Correlation-based 2D registration method for single particle cryo-EM images

N. A. Anoshina, A. Krylov, D. Sorokin
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引用次数: 1

Abstract

The amount of image data generated in single particle cryo-electron microscopy (cryo-EM) is huge. This technique is based on the reconstruction of the 3D model of a particle using its 2D projections. The most common way to reduce the noise in particle projection images is averaging. The essential step before the averaging is the alignment of projections. In this work, we propose a fast 2D rigid registration approach for alignment of particle projections in single particle cryo-EM. We used cross-correlation in Fourier domain combined with polar transform to find the rotation angle invariant to the shift between the images. For translation vector estimation we used a fast version of upsampled image correlation. Our approach was evaluated on specifically created synthetic dataset. An experimental comparison with a widely used in existing software iterative method has been performed. In addition, it was successfully applied to a real dataset from the Electron Microscopy Data Bank (EMDB).
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基于相关的低温电镜单粒子图像二维配准方法
单粒子低温电子显微镜(cryo-EM)产生的图像数据量是巨大的。这种技术是基于利用粒子的二维投影重建其三维模型。在粒子投影图像中,最常用的降噪方法是取均值。平均之前的基本步骤是对投影进行对齐。在这项工作中,我们提出了一种快速二维刚性配准方法,用于单粒子冷冻电镜中粒子投影的对准。利用傅里叶域互相关和极坐标变换相结合的方法求出图像间位移的旋转角度不变量。对于平移矢量估计,我们使用了快速版本的上采样图像相关。我们的方法在专门创建的合成数据集上进行了评估。并与现有软件中广泛采用的迭代法进行了实验比较。此外,它还成功地应用于电子显微镜数据库(EMDB)的真实数据集。
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