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Additional File 22 of Evolution of Different Rice Ecotypes and Genetic Basis of Flooding Adaptability in Deepwater Rice by GWAS

Figshare(2022)

Zhejiang University | Central South University | Shandong Academy of Agricultural Sciences | Changhai Hospital | Xiamen University | Xuan Wu Hospital of the Capital Medical University | Guangxi Academy of Agricultural Science

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Abstract
Additional file 22 Table S21. Significant association signals for deepwater in the full populaiton detected using FaST-LMM.
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要点】:本文通过全基因组关联分析(GWAS)研究了不同水稻生态型及其在深水环境下的适应性遗传基础,发现与深水适应性相关的显著关联信号。

方法】:采用FaST-LMM方法进行全基因组关联分析。

实验】:实验使用全种群数据集,检测到与深水适应性相关的显著关联信号,具体结果记录在附加文件22的表格S21中。