A high throughput phenotyping technique for banana cultivar Sukali Ndizi based on internal fruit quality attributes

Henry Buregyeya, Steven Kashub. Tumwesigye, Ephraim Nuwamanya, Moses Matovu, Priver Namanya, Kephas Nowankunda, Wilberforce K Tushemereirwe, Patrick Rubaihayo
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Abstract

Background: Sukali Ndizi quality traits such as Total soluble solid (TSS) content, pulp texture and sugar/acid (S/A) ratio are critical in quality assessment. Screening very large numbers of fruit genotypes has prompted the development of a high throughput method using Near Infrared spectrometry (NIRS). Results: The calibration procedure for the attributes of TSS, pulp texture and S/A ratio was optimized with respect to a reference sampling technique, scan averaging, spectral window, data pre-treatment and regression procedure. Calibration equations for all analytical characteristics were computed by NIR Software ISI Present WINISI using Modified Partial Least Squares (MPLS) and Partial Least Squares. The quality of calibration models were evaluated by Standard Error of Calibration and coefficient of determination parameters between the measured and the predicted values. The results obtained with FOSS NIR systems 2500 spectrometer (model DS 2500) using the 350-2500 nm range, showed good prediction of the quality traits TSS content, pulp texture and S/A ratio. The MPLS method produced satisfactory Calibration model performance for TSS, texture and S/A ratio, with typical Rc2 of 0.73%Brix, 0.69kgf and 0.7; and root mean squared standard error of calibration of 0.73%Brix, 0.25kgf and 5.36 respectively. This is a good set of quality traits predicting Sukali Ndizi quality with NIRS with robustness, as it was obtained by using diverse Ndizi populations. Conclusions: This can be a useful tool to phenotype large numbers of Ndizi hybrids per day, making it possible to reduce on the resources spent when utilizing organoleptic evaluation selection technique.
基于果实内部品质属性的香蕉品种Sukali Ndizi高通量表型技术
背景:总可溶性固形物(TSS)含量、果肉质地、糖/酸(S/A)比等品质指标是评价苏卡利品质的关键指标。近红外光谱(NIRS)是筛选大量水果基因型的一种高通量方法。结果:从参考采样技术、扫描平均、光谱窗、数据预处理和回归等方面对TSS、果肉质地和S/A比属性的定标流程进行了优化。采用改进的偏最小二乘法和偏最小二乘法,利用近红外软件ISI Present WINISI计算了所有分析特性的校准方程。通过标定标准误差和实测值与预测值之间的确定参数系数来评价标定模型的质量。采用FOSS近红外系统2500光谱仪(ds2500型),在350 ~ 2500 nm范围内对TSS含量、果肉质地和S/A比等品质性状进行了较好的预测。MPLS方法在TSS、纹理和S/A比方面均获得了满意的标定模型性能,典型Rc2分别为0.73%Brix、0.69kgf和0.7;均方根标准误差分别为0.73%Brix、0.25kgf和5.36。这是一组较好的质量性状,具有较好的鲁棒性,因为它是通过使用不同的Ndizi群体获得的。结论:这是一种有用的工具,可以在每天对大量的Ndizi杂交品种进行表型分析,从而可以减少使用感官评估选择技术时所花费的资源。
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