Lesson 688 of 2244
AI to Accelerate Meta-Analysis: Screening + Extraction
Meta-analyses take years partly because of screening and extraction tedium. AI handles both at scale — when validated rigorously.
Adults & Professionals · Research & Analysis · ~7 min read
The premise
Manual screening and extraction limit meta-analysis throughput; AI assistance accelerates both with proper validation.
What AI does well here
- Use AI for first-pass title/abstract screening with explicit accuracy validation
- Use AI for data extraction following pre-specified extraction templates
- Maintain dual-reviewer methodology including AI as one reviewer
- Document AI methodology following PRISMA-AI guidance
What AI cannot do
- Skip the human review entirely — courts of scientific opinion still expect human judgment
- Trust AI on close-call studies for inclusion
- Generate accurate extraction from poorly-structured source papers
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