Department of Analytical Chemistry, Institute of Chemistry, University of Campinas (UNICAMP), PO BOX 6154, CEP 13083-970, Campinas, SP, Brazil.
Environ Pollut. 2021 Sep 15;285:117251. doi: 10.1016/j.envpol.2021.117251. Epub 2021 Apr 28.
Microplastic pollution is a global concern theme, and there is still the need for less laborious and faster analytical methods aiming at microplastics detection. This article describes a high throughput screening method based on near-infrared hyperspectral imaging (HSI-NIR) to identify microplastics in beach sand automatically with minimum sample preparation. The method operates directly in the entire sample or on its retained fraction (150 μm-5 mm) after sieving. Small colorless microplastics (<600 μm) that would probably be imperceptible as a microplastic by visual inspection, or missed during manual pick up, can be easily detected. No spectroscopic subsampling was performed due to the high-speed analysis of line-scan instrumentation, allowing multiple microplastics to be assessed simultaneously (video available). This characteristic is an advantage over conventional infrared (IR) spectrometers. A 75 cm scan area was probed in less than 1 min at a pixel size of 156 × 156 μm. An in-house comprehensive spectral dataset, including weathered microplastics, was used to build multivariate supervised soft independent modelling of class analogy (SIMCA) classification models. The chemometric models were validated for hundreds of microplastics (primary and secondary) collected in the environment. The effect of particle size, color and weathering are discussed. Models' sensitivity and specificity for polyethylene (PE), polypropylene (PP), polyamide-6 (PA), polyethylene terephthalate (PET) and polystyrene (PS) were over 99% at the defined statistical threshold. The method was applied to a sand sample, identifying 803 particles without prior visual sorting, showing automatic identification was robust and reliable even for weathered microplastics analyzed together with other matrix constituents. The HSI-NIR-SIMCA described is also applicable for microplastics extracted from other matrices after sample preparation. The HSI-NIR principals were compared to other common techniques used to microplastic chemical characterization. The results show the potential to use HSI-NIR combined with classification models as a comprehensive microplastic-type characterization screening.
微塑料污染是一个全球性关注的主题,仍然需要开发更省力、更快的分析方法来检测微塑料。本文描述了一种基于近红外高光谱成像(HSI-NIR)的高通量筛选方法,该方法可在最小的样品制备下自动识别海滩沙中的微塑料。该方法可直接在整个样品或经筛选后保留的部分(150μm-5mm)上运行。即使通过目视检查可能无法察觉的小的无色微塑料(<600μm),或者在手动采集时可能会错过的微塑料,也可以很容易地被检测到。由于线扫描仪器的高速分析,无需进行光谱子采样,从而可以同时评估多个微塑料(提供视频)。这一特点优于传统的红外(IR)光谱仪。在 1 分钟内以 156μm×156μm 的像素大小探测 75cm 的扫描区域。使用包括风化微塑料在内的内部综合光谱数据集,建立多元监督软独立建模分类分析(SIMCA)分类模型。化学计量模型针对在环境中收集的数百种微塑料(原生和次生)进行了验证。讨论了粒径、颜色和风化的影响。在定义的统计阈值下,PE、PP、PA、PET 和 PS 的模型灵敏度和特异性均超过 99%。该方法应用于沙样,在无需预先目视分类的情况下识别了 803 个颗粒,表明即使在与其他基质成分一起分析的风化微塑料的情况下,自动识别也是稳健和可靠的。描述的 HSI-NIR-SIMCA 也适用于样品制备后从其他基质中提取的微塑料。比较了 HSI-NIR 原理与用于微塑料化学特征化的其他常用技术。结果表明,将 HSI-NIR 与分类模型相结合作为一种综合的微塑料类型特征化筛选具有潜力。