Linhua Jiang , Bo Zhu , Wei Long , Jiahao Xu , Yi Wu , Yao-Wang Li
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A review of denoising methods in single-particle cryo-EM
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.
期刊介绍:
Micron is an interdisciplinary forum for all work that involves new applications of microscopy or where advanced microscopy plays a central role. The journal will publish on the design, methods, application, practice or theory of microscopy and microanalysis, including reports on optical, electron-beam, X-ray microtomography, and scanning-probe systems. It also aims at the regular publication of review papers, short communications, as well as thematic issues on contemporary developments in microscopy and microanalysis. The journal embraces original research in which microscopy has contributed significantly to knowledge in biology, life science, nanoscience and nanotechnology, materials science and engineering.