Centro Nac. Biotecnología (CSIC), c/Darwin, 3, 28049 Cantoblanco, Madrid, Spain.
Centro Nac. Biotecnología (CSIC), c/Darwin, 3, 28049 Cantoblanco, Madrid, Spain; Faculty of Informatics, Masaryk University, Botanická 68a, 662 00 Brno, Czech Republic; Institute of Computer Science, Masaryk University, Botanická 68a, 60200 Brno, Czech Republic.
J Struct Biol. 2021 Jun;213(2):107712. doi: 10.1016/j.jsb.2021.107712. Epub 2021 Mar 4.
Cryo Electron Microscopy (Cryo-EM) is currently one of the main tools to reveal the structural information of biological specimens at high resolution. Despite the great development of the techniques involved to solve the biological structures with Cryo-EM in the last years, the reconstructed 3D maps can present lower resolution due to errors committed while processing the information acquired by the microscope. One of the main problems comes from the 3D alignment step, which is an error-prone part of the reconstruction workflow due to the very low signal-to-noise ratio (SNR) common in Cryo-EM imaging. In fact, as we will show in this work, it is not unusual to find a disagreement in the alignment parameters in approximately 20-40% of the processed images, when outputs of different alignment algorithms are compared. In this work, we present a novel method to align sets of single particle images in the 3D space, called DeepAlign. Our proposal is based on deep learning networks that have been successfully used in plenty of problems in image classification. Specifically, we propose to design several deep neural networks on a regionalized basis to classify the particle images in sub-regions and, then, make a refinement of the 3D alignment parameters only inside that sub-region. We show that this method results in accurately aligned images, improving the Fourier shell correlation (FSC) resolution obtained with other state-of-the-art methods while decreasing computational time.
低温电子显微镜(Cryo-EM)是目前揭示高分辨率生物样本结构信息的主要工具之一。尽管近年来在解决 Cryo-EM 生物结构方面涉及的技术取得了巨大发展,但由于在处理显微镜获取的信息时存在误差,重建的 3D 图谱可能分辨率较低。其中一个主要问题来自 3D 对齐步骤,由于 Cryo-EM 成像中常见的信噪比(SNR)非常低,该步骤是重建工作流程中容易出错的部分。事实上,正如我们在这项工作中所展示的,当比较不同对齐算法的输出时,大约 20-40%的处理图像中发现对齐参数不一致是很常见的。在这项工作中,我们提出了一种在 3D 空间中对齐单粒子图像集的新方法,称为 DeepAlign。我们的建议基于深度学习网络,这些网络已成功应用于图像分类中的许多问题。具体来说,我们建议在分区的基础上设计几个深度神经网络,对亚区的粒子图像进行分类,然后仅在该亚区内部对 3D 对齐参数进行细化。我们表明,该方法可得到准确对齐的图像,在提高傅立叶壳相关(FSC)分辨率的同时,减少计算时间。