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首页> 外文期刊>Spanish Journal of Agricultural Research >NIRS determination of non-structural carbohydrates, water soluble carbohydrates and other nutritive quality traits in whole plant maize with wide range variability
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NIRS determination of non-structural carbohydrates, water soluble carbohydrates and other nutritive quality traits in whole plant maize with wide range variability

机译:NIRS测定全株玉米中非结构性碳水化合物,水溶性碳水化合物和其他营养品质性状的广泛变异

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摘要

The aim of this work was to study the potential of near-infrared reflectance spectroscopy (NIRS) to predict non-structural carbohydrates (NSC), water soluble carbohydrates (WSC), in vitro organic dry matter digestibility (IVOMD), organic matter (OM), crude protein (CP), neutral detergent fiber (NDF), acid detergent fiber (ADF) and starch in samples of whole plant maize with a wide range of variability. The samples were analyzed in reflectance mode by a spectrophotometer FOSS NIRSystems 6500. Four hundred and fifty samples of wide spectrum from different origin were selected out of 3000 scanned for the calibration set, whereas 87 independent random samples were used in the external validation. The goodness of the calibration models was evaluated using the following statistics: coefficient of determination (R2), standard error of cross-validation (SECV), standard error of prediction for external validation (SEP) and the RPDCV and RPDP indexes [ratios of standard deviation (SD) of reference analysis data to SECV and SEP, respectively]. The smaller the SECV and SEP and the greater the RPDCV and RPDP, the predictions are better. Trait measurement units were g/100g of dry matter (DM), except for IVOMD (g/100g OM). The SECV and RPDCV statistics of the calibration set were 1.34 and 3.2 for WSC, 2.57 and 3 for NSC and 2.3 and 2.2 for IVOMD, respectively. The SEP and RPDP statistics for external validation were 0.74 and 4.7 for WSC, 2.14 and 2.5 for NSC and 1.68 and 1.6 for IVOMD respectively. It can be concluded that the NIRS technique can be used to predict WSC and NSC with good accuracy, whereas prediction of IVOMD showed a lesser accuracy. NIRS predictions of OM, CP, NDF, ADF and starch also showed good accuracy.
机译:这项工作的目的是研究近红外反射光谱(NIRS)预测非结构性碳水化合物(NSC),水溶性碳水化合物(WSC),体外有机干物质消化率(IVOMD)和有机物质(OM)的潜力),全植物玉米样品中的粗蛋白(CP),中性去污剂纤维(NDF),酸性去污剂纤维(ADF)和淀粉,且变化范围很大。使用分光光度计FOSS NIRSystems 6500在反射模式下分析样品。从3000个扫描的校准源中选择了450个来自不同来源的宽光谱样品,而将87个独立的随机样品用于外部验证。使用以下统计数据评估校准模型的优劣:测定系数(R2),交叉验证的标准误差(SECV),用于外部验证的预测的标准误差(SEP)以及RPDCV和RPDP指标[标准比率参考分析数据相对于SECV和SEP的偏差(SD)]。 SECV和SEP越小,RPDCV和RPDP越大,预测越好。除IVOMD(g / 100g OM)以外,性状测量单位为g / 100g干物质(DM)。校准集的SECV和RPDCV统计值对于WSC分别为1.34和3.2,对于NSC为2.57和3,对于IVOMD为2.3和2.2。用于外部验证的SEP和RPDP统计值,WSC分别为0.74和4.7,NSC分别为2.14和2.5,IVOMD分别为1.68和1.6。可以得出结论,NIRS技术可用于以较高的准确度预测WSC和NSC,而IVOMD的预测则显示较低的准确性。 NIRS对OM,CP,NDF,ADF和淀粉的预测也显示出良好的准确性。

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