High-throughput phenotyping and deep learning to analyze dynamic panicle growth and dissect the genetic architecture of yield formation

Zedong Geng , Yunrui Lu , Lingfeng Duan, Hongfei Chen, Zhihao Wang, Jun Zhang, Zhi Liu, Xianmeng Wang, Ruifang Zhai, Yidan Ouyang, Wanneng Yang
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Abstract

The dynamic growth of shoots and panicles determines the final agronomic traits and yield. However, it is difficult to quantify such dynamics manually for large populations. In this study, based on the high-throughput rice automatic phenotyping platform and deep learning, we developed a novel image analysis pipeline (Panicle-iAnalyzer) to extract image-based traits (i-traits) including 52 panicle and 35 shoot i-traits and tested the system using a recombinant inbred line population derived from a cross between Zhenshan 97 and Minghui 63. At the maturity stage, image recognition using a deep learning network (SegFormer) was applied to separate the panicles from the shoot in the image. Eventually, with these obtained i-traits, the yield could be well predicted, and the R2 was 0.862. Quantitative trait loci (QTL) mapping was performed using an extra-high density single nucleotide polymorphism (SNP) bin map. A total of 3,586 time-specific QTLs were identified for the traits and parameters at various time points. Many of the QTLs were repeatedly detected at different time points. We identified the presence of cloned genes, such as TAC1, Ghd7.1, Ghd7, and Hd1, at QTL hotspots and evaluated the magnitude of their effects at different developmental stages. Additionally, this study identified numerous new QTL loci worthy of further investigation.

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利用高通量表型和深度学习分析动态圆锥花序生长并剖析产量形成的遗传结构
嫩枝和圆锥花序的动态生长决定了最终的农艺性状和产量。然而,对于大群体来说,很难人工量化这种动态变化。在本研究中,我们基于高通量水稻自动表型平台和深度学习,开发了一种新型图像分析管道(Panicle-iAnalyzer)来提取基于图像的性状(i-traits),包括 52 个圆锥花序和 35 个嫩枝 i-traits。在成熟阶段,使用深度学习网络(SegFormer)进行图像识别,以分离图像中的圆锥花序和嫩枝。最终,利用这些获得的 i-traits 可以很好地预测产量,R2 为 0.862。利用超高密度单核苷酸多态性(SNP)分区图进行了数量性状位点(QTL)作图。针对不同时间点的性状和参数,共鉴定出 3,586 个时间特异性 QTL。许多 QTLs 在不同的时间点被重复检测到。我们在 QTL 热点处发现了 TAC1、Ghd7.1、Ghd7 和 Hd1 等克隆基因,并评估了它们在不同发育阶段的影响程度。此外,这项研究还发现了许多值得进一步研究的新 QTL 位点。
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