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Real-time and decision taking selection of single-particles during automated cryo-EM sessions based on neuro-fuzzy method

机译:基于神经模糊方法的自动低温电磁场会话中实时实时决策决策

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Cryo-electron microscopy (cryo-EM) is a three-dimensional (3D) averaging technique that makes use of two-dimensional (2D) images of biological macromolecules preserved in a thin layer of vitreous ice. Recent advances in the field have facilitated the evolution of cryo-EM towards atomic resolution, and the technique provides 3D maps with detailed description of biological macromolecules. Data acquisition at the transmission electron microscope (TEM) is the first crucial step during the single-particle analysis workflow in cryo-EM. In order to exploit the potential of this structural technique for atomic or near atomic resolution, the initial collection must allow recording of large datasets and, hence, requires operating the TEM in automated mode. The quality of the acquired dataset relies, however, on the expertise of researchers and unsupervised operations might result in low data quality. This work presents the first expert system integrated in a novel scheme to automate cryo-EM data acquisition in a TEM. This development takes advantage of fuzzy logic systems to integrate the working mode of an expert in a linguistic manner and to learn from acquired data through an adaptive network. A new method based on different image-processing algorithms and on adaptive neuro-fuzzy inference systems (ANFIS) identifies, in an unsupervised manner, the single-particles present in cryo-EM images during the automated acquisition on a TEM. This single-particle identification system is integrated in a new intelligent control scheme to automate cryo-EM data acquisition. A classic fuzzy inference system (FIS) was programmed to make appropriate decisions during the session. The designed system can be trained for a specific sample and allows for unsupervised but efficient data collection imitating the working mode of an experienced microscopist. (C) 2016 Elsevier Ltd. All rights reserved.
机译:冷冻电子显微镜(cryo-EM)是一种三维(3D)平均技术,它利用保存在玻璃冰薄层中的生物大分子的二维(2D)图像。该领域的最新进展促进了cryo-EM向原子分辨率的发展,并且该技术提供了带有生物大分子详细描述的3D图。在低温EM中的单颗粒分析工作流程中,透射电子显微镜(TEM)的数据采集是关键的第一步。为了利用此结构技术在原子或接近原子分辨率上的潜力,初始收集必须允许记录大型数据集,因此需要以自动模式操作TEM。但是,所获取数据集的质量取决于研究人员的专业知识,无监督的操作可能会导致数据质量低下。这项工作介绍了第一个集成在新颖方案中的专家系统,该系统可以在TEM中自动进行冷冻电磁数据采集。这种发展利用模糊逻辑系统的优势,以语言方式集成专家的工作模式,并通过自适应网络从获取的数据中学习。一种基于不同图像处理算法和自适应神经模糊推理系统(ANFIS)的新方法,以无监督的方式识别在TEM上自动采集过程中在冷冻EM图像中存在的单个粒子。该单颗粒识别系统集成在新的智能控制方案中,可自动进行低温电磁数据采集。对经典的模糊推理系统(FIS)进行了编程,可以在会议期间做出适当的决策。可以针对特定样品对设计的系统进行培训,并允许无监督但高效的数据收集,模仿有经验的显微镜专家的工作模式。 (C)2016 Elsevier Ltd.保留所有权利。

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