麻豆淫院


Team develops deep learning model to predict protein conformational changes

Team develops deep learning model to predict protein conformational changes
Model application in human 尾-cardiac Myosin. Credit: Advanced Science (2024). DOI: 10.1002/advs.202400884

Recently, a research team has collaborated to propose a deep learning model for predicting protein conformational changes. This achievement has been online in Advanced Science.

In recent years, deep learning models represented by AlphaFold have achieved tremendous success in predicting the static structures of proteins. However, the function of proteins depends on their dynamic characteristics. Researchers are actively exploring other deep learning algorithms aimed at predicting the dynamic behaviors of proteins, such as . One of the main challenges in developing such models is the severe shortage of kinetic data describing conformational transitions.

To overcome this challenge, the researchers integrated a physically constrained coarse-grained molecular dynamics model with enhanced sampling methods to create an efficient computational framework for simulating allostery.

This framework was used to simulate the conformational changes of 2,635 proteins existing in two known stable states, capturing the structural information along each transition pathway. The result of this extensive simulation effort was the first large-scale database of protein dynamics, providing a rich resource for studying protein motion and change.

USTC develops deep learning model to predict protein conformational changes
The construction process of PATHpre. (Image by USTC). Credit: Yao Hu et al.

Leveraging this database, the team developed a general named PATHpre, designed to predict the allosteric pathways between two stable states of proteins. The model demonstrated robust predictive capabilities across proteins with varying sequence lengths, from 44 to 704 , and was effective for multiple allosteric systems, including morphogenic proteins.

The researchers validated the model's predictions against experimental and simulation data across several systems, achieving consistent results and even uncovering a novel allosteric regulation mechanism in human 尾-cardiac myosin, a protein crucial to heart function.

The development of the PATHpre model represents a significant step forward in the predictive modeling of protein dynamics. Its ability to predict not only the transition state but also the entire pathway of conformational changes offers new insights into protein function and regulation. This model has the potential to revolutionize our understanding of protein behavior and could play a critical role in the development of new therapeutics targeting protein misfolding diseases.

The team included Prof. Wang Qian from the University of Science and Technology of China (USTC) of the Chinese Academy of Sciences (CAS) and Prof. Bai Fang from ShanghaiTech University.

More information: Yao Hu et al, Exploring Protein Conformational Changes Using a Large鈥怱cale Biophysical Sampling Augmented Deep Learning Strategy, Advanced Science (2024).

Journal information: Advanced Science

Citation: Team develops deep learning model to predict protein conformational changes (2024, October 28) retrieved 4 July 2025 from /news/2024-10-team-deep-protein-conformational.html
This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.

Explore further

New models help predict protein dynamic signatures

69 shares

Feedback to editors