Ce Liu, Jun Wang, Zhiqiang Cai, Yingxu Wang, Huizhen Kuang, Kaihui Cheng, Liwei Zhang, Qingkun Su, Yining Tang, Fenglei Cao, Limei Han, Siyu Zhu, Yuan Qi
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To address this gap, we propose to enhance existing\nprestigious static 3D protein structural databases, such as the Protein Data\nBank (PDB), by integrating dynamic data and additional physical properties.\nSpecifically, we introduce a large-scale dataset, Dynamic PDB, encompassing\napproximately 12.6K proteins, each subjected to all-atom molecular dynamics\n(MD) simulations lasting 1 microsecond to capture conformational changes.\nFurthermore, we provide a comprehensive suite of physical properties, including\natomic velocities and forces, potential and kinetic energies of proteins, and\nthe temperature of the simulation environment, recorded at 1 picosecond\nintervals throughout the simulations. For benchmarking purposes, we evaluate\nstate-of-the-art methods on the proposed dataset for the task of trajectory\nprediction. To demonstrate the value of integrating richer physical properties\nin the study of protein dynamics and related model design, we base our approach\non the SE(3) diffusion model and incorporate these physical properties into the\ntrajectory prediction process. Preliminary results indicate that this\nstraightforward extension of the SE(3) model yields improved accuracy, as\nmeasured by MAE and RMSD, when the proposed physical properties are taken into\nconsideration.","PeriodicalId":501022,"journal":{"name":"arXiv - QuanBio - Biomolecules","volume":"25 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-08-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Dynamic PDB: A New Dataset and a SE(3) Model Extension by Integrating Dynamic Behaviors and Physical Properties in Protein Structures\",\"authors\":\"Ce Liu, Jun Wang, Zhiqiang Cai, Yingxu Wang, Huizhen Kuang, Kaihui Cheng, Liwei Zhang, Qingkun Su, Yining Tang, Fenglei Cao, Limei Han, Siyu Zhu, Yuan Qi\",\"doi\":\"arxiv-2408.12413\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Despite significant progress in static protein structure collection and\\nprediction, the dynamic behavior of proteins, one of their most vital\\ncharacteristics, has been largely overlooked in prior research. This oversight\\ncan be attributed to the limited availability, diversity, and heterogeneity of\\ndynamic protein datasets. To address this gap, we propose to enhance existing\\nprestigious static 3D protein structural databases, such as the Protein Data\\nBank (PDB), by integrating dynamic data and additional physical properties.\\nSpecifically, we introduce a large-scale dataset, Dynamic PDB, encompassing\\napproximately 12.6K proteins, each subjected to all-atom molecular dynamics\\n(MD) simulations lasting 1 microsecond to capture conformational changes.\\nFurthermore, we provide a comprehensive suite of physical properties, including\\natomic velocities and forces, potential and kinetic energies of proteins, and\\nthe temperature of the simulation environment, recorded at 1 picosecond\\nintervals throughout the simulations. For benchmarking purposes, we evaluate\\nstate-of-the-art methods on the proposed dataset for the task of trajectory\\nprediction. 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引用次数: 0
摘要
尽管在静态蛋白质结构收集和预测方面取得了重大进展,但蛋白质的动态行为作为其最重要的特征之一,在以往的研究中却在很大程度上被忽视了。这种疏忽可归因于动态蛋白质数据集的可用性、多样性和异质性有限。为了填补这一空白,我们建议通过整合动态数据和附加物理特性来增强现有著名的静态三维蛋白质结构数据库,如蛋白质数据库(PDB)。此外,我们还提供了一套全面的物理特性,包括原子速度和力、蛋白质的势能和动能以及模拟环境的温度,这些都是在整个模拟过程中以 1 皮秒的时间间隔记录下来的。出于基准测试的目的,我们在拟议的数据集上评估了最先进的轨迹预测方法。为了证明将更丰富的物理特性整合到蛋白质动力学研究和相关模型设计中的价值,我们以 SE(3) 扩散模型为基础,将这些物理特性整合到轨迹预测过程中。初步结果表明,当考虑到所提出的物理特性时,SE(3) 模型的这种直接扩展可以提高用 MAE 和 RMSD 度量的精确度。
Dynamic PDB: A New Dataset and a SE(3) Model Extension by Integrating Dynamic Behaviors and Physical Properties in Protein Structures
Despite significant progress in static protein structure collection and
prediction, the dynamic behavior of proteins, one of their most vital
characteristics, has been largely overlooked in prior research. This oversight
can be attributed to the limited availability, diversity, and heterogeneity of
dynamic protein datasets. To address this gap, we propose to enhance existing
prestigious static 3D protein structural databases, such as the Protein Data
Bank (PDB), by integrating dynamic data and additional physical properties.
Specifically, we introduce a large-scale dataset, Dynamic PDB, encompassing
approximately 12.6K proteins, each subjected to all-atom molecular dynamics
(MD) simulations lasting 1 microsecond to capture conformational changes.
Furthermore, we provide a comprehensive suite of physical properties, including
atomic velocities and forces, potential and kinetic energies of proteins, and
the temperature of the simulation environment, recorded at 1 picosecond
intervals throughout the simulations. For benchmarking purposes, we evaluate
state-of-the-art methods on the proposed dataset for the task of trajectory
prediction. To demonstrate the value of integrating richer physical properties
in the study of protein dynamics and related model design, we base our approach
on the SE(3) diffusion model and incorporate these physical properties into the
trajectory prediction process. Preliminary results indicate that this
straightforward extension of the SE(3) model yields improved accuracy, as
measured by MAE and RMSD, when the proposed physical properties are taken into
consideration.