Kumar Bhupender, Yankanchi Shrikant, Singh Rakhi, Sarkar Debjyoti, Kumar Pardeep, Kumar Krishan, Choudhary Mukesh, Jat Bahadur Singh, Jat H S
ICAR-Indian Institute of Maize Research, Ludhiana, Punjab 1410045, India.
Food Chem (Oxf). 2025 Apr 24;10:100256. doi: 10.1016/j.fochms.2025.100256. eCollection 2025 Jun.
Maize, as a staple crop, contributes significantly to global nutritional security. However, improving its nutritional quality, including grain zinc (GZn), grain iron (GFe), kernel oil (KO), protein quality (PQ), and content (PC), is difficult due to the complex and polygenic nature of these traits. In traditional quantitative trait loci (QTLs) mapping, different populations tested across variable environments have resulted in heterogeneous findings, highlighting the challenge of QTL instability. Therefore, we tested whether Meta-QTL (MQTL) analysis enables the identification of stable QTLs with broader allelic coverage and higher mapping resolution for effective marker-assisted selection (MAS) of complex traits. A comprehensive literature search revealed 29 mapping studies encompassing 308 QTLs for the targeted traits. A total of 34 stable MQTLs were identified, with an average CI of 4.59 cM. These MQTLs were located on all ten maize chromosomes, with phenotypic variance explained (PVE %) ranging from 7.3 % (MQTL1_2) to 49.0 % (MQTL3_2). Furthermore, the analysis revealed six MAS-friendly and five hotspot MQTLs. Besides, 591 CGs were identified underlying these MQTLs, of which 14 have known roles in grain filling, metal homeostasis, and fatty acid biosynthesis in maize. In silico analysis confirmed the tissue-specific expression of these 14 CGs. MQTL analysis effectively refined the genomic regions (4.86 folds) linked with nutritional quality and identified stable MQTLs and CGs. These findings will be useful for developing nutritionally enriched varieties through MAS and genetic engineering.
玉米作为一种主粮作物,对全球营养安全做出了重大贡献。然而,由于这些性状的复杂性和多基因性质,提高其营养品质,包括籽粒锌(GZn)、籽粒铁(GFe)、籽粒油(KO)、蛋白质品质(PQ)和含量(PC)具有一定难度。在传统的数量性状基因座(QTL)定位中,在不同环境下测试的不同群体产生了异质的结果,突出了QTL不稳定性的挑战。因此,我们测试了Meta-QTL(MQTL)分析是否能够识别具有更广泛等位基因覆盖范围和更高定位分辨率的稳定QTL,以便对复杂性状进行有效的标记辅助选择(MAS)。一项全面的文献检索揭示了29项定位研究,涵盖了针对目标性状的308个QTL。总共鉴定出34个稳定的MQTL,平均置信区间为4.59厘摩。这些MQTL位于所有十条玉米染色体上,表型变异解释率(PVE%)范围从7.3%(MQTL1_2)到49.0%(MQTL3_2)。此外,分析还揭示了6个对MAS友好的MQTL和5个热点MQTL。此外,在这些MQTL中鉴定出591个候选基因(CG),其中14个在玉米籽粒灌浆、金属稳态和脂肪酸生物合成中具有已知作用。电子分析证实了这14个CG的组织特异性表达。MQTL分析有效地细化了与营养品质相关的基因组区域(4.86倍),并鉴定出稳定的MQTL和CG。这些发现将有助于通过MAS和基因工程培育营养丰富的品种。