Mora-Poblete Freddy, Maldonado Carlos, Henrique Luma, Uhdre Renan, Scapim Carlos Alberto, Mangolim Claudete Aparecida
Institute of Biological Sciences, University of Talca, Talca, Chile.
Centro de Genómica y Bioinformática, Facultad de Ciencias, Universidad Mayor, Santiago, Chile.
Front Plant Sci. 2023 Aug 1;14:1153040. doi: 10.3389/fpls.2023.1153040. eCollection 2023.
Maize ( L.), the third most widely cultivated cereal crop in the world, plays a critical role in global food security. To improve the efficiency of selecting superior genotypes in breeding programs, researchers have aimed to identify key genomic regions that impact agronomic traits. In this study, the performance of multi-trait, multi-environment deep learning models was compared to that of Bayesian models (Markov Chain Monte Carlo generalized linear mixed models (MCMCglmm), Bayesian Genomic Genotype-Environment Interaction (BGGE), and Bayesian Multi-Trait and Multi-Environment (BMTME)) in terms of the prediction accuracy of flowering-related traits (Anthesis-Silking Interval: ASI, Female Flowering: FF, and Male Flowering: MF). A tropical maize panel of 258 inbred lines from Brazil was evaluated in three sites (Cambira-2018, Sabaudia-2018, and Iguatemi-2020 and 2021) using approximately 290,000 single nucleotide polymorphisms (SNPs). The results demonstrated a 14.4% increase in prediction accuracy when employing multi-trait models compared to the use of a single trait in a single environment approach. The accuracy of predictions also improved by 6.4% when using a single trait in a multi-environment scheme compared to using multi-trait analysis. Additionally, deep learning models consistently outperformed Bayesian models in both single and multiple trait and environment approaches. A complementary genome-wide association study identified associations with 26 candidate genes related to flowering time traits, and 31 marker-trait associations were identified, accounting for 37%, 37%, and 22% of the phenotypic variation of ASI, FF and MF, respectively. In conclusion, our findings suggest that deep learning models have the potential to significantly improve the accuracy of predictions, regardless of the approach used and provide support for the efficacy of this method in genomic selection for flowering-related traits in tropical maize.
玉米(L.)是世界上种植面积第三大的谷类作物,在全球粮食安全中发挥着关键作用。为提高育种计划中优良基因型的选择效率,研究人员致力于识别影响农艺性状的关键基因组区域。在本研究中,就开花相关性状(抽雄-吐丝间隔期:ASI、雌穗开花:FF和雄穗开花:MF)的预测准确性而言,比较了多性状、多环境深度学习模型与贝叶斯模型(马尔可夫链蒙特卡罗广义线性混合模型(MCMCglmm)、贝叶斯基因组基因型-环境互作模型(BGGE)以及贝叶斯多性状多环境模型(BMTME))的性能。利用约290,000个单核苷酸多态性(SNP),对来自巴西的258个热带玉米自交系组成的群体在三个地点(坎比拉-2018年、萨博迪亚-2018年以及伊瓜特米-2020年和2021年)进行了评估。结果表明,与在单一环境中使用单性状方法相比,采用多性状模型时预测准确性提高了14.4%。与多性状分析相比,在多环境方案中使用单性状时预测准确性也提高了6.4%。此外,在单性状和多性状以及单环境和多环境方法中,深度学习模型始终优于贝叶斯模型。一项互补的全基因组关联研究确定了与26个开花时间性状相关候选基因的关联,并识别出31个标记-性状关联,分别解释了ASI、FF和MF表型变异的37%、37%和22%。总之,我们的研究结果表明,深度学习模型有潜力显著提高预测准确性,无论采用何种方法,并为该方法在热带玉米开花相关性状的基因组选择中的有效性提供了支持。