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Determination of water activity, total soluble solids and moisture, sucrose, glucose and fructose contents in osmotically dehydrated papaya using near-infrared spectroscopy

机译:用近红外光谱法测定渗透脱水木瓜中的水分活度,总可溶性固形物和水分,蔗糖,葡萄糖和果糖含量

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Near-infrared spectroscopy (NIRS) is a rapid analysis method that is widely used for quantitative determination of the major constituents in many food products. NIRS was applied in conjunction with a chemometric algorithm, namely the partial least squares regression (PLSR), to develop the optimum model for predicting the qualities of osmotically dehydrated papaya (ODP). Two hundred ODP samples were collected from commercial products and from different laboratory ODP processes with varying sucrose concentrations (35oBrix, 45oBirx, 55oBrix and 65oBrix) at 40?°C for 6?h and drying times at 60?°C for 2?h, 4?h, 6?h, 8?h, 10?h and 12?h. All samples were divided into a calibration set ( n ?=?140) and a validation set ( n ?=?60) before quality determination and NIRS analysis. Samples were scanned over the NIR spectral range of 800–2400?nm in reflectance mode and their spectra were pretreated using the second derivative method. Suitable predictive models were developed by applying full wavelength PLSR and two wavelength interval selection methods, named the moving window partial least squares regression (MWPLSR) and the searching combination moving window partial least squares regression (SCMWPLSR). The results showed that SCMWPLSR provided better performance than PLSR and MWPLSR. The root mean square error of prediction values of water activity, moisture content, total soluble solids and the sucrose, glucose and fructose contents from SCMWPLSR were 0.014, 0.69% (dry basis), 0.58oBrix, 14.44?g/100?g of sample, 6.72?g/100?g of sample and 4.89?g/100?g of sample, respectively, with correlation coefficients in the range 0.981–0.994.
机译:近红外光谱(NIRS)是一种快速分析方法,已广泛用于定量确定许多食品中的主要成分。 NIRS与化学计量学算法(即偏最小二乘回归(PLSR))结合使用,以开发用于预测渗透性脱水木瓜(ODP)质量的最佳模型。从商业产品和实验室不同ODP流程中收集了200个ODP样品,这些样品在40°C下持续6?h的蔗糖浓度不同(35oBrix,45oBirx,55oBrix和65oBrix),在60°C干燥2?h, 4?h,6?h,8?h,10?h和12?h。在质量测定和NIRS分析之前,将所有样品分成校准组(n≤140)和验证组(n≤60)。在反射模式下,样品在近红外光谱范围800–2400?nm范围内扫描,并使用二阶导数方法对其光谱进行预处理。通过应用全波长PLSR和两种波长间隔选择方法(称为移动窗口偏最小二乘回归(MWPLSR)和搜索组合移动窗口偏最小二乘回归(SCMWPLSR)),开发了合适​​的预测模型。结果表明,SCMWPLSR提供了比PLSR和MWPLSR更好的性能。来自SCMWPLSR的水分活度,水分,总可溶性固体和蔗糖,葡萄糖和果糖含量的预测值的均方根误差为0.014、0.69%(干基),0.58oBrix,14.44?g / 100?g样品分别为6.72微克/ 100微克样品和4.89微克/ 100微克样品,相关系数在0.981–0.994之间。

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