Ogura Toshihiko, Sato Chikara
Neuroscience Research Institute and Biological Information Research Center, National Institute of Advanced Industrial Science and Technology (AIST), Umezono 1-1-4, Tsukuba, Ibaraki 305-8568, Japan.
J Struct Biol. 2004 Jan-Feb;145(1-2):63-75. doi: 10.1016/s1047-8477(03)00139-4.
The single-particle analysis is a structure-determining method for electron microscope (EM) images which does not require crystal. In this method, the projections are picked up and averaged by the images of similar Euler angles to improve the signal to noise ratio, and then create a 3-D reconstruction. The selection of a large number of particles from the cryo-EM micrographs is a pre-requisite for obtaining a high resolution. To pickup a low-contrast cryo-EM protein image, we have recently found that a three-layer pyramidal-type neural network is successful in detecting such a faint image, which had been difficult to detect by other methods. The connection weights between the input and hidden layers, which work as a matching filter, have revealed that they reflect characters of the particle projections in the training data. The images stored in terms of the connection weights were complex, more similar to the eigenimages which are created by the principal component analysis of the learning images rather than to the averages of the particle projections. When we set the initial learning weights according to the eigenimages in advance, the learning period was able to be shortened to less than half the time of the NN whose initial weights had been set randomly. Further, the pickup accuracy increased from 90 to 98%, and a combination of the matching filters were found to work as an integrated matching filter there. The integrated filters were amazingly similar to averaged projections and can be used directly as references for further two-dimensional averaging. Therefore, this research also presents a brand-new reference-free method for single-particle analysis.
单颗粒分析是一种用于电子显微镜(EM)图像的结构确定方法,它不需要晶体。在这种方法中,通过具有相似欧拉角的图像来拾取并平均投影,以提高信噪比,然后创建三维重建。从冷冻电镜显微照片中选择大量颗粒是获得高分辨率的前提条件。为了拾取低对比度的冷冻电镜蛋白质图像,我们最近发现一个三层金字塔型神经网络成功地检测到了这样一个微弱的图像,而这是其他方法难以检测到的。作为匹配滤波器的输入层和隐藏层之间的连接权重表明,它们反映了训练数据中颗粒投影的特征。根据连接权重存储的图像很复杂,更类似于通过学习图像的主成分分析创建的特征图像,而不是颗粒投影的平均值。当我们预先根据特征图像设置初始学习权重时,学习周期能够缩短到初始权重随机设置的神经网络的一半以下。此外,拾取准确率从90%提高到了98%,并且发现匹配滤波器的组合在那里起到了集成匹配滤波器的作用。集成滤波器惊人地类似于平均投影,可以直接用作进一步二维平均的参考。因此,这项研究还提出了一种全新的单颗粒分析无参考方法。