利用深度学习技术结合实验性低温电子显微镜密度数据和 MD 模拟对蛋白质动力学进行定量分析。

Biophysics and Physicobiology Pub Date : 2023-05-16 eCollection Date: 2023-01-01 DOI:10.2142/biophysico.bppb-v20.0022
Shigeyuki Matsumoto, Shoichi Ishida, Kei Terayama, Yasuhshi Okuno
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引用次数: 0

摘要

与生物活性相关的蛋白质功能受三级结构和动态行为的精确调控。因此,阐明高分辨率结构和定量的溶液动力学信息对于理解分子机制至关重要。确定三级结构的主要实验方法包括核磁共振(NMR)、X 射线晶体学和低温电子显微镜(cryo-EM)。在这些方法中,低温电子显微镜的硬件和分析技术最近取得了显著进步,越来越多地确定了大分子的新型原子结构,特别是那些分子量大、组装复杂的大分子。除了这些实验方法外,AlphaFold 2 等深度学习技术还能根据氨基酸序列准确预测结构,加速了结构生物学研究。与此同时,蛋白质动力学的定量分析是通过核磁共振和氢氘质谱等实验方法以及分子动力学(MD)模拟等计算方法进行的。虽然这些方法可以高分辨率地定量探索动态行为,但信号拥挤和高计算成本等基本困难极大地阻碍了它们在大型复杂生物大分子上的应用。近年来,机器学习技术,尤其是深度学习技术被积极应用于结构数据,以识别人类难以从大数据中识别的特征。在此,我们回顾了我们利用深度学习技术结合 MD 模拟从三维冷冻电镜密度数据中准确估计与局部波动相关的动态特性的方法。
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Quantitative analysis of protein dynamics using a deep learning technique combined with experimental cryo-EM density data and MD simulations.

Protein functions associated with biological activity are precisely regulated by both tertiary structure and dynamic behavior. Thus, elucidating the high-resolution structures and quantitative information on in-solution dynamics is essential for understanding the molecular mechanisms. The main experimental approaches for determining tertiary structures include nuclear magnetic resonance (NMR), X-ray crystallography, and cryogenic electron microscopy (cryo-EM). Among these procedures, recent remarkable advances in the hardware and analytical techniques of cryo-EM have increasingly determined novel atomic structures of macromolecules, especially those with large molecular weights and complex assemblies. In addition to these experimental approaches, deep learning techniques, such as AlphaFold 2, accurately predict structures from amino acid sequences, accelerating structural biology research. Meanwhile, the quantitative analyses of the protein dynamics are conducted using experimental approaches, such as NMR and hydrogen-deuterium mass spectrometry, and computational approaches, such as molecular dynamics (MD) simulations. Although these procedures can quantitatively explore dynamic behavior at high resolution, the fundamental difficulties, such as signal crowding and high computational cost, greatly hinder their application to large and complex biological macromolecules. In recent years, machine learning techniques, especially deep learning techniques, have been actively applied to structural data to identify features that are difficult for humans to recognize from big data. Here, we review our approach to accurately estimate dynamic properties associated with local fluctuations from three-dimensional cryo-EM density data using a deep learning technique combined with MD simulations.

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