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Genetic diversity among hexaploid wheat landraces with different geographical origins revealed by microsatellites: comparison with AFLP, and RAPD data

P. Strelchenko1, Kenneth Street2, O. Mitrofanova1, M. Mackay3 and F. Balfourier4

1All-Russian Research Institute of Plant Industry (VIR), St. Petersburg, Russia, www.vir.nw.ru Email p.strelchenko@vir.nw.ru
2
Genetic Resources Unit, International Centre for Agricultural Research in the Dry Areas, Aleppo, Syria
3
Australian Winter Cereals Collection, Tamworth, Australia
4
INRA Genetics and Plant Breeding Station, Clermont-Ferrand, France

Abstract

To investigate the genetic diversity of 78 landraces that originated from 22 countries and the relationships between them the polymorphism of 20 wheat microsatellite loci was estimated. Data obtained was later compared with the results of a more recent study of the same set of landraces using AFLP and RAPD methods. Each of the three approaches was useful for characterizing genetic diversity and defining relationships between landraces with different geographical origins. However SSRs were more effective genetic markers for detecting genotypes containing combinations of rare alleles. Multivariate statistics techniques were applied to identify groups of genetically similar landraces on the basis of the band data generated by both SSR and combined set of data. This analysis divided the landraces into European and Asian wheats. Within the Asian set the groups largely consisted of landraces originated from the same region. Distinctions between European and Asian wheats, and also between groups within Asian wheats, were mainly determined by differences in the frequency of a considerable number of SSR alleles or AFLP and RAPD bands. The incongruity between the taxonomic division of hexaploid wheats and relationships of the landraces revealed by DNA markers is discussed.

Media summary

Microsatellite markers are more effective than AFLPs and RAPDs for the characterization of wheat landrace genetic diversity and for detecting genotypes containing combinations of rare alleles.

Key Words

DNA polymorphism, wheat classification.

Introduction

Over thousands of years landraces of hexaploid wheats, with a genome composition of AABBDD, have developed under a variety of different edaphic and climatic environments. This has led to the evolution of a large number of ecotypes adapted to specific local environments. In the past attempts have been made to describe the eco-geographical differentiation of wheat using morphological and agronomical traits (Palmova 1935; Vavilov, 1964). Recent developments using PCR based methods have allowed fast and effective approaches for examining plant polymorphism at the DNA level. For example, up to now more than one thousand microsatellite markers (SSRs) have been developed and mapped in the wheat genome. The information generated can be applied for tagging resistance genes, identifying QTLs, marker-assisted selection and improvement of germplasm management. In this study SSRs were applied to characterize the genetic relationships between hexaploid wheat landraces with different geographical origins and compare the results with a previous study (Strelchenko et al., 2003) carried out using AFLP and RAPD markers.

Methods

Seventy eight landraces of hexaploid wheat, originating from 22 countries, were selected from the VIR germplasm collection. They included T. aestivum L., T. compactum Host, T. sphaerococcum Perc., T. petropavlovskyi Udach. et Migush., T. spelta L., T. macha Dek. et Men. and T. vavilovii (Tum.) Jakubz. In both the SSR and AFLP analyses the same genotypes of each landrace were studied. In the RAPD analysis 15-25 seedlings per each landrace were investigated. Classifications of landraces based on SSR, AFLP, RAPD and combined set (ALL) of data were performed by applying cluster and principal component analyses using the STATISTICA 6.0 software. Dice coefficient and Ward’s algorithm were used.

Results and discussion

Nineteen primer pairs: Xgwm2, 44, 46, 135, 190, 234, 251, 257, 260, 261, 312, 337, 341, 413, 427, 566, 626 and cfd71 (amplifies two independent loci) were used (Rder et al., 1998; Guyomarc’h et al., 2002). These primers characterized 20 SSR loci and represented one locus from each chromosome (excluding chromosome 6D). A total of 271 alleles were detected. The frequency of them varied from 0.01 to 0.69 with an average of 0.07. Of all the alleles detected, 146 alleles had a frequency lower than 0.05 and thus were considered as rare. The number of alleles per locus ranged from four for Xgwm415 to 21 for Xgwm312. These figures are in agreement with those recently published by Roussel et al (2004) on a set of 559 French bread wheat accessions. Five AFLP primer combinations (PstI-ACC/MseI-AGC, PstI-ACC/MseI-CAC, PstI-ACC/MseI-CCT, PstI-GGG/MseI-GAA and PstI-GGC/MseI-ACC) revealed 90 usable bands, which was 19% of the total number of detectable bands. A total of 125 polymorphic RAPD bands were analyzed using 28 random primers. The average frequencies of AFLP and RAPD bands were 0.46 and 0.39, respectively. In both analyses only 15% of the bands were identified as rare and 7% as very frequent (more than 0.95).

In our study, SSRs proved to be more effective genetic markers than AFLPs and RAPDs because they were fast and reliable, locus-specific, multi-allelic, and therefore convenient for a variety of purposes including detection of unique genotypes and assessment of genetic diversity. Among the landraces analysed the distribution of rare alleles ranged from 0 to 11, with a mean of 3.1 per genotype. However genotypes of T. aestivum from India (k-23974) and Pakistan (k-30665), T. compactum from China (k-44098) and T. spelta from Switzerland (k-24709) were the most unique and were characterised by a combination of more than six rare alleles. On the whole, distribution of the rare alleles over regions and among species was different. For example, they were two times more frequent among landraces from India and China than from Transcaucasia. Among the different species of wheat, T. spelta carried the most rare alleles at 4.4 per accession, followed by T. compactum with 2.8, while T. aestivum from Europe and Asia carried 2 and 2.6, rare alleles per accession, respectively.

The similarity matrices computed for all pairs of accessions based on SSR analysis using the Dice coefficient ranged from 0.00 (between 36 pairs of landraces) to 0.95 (between the two T. vavilovii genotypes) and averaged 0.19. Variation limits of the coefficient were 0.43-0.98, 0.43-0.93 and 0.43-0.95 with means of 0.69, 0.67 and 0.60 for AFLP, RAPD and ALL data analyses, respectively. Both Cluster Analysis (CA) and Principal Component Analysis (PCA) of SSR data indicated a complex pattern of genetic relationships between landraces. Using PCA, 24 groups were distinguished while CA identified 18 clusters (Fig.1). At the highest hierarchical level two families of clusters were revealed combining landraces either from Europe or Asia. Similar division of the accessions was revealed in our previous study (Strelchenko et al., 2003) using AFLP and RAPD markers. The SSR based dendrogram shows that, at a finer level, genotypes of European wheat combined into five clusters (A–E). These clusters included all landraces from the PCA based groups 1, 10, 12, 14-16, 19 and also landraces from groups 11, 13 and 18 which had maximal values for their factor loadings. However the majority of these landraces were not differentiated based on AFLP, RAPD and ALL data and are included into one group (1). Using SSR data the landraces from Asia are combined into 13 clusters (F–R) using CA and 14 groups (2–9, 17, 20–24) using PCA. There was a good similarity between separate clusters and majority of the PCA based groups (cluster F corresponded to group 2, G – 4, H – 5, J – 9, K – 17, L – 3, N – 20, P – 22 and R – 24). Fig.1 also illustrates the similarity between some of the groups revealed by different DNA markers (group 2 included landraces of T. aestivum and T. sphaerococcum from India; 4 – T. macha; 5 and 8 – T. spelta from Switzerland and Central Asia, respectively; 9 – T. aestivum from China). The total number of PCA based groups decreased as follow: SSR (24 groups) – AFLP (16) – RAPD (12) – ALL (10).

All three types of DNA markers allowed for a classification of the landraces in a way that reflected their geographic origin. For example, all marker systems showed a division between European and Asian wheats. Such a division has similarities to the classification of common wheat being divided into European and Asian “race groups” performed by Vavilov (1922-1923) or into subspecies – by Flaksberger (1935) and Dorofeev et al. (1979). It indicates primary evolutionary directions related to the historic and geographic distribution of hexaploid wheat in Europe and Asia. Furthermore, within Asia, wheat landraces originating from India, China and Central Asia all grouped independently.

The classification based on the combined set of 486 bands from different marker systems was the simplest and divided the landraces with a high degree of concurrence to geographical origin.

Thus group 1 included mainly landraces of T. aestivum from Europe, 2 – T. aestivum and T. sphaerococcum from India and Pakistan, 3 – T. aestivum and T. compactum from Central Asia, 4 – T. macha, 5 – T. spelta from Europe, 7 – T. aestivum from Caucasus mountains region, 8 – T. spelta from Central Asia, 9 – T. aestivum and T. compactum from China and Japan. In all cases the distinctions between clusters and groups were determined by differences in the frequency of a considerable number of alleles or amplified DNA fragments. Classifications based on DNA markers differ from existing taxonomic divisions of hexaploid wheats (Mac Key 1966; Dorofeev et al.1979; Miller 1987). Probably they reflect the genetic differentiation of hexaploid wheats more correctly because they assess distinctions revealed on the large number of genome loci while botanical classifications take into consideration morphological traits controlled by single genes.

Conclusion

The present study demonstrated the usefulness of SSR, AFLP, RAPD and a combined set of markers for the assessment of genetic diversity and the relationships between wheat landraces. However the microsatellite markers were shown to be superior for detecting genotypes with combinations of rare alleles. It was clearly demonstrated that genetic differentiation was closely correlated with geographical origin. The accessions were combined into groups of either European or Asian origin. Differences between them and clusters of accessions within Asian wheat were mainly defined by differences in the frequency of the SSR defined alleles and amplified DNA fragments in AFLP or RAPD analyses. It was pointed out that there was incongruity between the taxonomic division of hexaploid wheats and relationships of the landraces revealed by DNA markers.

Acknowledgements

The SSR analysis was carried out in the Institut National de la Recherche Agronomique (INRA) at Clermont-Ferrand and it was supported by a grant from INRA. This work was also supported by Australian Grains Research and Development Corporation.

References

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