AI Streamlines Gene Set Enrichment
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genomics researchScienceDaily
•How artificial intelligence could automate genomics research
82% Informative
New research suggests that large language models like GPT-4 could streamline the process of gene set enrichment, an approach what genes do and how they interact.
Results bring science one step closer to automating one of the most widely used methods in genomics research.
Using artificial intelligence ( AI ) to analyze gene sets could save scientists many hours of intensive labor.
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