Arif Anjuman, Parveen Najma, Waheed Muhammad Qandeel, Atif Rana Muhammad, Waqar Irem, Shah Tariq Mahmud
Nuclear Institute of Agriculture and Biology (NIAB), Faisalabad, Pakistan.
Department of Plant Breeding and Genetics, University of Agriculture Faisalabad, Faisalabad, Pakistan.
Front Plant Sci. 2021 Feb 15;11:607869. doi: 10.3389/fpls.2020.607869. eCollection 2020.
This study was planned with the purpose of evaluating the drought tolerance of advanced breeding lines of chickpea in natural field conditions. Two methods were employed to impose field conditions; the first: simulating drought stress by growing chickpea genotypes at five rainfed areas, with Faisalabad as the non-stressed control environment; and the second: planting chickpea genotypes in spring to simulate a drought stress environment, with winter-sowing serving as the non-stressed environment. Additive main effects and multiplicative interaction (AMMI) and generalized linear models (GLM) models were both found to be equally effective in extracting main effects in the rainfed experiment. Results demonstrated that environment influenced seed yield, number of primary and secondary branches, number of pods, and number of seeds most predominantly; however, genotype was the main source of variation in 100 seed weight and plant height. The GGE biplot showed that Faisalabad, Kallur Kot, and Bhakkar were contributing the most in the GEI, respectively, while Bahawalpur, Bhawana, and Karor were relatively stable environments, respectively. Faisalabad was the most, and Bhakkar the least productive in terms of seed yield. The best genotypes to grow in non-stressed environments were CH39/08, CH40/09, and CH15/11, whereas CH28/07 and CH39/08 were found suitable for both conditions. CH55/09 displayed the best performance in stress conditions only. The AMMI stability and drought-tolerance indices enabled us to select genotypes with differential performance in both conditions. It is therefore concluded that the spring-sown experiment revealed a high-grade drought stress imposition on plants, and that the genotypes selected by both methods shared quite similar rankings, and also that manually computed drought-tolerance indices are also comparable for usage for better genotypic selections. This study could provide sufficient evidence for using the aforementioned as drought-tolerance evaluation methods, especially for countries and research organizations who have limited resources and funding for conducting multilocation trials, and performing sophisticated analyses on expensive software.
本研究旨在评估鹰嘴豆先进育种系在自然田间条件下的耐旱性。采用了两种方法来营造田间条件:第一种方法是在五个雨养地区种植鹰嘴豆基因型来模拟干旱胁迫,以费萨拉巴德作为非胁迫对照环境;第二种方法是在春季种植鹰嘴豆基因型以模拟干旱胁迫环境,以冬季播种作为非胁迫环境。结果发现,加性主效应和乘积互作(AMMI)模型与广义线性模型(GLM)在雨养试验中提取主效应方面同样有效。结果表明,环境对种子产量、一级和二级分枝数、荚果数和种子数的影响最为显著;然而,基因型是百粒重和株高变异的主要来源。GGE双标图显示,费萨拉巴德、卡卢尔科特和巴卡尔在基因型与环境互作中贡献最大,而巴哈瓦尔布尔、巴瓦纳和卡罗尔分别是相对稳定的环境。就种子产量而言,费萨拉巴德产量最高,巴卡尔产量最低。在非胁迫环境下生长的最佳基因型是CH39/08、CH40/09和CH15/11,而CH28/07和CH39/08在两种条件下均适宜。CH55/09仅在胁迫条件下表现最佳。AMMI稳定性和耐旱性指数使我们能够选择在两种条件下表现不同的基因型。因此得出结论,春季播种试验表明对植株施加了高强度的干旱胁迫,两种方法选择的基因型排名相当相似,而且人工计算的耐旱性指数在用于更好的基因型选择时也具有可比性。本研究可为使用上述方法作为耐旱性评估方法提供充分证据,特别是对于资源和资金有限、无法进行多点试验以及使用昂贵软件进行复杂分析的国家和研究机构。