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Characterization of from the Italian Alps with AFLP Markers and Correlation with Climatic Variables

机译:带有AFLP标记的意大利阿尔卑斯山的特征及其与气候变量的相关性

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Supina bluegrass (Poa supina Schrad.) has the potential for expanded use as a turfgrass, yet its characterization with DNA markers is limited. Our objectives were to characterize amplified fragment length polymorphism (AFLP) variation and determine correlations with climatic variables on in situ leaf collections from 46 locations across the Italian Alps. Using the STRUCTURE program, marker data differentiated the collections into three genetic groups. The groups were verified with analysis of molecular variance and analysis of variance on principal coordinate (PCO) scores (P 0.01). For PCO analysis, the first three dimensions (Dims) explained 12, 6, and 5% of the total collection-location variation, respectively, and Dim 1 strongly distinguished the three STRUCTURE groups. Correlations of Dim 1 and 2 scores with collection-location temperature and precipitation variables were often significant over STRUCTURE groups but generally not within groups (P 0.05). However, Dim 3 correlations with climatic variables were frequent both within and across STRUCTURE groups, suggesting a more fundamental association. The correlations of PCOs with climate could result from incidental genomic differences and/or from linkage of plant traits with markers that covaried with climate. The results showed considerable marker variation for supina bluegrass across different climatic areas in the Italian Alps, suggesting that phenotypic variation for agronomic and turf traits is also likely.
机译:Supina bluegrass(Poa supina Schrad。)具有作为草皮草广泛使用的潜力,但其DNA标记的表征受到限制。我们的目标是表征扩增的片段长度多态性(AFLP)变异,并确定与来自意大利阿尔卑斯山46个地点的原位叶集上气候变量的相关性。使用STRUCTURE程序,标记数据将集合分为三个遗传组。通过分子方差分析和主坐标(PCO)得分方差分析对各组进行验证(P <0.01)。对于PCO分析,前三个维度(Dims)分别解释了总收集位置变化的12、6和5%,而Dim 1则强烈区分了三个STRUCTURE组。在结构组中,Dim 1和2得分与收集地点温度和降水变量之间的相关性通常很显着,但在组内通常不相关(P <0.05)。但是,在结构组内和结构组之间,与气候变量的Dim 3相关性很常见,表明存在更基本的相关性。 PCO与气候的相关性可能是由于偶然的基因组差异和/或植物性状与随气候而变化的标记之间的联系。结果表明,在意大利阿尔卑斯山的不同气候区域,sup草的标记物差异很大,这表明农艺性状和草皮性状也可能有表型变异。

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