data-extraction-form
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/data-extraction-formDesigns structured data extraction forms for meta-analysis
- Solves the problem of inconsistent data collection across studies
- Uses PICO framework, effect size type, and moderator variables as inputs
- Applies systematic methodology to define fields and coding instructions
- Delivers a standardized form with definitions and examples for reviewers
SKILL.md
.github/skills/data-extraction-formView on GitHub ↗
--- name: data-extraction-form description: Design structured data extraction form for systematic meta-analysis data collection execution: subagent prompt: ./prompt.md input: pico_framework, effect_size_type, moderator_variables used-by: meta-analysis --- # Data Extraction Form SOP Design a structured, comprehensive data extraction form tailored to the specific meta-analysis, ensuring all necessary data points are captured systematically. ## When to Use - After PICO, inclusion criteria, and effect size type are determined - Before beginning full data extraction from included studies - When standardizing extraction across multiple reviewers ## Input - `pico_framework`: The structured PICO/PECO framework - `effect_size_type`: The chosen effect size metric and calculation methods - `moderator_variables`: Pre-specified moderator variables for heterogeneity investigation ## Output A complete data extraction form with field definitions, coding instructions, and examples for each variable.
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