Levina Anna V, Hoekenga Owen A, Gordin Mikhail, Broeckling Corey, De Jong Walter S
School of Integrative Plant Science, Cornell University, Ithaca, NY, United States.
Cayuga Genetics Consulting Group LLC, Ithaca, NY, United States.
Front Plant Sci. 2023 Apr 19;14:1108351. doi: 10.3389/fpls.2023.1108351. eCollection 2023.
Compositional traits in potato [ L.] are economically important but genetically complex, often controlled by many loci of small effect; new methods need to be developed to accelerate analysis and improvement of such traits, like chip quality. In this study, we used network analysis to organize hundreds of metabolic features detected by mass spectrometry into groups, as a precursor to genetic analysis. 981 features were condensed into 44 modules; module eigenvalues were used for genetic mapping and correlation analysis with phenotype data collected by the Solanaceae Coordinated Agricultural Project. Half of the modules were associated with at least one SNP according to GWAS; 11 of those modules were also significantly correlated with chip color. Within those modules features associated with chipping provide potential targets for selection in addition to selection for reduced glucose. Loci associated with module eigenvalues were not evenly distributed throughout the genome but were instead clustered on chromosomes 3, 7, and 8. Comparison of GWAS on single features and modules of clustered features often identified the same SNPs. However, features with related chemistries (for example, glycoalkaloids with precursor/product relationships) were not found to be near neighbors in the network analysis and did not share common SNPs from GWAS. Instead, the features within modules were often structurally disparate, suggesting that linkage disequilibrium complicates network analyses in potato. This result is consistent with recent genomic studies of potato showing that chromosomal rearrangements that create barriers to recombination are common in cultivated germplasm.
马铃薯(Solanum tuberosum L.)的成分性状具有重要经济价值,但遗传复杂,常受多个微效基因座控制;因此需要开发新方法来加速对此类性状(如薯片品质)的分析和改良。在本研究中,我们利用网络分析将通过质谱检测到的数百个代谢特征进行分组,作为遗传分析的前奏。981个特征被浓缩为44个模块;模块特征值用于遗传图谱构建以及与茄科协调农业项目收集的表型数据进行关联分析。根据全基因组关联研究(GWAS),一半的模块与至少一个单核苷酸多态性(SNP)相关;其中11个模块也与薯片颜色显著相关。在这些模块中,除了选择降低葡萄糖含量外,与薯片加工相关的特征为选择提供了潜在靶点。与模块特征值相关的基因座并非均匀分布于整个基因组,而是聚集在3号、7号和8号染色体上。对单个特征和聚集特征模块的GWAS比较常常能鉴定出相同的SNP。然而,在网络分析中,具有相关化学性质(例如,具有前体/产物关系的糖苷生物碱)的特征并非相邻,且在GWAS中没有共享共同的SNP。相反,模块内的特征在结构上往往差异很大,这表明连锁不平衡使马铃薯的网络分析变得复杂。这一结果与最近的马铃薯基因组研究一致,该研究表明,在栽培种质中,造成重组障碍的染色体重排很常见。