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Application of spectroscopic and multispectral imaging technologies on the assessment of ready-to-eat pineapple quality: A performance evaluation study of machine learning models generated from two commercial data analytics tools

机译:光谱和多光谱成像技术在现成菠萝质量评估中的应用:两种商业数据分析工具产生的机器学习模型的性能评估研究

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摘要

Recently, rapid, non-invasive analytical methods relying on vibrational spectroscopy and hyper/multispectral imaging, are increasingly gaining popularity in food science. Although such instruments offer a promising alternative to the conventional methods, the analysis of generated data demands complex multidisciplinary approaches based on data analytics tools utilization. Therefore, the objective of this work was to (i) assess the predictive power of different analytical platforms (sensors) coupled with machine learning algorithms in evaluating quality of ready-to-eat (RTE) pineapple (Ananas comosus) and (ii) explore the potentials of The Unscrambler software and the online machine-learning ranking platform, SorfML, in developing the predictive models required by such instruments to assess quality indices. Pineapple samples were stored at 4, 8, 12 degrees C and dynamic temperatures and were subjected to microbiological (total mesophilic microbial populations, TVC) and sensory analysis (colour, odour, texture) with parallel acquisition of spectral data. Fourier-transform infrared, fluorescence (FLUO) and visible sensors, as well as Videometer instrument were used. For TVC, almost all the combinations of sensors and Partial-least squares regression (PLSR) algorithm from both analytics tools reached values of root mean square error of prediction (RMSE) up to 0.63 log CFU/g, as well as the highest coefficient of determination values (R 2 ). Moreover, Linear Support Vector Machine (SVM Linear) combined with each one of the sensors reached similar performance. For odour, FLUO sensor achieved the highest overall performance, when combined with Partial-least squares discriminant analysis (PLSDA) in both platforms with accuracy close to 85%, but also with values of sensitivity and specificity above 85%. The SVM Linear and MSI combination also achieved similar performance. On the other hand, all models developed for colour and texture showed poor prediction performance. Overall, the use of both analytics tools, resulted in similar trends concerning the feasibility of the different analytical platforms and algorithms on quality evaluation of RTE pineapple.
机译:最近,依赖于振动光谱和超级/多光谱成像的快速,无侵入性分析方法,越来越多地获得食品科学的普及。虽然这些仪器提供了对传统方法的有前途的替代方案,但基于数据分析工具利用率的生成数据的分析需要复杂的多学科方法。因此,这项工作的目的是(i)评估不同分析平台(传感器)的预测力,与机器学习算法相结合,评估即食(RTE)菠萝(Ananas Comosus)和(ii)探索解除扫描软件和在线机器学习排名平台的潜力,SORFML在开发这些仪器需要评估质量指标时所需的预测模型。菠萝样品储存在4,8,12℃和动态温度下,并经受微生物(总培养基微生物群,TVC)和感觉分析(颜色,气味,质地),并行获取光谱数据。使用傅里叶变换红外,荧光(Fluo)和可见传感器以及仪表仪器。对于TVC来说,几乎所有传感器和部分最小二乘回归(PLSR)算法的分析工具的算法达到了预测(RMSE)的根均方误差值,高达0.63 log CFU / g,以及最高系数确定值(R 2)。此外,线性支持向量机(SVM线性)与每个传感器组合的组合达到相似的性能。对于气味,荧光传感器达到了最高的整体性能,当两台平台中的部分最小二乘判别分析(PLSDA)结合到高于85%的平台时,也具有高于85%的敏感性和特异性值。 SVM线性和MSI组合也实现了类似的性能。另一方面,开发用于颜色和纹理的所有型号都显示出差的预测性能。总体而言,使用分析工具,导致了关于不同分析平台和算法对RTE菠萝质量评估的可行性的类似趋势。

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