Identification of Vegetatively Propagated Turf Bermudagrass Cultivars Using Simple Sequence Repeat Markers
文献类型: 外文期刊
第一作者: Wang, Zan
作者: Wang, Zan;Wu, Yanqi;Samuels, Tim;Tan, Chengcheng;Wang, Zan;Martin, Dennis L.;Gao, Hongwen
作者机构:
期刊名称:CROP SCIENCE ( 影响因子:2.319; 五年影响因子:2.631 )
ISSN: 0011-183X
年卷期: 2010 年 50 卷 5 期
页码:
收录情况: SCI
摘要: Accurate identification of bermudagrass (Cynodon spp.) cultivars is necessary to ensure the purity of the cultivars produced by sod farmers, to protect the intellectual property of cultivar developers, and to assure cultivar purity for the benefit of turfgrass consumers. Vegetatively propagated turf bermudagrass cultivars have been extensively used in the turf industry not only in the USA but also in many other countries. Accordingly, the objectives of the study were to examine simple sequence repeat (SSR) markers for their ability to distinguish commonly grown clonal turf bermudagrass cultivars, which were derived through crosses and mutations, from each other and their respective parent cultivars and to develop a set of SSR markers for accurate identification of commercially used clonal cultivars. Thirty-two clonal turf bermudagrass genotypes comprising 29 commercially released cultivars and 3 Oklahoma State University experimental lines were assessed by 11 microsatellite markers. A total of 141 DNA fragments were generated for the 11 primer pairs in the 32 bermudagrass genotypes, with an average of 12.8 bands per primer pair. Forty-four fragments were cultivar specific. The SSR markers successfully identified 22 cultivars when mutant cultivars had the same banding patterns as the 2 parent cultivars, 'Tifgreen' and 'Tifway'. It was concluded from the study that the SSR markers are highly polymorphic and can be utilized as a reliable tool for accurate cultivar identification in nonmutated bermudagrass.
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