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Large language models generate functional protein sequences across diverse families.

Ali MadaniBen KrauseEric R GreeneSubu SubramanianBenjamin P MohrJames M HoltonJose Luis OlmosCaiming XiongZachary Z SunRichard SocherJames S FraserNikhil Naik
Published in: Nature biotechnology (2023)
Deep-learning language models have shown promise in various biotechnological applications, including protein design and engineering. Here we describe ProGen, a language model that can generate protein sequences with a predictable function across large protein families, akin to generating grammatically and semantically correct natural language sentences on diverse topics. The model was trained on 280 million protein sequences from >19,000 families and is augmented with control tags specifying protein properties. ProGen can be further fine-tuned to curated sequences and tags to improve controllable generation performance of proteins from families with sufficient homologous samples. Artificial proteins fine-tuned to five distinct lysozyme families showed similar catalytic efficiencies as natural lysozymes, with sequence identity to natural proteins as low as 31.4%. ProGen is readily adapted to diverse protein families, as we demonstrate with chorismate mutase and malate dehydrogenase.
Keyphrases
  • protein protein
  • amino acid
  • deep learning
  • autism spectrum disorder
  • machine learning
  • dna damage
  • artificial intelligence
  • big data
  • crystal structure