clinical-decision-support
This Claude Code skill generates professional clinical decision support documents for pharmaceutical and clinical research settings, producing publication-ready LaTeX/PDF files. It specializes in patient cohort analyses with biomarker stratification and statistical outcome comparisons, plus evidence-based treatment recommendation reports incorporating GRADE evidence grading, survival analysis, and decision algorithms. Use this skill when developing pharmaceutical research documents, regulatory submissions, clinical guidelines, or group-level evidence synthesis requiring statistical rigor and formal formatting.
git clone --depth 1 https://github.com/foryourhealth111-pixel/Vibe-Skills /tmp/clinical-decision-support && cp -r /tmp/clinical-decision-support/bundled/skills/clinical-decision-support ~/.claude/skills/clinical-decision-supportSKILL.md
# Clinical Decision Support Documents ## Description Generate professional clinical decision support (CDS) documents for pharmaceutical companies, clinical researchers, and medical decision-makers. This skill specializes in analytical, evidence-based documents that inform treatment strategies and drug development: 1. **Patient Cohort Analysis** - Biomarker-stratified group analyses with statistical outcome comparisons 2. **Treatment Recommendation Reports** - Evidence-based clinical guidelines with GRADE grading and decision algorithms All documents are generated as publication-ready LaTeX/PDF files optimized for pharmaceutical research, regulatory submissions, and clinical guideline development. **Note:** For individual patient treatment plans at the bedside, use the `treatment-plans` skill instead. This skill focuses on group-level analyses and evidence synthesis for pharmaceutical/research settings. ## Capabilities ### Document Types **Patient Cohort Analysis** - Biomarker-based patient stratification (molecular subtypes, gene expression, IHC) - Molecular subtype classification (e.g., GBM mesenchymal-immune-active vs proneural, breast cancer subtypes) - Outcome metrics with statistical analysis (OS, PFS, ORR, DOR, DCR) - Statistical comparisons between subgroups (hazard ratios, p-values, 95% CI) - Survival analysis with Kaplan-Meier curves and log-rank tests - Efficacy tables and waterfall plots - Comparative effectiveness analyses - Pharmaceutical cohort reporting (trial subgroups, real-world evidence) **Treatment Recommendation Reports** - Evidence-based treatment guidelines for specific disease states - Strength of recommendation grading (GRADE system: 1A, 1B, 2A, 2B, 2C) - Quality of evidence assessment (high, moderate, low, very low) - Treatment algorithm flowcharts with TikZ diagrams - Line-of-therapy sequencing based on biomarkers - Decision pathways with clinical and molecular criteria - Pharmaceutical strategy documents - Clinical guideline development for medical societies ### Clinical Features - **Biomarker Integration**: Genomic alterations (mutations, CNV, fusions), gene expression signatures, IHC markers, PD-L1 scoring - **Statistical Analysis**: Hazard ratios, p-values, confidence intervals, survival curves, Cox regression, log-rank tests - **Evidence Grading**: GRADE system (1A/1B/2A/2B/2C), Oxford CEBM levels, quality of evidence assessment - **Clinical Terminology**: SNOMED-CT, LOINC, proper medical nomenclature, trial nomenclature - **Regulatory Compliance**: HIPAA de-identification, confidentiality headers, ICH-GCP alignment - **Professional Formatting**: Compact 0.5in margins, color-coded recommendations, publication-ready, suitable for regulatory submissions ## Pharmaceutical and Research Use Cases This skill is specifically designed for pharmaceutical and clinical research applications: **Drug Development** - **Phase 2/3 Trial Analyses**: Biomarker-stratified efficacy and safety analyses - **Subgroup Analyses**: Forest plots showing treatment effects across patient subgroups - **Companion Diagnostic Development**: Linking biomarkers to drug response - **Regulatory Submissions**: IND/NDA documentation with evidence summaries **Medical Affairs** - **KOL Education Materials**: Evidence-based treatment algorithms for thought leaders - **Medical Strategy Documents**: Competitive landscape and positioning strategies - **Advisory Board Materials**: Cohort analyses and treatment recommendation frameworks - **Publication Planning**: Manuscript-ready analyses for peer-reviewed journals **Clinical Guidelines** - **Guideline Development**: Evidence synthesis with GRADE methodology for specialty societies - **Consensus Recommendations**: Multi-stakeholder treatment algorithm development - **Practice Standards**: Biomarker-based treatment selection criteria - **Quality Measures**: Evidence-based performance metrics **Real-World Evidence** - **RWE Cohort Studies**: Retrospective analyses of patient cohorts from EMR data - **Comparative Effectiveness**: Head-to-head treatment comparisons in real-world settings - **Outcomes Research**: Long-term survival and safety in clinical practice - **Health Economics**: Cost-effectiveness analyses by biomarker subgroup ## When to Use Use this skill when you need to: - **Analyze patient cohorts** stratified by biomarkers, molecular subtypes, or clinical characteristics - **Generate treatment recommendation reports** with evidence grading for clinical guidelines or pharmaceutical strategies - **Compare outcomes** between patient subgroups with statistical analysis (survival, response rates, hazard ratios) - **Produce pharmaceutical research documents** for drug development, clinical trials, or regulatory submissions - **Develop clinical practice guidelines** with GRADE evidence grading and decision algorithms - **Document biomarker-guided therapy selection** at the population level (not individual patients) - **Synthesize evidence** from multiple trials or real-world data sources - **Create clinical decision algorithms** with flowcharts for treatment sequencing **Do NOT use this skill for:** - Individual patient treatment plans (use `treatment-plans` skill) - Bedside clinical care documentation (use `treatment-plans` skill) - Simple patient-specific treatment protocols (use `treatment-plans` skill) ## Visual Enhancement with Scientific Schematics **⚠️ MANDATORY: Every clinical decision support document MUST include at least 1-2 AI-generated figures using the scientific-schematics skill.** This is not optional. Clinical decision documents require clear visual algorithms. Before finalizing any document: 1. Generate at minimum ONE schematic or diagram (e.g., clinical decision algorithm, treatment pathway, or biomarker stratification tree) 2. For cohort analyses: include patient flow diagram 3. For treatment recommendations: include decision flowchart **How to generate figures:** - Use the **scientific-schematics** skil
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Install Codex skills into $CODEX_HOME/skills from a curated list or a GitHub repo path. Use when a user asks to list installable skills, install a curated skill, or install a skill from another repo (including private repos).
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