Hacisalihoglu Gokhan, Gustin Jeffery L, Louisma Jean, Armstrong Paul, Peter Gary F, Walker Alejandro R, Settles A Mark
Biology Department, Florida A&M University , Tallahassee, Florida 32307, United States.
Horticultural Sciences Department, University of Florida , Gainesville, Florida 32611, United States.
J Agric Food Chem. 2016 Feb 10;64(5):1079-86. doi: 10.1021/acs.jafc.5b05508. Epub 2016 Jan 28.
Single seed near-infrared reflectance (NIR) spectroscopy predicts soybean (Glycine max) seed quality traits of moisture, oil, and protein. We tested the accuracy of transferring calibrations between different single seed NIR analyzers of the same design by collecting NIR spectra and analytical trait data for globally diverse soybean germplasm. X-ray microcomputed tomography (μCT) was used to collect seed density and shape traits to enhance the number of soybean traits that can be predicted from single seed NIR. Partial least-squares (PLS) regression gave accurate predictive models for oil, weight, volume, protein, and maximal cross-sectional area of the seed. PLS models for width, length, and density were not predictive. Although principal component analysis (PCA) of the NIR spectra showed that black seed coat color had significant signal, excluding black seeds from the calibrations did not impact model accuracies. Calibrations for oil and protein developed in this study as well as earlier calibrations for a separate NIR analyzer of the same design were used to test the ability to transfer PLS regressions between platforms. PLS models built from data collected on one NIR analyzer had minimal differences in accuracy when applied to spectra collected from a sister device. Model transfer was more robust when spectra were trimmed from 910 to 1679 nm to 955-1635 nm due to divergence of edge wavelengths between the two devices. The ability to transfer calibrations between similar single seed NIR spectrometers facilitates broader adoption of this high-throughput, nondestructive, seed phenotyping technology.
单粒种子近红外反射光谱法可预测大豆(Glycine max)种子的水分、油分和蛋白质等品质性状。我们通过收集全球不同大豆种质的近红外光谱和分析性状数据,测试了在相同设计的不同单粒种子近红外分析仪之间转移校准的准确性。利用X射线显微计算机断层扫描(μCT)收集种子密度和形状性状,以增加可从单粒种子近红外预测的大豆性状数量。偏最小二乘(PLS)回归给出了种子油分、重量、体积、蛋白质和最大横截面积的准确预测模型。宽度、长度和密度的PLS模型没有预测能力。尽管近红外光谱的主成分分析(PCA)表明黑色种皮颜色有显著信号,但在校准中排除黑色种子并不影响模型准确性。本研究中开发的油分和蛋白质校准以及同一设计的另一台近红外分析仪的早期校准,用于测试在不同平台之间转移PLS回归的能力。从一台近红外分析仪收集的数据构建的PLS模型,应用于从姊妹设备收集的光谱时,准确性差异最小。由于两台设备边缘波长的差异,当光谱从910至1679 nm修剪为955 - 1635 nm时,模型转移更稳健。在相似的单粒种子近红外光谱仪之间转移校准的能力,有助于更广泛地采用这种高通量、无损的种子表型分析技术。