Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Allelic Variation in Developmental Genes and Effects on Winter Wheat Heading Date in the U.S. Great Plains

Abstract

Heading date in wheat (Triticum aestivum L.) and other small grain cereals is affected by the vernalization and photoperiod pathways. The reduced-height loci also have an effect on growth and development. Heading date, which occurs just prior to anthesis, was evaluated in a population of 299 hard winter wheat entries representative of the U.S. Great Plains region, grown in nine environments during 2011–2012 and 2012–2013. The germplasm was evaluated for candidate genes at vernalization (Vrn-A1, Vrn-B1, and Vrn-D1), photoperiod (Ppd-A1, Ppd-B1 and Ppd-D1), and reduced-height (Rht-B1 and Rht-D1) loci using polymerase chain reaction (PCR) and Kompetitive Allele Specific PCR (KASP) assays. Our objectives were to determine allelic variants known to affect flowering time, assess the effect of allelic variants on heading date, and investigate changes in the geographic and temporal distribution of alleles and haplotypes. Our analyses enhanced understanding of the roles developmental genes have on the timing of heading date in wheat under varying environmental conditions, which could be used by breeding programs to improve breeding strategies under current and future climate scenarios. The significant main effects and two-way interactions between the candidate genes explained an average of 44% of variability in heading date at each environment. Among the loci we evaluated, most of the variation in heading date was explained by Ppd-D1, Ppd-B1, and their interaction. The prevalence of the photoperiod sensitive alleles Ppd-A1b, Ppd-B1b, and Ppd-D1b has gradually decreased in U.S. Great Plains germplasm over the past century. There is also geographic variation for photoperiod sensitive and reduced-height alleles, with germplasm from breeding programs in the northern Great Plains having greater incidences of the photoperiod sensitive alleles and lower incidence of the semi-dwarf alleles than germplasm from breeding programs in the central or southern plains.

Introduction

Hexaploid wheat is a widely cultivated, productive, and nutritionally important crop grown across most major agricultural regions of the world. In 2013 wheat was planted on more than 290 million hectares worldwide, which is more land than any other crop (http://faostat3.fao.org). Average global yield was estimated at 3.27 t ha-1. In the U.S. average yield was 3.17 t ha-1 for all classes of wheat and 2.46 t ha-1 for hard red winter wheat (http://www.ers.usda.gov), the predominant market class in the Great Plains region. The global success of wheat can be attributed to its adaptability to diverse management practices and environmental conditions [1].

Variation in flowering time tailors wheat to a particular target environment. Floral organs are susceptible to environmental stresses, and freezing temperatures, drought stress, or heat stress can damage delicate floral structures and reduce yield. Local adaptation can arise from direct or indirect selection of developmental timing best suited for local temperature and precipitation patterns, management practices, soil properties, or other environmental characteristics [2]. Fine-tuning plant development may increase yield and yield stability by timing growth and development around the type, onset, duration, and severity of stresses characteristic of the region. Wheat breeders typically select (directly or indirectly) for later flowering in northern regions to protect the developing spike from cold temperatures and earlier development at southern latitudes where it is more important to flower before the onset of heat stress. Later flowering is also associated with a delay in timing of other developmental events, such as the initiation of spikelet and floret primordia at double ridge, or other phenological events such as jointing, booting, and heading [3]. Later flowering can also affect yield potential by modifying spike and spikelet formation, such as by affecting the total number [4] or arrangement [5] of spikelet primordia initiated, or the number of fertile florets produced [6]

Three major genetic systems affect flowering time in wheat: vernalization, photoperiod, and earliness per se (EPS). Vernalization requirements control winter, spring, or facultative growth habit and are governed by at least three groups of loci (Vrn1, Vrn2, and Vrn3) [7]. Ancestral wheats were sensitive to vernalization and required a period of continuous cold temperature to transition from vegetative to reproductive growth. The most common source of spring growth habit (i.e., not requiring vernalization) is a dominant mutation at one or more Vrn1 loci (Vrn-A1, Vrn-B1, Vrn-D1), located on the long arm of the group 5 chromosomes [89]. Variation at other vernalization loci also contribute to quantitative variation in flowering time [10]. Dominant mutations at Vrn3 loci [11] reduce the vernalization requirement and recessive mutations at Vrn2 loci [1213] accelerate flowering time.

The photoperiod sensitivity system also provides broad adaptability to specific environmental conditions. Three homoeologous photoperiod loci (Ppd-A1, Ppd-B1, Ppd-D1) are located on the group 2 chromosomes [14]. Ancestral wheats were photoperiod sensitive and required long days to flower. Mutations at the photoperiod loci cause the photoperiod insensitive “day neutral” phenotype associated with earlier flowering in some modern-day bread wheats. Variation in photoperiod sensitivity is primarily controlled by allelic variants at Ppd-D1 [15] and copy number variants at Ppd-B1 [16]. Allelic variation at Ppd-A1 also affects photoperiod sensitivity, however the allelic effects of Ppd-A1 are weaker than Ppd-D1 or Ppd-B1 [17]. The photoperiod and vernalization pathways are integrated and epistatic interactions between photoperiod loci and Vrn1 loci are well characterized [18].

Additional variation in flowering time after vernalization and photoperiod requirements have been fulfilled is due to EPS. These small effect loci are numerous and heritable [2], but generally unstable across environments [19]. Less is known about EPS than the other genetic systems affecting flowering time. Further optimization of developmental timing is contributed by epistatic interactions among genes or QTL [19] and may be affected by gibberellin insensitivity through the reduced-height loci [20].

The reduced-height loci are known to affect growth and development in winter wheat [21]. Reduced-height genes encode DELLA proteins, which are growth repressors that are degraded by a process that involves gibberellin [22]. The reduced-height alleles Rht-B1b and Rht-D1b each have a single SNP that causes a premature stop codon, resulting in reduced sensitivity to gibberellic acid and therefore, semi-dwarf stature. Gibberellin insensitivity has been associated with earlier heading date in wheat, and Rht-B1b and Rht-D1b are the predominant semi-dwarf alleles in wheat worldwide [20]. Rht-B1b has been reported as the leading cause of semi-dwarf stature among winter wheat in the U.S. Great Plains region [23]. Guedira et al. [23] found the reduced-height alleles Rht-B1b and Rht-D1b to be widespread in U.S. germplasm, and Rht8c to be less common but linked with the photoperiod insensitive allele Ppd-D1a.

The allelic diversity of candidate loci known to affect heading date has been characterized in several worldwide [20, 24] and regional [2527] collections of spring and winter wheat. Analyses of core collections of germplasm have indicated substantial variation in the geographic distribution of vernalization and photoperiod alleles. Variation in the presence and distribution of alleles and haplotypes has been found to vary among continents e.g.,[24] and countries [26], with some haplotypes under-represented or absent from particular geographic regions. A more complete understanding of the genetic controls—including the allelic variants and effects of single genes, and distribution of favorable multi-locus genotypes—is important for plant breeders to prepare for future climate scenarios including those that are more variable or extreme than today’s conditions [2829].

We examined allelic variation, distribution, and effects of vernalization, photoperiod, and reduced-height loci in a collection of hard winter wheat germplasm representative of the U.S. Great Plains. This is the first article to determine allelic diversity at the photoperiod loci in winter wheat germplasm from the U.S. Great Plains. The objectives of the experiment were

  1. To characterize allelic variants at loci known to affect flowering time, including vernalization, photoperiod, and reduced-height genes;
  2. To assess the effect of allelic variants on heading dates in nine U.S. Great Plains environments; and
  3. To investigate temporal and geographic distribution of alleles and haplotypes among germplasm developed during different periods or from different regions of the U.S. where hard winter wheat is grown.

Materials and Methods

Germplasm

The germplasm was a collection of 299 winter wheat genotypes (or “entries”) comprising the Triticeae Coordinated Agricultural Project (http://www.triticeaecap.org) hard winter wheat association mapping panel (S1 Table). The entries included modern and historic cultivars and experimental breeding lines. Public breeding programs contributed 270 entries, private breeding programs contributed 27, and two were historic cultivars developed before 1900. The publically developed germplasm came from Nebraska (55 entries), Oklahoma (54 entries), Texas (51 entries), Colorado (34 entries), Kansas (30 entries), Montana (23 entries), South Dakota (21 entries), Michigan (1 entry), and North Dakota (1 entry). The entries were derived between 1874 and 2010, but most represent modern improvements and were derived after the Green Revolution. Only 19 were derived before 1960.

Environments and Experimental Design

The entries were evaluated in nine field trials conducted across the U.S. Great Plains region during 2011–2012 and 2012–2013, as described previously [30] and in Table 1. Each environment was a combination of location, year, and moisture treatment, with three possible moisture regimes: full irrigation, partial irrigation, and rainfed (no supplemental irrigation). Environments grown in 2011–2012 include rainfed in Bushland, TX (Bu12R), full irrigation in Greeley, CO (Gr12F), partial irrigation in Greeley, CO (Gr12P), rainfed in Ithaca, NE (It12R), and Manhattan, KS (Ma12). The 2012–2013 environments include rainfed in Ardmore, OK (Ar13R), Fort Collins, CO (Fo13), rainfed in Hays, KS (Ha13R), and rainfed in Ithaca, NE (It13R). Different environments at the same location during the same year were side-by-side treatments with a moisture differential. There were separate rainfed and irrigated treatments at Fo13 and Ma12, but irrigation was not applied until after heading date so there were no significant treatment effects on heading date and the moisture treatments were treated as replications.

thumbnail
Table 1. Description of environments where field trials were grown.

Environment abbreviation, location, moisture treatment, latitude and longitude, and planting and harvest dates.

https://doi.org/10.1371/journal.pone.0152852.t001

Four environments (Bu12R, Gr12P, Gr12F, Ha13R) were unreplicated and arranged in an augmented row–column design with two check varieties. The experimental entries were unreplicated except for ‘Wichita’ (CI 11952), which was included in the panel twice. The two check varieties were replicated 15 times each and systematically placed throughout the field. Fo13 had a similar experimental design but included two replications. The check varieties at Bu12R, Fo13, Gr12P, Gr12F, and Ha13R were ‘Hatcher’ [31] and ‘Settler CL’ [32], and these varieties were also included as experimental entries in the trial. Irrigation was applied at Gr12P and Gr12F using drip irrigation. Gr12P was irrigated less frequently and at a reduced volume than Gr12F. Irrigation totaled 101.6 mm at Gr12P and 335.3 mm at Gr12F. It12R and It13R used a similar experimental design but plots were arranged as 15 incomplete blocks, with one plot within each block planted to each of the check varieties Settler CL and ‘Jagger’ [33]. Both It12R and It13R included four replications, and these trials are described in detail by Guttieri et al. [34]. Ma12 had four replications of a modified row-column design arranged as incomplete blocks using a single, locally adapted check variety, ‘Everest’ (http://kswheatalliance.org/varieties/everest/). The Ar13R trial was arranged as a randomized complete block design with two replications. Harvested plot area ranged from 2.2 to 4.6 m2.

Phenotypic Evaluation

Crop development was determined for each field plot using Zadoks’ scale [35]. Heading date (stage 59) was recorded when the spike had fully emerged from the flag leaf sheath in approximately 50% of tillers. Days to heading were recorded as the number of days from January 1 to heading date. Growing degree-days from 1 January to heading were determined previously, and found to be strongly correlated with days from January 1 to heading [30]. However, number of days to heading was used in these analyses because estimates of allelic effects in days are more widely understood than estimates in °C days.

Genetic Evaluation

Genotypes of nine loci associated with flowering time were obtained primarily from KASP analysis, as described below. Those results were supplemented with polymerase chain reaction (PCR)-based analysis from a previous published report [21] and unpublished data from the Byrne lab at Colorado State University and the USDA-ARS Small Grains Genotyping lab in Manhattan, KS.

DNA preparation for genetic analyses.

Genomic DNA was extracted at Colorado State University from leaf tissue from single seedlings using the phenol–chloroform method modified slightly from Riede and Anderson [36].

KASP marker analysis.

Polymorphisms were identified using LGC Genomics (http://www.lgcgroup.com) KASP system fluorescent assays at the USDA-ARS Regional Small Grains Genotyping Laboratory in Raleigh, NC. PCR was run according to manufacturer’s instructions, using a reaction volume of 4.0 μL, which consisted of 2 μL 2x KASPar reaction mix, 0.05 μL 72x assay mix, and 2 μL of template DNA (10 ng μL-1). Endpoint genotyping was conducted from fluorescence using the software KlusterCaller (LGC Genomics, Hoddeson, UK).

Kompetitive Allele Specific PCR (KASP) assays developed from published sequences of causal genes were run to distinguish alleles at Vrn-A1, Vrn-B1, Vrn-D1, Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, and Rht-D1 (Table 2, S2 Table). The exception was the KASP assay wMAS000033 used for detection of the Vrn-A1a spring allele developed from the contextual sequences of iSelect SNP marker IWA0001 [37] determined to be associated with Vrn-A1a.

thumbnail
Table 2. Description of photoperiod (Ppd), reduced-height (Rht), and vernalization (Vrn) loci, alleles, and phenotypes evaluated in this study.

https://doi.org/10.1371/journal.pone.0152852.t002

The spring allele Vrn-A1b was distinguished from Vrn-A1a and the vrn-A1 winter allele using codominant marker wMAS000034 [4]. Two additional markers were evaluated to determine copy number variation (CNV) of the winter allele vrn-A1: Vrn-A1_Exon4_C/T and Vrn-A1_Exon7_G/A [9]. The C allele at Vrn-A1_exon4 is associated with two or fewer copies, and the G allele at Vrn-A1_exon7 is associated with a single copy, so entries were classified as having three or more copies, two copies, or one copy of vrn-A1. A PCR assay for Vrn-A1 [45] was also run that detected the same SNP polymorphism and distinguished two winter alleles—renamed vrn-A1w and vrn-A1v by Eagles et al. [46]—associated with winter dormancy release and freezing tolerance. Thus, the winter alleles detected at Vrn-A1 using PCR correspond with CNV detected using KASP.

Three KASP markers used to distinguish spring alleles at Vrn-B1. TaVrn-B1_D-I, wMAS000037, and Vrn-B1_C are codominant markers that detect the Vrn-B1a, Vrn-B1b [47], and Vrn-B1c [48] spring alleles, respectively. An additional codominant marker, TaVrn-B1_1752, detected an A/G polymorphism in intron 1 of the vrn-B1 gene associated with differences in vernalization requirement duration [49]. The spring and winter alleles at Vrn-D1 were distinguished using a single dominant marker, wMAS000039 [43].

Photoperiod insensitive allele Ppd-A1a.1 was assayed with the marker TaPpd-A1prodel, which detects a deletion characteristic of the insensitive allele [50]. Alleles at Ppd-B1 were distinguished using two markers: wMAS000027, which detects the ‘Chinese Spring’-type insensitive allele with a truncated copy and TaPpdBJ003, which identifies the ‘Sonora 64’-type insensitive allele based on the presence of an intercopy junction [16]. Photoperiod sensitive and insensitive alleles at Ppd-D1 were distinguished using a single codominant marker, wMAS000024 that detects a deletion upstream of the coding region responsible for the photoperiod insensitive phenotype [15].

Single markers were also used to detect point mutations at the reduced-height loci Rht-B1 and Rht-D1 [51]. Mutants at Rht-B1 were genotyped using wMAS000001 that detected the causative SNP for semi-dwarf stature. Likewise, a single marker, wMAS000002 was used to detect the polymorphism at Rht-D1 that is associated with semi-dwarf stature. Additional information about KASP assays having wMAS designations is available at http://www.cerealsdb.uk.net/cerealgenomics/CerealsDB/kasp_download.php.

Diagnostic Markers for Candidate Genes

PCR assays for Ppd-D1, Rht-B1, Rht-D1, and Vrn-A1 were performed at Colorado State University and complemented results from the KASP assays by confirming allele calls, filling in missing data, and detecting alternate alleles. PCR assays for Ppd-D1 were conducted as described previously [15] to differentiate the photoperiod insensitive Ppd-D1a and two sensitive alleles based on band size of the PCR product. The major photoperiod sensitive allele is Ppd-D1b. Detection of the reduced-height alleles Rht-B1b and Rht-D1b followed the methods of Ellis et al. [51].

Statistical Analyses

Best linear unbiased predictors were calculated separately for each environment based on field design and spatial trends using SAS 9.3 (SAS Institute, Inc., Cary, NC). Six different spatial correlation models (row-column, spherical, exponential, power, anisotropic power, and Matérn, [52] were tested for environments with an augmented row–column design (Bu12R, Fo13, Gr12P, Gr12F, Ha13). The best model was selected based on the AIC fit statistic. Replications were treated as a random effect for environments with multiple replications (Ar13R, Fo13, It12R, It13R, Ma12).

Further statistical analyses were performed using the R version 3.1.3 [53]. Combined analyses of the effects of alleles at single genes were evaluated on all entries with homozygous allele calls using the ‘car’ package [54]. The ANOVA model terms consisted of the environment, gene, and when significant, interaction between the gene and environment. All terms were fit as fixed effects. Entries with heterozygous calls were treated as missing. When a gene had more than two alleles, pairwise comparisons were run using the ‘lsmeans’ package [55] to test differences between each pair of alleles. Individual environments were analyzed using the linear model (lm) function in the ‘stats’ package [53] to evaluate the proportion of variability in heading date explained by one or more gene, and to test for interactions between genes.

Little’s missing completely at random test (MCAR) was conducted using the ‘BaylorEdPsych’ package [56] to ensure that genotypic data were missing at random. The MCAR test was evaluated on all entries with at least one genotyped allele (297 entries total) and all loci with varying allele calls (Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, Rht-D1, vrn-A1 (winter alleles and CNV), and vrn-B1 (winter alleles)); the data were found to be missing at random (Χ2 = 5.40, P = 1.00). The MCAR test was also evaluated on a subset of 293 entries with one or more genotype at Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, or Rht-D1, which were also found to be missing data at random (Χ2 = 3.98, P = 0.91). Missing genotypic data are believed to be from poor quality or low quantity of DNA for marker assays, and not due to variation in heading date.

Models that tested effects of multiple genes included all entries with complete genotypic data at those loci. For model comparison a subset of 280 entries with complete genotypic data and all homozygous calls at the photoperiod and reduced-height loci were analyzed (Table 3). First, a full model that included the main effects of all five genes and all ten two-way interactions were fit to each data set. In the combined analysis, the main effect of the environment, two-way interactions between the environment and each gene, and ten three-way interactions between the environment and pairs of genes were also included in the model. Then, model selection was applied in R using the ‘MuMIn’ package [57] using the ‘dredge’ function, and the best-fit model was identified based on lowest AIC value. In some cases the best-fit model included non-significant terms, but removing these terms detracted from model fit. The relative importance of main effects in the best-fit model was determined through model averaging, using Akaike weights weighted across all evaluated models. The percent variation accounted for by each model term was calculated as the percent of sums of squares for a given term relative to the total sums of squares or to the sums of squares for all genetic terms in the model.

thumbnail
Table 3. Description of multi-locus genotypes at photoperiod and reduced-height loci.

The photoperiod (Ppd) alleles are ‘a’ insensitive and ‘b’ sensitive. The reduced-height (Rht) alleles are ‘a’ tall wild type and ‘b’ semi-dwarf. ‘Het’ is heterozygous at the locus. Of 299 total entries, 285 entries have complete genotypic data at all five loci, and 280 have complete data with all homozygous allele calls.

https://doi.org/10.1371/journal.pone.0152852.t003

Results

Allelic Diversity of Candidate Genes

The 299 winter wheat entries were genotyped at 11 candidate genes, but sample size varied among the loci due to different amounts of missing data at each gene. Genotypic data were missing from up to 14 entries per locus. The genotypes at each candidate gene for every entry are provided in S1 Table.

Winter growth habit is determined by recessive alleles at all three Vrn1 genes. Spring alleles at Vrn-A1, Vrn-B1, or Vrn-D1 were not detected for any entry, validating our assumption that this germplasm consists exclusively of winter wheat entries. There was variation among winter alleles at vrn-A1 and vrn-B1. The SNP in vrn-A1 associated with copy number [9] varied, with 264 (89%) of entries predicted to have three or more copies, four entries (1%) having two copies, and 29 entries (10%) having a single copy. Copy number variation corresponds with the winter alleles at Vrn-A1 described by Eagles et al. [46], such that the strong winter Wichita allele (Vrn-A1w) is associated with three or more copies of the gene and the ‘Veery’ [58] allele (Vrn-A1v) with two or fewer copies. Increased copy number at vrn-A1 has been associated with greater vernalization requirements, resulting in later flowering when the vernalization requirement is only partially fulfilled [16].

Two winter alleles at Vrn-B1 were previously described to affect heading date following a short vernalization duration, but with no effect when the vernalization requirement is fully satisfied [49]. The winter allele characteristic of ‘AGS2000’ [59] has an A at position 1752 and was associated with lower vernalization requirements and earlier heading than the ‘NC-Neuse’ [60] allele (C at position 1752). Low variation at this locus was observed in this germplasm. Most of the germplasm (291 entries, 99%) carried vrn-B1-Neuse; only ‘TAM 401’ [61] and TX05A001822 had vrn-B1-AGS2000.

Alleles at the photoperiod genes Ppd-A1, Ppd-B1, and Ppd-D1 were polymorphic among the wheat entries evaluated. A total of 291 entries were genotyped successfully at Ppd-A1, including 285 entries (98%) with the sensitive allele Ppd-A1b and six entries (2%) with the insensitive allele Ppd-A1a. The six entries all originated from breeding programs in the southern U.S. and included ‘TAM 302’ [62], OK05303, OK05134, TX04M10211, TX05V7269, and TX06A001132. For Ppd-B1, 285 entries were genotyped, including 162 entries (57%) with the sensitive allele Ppd-B1b and 123 entries (43%) with the insensitive allele Ppd-B1a. Genotypes were obtained at Ppd-D1 for all 299 entries. Most entries (211 entries, 71%) carried the photoperiod sensitive allele Ppd-D1b, while 88 entries (29%) carried Ppd-D1a.

The KASP assay identified the photoperiod insensitive allele at Ppd-D1. The PCR assay for Ppd-D1 further characterized allelic variation. Photoperiod insensitivity at Ppd-D1 is caused by a 2089 bp deletion upstream of the coding region [15]. In presence of the deletion, a 288 bp band is produced that corresponds with Ppd-D1a. The presence of the photoperiod sensitive Ppd-D1b allele is detected by amplifying a 414 bp fragment within the deletion region with primer pairs Ppd-D1_F and Ppd-D1_R1. Ppd-D1a was identified in 88 entries (29%), and the sensitive allele Ppd-D1b was found in 204 entries (68%). Guo et al. [40] described two small (24 and 15 bp) insertions within the intact 2089 bp region characteristic of an alternate photoperiod sensitive allele that results in a PCR fragment size of 453 bp. The alternate photoperiod insensitive allele was detected in seven entries (2%).

Both Rht-B1 and Rht-D1 were polymorphic among the germplasm evaluated. A total of 294 entries were genotyped for Rht-B1, and 296 entries were successfully genotyped for Rht-D1. For Rht-B1, 211 entries (72%) carried homozygous copies of the semi-dwarf allele Rht-B1b, 79 entries (27%) carried homozygous copies of Rht-B1a, and four entries (1%) were heterozygous. For Rht-D1, 280 entries (95%) carried homozygous copies of the tall wild type allele Rht-D1a, 14 entries (5%) carried homozygous copies of the semi-dwarf allele Rht-D1b, and two entries (<1%) were heterozygous.

Diversity of Multi-Locus Genotypes

There were 285 entries (280 entries with all homozygous allele calls and five entries with heterozygous allele calls at one or more loci) with complete genotypic data at all five photoperiod and reduced-height loci. These 285 entries were used to investigate diversity of multi-locus genotypes. Fourteen of the 32 possible combinations of five-locus genotypes with all homozygous calls were present in the germplasm (Table 3). Five additional genotypes had heterozygous allele calls at Rht-B1 or Rht-D1. The most common genotypes were Ppd-A1b/Ppd-B1a/Ppd-D1b/Rht-B1b/Rht-D1a (75 entries, 26%), Ppd-A1b/Ppd-B1b/Ppd-D1b/Rht-B1b/Rht-D1a (58 entries, 20%), Ppd-A1b/Ppd-B1b/Ppd-D1a/Rht-B1b/Rht-D1a (43 entries, 15%), and Ppd-A1b/Ppd-B1b/Ppd-D1b/Rht-B1a/Rht-D1a (40 entries, 14%). All other five-locus genotypes had six or fewer entries each.

The most common three-locus genotype at the photoperiod loci was Ppd-A1b/Ppd-B1b/Ppd-D1b (103 entries, 36%, Table 3). There were 91 entries (32%) with Ppd-A1b/Ppd-B1a/Ppd-D1b and 57 entries (20%) with Ppd-A1b/Ppd-B1b/Ppd-D1a. There were 28 entries (10%) with Ppd-A1b/Ppd-B1a/Ppd-D1a. Only six entries (2.0%) carried Ppd-A1a (with or without insensitive alleles at any other photoperiod gene). No entries had insensitive alleles at all three photoperiod genes.

Among the 285 entries with complete allelic data at all five photoperiod and reduced-height loci, the most common allelic combination at the two reduced-height genes was Rht-B1b/Rht-D1a (203 entries, 71%), followed by Rht-B1a/Rht-D1a (63 entries, 22%), and Rht-B1a/Rht-D1b (14 entries, 5%, Table 3). The remaining entries were heterozygous at one or both reduced-height genes. No entries had mutations at both Rht-B1 and Rht-D1. These results are in agreement with those presented by Guedira et al. [23] in a similar set of germplasm.

Changes in Diversity of Photoperiod Alleles Over Time

The prevalence of the photoperiod sensitive alleles Ppd-A1b, Ppd-B1b, and Ppd-D1b has decreased gradually among U.S. Great Plains hard winter wheat germplasm over the past century (Table 4). The first appearance of Ppd-A1a in this germplasm collection occurred with the derivation of ‘TAM 301’ [63] in 1991 (S1 Table). Ppd-A1a is rare in this germplasm but the prevalence of this allele has increased over time. Among entries derived after 1999, 4% were found to carry Ppd-A1a (Table 4). The photoperiod sensitive allele Ppd-B1b is found in 89% of entries derived prior to 1960, 67% of entries derived between 1960 and 1979, and 58% of those derived between 1980 and 1999. Among germplasm derived after 1999, Ppd-B1a is the more common allele and is found in 52% of entries. The prevalence of Ppd-D1b is similar among the 19 entries derived before 1960 (84%) as the 33 entries derived between 1960 and 1979 (85%). However, the percentage of entries carrying Ppd-D1b drops to 70% among entries derived between 1980 and 1999, and is further reduced to 64% among entries derived in or after 2000.

thumbnail
Table 4. Number of entries (n) derived during four different time periods, and the proportion of entries in each group with the photoperiod sensitive allele at Ppd-A1, Ppd-B1, or Ppd-D1.

All 285 entries had complete genotypic data at all three loci.

https://doi.org/10.1371/journal.pone.0152852.t004

Effect of Photoperiod Alleles on Heading Date

Heading date had a grand mean of 130.8 days among all 299 entries and nine environments. In the combined analysis Ppd-A1 had a significant effect (P < 0.001) on heading date across environments. Entries with the photoperiod sensitive allele Ppd-A1b reached heading an average of 2.0 days later than those with Ppd-A1a (S3 Table). The effect of Ppd-A1 was not significantly different among environments, indicating a lack of significant genotype-by-environment (G×E) interaction at Ppd-A1. However, in analyses of individual environments the effect was significant (P < 0.05) only at Ar13R, where the effect size was 5.0 days. Only six entries had Ppd-A1a and the lack of significant effects in most environments is likely influenced by low diversity at this locus.

The effect of Ppd-B1 on heading date was significant in the combined analysis (P < 0.001). Ppd-B1b was associated with 3.0 days later heading across environments, but there was significant G×E interaction. Ppd-B1 had a significant effect (P < 0.01, S3 Table) in all individual environments. The effect of Ppd-B1b ranged from a minimum of 0.8 days later heading date in Fo13 (latitude of 40.65°N, Table 1) to a maximum of 5.2 days later in Ar13R (latitude of 34.18°N).

There was a significant effect (P < 0.001) of Ppd-D1 on heading date in the combined analysis. The average effect of Ppd-D1b was 3.2 days later heading, which was larger than the effects of Ppd-B1b or Ppd-A1b. The effect of Ppd-D1 was significant (P < 0.05) in six environments, and the effect size ranged from a minimum of 0.9 day in Fo13 to a maximum of 5.2 days in Ar13R and It12R (S3 Table).

Models including Ppd-D1, Ppd-B1, and the interaction between Ppd-D1 and Ppd-B1 explained up to 65% of the variability in heading date (S4 Table). The interaction between Ppd-B1 and Ppd-D1 was significant in most environments (excluding Ha13R), but when the interaction was included the main effects of the loci generally became non-significant (S4 Table). The interaction was such that entries with both photoperiod sensitive alleles reached heading much later than those with a single photoperiod sensitive allele or both photoperiod insensitive alleles. The effect of carrying both photoperiod sensitive alleles was greater than 6 days in four environments: Ar13R (8.6 days), It12R (8.0 days), Bu12R (6.7 days), and Ma12 (6.4 days). The effect of the significant interaction between Ppd-B1 and Ppd-D1 is illustrated for three Colorado environments (Gr12P, Gr12F, and Fo13) in Fig 1A–1C. The effect of interaction between Ppd-D1b and Ppd-B1b in the Colorado environments ranged from 1.5 to 4.1 days (S4 Table).

thumbnail
Fig 1. Box plot of number of days from 1 January to heading of 299 hard winter wheat entries varying for photoperiod insensitive (Ppd-B1a, Ppd-D1a) and sensitive alleles (Ppd-B1b, Ppd-D1b), evaluated in four Colorado environments.

The box describes the minimum, lower quartile (25th percentile), median (50th percentile), upper quartile (75th percentile) values. The notch displays the 95% confidence interval around the median value, and if the notches don’t overlap between two boxes on the same plot, there is strong evidence their median values differ. The interquartile range is described as the upper quartile minus the lower quartile. The whiskers extend to the most extreme data point that is up to 1.5 times the interquartile range from the median value. Outlying points that fall outside of this range are represented as dots. The environments are (A) partial irrigation at Greeley, CO in 2012 (Gr12P), (B) full irrigation at Greeley, CO in 2012 (Gr12F), and (C) Fort Collins, CO in 2013 (Fo13).

https://doi.org/10.1371/journal.pone.0152852.g001

Effect of Semi-Dwarf Alleles on Heading Date

In the combined analysis, the semi-dwarf allele Rht-B1b had a significant (P < 0.001) effect on heading date and significant (P < 0.001) G×E interaction. Rht-B1b was associated with an average effect of 2.4 days earlier heading, but the effect ranged from 1.1 days in Ha13R to 4.2 days in Ar13R (S3 Table). There was a low level of genetic diversity at Rht-D1 and the locus did not have a significant effect on heading date when it was the only genetic term in the model.

There were 289 entries with homozygous allele calls at Rht-B1 and Rht-D1. When both loci were included in the model, the main effects of both Rht-B1 and Rht-D1 were significant (P < 0.001, Table 5). There was significant G×E interaction for Rht-B1 but not Rht-D1. Across environments Rht-D1b had an effect of 2.9 days earlier heading. The effect of Rht-B1b was significant (P < 0.05) in Ar13R, Bu12R, Gr12P, and It12R and ranged from a minimum of 2.6 days earlier heading in Gr12P to a maximum of 4.7 days earlier in Ar13R (Table 6). Interaction between Rht-B1 and Rht-D1 could not be tested because not all four allelic combinations were present in this germplasm.

thumbnail
Table 5. ANOVA table for two-gene model estimating the effects of Rht-B1 and Rht-D1 on heading date in a combined analysis across nine environments.

A total of 285 entries with homozygous calls at both loci were included in the analysis.

https://doi.org/10.1371/journal.pone.0152852.t005

thumbnail
Table 6. Allelic effects (number of days) of Rht-B1b in a model that estimated days after 1 January to heading in 285 winter wheat entries grown in nine environments.

The environments are described in Table 1. The model terms were fit separately for each environment. The model effects included environment, Rht-B1, Rht-D1, and Rht-B1-by-environment interaction. The intercept (Int) describes the number of days from 1 January to heading in each environment before the allelic effects are applied. The allelic effect (number of days) at each locus is added to the Int value. The allelic effect of Rht-D1b was -2.68 days and did not have significant interaction with environment.

https://doi.org/10.1371/journal.pone.0152852.t006

Effect of Vernalization Alleles on Heading Date

No entry had alleles for spring growth habit detected at Vrn-A1, Vrn-B1, or Vrn-D1. The effect of different vrn-B1 winter alleles was significant (P <0.01) in the combined analysis, with the ‘Neuse’ allele heading 2.2 days later (S3 Table). However, only two entries carried the vrn-B1 ‘AGS2000’ allele. The G×E term was not significant for vrn-B1.

Variation observed for the winter allele vrn-A1 had a significant effect (P < 0.001) on heading date that varied among environments (S3 Table). The differential effect of three or more vrn-A1 copies relative to a single copy ranged from a minimum of 0.5 days later heading in Gr12P to a maximum of 4.7 days later heading in Ar13R. The effect of three or more copies of vrn-A1 relative to two copies also had a significant (P < 0.01) effect in the combined analysis, such that entries with two copies reached heading 1.9 days earlier. This effect had significant G×E interaction, and in individual environments the effects of three or more copies relative to two copies were only significant in Ar13R, where the effect size was 5.5 days (S3 Table).

Copy number variation at Vrn-A1 has been previously shown to have a positive association with vernalization requirements and survival under freezing conditions [46]. The strong effect of vrn-A1 in Ar13R suggests winter temperatures at this environment may not have fully satisfied the vernalization requirements of all entries. Ar13R experienced a mild winter with daily highs always above 0°C. The effect of allelic variation at Vrn-A1 did not have a significant effect at It12R, which experienced a cold winter with 11 days that had highs below 0°C and 65 days with lows below 0°C.

Multivariate Analyses of Alleles on Heading Date

Combined analyses across environments.

The significance of Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, Rht-D1, and their interactions were tested in a multiple-gene model using a subset of 280 entries with complete genotypic data and homozygous calls at all loci (Table 3). For the combined analysis the full model included main effects of the environment, main effects of all five genes, all 10 two-way interactions between genes, and the interaction of each genetic term with the environment. Model selection was used to identify the best-fit model based on lowest AIC value.

The best-fit model to explain heading date across environments included effects of the environment; major effects of all five candidate loci (Ppd-D1, Ppd-B1, Ppd-A1, Rht-B1, and Rht-D1); the interaction between Ppd-D1 and Ppd-B1; the interaction between Ppd-B1 and Rht-B1; two-way interactions between the environment and Ppd-D1, Ppd-B1, and Rht-B1; and a three-way interaction between the environment, Ppd-D1, and Ppd-B1 (Table 7). This model explained 96.2% of the phenotypic variation in heading date, with most of the variation (92.2% of sums of squares) explained by the environment, and a smaller amount (4.2%) explained by genetic terms. Of the variation explained by genetic terms, 30.1% was due to the main effect of Ppd-B1, 29.6% was due to Ppd-D1, and 13.6% was due to their interaction. Smaller amounts of the genetic variation were explained by the two-way interactions between Ppd-D1 (9.1%) or Ppd-B1 (8.7%) and the environment, the three-way interaction between Ppd-D1, Ppd-B1, and the environment (4.1%), the main effect of Rht-B1 (2.7%), and the interaction between Rht-B1 and Ppd-B1 (1.2%). Less than 1% of the genetic variation was due to Ppd-A1, Rht-D1, the two-way interaction between Ppd-B1 and Ppd-A1, or the two-way interaction between Rht-B1 and the environment. The relative importance of each locus in explaining variation in heading date was also evaluated through model averaging using Akaike weights. The Akaike weights were 1.00 for Ppd-B1, Ppd-D1, and Rht-B1; 0.96 for Ppd-A1; and 0.71 for Rht-D1.

thumbnail
Table 7. ANOVA table for the best-fit model, considering effects of environment, Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, Rht-D1, and their interactions on winter wheat heading date in a combined analysis across nine environments.

The sums of squares were used to estimate the proportion of total variance each term contributed, and the proportion of genetic variance each genetic term contributed. A total of 280 entries with homozygous calls at each allele were included in the model.

https://doi.org/10.1371/journal.pone.0152852.t007

Individual analyses for each environment.

Multi-gene models were fit to each environment separately using the same model selection approach as in the combined analysis. The full model included the main effects and all two-way interactions between five genes: Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, and Rht-D1. The best-fit models varied among environments and are summarized in Table 7, and not all genetic terms are significant. The effects of Ppd-D1, Ppd-B1, and the interaction between Ppd-D1 and Ppd-B1 were included in the best-fit model for each environment. The interaction between Ppd-D1 and Ppd-B1 had a maximum effect size of 8.5 days in Ar13R. Rht-B1 was also included for every environment except Gr12F. None of the best-fit models included the main effect of, or interactions withPpd-A1 or Rht-D1. Some best-fit models also included interactions between Ppd-B1 and Rht-B1 or Ppd-D1 and Rht-B1. The combined allelic effects explained an average of 44% of the variability in heading date, but ranged from a minimum of 14.7% in Fo13 to a maximum of 69.5% in Ma12 (Table 8).

thumbnail
Table 8. Allelic effects (number of days) of gene-based terms included in the best-fit model for winter wheat heading date in each of nine environments, and the proportion of variability (R2) in heading date explained by all terms in each model.

The environments are described in Table 1. The model terms were fit separately for each environment. The intercept (Int) describes the number of days from 1 January to heading in each environment before the allelic effects are applied. The allelic effect (number of days) at each locus is added to the Int value.

https://doi.org/10.1371/journal.pone.0152852.t008

Geographic Distribution of Alleles

We investigated the geographic distribution of alleles at the vernalization, photoperiod, and reduced-height loci among 263 entries derived from public breeding programs in Colorado, Kansas, Montana, Nebraska, North Dakota, Oklahoma, South Dakota, and Texas. Average heading date of these 263 entries, across all nine environments, was 131.0 ± 13.6 days after 1 January, or about 11 May. The distribution of alleles was expected to vary among breeding programs in different states, because the regions for those programs have variable environmental conditions known to affect heading date. For instance, Texas has much milder winter temperatures than northern locations, and Montana and North Dakota have greater changes in day length throughout the year than the central and southern plains, due to their northern latitudes.

In a combined analysis across environments there were significant differences (P < 0.001) in heading date among entries from different states of origin. However, not all pairs of states had significantly different heading dates. The entries were divided into three broad regions within the U.S. Great Plains: northern plains (Montana, North Dakota, and South Dakota; 39 entries), southern plains (Texas and Oklahoma; 105 entries), and central plains (Colorado, Kansas, and Nebraska; 119 entries, Fig 2A). There were significant differences (P < 0.01) in heading dates among entries originating from each pair of regions. Average heading dates were earliest among entries derived in the southern plains (128.8 ± 14.3 days after 1 January). Heading occurred about 2.8 days later in entries derived in the central plains (131.6 ± 13.1 days) compared to entries from the southern plains. Latest heading dates were observed for germplasm from the northern plains (134.9 ± 12.2 days).

thumbnail
Fig 2. Frequency of photoperiod and reduced-height alleles in wheat entries from three regions of the U.S. Great Plains.

Map shapefiles are open source and freely available from Natural Earth < http://www.naturalearthdata.com>. (A) Geographic distribution of 263 winter wheat entries that originated from the northern (Montana, North Dakota, South Dakota, n = 39 entries), central (Nebraska, Colorado, Kansas, n = 119), or southern (Oklahoma, Texas, n = 105) U.S. Great Plains. (B) Proportion of wheat entries from each U.S. Great Plains sub-region, or combined across all three sub-regions, with the photoperiod insensitive alleles Ppd-A1a, Ppd-B1a, and Ppd-D1a, and semi-dwarf alleles Rht-B1b, Rht-D1b.

https://doi.org/10.1371/journal.pone.0152852.g002

All three photoperiod insensitive alleles (Ppd-A1a, Ppd-B1a, Ppd-D1a) were present at higher levels in germplasm from the southern plains than those from the central or northern plains (Fig 2B). The photoperiod insensitive allele Ppd-A1a was uncommon in this germplasm. Ppd-A1a was only present in six (2%) of the 263 entries with known geographic origins, all of which originated in the southern plains. Ppd-B1a was much more evenly distributed—present in 40% of entries overall—but varied gradually among the three regions. Ppd-B1a was found at highest proportions (57%) in germplasm from the southern plains, and at much lower levels in the central (34%) or northern plains (13%). Similar patterns were observed for Ppd-D1a, which was found in 44% of entries from the southern plains, 19% of entries from the central plains, and only 10% of entries from the northern plains.

The semi-dwarf alleles at the reduced-height loci were more common in germplasm derived in the southern plains than those originating from the northern or central plains. Rht-B1b was found in 71% of entries overall, including 83% of entries from the southern plains, 63% of entries from the central plains, and only 51% of entries from the northern plains (Fig 2B). The semi-dwarf allele Rht-D1b was rare in the panel, and present in only 11 (4%) entries. However, the distribution of this allele was much higher in the southern plains (8 entries, 8%) than the northern plains (1 entry, 3%) or central plains (2 entries, 2%).

Discussion

Our first objective was to characterize allelic variants at loci known to affect developmental timing of wheat through the vernalization, photoperiod sensitivity, and reduced-height pathways. Marker analysis revealed the incidence of semi-dwarf alleles Rht-B1b and Rht-D1b in this germplasm was comparable to that reported by Guedira et al. [23] in a similar set of germplasm. The photoperiod insensitive alleles Ppd-B1a and Ppd-D1a were present at similar levels as detected by Kiss et al. [24] in a worldwide collection of winter wheat. We found Ppd-A1a to be rare in this germplasm, and present at slightly lower levels than reported among European accessions [26]. Further allelic variation could exist in our panel as additional allelic variants [40, 50, 64] or copy number variants [25, 65] not detected by our assays.

Guo et al. [40] described four modern and two ancient Ppd-D1 haplotypes present in a worldwide collection of wheat, and detected all four modern haplotypes in accessions from the U.S. and Canada. Our analyses could only differentiate two modern and one ancient haplotype, which suggests additional haplotypes could be present. Seven of our entries had an alternate photoperiod sensitivity allele at Ppd-D1b, described by Guo et al. [40] as haplotype VI. The alternate allele did not have a significant effect on heading date across environments, probably due to the small sample size. The entries with haplotype VI are ‘OK Rising’ (PI 656382), ‘Thunder CL’ [66], TAM 303, KS00F5-20-3, ‘Overley’ (PI 634974), ‘Chisholm’ [67], and ‘Custer’ (OK88767-11). Haplotype VI is thought to be an ancient deletion and is associated with Aegilops tauschii accessions and synthetic hexaploid wheats [40]. All seven entries we characterized as haplotype VI have pedigree contributions from Aegilops tauschii or Eastern European germplasm. The Eastern European parentage might also include Aegilops tauschii, as exotic germplasm and interspecific crosses were introduced to this region during the 1970s and 1980s [68].

Additional alleles have also been described at Ppd-A1 [50]. The photoperiod insensitive allele Ppd-A1a was expected to be associated with earlier heading, but did not have a significant effect on heading date on this germplasm. We only characterized six entries as carrying Ppd-A1a, all of which originated from the southern plains. This region has less variation in day length than the other U.S. Great Plains regions, so photoperiod sensitivity is expected to have less of an effect, and photoperiod insensitivity to be more common, than at more northern latitudes. Guedira et al. [49] found the photoperiod insensitive allele Ppd-A1a.1—first identified in Japanese germplasm—to be common among winter wheat varieties originating in the eastern U.S. [50]. It is likely that the effect of Ppd-A1a on heading date would be significant among germplasm with greater diversity at this locus, such as a panel that included more entries from southern or eastern regions of the United States.

Our second objective was to estimate the allelic effects of known developmental genes on heading date. We found the timing of heading date in winter wheat from the U.S. Great Plains to be more strongly affected by photoperiod loci than the vernalization or reduced-height loci. Alleles of these five developmental genes (Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, and Rht-D1) had the greatest genetic effects on variation in heading date (Table 7). However, terms included in the best-fit model varied slightly among environments (Table 8). Additionally, the effects of Ppd-A1 and Rht-D1 were not significant in any individual environment, and have relatively low Akaike weights, which indicates a lower level of likelihood these loci are affecting heading date. Differential effects among environments suggest the model might be improved if the environmental effects were deconstructed into multiple environmental variables (such as effects of temperature, moisture, day length, etc.). Furthermore, additional variation in number of days after 1 January to heading might be improved through genotyping and inclusion of other loci known to affect developmental timing, such as Vrn-B3 and Vrn-D3 [11, 19, 45].

In our study, Rht-B1 was found to have a significant effect on heading date in most environments (Table 8). While it is unclear how reduced sensitivity to GA affects heading date, Rht-B1 has been previously shown to have a small effect on heading date [20]. Wilhelm et al. [69] suggest one possibility is the role of other genes that are tightly linked with Rht-B1, such as Teosinte branched 1 (TaTb1), which is associated with tillering and fertility. Recently, Li. et al. [64] reported numerous allelic variants at Rht1 (Rht-A1, Rht-B1, and Rht-D1), which were largely unaccounted for in our analyses. Among these variants were novel alleles that increased plant height relative to the tall alleles Rht-B1a or Rht-D1a.

Most of the genetic effects were due to the main effects and interaction of Ppd-B1 and Ppd-D1, and their three-way interaction with the environment. The interaction between Ppd-B1 and Ppd-D1 was such that entries carrying both photoperiod sensitive alleles reached heading much later than those carrying a single photoperiod sensitive allele or both insensitive alleles (Fig 1, S4 Table, Table 8). The presence of both photoperiod sensitive alleles delayed heading date by an average of 4.8 days across all environments, and a maximum of 8.5 days in Ar13R (Table 8). While the genetic effects on heading date are small relative to the environmental effects (Table 7), even minor variation in the timing of heading date—variation of several days—may allow for more precise targeting of wheat varieties to different regions, especially if climatic patterns shift within established growing regions [70], or wheat cultivation expands to new regions [71].

The allelic effects of Ppd-B1 and Ppd-D1 varied among environments, suggesting differential expression under varying environmental conditions such as temperature, or moisture. The greatest significant effects—more than five days at each locus—were observed at Ar13R (S3 Table). The effect of the interaction between these loci was 8.6 days at Ar13R (S4 Table). Variation in the effect size and level of significance does not follow a discernable trend among environments; however, the G×E term is likely affected by different sources of environmental variability, such as climatic conditions, management practices including planting and harvest dates, or biotic and abiotic stresses. For instance, heavy rainfall during May and June, and warm maximum daily temperatures throughout the winter, spring, and summer have influenced the large allelic effects at Ar13R. Interaction between Ppd-D1 and Ppd-B1 has been previously characterized [72], is known to vary with CNV at Ppd-B1 [46], and is known to have much larger effects in spring than winter wheat [24].

Allelic variation associated with CNV at Vrn-A1 had a significant effect on heading date in this germplasm (S3 Table). Low copy number at Vrn-A1 is associated with earlier flowering following a short vernalization period [16]. Copy number variation at Vrn-A1 was inferred by SNPs on exons four and seven. The SNP on exon four is associated with having two or fewer copies of the gene, and was used by Eagles et al. [46] to distinguish Vrn-A1v associated with earlier heading from Vrn-A1w associated with greater freezing tolerance. We found the effect of CNV at Vrn-A1 to vary among environments with contrasting winter temperatures. The effect of CNV at vrn-A1 was largest (4.7 days) at Ar13R (S3 Table), and that environment experienced a mild winter that had daily highs above 0°C and only three days with lows below 0°C. The second largest significant effect was seen at Bu12R, which is also located in a mild, southern environment. By contrast, variation at Vrn-A1 did not have a significant effect at It12R, which experienced a cold winter with 65 days—including 29 continuous days—that had lows below 0°C.

Our third objective was to investigate temporal and geographic patterns of allelic distribution in the U.S. Great Plains. Changes in allele frequencies at the photoperiod genes indicate selection for photoperiod insensitivity during the last century of winter wheat breeding (Table 4). This could be the direct result of selecting for improved adaptability based on flowering time [73]. Most strikingly, the proportion of entries carrying the Ppd-B1b sensitive allele has gradually declined over time, from 89% of entries derived before 1960 to only 48% of germplasm derived after 2000 (Table 4). An increase in the number of varieties carrying the photoperiod insensitive allele suggests a contribution to greater adaptation to specific environments.

Selection against photoperiod sensitivity is also apparent in the distribution of alleles from breeding programs in different sub-regions of the U.S. Great Plains. We saw the incidence of photoperiod sensitive alleles decrease from northern to southern latitudes (Table 8). Various environmental variables, such as temperature and day length, vary with latitude. Extreme temperature events such as freezing temperatures and heat stress can have very pronounced and detrimental effects on yield, especially during vulnerable developmental stages. Therefore, targeting heading date could reduce the chance that extreme temperatures or stress damage the developing reproductive structures.

Conclusions

In this study we used a panel of 299 hard winter wheat entries representative of modern and historic U.S. Great Plains germplasm to evaluate allelic diversity and effects of vernalization, photoperiod, and reduced-height loci on the timing of heading date. We found most of the genetic effects of heading date to be explained by Ppd-B1, Ppd-D1, and the interaction between these loci. A smaller amount of variation was explained by Rht-B1. Across nine environments, the interaction between Rht-B1 and Ppd-B1 also had a small but significant effect on heading date. Both photoperiod sensitive and insensitive alleles were common for Ppd-B1 and Ppd-D1, and an alternate photoperiod sensitivity allele associated with ancestral wheats was detected at Ppd-D1. There was limited allelic diversity at Ppd-A1 and Rht-D1, and these loci did not have a significant effect on heading date. The presence of photoperiod sensitive alleles Ppd-A1b, Ppd-B1b, and Ppd-D1b has been decreasing over the past century of wheat breeding, and these alleles are less common in the southern sub-region of the U.S. Great Plains than either the central or northern plains. Our analyses enhance the understanding of the effects of developmental genes on winter wheat under varying environmental conditions. This information can potentially be used to improve breeding strategies for current and future climate scenarios.

Supporting Information

S1 Table. Description of U.S. winter wheat entries evaluated, including entry name, year derived, state breeding program and region of the U.S. Great Plains in which derived, and allele calls.

The table is sorted first alphabetically by region, then temporally by year, and finally alphabetically by entry name. The genotyped loci include photoperiod (Ppd) genes where alleles are ‘a’ insensitive and ‘b’ sensitive, reduced-height (Rht) genes where alleles are ‘a’ tall and ‘b’ semi-dwarf, and vernalization (Vrn) genes. Vrn-A1, Vrn-B1, and Vrn-D1 allele calls are ‘W’ for winter growth habit. Variation in winter alleles at vernalization loci include copy number variation (CNV) for vrn-A1, Wichita-type (‘w’) or Veery-type (‘v’) alleles for vrn-A1, and Neuse-type (‘N’) or AGS2000-type (‘A’) alleles for vrn-B1. Missing genotypic data are indicated with a dash (-).

https://doi.org/10.1371/journal.pone.0152852.s001

(DOCX)

S2 Table. Description of KASP markers used to genotype 299 U.S. Great Plains hard winter wheat entries.

KASP detected allelic variants at Vrn-A1, Vrn-B1, Vrn-D1, Ppd-A1, Ppd-B1, Ppd-D1, Rht-B1, and Rht-D1.

https://doi.org/10.1371/journal.pone.0152852.s002

(DOCX)

S3 Table. Allelic effects (number of days) of photoperiod, reduced-height, and vernalization loci on heading date in each of nine environments.

The environments are described in Table 1. The model terms were fit separately for each locus. The intercept (Int) describes the number of days from1 January to heading in each environment before the allelic effect is applied. The allelic effect at each locus is added to the Int value. Allelic effects were fit separately for each environment when there was significant genotype-by-environment (G×E) interaction at that locus in the combined analysis across all environments. Allelic effects from the combined analyses are reported for Ppd-A1 and vrn-B1 because significant G×E interaction was not observed at these loci. The grand mean heading date across all germplasm and environments was 131.8 ± 0.3 days.

https://doi.org/10.1371/journal.pone.0152852.s003

(DOCX)

S4 Table. Allelic effects (number of days) of photoperiod sensitive alleles Ppd-D1b and Ppd-B1b.

Allelic effects and interaction of Ppd-D1b and Ppd-B1b on winter wheat heading date in each of nine environments, and proportion of variability (R2) in heading date explained by all terms in each model. The environments are described in Table 1. The model terms were fit separately for each environment. The intercept (Int) describes the number of days from 1 January to heading in each environment before the allelic effects are applied. The allelic effect (number of days) at each locus is added to the Int value.

https://doi.org/10.1371/journal.pone.0152852.s004

(DOCX)

Acknowledgments

Special thanks to the researchers who collected and shared information on the Triticeae Coordinated Agricultural Project (Triticeae-CAP) panel making this research possible, including collaborators at Kansas State University: P.V. Vara Prasad and Kyle Shroyer; the Kansas State University Agricultural Research Center in Hays, KS: Guorong Zhang; the Samuel Roberts Noble Foundation: Josh Anderson, Ki-Seung Kim, and Mark Newell; Texas A&M AgriLife Research: Shuyu Liu; and the University of Nebraska-Lincoln: Stephen Baenziger, Katherine Frels, and Mary Guttieri. We are very appreciative of the technical support at all locations that made the trials possible. Additional thanks are extended to Jie Lu and Angie Moore from Colorado State University for assisting in DNA extractions and preliminary marker analysis.

From a thesis submitted to the Academic Faculty of Colorado State University in partial fulfillment of the requirements for the degree of Ph.D. in Soil and Crop Sciences.

Author Contributions

Conceived and designed the experiments: PB SR. Performed the experiments: JS SG. Analyzed the data: SG. Contributed reagents/materials/analysis tools: GBG. Wrote the paper: SG. Contributed technical advice: GB. Wrote the paper: SG. Revised the manuscript: PB GM SH GBG.

References

  1. 1. Worland T, Snape JW. Genetic basis of worldwide wheat varietal improvement. In: Bonjean AP, Angus WJ, editors. The World Wheat Book–A History of Wheat Breeding. Vol. 1. Paris: Lavoiser; 2001. pp. 59–100.
  2. 2. Kamran A, Iqbal M, Spaner D. Flowering time in wheat (Triticum aestivum L.): a key factor for global adaptability. Euphytica. 2014; 197: 1–26.
  3. 3. McMaster G. Phenology development, and growth of the wheat (Triticum aestivum L.) shoot apex: a review. Adv Agron. 1997; 59: 63–118.
  4. 4. Brown HE, Jamieson PD, Brooking IR, Moot DJ, Huth NI. Integration of molecular and physiological models to explain time of anthesis in wheat. Ann Bot. 2013; 112: 1683–1703. pmid:24220102
  5. 5. Boden S., Cavanagh C, Cullis BR, Ramm K, Greenwood J, Jean Finnegan E, et al. Ppd-1 is a key regulator of inflorescence architecture and paired spikelet development in wheat. Nat Plants. 2015; 1: 14016.
  6. 6. Miralles DJ, Richards RA, Slafer GA. Duration of the stem elongation period influences the number of fertile florets in wheat and barley. Aust J Agric Res. 2000; 27: 931–940.
  7. 7. Distelfeld A, Li C, Dubcovsky J. Regulation of flowering in temperate cereals. Curr Opin Plant Biol. 2009; 12: 178–184. pmid:19195924
  8. 8. Trevaskis B. The central role of the VERNALIZATION1 gene in the vernalization response of cereals. Funct Plant Biol. 2010; 37: 479–487.
  9. 9. Yan L, Helguera M, Kato K, Fukuyama S, Sherman J, Dubcovsky J. Allelic variation at the VRN-1 promoter region in polyploid wheat. Theor Appl Genet. 2004; 109: 1677–1686. pmid:15480533
  10. 10. Trevaskis B, Hemming MN, Dennis ES, Peacock WJ. The molecular basis of vernalization-induced flowering in cereals. Trends Plant Sci. 2007; 12: 352–357. pmid:17629542
  11. 11. Yan L, Helguera M, Kato K, Fukuyama S, Sherman J, Dubcovsky J. Allelic variation at the VRN-1 promoter region in polyploid wheat. Theor Appl Genet. 2004; 109: 1677–1686. pmid:15480533
  12. 12. Yan L, Loukoianov A, Blechl A, Tranquilli G, Ramakrishna W, SanMiguel P, et al. The wheat VRN2 gene is a flowering repressor down-regulated by vernalization. Science. 2004; 303: 1640–1644. pmid:15016992
  13. 13. Zhu X, Tan C, Cao S, Yan L. Molecular differentiation of null alleles at ZCCT-1 genes on the A, B, and D genomes of hexaploid wheat. Mol Breed. 2011; 27: 501–510.
  14. 14. Cockram J, Jones H, Leigh FJ, O’Sullivan DM, Powell W, Laurie D, et al. Control of flowering time in temperate cereals: genes, domestication, and sustainable productivity. J Exp Bot. 2007; 58: 1231–44. pmid:17420173
  15. 15. Beales J, Turner A, Griffiths S, Snape JW, Laurie D. A pseudo-response regulator is misexpressed in the photoperiod insensitive Ppd-D1a mutant of wheat (Triticum aestivum L.). Theor Appl Genet. 2007; 115: 721–733. pmid:17634915
  16. 16. Díaz A, Zikhali M, Turner AS, Isaac P, Laurie D. Copy number variation affecting the Photoperiod-B1 and Vernalization-A1 genes is associated with altered flowering time in wheat (Triticum aestivum). PLOS One. 2012; 7: e33234. pmid:22457747
  17. 17. Worland A, Börner A, Korzun V, Li W. The influence of photoperiod genes on the adaptability of European winter wheats. Euphytica. 1998; 100: 385–394.
  18. 18. Eagles HA, Cane K, Kuchel H, Hollamby GJ, Vallance N, Eastwood RF, et al. Photoperiod and vernalization gene effects in southern Australian wheat. Crop Pasture Sci. 2010; 61: 721–730.
  19. 19. Griffiths S, Simmonds J, Leverington M, Wang Y, Fish L, Sayers L, et al. Meta-QTL analysis of the genetic control of ear emergence in elite European winter wheat germplasm. Theor Appl Genet. 2009; 119: 383–395. pmid:19430758
  20. 20. Wilhelm EP, Boulton MI, Al-Kaff N, Balfourier F, Bordes J, Greenland AJ, et al. Rht-1 and Ppd-D1 associations with height, GA sensitivity, and days to heading in a worldwide bread wheat collection. Theor Appl Genet. 2013; 126: 2233–2243. pmid:23722594
  21. 21. Bush MG, Evans LT. Growth and development in tall and dwarf isogenic lines of spring wheat. Field Crops Research. 1988. pp. 243–270.
  22. 22. Wilhelm EP, Mackay IJ, Saville RJ, Korolev A V, Balfourier F, Greenland AJ, et al. Haplotype dictionary for the Rht-1 loci in wheat. Theor Appl Genet. 2013;126: 1733–47. pmid:23553443
  23. 23. Guedira M, Brown-Guedira G, van Sanford D, Sneller C, Souza E, Marshall D. Distribution of Rht genes in modern and historic winter wheat cultivars from the eastern and central USA. Crop Sci. 2010; 50: 1811–1822.
  24. 24. Kiss T, Balla K, Veisz O, Láng L, Bedő Z, Griffiths S, et al. Allele frequencies in the VRN-A1, VRN-B1 and VRN-D1 vernalization response and PPD-B1 and PPD-D1 photoperiod sensitivity genes, and their effects on heading in a diverse set of wheat cultivars (Triticum aestivum L.). Mol Breed. 2014; 34: 297–310. pmid:25076837
  25. 25. Cane K, Eagles HA, Laurie D. Ppd-B1 and Ppd-D1 and their effects in southern Australian wheat. Crop Pasture Sci. 2013; 64: 100–114.
  26. 26. Shcherban AB, Börner A, Salina E A. Effect of VRN-1 and PPD-D1 genes on heading time in European bread wheat cultivars. Jung C, editor. Plant Breed. 2014; 1–7.
  27. 27. Kamran A, Randhawa HS, Yang R-C, Spaner D. The effect of VRN1 genes on important agronomic traits in high-yielding Canadian soft white spring wheat. Jung C, editor. Plant Breed. 2014.
  28. 28. Lobell DB, Schlenker W, Costa-Roberts J. Climate trends and global crop production since 1980. Science. 2011; 333: 616–620. pmid:21551030
  29. 29. Beniston M, Stephenson DB, Christensen OB, Ferro CAT, Frei C, Goyette S, et al. Future extreme events in European climate: an exploration of regional climate model projections. Clim Change. 2007; 81: 71–95.
  30. 30. Grogan S. Dissecting drought tolerance in winter wheat using phenotypic and genetic analyses of agronomic and spectral traits. PhD diss., Colorado State University. 2015. Available: https://dspace.library.colostate.edu/handle/10217/170327
  31. 31. Haley SD, Quick JS, Johnson JJ, Peairs FB, Stromberger JA, Clayshulte SR, et al. Registration of “Hatcher” wheat. Crop Sci. 2005; 45: 2654–2656.
  32. 32. Baenziger PS, Graybosch R A, Nelson L A, Regassa T, Klein RN, Baltensperger DD, et al. Registration of “NH03614 CL” wheat. J Plant Regist. 2011; 5: 75–80.
  33. 33. Sears RG, Moffatt JM, Martin TJ, Cox TS, Bequette RK, Curran SP, et al. Registration of “Jagger” wheat. Crop Sci. 1997; 37: 1010.
  34. 34. Guttieri MJ, Baenziger PS, Frels K, Carver BF, Arnall B, Waters BM. Variation for grain mineral concentration in a diversity panel of current and historical great plains hard winter wheat germplasm. Crop Sci. 2015; 55: 1035–1052.
  35. 35. Zadoks JC, Chang TT, Konzak CF. A decimal code for the growth stages of cereals. Weed Res. 1974; 14: 415–421.
  36. 36. Riede CR, Anderson JA. Linkage of RFLP markers to an aluminum tolerance gene in wheat. Crop Sci. 1996; 36: 905–909.
  37. 37. Cavanagh CR, Chao S, Wang S, Huang BE, Stephen S, Kiani S, et al. Genome-wide comparative diversity uncovers multiple targets of selection for improvement in hexaploid wheat landraces and cultivars. Proc Natl Acad Sci U.S.A. 2013; 110: 8057–8062. pmid:23630259
  38. 38. Law CN, Worland AJGB. The genetic control of ear-emergence time by chromosomes 5A and 5D of wheat. Heredity (Edinb). 1976; 36: 49–58. Available: http://www.nature.com/hdy/journal/v36/n1/abs/hdy19765a.html
  39. 39. Wilhelm EP, Turner AS, Laurie DA. Photoperiod insensitive Ppd-A1a mutations in tetraploid wheat (Triticum durum Desf.). Theor Appl Genet. 2009; 118: 285–294. pmid:18839130
  40. 40. Guo Z, Song Y, Zhou R, Ren Z, Jia J. Discovery, evaluation and distribution of haplotypes of the wheat Ppd‐D1 gene. New Phytol. 2010;185: 841–851. Available: http://onlinelibrary.wiley.com/doi/10.1111/j.1469-8137.2009.03099.x/full pmid:20002313
  41. 41. Peng J, Richards DE, Hartley NM, Murphy GP, Devos KM, Flintham JE, et al. “Green revolution” genes encode mutant gibberellin response modulators. Nature. 1999;400: 256–261. pmid:10421366
  42. 42. Pearce S, Saville R, Vaughan SP, Chandler PM, Wilhelm EP, Sparks CA, et al. Molecular characterization of Rht-1 dwarfing genes in hexaploid wheat. Plant Physiol. 2011;157: 1820–1831. pmid:22013218
  43. 43. Fu D, Szucs P, Yan L, Helguera M, Skinner JS, von Zitzewitz J, et al. Large deletions within the first intron in VRN-1 are associated with spring growth habit in barley and wheat. Mol Genet Genomics. 2005;273: 54–65. pmid:15690172
  44. 44. Dubcovsky J, Lijavetzky D, Appendino L, Tranquilli G. Comparative RFLP mapping of Triticum monococcum genes controlling vernalization requirement. Theor Appl Genet. 1998;97: 968–975.
  45. 45. Chen Y, Carver BF, Wang S, Zhang F, Yan L. Genetic loci associated with stem elongation and winter dormancy release in wheat. Theor Appl Genet. 2009; 118: 881–889. pmid:19130033
  46. 46. Eagles HA, Cane K, Trevaskis B. Veery wheats carry an allele of Vrn-A1 that has implications for freezing tolerance in winter wheats. Plant Breed. 2011; 130: 413–418.
  47. 47. Santra DK, Santra M, Allan RE, Campbell KG, Kidwell KK. Genetic and Molecular Characterization of Vernalization Genes Vrn-A1, Vrn-B1, and Vrn-D1 in Spring Wheat Germplasm from the Pacific Northwest Region of the U.S.A. Plant Breed. 2009; 128: 576–584.
  48. 48. Milec Z, Tomková L, Sumíková T, Pánková K. A new multiplex PCR test for the determination of Vrn-B1 alleles in bread wheat (Triticum aestivum L.). Mol Breed. 2012; 30: 317–323.
  49. 49. Guedira M, Maloney P, Xiong M, Petersen S, Murphy JP, Marshall D, et al. Vernalization duration requirement in soft winter wheat is associated with variation at the VRN-B1 locus. Crop Sci. 2014; 54: 1960–1971.
  50. 50. Nishida H, Yoshida T, Kawakami K, Fujita M, Long B, Akashi Y, et al. Structural variation in the 5′ upstream region of photoperiod-insensitive alleles Ppd-A1a and Ppd-B1a identified in hexaploid wheat (Triticum aestivum L.), and their effect on heading time. Mol Breed. 2013; 31: 27–37.
  51. 51. Ellis H, Spielmeyer W, Gale R, Rebetzke J, Richards RA, Rebetzke GJ. “Perfect” markers for the Rht-B1b and Rht-D1b dwarfing genes in wheat. Theor Appl Genet. 2002; 105: 1038–1042. pmid:12582931
  52. 52. Littell R, Milliken G, Stroup W, Wolfinger R, Schabenberger O. Spatial Variability. SAS for Mixed Models. 2nd ed. Cary, NC: SAS Institute, Inc.; 2006. pp. 437–478.
  53. 53. R Core Team. R: A language and environment for statistical computing. Vienna, Austria: R Foundation for Statistical Computing; 2015. Available: http://www.r-project.org/.
  54. 54. Fox J, Weisberg S. An {R} Companion to Applied Regression. 2nd ed. Thousand Oaks, CA: Sage; 2011. Available: http://socserv.socsci.mcmaster.ca/jfox/Books/Companion.
  55. 55. Lenth R V. lsmeans: Least-Squares Means. R package version 2.17; 2015. Available: http://cran.r-project.org/package=lsmeans.
  56. 56. Beaujean AA. BaylorEdPsych: R Package for Baylor University Educational Psychology Quantitative Courses; R package; 2012. Available: http://cran.r-project.org/package=BaylorEdPsych.
  57. 57. Barton K. KB. MuMIn: Multi-Model Inference. R package; 2015; Available: http://cran.r-project.org/package=MuMIn.
  58. 58. Merker A. “Veery”—a CIMMYT spring wheat with the 1B/1R chromosome translocation. Cereal Res Commun. 1982; 10: 105–106.
  59. 59. Johnson JW, Barnett RD, Cunfer BM, Buntin GD, Bland DE. Registration of “AGS 2000” wheat. Crop Sci. 2002; 42: 661.
  60. 60. Murphy JP, Navarro RA, Leath S, Bowman DT, Weisz PR, Ambrose LG, et al. Registration of “NC-Neuse” wheat. Crop Science. 2004. p. 1479.
  61. 61. Rudd JC, Devkota RN, Fritz AK, Baker JA, Obert DE, Worrall D, et al. Registration of “TAM 401” wheat. J Plant Regist. 2012; 6: 1–6.
  62. 62. Marshall D, Sutton RL, Worrall WD, Lazar MD, Rooney LW, McDaniel ME, et al. Registration of “TAM 302” wheat. Crop Sci. 1999; 39: 1532.
  63. 63. Marshall DS, Sutton RL, Worrall WD, Rooney LW, Lazar MD, McDaniel ME, et al. Registration of “TAM 301” wheat. Crop Sci. 1998; 38.
  64. 64. Li A, Yang W, Lou X, Liu D, Sun J, Guo X, et al. Novel natural allelic variations at the Rht-1 loci in wheat. J Integr Plant Biol. 2013; 55: 1026–37. pmid:23992198
  65. 65. Zhu J, Pearce S, Burke A, See DR, Skinner DZ, Dubcovsky J, et al. Copy number and haplotype variation at the VRN-A1 and central FR-A2 loci are associated with frost tolerance in hexaploid wheat. Theor Appl Genet. 2014; 127: 1183–1197. pmid:24626953
  66. 66. Haley SD, Johnson JJ, Westra PH, Peairs FB, Stromberger JA, Heaton EE, et al. Registration of “Thunder CL” wheat. J Plant Regist. 2009; 3: 181–184.
  67. 67. Smith EL, Merkle OG, Nguyen HT, Abbott DC, Morgan GH. Registration of Chisholm wheat. Crop Sci. 1985; 25: 367–368.
  68. 68. Roussel V, Leisova L, Exbrayat F, Stehno Z, Balfourier F. SSR allelic diversity changes in 480 European bread wheat varieties released from 1840 to 2000. Theor Appl Genet. 2005; 111: 162–170. pmid:15887038
  69. 69. Wilhelm EP, Howells RM, Al-Kaff N, Jia J, Baker C, Leverington-Waite MA, et al. Genetic characterization and mapping of the Rht-1 homoeologs and flanking sequences in wheat. Theor Appl Genet. 2013; 126: 1321–1336. pmid:23381809
  70. 70. Lobell DB, Schlenker W, Costa-Roberts J. Climate trends and global crop production since 1980. Science (80-). 2011; 333: 616–20.
  71. 71. Schmitz C, van Meijl H, Kyle P, Nelson GC, Fujimori S, Gurgel A, et al. Land-use change trajectories up to 2050: Insights from a global agro-economic model comparison. Agric Econ (United Kingdom). 2014; 45: 69–84.
  72. 72. Tanio M, Kato K. Development of near-isogenic lines for photoperiod-insensitive genes, Ppd-B1 and Ppd-D1, carried by the Japanese wheat cultivars and their effect on apical development. Breed Sci. 2007; 57: 65–72.
  73. 73. Slafer G. Application of Physiology in Wheat Breeding. In: Reynolds MP, Pask A, Mullan D, editors. Mexico, D.F: CIMMYT; 2012. pp. 109–123.