geo-database
GEO Database
Overview
The Gene Expression Omnibus (GEO) is NCBI's public repository for high-throughput gene expression and functional genomics data. GEO contains over 264,000 studies with more than 8 million samples from both array-based and sequence-based experiments.
When to Use This Skill
This skill should be used when searching for gene expression datasets, retrieving experimental data, downloading raw and processed files, querying expression profiles, or integrating GEO data into computational analysis workflows.
Core Capabilities
1. Understanding GEO Data Organization
GEO organizes data hierarchically using different accession types:
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