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New Method Application for Marker-Trait Association Studies in Plants: Partial Least Square Regression Aids Detection of Simultaneous Correlations

机译:植物标志性状关联研究的新方法应用:同时相关的偏最小二乘回归辅助检测

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摘要

In this work, we investigated the suitability of performing partial least square regression (PLSR) on genotype-phenotype datasets to identify marker-trait associations. We utilized data collected on a cotton (Gossypium hirsutum L.) recombinant inbred line (RIL) mapping population that was evaluated under contrasting irrigation treatments, well-watered and water-limited conditions, in a hot, arid environment in 2012. Two phenotypic data sets were used in combination with the genetic data which consisted of 841 marker loci assigned to 117 linkage groups. The first dataset contained canopy traits that were gathered using a mobile, high-throughput phenotyping platform and included canopy temperature (CT), normalized difference vegetation index (NDVI), and canopy height (CHT) with leaf area index (LAI) being derived from NDVI and CHT measurements. The second phenotypic data set consisted of 14 elemental concentration measurements corresponding to the following elements: P, K, Ca, Mn, Fe, Zn, Ni, Cu, As, Co, Rb, Mo, S, and Mg. To conduct the PSLR analyses we used the “pls” and “pls depot” available in R statistical software version 3.2.4. The PLSR bi plot from the analysis of the first dataset showed that three (LAI, NDVI, and CHT) out of the four canopy traits were highly correlated, and by using multivariate analysis of variance (MANOVA), we detected 22 significant (p<0.01) marker-trait associations for the four traits. In contrast to the canopy trait analysis, our PLSR bi plot for the second dataset showed varying correlations for each of the 14 traits. Because of the lack of distinct trait similarities, MANOVA was not an ideal option to test for marker-trait associations so we implemented a jackknife re sampling technique. Jackknife re sampling failed to detect significant marker effects for several of the 14 elemental concentration traits. Thus, our future work aims to test other re sampling techniques such as boot straping for traits that do not exhibit high correlation. Overall, PLSR was a very informative way to comprehend data structure, displaying correlations within markers, within traits, and between marker and traits in one bi plot. Further studies are still needed to leverage detection of additional variance in correlated datasets and to prevent spurious results. To the best of our knowledge, this is the first time PLSR has been reported in such a context.
机译:在这项工作中,我们调查了对基因型-表型数据集执行偏最小二乘回归(PLSR)以识别标记-性状关联的适用性。我们利用在棉花(Gossypium hirsutum L.)重组自交系(RIL)作图种群上收集的数据,该种群在2012年炎热,干旱的环境中,在对比灌溉处理,浇水和有限水条件下进行了评估。两个表型数据这些数据集与遗传数据结合使用,该遗传数据由分配给117个连锁组的841个标记基因座组成。第一个数据集包含使用移动式高通量表型平台收集的冠层性状,包括冠层温度(CT),归一化植被指数(NDVI)和冠层高度(CHT),而叶面积指数(LAI)来自NDVI和CHT测量。第二个表型数据集包括14个元素浓度测量值,对应于以下元素:P,K,Ca,Mn,Fe,Zn,Ni,Cu,As,Co,Rb,Mo,S和Mg。为了进行PSLR分析,我们使用了R统计软件版本3.2.4中的“ pls”和“ pls软件仓库”。根据第一个数据集的分析得出的PLSR bi图显示,四个冠层性状中的三个(LAI,NDVI和CHT)高度相关,并且通过使用多元方差分析(MANOVA),我们检测到22个显着性(p < 0.01)四个性状的标记-性状关联。与冠层性状分析相比,第二个数据集的PLSR bi图显示了14个性状中每个特征的变化相关性。由于缺乏明显的性状相似性,MANOVA并不是测试标记-性状关联的理想选择,因此我们实施了折刀重采样技术。折刀重采样未能检测到14种元素浓度特征中几个特征的显着标志物效应。因此,我们未来的工作旨在测试其他重采样技术,例如引导捆绑,以显示不具有高度相关性的特征。总体而言,PLSR是理解数据结构的一种非常有用的方法,可以在一个双图中显示标记内,特征内以及标记与特征之间的相关性。仍需要进一步研究以利用相关数据集中其他方差的检测并防止虚假结果。据我们所知,这是在这种情况下首次报告PLSR。

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