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Non-destructive prediction of soluble solids and dry matter contents in eight apple cultivars using near-infrared spectroscopy

机译:近红外光谱法的八个苹果品种中可溶性固体和干物质含量的非破坏性预测

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Soluble solids content (SSC) is an important factor for assessing quality of apples as it is linked to consumer taste preferences. Fruit dry matter content (DMC) is dominated by soluble sugar and starch concentrations at harvest, and therefore the DMC at the time of harvest can be strongly correlated with the post-storage SSC. The objective of this study was to develop models based on near-infrared (NIR) spectroscopy using a commercially available handheld instrument to predict SSC and DMC of fruit at harvest and after storage. 'Gala', 'Honeycrisp', 'McIntosh', 'onagold', 'NY1', 'NY2', 'Red Delicious' and 'Fuji' apples were tested. Partial least square regression was used to build calibration models for prediction of SSC and DMC. Models were also built for individual and multiple cultivars. Internal and external validations were applied to test the accuracy and precision of both models. In general, the individual- and multi-cultivar models have similar calibration performance. In internal validations, R(2 )and RMSE from multi-cultivar and individual-cultivar models were similar, but the slope values were higher in individual-cultivar than multi-cultivar models, indicating that the prediction using individual-cultivar model was more accurate. However, for individual-cultivar models, data-overfitting and the reference values distribution may lead to poor prediction in external validation. Overall the results support use of a portable NIR-based instrument to predict SSC and DMC, but to obtain precision and accurate predictions, calibration models should be built based on individual cultivars and the variability from seasonal and regional effects have to be taken into consideration.
机译:可溶性固体含量(SSC)是评估苹果质量的重要因素,因为它与消费者味道偏好有关。水果干物质含量(DMC)由收获的可溶性糖和淀粉浓度为主,因此收获时的DMC可以与储存后SSC强烈相关。本研究的目的是使用市售的手持仪器开发基于近红外(NIR)光谱的模型,以预测收获和储存后的果实SSC和DMC。 'Gala','Honeycrisp','McIntosh','Onagold','NY1','NY2','Red Delious'和'Fuji'苹果被测试了。部分最小二乘回归用于构建校准模型以预测SSC和DMC。模型也为个人和多种品种建造。应用内部和外部验证以测试两种型号的准确性和精度。通常,个体和多种品种模型具有类似的校准性能。在内部验证中,来自多种品种和个体品种模型的R(2)和RMSE具有相似的,但个体品种的坡度比多种多样模型更高,表明使用个体品种模型的预测更准确。然而,对于个体品种模型,数据过度装箱和参考值分布可能导致外部验证的预测差。总体而言,结果支持使用便携式的基于NIR的仪器来预测SSC和DMC,而是获得精确和准确的预测,应基于各个品种建立校准模型,并且必须考虑季节性和区域效应的可变性。

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