Command Palette

Search for a command to run...

UnylyUnyly
Назад к скиллам

clinical-decision-support

БесплатноЗапускает вложенные скриптыНе проверен

Generate professional clinical decision support (CDS) documents for pharmaceutical and clinical research settings, including patient cohort analyses (biomarker-

Об этом скилле

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.

Writing Style: For publication-ready documents targeting medical journals, consult the venue-templates skill's medical_journal_styles.md for guidance on structured abstracts, evidence language, and CONSORT/STROBE compliance.

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 skill to generate AI-powered publication-quality diagrams
  • Simply describe your desired diagram in natural language
  • Nano Banana Pro will automatically generate, review, and refine the schematic

How to generate schematics:

python scripts/generate_schematic.py "your diagram description" -o figures/output.png

The AI will automatically:

  • Create publication-quality images with proper formatting
  • Review and refine through multiple iterations
  • Ensure accessibility (colorblind-friendly, high contrast)
  • Save outputs in the figures/ directory

When to add schematics:

  • Clinical decision algorithm flowcharts
  • Treatment pathway diagrams
  • Biomarker stratification trees
  • Patient cohort flow diagrams (CONSORT-style)
  • Survival curve visualizations
  • Molecular mechanism diagrams
  • Any complex concept that benefits from visualization

For detailed guidance on creating schematics, refer to the scientific-schematics skill documentation.


Document Structure

CRITICAL REQUIREMENT: All clinical decision support documents MUST begin with a complete executive summary on page 1 that spans the entire first page before any table of contents or detailed sections.

Page 1 Executive Summary Structure

The first page of every CDS document should contain ONLY the executive summary with the following components:

Required Elements (all on page 1):

  1. Document Title and Type

    • Main title (e.g., "Biomarker-Stratified Cohort Analysis" or "Evidence-Based Treatment Recommendations")
    • Subtitle with disease state and focus
  2. Report Information Box (using colored tcolorbox)

    • Document type and purpose
    • Date of analysis/report
    • Disease state and patient population
    • Author/institution (if applica

Установить clinical-decision-support в Claude Code и Claude Desktop

Зарегайся, чтобы установить скилл

Создай бесплатный аккаунт, чтобы открыть команду установки и сохранить скилл в библиотеку.

  • Открой команду установки в одну строку
  • Сохраняй скиллы в синхронизируемую библиотеку
  • Уведомления, когда скиллы обновляются
Зарегаться бесплатноУ меня уже есть аккаунт

Разрешённые инструменты

Инструменты, которые скиллу разрешено вызывать.

Read Write Edit Bash

Вложенные файлы

assets/biomarker_report_template.texassets/clinical_pathway_template.texassets/cohort_analysis_template.texassets/color_schemes.texassets/example_gbm_cohort.mdassets/recommendation_strength_guide.mdassets/treatment_recommendation_template.texreferences/README.mdreferences/biomarker_classification.mdreferences/clinical_decision_algorithms.mdreferences/evidence_synthesis.mdreferences/outcome_analysis.mdreferences/patient_cohort_analysis.mdreferences/treatment_recommendations.mdscripts/biomarker_classifier.pyscripts/build_decision_tree.pyscripts/create_cohort_tables.pyscripts/generate_schematic.pyscripts/generate_schematic_ai.pyscripts/generate_survival_analysis.pyscripts/validate_cds_document.py

FAQ

Что делает скилл clinical-decision-support?

Generate professional clinical decision support (CDS) documents for pharmaceutical and clinical research settings, including patient cohort analyses (biomarker-stratified with outcomes) and treatment recommendation reports (evidence-based guidelines with decision algorithms). Supports GRADE evidence grading, statistical analysis (hazard ratios, survival curves, waterfall plots), biomarker integration, and regulatory compliance. Outputs publication-ready LaTeX/PDF format optimized for drug development, clinical research, and evidence synthesis.

Как установить скилл clinical-decision-support?

Скопируй папку скилла в ~/.claude/skills (вкладка Claude Code выше делает это одной командой), либо поставь как плагин.

Скилл clinical-decision-support запускает скрипты?

Да, скилл несёт исполняемые скрипты. Проверь исходник перед установкой.

Похожие скиллы

Сравнить clinical-decision-support с