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volume 7 issue 1 publication number 1400

Graph masked self-distillation learning for prediction of mutation impact on protein–protein interactions

Publication typeJournal Article
Publication date2024-10-26
scimago Q1
wos Q1
SJR2.071
CiteScore8.8
Impact factor5.1
ISSN23993642
Abstract
Assessing mutation impact on the binding affinity change (ΔΔG) of protein–protein interactions (PPIs) plays a crucial role in unraveling structural-functional intricacies of proteins and developing innovative protein designs. In this study, we present a deep learning framework, PIANO, for improved prediction of ΔΔG in PPIs. The PIANO framework leverages a graph masked self-distillation scheme for protein structural geometric representation pre-training, which effectively captures the structural context representations surrounding mutation sites, and makes predictions using a multi-branch network consisting of multiple encoders for amino acids, atoms, and protein sequences. Extensive experiments demonstrated its superior prediction performance and the capability of pre-trained encoder in capturing meaningful representations. Compared to previous methods, PIANO can be widely applied on both holo complex structures and apo monomer structures. Moreover, we illustrated the practical applicability of PIANO in highlighting pathogenic mutations and crucial proteins, and distinguishing de novo mutations in disease cases and controls in PPI systems. Overall, PIANO offers a powerful deep learning tool, which may provide valuable insights into the study of drug design, therapeutic intervention, and protein engineering. PIANO: a deep learning framework providing a powerful tool and potentially unforeseen avenues for the prediction of mutation impact on the binding affinity changes of protein–protein interactions
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GOST Copy
Zhang Y. et al. Graph masked self-distillation learning for prediction of mutation impact on protein–protein interactions // Communications Biology. 2024. Vol. 7. No. 1. 1400
GOST all authors (up to 50) Copy
Zhang Y., Dong M., Deng J., Wu J., Zhao Q., Gao X., Xiong D. Graph masked self-distillation learning for prediction of mutation impact on protein–protein interactions // Communications Biology. 2024. Vol. 7. No. 1. 1400
RIS |
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RIS Copy
TY - JOUR
DO - 10.1038/s42003-024-07066-9
UR - https://www.nature.com/articles/s42003-024-07066-9
TI - Graph masked self-distillation learning for prediction of mutation impact on protein–protein interactions
T2 - Communications Biology
AU - Zhang, Yuan
AU - Dong, Mingyuan
AU - Deng, Junsheng
AU - Wu, Jiafeng
AU - Zhao, Qiuye
AU - Gao, Xieping
AU - Xiong, Dapeng
PY - 2024
DA - 2024/10/26
PB - Springer Nature
IS - 1
VL - 7
PMID - 39462102
SN - 2399-3642
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2024_Zhang,
author = {Yuan Zhang and Mingyuan Dong and Junsheng Deng and Jiafeng Wu and Qiuye Zhao and Xieping Gao and Dapeng Xiong},
title = {Graph masked self-distillation learning for prediction of mutation impact on protein–protein interactions},
journal = {Communications Biology},
year = {2024},
volume = {7},
publisher = {Springer Nature},
month = {oct},
url = {https://www.nature.com/articles/s42003-024-07066-9},
number = {1},
pages = {1400},
doi = {10.1038/s42003-024-07066-9}
}