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Flowering time adaption in Swedish landrace pea (Pisum sativum L.)



Cultivated crops have repeatedly faced new climatic conditions while spreading from their site of origin. In Sweden, at the northernmost fringe of Europe, extreme conditions with temperature-limited growth seasons and long days require specific adaptation. Pea (Pisum sativum L.) has been cultivated in Sweden for millennia, allowing for adaptation to the local environmental conditions to develop. To study such adaptation, 15 Swedish pea landraces were chosen alongside nine European landraces, seven cultivars and three wild accessions. Number of days to flowering (DTF) and other traits were measured and the diversity of the flowering time genes HIGH RESPONSE TO PHOTOPERIOD (HR), LATE FLOWERING (LF) and STERILE NODES (SN) was assessed. Furthermore, the expression profiles of LF and SN were obtained.


DTF was positively correlated with the length of growing season at the site of origin (GSO) of the Swedish landraces. Alleles at the HR locus were significantly associated with DTF with an average difference of 15.43 days between the two detected haplotypes. LF expression was found to have a significant effect on DTF when analysed on its own, but not when HR haplotype was added to the model. HR haplotype and GSO together explained the most of the detected variation in DTF (49.6 %).


We show local adaptation of DTF, primarily in the northernmost accessions, and links between genetic diversity and diversity in DTF. The links between GSO and genetic diversity of the genes are less clear-cut and flowering time adaptation seems to have a complex genetic background.


Pea (Pisum sativum L.) was the first genetic model species, used to demonstrate central genetic concepts such as dominance, segregation and independent assortment [1]. It is also a widely cultivated crop species, and a major source of plant protein for both animal and human consumption (FAOSTAT, Pea was most likely domesticated from Pisum elatius and spread from the Fertile Crescent in two distinct lineages, eastwards across Southern Asia and westwards over North Africa and the Mediterranean [2]. Archaeological remains suggest a rapid spread across the Mediterranean followed by a marked delay before it began to expand northwards [3, 4]. It has been suggested that this lag in spread was necessary to allow for the evolution of suitable responses to novel light and temperature conditions [5].

The evolution of environmental adaptation must have been a necessity as pea cultivation gradually expanded north. One of the northernmost reaches of pea cultivation is in Sweden where it has been an important crop from Neolithic times and onwards [6]. Different types of pea have been cultivated across the country all the way from the southern tip of Sweden (below the 56th latitude) to near the polar circle (64th latitude) [7]. During the 19th century, pea was cultivated on more than 3 % of the Swedish farmland and was, along cereals and potatoes, one of the most important crop species [8]. Even though pea cultivation declined during the last century, it remained a field crop where large-scale cultivation of landraces (highly variable and locally adapted varieties lacking formal improvement) was actively maintained until the 1950s [9, 10]. Nowadays pea landraces are only cultivated on a small scale as heirloom crops [8].

The parts of Sweden where pea has been cultivated offer a range of climatic conditions with the length of growing season ranging from approximately 140 to 220 days. From previous studies of neutral genetic markers it is clear that Swedish landraces, both past and present, are often very variable and that there is high genetic differentiation among accessions from different parts of Sweden [11, 12]. It is therefore likely that candidate adaptation genes, for example those involved in the timing of flowering, will show signs of adaptation to the climatic differences in different parts of Sweden.

The genetic regulation of the transition to flowering is well known from numerous studies in Arabidopsis and other plants [13]. Corresponding genes have been identified in pea (for a review see [14]). In this study we chose to focus on three genes with well-described effects on flowering time in pea: HIGH RESPONSE TO PHOTOPERIOD (HR [15]), LATE FLOWERING (LF [16]) and STERILE NODES (SN [17]).

At the HR locus, the dominant HR allele is known to repress flowering under short day (SD) conditions making long day (LD) a requirement for flowering. In spring, during SD conditions, hr allows early flowering [14]. It has been shown that HR affects flowering time through the circadian clock where it interacts with the circadian clock gene SN [15]. SN is the pea ortholog of the LUX ARRHYTHMO (LUX) transcription factor in Arabidopsis [17]. In Arabidopsis LUX is a sequence specific DNA-binding protein, which self regulates by binding to its own promoter [18]. It forms an evening complex together with ELF3 (the ortholog for HR in pea) and ELF4 proteins and this complex, with its LUX binding site, regulates the diurnal hypocotyl growth as well as directly regulating the morning clock gene PRR9 [19]. Under SD, SN has been shown to influence flowering time in pea through mutations accelerating the transition to flowering [17, 20]. LF produces a TFL1 homologue that regulates transcription factor activity in the shoot apex, and it was the first pea flowering time locus to be identified at the molecular level [16]. Flowering time variation caused by allelic variation at LF is not always associated with mutations in the gene sequence. Instead the expression of LF is strongly correlated with flowering time [16]. The HR and SN act in the leaf as described above while LF acts in the shoot apex in the flowering model [14].

Although the molecular functioning of flowering time genes is well known, there are few studies connecting local adaptation to variation in sequence and gene expression of adaptation genes, in particular in crop species (but see [21, 22]). Here we investigate how landraces of pea have adapted to differences in climatic conditions in Sweden. More specifically we have studied a) the effect of genetic diversity on flowering time in pea, b) whether there are signs of flowering time being adapted to different environmental conditions among Swedish landraces, c) what variation in sequence and gene expression of flowering time genes is present in the Swedish landraces, d) how Swedish landraces differ from European landraces, key cultivars and wild pea, in flowering time and production traits.


Plant material and cultivation

In spite of the late abandonment of landrace pea as a field crop in Sweden, only a limited number of accessions with a reliable provenance are preserved at the Nordic Genetic Resource Center. Among these, fifteen Swedish landraces, originating from a range of different cultivation conditions across Sweden, were chosen for the study (Table 1, Additional file 1). In addition, landraces from other parts of Europe (nine accessions), modern cultivars, primarily from Sweden (seven accessions), wild peas (three accessions) and two standard lines, JIC1228 (Lf d) and JIC1233 (lf e) for late and early flowering respectively [20, 23] were included. The wild peas were all recorded as P. sativum var elatius, the species suggested as the ancestral species of domesticated pea in Europe [2].

Table 1 Accessions included in the study and their genetic and phenotypic diversity in flowering time genes

Test cultivation of a subset of the accessions (all landraces and three cultivars) was carried out during the summer of 2011. Eight individuals of each accession were grown in the field under natural conditions in Gränna, Sweden (57°N, 15°E) and the number of days to first flower (DTF) was recorded. During 2012 five individuals of each accession (except four of JIC1228 and JIC1233 and three of NGB102123) were cultivated in a greenhouse in Linköping, Sweden. Plants were grown in standard commercial soil, and the cultivation temperature was set to a minimum of 16 °C. Light was provided artificially to create a day length of at least 16 h/day, to mimic natural conditions in Sweden during the growth season. The DTF, node at first flower (NAF), number of days to first mature pod (MAT) and total seed weight were recorded for all individuals. Young leaves were collected from single plants of each accession and dried with silica gel when not used directly for DNA extraction.

During 2013 single-seed descent lines of the same accessions (with the exception of NGB102123) were grown in a growth chamber with a 16 h light - 8 h dark regime. Five replicates of each accession (four of NGB102814) were grown with four plants per replicate in a split-plot design (in total 5 × 4 plants per accession). Cultivation temperature was set to 20 °C during light hours and 18 °C during dark hours. To ensure simultaneous germination, all seeds were scarified before sowing. When the fifth node of each individual appeared (according to [16]), the tip of the individual was harvested, frozen in liquid nitrogen and stored at -80° for later extraction of RNA.

DNA sequence analysis

DNA was extracted using either the E.Z.N.A Plant DNA kit (Omega Bio-Tek, GA, USA) for dried leaves, or the DNeasy plant mini kit (Qiagen AB, Germany) for fresh leaves.

The three flowering time genes, HR, LF and SN, were sequenced in all accessions. HR was amplified using two sets of primers (ELF3-FF + ELF3-11R and ELF3-5 F + ELF3-RR) from [15]. LF was amplified with three sets of novel primers (LF5-F + LF5-R, LF6-F + LF6-R, LF7-F + LF7-R). SN was amplified using a single primer pair (LUX-5UTR-11 F + LUX11R). All primer sequences are given in Additional file 2.

Two different PCR reaction mixes were used as follows: For HR and LF the mix contained 2 μl of 10x buffer, 0.2 μl of dNTP (25.0 mM), 2 μl of each primer (1.0 μM), 0.2 μl of Taq DNA polymerase (5 U/μl, NE BioLabs), 2 μl of template DNA and 11.6 μl of nuclease free water. For SN the mix contained 2 μl of 10x Buffer for long PCR enzyme mix including 15 mM of MgCl2, 0.4 μl of dNTP mix (2 mM), 0.6 μl of each primer (10 μM), 0.1 μl of long PCR enzyme mix (5 U/μl Fermentas, Thermo Scientific), 0.4 μl of DMSO, 1 μl of template DNA and 15.9 μl of nuclease free water to bring the reaction mixture to 21 μl. PCR conditions were: initial denaturation at 94 °C for 1 min, then 37 cycles of 30 sec at 94 °C, 40 sec at 48 °C (LF) or 58 °C (SN and HR) and 80 sec at 68 °C. Final extension was for 10 min at 68 °C.

PCR products were cleaned with Exo I and FastAP Thermosensitive Alkaline Phosphatase (TAP; Thermo Scientific) prior to sequencing: 0.015 μl of Exo I enzyme, 0.15 μl of TAP and 5.835 μl of water per reaction volume of 15 μl. Samples were incubated at 37 °C for 30 min followed by 95 °C for 5 min. The homozygous nature of the inbreeding peas allowed direct sequencing to be carried out using the above mentioned primers with additional internal primers for HR and SN where the PCR products were too large to be sequenced in a single reaction (Additional file 2). Sequencing of PCR products was carried out by Macrogen Europe, the Netherlands, and sequences were obtained in both directions for the major parts of the three genes studied.

RNA extraction and qPCR

The tissue sampled for RNA extraction (in total 164 tissue samples across 33 accessions) was ground with steel beads in 2 ml tubes in a Tissue Lyser (Qiagen AB, Germany). Frozen (-80 °C) adapter blocks with sample tubes were shaken for 1 minute at 25Hz which was repeated four times with freezing at -80 °C for 20 min between each shaking session. RNA was extracted from the pulverized tissue using the RNeasy Mini Kit (Qiagen AB, Germany) according to the manufacturer’s instructions. RNA concentrations were measured using NanoDrop ND-1000 (Thermo Scientific Inc., DE, USA). The qPCR primers for LF, SN and TUB genes are given in Additional file 2. TUB was used as a ‘housekeeping’ gene with a stable expression pattern against which the two other genes’ expressions were standardized.

The qPCR was performed in a one step protocol from the RNA samples by using QuantiFast SYBR Green RT-PCR (Qiagen AB, Germany) as described by the manufacturer. Samples with LF and TUB qPCR primers were run on the same plate with a negative reverse transcriptase control (qPCR performed without reverse transcriptase) for the TUB gene added to verify the absence of contaminating DNA. A blank sample for negative RNA control as well as two positive control samples for interplate calibration purposes were run with each primer pair on each plate. The SN gene qPCR was run separately along with the two positive control samples as well as a negative RNA sample with both LF and TUB qPCR primers.

Data analysis

All statistical analyses and drawing of boxplots and scatterplots were performed using R [24], unless otherwise stated. Differences in means of DTF and total seed weight between landraces, cultivars and wild accessions were compared using the Welch two-sample t-test. Correlations between traits and environmental factors were calculated using Pearson’s product–moment correlation coefficient. The psych package [25] in R was used to obtain the descriptive statistics per group. Length of growth season at the site of origin of the accessions (GSO) was defined as the average number of days with a mean temperature of > +5 °C for the period of 1961–1990 (

DNA sequence analyses

DNA sequences were edited and aligned using BioEdit [26]. Sequence data are deposited in GenBank with accession numbers KU258421-85, KU285144, and KU311164-96. The DNAsp software [27] was used to calculate DNA polymorphism and diversity measures, as well as divergence between accession types. DNAsp was also used to obtain Tajima’s D with SNPs and indels, and Fu and Li’s D* and F* within the full data set and within different accession types.

qPCR analyses and the effect of variation in genes and their expression to traits

Raw expression data from the Light Cycler 480 (Roche) was converted with LC480Conversion ( and then analysed through LinRegPCR [28] to obtain PCR efficiencies and Cq values. Next the LF and SN expression Cq data was calibrated separately across plates whereafter it was normalised against the TUB housekeeping gene using the GenEx software (MultiD Analyses, Sweden, available at Unpaired two-tailed t-tests for differences in mean expression between accessions were calculated using GenEx. The significance level corresponding to 0.05 after Bonferroni correction for multiple testing was set at 0.000095. The difference between LF and SN expression were tested using paired t-test in R [24].

Generalized linear model (GLM) analyses for estimating the effects of HR haplotype, LF and SN expression on the phenotypic and environmental variables were performed in R [24]. The GLM models analysed are detailed in Additional file 3. The response variables were DTF, MAT, NAF, seed weight and SN and LF expression. The explanatory variables were HR genotype, LF haplotype, SN haplotype, LF expression, SN expression, GSO, latitude and number of seeds. Interactions between some of the explanatory variables were included as detailed in Additional file 3. The data analysed were either the whole data set including all the accession types or Swedish landrace data only. This division was necessary since reliable information about GSO and latitude was only available for the Swedish landraces.


Flowering time, time to maturity and yield

The number of days between sowing and flowering (Days To Flowering, DTF) ranged from 32 for four of the five individuals of the Latvian landrace NGB17884 to 92 for one of the individuals of the Swedish landrace NGB14154, with accession averages ranging from 32.4 to 87.2 days for NGB17884 and the Swedish landrace accession NGB14638, respectively (Table 1; Additional file 4). The early flowering reference accession JIC1233 had the second-most lowest DTF at 36.0 days. The late flowering reference accession JIC1228 flowered on average at 68 days which was faster than four of the Swedish landrace accessions and one of the wild accessions (Table 1; Additional file 4). The individuals within most accessions were very synchronous in DTF with a standard deviation of less than two for half of the accessions and with all but three accessions having a DTF standard deviation of less than 5 (Table 1).

On average, Swedish landraces flowered significantly later than both European landraces and cultivars (58 vs. 50 and 48 days, respectively; both comparisons p < 0.001). Wild accessions had the most DTF on average (61 days), significantly more than both cultivars and European landraces (p < 0.05). Swedish landraces and wild accessions did, however, not differ in their DTF (p = 0.557). In general, the Swedish landraces had more variable flowering time than the other groups (Additional file 5). Among the Swedish landraces DTF was significantly negatively correlated with latitude (r = -0.29, p = 0.013, Fig. 1a, Additional file 6) and significantly positively correlated with GSO (r = 0.44, p < 0.001, Fig. 1b, Additional file 6) meaning that flowering was faster for accessions from higher latitudes and with shorter GSO.

Fig. 1
figure 1

Scatterplots with regression lines showing the relationship of days to flowering (DTF) with (a) latitude and (b) the length of growing season, both at the site of origin for the Swedish landrace accessions

Time to maturity after the plant started to flower (MAT) was negatively correlated with DTF (r = -0.48, p < 0.001; Additional files 6 and 7). In other words, the longer it took for a plant to flower, the faster the seeds matured, although the majority of variation in MAT was small and ranged between 30 and 35 days. The Swedish landraces and wild accessions matured significantly faster than cultivars (average difference of 2.5 and 3.2 days respectively, p < 0.0001 and 0.005, respectively). The differences between other accession types were not significant. The node at which the first flower was detected (NAF) was strongly correlated with DTF (r = 0.91, p < 0.001; Additional files 6 and 8), and therefore only DTF is reported below.

The Swedish landraces had on average a higher yield per plant (total seed weight, 9.97 g) compared to European landraces and cultivars (European landraces average 7.75, p < 0.0001; cultivars average 8.09, p < 0.05) whereas wild peas (average 6.92) and European landraces did not differ in total seed weight from the other accession types. The total seed weight was significantly correlated with DTF (r = 0.22, p < 0.01) (Additional files 1 and 6).

Sequence variation of HR, LF and SN

DNA sequence was obtained for 3679 bp of the HR gene, spanning from Exon 1 to Exon 4, from all 34 accessions. The sequence variation in HR was very low and comprised of an indel in exon 1 (C5/C6) and another in intron 2 (T10/T11) (Fig. 2a, Additional file 9). The indel in exon 1 caused a previously known frame shift in the amino acid sequence starting from position 176 in our consensus sequence. This has been shown to result in an early termination codon after 21 amino acids and the difference between the early flowering hr and the late flowering HR allele [15]. Among our data set, 19 accessions had the HR allele (Haplotype 1: C5, T10) and 14 accessions the hr allele (Haplotype 2: C6, T11), with all but four of the Swedish landraces having the HR allele. The wild accession NGB102123 was heterozygous for both indels and was removed from further analyses.

Fig. 2
figure 2

Line drawings of the sequenced regions of the (a) HR, (b) LF and (c) SN genes and their variation in the data set. Indels are represented by triangles and SNPs by vertical bars

The LF gene was sequenced for all the accessions in the study for 2172 bp spanning the whole length of the gene from 5’UTR to 3’UTR. The wild accession NGB103567 was highly heterozygous and was left out of further analyses. Among the sequences of the remaining accessions there were 29 SNPs and eight indels (all present only in the wild accession NGB102123) resulting in six haplotypes (Fig. 2b, Additional file 10). Haplotype 1 was identical to the [16] LF sequence (haplotype A), but neither of the other haplotypes corresponded to the haplotypes found by [16]. Haplotype 1 was present in 27 accessions and haplotype 3 in two with the remaining four haplotypes present in single accessions. The two reference accessions JIC1228 and JIC1233 differed from each other in two nucleotide positions. Two of the six SNPs located in the coding region caused an amino acid change within each of JIC1778 and NGB102123. The two changes were located at positions 127 (R - > T) and 129 (N - > D) of the protein sequence. They lie outside of the more conserved substrate binding sites and are not conserved across species. Only four SNPs of the 29 were found outside the wild accessions, and the Swedish landraces were all monomorphic with the exception of NGB17873 differing in a single SNP.

SN was by far the most variable of the three genes studied. The whole gene was sequenced for all accessions except NGB102123, along 2690 bp from the 5’UTR to the 3’UTR. In total 35 SNPs and nine indels were detected (Fig. 2c) resulting in nine haplotypes (Additional file 11) of which haplotypes 1 and 2 were found among 13 and seven accessions, respectively. The other seven haplotypes were found in one to four accessions each. Four of the nine haplotypes detected in this study shared the SNPs previously been described by [17]. Haplotypes 1, 4 and 7 in this study correspond to haplotypes 1, 20 and 3 in [17], respectively. The SNPs characterising haplotype 7 in [17] were found in haplotypes 2, 3 and 6 in this study. Liew et al. [17] found all of these changes from the reference sequence (haplotype 1 in their and this study) to be functionally non-significant with silent or conservative amino acid substitutions. In contrast with LF, the wild accessions shared haplotypes with landraces and cultivars. Nine SNPs were found within the coding region, three of which were non-synonymous changes present in a total of 18 accessions. All three non-synonymous changes occurred outside of the conserved parts of the protein, at positions 20 (P - > S), 31 (T - > A) and 86 (E - > V). The accession JIC1031 carried a 205 nucleotides long deletion that resulted in eight amino acids missing from the beginning of the coding sequence. This allele has not been described previously, and may well be a loss-of-function allele. However, we note that there is another in-frame start codon at position 30 in the amino acid sequence. The Swedish landraces had 26 polymorphic sites across the whole sequence with haplotype 5 being unique to the northernmost accessions but with no clear geographic distribution among the other four haplotypes present.

Nucleotide diversity and Tajima’s D

DNA divergence (Dxy) was calculated between all pairs of accession types for LF and SN, but not for HR where only indel variation was present (Table 2). Within LF, divergence between accession types was low between the Swedish and European landraces and cultivars (0.0001 – 0.0002) but higher between the wild accessions and the other accession types (0.0062 – 0.0064). In SN the divergence between accession types instead ranged more uniformly from 0.0024 between wild and Swedish landrace accessions to 0.0056 between cultivars and European landrace accessions.

Table 2 DNA divergence between accession types. Dxy for SN below the diagonal, Dxy for LF above diagonal

Because there were only two wild accessions with sequence data for each gene, the wild accession type was omitted from further sequence analysis. Looking at all domesticated accessions, both haplotype and nucleotide diversity were higher for SN than for HR and LF (Table 3). Haplotype and nucleotide (Πsite) diversities for the HR gene were similar for the different accession types as were nucleotide diversities for LF. In contrast the LF haplotype diversity, SN haplotype diversity and SN nucleotide diversity were all significantly lower for Swedish landraces than European landraces and cultivars (all comparisons p < 0.001 except SN nucleotide diversity for Swedish landraces vs cultivars: p < 0.05).

Table 3 Tests for selection and genetic diversity for HR, LF and SN. The wild accessions are not included in these analyses because there were too few sequences to obtain reliable results

Tajima’s D was significantly positive for the total data set of HR (2.080, p < 0.05) although the power for the test based on a single indel is limited. In contrast Tajima’s D was significantly negative for the total data set of LF (DNA: -2.644, indels: -2.241; p < 0.001 and p < 0.01, respectively) (Table 3). Fu and Li’s D* and F* could not be calculated for HR due to the lack of variation, but were both significantly negative for the total data set of LF (Table 3). Neither accession type nor the total data set had significant Tajima’s D values for SN, but both Fu and Li’s D* and F* were significantly positive for the total data set and for Swedish and European landraces, but not for cultivars (Table 3).

LF and SN gene expression

Gene expression of LF and SN was measured in 4 or 5 individuals from all accessions except NGB102123. In SN, the accession JIC1031, with a major deletion from the start of the protein, and the accession NGB17881, which persistently produced double melting peaks in all but one of the five replicates, were excluded from downstream analyses, resulting in 31 accessions analysed for SN and 33 for LF respectively. Negative controls verified the absence of DNA contamination and RNA cross-contamination.

With the exception of the accession NGB17884, LF was expressed significantly more (had lower Cq values) than SN in the target tissue of all accessions (p < 0.001, Table 1). Differences in expression between accessions were notably more pronounced in LF than in SN. From 528 pairwise t-tests between accessions for the LF gene expression 8 % were significant after Bonferroni correction while for the SN gene none were significant (Additional file 12). There were no significant differences in the expression levels of different haplotypes (p = 0.32 and 0.82 for LF and SN respectively), nor any significant differences in the LF or SN expression levels between the different accession types (all p-values > 0.05, Additional file 13). The two reference accessions differed, however, significantly from each other in LF expression (Additional file 12). Neither LF nor SN expression was correlated to either latitude or GSO (all p > 0.05).

Effects of HR, LF and SN variation on flowering time

The two HR haplotypes had highly significantly different DTF (t-test, p < 0.001). HR (haplotype 1) was associated with late (average of 60.74 days) and hr (haplotype 2) with early (average of 44.81 days) flowering, with an average difference of 15.93 days (Fig. 3). Not all accessions, however, conformed to the DTF differences between the two haplotypes. The most striking exception was NGB17884, which had the HR haplotype, but flowered the earliest of all the accessions at 32.4 days (Table 1). NGB17884, however, had the lowest LF expression of all accessions (highest Cq value), which is most likely the cause of its early flowering.

Fig. 3
figure 3

Boxplot showing days to flowering (DTF) for the two HR haplotypes. Mean and median values for DTF are shown with grey and black bars respectively

There were no significant effects of SN haplotype, SN expression or LF haplotype on DTF (p = 0.7700, p = 0.3670 and p = 0.8390 respectively). The effect of LF expression on DTF was, however, significant (p < 0.05) and explained 18.6 % of the variation in DTF. A higher Cq value (lower LF expression) corresponded to a shorter flowering time (Fig. 4).

Fig. 4
figure 4

Scatterplot with a regression line showing the relationship between the average days to flowering (DTF) and the LF expression (Cq value)

To analyse more complex relationships between factors with effect on DTF combined generalised linear model analyses were performed. The data sets used, the various models and their significances are detailed in Additional file 3. Among the Swedish landrace accessions HR haplotype together with GSO had a significant effect on DTF (p < 0.001 and p < 0.01; 23.68 and 0.41 days, respectively) and together they explained 49.6 % of the variation in DTF. There was no significant effect of LF or SN expression together with GSO detected for DTF. In combination with HR haplotype (DTF ~ LF + HR), the LF expression effect on DTF was close to, but not significant (p = 0.0593).


The effect of HR, LF and SN on flowering time in pea

Our results confirm many of the previously found correlations between genetic diversity in the three studied genes and phenotypic diversity with regards to flowering time. In our sample of accessions from across Europe, including wild accessions, we found limited genetic variation in HR. We detected only two of the 15 haplotypes reported by Weller et al. [15] from a study of 110 wild and domesticated pea accessions from around the world. These two haplotypes have been shown to be the most common ones among European accessions [15]. Although the plants were cultivated under LD conditions, the two haplotypes allowed us to confirm the previously reported effect of HR on DTF with earlier flowering among individuals carrying the hr allele [15]. The accessions carrying the HR allele did, however, display a larger variation in flowering time and several accessions with a DTF smaller than 50 carried the HR allele (Fig. 3). For example the Latvian landrace NGB17884, the earliest flowering of our accessions, carries the HR allele. Similar results have previously been reported by Weller et al. [15] who found that several early flowering accessions carried the HR allele. Thus, even though the HR haplotype is a major influencer of flowering time in pea, it is clear other genes can also have an important impact on flowering time.

Weller et al. [15] commented that their single marker tests failed to provide evidence for significant effects of other known flowering loci, including LF, in a cross between the line NGB5839 (a derivative of the Swedish cultivar ‘Torsdag’) and the wild line JIC1794 (P. elatius var. humile). However, other studies have shown that recessive lf alleles can confer earlier flowering independently of the HR genotype [29]. We could confirm both the absence of correlation between coding sequence variants of LF and DTF and the correlation between LF expression and DTF found by Foucher et al. [16] with the early and late flowering reference accessions having low and high LF expression respectively. In our material a one-unit decrease in the Cq value of LF was associated with a 6.1 days delay in flowering time. Relatively early flowering accessions with high LF expression (low Cq values) and late flowering accessions with a low LF expression were found, but the three accessions with the lowest LF expression (NGB17868, NGB17884 and JIC1233) were also the earliest flowering (<40 days).

Genetic variation at the SN locus has previously been shown to affect flowering time and accessions carrying loss-of-function alleles of the gene are known to be early flowering [17]. None of the previously described mutations found in this study were loss-of function mutations and neither were they functionally significant according to Liew et al. [17]. Surprisingly, our qPCR showed that JIC1031, in spite of carrying a large deletion at the beginning of the gene, still expressed SN, which could explain its medium length flowering time and the absence of the early phenotype typically detected in sn mutants [17]. In fact, we were unable to show any significant effect of SN on DTF, neither from sequence variants, not from its expression. Also, although HR and SN are known to interact and regulate each other [17], this interaction may be complex, and we could find no connection between SN and HR in the present study. The expression of SN varies over the day [17], and although care was taken to harvest the samples at approximately the same time of day (~3 h after the beginning of light) differences in the sampling time or sampling at a suboptimal time point could have masked an effect of SN. Additionally DTF was only measured under LD condition and an effect of SN expression has so far only been described under SD conditions [17].

Flowering time and local adaptation in Swedish landrace pea

Sweden stretches for some 1600 km from below 56° N to just above 69° N. Although pea cultivation is not possible over the whole country, the length of the growth season in the parts of the country where peas are being or have been cultivated still ranges from approximately 140 to 220 days. Thus, Sweden offers a range of local climatic conditions for peas to adapt during the millennia of pea cultivation, and a rapid flowering and a quick maturation is necessary in the regions with the shortest growth seasons.

The Swedish pea landraces showed evidence of phenotypic adaptation to the varying cultivation climate occurring across Sweden although the connection was not entirely straightforward. The large variation in DTF present among Swedish landraces was significantly correlated with latitude. Although the main range of Sweden is in the north – south direction, latitude is not the sole determinant of climate in the country and consequently GSO was more strongly correlated with DTF than latitude. In regions with a short growth season natural selection has favoured rapidly flowering genotypes. The variation in flowering time was much larger in more southern parts of Sweden and areas with a longer GSO, partially obscuring the correlation between DTF and latitude and GSO. In the absence of strong natural selection for rapid flowering a longer growth phase before flowering has been possible. A delayed flowering could lead to a larger harvest, and in our material, a longer DTF was correlated with a higher total seed weight of the plant. It is possible that in some accession artificial selection by the farmers for larger harvest has resulted in a longer growth phase resulting in a higher yield. Additionally, the vegetative parts of the plant were considered valuable fodder in the past [8], and a delayed flowering, leading to larger production of total biomass, may also have been sought by some farmers. We note that accessions from regions with a longer growing season have more varied flowering times indicating that in these regions climate allowed for differentiation into types with different properties, something that was not possible in harsher climates.

The data on DTF used in this study was obtained from cultivation in a controlled greenhouse climate. Under field conditions the DTF of an overlapping set of accessions (including all landraces from this study and three out of the seven cultivars) showed a strong and significant correlation (r = 0.65, p = 0.0002) to the DTF obtained in our greenhouse cultivation (Additional file 14). This correlation is comparable with Burstin et al. [30] where the correlation of DTF between two different field trials was 0.79. Thus we consider the greenhouse data for DTF to be a reasonably good indicator for the DTF under field conditions.

Variation in flowering time genes in Swedish landrace peas

In spite of the correlation between DTF and latitude and GSO, the connection between latitude and GSO and genetic and expression diversity of the three genes studied is less clear. The lack of clear geographic distribution of LF and SN haplotypes and SN expression is not unexpected considering that no effect of them on DTF could be found. More surprising is the lack of geographical distribution at the HR locus. Only three Swedish landrace accessions had the early flowering hr allele but neither originated from particularly far north. For example, the three northernmost accessions all had the late flowering HR allele, but in general flowered earlier than HR accessions origination from further south.

The expression of LF did not show any significant correlation with latitude or GSO in the Swedish landrace accessions. This may seem surprising given the correlation of LF expression and DTF we found. We note, however, the wide diversity in DTF present in lower latitudes and regions with longer GSO. It is possible that a significant correlation with LF expression could have been detected in a larger data set or a data set where DTF was more strongly correlated with latitude and GSO.

Flowering time is a complex trait controlled by multiple genes and flowering time will rarely be determined by single SNPs (but see [15, 21]). Here we have only studied three of the genes influencing flowering time in pea. Further studies of loci such as DIE NEUTRALIS (DNE [31]), GIGAS/FTa and FTb [32], known to influence the transition to flowering, may well show their importance for local adaptation of flowering time in Swedish landraces. In addition, control of gene expression can be complex with trans and cis regulation feedback loops. The final expression of flowering time genes will depend on gene interactions but also plasticity. Most likely flowering time adaptation is the consequence of complex interactions between a number of genes, similar to the situation suggested for Nordic barley landraces [22].

Evolution of flowering time in domestic pea

From our limited sample of wild pea it was clear that they displayed varied DTF, and were in general more phenotypically and genetically diverse than the other accession types. High genetic diversity in wild peas has previously been shown with different neutral genetic markers [2, 30, 33] and a higher genetic diversity in wild progenitors than domesticated plants is congruent with theoretical predictions about the domestication process and empirical comparisons of wild and domesticated plants (e.g. [34]). Burstin et al. [30] pointed out that even though the variability is larger in wild peas, it does not mean that the domesticated gene pool is lacking in variation. Instead they concluded that diversity across pea varieties has probably been maintained through breeding for diverse end uses such as fodder crops and garden peas. Different climatic conditions may also have been a force preserving genetic and phenotypic diversity in pea.

In spite of the known role of HR, LF and SN in determining flowering time we find limited support for selection for local adaptation having acted upon them. Only LF displayed the negative test values indicative of directional selection when the full dataset is analysed. For the different accession types Fu and Li’s statistics (but not Tajima’s D) instead indicated balancing selection acting on SN. Considering the range of flowering times observed in both wild and domestic accessions it is possible that different alleles have been selected simultaneously or that soft rather than hard selective sweeps have been responsible for flowering time adaptation.

The development of commercially available pea cultivars in Sweden resulted in a reduction in DTF (under LD conditions studied here and prevailing during pea cultivation in Sweden). The selection of genetically homogeneous cultivars also resulted in a reduced within-accession variability both in flowering time and in seed production traits. Four of the five Swedish cultivars carried hr alleles, and it is possible that the early flowering hr allele has been important in the breeding of rapidly flowering cultivars as the demand for biomass for fodder declined. It is also possible that active breeding for shorter, sturdier plants resulted in cultivars flowering at fewer nodes, i.e. at lower DTF. In contrast MAT was longer for cultivars than the Swedish landraces they were at least partially developed from. A longer MAT allows for longer grain filling and may have been a criterion selected for during the development of pea cultivars. Today, pea is typically grown in the south of Sweden and in 2014 no harvests of pea were reported from areas above the 60th parallel (Statistics Sweden, 2015, This, however, seems not to be a consequence of a long DTF in commercial cultivars as some of the commercial cultivars flowered as rapidly as landrace accessions from north of the 60th parallel. Investigation on other adaptation traits such as frost tolerance and drought resistance would allow more complex aspects of local adaptation in this material to be explored.


From our study of the flowering time of wild peas, European and Swedish landraces and commercial pea varieties and the genetic diversity of three flowering time genes we find that Swedish landraces have adapted locally to differences in growth season. We can further confirm several previously published effects of sequence and expression diversity on flowering time from the genes HR, LF and SN. The genetic causes of the flowering time adaptation in Swedish landraces are more obscure and seem to involve the studied genes as well as interactions between them and likely other genes not investigated in this study.


DTF, days to flowering; GSO, length of growing season at site of origin; SD, short day; LD, long day; DTF, days to first flower; NAF, node at first flower; MAT, days to first mature pod; GLM, generalized linear model.


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The authors thank the Nordic Genetic Resource Center and the John Innes Center for providing seeds used in the study and Jesper Fogelholm for help with data collection. The authors are also grateful to Atle Bones and Torfinn Sparstad for help with qPCR analyses.


The Swedish Board of Agriculture, the Erik Philip-Sörensen Foundation, the Royal Swedish Academy of Forestry and Agriculture (CF Lundström foundation and Adolf Dahl foundation) all contributed with funding towards the research.

Availability of data and materials

DNA sequences are available at Genebank, accession numbers: KU258421-85, KU285144, and KU311164-96.

Authors’ contributions

JH and MWL designed the project, ML cultivated the plants and collected phenotype data, TV, KRN and ML carried out the laboratory work, TV and JH wrote the paper with contributions from JLW and MWL. All authors read and approved the paper.

Competing interests

The authors declare that they have no competing interests.

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Not applicable.

Ethics approval and consent to participate

No ethics approval was needed for the study.

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Correspondence to Jenny Hagenblad.

Additional files

Additional file 1:

Accessions used in the study, their origin and data on flowering and seed production. (XLSX 51 kb)

Additional file 2:

Primers used in the study. (PDF 16 kb)

Additional file 3:

GLM models analysed, their significance and the data sets used. (XLS 22 kb)

Additional file 4:

Boxplot showing days to flowering (DTF) within each accession. Mean and median values for DTF are shown with red and black bars respectively. (PDF 69 kb)

Additional file 5:

Boxplot showing days to flowering (DTF) within each accession type. Mean and median values for DTF are shown with red and black bars respectively. (PDF 44 kb)

Additional file 6:

Pearson correlation coefficients (including significances) between the measured traits, haplotypes and expression levels. Correlations with latitude and GSO are done with Swedish landraces only while the rest of the correlations include the whole data set. (XLS 21 kb)

Additional file 7:

Scatterplot showing the relationship of days to flowering (DTF) and time to maturity after flowering (MAT). Accession types are shown with different symbols. (PDF 47 kb)

Additional file 8:

Scatterplot showing the relationship of days to flowering (DTF) and the node at first flower (NAF). Accession types are shown with different symbols. (PDF 43 kb)

Additional file 9:

Variation in the HR gene. (XLSX 11 kb)

Additional file 10:

Variation in the LF gene. (XLSX 16 kb)

Additional file 11:

Variation in the SN gene. (XLSX 16 kb)

Additional file 12:

P-values of Unpaired t-test for gene expression levels between pairs of accessions. (XLSX 48 kb)

Additional file 13:

P-values for Welch two sample t-tests between different accession types and expression levels for the LF and SN gene. (XLSX 33 kb)

Additional file 14:

Scatterplot with a regression line of the relationship between DTF measurements in the greenhouse and field with overlapping accessions between the two studies. (PDF 40 kb)

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Vanhala, T., Normann, K.R., Lundström, M. et al. Flowering time adaption in Swedish landrace pea (Pisum sativum L.). BMC Genet 17, 117 (2016).

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