利用基因组学和时间高通量表型技术加强芝麻的关联图谱绘制和产量预测。

IF 3.9 2区 生物学 Q1 GENETICS & HEREDITY
Plant Genome Pub Date : 2024-06-26 DOI:10.1002/tpg2.20481
Idan Sabag, Ye Bi, Maitreya Mohan Sahoo, Ittai Herrmann, Gota Morota, Zvi Peleg
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引用次数: 0

摘要

芝麻(Sesamum indicum)是一种重要的油籽作物,由于其营养和健康益处,市场需求不断增加。目前迫切需要开发和整合新的基于基因组的育种策略,以满足未来的需求。虽然基因组资源推动了芝麻的遗传研究,但高通量表型分析和纵向性状遗传分析的实施仍然有限。在此,我们结合高通量表型分析和随机回归模型,研究了多样性面板中芝麻生长季中植株高度、叶面积指数和五个光谱植被指数的动态变化。对表型和加性遗传轨迹的时间建模揭示了与芝麻生长周期相对应的独特模式。我们还利用各种模型和交叉验证方案对植株高度进行了纵向基因组预测和关联图谱绘制。在预测每个时间点的新基因型时,我们获得了中等的预测准确率,而在预测未来表型时,我们获得了中等到较高的预测准确率。关联图谱揭示了连接组 6、8 和 11 中的三个基因组区域,它们赋予了随时间和生长速度变化的性状。此外,我们还利用了时间性状与种子产量之间的相关性,并应用了多性状基因组预测。与单性状分析相比,我们的结果有所改进,尤其是在使用较早时间点的表型时,这凸显了利用高通量表型平台作为选育工具的潜力。我们的研究结果揭示了芝麻纵向性状的遗传控制,并强调了高通量表型技术在检测各种性状和基因型方面的潜力,可为芝麻育种工作提供信息,以提高产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging genomics and temporal high-throughput phenotyping to enhance association mapping and yield prediction in sesame.

Sesame (Sesamum indicum) is an important oilseed crop with rising demand owing to its nutritional and health benefits. There is an urgent need to develop and integrate new genomic-based breeding strategies to meet these future demands. While genomic resources have advanced genetic research in sesame, the implementation of high-throughput phenotyping and genetic analysis of longitudinal traits remains limited. Here, we combined high-throughput phenotyping and random regression models to investigate the dynamics of plant height, leaf area index, and five spectral vegetation indices throughout the sesame growing seasons in a diversity panel. Modeling the temporal phenotypic and additive genetic trajectories revealed distinct patterns corresponding to the sesame growth cycle. We also conducted longitudinal genomic prediction and association mapping of plant height using various models and cross-validation schemes. Moderate prediction accuracy was obtained when predicting new genotypes at each time point, and moderate to high values were obtained when forecasting future phenotypes. Association mapping revealed three genomic regions in linkage groups 6, 8, and 11, conferring trait variation over time and growth rate. Furthermore, we leveraged correlations between the temporal trait and seed-yield and applied multi-trait genomic prediction. We obtained an improvement over single-trait analysis, especially when phenotypes from earlier time points were used, highlighting the potential of using a high-throughput phenotyping platform as a selection tool. Our results shed light on the genetic control of longitudinal traits in sesame and underscore the potential of high-throughput phenotyping to detect a wide range of traits and genotypes that can inform sesame breeding efforts to enhance yield.

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来源期刊
Plant Genome
Plant Genome PLANT SCIENCES-GENETICS & HEREDITY
CiteScore
6.00
自引率
4.80%
发文量
93
审稿时长
>12 weeks
期刊介绍: The Plant Genome publishes original research investigating all aspects of plant genomics. Technical breakthroughs reporting improvements in the efficiency and speed of acquiring and interpreting plant genomics data are welcome. The editorial board gives preference to novel reports that use innovative genomic applications that advance our understanding of plant biology that may have applications to crop improvement. The journal also publishes invited review articles and perspectives that offer insight and commentary on recent advances in genomics and their potential for agronomic improvement.
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