Fast principal component analysis for cryo-electron microscopy images.

Nicholas F Marshall, Oscar Mickelin, Yunpeng Shi, Amit Singer
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Abstract

Principal component analysis (PCA) plays an important role in the analysis of cryo-electron microscopy (cryo-EM) images for various tasks such as classification, denoising, compression, and ab initio modeling. We introduce a fast method for estimating a compressed representation of the 2-D covariance matrix of noisy cryo-EM projection images affected by radial point spread functions that enables fast PCA computation. Our method is based on a new algorithm for expanding images in the Fourier-Bessel basis (the harmonics on the disk), which provides a convenient way to handle the effect of the contrast transfer functions. For N images of size L × L, our method has time complexity O(NL3 + L4) and space complexity O(NL2 + L3). In contrast to previous work, these complexities are independent of the number of different contrast transfer functions of the images. We demonstrate our approach on synthetic and experimental data and show acceleration by factors of up to two orders of magnitude.

Abstract Image

Abstract Image

Abstract Image

低温电子显微镜图像的快速主成分分析。
主成分分析(PCA)在低温电子显微镜(cryo-EM)图像的分类、去噪、压缩和从头算建模等分析中发挥着重要作用。我们介绍了一种快速的方法来估计受径向点扩展函数影响的噪声冷冻电镜投影图像的二维协方差矩阵的压缩表示,从而实现快速的主成分分析计算。该方法基于傅里叶-贝塞尔基(磁盘上的谐波)展开图像的新算法,为处理对比度传递函数的影响提供了一种方便的方法。对于大小为L × L的N幅图像,我们的方法时间复杂度为O(NL3 + L4),空间复杂度为O(NL2 + L3)。与以前的工作相反,这些复杂性与图像的不同对比度传递函数的数量无关。我们在合成和实验数据上证明了我们的方法,并显示了高达两个数量级的加速因素。
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