College of Engineering, National R & D Center for Agro-Processing Equipment, China Agricultural University, 17 Qinghua East Road, Haidian, Beijing 100083, China.
Biosensors (Basel). 2022 Nov 10;12(11):998. doi: 10.3390/bios12110998.
Fresh pork is prone to spoilage during storage, transportation, and sale, resulting in reduced freshness. The total viable count (TVC) and total volatile basic nitrogen (TVB-N) content are key indicators for evaluating the freshness of fresh pork, and when they reach unacceptable limits, this seriously threatens dietary safety. To realize the on-site, low-cost, rapid, and non-destructive testing and evaluation of fresh pork freshness, a miniaturized detector was developed based on a cost-effective multi-channel spectral sensor. The partial least squares discriminant analysis (PLS-DA) model was used to distinguish fresh meat from deteriorated meat. The detector consists of microcontroller, light source, multi-channel spectral sensor, heat-dissipation modules, display system, and battery. In this study, the multispectral data of pork samples with different freshness levels were collected by the developed detector, and its ability to distinguish pork freshness was based on different spectral shape features (SSF) (spectral ratio (SR), spectral difference (SD), and normalized spectral intensity difference (NSID)) were compared. The experimental results show that compared with the original multispectral modeling, the performance of the model based on spectral shape features is significantly improved. The model established by optimizing the spectral shape feature variables has the best performance, and the discrimination accuracy of its prediction set is 91.67%. In addition, the validation accuracy of the optimal model was 86.67%, and its sensitivity and variability were 87.50% and 85.71%, respectively. The results show that the detector developed in this study is cost-effective, compact in its structure, stable in its performance, and suitable for the on-site digital rapid non-destructive testing of freshness during the storage, transportation, and sale of fresh pork.
新鲜猪肉在储存、运输和销售过程中容易变质,导致新鲜度降低。总活菌数(TVC)和总挥发性碱性氮(TVB-N)含量是评估新鲜猪肉新鲜度的关键指标,当它们达到不可接受的极限时,会严重威胁到饮食安全。为了实现新鲜猪肉新鲜度的现场、低成本、快速和非破坏性测试和评估,我们基于具有成本效益的多通道光谱传感器开发了一种小型化探测器。偏最小二乘判别分析(PLS-DA)模型用于区分新鲜肉和变质肉。该探测器由微控制器、光源、多通道光谱传感器、散热模块、显示系统和电池组成。在这项研究中,通过开发的探测器采集了不同新鲜度水平猪肉样品的多光谱数据,并基于不同光谱形状特征(SSF)(光谱比(SR)、光谱差(SD)和归一化光谱强度差(NSID))比较了其区分猪肉新鲜度的能力。实验结果表明,与原始多光谱建模相比,基于光谱形状特征的模型性能得到了显著提高。基于优化光谱形状特征变量的模型具有最佳性能,其预测集的判别准确率为 91.67%。此外,最优模型的验证准确率为 86.67%,其灵敏度和变异性分别为 87.50%和 85.71%。结果表明,本研究开发的探测器具有成本效益高、结构紧凑、性能稳定等特点,适用于新鲜猪肉在储存、运输和销售过程中的现场数字快速无损检测。