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使用原子力显微镜数据的深度学习分析来量化蛋白质自组织的动态。

Quantifying the Dynamics of Protein Self-Organization Using Deep Learning Analysis of Atomic Force Microscopy Data.

机构信息

Center for Nanophase Materials Sciences, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.

Computational Sciences and Engineering Division, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.

出版信息

Nano Lett. 2021 Jan 13;21(1):158-165. doi: 10.1021/acs.nanolett.0c03447. Epub 2020 Dec 11.

Abstract

The dynamics of protein self-assembly on the inorganic surface and the resultant geometric patterns are visualized using high-speed atomic force microscopy. The time dynamics of the classical macroscopic descriptors such as 2D fast Fourier transforms, correlation, and pair distribution functions are explored using the unsupervised linear unmixing, demonstrating the presence of static ordered and dynamic disordered phases and establishing their time dynamics. The deep learning (DL)-based workflow is developed to analyze detailed particle dynamics and explore the evolution of local geometries. Finally, we use a combination of DL feature extraction and mixture modeling to define particle neighborhoods free of physics constraints, allowing for a separation of possible classes of particle behavior and identification of the associated transitions. Overall, this work establishes the workflow for the analysis of the self-organization processes in complex systems from observational data and provides insight into the fundamental mechanisms.

摘要

使用高速原子力显微镜直观地观察蛋白质在无机表面上的自组装动力学和由此产生的几何图案。使用无监督线性分解技术探索经典宏观描述符(如二维快速傅里叶变换、相关和配分函数)的时间动力学,证明存在静态有序和动态无序相,并确定它们的时间动力学。开发基于深度学习 (DL) 的工作流程来分析详细的粒子动力学并探索局部几何形状的演化。最后,我们使用 DL 特征提取和混合建模的组合来定义无物理约束的粒子邻域,从而可以分离粒子行为的可能类别并识别相关的转变。总的来说,这项工作从观测数据中为分析复杂系统中的自组织过程建立了工作流程,并为基本机制提供了深入的了解。

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