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首页> 外文期刊>Mikrochimica Acta: An International Journal for Physical and Chemical Methods of Analysis >Computer assisted detection and quantification of single adsorbing nanoparticles by differential surface plasmon microscopy
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Computer assisted detection and quantification of single adsorbing nanoparticles by differential surface plasmon microscopy

机译:计算机辅助检测和定量的单个吸附纳米粒子的差示表面等离子体显微镜

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摘要

Sensitive detection of engineered nanoparticles (NPs) in air and in liquid samples is an important task and still a major challenge in analytical chemistry. Recent work demonstrated that it can be performed using surface plasmon microscopy (SPM) where binding of single NPs to a surface leads to the formation of characteristic patterns in differential SPM images. However, these patterns have to be discriminated from a noisy background. Computer-assisted recognition of nanoparticles offers a solution but requires the development of respective tools for data analysis. Hereby a numerical method for automated detection and characterization of images of single adsorbing NPs in SPM image sequences is presented. The detection accuracy of the method was validated using computer generated images and manual counting. The method was applied for detecting and imaging of gold and silver NPs adsorbing from aqueous dispersions and for soot and NaCl NPs adsorbing from aerosols. The determined adsorption rate was in range 0.1-40 NPs per (s mm(2)) and linearly dependent on the concentration of nanoparticles. Depending on the type of NPs and signal to noise ratio, a probability of recognition of 90-95 % can be achieved.
机译:空气和液体样品中工程纳米颗粒(NPs)的灵敏检测是一项重要任务,也是分析化学领域的主要挑战。最近的工作表明,可以使用表面等离子体显微镜(SPM)来执行此操作,其中单个NP与表面的结合会导致在差分SPM图像中形成特征图案。但是,必须将这些模式与嘈杂的背景区分开。纳米颗粒的计算机辅助识别提供了一种解决方案,但需要开发用于数据分析的相应工具。因此,提出了一种用于自动检测和表征SPM图像序列中单个吸附NP图像的数值方法。使用计算机生成的图像和手动计数验证了该方法的检测准确性。该方法用于检测和成像从水分散体中吸附的金和银NPs,以及从气溶胶中吸附的烟灰和NaCl NPs。所确定的吸附速率为0.1-40 NPs /(s mm(2)),并且线性取决于纳米颗粒的浓度。根据NP的类型和信噪比,可以实现90-95%的识别概率。

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