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Enhancing recognition and interpretation of functional phenotypic sequences through fine-tuning pre-trained genomic models.

Duo DuFan ZhongLei Liu
Published in: Journal of translational medicine (2024)
These findings highlight the potential of pre-trained genomic models in learning DNA sequence representations, particularly when utilizing the HERV dataset, and provide valuable insights for future research endeavors. This study represents an innovative strategy that combines pre-trained genomic model representations with classical methods for analyzing the functionality of genome sequences, thereby promoting cross-fertilization between genomics and artificial intelligence.
Keyphrases
  • artificial intelligence
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  • air pollution
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  • genome wide
  • gene expression
  • human health
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