Lesson 1715 of 2116
AI Power-Analysis Narrative: Drafting Sample-Size Justification Sections
AI can draft power-analysis sample-size justification narratives, but the effect-size assumption stays with the investigator.
Lesson map
What this lesson covers
Learning path
The main moves in order
- 1The premise
- 2power analysis
- 3effect size
- 4alpha
Concept cluster
Terms to connect while reading
Section 1
The premise
AI can draft power-analysis narratives that document effect-size assumption, alpha, power, and the resulting sample-size estimate.
What AI does well here
- Render the power-analysis assumption set into one paragraph.
- Mirror the sensitivity-analysis approach across plausible effect sizes.
What AI cannot do
- Decide the effect-size assumption.
- Replace the biostatistician's calculation.
Key terms in this lesson
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