Gumbiowski Nina, Loza Kateryna, Heggen Marc, Epple Matthias
Inorganic Chemistry, Center for Nanointegration Duisburg-Essen (CENIDE), University of Duisburg-Essen 45117 Essen Germany
Ernst-Ruska Centre for Microscopy and Spectroscopy with Electrons, Forschungszentrum Jülich GmbH 52428 Jülich Germany.
Nanoscale Adv. 2023 Mar 23;5(8):2318-2326. doi: 10.1039/d2na00781a. eCollection 2023 Apr 11.
Metallic nanoparticles were analysed with respect to size and shape by a machine learning approach. This involved a separation of particles from the background (segmentation), a separation of overlapping particles, and the identification of individual particles. An algorithm to separate overlapping particles, based on ultimate erosion of convex shapes (UECS), was implemented. Finally, particle properties like size, circularity, equivalent diameter, and Feret diameter were computed for each particle of the whole particle population. Thus, particle size distributions can be easily created based on the various parameters. However, strongly overlapping particles are difficult and sometimes impossible to separate because of an unknown shape of a particle that is partially lying in the shadow of another particle. The program is able to extract information from a sequence of images of the same sample, thereby increasing the number of analysed nanoparticles to several thousands. The machine learning approach is well-suited to identify particles at only limited particle-to-background contrast as is demonstrated for ultrasmall gold nanoparticles (2 nm).
采用机器学习方法对金属纳米颗粒的尺寸和形状进行了分析。这包括从背景中分离颗粒(分割)、分离重叠颗粒以及识别单个颗粒。实现了一种基于凸形最终腐蚀(UECS)的分离重叠颗粒的算法。最后,为整个颗粒群体中的每个颗粒计算诸如尺寸、圆形度、等效直径和费雷特直径等颗粒特性。因此,可以基于各种参数轻松创建颗粒尺寸分布。然而,由于部分位于另一个颗粒阴影中的颗粒形状未知,强重叠颗粒很难甚至有时无法分离。该程序能够从同一样品的一系列图像中提取信息,从而将分析的纳米颗粒数量增加到数千个。如超小金纳米颗粒(2纳米)所示,机器学习方法非常适合在颗粒与背景对比度有限的情况下识别颗粒。