Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides
Abstract Cell-penetrating peptides have important therapeutic applications in drug delivery, but the variety of known cell-penetrating peptides is still limited. With a promise to accelerate peptide development, artificial intelligence (AI) techniques including deep generative models are currently i...
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doaj-0a9cf7df2c9b4a0ea4bd512001748a5c2021-05-23T11:31:50ZengNature Publishing GroupScientific Reports2045-23222021-05-011111910.1038/s41598-021-90245-zUsing molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptidesDuy Phuoc Tran0Seiichi Tada1Akiko Yumoto2Akio Kitao3Yoshihiro Ito4Takanori Uzawa5Koji Tsuda6School of Life Sciences and Technology, Tokyo Institute of TechnologyEmergent Bioengineering Materials Research Team, RIKEN Center for Emergent Matter ScienceEmergent Bioengineering Materials Research Team, RIKEN Center for Emergent Matter ScienceSchool of Life Sciences and Technology, Tokyo Institute of TechnologyEmergent Bioengineering Materials Research Team, RIKEN Center for Emergent Matter ScienceEmergent Bioengineering Materials Research Team, RIKEN Center for Emergent Matter ScienceGraduate School of Frontier Sciences, The University of TokyoAbstract Cell-penetrating peptides have important therapeutic applications in drug delivery, but the variety of known cell-penetrating peptides is still limited. With a promise to accelerate peptide development, artificial intelligence (AI) techniques including deep generative models are currently in spotlight. Scientists, however, are often overwhelmed by an excessive number of unannotated sequences generated by AI and find it difficult to obtain insights to prioritize them for experimental validation. To avoid this pitfall, we leverage molecular dynamics (MD) simulations to obtain mechanistic information to prioritize and understand AI-generated peptides. A mechanistic score of permeability is computed from five steered MD simulations starting from different initial structures predicted by homology modelling. To compensate for variability of predicted structures, the score is computed with sample variance penalization so that a peptide with consistent behaviour is highly evaluated. Our computational pipeline involving deep learning, homology modelling, MD simulations and synthesizability assessment generated 24 novel peptide sequences. The top-scoring peptide showed a consistent pattern of conformational change in all simulations regardless of initial structures. As a result of wet-lab-experiments, our peptide showed better permeability and weaker toxicity in comparison to a clinically used peptide, TAT. Our result demonstrates how MD simulations can support de novo peptide design by providing mechanistic information supplementing statistical inference.https://doi.org/10.1038/s41598-021-90245-z |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Duy Phuoc Tran Seiichi Tada Akiko Yumoto Akio Kitao Yoshihiro Ito Takanori Uzawa Koji Tsuda |
spellingShingle |
Duy Phuoc Tran Seiichi Tada Akiko Yumoto Akio Kitao Yoshihiro Ito Takanori Uzawa Koji Tsuda Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides Scientific Reports |
author_facet |
Duy Phuoc Tran Seiichi Tada Akiko Yumoto Akio Kitao Yoshihiro Ito Takanori Uzawa Koji Tsuda |
author_sort |
Duy Phuoc Tran |
title |
Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides |
title_short |
Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides |
title_full |
Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides |
title_fullStr |
Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides |
title_full_unstemmed |
Using molecular dynamics simulations to prioritize and understand AI-generated cell penetrating peptides |
title_sort |
using molecular dynamics simulations to prioritize and understand ai-generated cell penetrating peptides |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2021-05-01 |
description |
Abstract Cell-penetrating peptides have important therapeutic applications in drug delivery, but the variety of known cell-penetrating peptides is still limited. With a promise to accelerate peptide development, artificial intelligence (AI) techniques including deep generative models are currently in spotlight. Scientists, however, are often overwhelmed by an excessive number of unannotated sequences generated by AI and find it difficult to obtain insights to prioritize them for experimental validation. To avoid this pitfall, we leverage molecular dynamics (MD) simulations to obtain mechanistic information to prioritize and understand AI-generated peptides. A mechanistic score of permeability is computed from five steered MD simulations starting from different initial structures predicted by homology modelling. To compensate for variability of predicted structures, the score is computed with sample variance penalization so that a peptide with consistent behaviour is highly evaluated. Our computational pipeline involving deep learning, homology modelling, MD simulations and synthesizability assessment generated 24 novel peptide sequences. The top-scoring peptide showed a consistent pattern of conformational change in all simulations regardless of initial structures. As a result of wet-lab-experiments, our peptide showed better permeability and weaker toxicity in comparison to a clinically used peptide, TAT. Our result demonstrates how MD simulations can support de novo peptide design by providing mechanistic information supplementing statistical inference. |
url |
https://doi.org/10.1038/s41598-021-90245-z |
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