Identifying Components in 3D Density Maps of Protein Nanomachines by Multi-scale Segmentation.

Grigore Pintilie, Junjie Zhang, Wah Chiu, David Gossard
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Abstract

Segmentation of density maps obtained using cryo-electron microscopy (cryo-EM) is a challenging task, and is typically accomplished by time-intensive interactive methods. The goal of segmentation is to identify the regions inside the density map that correspond to individual components. We present a multi-scale segmentation method for accomplishing this task that requires very little user interaction. The method uses the concept of scale space, which is created by convolution of the input density map with a Gaussian filter. The latter process smoothes the density map. The standard deviation of the Gaussian filter is varied, with smaller values corresponding to finer scales and larger values to coarser scales. Each of the maps at different scales is segmented using the watershed method, which is very efficient, completely automatic, and does not require the specification of seed points. Some detail is lost in the smoothing process. A sharpening process reintroduces detail into the segmentation at the coarsest scale by using the segmentations at the finer scales. We apply the method to simulated density maps, where the exact segmentation (or ground truth) is known, and rigorously evaluate the accuracy of the resulting segmentations.

Abstract Image

Abstract Image

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通过多尺度分割识别蛋白质纳米机器三维密度图中的组成部分
利用冷冻电子显微镜(cryo-EM)获得的密度图的分割是一项具有挑战性的任务,通常需要通过耗时的交互式方法来完成。分割的目的是识别密度图中与单个成分相对应的区域。我们提出了一种完成这项任务的多尺度分割方法,只需要很少的用户交互。该方法使用尺度空间的概念,通过将输入密度图与高斯滤波器卷积来创建尺度空间。高斯滤波器会使密度图变得平滑。高斯滤波器的标准偏差是可变的,较小的值对应较细的尺度,较大的值对应较粗的尺度。使用分水岭方法对不同尺度的每张地图进行分割,这种方法非常高效,完全自动,而且不需要指定种子点。在平滑过程中会丢失一些细节。通过使用较细尺度的分割,锐化过程会在最粗尺度的分割中重新引入细节。我们将该方法应用于已知精确分割(或地面实况)的模拟密度图,并严格评估所得到的分割结果的准确性。
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