低温电子显微镜中异质重建的摊销推理。

Axel Levy, Gordon Wetzstein, Julien Martel, Frédéric Poitevin, Ellen D Zhong
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引用次数: 0

摘要

冷冻电子显微镜(cryo-EM)是一种成像模式,它能为蛋白质和其他生命构件的动力学提供独特的见解。然而,从数百万个嘈杂且随机定向的二维投影中以高效的计算方式联合估计生物分子的姿态、三维结构和构象异质性的算法挑战仍未解决。我们的方法--cryoFIRE--在一个摊销框架内对未知姿势进行自证异构重建,从而避免了姿势搜索这一计算成本高昂的步骤,同时还能对构象异质性进行分析。姿势和构象由编码器联合估算,而基于物理的解码器则将图像聚合为构象空间的隐式神经表征。我们的研究表明,我们的方法可以在包含数百万张图像的数据集上提高一个数量级的速度,而不会损失任何准确性。我们验证了姿势和构象的联合估算可以根据数据集的大小进行摊销。我们首次证明,摊销方法可以从实验数据集中提取可解释的动态信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Amortized Inference for Heterogeneous Reconstruction in Cryo-EM.

Cryo-electron microscopy (cryo-EM) is an imaging modality that provides unique insights into the dynamics of proteins and other building blocks of life. The algorithmic challenge of jointly estimating the poses, 3D structure, and conformational heterogeneity of a biomolecule from millions of noisy and randomly oriented 2D projections in a computationally efficient manner, however, remains unsolved. Our method, cryoFIRE, performs ab initio heterogeneous reconstruction with unknown poses in an amortized framework, thereby avoiding the computationally expensive step of pose search while enabling the analysis of conformational heterogeneity. Poses and conformation are jointly estimated by an encoder while a physics-based decoder aggregates the images into an implicit neural representation of the conformational space. We show that our method can provide one order of magnitude speedup on datasets containing millions of images without any loss of accuracy. We validate that the joint estimation of poses and conformations can be amortized over the size of the dataset. For the first time, we prove that an amortized method can extract interpretable dynamic information from experimental datasets.

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