Files
2025-11-30 08:30:18 +08:00

4.9 KiB

Clinical Decision Support Skill

Professional clinical decision support documents for medical professionals in pharmaceutical and clinical research settings.

Quick Start

This skill enables generation of three types of clinical documents:

  1. Individual Patient Treatment Plans - Personalized protocols for specific patients
  2. Patient Cohort Analysis - Biomarker-stratified group analyses with outcomes
  3. Treatment Recommendation Reports - Evidence-based clinical guidelines

All documents are generated as compact, professional LaTeX/PDF files.

Directory Structure

clinical-decision-support/
├── SKILL.md                     # Main skill definition
├── README.md                    # This file
│
├── references/                  # Clinical guidance documents
│   ├── patient_cohort_analysis.md
│   ├── treatment_recommendations.md
│   ├── clinical_decision_algorithms.md
│   ├── biomarker_classification.md
│   ├── outcome_analysis.md
│   └── evidence_synthesis.md
│
├── assets/                      # Templates and examples
│   ├── cohort_analysis_template.tex
│   ├── treatment_recommendation_template.tex
│   ├── clinical_pathway_template.tex
│   ├── biomarker_report_template.tex
│   ├── example_gbm_cohort.md
│   ├── recommendation_strength_guide.md
│   └── color_schemes.tex
│
└── scripts/                     # Analysis and generation tools
    ├── generate_survival_analysis.py
    ├── create_cohort_tables.py
    ├── build_decision_tree.py
    ├── biomarker_classifier.py
    └── validate_cds_document.py

Example Use Cases

Create a Patient Cohort Analysis

> Analyze a cohort of 45 NSCLC patients stratified by PD-L1 expression 
  (<1%, 1-49%, ≥50%) including ORR, PFS, and OS outcomes

Generate Treatment Recommendations

> Create evidence-based treatment recommendations for HER2-positive 
  metastatic breast cancer with GRADE methodology

Build Clinical Pathway

> Generate a clinical decision algorithm for acute chest pain 
  management with TIMI risk score

Key Features

  • GRADE Methodology: Evidence quality grading (High/Moderate/Low/Very Low)
  • Recommendation Strength: Strong (Grade 1) vs Conditional (Grade 2)
  • Biomarker Integration: Genomic, expression, and molecular subtype classification
  • Statistical Analysis: Kaplan-Meier, Cox regression, log-rank tests
  • Guideline Concordance: NCCN, ASCO, ESMO, AHA/ACC integration
  • Professional Output: 0.5in margins, color-coded boxes, publication-ready

Dependencies

Python scripts require:

  • pandas, numpy, scipy: Data analysis and statistics
  • lifelines: Survival analysis (Kaplan-Meier, Cox regression)
  • matplotlib: Visualization
  • pyyaml (optional): YAML input for decision trees

Install with:

pip install pandas numpy scipy lifelines matplotlib pyyaml

References Included

  1. Patient Cohort Analysis: Stratification methods, biomarker correlations, statistical comparisons
  2. Treatment Recommendations: Evidence grading, treatment sequencing, special populations
  3. Clinical Decision Algorithms: Risk scores, decision trees, TikZ flowcharts
  4. Biomarker Classification: Genomic alterations, molecular subtypes, companion diagnostics
  5. Outcome Analysis: Survival methods, response criteria (RECIST), effect sizes
  6. Evidence Synthesis: Guideline integration, systematic reviews, meta-analysis

Templates Provided

  1. Cohort Analysis: Demographics table, biomarker profile, outcomes, statistics, recommendations
  2. Treatment Recommendations: Evidence review, GRADE-graded options, monitoring, decision algorithm
  3. Clinical Pathway: TikZ flowchart with risk stratification and urgency-coded actions
  4. Biomarker Report: Genomic profiling with tier-based actionability and therapy matching

Scripts Included

  1. generate_survival_analysis.py: Create Kaplan-Meier curves with hazard ratios
  2. create_cohort_tables.py: Generate baseline, efficacy, and safety tables
  3. build_decision_tree.py: Convert text/JSON to TikZ flowcharts
  4. biomarker_classifier.py: Stratify patients by PD-L1, HER2, molecular subtypes
  5. validate_cds_document.py: Quality checks for completeness and compliance

Integration

Integrates with existing skills:

  • scientific-writing: Citation management, statistical reporting
  • clinical-reports: Medical terminology, HIPAA compliance
  • scientific-schematics: TikZ flowcharts

Version

Version 1.0 - Initial release Created: November 2024 Last Updated: November 5, 2024

Questions or Feedback

This skill was designed for pharmaceutical and clinical research professionals creating clinical decision support documents. For questions about usage or suggestions for improvements, contact the Scientific Writer development team.