Zhong Tao, Mullens Alex, Morales Laura, Swarts Kelly L, Stafstrom William C, He Yijian, Sermons Shannon M, Yang Qin, Lopez-Zuniga Luis O, Rucker Elizabeth, Thomason Wade E, Nelson Rebecca J, Jamann Tiffany, Balint-Kurti Peter J, Holland James B
Department of Entomology and Plant Pathology, North Carolina State University, Raleigh, North Carolina, 27695, USA.
Department of Crop Sciences, University of Illinois Urbana-Champaign, Urbana, Illinois, 61801, USA.
Plant J. 2025 Jun;122(5):e70228. doi: 10.1111/tpj.70228.
In this study, we characterized a panel of 1264 maize near-isogenic lines (NILs), developed from crosses between 18 diverse inbred lines and the recurrent parent B73, referred to as nested NILs (nNILs). In this study, 888 of the nNILs were genotyped using genotyping-by-sequencing (GBS). Subsequently, 24 of these nNILs, and all the parental lines, were re-genotyped using a high-density single nucleotide polymorphism (SNP) chip. A novel pipeline for calling introgressions, which does not rely on knowing the donor parent of each nNIL, was developed based on a hidden Markov model (HMM) algorithm. By comparing the introgressions detected using GBS data with those identified using chip data, we optimized the HMM parameters for analyzing the entire nNIL population. A total of 2969 introgressions were identified across the 888 nNILs. Individual introgression blocks ranged from 21 bp to 204 Mbp, with an average size of 17 Mbp. By comparing SNP genotypes within introgressed segments to the known genotypes of the donor lines, we determined that in about one third of the lines, the identity of the donors did not match expectation based on their pedigrees. We characterized the entire nNIL population for three foliar diseases. Using these data, we mapped a number of quantitative trait loci (QTL) for disease resistance in the nNIL population and observed extensive variation in effects among the alleles from different donor parents at most QTL identified. This population will be of significant utility for dissecting complex agronomic traits and allelic series in maize.
在本研究中,我们对一组1264个玉米近等基因系(NILs)进行了特征分析,这些近等基因系由18个不同的自交系与轮回亲本B73杂交培育而成,称为巢式近等基因系(nNILs)。在本研究中,使用简化基因组测序(GBS)对888个nNILs进行了基因分型。随后,使用高密度单核苷酸多态性(SNP)芯片对其中24个nNILs和所有亲本系进行了重新基因分型。基于隐马尔可夫模型(HMM)算法开发了一种新的用于检测渗入片段的流程,该流程不依赖于了解每个nNIL的供体亲本。通过比较使用GBS数据检测到的渗入片段与使用芯片数据识别的渗入片段,我们优化了用于分析整个nNIL群体的HMM参数。在888个nNILs中总共鉴定出2969个渗入片段。单个渗入片段的长度范围从21bp到204Mbp,平均大小为17Mbp。通过将渗入片段内的SNP基因型与供体系的已知基因型进行比较,我们确定在大约三分之一的品系中,供体的身份与其系谱预期不符。我们对整个nNIL群体的三种叶部病害进行了特征分析。利用这些数据,我们在nNIL群体中定位了多个抗病性数量性状位点(QTL),并观察到在大多数已鉴定的QTL上,来自不同供体亲本的等位基因效应存在广泛差异。该群体对于剖析玉米复杂的农艺性状和等位基因系列具有重要用途。