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首页> 外文期刊>Expert systems with applications >Detecting anomalies in X-ray diffraction images using convolutional neural networks
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Detecting anomalies in X-ray diffraction images using convolutional neural networks

机译:使用卷积神经网络检测X射线衍射图像中的异常

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摘要

Our understanding of life is based upon the interpretation of macromolecular structures and their dynamics. Almost 90% of currently known macromolecular models originated from electron density maps constructed using X-ray diffraction images. Even though diffraction images are critical for structure determination, due to their vast amounts and noisy, non-intuitive nature, their quality is rarely inspected. In this paper, we use recent advances in machine learning to automatically detect seven types of anomalies in X-ray diffraction images. For this purpose, we utilize a novel X-ray beam center detection algorithm, propose three different image representations, and compare the predictive performance of general-purpose classifiers and deep convolutional neural networks (CNNs). In benchmark tests on a set of 6,311 X-ray diffraction images, the proposed CNN achieved between 87% and 99% accuracy depending on the type of anomaly. Experimental results show that the proposed anomaly detection system can be considered suitable for early detection of sub-optimal data collection conditions and malfunctions at X-ray experimental stations.
机译:我们对生活的理解是基于大分子结构及其动态的解释。近90%的当前已知的大分子模型源自使用X射线衍射图像构造的电子密度图。尽管衍射图像对于结构确定至关重要,但由于它们的大量和嘈杂,不良性,很少检查它们的质量。在本文中,我们在机器学习中使用最近的进步自动检测X射线衍射图像中的七种类型的异常。为此目的,我们利用了一种新颖的X射线光束中心检测算法,提出了三种不同的图像表示,并比较通用分类器和深卷积神经网络(CNNS)的预测性能。在一组6,311 X射线衍射图像上的基准测试中,所提出的CNN取决于异常类型的精度为87%至99%。实验结果表明,所提出的异常检测系统可被认为适用于早期检测X射线实验站的次优数据收集条件和故障。

著录项

  • 来源
    《Expert systems with applications》 |2021年第7期|114740.1-114740.11|共11页
  • 作者单位

    Institute of Computing Science Poznan University of Technology ul. Piotrowo 2 60-965 Poznan Poland;

    Institute of Computing Science Poznan University of Technology ul. Piotrowo 2 60-965 Poznan Poland;

    Institute of Computing Science Poznan University of Technology ul. Piotrowo 2 60-965 Poznan Poland|Center for Biocrystallographic Research Institute of Bioorganic Chemistry Polish Academy of Sciences Poznan 61-714 Poland|Center for Artificial Intelligence and Machine Learning Poznan University of Technology ul. Piotrowo 2 60-965 Poznan Poland|Department of Molecular Physiology and Biological Physics University of Virginia Charlottesville VA 22901 USA;

    Department of Molecular Physiology and Biological Physics University of Virginia Charlottesville VA 22901 USA;

    Department of Molecular Physiology and Biological Physics University of Virginia Charlottesville VA 22901 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Convolutional neural network; Crystallography; Image recognition; Multi-label classification; X-ray diffraction image;

    机译:卷积神经网络;晶体学;图像识别;多标签分类;X射线衍射图像;

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