Department of Crop Sciences: Agronomy in the Tropics, Georg-August University of Goettingen Goettingen, Germany ; World Agroforestry Centre (ICRAF) Nairobi, Kenya.
Institute for Crop and Soil Science, JKI - Federal Research Centre for Cultivated Plants Braunschweig, Germany.
Food Sci Nutr. 2013 Jan;1(1):45-53. doi: 10.1002/fsn3.7. Epub 2013 Jan 8.
There is uncertainty on how generally applicable near-infrared reflectance spectroscopy (NIRS) calibrations are across genotypes and environments, and this study tests how well a single calibration performs across a wide range of conditions. We also address the optimization of NIRS to perform the analysis of crude protein (CP) content in a variety of cowpea accessions (n = 561) representing genotypic variation as well as grown in a wide range of environmental conditions in Tanzania and Uganda. The samples were submitted to NIRS analysis and a predictive calibration model developed. A modified partial least-squares regression with cross-validation was used to evaluate the models and identify possible spectral outliers. Calibration statistics for CP suggests that NIRS can predict this parameter in a wide range of cowpea leaves from different agro-ecological zones of eastern Africa with high accuracy (R (2)cal = 0.93; standard error of cross-validation = 0.74). NIRS analysis improved when a calibration set was developed from samples selected to represent the range of spectral variability. We conclude from the present results that this technique is a good alternative to chemical analysis for the determination of CP contents in leaf samples from cowpea in the African context, as one of the main advantages of NIRS is the large number of compounds that can be measured at once in the same sample, thus substantially reducing the cost per analysis. The current model is applicable in predicting the CP content of young cowpea leaves for human nutrition from different agro-ecological zones and genetic materials, as cowpea leaves are one of the popular vegetables in the region.
近红外反射光谱(NIRS)校准在不同基因型和环境下的通用性存在不确定性,本研究旨在测试单一校准在广泛条件下的表现。我们还探讨了如何优化 NIRS 以分析各种豇豆品种(n=561)的粗蛋白(CP)含量,这些品种代表了基因型的变化,并在坦桑尼亚和乌干达的广泛环境条件下种植。对样品进行 NIRS 分析并建立预测校准模型。使用带交叉验证的偏最小二乘回归来评估模型并识别可能的光谱异常值。CP 的校准统计数据表明,NIRS 可以在东非不同农业生态区的各种豇豆叶片中以高精度预测该参数(R²cal=0.93;交叉验证标准误差=0.74)。当从代表光谱可变性范围的样品中开发校准集时,NIRS 分析得到了改善。我们从目前的结果中得出结论,在非洲背景下,这种技术是化学分析测定豇豆叶片 CP 含量的一种很好的替代方法,因为 NIRS 的主要优势之一是可以同时在同一样品中测量大量化合物,从而大大降低了每个分析的成本。目前的模型适用于预测不同农业生态区和遗传材料的豇豆嫩叶的 CP 含量,因为豇豆叶是该地区受欢迎的蔬菜之一。