Center for Nanophase Materials Sciences, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831, United States.
Materials Science and Engineering, University of Washington, Seattle, Washington 98195, United States.
ACS Nano. 2021 Apr 27;15(4):6471-6480. doi: 10.1021/acsnano.0c08914. Epub 2021 Apr 16.
The dynamics of complex ordering systems with active rotational degrees of freedom exemplified by protein self-assembly is explored using a machine learning workflow that combines deep learning-based semantic segmentation and rotationally invariant variational autoencoder-based analysis of orientation and shape evolution. The latter allows for disentanglement of the particle orientation from other degrees of freedom and compensates for lateral shifts. The disentangled representations in the latent space encode the rich spectrum of local transitions that can now be visualized and explored continuous variables. The time dependence of ensemble averages allows insight into the time dynamics of the system and, in particular, illustrates the presence of the potential ordering transition. Finally, analysis of the latent variables along the single-particle trajectory allows tracing these parameters on a single-particle level. The proposed approach is expected to be universally applicable for the description of the imaging data in optical, scanning probe, and electron microscopy seeking to understand the dynamics of complex systems where rotations are a significant part of the process.
使用结合了基于深度学习的语义分割和基于旋转不变变分自动编码器的方向和形状演化分析的机器学习工作流程,探索了具有主动旋转自由度的复杂有序系统的动力学,该系统以蛋白质自组装为例。后者允许从其他自由度解耦粒子取向,并补偿横向位移。在潜在空间中解耦的表示形式编码了丰富的局部转变谱,现在可以可视化和探索连续变量。集合平均值的时间依赖性允许深入了解系统的时间动态,特别是说明了存在潜在的有序转变。最后,沿着单个粒子轨迹对潜在变量进行分析,可以在单个粒子水平上跟踪这些参数。预计该方法将普遍适用于寻求理解旋转是过程重要组成部分的复杂系统的成像数据的描述,例如光学、扫描探针和电子显微镜。