Elettra-Sincrotrone Trieste, Basovizza, Trieste, Italy.
PLoS One. 2023 Nov 9;18(11):e0285057. doi: 10.1371/journal.pone.0285057. eCollection 2023.
Scanning microscopies and spectroscopies like X-ray Fluorescence (XRF), Scanning Transmission X-ray Microscopy (STXM), and Ptychography are of very high scientific importance as they can be employed in several research fields. Methodology and technology advances aim at analysing larger samples at better resolutions, improved sensitivities and higher acquisition speeds. The frontiers of those advances are in detectors, radiation sources, motors, but also in acquisition and analysis software together with general methodology improvements. We have recently introduced and fully implemented an intelligent scanning methodology based on compressive sensing, on a soft X-ray microscopy beamline. This demonstrated sparse low energy XRF scanning of dynamically chosen regions of interest in combination with STXM, yielding spectroimaging data in the megapixel-range and in shorter timeframes than were previously not feasible. This research has been further developed and has been applied to scientific applications in biology. The developments are mostly in the dynamic triggering decisional mechanism in order to incorporate modern Machine Learning (ML) but also in the suitable integration of the method in the control system, making it available for other beamlines and imaging techniques. On the applications front, the method was previously successfully used on different samples, from lung and ovarian human tissues to plant root sections. This manuscript introduces the latest methodology advances and demonstrates their applications in life and environmental sciences. Lastly, it highlights the auxiliary development of a mobile application, designed to assist the user in the selection of specific regions of interest in an easy way.
扫描显微镜和光谱学,如 X 射线荧光(XRF)、扫描透射 X 射线显微镜(STXM)和叠层成像术,具有非常重要的科学意义,因为它们可以应用于多个研究领域。方法和技术的进步旨在以更高的分辨率、更高的灵敏度和更快的采集速度分析更大的样本。这些进步的前沿在于探测器、辐射源、电机,以及采集和分析软件以及一般方法的改进。我们最近在软 X 射线显微镜光束线上引入并完全实现了一种基于压缩感知的智能扫描方法。这证明了动态选择感兴趣区域的稀疏低能 XRF 扫描与 STXM 相结合,可以在兆像素范围内并在以前不可行的更短时间内获得光谱成像数据。这项研究得到了进一步的发展,并已应用于生物学中的科学应用。这些发展主要集中在动态触发决策机制上,以便纳入现代机器学习(ML),以及在控制系统中适当集成该方法,使其可用于其他光束线和成像技术。在应用方面,该方法以前已成功应用于不同的样本,从人类肺部和卵巢组织到植物根部分。本文介绍了最新的方法学进展,并展示了它们在生命和环境科学中的应用。最后,它强调了一个移动应用程序的辅助开发,该应用程序旨在以简单的方式帮助用户选择特定的感兴趣区域。