...
首页> 外文期刊>Indian journal of agricultural research >Diallel analysis for yield, yield traits and foliar disease resistance traits in groundnut [Arachis hypogaea (L.)].
【24h】

Diallel analysis for yield, yield traits and foliar disease resistance traits in groundnut [Arachis hypogaea (L.)].

机译:Diallel分析花生的产量,产量性状和抗叶病性状[Arachis hypogaea(L.)]。

获取原文
获取原文并翻译 | 示例

摘要

Combining ability of eight diverse genotypes for yield and foliar disease resistance traits was estimated to assess the type of gene action governing the yield and disease resistance traits and to identify genotypes suitable for use as parents in breeding for high yielding associated with foliar disease resistance. Twenty-eight F1s (excluding reciprocals) from an eight parental diallel cross and their parents were evaluated in a randomized block design. Data were recorded on sixteen traits including morphological, yield and yield traits and foliar disease resistance traits. Highly significant GCA and SCA effects recorded for almost all the studied traits, but the SCA effects were lesser than the GCA effects indicated the additive type of gene action suggested that the selection for high yield and for foliar disease resistance should be effective in early generations. Strong association between parental means and GCA effects for yield and disease resistance traits suggested that the per se performance of the parental line could be used as a predictor of the capability of a line to transmit the foliar disease resistance and yielding traits to its progenies. The parental lines, GPBD 4 and ICG (FDRS) 79 were found to be suitable as good donors in a foliar disease resistance breeding program.
机译:估计了八种不同基因型的产量和叶片抗病性状的结合能力,以评估控制产量和抗病性状的基因作用类型,并确定适合用作亲本的基因型,用于育种与叶片抗病性相关的高产。来自八个亲本二代杂交的二十八个F 1 (不包括倒数),其亲本采用随机区组设计进行评估。记录了16个性状的数据,包括形态,产量和产量性状以及叶片抗病性状。记录的几乎所有研究性状均表现出极显着的GCA和SCA效应,但SCA效应小于GCA效应,表明基因作用的加性类型表明,高产和抗叶病抗性的选择在早期应有效。亲本平均值与GCA对产量和抗病性状的影响之间有很强的关联性,表明亲本品系的本身性能可以用作该品系将叶片抗病性和产量性状传递给其后代的能力的预测指标。发现亲本系GPBD 4和ICG(FDRS)79适合作为抗叶病育种计划的良好供体。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号