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Gathering reliable data on malting quality for genetic analysis from barley using near infrared spectroscopy

机译:使用近红外光谱技术收集大麦制麦质量的可靠数据用于遗传分析

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This study applies near infrared (NIR) data for phenotyping genetic populations to determine genomic regions associated with malting quality in barley. To date, most such phenotyping has used reference testing, but this is expensive when a large number of samples must be tested. NIR is a cost-effective tool, but the precision in identifying genomic regions associated with a quality trait is dependent on the accurate collection of data. To ensure that NIR is accurate for use in genomic studies, samples from genetic populations need to be validated independently. Useful interpretive statistics for both calibration and validation data, in combination, include the standard error of prediction (SEP), the RPDvalue (the standard deviation of the reference data divided bythe SEP) and the coefficient of determination (R~2 and r~2). The most useful of these three statistics used in this study were RPD and SEP. We demonstrated that when using NIR-predicted protein and malt extract on wholegrain barley for quantitative trait loci (QTL) analyses, an RPD value greater than 4.00 was required to ensure significant QTL were identified. We have demonstrated that NIR is an appropriate tool to phenotype barley grain for protein content and malt extract in barley mapping studies. However, when the error in the NIR data increased, and RPD values less than 4.00 were observed, which also increased the SEP values, the number of significant QTLs decreased, and the number of spurious QTLs increased.
机译:这项研究将近红外(NIR)数据用于表型遗传群体,以确定与大麦麦芽品质相关的基因组区域。迄今为止,大多数此类表型已经使用了参考测试,但是当必须测试大量样品时,这是昂贵的。 NIR是一种具有成本效益的工具,但是识别与质量性状相关的基因组区域的精度取决于准确的数据收集。为了确保NIR在基因组研究中的准确性,需要对来自遗传种群的样品进行独立验证。结合使用的校准和验证数据有用的解释统计信息包括预测标准误差(SEP),RPD值(参考数据的标准偏差除以SEP)和确定系数(R〜2和r〜2) )。在这项研究中使用的这三个统计数据中最有用的是RPD和SEP。我们证明,当在全麦大麦上使用NIR预测的蛋白质和麦芽提取物进行定量性状基因座(QTL)分析时,要求RPD值大于4.00以确保鉴定出显着的QTL。我们已经证明,NIR是在大麦作图研究中对大麦籽粒的蛋白质含量和麦芽提取物进行表型分析的合适工具。但是,当NIR数据中的误差增加,并且观察到RPD值小于4.00,这也增加了SEP值时,有效QTL的数量减少,而虚假QTL的数量增加。

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