtooluniverse-gwas-* 技能tooluniverse-systems-biology| 参数 | 必需 | 描述 | 示例 |
|---|---|---|---|
| disease | 是 | 疾病名称、OMIM ID、EFO ID 或 MONDO ID | Alzheimer disease, MONDO_0004975 |
| tissue | 否 | 感兴趣的组织/器官 | brain, liver, blood |
| focus_layers | 否 | 需要强调的特定组学层面 | genomics, transcriptomics, pathways |
该流程按顺序运行 9 个阶段。每个阶段使用 tool-reference.md 中详细记录的特定工具。
将疾病解析为标准标识符(MONDO/EFO),用于所有下游查询。
OpenTargets_get_disease_id_description_by_nameMONDO_0004975),而非冒号识别遗传变异、GWAS 关联和遗传学上涉及的基因。
识别差异表达基因、组织特异性表达和基于表达的生物标志物。
绘制蛋白质-蛋白质相互作用图,识别枢纽基因,并表征相互作用网络。
识别富集的生物通路和跨通路连接。
data 字段是需要解析的 JSON 字符串表征生物过程、分子功能和细胞组分。
映射已批准药物、可成药靶点、药物再利用机会和临床试验。
size 参数是必需的(使用 100)query_term 是必需的整合所有层面的发现。完整细节请参见 integration-scoring.md。
撰写执行摘要,计算置信度评分,验证完整性。
integration-scoring.md这些是最常见的参数陷阱:
OpenTargets 疾病 ID:下划线格式(MONDO_0004975),而非冒号STRING protein_ids:必须是数组(['APOE']),而非字符串enrichr libs:必须是数组(['KEGG_2021_Human'])HPA_get_rna_expression_by_source:所有 3 个参数都是必需的(gene_name, source_type, source_name)humanbase_ppi_analysis:所有参数都是必需的(gene_list, tissue, max_node, interaction, string_mode)expression_atlas_disease_target_score:pageSize 是必需的search_clinical_trials:即使提供了 condition,query_term 也是必需的完整的工具参数和分阶段工作流程,请参见 tool-reference.md。
所有详细内容均在此目录的参考文件中:
| 文件 | 内容 |
|---|---|
tool-reference.md | 完整的工具参数、输入/输出、分阶段工作流程、快速参考表 |
report-template.md | 包含所有部分和检查清单的完整报告 Markdown 模板 |
integration-scoring.md | 置信度评分公式(0-100)、证据分级(T1-T4)、整合程序、质量检查清单 |
response-formats.md | 关键工具的已验证 JSON 响应结构 |
use-patterns.md | 常见使用模式、边缘情况处理、备用策略 |
每周安装次数
127
代码仓库
GitHub 星标数
1.2K
首次出现
2026年2月19日
安全审计
安装于
codex124
gemini-cli123
opencode123
github-copilot122
cursor120
kimi-cli119
Characterize diseases across multiple molecular layers (genomics, transcriptomics, proteomics, pathways) to provide systems-level understanding of disease mechanisms, identify therapeutic opportunities, and discover biomarker candidates.
KEY PRINCIPLES :
Apply when users:
NOT for (use other skills instead):
tooluniverse-drug-target-validationtooluniverse-adverse-event-detectiontooluniverse-disease-researchtooluniverse-variant-interpretationtooluniverse-gwas-* skillstooluniverse-systems-biology| Parameter | Required | Description | Example |
|---|---|---|---|
| disease | Yes | Disease name, OMIM ID, EFO ID, or MONDO ID | Alzheimer disease, MONDO_0004975 |
| tissue | No | Tissue/organ of interest | brain, liver, blood |
| focus_layers | No | Specific omics layers to emphasize |
The pipeline runs 9 phases sequentially. Each phase uses specific tools documented in detail in tool-reference.md.
Resolve disease to standard identifiers (MONDO/EFO) for all downstream queries.
OpenTargets_get_disease_id_description_by_nameMONDO_0004975), NOT colonIdentify genetic variants, GWAS associations, and genetically implicated genes.
Identify differentially expressed genes, tissue-specific expression, and expression-based biomarkers.
Map protein-protein interactions, identify hub genes, and characterize interaction networks.
Identify enriched biological pathways and cross-pathway connections.
data field is a JSON string that needs parsingCharacterize biological processes, molecular functions, and cellular components.
Map approved drugs, druggable targets, repurposing opportunities, and clinical trials.
size parameter is REQUIRED for OpenTargets drug queries (use 100)query_term is REQUIRED for clinical trials searchIntegrate findings across all layers. See integration-scoring.md for full details.
Write executive summary, calculate confidence score, verify completeness.
integration-scoring.md for quality checklist and scoring formulaThese are the most common parameter pitfalls:
OpenTargets disease IDs: underscore format (MONDO_0004975), NOT colonSTRING protein_ids: must be array (['APOE']), not stringenrichr libs: must be array (['KEGG_2021_Human'])HPA_get_rna_expression_by_source: ALL 3 params required (gene_name, , )For full tool parameters and per-phase workflows, see tool-reference.md.
All detailed content is in reference files in this directory:
| File | Contents |
|---|---|
tool-reference.md | Full tool parameters, inputs/outputs, per-phase workflows, quick reference table |
report-template.md | Complete report markdown template with all sections and checklists |
integration-scoring.md | Confidence score formula (0-100), evidence grading (T1-T4), integration procedures, quality checklist |
response-formats.md | Verified JSON response structures for key tools |
use-patterns.md | Common use patterns, edge case handling, fallback strategies |
Weekly Installs
127
Repository
GitHub Stars
1.2K
First Seen
Feb 19, 2026
Security Audits
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Installed on
codex124
gemini-cli123
opencode123
github-copilot122
cursor120
kimi-cli119
Excel财务建模规范与xlsx文件处理指南:专业格式、零错误公式与数据分析
46,700 周安装
genomics, transcriptomics, pathways |
source_typesource_namehumanbase_ppi_analysis: ALL params required (gene_list, tissue, max_node, interaction, string_mode)expression_atlas_disease_target_score: pageSize is REQUIREDsearch_clinical_trials: query_term is REQUIRED even if condition is provided