Department of Biosystems Engineering, Zhejiang University, Hangzhou, 310058, China.
J Sci Food Agric. 2021 Aug 15;101(10):4220-4228. doi: 10.1002/jsfa.11061. Epub 2021 Feb 2.
Rice grains can be contaminated easily by certain fungi during storage and in the market chain, thus generating a risk for humans. Most classical methods for identifying and rectifying this problem are complex and time-consuming for manufacturers and consumers. However, E-nose technology provides analytical information in a non-destructive and environmentally friendly manner. Two-feature fusion data combined with chemometrics were employed for the determination of Aspergillus spp. contamination in milled rice.
Linear discriminant analysis (LDA) indicated that the efficiency of fusion signals ('80 s values' and 'area values') outperformed that of independent E-nose signals. Linear discriminant analysis showed clear discrimination of fungal species in stored milled rice for four groups on day 2, and the discrimination accuracy reached 92.86% by using an extreme learning machine (ELM). Gas chromatography-mass spectrometry (GC-MS) analysis showed that the volatile compounds had close relationships with fungal species in rice. The quantification results of colony counts in milled rice showed that the monitoring models based on ELM and the genetic algorithm optimized support vector machine (GA-SVM) (R = 0.924-0.983) achieved better performances than those based on partial least squares regression (PLSR) (R = 0.877-0.913). The ability of the E-nose to monitor fungal infection at an early stage would help to prevent contaminated rice grains from entering the food chains.
The results indicated that an E-nose coupled with ELM or GA-SVM algorithm could be a useful tool for the rapid detection of fungal infection in milled rice, to prevent contaminated rice from entering the food chain. © 2021 Society of Chemical Industry.
稻谷在储存和市场流通过程中容易被某些真菌污染,从而对人类构成威胁。大多数用于识别和纠正这一问题的经典方法对制造商和消费者来说既复杂又耗时。然而,电子鼻技术以非破坏性和环保的方式提供分析信息。采用双特征融合数据结合化学计量学方法,对碾磨大米中曲霉属污染进行了测定。
线性判别分析(LDA)表明,融合信号('80s 值'和'面积值')的效率优于独立电子鼻信号。线性判别分析显示,在储存的碾磨大米中,四种真菌在第 2 天有明显的区分,使用极限学习机(ELM)的判别准确率达到 92.86%。气相色谱-质谱(GC-MS)分析表明,挥发性化合物与大米中的真菌种类密切相关。碾磨大米中菌落计数的定量结果表明,基于 ELM 和遗传算法优化支持向量机(GA-SVM)的监测模型(R=0.924-0.983)比基于偏最小二乘回归(PLSR)的监测模型(R=0.877-0.913)具有更好的性能。电子鼻在早期监测真菌感染的能力有助于防止污染的稻谷进入食物链。
结果表明,电子鼻结合 ELM 或 GA-SVM 算法可以成为快速检测碾磨大米中真菌感染的有用工具,以防止污染的大米进入食物链。 © 2021 化学工业协会。