Lu Ruitao, Qiu Linqian, Dong Shijia, Xue Qiyang, Lu Zhaohui, Zhai Rui, Wang Zhigang, Yang Chengquan, Xu Lingfei
College of Horticulture, Northwest A&F University, Taicheng Road No. 3, Yangling, Xianyang 712100, China.
Foods. 2024 Nov 24;13(23):3761. doi: 10.3390/foods13233761.
Scientific evaluation of pear maturity is important for commercial reasons. Near-infrared spectroscopy is a non-destructive method that could be used for rapid assessment of pear maturity. The aim of this study was to develop a reasonable and effective method for the assessment of Starkrimson pear maturity using near-infrared technology. Partial least squares regression and five classification methods were used for analysis of the data. Among the indices used with the competitive adaptive reweighting-partial least squares regression method for quantitation, the visual ripeness index had the best modeling effect (Rp2: 0.87; root mean square error of prediction: 0.39). The classification model constructed with the visual ripeness index and post-ripeness score gave a cross-validation neural network model with the best classification effect and the highest accuracy (classification accuracy: 88.7%). The results showed that combination of quality indices with near-infrared spectroscopy was effective for rapidly evaluating the maturity of Starkrimson pears.
出于商业原因,对梨成熟度进行科学评估很重要。近红外光谱法是一种可用于快速评估梨成熟度的无损方法。本研究的目的是开发一种合理有效的方法,利用近红外技术评估斯塔克瑞姆逊梨的成熟度。采用偏最小二乘回归和五种分类方法对数据进行分析。在用于竞争性自适应重加权偏最小二乘回归法定量的指标中,视觉成熟度指标具有最佳的建模效果(Rp2:0.87;预测均方根误差:0.39)。用视觉成熟度指标和后熟评分构建的分类模型得到了分类效果最佳、准确率最高的交叉验证神经网络模型(分类准确率:88.7%)。结果表明,质量指标与近红外光谱相结合可有效快速评估斯塔克瑞姆逊梨的成熟度。