利用随机梯度下降技术在低温电子显微镜中进行高效高分辨率细化。

ArXiv Pub Date : 2024-10-30
Bogdan Toader, Marcus A Brubaker, Roy R Lederman
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引用次数: 0

摘要

电子冷冻显微镜(cryo-EM)是一种广泛应用于结构生物学的成像技术,可从方向未知的嘈杂二维投影中确定生物分子的三维结构。由于典型的流水线需要处理大量数据,因此高效的算法对于获得快速可靠的结果至关重要。随机梯度下降(SGD)算法已被用于提高原子序数重建的速度,其结果是对代表感兴趣分子的体积进行首次低分辨率估计,但尚未成功应用于高分辨率机制,在该机制中,期望最大化算法以较高的计算成本实现了最先进的结果。在本文中,我们对优化问题的条件进行了研究,结果表明较大的条件数阻碍了基于梯度下降的方法在高分辨率下的成功应用。我们的研究结果包括:在已知各个投影方向的简化环境中,对优化问题条件数的理论分析;基于使用 Hutchinson 对角线估计器计算对角线预处理的算法;以及数值实验,实验结果表明在使用 SGD 的预处理估计器时,收敛速度有所提高。带预处理的 SGD 方法有可能以更快的收敛速度和更高的灵活性,为原子序数重建和高分辨率细化提供一种简单而统一的方法。
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Efficient high-resolution refinement in cryo-EM with stochastic gradient descent.

Electron cryomicroscopy (cryo-EM) is an imaging technique widely used in structural biology to determine the three-dimensional structure of biological molecules from noisy two-dimensional projections with unknown orientations. As the typical pipeline involves processing large amounts of data, efficient algorithms are crucial for fast and reliable results. The stochastic gradient descent (SGD) algorithm has been used to improve the speed of ab initio reconstruction, which results in a first, low-resolution estimation of the volume representing the molecule of interest, but has yet to be applied successfully in the high-resolution regime, where expectation-maximization algorithms achieve state-of-the-art results, at a high computational cost. In this article, we investigate the conditioning of the optimization problem and show that the large condition number prevents the successful application of gradient descent-based methods at high resolution. Our results include a theoretical analysis of the condition number of the optimization problem in a simplified setting where the individual projection directions are known, an algorithm based on computing a diagonal preconditioner using Hutchinson's diagonal estimator, and numerical experiments showing the improvement in the convergence speed when using the estimated preconditioner with SGD. The preconditioned SGD approach can potentially enable a simple and unified approach to ab initio reconstruction and high-resolution refinement with faster convergence speed and higher flexibility, and our results are a promising step in this direction.

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