TY - JOUR
T1 - Sequence-based peptide identification, generation, and property prediction with deep learning
T2 - A review
AU - Chen, Xumin
AU - Li, Chen
AU - Bernards, Matthew T.
AU - Shi, Yao
AU - Shao, Qing
AU - He, Yi
N1 - Publisher Copyright:
© The Royal Society of Chemistry.
PY - 2021/6/1
Y1 - 2021/6/1
N2 - Over the past few years, deep learning has demonstrated itself to be a powerful tool in many areas, especially bioinformatics. With its previous success in DNA and protein related studies, deep learning has now been brought to the field of peptide science as well. It has been widely used in sequence-based peptide identification, generation, and property prediction. The publications on this subject over the past two years are summarized in this review. The deep learning models reported are mainly convolutional neural networks, recurrent neural networks, hybrid models, transformers, and other generative models like variational autoencoders and generative adversarial networks, as well as algorithms like input optimization. Application areas include antimicrobial peptides, signal peptides, and major histocompatibility complex binding peptides, among others. This review develops content according to the general workflow of deep learning, while illustrating adaptations and techniques specific to certain example problems. Some issues and future directions are also discussed, such as approaches for model interpretation, benchmark datasets, automation in deep learning, and rational peptide design techniques.
AB - Over the past few years, deep learning has demonstrated itself to be a powerful tool in many areas, especially bioinformatics. With its previous success in DNA and protein related studies, deep learning has now been brought to the field of peptide science as well. It has been widely used in sequence-based peptide identification, generation, and property prediction. The publications on this subject over the past two years are summarized in this review. The deep learning models reported are mainly convolutional neural networks, recurrent neural networks, hybrid models, transformers, and other generative models like variational autoencoders and generative adversarial networks, as well as algorithms like input optimization. Application areas include antimicrobial peptides, signal peptides, and major histocompatibility complex binding peptides, among others. This review develops content according to the general workflow of deep learning, while illustrating adaptations and techniques specific to certain example problems. Some issues and future directions are also discussed, such as approaches for model interpretation, benchmark datasets, automation in deep learning, and rational peptide design techniques.
UR - http://www.scopus.com/inward/record.url?scp=85107633986&partnerID=8YFLogxK
U2 - 10.1039/d0me00161a
DO - 10.1039/d0me00161a
M3 - 文献综述
AN - SCOPUS:85107633986
SN - 2058-9689
VL - 6
SP - 406
EP - 428
JO - Molecular Systems Design and Engineering
JF - Molecular Systems Design and Engineering
IS - 6
ER -