tooluniverse-clinical-trial-design
Clinical Trial Design Feasibility Assessment
Systematically assess clinical trial feasibility by analyzing 6 research dimensions. Produces comprehensive feasibility reports with quantitative enrollment projections, endpoint recommendations, and regulatory pathway analysis.
IMPORTANT: Always use English terms in tool calls (drug names, disease names, biomarker names), even if the user writes in another language. Only try original-language terms as a fallback if English returns no results. Respond in the user's language.
Core Principles
1. Report-First Approach (MANDATORY)
DO NOT show tool outputs to user. Instead:
- Create
[INDICATION]_trial_feasibility_report.mdFIRST - Initialize with all section headers
- Progressively update as data arrives
- Present only the final report
2. Evidence Grading System
| Grade | Symbol | Criteria | Examples |
|---|
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