clinical-decision-support
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.
这页展示的是上游仓库条目,不代表已进入 SCI Skills 精选目录。
- 原始路径
- scientific-skills/clinical-decision-support
- 允许工具
- Read, Write, Edit, Bash
- 仓库版本
- 2.31.0
- 同步时间
- 2026年3月27日
条目说明
条目说明
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:
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