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基于在线机器学习的单粒子X射线衍射图像的可扩展3D重建

Scalable 3D Reconstruction From Single Particle X-Ray Diffraction Images Based on Online Machine Learning.

作者信息

Shenoy Jay, Levy Axel, Poitevin Frédéric, Wetzstein Gordon

出版信息

ArXiv. 2023 Dec 22:arXiv:2312.14432v1.

Abstract

X-ray free-electron lasers (XFELs) offer unique capabilities for measuring the structure and dynamics of biomolecules, helping us understand the basic building blocks of life. Notably, high-repetition-rate XFELs enable single particle imaging (X-ray SPI) where individual, weakly scattering biomolecules are imaged under near-physiological conditions with the opportunity to access fleeting states that cannot be captured in cryogenic or crystallized conditions. Existing X-ray SPI reconstruction algorithms, which estimate the unknown orientation of a particle in each captured image as well as its shared 3D structure, are inadequate in handling the massive datasets generated by these emerging XFELs. Here, we introduce X-RAI, an online reconstruction framework that estimates the structure of a 3D macromolecule from large X-ray SPI datasets. X-RAI consists of a convolutional encoder, which amortizes pose estimation over large datasets, as well as a physics-based decoder, which employs an implicit neural representation to enable high-quality 3D reconstruction in an end-to-end, self-supervised manner. We demonstrate that X-RAI achieves state-of-the-art performance for small-scale datasets in simulation and challenging experimental settings and demonstrate its unprecedented ability to process large datasets containing millions of diffraction images in an online fashion. These abilities signify a paradigm shift in X-ray SPI towards real-time capture and reconstruction.

摘要

X射线自由电子激光器(XFEL)为测量生物分子的结构和动力学提供了独特的能力,有助于我们理解生命的基本组成部分。值得注意的是,高重复率XFEL能够实现单粒子成像(X射线SPI),即单个弱散射生物分子在近生理条件下成像,并有机会捕捉在低温或结晶条件下无法捕获的短暂状态。现有的X射线SPI重建算法,用于估计每个捕获图像中粒子的未知方向及其共享的三维结构,在处理这些新兴XFEL产生的海量数据集时存在不足。在这里,我们介绍了X-RAI,一种在线重建框架,用于从大型X射线SPI数据集中估计三维大分子的结构。X-RAI由一个卷积编码器和一个基于物理的解码器组成,卷积编码器在大型数据集上分摊姿态估计,基于物理的解码器采用隐式神经表示,以端到端、自监督的方式实现高质量的三维重建。我们证明,X-RAI在模拟和具有挑战性的实验设置中,对于小规模数据集实现了最先进的性能,并展示了其以前所未有的能力以在线方式处理包含数百万衍射图像的大型数据集。这些能力标志着X射线SPI向实时捕获和重建的范式转变。

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