Calibration development for nutritional evaluation of Yam (Dioscorea sp.) using Near-Infrared Reflectance Spectrophotometry (NIRS)

O. E. Alamu, M. Adesokan, B. Maziya-Dixon
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引用次数: 10

Abstract

Abstract The aim of yam breeders is to produce many hybrids, which can form the basis of selecting quality nutritional traits and other characteristics using certain agronomic criteria. Chemical methods are employed to determine the main constituents of yam, which are time-consuming, expensive, and involve sample destruction. However, the constraints of lengthy analysis time and the cost needed to analyze thousands of these genotypes are major constraints to yam breeding in Nigeria. This study was undertaken to develop and validate calibration equations on the Near-Infrared Reflectance Spectrophotometer (NIRS) for determining chemical compositions of selected yam genotypes. Equations developed for moisture, ash, protein, crude fiber, and tannin showed high coefficients of determination (R2) for the calibration curve (0.87, 0.84, 0.83, 0.80, and 0.89, respectively) and high to medium coefficients of determination in cross-validation (0.80, 0.68, 0.69, 0.68, and 0.50). The standard errors of calibration (SEC) and the standard errors in cross-validation (SECV) were low for most constituents. A total of 360 ascensions of yam flour were predicted for selected traits to test the equations, and the results were comparable with data from conventional methods. Results of this study have shown that NIRS could be a very useful tool to help yam breeders screen large sample sets using limited resources with very short time. This will enhance breeders’ rapid selection of genotypes at screening stage where many breeding lines are to be evaluated within the shortest time possible.
近红外反射分光光度法用于薯蓣营养评价的标定方法研究
摘要育种家的目标是培育出许多杂交种,这些杂交种可以利用某些农艺标准为选择优质营养性状和其他特性奠定基础。采用化学方法测定yam的主要成分,耗时、昂贵,并涉及样品销毁。然而,分析时间长和分析数千种此类基因型所需的成本是尼日利亚山药育种的主要制约因素。本研究旨在开发和验证近红外反射分光光度计(NIRS)上的校准方程,以确定选定的yam基因型的化学成分。为水分、灰分、蛋白质、粗纤维、,和单宁在校准曲线上显示出较高的测定系数(R2)(分别为0.87、0.84、0.83、0.80和0.89),在交叉验证中显示出较高至中等的测定系数。大多数成分的校准标准误差(SEC)和交叉验证标准误差(SECV)较低。通过对所选性状的分析,预测了甘薯粉的360次上升,并对方程进行了检验,结果与传统方法的数据相比较。这项研究的结果表明,NIRS可能是一个非常有用的工具,可以帮助山药育种家在很短的时间内利用有限的资源筛选大样本集。这将增强育种家在筛选阶段对基因型的快速选择,在筛选阶段,许多育种系将在尽可能短的时间内进行评估。
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来源期刊
Cogent Chemistry
Cogent Chemistry CHEMISTRY, MULTIDISCIPLINARY-
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