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Deep Learning Empowers the Discovery of Self-Assembling Peptides with Over 10 Trillion Sequences.

Jiaqi WangZihan LiuShuang ZhaoTengyan XuHuaimin WangStan Z LiWenbin Li
Published in: Advanced science (Weinheim, Baden-Wurttemberg, Germany) (2023)
Self-assembling of peptides is essential for a variety of biological and medical applications. However, it is challenging to investigate the self-assembling properties of peptides within the complete sequence space due to the enormous sequence quantities. Here, it is demonstrated that a transformer-based deep learning model is effective in predicting the aggregation propensity (AP) of peptide systems, even for decapeptide and mixed-pentapeptide systems with over 10 trillion sequence quantities. Based on the predicted AP values, not only the aggregation laws for designing self-assembling peptides are derived, but the transferability relation among the APs of pentapeptides, decapeptides, and mixed pentapeptides is also revealed, leading to discoveries of self-assembling peptides by concatenating or mixing, as consolidated by experiments. This deep learning approach enables speedy, accurate, and thorough search and design of self-assembling peptides within the complete sequence space of oligopeptides, advancing peptide science by inspiring new biological and medical applications.
Keyphrases
  • deep learning
  • amino acid
  • healthcare
  • artificial intelligence
  • small molecule
  • public health
  • high resolution
  • high throughput
  • single cell