Geneformer

Genomics & Bioinformatics

Single-cell transformer foundation model pretrained on 104M human transcriptomes via masked gene prediction, enabling transfer learning for cell type classification, gene network analysis, and in silico perturbation with limited labeled data (Nature 2023, V2 2024)

Source attribution

  • Awesome AI for Sciencegithub.com/lcrawlab/geneformer

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