Chen Shu-wen W, Pellequer Jean-Luc
CEA, iBEB, Service de Biochimie et Toxicologie Nucléaire, F-30207 Bagnols sur Cèze, France.
BMC Struct Biol. 2011 Feb 1;11:7. doi: 10.1186/1472-6807-11-7.
Atomic force microscopy (AFM) is a relatively recently developed technique that shows a promising impact in the field of structural biology and biophysics. It has been used to image the molecular surface of membrane proteins at a lateral resolution of one nanometer or less. An immediate obstacle of characterizing surface features in AFM images is stripe noise. To better interpret structures at a sub-domain level, pre-processing of AFM images for removing stripe noises is necessary. Noise removal can be performed in either spatial or frequency domain. However, denoising processing in the frequency domain is a better solution for preserving edge sharpness.
We have developed a denoising protocol, called DeStripe, for AFM bio-molecular images that are contaminated with heavy and fine stripes. This program adopts a divide-and-conquer approach by dividing the Fourier spectrum of the image into central and off-center regions for noisy pixels detection and intensity restoration; it is also applicable to other images interfered with high-density stripes such as those acquired by the scanning electron microscope. The denoising effect brought by DeStripe provides better visualization for image objects without introducing additional artifacts into the restored image.
The DeStripe denoising effect on AFM images is illustrated in the present work. It allows extracting extended information from the topographic measurements and implicitly enhances the molecular features in the image. All the presented images were processed by DeStripe with the raw image as the only input without any requirement for other prior information. A web service, http://biodev.cea.fr/destripe, is available for running DeStripe.
原子力显微镜(AFM)是一项相对较新开发的技术,在结构生物学和生物物理学领域显示出有前景的影响。它已被用于以一纳米或更小的横向分辨率对膜蛋白的分子表面进行成像。在AFM图像中表征表面特征的一个直接障碍是条纹噪声。为了在亚结构域水平更好地解释结构,对AFM图像进行去除条纹噪声的预处理是必要的。噪声去除可以在空间域或频率域中进行。然而,在频率域进行去噪处理是保留边缘清晰度的更好解决方案。
我们已经开发了一种用于处理被粗条纹和细条纹污染的AFM生物分子图像的去噪协议,称为DeStripe。该程序采用分治方法,将图像的傅里叶频谱划分为中心区域和偏离中心区域,用于检测噪声像素并恢复强度;它也适用于其他受高密度条纹干扰的图像,如扫描电子显微镜获取的图像。DeStripe带来的去噪效果为图像对象提供了更好的可视化效果,而不会在恢复的图像中引入额外的伪影。
本文展示了DeStripe对AFM图像的去噪效果。它允许从地形测量中提取扩展信息,并隐含地增强图像中的分子特征。所有呈现的图像均由DeStripe处理,以原始图像作为唯一输入,无需任何其他先验信息。可通过网络服务http://biodev.cea.fr/destripe运行DeStripe。