窄束电子衍射数据分类的机器学习。

IF 1.9 4区 材料科学 Q3 CHEMISTRY, MULTIDISCIPLINARY
Senik Matinyan, Burak Demir, Pavel Filipcik, Jan Pieter Abrahams, Eric van Genderen
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引用次数: 0

摘要

作为x射线晶体学和单粒子冷冻电子显微镜的替代方法,单分子电子衍射具有更好的信噪比和提高蛋白质模型分辨率的潜力。该技术需要收集大量的衍射图案,这可能导致数据收集管道的堵塞。然而,只有一小部分衍射数据对结构测定有用,因为用窄电子束击中感兴趣的蛋白质的机会可能很小。这需要新颖的概念来快速和准确地选择数据。为此,实现并测试了一套用于衍射数据分类的机器学习算法。提出的预处理和分析工作流程有效地区分了无定形冰和碳支持,提供了基于机器学习的感兴趣位置识别原理的证明。该方法利用了窄电子束衍射模式的固有特性,可以扩展到蛋白质数据分类和特征提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning for classifying narrow-beam electron diffraction data.

Machine learning for classifying narrow-beam electron diffraction data.

Machine learning for classifying narrow-beam electron diffraction data.

Machine learning for classifying narrow-beam electron diffraction data.

As an alternative approach to X-ray crystallography and single-particle cryo-electron microscopy, single-molecule electron diffraction has a better signal-to-noise ratio and the potential to increase the resolution of protein models. This technology requires collection of numerous diffraction patterns, which can lead to congestion of data collection pipelines. However, only a minority of the diffraction data are useful for structure determination because the chances of hitting a protein of interest with a narrow electron beam may be small. This necessitates novel concepts for quick and accurate data selection. For this purpose, a set of machine learning algorithms for diffraction data classification has been implemented and tested. The proposed pre-processing and analysis workflow efficiently distinguished between amorphous ice and carbon support, providing proof of the principle of machine learning based identification of positions of interest. While limited in its current context, this approach exploits inherent characteristics of narrow electron beam diffraction patterns and can be extended for protein data classification and feature extraction.

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来源期刊
Acta Crystallographica Section A: Foundations and Advances
Acta Crystallographica Section A: Foundations and Advances CHEMISTRY, MULTIDISCIPLINARYCRYSTALLOGRAPH-CRYSTALLOGRAPHY
CiteScore
2.60
自引率
11.10%
发文量
419
期刊介绍: Acta Crystallographica Section A: Foundations and Advances publishes articles reporting advances in the theory and practice of all areas of crystallography in the broadest sense. As well as traditional crystallography, this includes nanocrystals, metacrystals, amorphous materials, quasicrystals, synchrotron and XFEL studies, coherent scattering, diffraction imaging, time-resolved studies and the structure of strain and defects in materials. The journal has two parts, a rapid-publication Advances section and the traditional Foundations section. Articles for the Advances section are of particularly high value and impact. They receive expedited treatment and may be highlighted by an accompanying scientific commentary article and a press release. Further details are given in the November 2013 Editorial. The central themes of the journal are, on the one hand, experimental and theoretical studies of the properties and arrangements of atoms, ions and molecules in condensed matter, periodic, quasiperiodic or amorphous, ideal or real, and, on the other, the theoretical and experimental aspects of the various methods to determine these properties and arrangements.
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