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Cryo electron microscopy of mixed ensembles: simultaneous pattern recognition and 3-D reconstruction

机译:混合乐团的低温电子显微镜:同时模式识别和3-D重建

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Summary form only given. In the study of biological processes like virus maturation, experimental situations arise where the sample is a mixture of virus particles in which each particle is from one of a few classes of identical particle. In order to use cryo electron microscopy to compute a 3-D reconstruction of each class of particle, a pattern recognition problem must be solved. A model-based statistical approach using the maximum likelihood criteria in which the unknown class labels are treated as nuisance parameters is described. An expectation-maximization algorithm is used to solve the maximum likelihood problem where, in order to compute reconstructions at biologically interesting spatial resolutions, a high-performance computing implementation has been developed on a cluster computer.
机译:仅提供摘要表格。在研究病毒成熟等生物学过程时,出现了实验情况,其中样品是病毒颗粒的混合物,其中每个颗粒都来自几类相同颗粒中的一种。为了使用低温电子显微镜来计算每类粒子的3D重建,必须解决模式识别问题。描述了一种基于模型的统计方法,该方法使用最大似然标准,其中将未知类别标签视为有害参数。期望最大化算法用于解决最大似然问题,在该问题中,为了以生物学上有意义的空间分辨率计算重构,已经在集群计算机上开发了高性能计算实现。

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