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利用气相色谱-差分迁移谱(GC-DMS)和机器学习分析,通过挥发性有机化合物(VOC)排放对核桃仁新鲜度进行无损分类的方法。

Non-destructive method to classify walnut kernel freshness from volatile organic compound (VOC) emissions using gas chromatography-differential mobility spectrometry (GC-DMS) and machine learning analysis.

作者信息

Chakraborty Pranay, Borras Eva, Rajapakse Maneeshin Y, McCartney Mitchell M, Bustamante Matthew, Mitcham Elizabeth J, Davis Cristina E

机构信息

Department of Mechanical and Aerospace Engineering, University of California Davis, Davis, CA, USA.

UC Davis Lung Center, One Shields Avenue, Davis, CA, USA.

出版信息

Appl Food Res. 2023 Dec;3(2). doi: 10.1016/j.afres.2023.100308. Epub 2023 Jul 8.

Abstract

Analysis of volatile organic compounds (VOCs) can be an effective strategy to inspect the quality of horticultural commodities and following their degradation. In this work, we report that VOCs emitted by walnuts can be studied using gas chromatography-differential mobility spectrometry (GC-DMS), and those GC-DMS data can be analyzed to predict the rancidity of walnuts, i.e., classify walnuts into grades of freshness. Walnut kernels were assigned a class depending on their level of freshness as determined by a peroxide assay. VOC samples were analyzed using GC-DMS. From these VOC data, a partial least square regression (PLSR) model provided a freshness prediction value , which corresponded to the rancid class when . The PLSR model had an accuracy of 80% to predict walnut grade and demonstrated a minimal root mean squared error of 0.42 for the response variables (representative of walnut grade) with the GC-DMS data. We also conducted gas chromatography-mass spectrometry (GC-MS) experiments to identify volatiles that emerged or were enhanced with more rancid walnuts. The findings of the GC-MS study of walnut VOCs align excellently with the GC-DMS study. Based on our results, we conclude that a GC-DMS device deployed with a pre-trained machine learning model can be a very effective device for classifying walnut grades in the industry.

摘要

挥发性有机化合物(VOCs)分析可以作为一种有效的策略,用于检测园艺产品的质量及其降解情况。在本研究中,我们报告了可使用气相色谱-差分迁移谱(GC-DMS)对核桃释放的VOCs进行研究,并对这些GC-DMS数据进行分析,以预测核桃的酸败程度,即将核桃分为不同的新鲜度等级。根据过氧化物分析确定的新鲜度水平,对核桃仁进行分类。使用GC-DMS对VOC样品进行分析。从这些VOC数据中,偏最小二乘回归(PLSR)模型提供了一个新鲜度预测值,当该值 时,对应于酸败等级 。PLSR模型预测核桃等级的准确率为80%,对于GC-DMS数据的响应变量(代表核桃等级),其均方根误差最小为0.42。我们还进行了气相色谱-质谱联用(GC-MS)实验,以鉴定随着核桃酸败程度增加而出现或增加的挥发性物质。核桃VOCs的GC-MS研究结果与GC-DMS研究结果高度吻合。基于我们的研究结果,我们得出结论,配备预训练机器学习模型的GC-DMS设备可以成为行业中非常有效的核桃等级分类设备。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e200/10984333/94c035ea1fea/nihms-1978804-f0001.jpg

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