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Plant Physiol. Feb 2011; 155(2): 617–627.
Published online Nov 18, 2010. doi:  10.1104/pp.110.166249
PMCID: PMC3032454

Genetic Dissection of Barley Morphology and Development1,[W][OA]

Abstract

Since the early 20th century, barley (Hordeum vulgare) has been a model for investigating the effects of physical and chemical mutagens and for exploring the potential of mutation breeding in crop improvement. As a consequence, extensive and well-characterized collections of morphological and developmental mutants have been assembled that represent a valuable resource for exploring a wide range of complex and fundamental biological processes. We constructed a collection of 881 backcrossed lines containing mutant alleles that induce a majority of the morphological and developmental variation described in this species. After genotyping these lines with up to 3,072 single nucleotide polymorphisms, comparison to their recurrent parent defined the genetic location of 426 mutant alleles to chromosomal segments, each representing on average <3% of the barley genetic map. We show how the gene content in these segments can be predicted through conservation of synteny with model cereal genomes, providing a route to rapid gene identification.

In 1928, the eminent American geneticist and plant breeder L.J. Stadler published a manuscript in Science demonstrating that ionizing radiation could increase the mutation frequency in barley (Hordeum vulgare) and that the induced mutations were transmitted to subsequent generations (Stadler, 1928). His observations ignited the field of plant mutation research that, over the last 80 years, has both explored the potential of mutation breeding in crop improvement (Harten, 1998; Ahloowalia, 2004; Lundqvist, 2009) and generated considerable basic understanding about fundamental processes of plant morphology, physiology, and development. The barley research community actively exploited the simple diploid genetics of the crop, particularly during the heyday of mutation research in the 1950s to 1970s, ultimately incorporating characterized mutant lines into collections that grew to contain thousands of accessions. Of particular note was the Scandanavian mutation research program established by the Swedish geneticists H. Nilsson-Ehle and A. Gustafsson that provided a legacy of over 10,000 different characterized mutants that remain today expertly stored in the NordGen genebank (http://www.nordgen.org/).

Barley mutants have been used to isolate or validate genes such as nitrate reductase (Somers et al., 1983), key genes in the anthocyanin pathway (von Wettstein, 2007), a gene responsible for the floral bract phenotype HOODED (Muller et al., 1995), the row-type gene SIX-ROWED SPIKE1 (VRS1; Komatsuda et al., 2007), the hull adhesion gene NAKED CARYOPSIS (NUD; Taketa et al., 2008), plant height genes UZU DWARF (UZU; Chono et al., 2003) and SLENDER1 (Chandler et al., 2002), several endosperm development genes (Felker et al., 1983; Morell et al., 2003; Röder et al., 2006; Clarke et al., 2008), and two disease lesion mimic mutations NECROTIC1 (Rostoks et al., 2006) and NECROTIC.S1 (Zhang et al., 2009) among others. However, despite these individual achievements, with few exceptions (Pozzi et al., 2003; Rossini et al., 2006), the barley mutant resources have not yet been systematically explored using the tools of modern genetics. Unlike Arabidopsis (Arabidopsis thaliana), the large size of the barley genome and lack of a genome sequence have precluded community-wide positional cloning efforts.

As primary barley mutants were induced or discovered in a range of accessions, which after mutagenesis also contained a different spectrum of background mutations, direct comparisons between lines are compromised, especially for subtle, environmentally sensitive phenotypes. To overcome these issues, repeated backcross-based transfer of a mutant locus into the genetic background of a common recurrent parent (with phenotypic selection at each cycle) has been applied. The outcome of this effort for each mutant is a pair of Near Isogenic Lines (NILs) that are characterized by having a relatively small genetic interval originating from the donor that contains the mutated locus, embedded in the genome of the recurrent parent. The theory of backcrossing and various types of genetic analyses involving backcrossing experiments in a wide range of species have been documented extensively in the literature (Hospital, 2005). The development of NILs can be accelerated considerably by molecular marker-assisted selection (Frisch and Melchinger, 2005), and today marker-assisted backcross breeding is commonly used in crop improvement.

A series of NILs in the same recurrent parent background can also be used to dissect traits at a genome-wide scale. In Arabidopsis, six developmental traits with different heritabilities were analyzed using a recombinant inbred line population in parallel with a genome-wide NIL population. The NILs had greater power than the recombinant inbred line population to detect small-effect quantitative trait loci, at the expense of local resolution (Keurentjes et al., 2007). In maize (Zea mays), a set of 89 NILs was created using marker-assisted selection to analyze flowering-time traits (Szalma et al., 2007). In soybean (Glycine max), an iron-inefficient NIL and differential seed protein content NIL were analyzed using several existing and emerging methodologies for genetic introgression mapping: single-feature polymorphism analysis, Illumina GoldenGate single nucleotide polymorphism (SNP) genotyping, and de novo SNP discovery via RNA-Seq analysis of next-generation sequence data, with the latter being most informative (Severin et al., 2010). In barley, an extensive backcrossing program was initiated in the mid-1980s to introgress mutated loci from the worldwide collection of morphological and developmental mutants into a common genetic background, the cultivar Bowman (Franckowiak et al., 1985; Fig. 1).

Figure 1.
Phenotypes of some barley backcross-derived lines carrying mutations affecting morphological and developmental processes such as tillering and plant stature (A–E), lateral floret development (F–L), inflorescence branching (M–O), ...

We recently developed two high-throughput SNP-based genotyping arrays based on Illumina’s oligo pool assays (OPAs) that each allow simultaneous genotyping of 1,536 SNPs across the barley genome (Close et al., 2009). Using this platform we genotyped several barley reference populations allowing the development of a gene-based consensus map containing 2,943 gene-based SNPs and covering a genetic distance of 1,636 centimorgans (cM; Close et al., 2009). This gene-based map provides a template for the analysis of wide range of barley genetic stocks with the markers themselves, providing a homology bridge to the fully sequenced genomes of rice (Oryza sativa), maize, Brachypodium, and sorghum (Sorghum bicolor). As a result, conserved synteny can provide a glimpse of the putative gene content of any region of the barley genome. Here, we report the development and genotypic analysis of an extended collection of NILs containing mutant alleles that induce a majority of the morphological and developmental variation described in barley.

RESULTS

Characteristics of the Bowman NIL Collection

We produced a series of independent barley backcross-derived lines containing mutant alleles by recurrent backcrossing followed by selfing, with phenotypic selection in each cycle. Photographs of some mutant groups are shown in Figure 1. For all lines, the two-rowed U.S. spring-type cultivar Bowman (Franckowiak et al., 1985) was used as the recurrent parent. A summary of the basic characterization data is presented according to the level of backcrossing in Figure 2 and Supplemental Table S1.

Figure 2.
Basic features of the Bowman NIL population. A, Population-wide distribution of backcrossing levels. Absolute (histogram, left y axis) and cumulative (line graph, right y axis) frequencies are plotted. Relative frequencies of the individual lines are ...

The final collection of 881 lines varied in genetic complexity from F1 inbred lines to BC10 inbred lines (Fig. 2A). Of these, 768 lines were BC2 inbred or greater and as such can more accurately be considered NILs. The original mutation containing donor genotypes were assembled, characterized, and documented by the barley mutation research community over a 50-year period in the mid-20th century. They were represented by over 300 different barley accessions. However, approximately one-half of the mutations were identified in one of eight cultivated barley genotypes (cultivars; Fig. 2B). The remaining donors were represented in less than 20 NILs each. For simplicity, we refer to all 881 lines as the Bowman NILs.

Two hundred ninety-eight (34%) of the introgressed phenotypic variants were spontaneous mutants while 583 (56%) were induced by approximately 30 different mutagenic agents (Fig. 2C). The Bowman NILs are mostly affected in barley flower (236 lines), leaf (164 lines), and culm development (166 lines; Figs. 1 and and2D2D).

Genotypes of the Bowman NILs

Genotypic analysis of the most common donor lines with up to 3,072 SNPs (BOPA1 and BOPA2; Close et al., 2009) allowed us to predict that, in the majority of cases, mutant alleles originating from these donors and retained in the Bowman NILs would be carried on genomic introgressions with different regional SNP-marker haplotypes from those of the recurrent parent. Consequently, in lines that retain only a small donor genome segment, we make the assumption that any observed SNP polymorphisms are most likely to be genetically linked to the mutant alleles. After genotyping all 881 Bowman NILs, we observed, as expected, that different backcross generations revealed considerable variation in genetic complexity (Fig. 3; Supplemental Table S2). In terms of the frequency of polymorphic SNPs between the NIL and the cv Bowman, the complexity reduction correlated well with the backcross generation following the established model (Briggs, 1938; Fig. 3, A and B). Only 37 Bowman NILs revealed no polymorphisms after this analysis. In these lines we conclude that either the effective mutation was induced in a region of the genome with the same haplotype as Bowman or the introgression is too small to be detected at the current marker density. In some cases, where the seed stocks were available as a mixture of homozygous dominant and heterozygous genotypes (for example, lines carrying male sterile genetic [msg] mutations) we may have selected for genotyping the homozygous dominant line, resulting in genotypes indistinguishable from the cv Bowman.

Figure 3.
Reduction in genome complexity by backcrossing. Individual value plots show predicted or theoretical fraction of the heterozygous recurrent parent genome after each backcrossing event (A), calculated using the following formula r = (2m − 1)/2 ...

Size and Chromosomal Distribution of the Introgressed Regions

The majority of the SNPs used to genotype the Bowman isolines were also used to construct a barley consensus map (Close et al., 2009). This map context enables a straightforward estimation of the number of introgressions present in individual NILs and their size. For both of these parameters we found concordance with theoretical predictions (Briggs, 1938; Fig. 3, A, C, and D). Low resolution linkage assignments based on a combination of isozyme data and testcrosses with classical genetic stocks have been reported previously for 461 Bowman NILs, and 295 of these (those with one or two introgressions) can be compared to our mapping results (Supplemental Tables S1 and S2). At the chromosomal level, there is 78% correspondence between the classical and the SNP mapping data. The noncorresponding fraction can likely be explained by less-powerful classical mapping techniques that possibly led to more misplacement, by genetic stock mix ups during generation of the backcross-derived lines or by residual introgressions that, while retained, are unlinked to the trait.

The introgressed segments in the Bowman NILs reveal a relatively even distribution across the barley genome (Fig. 4). However, on average 3 times higher introgression frequencies were found at the genetic centromeres (crudely defined as the central regions of each barley chromosome where the frequency of SNP markers on the genetic map is significantly increased). These represent recombinationally inactive but physically expansive regions that have been estimated to contain between 30% and 50% of mapped barley genes. An increased frequency of mutations (and hence introgressions) contained within these specific genetic intervals is therefore not unexpected.

Figure 4.
Chromosomal distribution of introgressed segments containing mutant alleles. Four hundred thirty lines that have one or two donor introgressions into Bowman were partitioned into three groups based on introgression size, small (<10 cM), medium ...

We considered those NILs that contain very small and defined introgressions (<10 cM or <0.6% of barley genetic map) an important class. Small introgressions provide an opportunity to explore rapid candidate gene identification and isolation, especially when the mutant locus in the Bowman NILs is supported by a range of additional allelic variants. Of the 881 Bowman NILs, we classified 176 as small introgressions of <10 cM. These represent a range of phenotypes and chromosomal locations (Fig. 4; Supplemental Tables S1 and S2). The average introgression size for this group is 3.7 cM, ranging from 0 cM (32 lines) to 9 to 10 cM (11 lines).

The presence of multiple mutant alleles is valuable for both confirming gene location and eliminating spurious background introgressions. After genotypic alignment genes represented by multiple alleles form groups of complementary overlapping introgressions (COIs) that better resolve the genetic interval containing a mutant locus and eliminate unlinked introgressions. Based on phenotypic and genotypic information, 414 lines form 98 groups (genes) of COIs altogether representing 35 different phenotypic classes. In the majority of cases these effectively eliminate spurious introgressions from further genetic analysis. However, for about one-half of the groups, there is no gain in resolution from using COIs, as the line containing the smallest introgression is completely contained within the introgressions present in the other lines. However, for 18 groups a 10% to 90% reduction of the putative gene-containing region can be inferred (see example in Supplemental Fig. S1).

Exploiting Synteny for Gene Prediction in Barley

To explore the feasibility of mutant gene identification using the SNP mapping data and synteny models, we analyzed five NILs where the identity of the mutant locus is known: BW069 and BW880 lines containing the THIRD OUTER GLUME (HvTRD1) gene on chromosome 1H (Whipple et al., 2010), BW898 containing HvVRS1 (Komatsuda et al., 2007) on 2H, BW885 containing HvUZU (Chono et al., 2003) on 3H, and two loci on chromosome 7H, namely BW638 containing the HvNUD1 gene (Taketa et al., 2008) and BW905 containing HvWAXY (Rohde et al., 1988). Based on the assumption that synteny is conserved with rice and that major structural rearrangements are absent, we estimated the number of genes contained within the introgressed segments.

For HvTRD1 there is no barley EST available; hence no SNP assay or probe set has been designed (Fig. 5A). The rice ortholog of HvTRD1 is NECK LEAF1 (OsNL1). Based on our barley-rice synteny model, the inferred position of OsNL1 or HvTRD1 is 132.5 cM on chromosome 1H. This is within the 6.7-cM introgression defined by four polymorphic SNPs of the HvTRD1 carrying line BW880; however, only two of them have rice homologs in the syntenic position. Even so, the inferred (model-based) position of the HvTRD1 gene is less than 100 rice gene models away (Fig. 5A). By considering additional markers inferred from comparative rice-barley gene expression analyses the interval can be further reduced to six rice genes (K. Houston, unpublished data).

Figure 5.
Predictions of the position and precision of locating HvTRD1 (A), HvVRS1 (B), HvUZU (C), and HvNUD1 and HvWAXY (D) genes using Bowman NIL genotypic data, in conjunction with the current barley consensus gene map and barley-rice conservation of synteny ...

A comparison between Bowman and BW898 (HvVRS1) identified six polymorphic SNPs within a 6.3-cM interval on chromosome 2H (Fig. 5B). Although the rice ortholog of HvVRS1 is not at a conserved syntenic position, five of the six SNPs identify rice orthologs that span a 2.5-Mb region on chromosome Os04 containing 303 gene models. The SNPs immediately flanking HvVRS1 define a 2.8-cM interval, spanning 300 kb in rice and 34 gene models (Fig. 5B). In BW885 (HvUZU), 10 of 15 polymorphic SNPs clustered on chromosome 3H defined a 10.3-cM introgression close to the genetic centromere (Fig. 5C). A separate introgression remained on chromosome 1H. Nine of the 3H SNP-containing genes have clear rice homologs, and seven belong to a conserved block of synteny covering 2.3 Mb containing 320 gene models. The SNPs immediately flanking HvUZU are 5.6 cM apart, delimiting a 370-kb region containing 56 gene models (Fig. 5C). For HvNUD1, three cosegregating SNPs were located within a 190-kb region of the rice genome containing 27 gene models (Fig. 5D). This region contains 20 gene models (approximately 100 kb) proximal to the rice homolog of HvNUD1, but still within the 95% confidence boundaries of the synteny model. Finally, BW905 (HvWAXY) has a 17.8-cM introgression defined by eight SNPs. The genes containing these SNPs all have rice homologs, with five spread over a 1.2-Mb region on rice chromosome Os06 that harbors 169 gene models. The two HvWAXY flanking markers are 360 kb apart and the interval contains 50 putative genes (Fig. 5D).

DISCUSSION

A theoretical framework for estimating the proportion of donor genome likely to remain in NILs developed by backcross breeding (Briggs, 1938; Hospital, 2001) has led to the widespread use of at least six backcross generations to recover an introgressed phenotype in an otherwise recurrent parent background. Our detailed genotypic characterization of over 800 BC1 to BC10 derived inbred lines provides, at an unprecedented scale, an accurate and representative practical appraisal of the reduction in genome complexity achieved by different levels of backcrossing. Using a combination of related parameters (Fig. 3) our results reveal a good concordance with the theoretical predictions (Briggs, 1938; Hospital, 2001).

Four hundred twenty-six Bowman NILs with introgressed segments of <50 cM in length (i.e. <3% of the barley genetic map) are powerful resources for both understanding the biology of the affected phenotypes and for gene discovery by forward genetics. However, as this remains laborious in large genome cereals, it is routinely enhanced by exploiting conservation of synteny with the fully sequenced rice, Brachypodium, sorghum, and maize genomes (Flavell, 2009). The gene-based SNP platform used to genotype the Bowman NILs facilitates this analysis as the gene sequences represent a common currency that reliably anchors almost 90% of barley genetic map to the sequence of these genomic models (Goff et al., 2002; Supplemental Table S3).

To explore the feasibility of mutant gene identification using the SNP mapping data and synteny models, we analyzed five NILs where the identity of the mutant locus is known: HvTRD1 (Whipple et al., 2010), HvVRS1 (Komatsuda et al., 2007), HvUZU (Chono et al., 2003), HvNUD1 (Taketa et al., 2008), and HvWAXY (Rohde et al., 1988). Based on the assumption that synteny is conserved with rice and that major structural rearrangements are absent, we estimated the number of genes contained within the introgressed segments. The number of positional candidate rice gene models ranged from 22 (HvNUD1) to 303 (HvVRS1). While these examples illustrate possible outcomes from inferring the location of a mutated locus using the NIL genotypic data alone, they also provide context for the likely impact of our data on morphological and developmental biology, and more broadly on trait genetics in the Triticeae cereals. The defining SNPs are ready-to-go gene-based markers that enable highly efficient targeting for positional cloning projects. In such endeavors the emerging draft barley genome sequence will play an increasingly important role (Schulte et al., 2009), allowing individuals to focus on positionally and functionally consistent candidate genes where simple targeted resequencing of wild-type and mutant alleles would represent a rapid validation approach. For many mutants, such an off-the-shelf validation strategy is already available in the large collections of documented mutant allele series housed and maintained in germplasm collections such as NordGen (http://www.nordgen.org/) and the U.S. Department of Agriculture National Small Grains Collection (http://www.ars-grin.gov/npgs/acc/acc_queries.html). Predicted gene frequencies, especially in highly recombinogenic regions, suggest that for many loci, gene identification and validation by this route is both realistic and possible.

Despite the above successes, in the majority of cases, and especially those for mutants lacking multiple allelic variants, positional cloning using recombinant populations of outcrossed Bowman lines will remain essential to determining the identity of a mutated gene. Collecting this additional genetic data is important because there will be instances where mutations have been generated in donor lines that have identical regional haplotypes to Bowman, which could result in comparative analysis being conducted in the wrong genetic region. We have therefore crossed approximately 100 selected Bowman mutants to the barley cultivars Bowman, Morex, and Barke, generating extended F2 and/or F3 populations specifically for positional cloning applications. In this context, the Bowman NIL genotypic data gives a head start by providing mapped and polymorphic genetic markers that can be used immediately to validate the location of a mutant gene. Subsequently, through comparative genetic analysis, assembly of the putative regional barley gene content may identify strong candidate genes or even functional orthologs of characterized genes in related grasses.

Selection during backcrossing was mostly based on a single character (reflected in the locus name), but many mutations act pleiotropically, affecting multiple aspects of barley plant morphology and development (e.g. Fig. 2, AP–AV). One task for the future will be a detailed and systematic comparative phenotypic analysis of the Bowman NILs at the whole plant level at different developmental stages. When the identity of many individual genes is determined, such a phenotypic data set may facilitate the interpretation of a gene’s action and interactions underlying related phenotypes.

CONCLUSION

Many trait-based quantitative trait loci analyses have been conducted in barley (and in closely related species) and by meeting the twin imperatives of positional and biological concordance, our hypothesis is that many of the mutants that we have genetically characterized represent extreme examples of natural genetic variation commonly measured as quantitative variation in natural or constructed populations (Druka et al., 2010). If this hypothesis is correct, the barley mutants described here provide a convenient and tractable Mendelian solution to the identification and characterization of genes controlling non-Mendelian or quantitative traits.

MATERIALS AND METHODS

Generation of the Bowman Lines

The generation of barley (Hordeum vulgare) lines with single morphological markers started in 1985 using genetic stocks with multiple morphological markers (Wolfe and Franckowiak, 1991). These included Master Dominant (GSHO 3450) and Master Recessive (GSHO 3451) stocks and other recessive phenotype stocks covering all seven barley chromosomes. Subsequently other genetic stocks from many sources were acquired and used for the backcrossing project (Supplemental Table S1). The two-rowed spring barley cultivar Bowman (PI 483237; Franckowiak et al., 1985) was selected as a recurrent female parent. Three to six F1 seeds were planted, followed by 60 to 120 F2 progenies. From each F2 progeny, two or three plants that visually exhibited the mutant phenotype were harvested. Four F3 seeds from one plant were sown and one was used for subsequent backcrosses.

Seed Availability

Seeds of the Bowman backcross-derived lines can be obtained from the Scottish Crop Research Institute (Invergowrie, Dundee, United Kingdom) by contacting Arnis Druka (ku.ca.ircs@akurd.sinra). Alternatively, they can be requested from the National Small Grains Collection, U.S. Department of Agriculture, Agricultural Research Service, National Small Grains Germplasm Research Facility, National Small Grains Collection (Aberdeen, Idaho) by contacting Harold E. Bockelman (vog.adsu.sra@namlekcob.dlorah), or from the Nordic Genetic Resource Center (Alnarp, Sweden) by contacting Morten Rasmussen (gro.negdron@nessumsar.netrom).

Genotyping

Plants were grown in a glasshouse maintained between 16°C and 24°C with natural light and supplemented with high-pressure sodium lamps to provide 16 h day length. Automated irrigation was used to keep compost reasonably wet. Fungicidal spraying and insecticidal fumigation was applied at regular intervals. One leaf tip at Zadoks 11 developmental stage was harvested and placed into 96-deep well blocks and used for DNA extraction using a Nucleoplex plant DNA kit (product no. 33300, Tepnel Life Sciences PLC) on a Nucleoplex machine (Tepnel Life Sciences PLC) according to the manufacturer’s protocols. DNA was eluted in 100 μL of 10 mm Tris (pH 8). DNA quality was assessed by running 2 μL of each sample on an ethidium bromide-stained 1% agarose gel and visualization under UV light. The DNA quantity was estimated by comparing sample band intensity to known amount of standard DNA (Hyperladder1, BIO-33025, Bioline).

SNP genotyping was carried out at the Southern California Genotyping Consortium (SCGC) at the University of California, Los Angeles. Between 500 ng and 1 μg of genomic DNA was provided in 96-well skirted v-bottom polypropylene microplates (catalogue no. MSP–9601) from Bio-Rad sealed with strip caps. Genomic DNA was quantified using a Quant-iT Picogreen dsDNA assay kit (Invitrogen no. P11496) and normalized to 50 ng per μL. A total of 250 ng of gDNA was used per reaction with 1,536 BOPA1 and BOPA2 SNPs typed in each reaction.

The multiplexed genotyping reactions (Golden Gate assay) themselves were based on well-characterized biochemical reactions but carried out under highly controlled and optimized conditions. An oligo pool containing allele-specific and locus-specific oligos tailed with IllumiCode sequences and universal primer sequences were created for 1,536 unique barley SNP loci per each pool (BOPA1 and BOPA2; Close et al., 2009). The oligo pool was allowed to hybridize to genomic DNA, undergo primer extension and ligation such that each allele generated a unique PCR template with common primer sequences. A multiplexed PCR generated labeled products from the templates and the amplified products were hybridized to the decoded array so that the genotype information for each locus was scanned, decompiled, and recorded by an Illumina 1000 SNP genotyping system.

Genotype Inference and Identification of the Polymorphisms

BeadLab output files (.idat) corresponding to cy3 and cy5 dye intensities for each sample were uploaded from the SCGC server for analysis. They were imported in the Beadstudio v2.0 (Ilumina, Inc.) software and genotype calls were calculated using Cluster All SNPs function, resulting in 683,941 (45.5%) AA genotype scores, 690,682 (45.9%) BB genotype scores, and 65,399 (4.3%) AB genotype scores. A total of 63,722 (4.2%) cy3 and cy5 pairs did not result in reliable signal, therefore were assigned as no call (NC). The cumulative frequency genotype call distribution across the SNPs and across the lines shows that the majority of AB and NC calls are due to underperforming SNPs, rather than lines (DNA samples). Thus, only 11 lines had call rates less than 0.9; of those, two had 0.58 and 0.73, the rest had better than 0.8.

All the lines were included in the analysis, but 342 markers that had low marker score or were not informative (low level of allelic discrimination) were removed from the analysis. Further refinement of the genotypes was by visual inspection of the raw data. Thus, genotypes were reported by 1,194 SNP markers and consecutively used to identify those that are polymorphic between cv Bowman and each NIL.

After preliminary data analysis, 84 NILs that had no or a single polymorphism were genotyped with BOPA2. Summary statistics of the genotype scores for these 84 lines was similar to that obtained by the BOPA1 genotyping of 978 NILs: 54,717 (42.4%) AA calls; 68,229 (52.8%) BB calls; 1,431 (1.1%) AB calls; and 4,647 (3.6%) were assigned as NC. BOPA2 SNPs that were polymorphic between Bowman and each NIL were combined with those identified by BOPA1, aligned to the barley consensus map (Supplemental Table S2), and used for the analysis of the introgression number and size (Fig. 3).

Note that in the case of mutants that are not viable as homozygotes (e.g. Msg lines), the single plant chosen for genotypic analysis would have had a 1:4 chance of being wild type at the mutant locus due to segregation in an effective F2. The data from these lines should be treated with the necessary caution.

Consensus Linkage Map

Construction of the barley consensus linkage map has been reported before (Close et al., 2004). In summary, the map was assembled based on 334 segregating double-haploid lines represented by three biparental F1 doubled-haploid-based populations Steptoe × Morex, Morex × Barke, and OWB-D × OWB-R. The map consisted of 965 loci represented by 2,945 SNP markers.

Rice Physical Map—Barley Genetic Map Alignment and the Model Development

The Institute for Genomic Research rice (Oryza sativa) gene build v5 was used for building synteny models. The number of gene models was reduced from 56,278 to 41,129 genes by excluding repeated elements and their genes. The consensus sequences of the barley EST assemblies (Close et al., 2007) numbers 21, 32, and 35 were used for the homology search against the rice genomic sequence using the tblastX algorithm (Altschul et al., 1990) with e-value cutoff <e-05, resulting in 38,975 top hits for the assembly number 21, 31,265 for number 32, and 36,053 for number 35. The total number of unique rice hits was 17,868. Transcript-derived markers (TDMs; Potokina et al., 2008) were integrated in the SNP-based map as described previously (Druka et al., 2008). The map distances in the integrated map were adjusted by taking into account TDM mapping data (A. Druka, unpublished data). Scatterplots of the gene (SNP and TDM marker) order values from the barley consensus map and homologous gene order values from the rice physical map identified the general pattern of blocks with high conservation of synteny (Supplemental Table S3). Small inversions within the blocks were rotated, and genes that were clearly outside the synteny region were removed. These blocks were used to predict the position of barley genes in rice and vice versa.

Supplemental Data

The following materials are available in the online version of this article.

Supplementary Material

[Supplemental Data]

Acknowledgments

We thank Joe DeYoung at SCGC for performing the genotypic analysis.

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