首页> 外文会议>Conference on Multisensor, Multisource Information Fusion: Architectures, Algorithms, and Applications >Feature Extraction and Fusion for Protein Structure Identification in Cryo-Electron Microscopic Images Using Independent Component Analysis and the Projection-Slice Synthetic Filter
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Feature Extraction and Fusion for Protein Structure Identification in Cryo-Electron Microscopic Images Using Independent Component Analysis and the Projection-Slice Synthetic Filter

机译:独立分量分析和投影切片合成滤波器用蛋白质结构鉴定的特征提取与蛋白质结构鉴定

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In this paper we utilize the Projection-Slice Synthetic Discriminant Function Filters, PSDF, in concert with an Independent Component Analysis technique to simultaneously reduce the data set that represents each of the training images and to emphasize subtle differences in each of the training images. These differences are encoded into the PSDF in order to improve the filter sensitivity for the recognition and identification of protein images formed from a cryo-electron microscopic imaging process. The PSDF and Independent Component Analysis provide a premise not only for the identification of the class of structures under consideration, but also for detecting the orientation of the structures in these images. The protein structures found in cryo-electron microscopic imaging represent a class of objects that have low resolution and contrast and subtle variation. This poses a challenge in design of filters to recognize these structures due to false targets that often have similar characteristics as the protein structures. The incorporation of a component analysis and eigen values conditioning in forming the filter provides an enhanced approach of de-correlating images prior to their incorporation into the filter. We present our method of filter synthesis and the results of the application of this modified filter to a protein structure recognition problem.
机译:在本文中,我们利用投影切片合成判别函数滤波器PSDF,与独立的分量分析技术同时减少代表每个训练图像的数据集,并强调每个训练图像中的细微差异。这些差异被编码到PSDF中,以提高从冷冻电子显微镜成像过程形成的蛋白质图像的滤波灵敏度。 PSDF和独立分量分析提供了不仅用于识别所考虑的结构类的前提,而且还用于检测这些图像中结构的方向。在冷冻电子显微镜成像中发现的蛋白质结构代表了一类具有低分辨率和对比度和细微变化的物体。这在滤波器的设计中构成了挑战,以识别这些结构由于通常具有与蛋白质结构相似的特征的假目标。结合成分分析和在形成滤波器时调节的调节提供了在将其掺入到过滤器之前的去相关图像的增强方法。我们介绍了过滤合成的方法和将该改性过滤器应用于蛋白质结构识别问题的方法。

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