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Implementation of an open source algorithm for particle recognition and morphological characterisation for microplastic analysis by means of Raman microspectroscopy

机译:通过拉曼光谱技术实现用于微粒识别的微粒识别和形态表征的开源算法的实现

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Microplastic (MP, i.e. synthetic polymer particles of 1 μm–5 mm) is not only a suspected environmental contaminant, but also a challenging target for chemical analysis. To analyse particularly very small MP particles, Raman microspectroscopy (RM) enables morphological characterization and chemical identification at the single particle level. To this end, the RM procedure consists of the three steps: particle detection (recognition of particles and their morphological characterization), RM measurements and spectra evaluation. To enable effective and unbiased particle detection on filter samples even when covered by a multitude of particles, we present the implementation of Otsu's algorithm and a watershed-called transformation available as open source code for ImageJ on a common Raman microscope. Otsu's algorithm is an automatic thresholding algorithm that splits pixels in two groups (bright and dark) by minimizing the between-class variance of the two groups. The additional watershed transformation finds the watersheds of particle agglomerations. We demonstrate the effectiveness of our implementation of these algorithms. A coloured microscopic picture is converted into a black and white (b/w) image. Indents (“neck”-positions) of this image are then used to separate agglomerated particles. This implementation was critically evaluated regarding the criteria accuracy (validity), reliability (precision) and sensitivity. The algorithm presented here (https://gitlab.lrz.de/raman-sem-iwc/mipran) allows for reliable detection of particles in a wide variety of particle characteristics (size, shape, colour and transparency) and illumination types (dark and bright field). It has the additional benefit that it is equally applicable to any method using image-based particle detection so that it can help in harmonizing MP research throughout the community.
机译:微塑料(MP,即1 µm–5 mm的合成聚合物颗粒)不仅是可疑的环境污染物,而且还是化学分析的具有挑战性的目标。为了分析特别小的MP颗粒,拉曼光谱(RM)可以在单个颗粒级别进行形态表征和化学鉴定。为此,RM过程包括三个步骤:颗粒检测(颗粒的识别及其形态表征),RM测量和光谱评估。为了即使在被多个粒子覆盖时也能对过滤器样本进行有效且无偏见的粒子检测,我们介绍了Otsu算法的实现以及一个分水岭式的转换方法,该方法可在普通拉曼显微镜上作为ImageJ的开源代码使用。 Otsu的算法是一种自动阈值算法,通过最小化两组之间的类间差异,将像素分为两组(亮和暗)。附加的分水岭变换找到了粒子团聚的分水岭。我们演示了实现这些算法的有效性。彩色的显微图片将转换为黑白(b / w)图像。然后使用该图像的凹痕(“颈部”位置)分离附聚的颗粒。关于标准准确性(有效性),可靠性(精确度)和敏感性,对该实施方案进行了严格的评估。此处提供的算法(https://gitlab.lrz.de/raman-sem-iwc/mipran)可以可靠地检测具有多种粒子特征(尺寸,形状,颜色和透明度)和照明类型(暗)的粒子和明亮的领域)。它的另一个好处是,它同样适用于使用基于图像的粒子检测的任何方法,因此可以帮助协调整个社区的MP研究。

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