Ye Haoxin, Jiang Shiyu, Yan Yan, Zhao Bin, Grant Edward R, Kitts David D, Yada Rickey Y, Pratap-Singh Anubhav, Baldelli Alberto, Yang Tianxi
Food, Nutrition and Health, Faculty of Land and Food Systems, The University of British Columbia, Vancouver V6T 1Z4, Canada.
Department of Computer Science, Johns Hopkins University, Baltimore, Maryland 21218, United States.
ACS Nano. 2024 Sep 16. doi: 10.1021/acsnano.4c08316.
Increasing accumulation of nanoplastics across ecosystems poses a significant threat to both terrestrial and aquatic life. Surface-enhanced Raman scattering (SERS) is an emerging technique used for nanoplastics detection. However, the identification and classification of nanoplastics using SERS faces challenges regarding sensitivity and accuracy as nanoplastics are sparsely dispersed in the environment. Metal-phenolic networks (MPNs) have the potential to rapidly concentrate and separate various types and sizes of nanoplastics. SERS combined with machine learning may improve prediction accuracy. Herein, we report the integration of MPNs-mediated separation with machine learning-aided SERS methods for the accurate classification and high-precision quantification of nanoplastics, which is tailored to include the complete region of characteristic peaks across diverse nanoplastics in contrast to the traditional manual analysis of SERS spectra on a singular characteristic peak. Our customized machine learning system (e.g., outlier detection, classification, quantification) allows for the identification of detectable nanoplastics (accuracy 81.84%), accurate classification (accuracy > 97%), and sensitive quantification of various types of nanoplastics (polystyrene (PS), poly(methyl methacrylate) (PMMA), polyethylene (PE), and poly(lactic acid) (PLA)) down to ultralow concentrations (0.1 ppm) as well as accurate classification (accuracy > 92%) of nanoplastic mixtures at a subppm level. The effectiveness of this approach is substantiated by its ability to discern between different nanoplastic mixtures and detect nanoplastic samples in natural water systems.
纳米塑料在生态系统中的不断积累对陆地和水生生物都构成了重大威胁。表面增强拉曼散射(SERS)是一种用于纳米塑料检测的新兴技术。然而,由于纳米塑料在环境中分散稀疏,使用SERS对纳米塑料进行识别和分类在灵敏度和准确性方面面临挑战。金属-酚网络(MPN)有潜力快速浓缩和分离各种类型和尺寸的纳米塑料。SERS与机器学习相结合可能会提高预测准确性。在此,我们报告了将MPN介导的分离与机器学习辅助的SERS方法相结合,用于纳米塑料的准确分类和高精度定量,该方法经过定制,与传统的基于单个特征峰对SERS光谱进行手动分析相比,涵盖了不同纳米塑料特征峰的完整区域。我们定制的机器学习系统(例如,异常值检测、分类、定量)能够识别可检测的纳米塑料(准确率81.84%)、准确分类(准确率>97%)以及对各种类型的纳米塑料(聚苯乙烯(PS)、聚甲基丙烯酸甲酯(PMMA)、聚乙烯(PE)和聚乳酸(PLA))进行灵敏定量,最低检测限可达超低浓度(0.1 ppm),同时对亚ppm水平的纳米塑料混合物进行准确分类(准确率>92%)。这种方法的有效性通过其区分不同纳米塑料混合物以及检测天然水系统中纳米塑料样品的能力得到了证实。