Jasmine Eshun, Natalie C Lamar, Sinan G Aksoy, Sarah Akers, Benjamin Garcia, Heather Cunningham, George Chin, Jenna A Bilbrey
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引用次数: 0
Abstract
Automated particle analysis (APA) provides a vast amount of compositional data via energy-dispersive X-ray spectroscopy along with size and shape data via scanning electron microscopy for individual particles in a sample. In many instances, APA data are leveraged to support identification of the source of a sample based on the detection of particles of a specific composition. Often, the particles that provide context make up a minuscule portion of the sample. Additionally, the interpretation of complex samples can be difficult due to the diversity of compositions both in the mixture and within a particle. In this work, we demonstrate a method to compute and cluster similarity graphs that describe inter-particle relationships within a sample using a multi-modal few-shot learning neural network. As a proof-of-concept, we show that samples known to have been exposed to gunshot residue can be distinguished from samples occasionally mistaken for gunshot residue. Our workflow builds upon standard APA techniques and data processing methods to unveil additional information in a readily interpretable and quantitatively comparable format.
自动颗粒分析(APA)通过能量色散 X 射线光谱提供大量成分数据,并通过扫描电子显微镜提供样品中单个颗粒的尺寸和形状数据。在许多情况下,APA 数据可用于根据特定成分颗粒的检测结果来识别样品来源。通常情况下,提供背景信息的颗粒只占样品的极小部分。此外,由于混合物和颗粒内部成分的多样性,对复杂样品的解释也很困难。在这项工作中,我们展示了一种计算和聚类相似性图谱的方法,该图谱使用多模态少量学习神经网络来描述样本中粒子间的关系。作为概念验证,我们展示了已知接触过枪击残留物的样本可以与偶尔被误认为枪击残留物的样本区分开来。我们的工作流程以标准 APA 技术和数据处理方法为基础,以易于解释和定量比较的形式揭示更多信息。
期刊介绍:
Microscopy and Microanalysis publishes original research papers in the fields of microscopy, imaging, and compositional analysis. This distinguished international forum is intended for microscopists in both biology and materials science. The journal provides significant articles that describe new and existing techniques and instrumentation, as well as the applications of these to the imaging and analysis of microstructure. Microscopy and Microanalysis also includes review articles, letters to the editor, and book reviews.