Stine Jared S, Aziere Nicolas, Harper Bryan J, Harper Stacey L
School of Chemical, Biological and Environmental Engineering, Oregon State University, Corvallis, OR 97331, USA.
Department of Environmental and Molecular Toxicology, Oregon State University, Corvallis, OR 97331, USA.
Micromachines (Basel). 2023 Oct 5;14(10):1903. doi: 10.3390/mi14101903.
As plastic production continues to increase globally, plastic waste accumulates and degrades into smaller plastic particles. Through chemical and biological processes, nanoscale plastic particles (nanoplastics) are formed and are expected to exist in quantities of several orders of magnitude greater than those found for microplastics. Due to their small size and low mass, nanoplastics remain challenging to detect in the environment using most standard analytical methods. The goal of this research is to adapt existing tools to address the analytical challenges posed by the identification of nanoplastics. Given the unique and well-documented properties of anthropogenic plastics, we hypothesized that nanoplastics could be differentiated by polymer type using spatiotemporal deformation data collected through irradiation with scanning electron microscopy (SEM). We selected polyvinyl chloride (PVC), polyethylene terephthalate (PET), and high-density polyethylene (HDPE) to capture a range of thermodynamic properties and molecular structures encompassed by commercially available plastics. Pristine samples of each polymer type were chosen and individually milled to generate micro and nanoscale particles for SEM analysis. To test the hypothesis that polymers could be differentiated from other constituents in complex samples, the polymers were compared against proxy materials common in environmental media, i.e., algae, kaolinite clay, and nanocellulose. Samples for SEM analysis were prepared uncoated to enable observation of polymer deformation under set electron beam parameters. For each sample type, particles approximately 1 µm in diameter were chosen, and videos of particle deformation were recorded and studied. Blinded samples were also prepared with mixtures of the aforementioned materials to test the viability of this method for identifying near-nanoscale plastic particles in environmental media. Based on the evidence collected, deformation patterns between plastic particles and particles present in common environmental media show significant differences. A computer vision algorithm was also developed and tested against manual measurements to improve the usefulness and efficiency of this method further.
随着全球塑料产量持续增加,塑料垃圾不断累积并降解为更小的塑料颗粒。通过化学和生物过程,形成了纳米级塑料颗粒(纳米塑料),预计其存在量比微塑料高出几个数量级。由于纳米塑料尺寸小、质量轻,使用大多数标准分析方法在环境中检测它们仍然具有挑战性。本研究的目标是调整现有工具,以应对纳米塑料识别所带来的分析挑战。鉴于人为塑料具有独特且有充分记录的特性,我们假设可以利用通过扫描电子显微镜(SEM)辐照收集的时空变形数据,按聚合物类型区分纳米塑料。我们选择了聚氯乙烯(PVC)、聚对苯二甲酸乙二酯(PET)和高密度聚乙烯(HDPE),以涵盖一系列市售塑料所具有的热力学性质和分子结构。选择每种聚合物类型的原始样品并分别研磨,以生成用于SEM分析的微米级和纳米级颗粒。为了检验聚合物能否与复杂样品中的其他成分区分开来这一假设,将这些聚合物与环境介质中常见的替代材料(即藻类、高岭土和纳米纤维素)进行了比较。用于SEM分析的样品未进行涂层处理,以便在设定的电子束参数下观察聚合物的变形情况。对于每种样品类型,选择直径约为1 µm的颗粒,并记录和研究颗粒变形的视频。还制备了含有上述材料混合物的盲样,以测试该方法在识别环境介质中近纳米级塑料颗粒方面的可行性。基于收集到的证据,塑料颗粒与常见环境介质中存在的颗粒之间的变形模式存在显著差异。还开发了一种计算机视觉算法,并与人工测量进行对比测试,以进一步提高该方法的实用性和效率。