Laboratory of Microbiology and Biotechnology of Foods, Department of Food Science and Human Nutrition, School of Food and Nutritional Sciences, Agricultural University of Athens, 118 55 Athens, Greece.
Sensors (Basel). 2022 Sep 16;22(18):7018. doi: 10.3390/s22187018.
The expansion of the seaweed aquaculture sector along with the rapid deterioration of these products escalates the importance of implementing rapid, real-time techniques for their quality assessment. Seaweed samples originating from Scotland and Ireland were stored under various temperature conditions for specific time intervals. Microbiological analysis was performed throughout storage to assess the total viable counts (TVC), while in parallel FT-IR spectroscopy, multispectral imaging (MSI) and electronic nose (e-nose) analyses were conducted. Machine learning models (partial least square regression (PLS-R)) were developed to assess any correlations between sensor and microbiological data. Microbial counts ranged from 1.8 to 9.5 log CFU/g, while the microbial growth rate was affected by origin, harvest year and storage temperature. The models developed using FT-IR data indicated a good prediction performance on the external test dataset. The model developed by combining data from both origins resulted in satisfactory prediction performance, exhibiting enhanced robustness from being origin unaware towards microbiological population prediction. The results of the model developed with the MSI data indicated a relatively good prediction performance on the external test dataset in spite of the high RMSE values, whereas while using e-nose data from both MI and SAMS, a poor prediction performance of the model was reported.
随着海藻养殖业的扩张以及这些产品的迅速恶化,实施快速、实时的质量评估技术变得尤为重要。来自苏格兰和爱尔兰的海藻样本在不同的温度条件下储存特定的时间间隔。在整个储存过程中进行微生物分析以评估总活菌数 (TVC),同时并行进行傅里叶变换红外光谱 (FT-IR) 光谱、多光谱成像 (MSI) 和电子鼻 (e-nose) 分析。开发了机器学习模型(偏最小二乘回归 (PLS-R))来评估传感器和微生物数据之间的任何相关性。微生物数量从 1.8 到 9.5 log CFU/g 不等,而微生物的生长速度受到来源、收获年份和储存温度的影响。使用 FT-IR 数据开发的模型在外部测试数据集上表现出良好的预测性能。通过结合两个来源的数据开发的模型表现出令人满意的预测性能,由于对微生物种群预测没有来源意识,因此具有更高的稳健性。尽管 RMSE 值较高,但使用 MSI 数据开发的模型在外部测试数据集上的预测性能相对较好,而使用 MI 和 SAMS 的 e-nose 数据时,模型的预测性能较差。