Fuzzy inference system as decision-maker to automate cryo-EM data acquisition on a transmission electron microscope

D. Gil-Carton, M. Valle, A. Garrido, I. G. Hernandez, Iñigo Miguel
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Abstract

Cryo-electron microscopy (Cryo-EM) data acquisition on modern transmission electron microscopes (TEM) is the first step during the single-particle analysis workflow. Importantly, the demand for large number of two dimensional images requires reliable and efficient automation of image data collection. We present a novel control scheme for automated cryo-EM data collection that monitors the quality of the data in real time and greatly improves the final efficiency of the acquisition. We propose the use of a fuzzy inference system (FIS) model to take decisions during the automated and sequential selection of hole areas in prefabricated EM grids. A new method based on adaptive neuro-fuzzy inference system (ANFIS) models was successfully trained to classify previously detected single particles from acquired images. In the methodology FIS and ANFIS are used to model expert behavior. The method is validated in real-time cryo-EM data acquisition for single-particle approach of bacterial ribosomes.
模糊推理系统作为决策系统实现透射电镜低温电镜数据采集自动化
在现代透射电子显微镜(TEM)上的低温电子显微镜(Cryo-EM)数据采集是单粒子分析工作流程的第一步。重要的是,对大量二维图像的需求需要可靠、高效的图像数据采集自动化。我们提出了一种新的冷冻电镜数据自动采集控制方案,实时监控数据质量,大大提高了采集的最终效率。我们提出使用模糊推理系统(FIS)模型在预制电磁网格中自动和顺序选择孔区域的过程中做出决策。成功地训练了一种基于自适应神经模糊推理系统(ANFIS)模型的新方法,用于从获取的图像中分类先前检测到的单个颗粒。在方法中,使用FIS和ANFIS对专家行为进行建模。该方法在细菌核糖体单颗粒方法的实时冷冻电镜数据采集中得到验证。
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