SkillHub

dual-disease-transcriptomic-ml-planner

v0.1.0

Generates complete dual-disease transcriptomic + machine learning research designs from a user-provided disease pair. Use when users want to identify shared DEGs, common hub genes, cross-disease biomarkers, or shared molecular mechanisms between two diseases using public GEO data. Triggers: "shared...

Sourced from ClawHub, Authored by AIpoch

Installation

Please help me install the skill `dual-disease-transcriptomic-ml-planner` from SkillHub official store. npx skills add AIPOCH-AI/dual-disease-transcriptomic-ml-planner

Dual-Disease Transcriptomic Machine Learning Research Planner

Generates a complete dual-disease transcriptomic + ML study design from a user-provided disease pair. Always outputs four workload configurations and a recommended primary plan.

Supported Study Styles

Style Description Example
A. Shared DEG → Hub Gene Core DEG overlap → PPI → hub consensus Intracranial aneurysm + AAA; diabetic + hypertensive nephropathy
B. Dual-Disease Shared Mechanism Pathway-level convergence ECM, inflammation, fibrosis linking two diseases
C. PPI + Multi-Algorithm Hub Prioritization STRING + MCODE + CytoHubba consensus Any pair with sufficient shared DEGs
D. Dual-Disease Biomarker Validation ROC in discovery + validation cohorts Any pair with ≥2 GEO datasets per disease
E. Immune Infiltration + Shared Biomarker CIBERSORT/alternative + gene–immune correlation Immunologically active disease pairs
F. Single-Gene Cross-Disease Deepening Hub-gene GSEA in both diseases Single top hub with strong AUC
G. Publication-Oriented Integrated Design Full pipeline: DEG → PPI → ROC → immune → GSEA High-impact submission target

Minimum User Input

  • Two diseases or phenotypes
  • If limited detail is provided, infer a reasonable default design and state all assumptions explicitly (Hard Rule 9)

Step-by-Step Execution

Step 1: Infer Study Type

Identify: - Disease pair and biological theme (vascular, autoimmune, fibrotic, metabolic, neurodegenerative, infectious-oncologic, comorbidity) - User goal: shared biomarkers, shared mechanisms, immune relevance, or publication strength - Whether ML is central (hub consensus, ROC) or supportive (biological interpretation) - Whether immune analysis is appropriate — consult Hard Rule 5 and tissue/tool decision guide below - Resource constraints: public data only, dataset count per disease, time limit, single-gene focus

Step 2: Output Four Configurations

Always generate all four. For each describe: goal, required data, major modules, expected workload, figure set, strengths, weaknesses.

Config Goal Timeframe Best For
Lite Shared DEG + basic hub, 1 dataset per disease 2–4 weeks Pilot, skeleton manuscript, single-dataset constraint
Standard Full pipeline + validation + ROC + one deepening layer 5–9 weeks Core publishable paper
Advanced Standard + immune + GSEA + multi-cohort robustness 9–14 weeks Competitive journal target
Publication+ Full multi-layer + experimental suggestions + reviewer defense 12–20 weeks High-impact submission

Step 3: Recommend One Primary Plan

Select the best-fit configuration and explain why, given disease pair biology, GEO data availability, time constraints, and publication ambition.

Step 4: Full Step-by-Step Workflow

For each step include: step name, purpose, input, method, key parameters/thresholds, expected output, failure points, alternative approaches.

Dataset & Preprocessing - GEO dataset search: one discovery + one validation per disease when feasible (see references/geo_search_and_tools.md) - Tissue-only filtering: exclude blood/CSF unless disease-appropriate; match tissue type across both diseases - Tissue selection rule: use the tissue most proximal to disease pathology; for metabolic diseases refer to the tissue/tool decision guide - Platform compatibility check: verify GPL IDs match or are cross-compatible before merging - Normalization; batch-awareness without forced merging - Disease vs control group assignment

Fault tolerance — dataset level: - If no GEO dataset exists for one disease: state infeasibility, suggest the closest available proxy phenotype, downgrade to Lite with discovery-only design - If only one dataset is available per disease: downgrade to Lite; clearly state validation ROC is not feasible; provide GEO search strategy for a second cohort

DEG & Shared Signature - limma-based DEG analysis (logFC > 1–2, adj.p < 0.05) - Volcano plots, heatmaps - Shared up/downregulated DEG intersection (Venn diagram) - Shared-gene summary table

Fault tolerance — DEG intersection: - If shared DEG count = 0: do not proceed with PPI/hub analysis; apply the following recovery sequence in order: 1. Relax logFC threshold to 0.5 (report alongside original results) 2. Extend to top 500 DEGs per disease regardless of threshold 3. Switch to WGCNA co-expression module overlap instead of direct DEG intersection 4. Re-evaluate whether the disease pair shares a common tissue or biological mechanism; recommend alternative pairing if not

Enrichment & Shared Mechanism - GO enrichment (BP, MF, CC) + KEGG enrichment (clusterProfiler / DAVID) - Pathway visualization; shared biological module summarization

PPI & Hub Prioritization - STRING PPI construction (confidence score > 0.4) - Cytoscape visualization; MCODE dense-cluster identification - CytoHubba multi-algorithm ranking (≥5 algorithms required: Degree, MCC, Betweenness, Closeness, EPC) - Hub-gene consensus logic → top 1 / top 3 / top 10 candidates

Biomarker Performance - ROC / AUC analysis (pROC); AUC > 0.70 as minimum threshold - Discovery-cohort ROC + validation-cohort ROC (Standard and above) - Expression validation across cohorts

Fault tolerance — ROC: - If AUC ≈ 0.5 in discovery cohort: do not interpret as biomarker; flag as non-informative; consider mini-signature (3–5 genes) instead of single hub gene - If n < 30 per group: explicitly flag AUC inflation risk; interpret AUC with bootstrap CI; do not generalize

Immune Infiltration (when disease-appropriate per Hard Rule 5) - Deconvolution tool selection — consult references/tissue_and_tool_decisions.md for the correct tool by tissue type - Immune-cell proportion comparison (disease vs control); gene–immune cell correlation (Spearman) - Violin plots, lollipop / heatmap correlation

Single-Gene Deepening (Standard and above) - Stratify samples by hub gene expression (high vs low quartile) - Single-gene GSEA in both diseases; cross-disease pathway convergence interpretation

Step 5: Figure Plan

→ Full figure list and table templates: references/figure_plan_template.md

Core figures: workflow schematic (Fig 1), DEG volcanos + Venn (Fig 2), shared DEG heatmap (Fig 3), GO/KEGG enrichment (Fig 4), PPI + MCODE + hub ranking (Fig 5), ROC curves (Fig 6), immune infiltration + correlation (Fig 7), single-gene GSEA (Fig 8). Tables: dataset summary, shared DEG list, hub rankings, ROC/AUC summary.

Step 6: Validation and Robustness Plan

State what each layer proves and what it does not prove: - Shared-expression evidence — DEG overlap + threshold reproducibility - Hub-prioritization evidence — PPI topology + multi-algorithm consensus (association, not causation) - Biomarker performance evidence — ROC/AUC in discovery + validation cohorts (diagnostic signal, not mechanistic proof) - Immune support — immune landscape differences + gene–immune correlation (associative only; Hard Rule 8) - Single-gene mechanistic support — GSEA pathway themes (hypothesis-generating only; Hard Rule 7)

Step 7: Risk Review

Always include a self-critical section addressing: - Strongest part of the design - Most assumption-dependent part (typically: small cohort ROC inflation; platform differences across datasets) - Most likely false-positive source (hub ranking with few shared DEGs; AUC > 0.9 in n < 50) - Easiest part to overinterpret (immune deconvolution as causal; one hub gene as mechanistic proof) - Most likely reviewer criticisms: small cohorts, no experimental validation, platform heterogeneity, overinterpretation of single biomarker, immune deconvolution limitations, CRC/infectious disease subtype heterogeneity - Revision strategy if first-pass findings fail (broaden DEG threshold, alternate validation cohort, switch to mini-signature)

Step 8: Minimal Executable Version

Public data only, one discovery dataset per disease, DEG + Venn + GO/KEGG, STRING + MCODE + CytoHubba top gene, ROC in discovery cohort, one-page interpretation. 2–4 week timeline. Confirm feasibility against any stated time or dataset constraints before recommending.

Step 9: Publication Upgrade Path

→ Full upgrade impact table: references/upgrade_path.md

Key upgrades by impact: validation cohort per disease (High / Low–Medium), multi-algorithm hub consensus (High / Low), cross-platform reproducibility logic (High / Medium), immune infiltration (Medium / Medium), single-gene GSEA (Medium / Low), mini-signature 3–5 genes (Medium / Medium).

R Code Framework Guidelines

When providing R code examples or pipeline frameworks:

  1. EXAMPLE ID convention: All GEO accession numbers in code must carry an inline comment: # EXAMPLE ID — replace with your actual GSE accession before running
  2. Zero-intersection guard: All pipelines must include a feasibility check immediately after DEG intersection: r if (length(shared_genes) == 0) { stop("No shared DEGs found. Recovery options: (1) relax logFC to 0.5, (2) use top-500 DEGs per disease, (3) switch to WGCNA co-expression module overlap.") }
  3. Standard package list: GEOquery, limma, clusterProfiler, org.Hs.eg.db, pROC, igraph, STRINGdb, WGCNA. Provide BiocManager::install() calls where needed.
  4. GEO search pattern: To find valid accession IDs, use GEOquery::getGEO("GSEsearch", ...) or direct search at https://www.ncbi.nlm.nih.gov/geo/

Standard R pipeline template:

library(GEOquery); library(limma); library(clusterProfiler); library(pROC)

# Load datasets — EXAMPLE IDs: replace before running
gse_disease1 <- getGEO("GSEXXXXX", GSEMatrix = TRUE)[[1]]  # EXAMPLE ID
gse_disease2 <- getGEO("GSEXXXXX", GSEMatrix = TRUE)[[1]]  # EXAMPLE ID

# DEG analysis (repeat for disease2)
design <- model.matrix(~ group, data = pData(gse_disease1))
fit    <- eBayes(lmFit(exprs(gse_disease1), design))
deg_d1 <- subset(topTable(fit, coef = 2, adjust = "BH", number = Inf),
                 abs(logFC) > 1 & adj.P.Val < 0.05)

# Shared DEG intersection with zero-guard
shared_genes <- intersect(rownames(deg_d1), rownames(deg_d2))
if (length(shared_genes) == 0) {
  stop("No shared DEGs found. Recovery: relax logFC to 0.5 or use top-500 DEGs per disease.")
}

# ROC for top hub gene — EXAMPLE: replace 'HUB_GENE' and labels/scores with real data
roc_obj <- roc(response = labels, predictor = expr_scores)
cat("AUC:", auc(roc_obj), "n")
if (auc(roc_obj) < 0.70) warning("AUC below 0.70 threshold. Consider mini-signature approach.")

Hard Rules

  1. Never output only one generic plan — always output all four configurations.
  2. Always recommend one primary plan with justification.
  3. Always separate necessary modules from optional modules.
  4. Distinguish shared-expression evidence, biomarker performance evidence, immune support, and mechanistic support — see Step 6.
  5. Do not proceed with immune analysis if the disease pair is not immunologically suited or if deconvolution would be unreliable for the tissue type. Consult references/tissue_and_tool_decisions.md to select the correct tool.
  6. Do not overclaim diagnostic value from ROC in small (n < 30 per group) or unmatched cohorts. Always report bootstrap confidence intervals.
  7. Do not overstate one hub gene as mechanistic proof — label consistently as "biomarker candidate."
  8. Do not treat immune-correlation evidence as causal immune regulation.
  9. If user provides limited detail, infer a reasonable default design and state all assumptions clearly.
  10. Do not produce only a flat methods list or literature summary.
  11. Out-of-scope redirect: If the request involves a single disease only, wet-lab experimental design, clinical trial planning, or non-GEO data types, do not proceed — activate the Input Validation refusal template below.

Input Validation

This skill accepts: a pair of diseases or phenotypes for which the user wants to identify shared transcriptomic signatures, hub genes, or cross-disease biomarkers using publicly available GEO transcriptomic data.

If the request does not involve two diseases for GEO-based transcriptomic comparison — for example, asking to design a study for a single disease only, plan a wet-lab experiment, design a clinical trial, analyze non-transcriptomic omics data (e.g., proteomics, metabolomics), or conduct a systematic literature review — do not proceed with the planning workflow. Instead respond:

"Dual-Disease Transcriptomic ML Planner is designed to generate GEO-based transcriptomic + machine learning study designs for pairs of diseases. Your request appears to be outside this scope. Please provide two diseases to compare, or use a more appropriate skill (e.g., a single-disease transcriptomic skill, an MR planner, or a systematic review skill)."

Reference Files

File Content Used In
references/tissue_and_tool_decisions.md Tissue prioritization rules by disease class; immune deconvolution tool selection by tissue type Step 4 (immune module), Step 1
references/geo_search_and_tools.md GEO dataset search strategy by disease class; bioinformatics tool list with alternatives Step 4 (dataset module)
references/figure_plan_template.md Full figure list (Fig 1–8) and table templates (Table 1–4) Step 5
references/upgrade_path.md Publication upgrade impact vs complexity table Step 9