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Dynamics in cryo EM reconstructions visualized with maximum-likelihood derived variance maps

机译:用最大似然派生方差图可视化的Cryo EM重建中的动态

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摘要

CryoEM data capture the dynamic character associated with biological macromolecular assemblies by preserving the various conformations of the individual specimens at the moment of flash freezing. Regions of high variation in the data set are apparent in the image reconstruction due to the poor density that results from the lack of superposition of these regions. These observations are qualitative and, to date, only preliminary efforts have been made to quantitate the heterogeneity in the ensemble of particles that are individually imaged. We developed and tested a quantitative method for simultaneously computing a reconstruction of the particle and a map of the space-varying heterogeneity of the particle based on an entire data set. The method uses a maximum likelihood algorithm that explicitly takes into account the continuous variability from one instance to another instance of the particle. The result describes the heterogeneity of the particle as a variance to be plotted at every voxel of the reconstructed density. The test, employing time resolved data sets of virus maturation, not only recapitulated local variations obtained with difference map analysis, but revealed a remarkable time dependent reduction in the overall particle dynamics that was unobservable with classical methods of analysis.
机译:CryoEM数据通过在快速冷冻时保留各个标本的各种构象来捕获与生物大分子组装相关的动态特征。由于缺乏这些区域的重叠而导致的较差的密度,因此在图像重建中,数据集中变化较大的区域显而易见。这些观察是定性的,迄今为止,仅作了初步的努力来量化单独成像颗粒整体中的异质性。我们开发并测试了一种定量方法,用于基于整个数据集同时计算粒子的重构和粒子的时空异质性图。该方法使用最大似然算法,该算法明确考虑了从粒子的一个实例到另一实例的连续变异性。结果将粒子的异质性描述为要在重建密度的每个体素处绘制的方差。该测试使用了病毒成熟度的时间分辨数据集,不仅概括了通过差异图分析获得的局部变异,而且还揭示了整体颗粒动力学的显着时间依赖性降低,这是传统分析方法无法观察到的。

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