Liu Yinuo, Huo Zhengting, Huang Mingyue, Yang Renjie, Dong Guimei, Yu Yaping, Lin Xiaohui, Liang Hao, Wang Bin
College of Engineering and Technology, Tianjin Agricultural University, Tianjin 300392, China.
College of Artificial Intelligence, Nankai University, Tianjin 300350, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2025 Mar 15;329:125617. doi: 10.1016/j.saa.2024.125617. Epub 2024 Dec 20.
The main objective of this study was to evaluate the potential of near infrared (NIR) spectroscopy and machine learning in detecting microplastics (MPs) in chicken feed. The application of machine learning techniques in building optimal classification models for MPs-contaminated chicken feeds was explored. 80 chicken feed samples with non-contaminated and 240 MPs-contaminated chicken feed samples including polypropylene (PP), polyvinyl chloride (PVC), and polyethylene terephthalate (PET) were prepared, and the NIR diffuse reflectance spectra of all the samples were collected. NIR spectral properties of chicken feeds, three MPs of PP, PVC and PET, MPs-contaminated chicken feeds were firstly investigated, and principal component analysis was carried out to reveal the effect of MPs on spectra of chicken feed. Moreover, the raw spectral data were pre-processed by multiplicative scattering correction (MSC) and standard normal variate (SNV), and the characteristic variables were selected using the competitive adaptive re-weighted sampling (CARS) algorithm and the successive projections algorithm (SPA), respectively. On this basis, four machine learning methods, namely partial least squares discriminant analysis (PLSDA), back propagation neural network (BPNN), support vector machine (SVM) and random forest (RF), were used to establish discriminant models for MPs-contaminated chicken feed, respectively. The overall results indicated that SPA was a powerful tool to select the characteristic wavelength. SPA-SVM model was proved to be optimal in all constructed models, with a classification accuracy of 96.26% for unknow samples in test set. The results show that it is not only feasible to combine NIR spectroscopy with machine learning for rapid detection of microplastics in chicken feed, but also achieves excellent analysis results.
本研究的主要目的是评估近红外(NIR)光谱和机器学习在检测鸡饲料中微塑料(MPs)方面的潜力。探索了机器学习技术在构建受MPs污染的鸡饲料最优分类模型中的应用。制备了80个未受污染的鸡饲料样品和240个受MPs污染的鸡饲料样品,其中包括聚丙烯(PP)、聚氯乙烯(PVC)和聚对苯二甲酸乙二酯(PET),并收集了所有样品的近红外漫反射光谱。首先研究了鸡饲料、PP、PVC和PET这三种MPs以及受MPs污染的鸡饲料的近红外光谱特性,并进行主成分分析以揭示MPs对鸡饲料光谱的影响。此外,对原始光谱数据进行了多元散射校正(MSC)和标准正态变量变换(SNV)预处理,并分别使用竞争性自适应重加权采样(CARS)算法和连续投影算法(SPA)选择特征变量。在此基础上,分别使用偏最小二乘判别分析(PLSDA)、反向传播神经网络(BPNN)、支持向量机(SVM)和随机森林(RF)这四种机器学习方法建立了受MPs污染的鸡饲料判别模型。总体结果表明,SPA是选择特征波长的有力工具。在所有构建的模型中,SPA-SVM模型被证明是最优的,测试集中未知样品的分类准确率为96.26%。结果表明,将近红外光谱与机器学习相结合用于快速检测鸡饲料中的微塑料不仅可行,而且取得了优异的分析结果。