Department of Physics, University of Science and Technology of China, Hefei, Anhui, 230026, China.
Shanghai Institute for Advanced Immunochemical Studies and School of Life Science and Technology, ShanghaiTech University, 393 Middle Huaxia Road, Shanghai, 201210, China.
Adv Sci (Weinh). 2024 Nov;11(44):e2400884. doi: 10.1002/advs.202400884. Epub 2024 Oct 10.
Inspired by the success of deep learning in predicting static protein structures, researchers are now actively exploring other deep learning algorithms aimed at predicting the conformational changes of proteins. Currently, a major challenge in the development of such models lies in the limited training data characterizing different conformational transitions. To address this issue, molecular dynamics simulations is combined with enhanced sampling methods to create a large-scale database. To this end, the study simulates the conformational changes of 2635 proteins featuring two known stable states, and collects the structural information along each transition pathway. Utilizing this database, a general deep learning model capable of predicting the transition pathway for a given protein is developed. The model exhibits general robustness across proteins with varying sequence lengths (ranging from 44 to 704 amino acids) and accommodates different types of conformational changes. Great agreement is shown between predictions and experimental data in several systems and successfully apply this model to identify a novel allosteric regulation in an important biological system, the human β-cardiac myosin. These results demonstrate the effectiveness of the model in revealing the nature of protein conformational changes.
受深度学习在预测静态蛋白质结构方面取得成功的启发,研究人员现在积极探索其他旨在预测蛋白质构象变化的深度学习算法。目前,此类模型发展的一个主要挑战在于描述不同构象转变的有限训练数据。为了解决这个问题,将分子动力学模拟与增强采样方法相结合,创建了一个大型数据库。为此,该研究模拟了具有两个已知稳定状态的 2635 种蛋白质的构象变化,并沿着每个转变途径收集结构信息。利用这个数据库,开发了一个能够预测给定蛋白质转变途径的通用深度学习模型。该模型在不同序列长度(从 44 到 704 个氨基酸)的蛋白质中表现出普遍的稳健性,并适应不同类型的构象变化。在几个系统中,预测结果与实验数据高度吻合,并成功地将该模型应用于鉴定一个重要生物学系统——人β-心脏肌球蛋白中的一种新型别构调节。这些结果表明了该模型在揭示蛋白质构象变化性质方面的有效性。