Amoriello Tiziana, Ciorba Roberto, Ruggiero Gaia, Masciola Francesca, Scutaru Daniela, Ciccoritti Roberto
CREA-Research Centre for Food and Nutrition, Via Ardeatina 546, 00178 Rome, Italy.
CREA-Research Centre for Olive, Fruit and Citrus Crops, Via di Fioranello 52, 00134 Rome, Italy.
Foods. 2025 Jan 10;14(2):196. doi: 10.3390/foods14020196.
The fruit supply chain requires simple, non-destructive, and fast tools for quality evaluation both in the field and during the post-harvest phase. In this study, a portable visible and near-infrared (Vis/NIR) spectrophotometer and a portable Vis/NIR hyperspectral imaging (HSI) device were tested to highlight genetic differences among apricot cultivars, and to develop multi-cultivar and multi-year models for the most important marketable attributes (total soluble solids, TSS; titratable acidity, TA; dry matter, DM). To do this, the fruits of seventeen cultivars from a single experimental orchard harvested at the commercial maturity stage were considered. Spectral data emphasized genetic similarities and differences among the cultivars, capturing changes in the pigment content and macro components of the apricot samples. In recent years, machine learning techniques, such as artificial neural networks (ANNs), have been successfully applied to more efficiently extract valuable information from spectral data and to accurately predict quality traits. In this study, prediction models were developed based on a multilayer perceptron artificial neural network (ANN-MLP) combined with the Levenberg-Marquardt learning algorithm. Regarding the Vis/NIR spectrophotometer dataset, good predictive performances were achieved for TSS (R = 0.855) and DM (R = 0.857), while the performance for TA was unsatisfactory (R = 0.681). In contrast, the optimal predictive ability was found for models of the HSI dataset (TSS: R = 0.904; DM: R = 0.918, TA: R = 0.811), as confirmed by external validation. Moreover, the ANN allowed us to identify the most predictive input spectral regions for each model. The results showed the potential of Vis/NIR spectroscopy as an alternative to traditional destructive methods to monitor the qualitative traits of apricot fruits, reducing the time and costs of analyses.
水果供应链需要简单、无损且快速的工具,用于在田间和收获后阶段进行质量评估。在本研究中,测试了一台便携式可见近红外(Vis/NIR)分光光度计和一台便携式Vis/NIR高光谱成像(HSI)设备,以突出杏品种间的遗传差异,并针对最重要的可销售属性(总可溶性固形物,TSS;可滴定酸度,TA;干物质,DM)建立多品种和多年度模型。为此,考虑了来自单个试验果园在商业成熟阶段收获的17个品种的果实。光谱数据突出了品种间的遗传相似性和差异,捕捉了杏样品中色素含量和宏观成分的变化。近年来,机器学习技术,如人工神经网络(ANNs),已成功应用于更有效地从光谱数据中提取有价值的信息,并准确预测质量性状。在本研究中,基于多层感知器人工神经网络(ANN-MLP)结合Levenberg-Marquardt学习算法开发了预测模型。对于Vis/NIR分光光度计数据集,TSS(R = 0.855)和DM(R = 0.857)取得了良好的预测性能,而TA的性能不令人满意(R = 0.681)。相比之下,HSI数据集模型具有最佳的预测能力(TSS:R = 0.904;DM:R = 0.918,TA:R = 0.811),外部验证证实了这一点。此外,人工神经网络使我们能够识别每个模型中最具预测性的输入光谱区域。结果表明,Vis/NIR光谱技术作为监测杏果实品质性状的传统破坏性方法的替代方法具有潜力,可减少分析时间和成本。