Jiang Linhua, Zhu Bo, Long Wei, Xu Jiahao, Wu Yi, Li Yao-Wang
School of Information Engineering, Huzhou University, Huzhou, China; ISEP-Sorbonne Joint Research Lab, 10 Rue de Vanves, Paris 92130, France.
School of Information Engineering, Huzhou University, Huzhou, China.
Micron. 2025 Jul;194:103817. doi: 10.1016/j.micron.2025.103817. Epub 2025 Mar 29.
Cryo-EM has become a vital technique for resolving macromolecular structures at near-atomic resolution, enabling the visualization of proteins and large molecular complexes. However, the images are often accompanied by extremely low SNR, which poses significant challenges for subsequent processes such as particle picking and 3D reconstruction. Effective denoising methods can substantially improve SNR, making downstream analyzes more accurate and reliable. Thus, image denoising is an essential step in cryo-EM data processing. This paper comprehensively reviews recent advances in image denoising methods for single-particle analysis, covering approaches from traditional filtering methods to the latest deep learning-based strategies. By analyzing and comparing mainstream denoising methods, this review aims to advance the field of single-particle cryo-EM denoising, facilitate the acquisition of higher-quality images, and offer valuable insights for researchers new to the field.
冷冻电镜已成为在近原子分辨率下解析大分子结构的关键技术,能够实现对蛋白质和大分子复合物的可视化。然而,这些图像往往伴随着极低的信噪比,这给后续诸如颗粒挑选和三维重建等过程带来了重大挑战。有效的去噪方法可以显著提高信噪比,使下游分析更加准确可靠。因此,图像去噪是冷冻电镜数据处理中的一个重要步骤。本文全面综述了单颗粒分析图像去噪方法的最新进展,涵盖了从传统滤波方法到最新的基于深度学习的策略。通过分析和比较主流去噪方法,本综述旨在推动单颗粒冷冻电镜去噪领域的发展,促进获取更高质量的图像,并为该领域的新手研究人员提供有价值的见解。