ROI-Finder: machine learning to guide region-of-interest scanning for X-ray fluorescence microscopy.

IF 2.4 3区 物理与天体物理 Q2 INSTRUMENTS & INSTRUMENTATION
M A Z Chowdhury, K Ok, Y Luo, Z Liu, S Chen, T V O'Halloran, R Kettimuthu, A Tekawade
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引用次数: 0

Abstract

The microscopy research at the Bionanoprobe (currently at beamline 9-ID and later 2-ID after APS-U) of Argonne National Laboratory focuses on applying synchrotron X-ray fluorescence (XRF) techniques to obtain trace elemental mappings of cryogenic biological samples to gain insights about their role in critical biological activities. The elemental mappings and the morphological aspects of the biological samples, in this instance, the bacterium Escherichia coli (E. Coli), also serve as label-free biological fingerprints to identify E. coli cells that have been treated differently. The key limitations of achieving good identification performance are the extraction of cells from raw XRF measurements via binary conversion, definition of features, noise floor and proportion of cells treated differently in the measurement. Automating cell extraction from raw XRF measurements across different types of chemical treatment and the implementation of machine-learning models to distinguish cells from the background and their differing treatments are described. Principal components are calculated from domain knowledge specific features and clustered to distinguish healthy and poisoned cells from the background without manual annotation. The cells are ranked via fuzzy clustering to recommend regions of interest for automated experimentation. The effects of dwell time and the amount of data required on the usability of the software are also discussed.

ROI-Finder:机器学习引导感兴趣的区域扫描x射线荧光显微镜。
阿贡国家实验室的Bionanoprobe(目前在光束线9-ID和APS-U后的2-ID)的显微镜研究重点是应用同步加速器x射线荧光(XRF)技术获得低温生物样品的痕量元素映射,以深入了解它们在关键生物活动中的作用。元素映射和形态方面的生物样品,在这种情况下,细菌大肠杆菌(大肠杆菌),也作为无标记的生物指纹,以识别大肠杆菌细胞已处理不同。实现良好识别性能的关键限制是通过二进制转换从原始XRF测量中提取细胞,特征定义,噪声底限和测量中处理不同细胞的比例。描述了从不同类型的化学处理的原始XRF测量中自动提取细胞,以及机器学习模型的实现,以区分背景和不同处理的细胞。从领域知识的特定特征中计算主成分并聚类以区分健康细胞和中毒细胞,无需人工注释。通过模糊聚类对细胞进行排序,推荐感兴趣的区域进行自动化实验。讨论了停留时间和所需数据量对软件可用性的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.10
自引率
12.00%
发文量
289
审稿时长
4-8 weeks
期刊介绍: Synchrotron radiation research is rapidly expanding with many new sources of radiation being created globally. Synchrotron radiation plays a leading role in pure science and in emerging technologies. The Journal of Synchrotron Radiation provides comprehensive coverage of the entire field of synchrotron radiation and free-electron laser research including instrumentation, theory, computing and scientific applications in areas such as biology, nanoscience and materials science. Rapid publication ensures an up-to-date information resource for scientists and engineers in the field.
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