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Deep Consensus, a deep learning-based approach for particle pruning in cryo-electron microscopy

机译:深度共识,一种基于深度学习的冷冻电子显微镜中粒子修剪方法

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Single-particle cryo-electron microscopy (cryo-EM) has recently become a mainstream technique for the structural determination of macromolecules. Typical cryo-EM workflows collect hundreds of thousands of single-particle projections from thousands of micrographs using particle-picking algorithms. However, the number of false positives selected by these algorithms is large, so that a number of different `cleaning steps' are necessary to decrease the false-positive ratio. Most commonly employed techniques for the pruning of false-positive particles are time-consuming and require user intervention. In order to overcome these limitations, a deep learning-based algorithm named Deep Consensus is presented in this work. Deep Consensus works by computing a smart consensus over the output of different particle-picking algorithms, resulting in a set of particles with a lower false-positive ratio than the initial set obtained by the pickers. Deep Consensus is based on a deep convolutional neural network that is trained on a semi-automatically generated data set. The performance of Deep Consensus has been assessed on two well known experimental data sets, virtually eliminating user intervention for pruning, and enhances the reproducibility and objectivity of the whole process while achieving precision and recall figures above 90%.
机译:单粒子低温电子显微镜(cryo-EM)最近已成为确定大分子结构的主流技术。典型的cryo-EM工作流程使用粒子拾取算法从数千张显微照片中收集了数十万个单粒子投影。然而,由这些算法选择的假阳性的数目很大,因此需要许多不同的“清洁步骤”以降低假阳性比率。修剪假阳性颗粒的最常用技术很耗时,需要用户干预。为了克服这些限制,本文提出了一种基于深度学习的算法,称为深度共识。深度共识通过对不同粒子拾取算法的输出计算一个智能共识来工作,从而导致一组粒子的假阳性比率低于选择器获得的初始集合。深度共识基于深度卷积神经网络,该网络在半自动生成的数据集上进行训练。 《深度共识》的性能已通过两个众所周知的实验数据集进行了评估,实际上消除了用户对修剪的干预,并提高了整个过程的可重复性和客观性,同时实现了90%以上的精度和召回率。

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