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Efficiency of ITS Sequences for DNA Barcoding in Passiflora (Passifloraceae)

机译:ITS序列对西番莲(西番莲科)DNA条形码编码的效率

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DNA barcoding is a technique for discriminating and identifying species using short, variable, and standardized DNA regions. Here, we tested for the first time the performance of plastid and nuclear regions as DNA barcodes in Passiflora. This genus is a largely variable, with more than 900 species of high ecological, commercial, and ornamental importance. We analyzed 1034 accessions of 222 species representing the four subgenera of Passiflora and evaluated the effectiveness of five plastid regions and three nuclear datasets currently employed as DNA barcodes in plants using barcoding gap, applied similarity-, and tree-based methods. The plastid regions were able to identify less than 45% of species, whereas the nuclear datasets were efficient for more than 50% using “best match” and “best close match” methods of TaxonDNA software. All subgenera presented higher interspecific pairwise distances and did not fully overlap with the intraspecific distance, and similarity-based methods showed better results than tree-based methods. The nuclear ribosomal internal transcribed spacer 1 (ITS1) region presented a higher discrimination power than the other datasets and also showed other desirable characteristics as a DNA barcode for this genus. Therefore, we suggest that this region should be used as a starting point to identify Passiflora species.
机译:DNA条形码是一种使用短,可变和标准化的DNA区域来区分和识别物种的技术。在这里,我们首次测试了西番莲中质体和核区域作为DNA条形码的性能。该属在很大程度上具有可变性,具有900多种具有高度生态,商业和观赏重要性的物种。我们分析了代表西番莲四个亚属的222个物种的1034个种质,并使用条形码间隔,相似性和基于树的方法评估了五个质体区和当前用作植物DNA条形码的三个核数据集的有效性。质体区域能够识别不到45%的物种,而使用TaxonDNA软件的“最佳匹配”和“最佳紧密匹配”方法,核数据集的效率超过50%。所有亚属均表现出更高的种间成对距离,并且与种内距离不完全重叠,基于相似性的方法显示出比基于树的方法更好的结果。核糖体内部转录间隔区1(ITS1)区域具有比其他数据集更高的区分能力,并且还显示出其他理想的特征,作为该属的DNA条形码。因此,我们建议将该区域用作识别西番莲物种的起点。

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