School of Perfume and Aroma Technology, Shanghai Institute of Technology, No. 100 Haiquan Road, Shanghai, 201418, China.
Shanghai International Travel Healthcare Center, Shanghai Customs District P. R, Shanghai, 200335, China.
Talanta. 2024 Jul 1;274:126006. doi: 10.1016/j.talanta.2024.126006. Epub 2024 Mar 30.
This study proposes an efficient method for monitoring the submerged fermentation process of Tremella fuciformis (T. fuciformis) by integrating electronic nose (e-nose), electronic tongue (e-tongue), and colorimeter sensors using a data fusion strategy. Chemometrics was employed to establish qualitative identification and quantitative prediction models. The Pearson correlation analysis was applied to extract features from the e-nose and tongue sensor arrays. The optimal sensor arrays for monitoring the submerged fermentation process of T. fuciformis were obtained, and four different data fusion methods were developed by incorporating the colorimeter data features. To achieve qualitative identification, the physicochemical data and principal component analysis (PCA) results were utilized to determine three stages of the fermentation process. The fusion signal based on full features proved to be the optimal data fusion method, exhibiting the highest accuracy across different models. Notably, random forest (RF) was shown to be the most accurate pattern recognition method in this paper. For quantitative prediction, partial least squares regression (PLSR) and support vector regression (SVR) were employed to predict the sugar content and dry cell weight during fermentation. The best respective predictive R values for reducing sugar, tremella polysaccharide and dry cell weight were found to be 0.965, 0.988, and 0.970. Furthermore, due to its ability to capture nonlinear data relationships, SVR had superior performance in prediction modeling than PLSR. The results demonstrated that the combination of electronic sensor fusion signals and chemometrics provided a promising method for effectively monitoring T. fuciformis fermentation.
本研究提出了一种通过数据融合策略整合电子鼻(e-nose)、电子舌(e-tongue)和比色传感器监测银耳(Tremella fuciformis)发酵过程的有效方法。采用化学计量学方法建立定性识别和定量预测模型。应用 Pearson 相关分析从电子鼻和舌传感器阵列中提取特征。获得了监测银耳发酵过程的最佳传感器阵列,并通过结合比色仪数据特征开发了四种不同的数据融合方法。为了进行定性识别,利用理化数据和主成分分析(PCA)结果确定发酵过程的三个阶段。基于全特征的融合信号被证明是最佳的数据融合方法,在不同模型中表现出最高的准确性。值得注意的是,随机森林(RF)是本文中最准确的模式识别方法。对于定量预测,采用偏最小二乘回归(PLSR)和支持向量回归(SVR)预测发酵过程中的糖含量和干细胞重量。发现对于还原糖、银耳多糖和干细胞重量,PLSR 和 SVR 的最佳预测 R 值分别为 0.965、0.988 和 0.970。此外,由于 SVR 能够捕捉非线性数据关系,因此在预测建模方面的性能优于 PLSR。结果表明,电子传感器融合信号和化学计量学的组合为有效监测银耳发酵提供了一种有前途的方法。