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In Silico Screening and Optimization of Cell-Penetrating Peptides Using Deep Learning Methods.

Hyejin ParkJung-Hyun ParkMin Seok KimKwangmin ChoJae-Min Shin
Published in: Biomolecules (2023)
Cell-penetrating peptides (CPPs) have great potential to deliver bioactive agents into cells. Although there have been many recent advances in CPP-related research, it is still important to develop more efficient CPPs. The development of CPPs by in silico methods is a very useful addition to experimental methods, but in many cases it can lead to a large number of false-positive results. In this study, we developed a deep-learning-based CPP prediction method, AiCPP, to develop novel CPPs. AiCPP uses a large number of peptide sequences derived from human-reference proteins as a negative set to reduce false-positive predictions and adopts a method to learn small-length peptide sequence motifs that may have CPP tendencies. Using AiCPP, we found that short peptide sequences derived from amyloid precursor proteins are efficient new CPPs, and experimentally confirmed that these CPP sequences can be further optimized.
Keyphrases
  • deep learning
  • single cell
  • cell therapy
  • endothelial cells
  • induced apoptosis
  • molecular docking
  • artificial intelligence
  • machine learning
  • bone marrow
  • genetic diversity
  • pi k akt
  • cell cycle arrest