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Ciência Rural

versão impressa ISSN 0103-8478versão On-line ISSN 1678-4596

Cienc. Rural vol.48 no.4 Santa Maria  2018  Epub 16-Abr-2018 


Population structure of Chinese southwest wheat germplasms resistant to stripe rust and powdery mildew using the DArT-seq technique

População de germoplasmas resistentes de trigo empregando a técnica de sequenciamento Dart-seq

Tianqing Chen1  2 

Piyada Alisha Tantasawat1 

Wei Wang2 

Xu Gao2 

Liyi Zhang2  *

1School of Crop Production Technology, Suranaree University of Technology, 111 University Avenue, Muang District, Nakhon Ratchasima 30000, Thailand.

2Guizhou Institute of Upland Crops, Guizhou Academy of Agricultural Sciences, Guiyang 550006, China.


Understanding genetic variability in existing wheat accessions is critical for collection, conservation and use of wheat germplasms. In this study, 138 Chinese southwest wheat accessions were investigated by genotyping using two resistance gene makers (Pm21 and Yr26) and DArT-seq technique. Finally, about 50% cultivars (lines) amplified the specific allele for the Yr26 gene (Gwm11) and 40.6% for the Pm21 gene (SCAR1265). By DArT-seq analysis, 30,485 markers (6486 SNPs and 23999 DArTs) were obtained with mean polymorphic information content (PIC) value 0.33 and 0.28 for DArT and SNP marker, respectively. The mean Dice genetic similarity coefficient (GS) was 0.72. Two consistent groups of wheat varieties were identified using principal coordinate analysis (PCoA) at the level of both the chromosome 6AS and the whole-genome, respectively. Group I was composed of non-6VS/6AL translocation lines of different origins, while Group II was composed of 6VS/6AL translocation (T6VS/6AL) lines, most of which carried the Yr26 and Pm21 genes and originated from Guizhou. Besides, a model-based population structure analysis revealed extensive admixture and further divided these wheat accessions into six subgroups (SG1, SG2, SG3, SG4, SG5 and SG6), based on their origin, pedigree or disease resistance. This information is useful for wheat breeding in southwestern China and association mapping for disease resistance using these wheat germplasms in future.

Key words: Triticum aestivum L.; Population structure; DArT-seq; 6VS/6AL translocation.


O conhecimento da estrutura da população é essencial para o mapeamento de associação de resistência a doenças para a população de trigo. Neste estudo, a técnica de DART-seq™ foi usada para genotipar o genoma inteiro de cultivares de trigo. Finalmente, 30,485 marcadores (6486 SNPs e 23999 dardos) foram obtidos, e dois grupos de variedades de trigo foram identificados por meio de análise principal-coordenadas (PCoA) do nível de todo o genoma e o nível 6AS cromossomo. O grupo I foi composto por linhas não T6VS/6Al de diferentes origens, enquanto o Grupo II foi composto de linhas T6VS/6Al, sendo que da maioria destes realizados os genes Yr26 e PM21 originários de Guizhou.

Palavras-chave: germoplasma de trigo; estrutura populacional; genes de resistência; T6VS/6Al


Common wheat (Triticum aestivum L.) is a worldwide grown crop and has an important role in the world food security (IJAZ & KHAN, 2009). China is the largest country for wheat production. Wheat yield in China is being promoted by breeding and culture techniques but also confronts kinds of risks, such as diseases. Wheat stripe rust and powdery mildew are the major diseases in China, especially in the southwestern region, which cause huge yield loss (WAN et al., 2007; ZHANG et al., 2016). Wheat breeding lines 92-R series and Guinong (GN) series, which are both derived from the cross of three species (common wheat, durum wheat and Haynaldia villosa), carry resistance to both stripe rust and powdery mildew and are wheat-Haynaldia villosa 6VS/6AL translocation (T6VS/6AL) lines (CHEN et al., 1995; LI et al., 2016). The disease resistance is mainly conferred by the stripe rust resistance gene Yr26 and powdery mildew resistance gene Pm21, which are located on 1BS and 6VS, respectively (MA et al., 2001; CHENG et al., 2006). After the 92-R series and GN series releasing, a lot of resistant wheat cultivars (lines) have been bred in southwestern China (LONG et al., 1998; HUANG et al., 2000). However, genetic relationship and resistance genes distribution are not clear for these germplasms.

Since the development of biotechnologies, molecular marker techniques, such as AFLP, SSR and SNP, have been widely used in the analysis of genetic diversity in common wheat (CHAO et al., 2010; PETROVIC et al., 2017). But all of them have various degrees of limitations (AKBARI et al., 2006). Diversity arrays technology (DArT) is a microarray hybridisation-based technique, which can detect thousands of loci in a single test without need of the sequence information (WENZL et al., 2004). Recently, a genotyping-by-sequencing (GBS) method combining DArT with next-generation sequencing (NGS), called DArT-seq, has been developed. The technique can detect both SNPs and DArTs using cost-effective and efficient strategies (RAMAN et al., 2014). Due to its rapid, high throughput and cost-effective characters, DArT-seq has been widely used for genetic diversity studies, linkage mapping, QTL identification in biparental mapping population and genome wide association studies (GWAS) in wheat (LI et al., 2015; BALOCH et al., 2017; KAUR et al., 2017) and many other crops over the previous four years (COURTOIS et al., 2013; SANTOS et al., 2016).

In the present study, a collection consisting mainly of wheat resources from southwestern China was genotyped from whole genomes using the DArT-seq technique, meanwhile, Yr26 and Pm21 gene loci were also scanned using specific markers. The main objective of this study was to: (i) assess the extent of the Southwestern China wheat genetic diversity; (ii) characterize the distribution of the Yr26 and Pm21 gene loci; (iii) identify impact of 6VS on population structure of southwestern China wheat.


The 138 wheat (Triticum aestivum L.) cultivars (lines) in this study were mainly collected in winter wheat regions of southwestern China. Of these, 75 cultivars were collected from Guizhou province, 40 from Sichuan province. Besides, 23 cultivars were collected from other regions of China (Jiangsu, Hubei, Henan, Shanxi, Shaanxi, Beijing and Gansu) (Additional file 1).

Genomic DNA was extracted from young leaf tissue of each genotype using the protocol recommended by Diversity Arrays Technology Pty Ltd. (DArT P/L) (JAMES, 2005). Two markers were used to scan for resistance gene loci in this study, including the SCAR marker (SCAR1265) for Pm21 and the SSR marker (Gwm11) closely linked to the Yr26. The PCR reactions were performed according to the optimised conditions for Pm21 (LIU et al., 1999) and Yr26 (MA et al., 2001). Genotyping of the whole genome was conducted at DArT P/L (Canberra, Australia). The DArT-seq technology used the PstI/TaqI restriction enzymes for genome reduction and then DNA fragments were ligated with PstI specific adaptor. The adaptor was tagged with specific barcode sequences for each sample. Products of each sample were amplified for checking the quality and then pooled together. The instrument of Illumina Hiseq2000 was used for sequencing amplicons. After sequencing, the resulting sequences were filtered and target datasets were formed. At last, an analytical pipeline devised by DArT P/L was applied to yield scores of makers (DArTs and SNPs) (ZOU et al., 2014).

For each marker, the polymorphic information content (PIC) value was computed following the methods described by Zhang et al (2011). The Dice genetic similarity coefficient (GS) between pair of cultivars is computed according to the formula of Dice (1945). Principal coordinate analysis (PCoA) was performed in the programme of NTSYS-pc (version 2.21) using a Dice GS matrix. A model-based clustering approach (Bayesian clustering) was also performed to estimate the population structure of the 138 accessions using Structure V2.3.3 software (PRITCHARD et al., 2000). Admixture and independent allele frequencies model was used in estimating the proper subgroups. The number of subgroups (K) was set from 1 to10 with 5 runs performed separately. For each run, 5,000 iterations were carried out after a burn-in period of 5,000 iterations. ΔK was calculated according to Pritchard et al. (2000) to estimate the best subgroup number (K). Accessions were assigned to a subgroup if the probability of membership was greater than 70% (TYAGI et al., 2014). If membership was <70%, then the accessions were assigned to the mixed subgroup.


The DArT-seq method yielded 32,763 markers (8764 SNPs and 23,999 DArTs). Among them, 30,485 markers (6486 SNPs and 23,999 DArTs) with a call rate greater than 0.8 were deemed to be informative according to the DArT P/L instructions. The mean PIC value for SNPs was 0.28 and the median was 0.26; the mean value for DArT markers was 0.33 and the median was 0.37. Distribution pattern for SNP PIC values was almost symmetrical and the highest frequency (17%) of this marker had a value in the range of 0.20 to 0.25. For DArT markers, the distribution of PIC values was asymmetrical and skewed towards the higher values and most (32%) had a PIC value in the range of 0.45 to 0.50 (Figure 1). PIC value provides an estimate of the discriminating power of a marker. A PIC value higher than 0.5 is considered to be a sign of a very informative marker, while 0.5> PIC> 0.25 corresponded to an informative marker (BOTSTEIN et al., 1980). In the present study, the mean PIC value for both types marker was higher than 0.25, comparable to those observed in the study with same type marker (LOPES et al., 2015; SOHAIL et al., 2015), but lower than SSR marker (RAFEIPOUR et al., 2016; HONORE et al., 2017). PIC value is calculated as a maximum of 0.5 when a marker is scored as 50% of 0 and 50% of 1. Therefore, DArT and SNP are less informative than SSR, which has more alleles for a given locus. In the study, DArTs revealed a greater number of polymorphisms than SNPs. However, BALOCH et al. (2017) reported a mean PIC values 0.265 and 0.302 for DArT and SNP markers and the distribution of PIC values was asymmetrical in both markers systems with durum wheat. It may be due to that variation (SNPs and INDELs) at restriction enzyme cleavage sites and restriction fragments are more diverse in our common wheat accessions.

Figure 1 Distribution of the DArT and SNP markers for different PIC value. 

The Dice GS was calculated using the genotyping data of 30,485 informative markers for all possible pairs of accessions. It ranged from 0.60 to 0.99, with a mean value of 0.72. The Dice GS value was higher than the two studies reported earlier (PRASAD et al., 2000; NI et al., 2012). It may suggest that the 138 genotypes used in this study were moderately diverse. The genetic diversity loss in our collection is probably because the study mainly focused on wheat resistant germplasms from two adjacent provinces in southwestern China, which share a similar ecology and some core wheat parents.

Gene loci scanning showed that about 50% cultivars (lines) amplified the specific allele (193bp) for the Yr26 gene (Gwm11) and 40.6% for the specific allele (1265bp) for the Pm21 gene (SCAR1265) (Additional file 2). Similar results were reported in other studies (WAN et al., 2011; JIANG et al., 2014). Considering that Pm21 is derived from the T6VS/6AL lines (CAO et al., 2010; ZHAN et al., 2010), PCoA was performed based on genotype data of the 769 markers (SNP and DArT) on chromosome 6AS. A very clear separation was observed with the origin of the PCO-1 axis as a dividing line (Figure 2A). The PCO-1 and PCO-2 accounted for 62.4% and 6.0% of the total variation, respectively. A significant correlation (r=0.8, P<0.01) was observed between cultivars in Group II (Figure 2A) and those carrying the Pm21 gene. Combining results of both the PCoA and correlation analysis, we deduced that Group I was the 6AS/6AL group and Group II was the T6VS/6AL group (Figure 2A).

Figure 2 Population structure based on PCoA using genotype data from 6AS markers (A) or from 30,485 informative markers at the whole-genome level (B). 

The PCoA was also performed based on whole genome genotype data. A two-dimensional scatter plot (Figure 2B) shows that PCO-1 and PCO-2 accounted for 12.3% and 6.0% of the total variation, respectively. Two clear groups were also distinguished based on the origin of the PCO-1 axis. The PCoA pattern was highly consistent with the results obtained using genotype data of the 769 markers on chromosome 6AS. Three exceptions (GN19-4, Q0209-4 and LM33) were found by comparing the two figures (Figure 2A and Figure 2B). The Group I was highly clustered by 92 cultivars with no obvious separation of cultivars (lines) according to geographic regions. However, the Group II was spread widely along both the PCO-1 and PCO-2 axis. Forty-eight cultivars were in this group, mainly from Guizhou province. The genetic diversity of wheat was not completely related to geographic distribution. Similar results were obtained by SALEM et al. (2014). Formation of the two groups (6AS/6AL and T6VS/6AL) might be induced by differential selection (CROSSA et al., 2007). Cultivars in Group II were mainly from Guizhou, where the selection pressure for powdery mildew resistance was more considerable than Sichuan, so 6VS segment was saved by selection in breeding process. Similarly, it was also reported that two groups were formed based on Rht8 locus and it neighbour markers on chromosome 2D for European wheat (NIELSEN et al., 2014) or 1RS/1BL translocation for northern Chinese wheat (ZHANG et al., 2011). In the study, several lines were scattered between the two groups and it is possible that these lines carry 6VS segments of different sizes, because there was a low frequency of pairing and recombination between chromosome 6VS from Haynaldia villosa and 6AS from cultivated wheat species (CAO et al., 2011).

The PCoA results shown in figure 3A and 3B were based on the presence of the Yr26 and Pm21 gene loci, respectively. As shown in figure 3A, the distribution of the cultivars carrying Yr26 loci was uneven, with more in Group II than in Group I. Almost all Pm21-carrying cultivars were in Group II, while very few Pm21-carrying cultivars did in Group I (Figure 3B). Cultivars in the Group II were mainly from Guizhou province and with better resistance, which was proved in the field evaluation (LI et al., 2014; CHEN et al., 2016).

Figure 3 Distribution of resistance gene carriers in different groups based on PCoA at the whole-genome level. A. Plot based on cultivars carrying or not carrying the Yr26 gene locus (Gwm11). B. Plot based on cultivars carrying or not carrying the Pm21 gene locus (SCAR1265). 

Furthermore, population structure was investigated using the Structure software. Delta K (ΔK) values peaked at K = 6, thus these accessions could be divided into 6 subgroups (Figure 4a and 4b). Accessions with the membership value of <70% to any cluster were considered as mixed. The remaining was assigned to the 6 subgroups, with 15(SG1), 19 (SG2), 9 (SG3), 12 (SG4), 3 (SG5) and 11 (SG6) accessions respectively. Besides, 69 accessions were assigned as mixed. Group I of PCoA was further roughly divided into SG1, SG2, SG3 and SG5, while Group II divided into SG4 and SG6 (Additional file 3). Similarly, KHAN et al. (2015) reported that Indian and Turkish wheat were divided into 2 major group by first or second principal coordinate according to ploidy level or geographical origin. But using a Bayesian model-based structure analysis, 3 subgroups were divided. In our study, the results between structure analysis and PCoA were inconsistent. The possible reason was that the PCoA had weak ability to discover the tiny population structure, because it only considered the first principal coordinate as a group differentiation criterion, which could explain 12.3% genetic variation for the whole genome level.

Figure 4 Model based subdivision of population structure. Plot (a) showed the estimation of the number of population by delta K value (ΔK). Plot (b) presents the population structure of the 138 wheat accessions deduced by membership coefficients (Q values).  

In the SG1, MY26 is a well-known cultivar, which was released in 1995 in Sichuan and then rapidly spread to Guizhou, Yunnan, Shaanxi and Hubei province, and led to the sixth wheat variety rotation of Sichuan (YU, 2003). MY26 and other 8 cultivars were directly or indirectly bred by line Fan 6, which were classified as Fan 6 series or MY series (WAN et al., 2004). In this study, 13 among the 15 accessions in SG1 were from Sichuan, and most of them had pedigree relationship with MY series. Among the 19 accessions in SG2, 15 were from Guizhou, including QM series, FY series and JYP series. Most of them were grown more than 10 years and lost their resistance to stripe rust and powdery mildew in Guizhou (HUANG et al., 2014; LI et al., 2014). This was also proved by the scanning of Yr26 and Pm21 gene markers in our study. In the SG3, all of 9 accessions had the relationship with GN series, though derived from different regions (6 from Sichuan, 2 from Guizhou and 1 from Gansu). Interestingly, 6VS or Pm21 were not detected in these accessions. The 6VS segment may be lost in breeding and separation process during a long period. In the SG4, all of 12 accessions were from Guizhou and bred through distant crosses, including GX series, P series and YG series, most of them carried both of the Pm21 and Yr26 gene loci and showed disease resistance in field (HUANG et al., 2014; LI et al., 2014). The pedigree carrying wild species made these cultivars heterogeneous compared to those in other subgroups and shown a far distance to other subgroups in scatter plot (Additional file 3). In the SG5, only 3 cultivars with GN series pedigree were involved, and derived from Sichuan, Henan and Hubei, respectively. Neither Yr26 nor pm21 gene loci were carried by the 3 cultivars. In the SG6, all of 11 accessions were from Guizhou and most of them were QM series with the kinship of GN series. Besides, all of cultivars in SG6 were 6VS/6AL translocation lines and carried both Yr26 and pm21 gene loci, which was contrary to those in SG3 and SG5. Indeed, they also showed a good performance in disease resistance in Guizhou (HUANG et al., 2014; LI et al., 2014). In the structure analysis, half of the wheat accessions (69) were assigned to mixed group indicating significant admixture. The similar result was also reported by TYAGI et al. (2014) and MACCAFERRI et al. (2015). This admixture was possibly a result of germplasm sharing among different breeding programs or frequent appearance of a few lines with favourable agronomic traits in multiple breeding programs (TYAGI et al., 2014). This is also proved by our study that many wheat resources from Sichuan and Guizhou shared common parents (GN series) in their pedigree. Structure analysis could provide the detailed population structure of the wheat accessions and help us to utilize them reasonably.


DArT-seq, based on GBS methods, is an effective means of developing qualitative DArT and SNP markers. By this technique, intermediate genetic diversity was observed in the tested 138 wheat accessions with the mean Dice GS evaluation. Using PCoA, two groups (6AS/6AL and T6VS/6AL) were recognised at the level of the whole genome and the 6AS chromosome. Cultivars in T6VS/6AL group had better resistance to stripe rust and powdery mildew, mainly due to the presence of Yr26 and Pm21 loci. Model based structure analysis further divided germplasms into 6 subgroups, and revealed more details in the population structure. Results of this study provided information for future breeding programs and may be useful for conservation of wheat genetic resources and association mapping.


The authors are grateful to Dr. Hugo Alfried Volkaert, Center for Agricultural Biotechnology, Kasetsart University, Thailand, for critical review of this manuscript. This study was financially supported by the National Natural Science Foundation of China (31660393), the Science and Technology Project of Guizhou Province (QKHJC20161147).


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CONFLICTThe authors have declared that no competing interests exist.

Received: January 22, 2016; Accepted: February 08, 2018; Revised: March 13, 2018

E-mail: *Corresponding author.

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