CIRAD, Performance of Tropical Production and Processing Systems Department, UMR QUALISUD, TA B-95/16, 73, avenue Jean Francois Breton, 34398 Montpellier Cedex 5, France.
J Agric Food Chem. 2010 Jul 14;58(13):7811-9. doi: 10.1021/jf100409v.
The Shea tree (Vitellaria paradoxa) is a major tree species in African agroforestry systems. Butter extracted from its nuts offers an opportunity for sustainable development in Sudanian countries and an attractive potential for the food and cosmetics industries. The purpose of this study was to develop near-infrared spectroscopy (NIRS) calibrations to characterize Shea nut fat profiles. Powders prepared from nuts collected from 624 trees in five African countries (Senegal, Mali, Burkina Faso, Ghana and Uganda) were analyzed for moisture content, fat content using solvent extraction, and fatty acid profiles using gas chromatography. Results confirmed the differences between East and West African Shea nut fat composition: eastern nuts had significantly higher fat and oleic acid contents. Near infrared reflectance spectra were recorded for each sample. Ten percent of the samples were randomly selected for validation and the remaining samples used for calibration. For each constituent, calibration equations were developed using modified partial least squares (MPLS) regression. The equation performances were evaluated using the ratio performance to deviation (RPD(p)) and R(p)(2) parameters, obtained by comparison of the validation set NIR predictions and corresponding laboratory values. Moisture (RPD(p) = 4.45; R(p)(2) = 0.95) and fat (RPD(p) = 5.6; R(p)(2) = 0.97) calibrations enabled accurate determination of these traits. NIR models for stearic (RPD(p) = 6.26; R(p)(2) = 0.98) and oleic (RPD(p) = 7.91; R(p)(2) = 0.99) acids were highly efficient and enabled sharp characterization of these two major Shea butter fatty acids. This study demonstrated the ability of near-infrared spectroscopy for high-throughput phenotyping of Shea nuts.
乳木果树(Vitellaria paradoxa)是非洲农林复合系统中的主要树种。从其坚果中提取的黄油为苏丹国家的可持续发展提供了机会,也为食品和化妆品行业提供了有吸引力的潜力。本研究的目的是开发近红外光谱(NIRS)校准方法来描述乳木果核脂肪的特征。从五个非洲国家(塞内加尔、马里、布基纳法索、加纳和乌干达)的 624 棵树上采集的坚果制备粉末,用溶剂萃取法分析水分含量和脂肪含量,用气相色谱法分析脂肪酸含量。结果证实了东非和西非乳木果核脂肪成分的差异:东部坚果的脂肪和油酸含量明显较高。记录了每个样本的近红外反射光谱。随机选择 10%的样本进行验证,其余样本用于校准。对于每个成分,使用改进的偏最小二乘法(MPLS)回归来建立校准方程。通过比较验证集的 NIR 预测值和相应的实验室值,使用比率表现偏差(RPD(p))和 R(p)(2)参数来评估方程性能。水分(RPD(p) = 4.45;R(p)(2) = 0.95)和脂肪(RPD(p) = 5.6;R(p)(2) = 0.97)校准能够准确地测定这些性状。硬脂酸(RPD(p) = 6.26;R(p)(2) = 0.98)和油酸(RPD(p) = 7.91;R(p)(2) = 0.99)的 NIR 模型非常高效,能够对这两种主要的乳木果油脂肪酸进行精确的特征描述。本研究证明了近红外光谱在乳木果坚果高通量表型分析中的能力。