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A gene-based model to simulate soybean development and yield responses to environment.

机译:基于基因的模型可以模拟大豆的发育和对环境的产量响应。

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Realizing the potential of agricultural genomics into practical applications requires quantitative predictions for complex traits and different genotypes and environmental conditions. The objective of this study was to develop and test a procedure for quantitative prediction of phenotypes as a function of environment and specific genetic loci in soyabean [Glycine max (L.) Merrill]. We combined the ecophysiological model CROPGRO-Soybean with linear models that predict cultivar-specific parameters as functions of E loci. The procedure involved three steps: (i) a field experiment was conducted in Florida in 2001 to obtain phenotypic data for a set of near-isogenic lines (NILs) with known genotypes at six E loci; (ii) we used these data to estimate cultivar-specific parameters for CROPGRO-Soybean, minimizing root mean square error (RMSE) between observed and simulated values; (iii) these parameters were then expressed as linear functions of the (known) E loci. CROPGRO-Soybean predicted various phenological stages for the same NILs grown in 2002 in Florida with a RMSE of about 5 d using the E loci-derived parameters. A second evaluation of the approach used phenotypic data from cultivar trials conducted in Illinois. Cultivars were genotyped at the E loci using microsatellites. The model predicted time to maturity in the Illinois variety trials with RMSE around 7.5 d; it also explained 75% of the time-to-maturity variance and 54% of the yield variance. Our results suggest that gene-based approaches can effectively use agricultural genomics data for cultivar performance prediction. This technology may have multiple uses in plant breeding..
机译:要实现农业基因组学在实际应用中的潜力,需要对复杂性状,不同基因型和环境条件进行定量预测。这项研究的目的是开发和测试一种定量预测表型的程序,该表型是环境和大豆中特定基因位点的函数[Glycine max(L.)Merrill]。我们将生态生理模型CROPGRO-大豆与线性模型相结合,该线性模型预测了作为E基因座功能的特定品种参数。该程序包括三个步骤:(i)2001年在佛罗里达州进行了一项现场实验,以获取一组在六个E基因座处具有已知基因型的近等基因系(NIL)的表型数据; (ii)我们使用这些数据来估算CROPGRO-大豆的特定品种参数,从而使观测值和模拟值之间的均方根误差(RMSE)最小化; (iii)然后将这些参数表示为(已知)电子基因座的线性函数。 CROPGRO-大豆使用E位点推导的参数预测了2002年在佛罗里达州生长的同一NIL的各种物候阶段,RMSE约为5 d。该方法的第二次评估使用了伊利诺伊州进行的品种试验的表型数据。使用微卫星在E位点对品种进行基因分型。该模型预测了在7.5 d左右的RMSE的伊利诺伊州品种试验的成熟时间。它还解释了75%的到期时间方差和54%的收益率方差。我们的结果表明,基于基因的方法可以有效地利用农业基因组学数据预测品种表现。该技术可能在植物育种中有多种用途。

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