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首页> 外文期刊>BMC Bioinformatics >AutoCryoPicker: an unsupervised learning approach for fully automated single particle picking in Cryo-EM images
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AutoCryoPicker: an unsupervised learning approach for fully automated single particle picking in Cryo-EM images

机译:Autocropicker:在Cryo-EM图像中完全自动化单粒子拣选的无监督学习方法

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An important task of macromolecular structure determination by cryo-electron microscopy (cryo-EM) is the identification of single particles in micrographs (particle picking). Due to the necessity of human involvement in the process, current particle picking techniques are time consuming and often result in many false positives and negatives. Adjusting the parameters to eliminate false positives often excludes true particles in certain orientations. The supervised machine learning (e.g. deep learning) methods for particle picking often need a large training dataset, which requires extensive manual annotation. Other reference-dependent methods rely on low-resolution templates for particle detection, matching and picking, and therefore, are not fully automated. These issues motivate us to develop a fully automated, unbiased framework for particle picking. We design a fully automated, unsupervised approach for single particle picking in cryo-EM micrographs. Our approach consists of three stages: image preprocessing, particle clustering, and particle picking. The image preprocessing is based on multiple techniques including: image averaging, normalization, cryo-EM image contrast enhancement correction (CEC), histogram equalization, restoration, adaptive histogram equalization, guided image filtering, and morphological operations. Image preprocessing significantly improves the quality of original cryo-EM images. Our particle clustering method is based on an intensity distribution model which is much faster and more accurate than traditional K-means and Fuzzy C-Means (FCM) algorithms for single particle clustering. Our particle picking method, based on image cleaning and shape detection with a modified Circular Hough Transform algorithm, effectively detects the shape and the center of each particle and creates a bounding box encapsulating the particles. AutoCryoPicker can automatically and effectively recognize particle-like objects from noisy cryo-EM micrographs without the need of labeled training data or human intervention making it a useful tool for cryo-EM protein structure determination.
机译:冷冻电子显微镜(Cryo-EM)的大分子结构测定的重要任务是鉴定微粒子(颗粒拣选)。由于人类参与过程中的必要性,目前的粒子拣选技术是耗时的,并且经常导致许多误报和底片。调整消除误报的参数通常在某些方向上排除真实粒子。监督机器学习(例如,深度学习)粒子拣选方法通常需要大型训练数据集,这需要广泛的手动注释。其他参考依赖性方法依赖于用于粒子检测,匹配和拣选的低分辨率模板,因此没有完全自动化。这些问题使我们能够开发一个全自动,无偏见的粒子拣选框架。我们设计了在Cryo-EM显微照片中的单粒子挑选的全自动,无人监督的方法。我们的方法包括三个阶段:图像预处理,粒子聚类和颗粒拣选。图像预处理基于多种技术,包括:图像平均,归一化,Cryo-EM图像对比度增强校正(CEC),直方图均衡,恢复,自适应直方图均衡,引导图像滤波和形态操作。图像预处理显着提高了原始Cryo-EM图像的质量。我们的粒子聚类方法基于强度分布模型,其比传统的K-means和模糊C-mean(FCM)算法更快,更准确地用于单粒子聚类。我们的颗粒拣选方法基于通过改进的圆形霍夫转换算法的图像清洁和形状检测,有效地检测每个颗粒的形状和中心,并产生封装颗粒的边界箱。自动频道可以自动和有效地从嘈杂的Cryo-EM显微照片中识别粒子状物体,而无需标记为训练数据或人为干预,使其成为Cryo-EM蛋白质结构测定的有用工具。

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