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Iterative stable alignment and clustering of 2D transmission electron microscope images
Authors:Yang Zhengfan  Fang Jia  Chittuluru Johnathan  Asturias Francisco J  Penczek Pawel A
Institution:Department of Biochemistry and Molecular Biology, University of Texas-Houston Medical School, 6431 Fannin Street, MSB 6.218, Houston, TX 77030, USA.
Abstract:Identification of homogeneous subsets of images in a macromolecular electron microscopy (EM) image data set is a critical step in single-particle analysis. The task is handled by iterative algorithms, whose performance is compromised by the compounded limitations of image alignment and K-means clustering. Here we describe an approach, iterative stable alignment and clustering (ISAC) that, relying on a new clustering method and on the concepts of stability and reproducibility, can extract validated, homogeneous subsets of images. ISAC requires only a small number of simple parameters and, with minimal human intervention, can eliminate bias from two-dimensional image clustering and maximize the quality of group averages that can be used for ab initio three-dimensional structural determination and analysis of macromolecular conformational variability. Repeated testing of the stability and reproducibility of a solution within ISAC eliminates heterogeneous or incorrect classes and introduces critical validation to the process of EM image clustering.
Keywords:
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