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
:
Report-first approach
- Create report file FIRST, then populate progressively
Disease disambiguation FIRST
- Resolve all identifiers before omics analysis
Layer-by-layer analysis
- Systematically cover all omics layers
Cross-layer integration
- Identify genes/targets appearing in multiple layers
Evidence grading
- Grade all evidence as T1 (human/clinical) to T4 (computational)
Tissue context
- Emphasize disease-relevant tissues/organs
Quantitative scoring
- Multi-Omics Confidence Score (0-100)
Druggable focus
- Prioritize targets with therapeutic potential
Biomarker identification
- Highlight diagnostic/prognostic markers
Mechanistic synthesis
- Generate testable hypotheses
Source references
- Every statement must cite tool/database
Completeness checklist
- Mandatory section showing analysis coverage
English-first queries
- Always use English terms in tool calls. Respond in user's language
When to Use This Skill
Apply when users:
Ask about disease mechanisms across omics layers
Need multi-omics characterization of a disease
Want to understand disease at the systems biology level
Ask "What pathways/genes/proteins are involved in [disease]?"
Need biomarker discovery for a disease
Want to identify druggable targets from disease profiling
Ask for integrated genomics + transcriptomics + proteomics analysis
Need cross-layer concordance analysis
Ask about disease network biology / hub genes
NOT for
(use other skills instead):
Single gene/target validation -> Use
tooluniverse-drug-target-validation
Drug safety profiling -> Use
tooluniverse-adverse-event-detection
General disease overview -> Use
tooluniverse-disease-research
Variant interpretation -> Use
tooluniverse-variant-interpretation
GWAS-specific analysis -> Use
tooluniverse-gwas-*
skills
Pathway-only analysis -> Use
tooluniverse-systems-biology
Input Parameters
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
genomics
,
transcriptomics
,
pathways
Pipeline Overview
The pipeline runs 9 phases sequentially. Each phase uses specific tools documented in detail in
tool-reference.md
.
Phase 0: Disease Disambiguation (ALWAYS FIRST)
Resolve disease to standard identifiers (MONDO/EFO) for all downstream queries.
Primary tool:
OpenTargets_get_disease_id_description_by_name
Get description, synonyms, therapeutic areas, disease hierarchy, cross-references
CRITICAL
Disease IDs use underscore format (e.g.,
MONDO_0004975
), NOT colon
If ambiguous, present top 3-5 options and ask user to select
Phase 1: Genomics Layer
Identify genetic variants, GWAS associations, and genetically implicated genes.
Tools: OpenTargets associated targets, evidence by datasource, GWAS Catalog, ClinVar
Get top 10-15 genes with genetic evidence scores
Track genes with Ensembl IDs for downstream phases
Phase 2: Transcriptomics Layer
Identify differentially expressed genes, tissue-specific expression, and expression-based biomarkers.
ALL params required (
gene_list
,
tissue
,
max_node
,
interaction
,
string_mode
)
expression_atlas_disease_target_score
:
pageSize
is REQUIRED
search_clinical_trials
:
query_term
is REQUIRED even if
condition
is provided
For full tool parameters and per-phase workflows, see
tool-reference.md
.
Reference Files
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