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Genome-wide association study (GWAS) reveals genetic loci of lead (Pb) tolerance during seedling establishment in rapeseed (Brassica napus L.)

Abstract

Background

Lead (Pb) pollution in soil has become one of the major environmental threats to plant growth and human health. Safe utilization of Pb contaminated soil by phytoremediation require Pb-tolerant rapeseed (Brassica napus L.) accessions. However, breeding of new B. napus cultivars tolerance to Pb stress has been restricted by limited knowledge on molecular mechanisms involved in Pb tolerance. This work was carried out to identify genetic loci related to Pb tolerance during seedling establishment in rapeseed.

Results

Pb tolerance, which was assessed by quantifying radicle length (RL) under 0 or 100 mg/L Pb stress condition, shown an extensive variation in 472 worldwide-collected rapeseed accessions. Based on the criterion of relative RL > 80%, six Pb-tolerant genotypes were selected. Four quantitative trait loci (QTLs) associated with Pb tolerance were identified by Genome-wide association study. The expression level of nine promising candidate genes, including GSTUs, BCATs, UBP13, TBR and HIPP01, located in these four QTL regions, were significantly higher or induced by Pb in Pb-tolerant accessions in comparison to Pb-sensitive accessions.

Conclusion

To our knowledge, this is the first study on Pb-tolerant germplasms and genomic loci in B. napus. The findings can provide valuable genetic resources for the breeding of Pb-tolerant B. napus cultivars and understanding of Pb tolerance mechanism in Brassica species.

Background

Lead (Pb) pollution in soil, from anthropogenic activities such as burning of fossil fuels, mining, discharge of untreated industrial wastes and effluents, and unreasonable disposal of lead batteries, has become a worldwide environmental issue [1, 2]. Pb in soil, is easily transferred to plant tissues, can not only influence various morphological, physiological and biochemical processes in plant, can also threats to human health through food chains [3,4,5]. Several alleviating techniques such as phytoremediation (including Phytostabilization and Phytoextraction) have been applied for safe utilization of Pb contaminated soil [6, 7]. Development of new cultivars tolerance to Pb toxicity will be the first step for safe utilization of Pb polluted soil by phytoremediation [8,9,10].

Rapeseed (Brassica napus L.), an ideal plant for phytoremediation, is an important source of edible vegetable oil, vegetable, animal fodder, green manure and biodiesel [11]. Breeding rapeseed cultivars with Pb-tolerant require germplasms and genetic loci related to Pb tolerance. Whereas, more and more genotypes tolerance to Pb toxicity have been selected in rice, ramie and willow populations, very few Pb-tolerant B. napus germplasm has been investigated [12,13,14,15,16,17]. At the vegetative and adult stage, Pb toxicity in rapeseed was evident from elevated levels of oxidative stress and subcellular damage that significantly inhibited plant growth, leaf chlorophyll contents, gas exchange parameters and photosynthetic attributes [18,19,20,21]. But at the initial growth stages (the beginning of life cycle, such as seedling establishment), serve as an important indicator in determining the toxicity effects of heavy metals (HMs) on plants, only cadmium (Cd) toxicity effect has been reported in rapeseed [22, 23].

Unlike in other plants, few data is available on molecular mechanisms involved in Pb tolerance in rapeseed. In Arabidopsis AtACBP1 (Acyl-CoA-binding domain-containing protein), AtPSAE1 (Photosystem I reaction center subunit IV A) and several ABC (ATP-binding cassette) transporter genes (AtATM3, AtPDR8, and AtPDR12) have been identified as being involved in tolerance to Pb stress [24,25,26,27]. Previous research has also demonstrated that HvCBT1 (CaM binding transporter) in barley, AtCNGC1 (cyclic nucleotide-gated ion channel) in Arabidopsis and NtCBP4 in tobacco, as one of the nonselective entry pathways used by Pb [28,29,30,31]. For further exploring genetic factors responding to Pb stress, Genome-wide association study (GWAS), a powerful tool to detect the genetic architecture of complex traits, has been widely used in rice, maize and grasses [12, 32,33,34,35,36,37,38,39]. GWAS has also been used to study HMs concentration, tolerance to Cd and other abiotic stress related quantitative trait loci (QTLs), but not the molecular mechanism of Pb tolerance in B. napus [23, 40,41,42,43].

The objectives of this study were screening elite germplasms tolerance to Pb stress at seedling establishment stage among 472 worldwide-collected rapeseed accessions and identification of QTLs and candidate genes related to Pb tolerance by GWAS for the first time in B. napus. The findings can provide valuable genetic resources for breeding of Pb-tolerant cultivars and understanding of the molecular mechanisms responding to Pb stress in Brassica species.

Results

Screening elite B. napus germplasms tolerance to Pb stress

To investigate the tolerance to Pb stress of different B. napus genotypes, the radicle lengths (RL) of 472 accessions grown under 0 or 100 mg/L Pb stress condition for seven days were compared. Although the RL varied significantly among all the accessions under both normal and Pb stress conditions (with a range from 31.15 to 130.50 mm (mm), and 8.67 to 80.60 mm, respectively), the RL of all accessions under Pb stress condition were shorter than that under normal condition (Fig. 1a, Additional file 1: Figure S1). The average of RL under normal growth condition was 85.18 ± 0.08 mm, whereas the average of RL under Pb stress condition was 39.77 ± 0.05 mm (Fig. 1a). This is consistent with previous reports [23, 44].

Fig. 1
figure 1

Distributions and correlation matrixes of traits. a Violin plot of radicle length (RL) under control (CK) and Pb stress (Pb) condition. b Distributions and correlation matrixes of relative radicle length (RRL). RRL1, RRL2, RRL3 represent the RRL in replication 1, 2 and 3 respectively. RRL_Means was the average value of three RRLs

To eliminate the genetic variations in RLs under normal condition, the relative radicle length (RRL) was employed to evaluate the tolerance to Pb stress of B. napus as reported previously [23, 45]. We found that the RRL was ranged from 12.94 to 98.88, 12.17 to 99.84, 20.34 to 98.42 in three replications, respectively (Fig. 1b, Additional file 5: Table S1). And the coefficient of variation ranged from 26.37 to 28.57% in three replications (Additional file 5: Table S1). These results indicate that this B. napus population exhibited a broad variation of Pb tolerance.

To select stable Pb-tolerant genotypes for potentially used in phytoremediation or new cultivar breeding, we performed correlation analyses, and found that the RRLs of three replications were significantly correlated with each other with a correlation coefficient value over 0.85 (Fig. 1b). Based on the values of RRLs of all the accessions, six Pb-tolerant genotypes (RRL > 80%) were selected (Additional file 6: Table S2).

Detection of QTLs associated with Pb tolerance

To select a most suitable model for GWAS analysis of Pb tolerance in the population, the native, population structure (Q), principal component analysis (P), kinship (K), Q + K and P + K models were tested. As shown in quantile-quantile plots (Q-Q) plot, the distribution of observed −log10(p) from Q + K model provided the best fit with the expected distribution (Additional file 2: Figure S2). Therefore, to decrease the rate of false-positive, Q + K model was chosen for subsequent analysis.

Six significantly associated single nucleotide polymorphisms (SNPs) (−log10(p) > 4.3) and three moderately associated SNPs (3.5 < −log10(p) < 4.3) located on chromosome A09, C03 and C04 were detected (Fig. 2). Almost all of them (except for Bn-scaff_16614_1-p658026 and Bn-scaff_18559_1-p175628) were identified in more than two replications, and four out of the nine SNPs were detected in all replications (Table 1). In addition, the significant difference of RRLs between alleles in all nine SNPs were confirmed by t-test (Fig. 3).

Fig. 2
figure 2

Manhattan plots of association analysis for RRLs using Q + K model. The red, pink, blue and green dots represent the association signals for RRL_Means (average value of three RRLs), RRL1 (RRL in replication 1), RRL2 (RRL in replication 2) and RRL3 (RRL in replication 3), respectively. The blue and red horizontal lines indicate the significantly associated threshold (−log10(1/19,945) = 4.3) and moderately associated threshold (−log10(p) between 3.5–4.3), respectively

Table 1 Genome-wide association signals of Pb tolerance
Fig. 3
figure 3

Allele effects of associated SNPs. Red, green, blue and purple boxes indicated the A, C, G and T alleles, respectively. The “P” presents significant different level of RRL between alleles by t- test

Further studies with linkage disequilibrium (LD) analyses indicated that these nine associated signals were located in four QTLs. QTL Pb-C03–1 (204.55 kb, position from 1,241,778 bp to 1,446,328 bp on chromosome C03) contained six SNPs, with a peak SNP Bn-scaff_16614_1-p721297 which gave a 5.61% contribution to the phenotypic variance (Fig. 4, Table 1). Whereas, QTL Pb-A09 (265.76 kb, position from 8,148,958 bp to 8,414,720 bp on chromosome A09, Additional file 3: Figure S3a), QTL Pb-C03–2 (18.14 kb, position from 58,079,114 bp to 58,097,249 bp on chromosome C03, Fig. 4) and QTL Pb-CO4 (186.37 kb, position from 14,028,410 bp to 14,214,776 bp on chromosome C04, Additional file 3: Figure S3b) all contained only one associated SNP, and respectively gave a 3.81, 4.43 and 4.31% contribution to the phenotypic variance (Table 1).

Fig. 4
figure 4

Association mapping for RRL on chromosome C03. Plots show the SNPs in the QTL Pb-C03–1 (top left of Fig. 4, from 1,241,778 to 1,446,328 bp on chromosome C03) and Pb-C03–2 (top right of Fig. 4, from 58,079,114 to 58,097,249 bp on chromosome C03) regions associated with RRL. The red, pink, blue and green dots represent the association signals for RRL_Means (average value of three RRLs), RRL1 (RRL in replication 1), RRL2 (RRL in replication 2) and RRL3 (RRL in replication 3), respectively. The blue and red horizontal line indicate the threshold of significantly associated SNPs at −log10 (1/19,945) = 4.3 and threshold of moderately associated SNPs at 3.5 ≤ −log10 (p) ≤ 4.3, respectively as in Fig. 2. The heat maps span the linkage disquilibrium (LD) region with the most strongly associated SNPs (r2 > 0.4)

Identification of candidate genes related to Pb tolerance

For the identification of candidate genes related to Pb tolerance, all the 115 genes located in the QTL regions (29, 41, 24 and 21 genes in QTL regions Pb-A09, Pb-C03–1, Pb-C03–2 and Pb-C04, respectively) were annotated by nucleic acid basic local alignment search tool (BLASTN) with A. thaliana genome and Kyoto Encyclopedia of Genes and Genomes (KEGG) databases. The top 20 enriched metabolic pathways were shown in Additional file 4: Figure S4 and Additional file 7: Table S3. Based on the criterion qvalue ≤0.05, three genes, BnaA09g14510D, BnaA09g14520D and BnaA09g14540D, enriched in glutathione metabolism pathway, and three genes, BnaC03g68440D, BnaC03g68450D, and BnaC03g68460D, enriched in the biosynthesis pathway of pantothenate and CoA, as well as in the biosynthesis degradation pathways of valine, leucine and isoleucine were selected for further analyses (Additional file 7: Table S3). The other three candidate genes, BnaC03g02630D, BnaC03g02690D and BnaC04g16200D, which were homologous with AtUBP13 (ubiquitin-specific protease 13), AtTBR (Trichome birefringence) and AtHIPP01 (heavy metal-associated isoprenylated plant protein) respectively, were also selected for further analyses. All these nine candidate genes may contribute to Pb tolerance in B. napus by regulating glutathione metabolism, cell wall development, ubiquitination and amino acid metabolism, respectively (Table 2).

Table 2 A list of the most promising candidate genes for Pb tolerance in rapeseed

Exploring the expression level of candidate genes

To investigate the expression levels of these candidate genes under both normal and Pb stress conditions in both Pb-tolerant and Pb-sensitive accessions, we performed quantitative real time polymerase chain reaction (qRT-PCR) assay. We observed that the expression level of BnaA09g14520D, BnaA09g14520D and BnaA09g14540D located in QTL Pb-A09, and BnaC03g02630D and BnaC03g02690D located in QTL Pb-C03–1, were extremely higher in Pb-tolerant genotypes than in Pb-sensitive genotypes (Fig. 5a, b, c, d, e). BnaA09g14520D and BnaC03g02690D were significantly induced by Pb stress only in two Pb-tolerant accessions (Fig. 5b, e). BnaA09g14540D and BnaC03g02630D were significantly up-regulated in a Pb-tolerant accession III-229 and only slightly up-regulated in the other accessions under Pb stress (Fig. 5c, d).

Fig. 5
figure 5

The relative expression level of candidate genes for Pb tolerance. The “a, b, c, d and e” present significant difference at 5% level by tukey test

BnaC03g68440D, BnaC03g68450D and BnaC03g68460D located in QTL Pb-C03–2 were enriched in the same pathways. We found that BnaC03g68440D and BnaC03g68450D were significantly induced by Pb stress in III-229 (Fig. 5f, g), and the expression levels of BnaC03g68440D and BnaC03g68450D in Pb-sensitive genotype EH3143 were extensively lower in comparison to Pb-tolerant genotypes (Fig. 5f, g). Similarly, a higher expression level of BnaC03g68460D was also observed in the two Pb-tolerant genotypes than in two Pb-sensitive genotypes (Fig. 5h). Under Pb stress condition, BnaC04g16200D, located in QTL Pb-C04, was remarkably up-regulated in Pb-tolerant genotype III-229 and down-regulated in Pb-sensitive genotype 6024–1 (Fig. 5i).

Discussions

Pb-tolerant accessions provide valuable resources for phytoremediation

Pb, as known to be a non-essential HMs, causes a series of severe phyto-toxicities including growth inhibition, declines in photosynthesis, respiration and mineral nutrition, and even death. Especially in the initial stages, seed germination and seedling establishment were extremely inhibited by high concentration of Pb stress [22, 46]. In this study we also found that the RL of B. napus was seriously short under Pb stress in comparison to under normal condition (Fig. 1a, Additional file 1: Figure S1) during seedling establishment. This phenomenon is principally because radicle is the first tissue of plants exposed to HMs [23, 47].

Pb tolerance, represent the ability of plants to adapt to and cope with Pb stress, was commonly evaluated by relative growth indexes under both normal and Pb stress conditions [45]. Considering the severe inhibition of Pb stress on radicle elongation, the RRL has been employed to evaluate the tolerance of B. napus to Pb stress. Extensive phenotypic variation for Pb tolerance in B. napus population (Fig. 1b, Additional file 5: Table S1), as well as HMs tolerance in many other plant species, has been observed [47,48,49]. Six Pd-tolerant genotypes (Additional file 6: Table S2) selected from the population can provide valuable plant resources which is usable for the breeding of Pb-tolerant B. napus cultivars [6, 9].

Specific QTLs for Pb tolerance were identified in B. napus

To detect Pb tolerance related QTLs by GWAS in B. napus, the Q + K model which was also used in seed weight and seed quality, branch angle and flowering time studies, was utilized in this study [50,51,52]. Nine associated signals located in four QTLs were obtained (Fig. 2, Table 1). To determinate whether these four QTLs is specific for Pb tolerance in B. napus, comparison analysis was conducted. We found that no QTL was overlapped with previous reported Cd responsive QTLs in B. napus [23, 40], although several protein such as AtHMA2 (Heavy Metal ATPases) and AtPDR8 can transport both Cd and Pb in plant [25, 53]. This might be caused by the different populations used for GWAS and the large difference of genetic factors between Pb and Cd stress responses [9, 54]. Thus, the four QTLs might be specific genetic factors for tolerance to Pb stress in B. napus.

Higher expression of GSTs contributes to Pb-tolerant

Glutathione S-transferases (GSTs) contributed to HMs tolerance mainly by playing important roles in the cellular antioxidant defense mechanisms and serving as non-enzymatic carriers for intracellular transport [55, 56]. We identified three GSTs genes, BnaA09g14510D, BnaA09g14520D, and BnaA09g14540D, in QTL Pb-A09 (Table 2). qRT-PCR assays demonstrated that the expression levels of these three genes were extremely higher in Pb-tolerant genotypes than in Pb-sensitive genotypes (Fig. 5a, b and c). Furthermore, an induced expression of BnaA09g14520D and BnaA09g14540D by Pb exposure in Pb-tolerant accessions were also observed as reported previously [55]. Therefore, increasing the activity of GSTs might be an efficient way to develop hyper-tolerant B. napus for phytoremediation [56, 57].

Ubiquitination and de-ubiquitination co-regulate Pb tolerance

In QTL Pb-A03–1, BnaC03g02630D is homologous with AtUBP13 (Table 2). AtUBP13, similar to AtUBP16, AtUBP6, ZmUBP15, ZmUBP16 and ZmUBP19, which can increase plant tolerance to HMs stress, all belong to the de-ubiquitinating enzymes family [53, 58,59,60]. In our study, the expression level of BnaC03g02630D was significantly higher in Pb-tolerant accessions than in Pb-sensitive accessions (Fig. 5d). Whereas, NtUBC1 and GmARI1, which can modify protein by ubiquitin, can also enhance HMs tolerance in plants [61, 62]. We infer that both modification of protein by ubiquitin and de-ubiquitin can alleviate HMs toxicity, in which the target proteins may be the critical factor for HMs tolerance in plant. Further studies will be conducted to investigate the targets of BnaC03g02630D to increase the tolerance of B. napus to HMs stress.

TBR protein was associated with Pb tolerance by regulating cell wall development

Trichome birefringence (TBR) contributes to the synthesis and deposition of secondary wall cellulose, and helps to maintain the esterification of pectin [63, 64]. It has been demonstrated that increasing cell wall capacity for the compartmentalization of Pb is a major approach for plant cell to protect protoplasts from Pb toxicity [9, 65,66,67]. In this study, BnaC03g02690D, a homology of TBR (AT5G06700) gene, was also identified in QTL Pb-A03–1 (Table 2). The expression level of BnaC03g02690D was significantly higher and induced by Pb in Pb-tolerant accessions than in Pb-sensitive accessions (Fig. 5e). Therefore, the TBR protein encoded by BnaC03g02690D contribute to Pb detoxification by increasing cell wall capacity through the compartmentalization of Pb in B. napus.

BCAA metabolism regulation can mediate Pb tolerance

Branched-chain-amino-acid aminotransferase (BCAT), which catalyzes both the last anabolic step and the first catabolic step of branched-chain-amino-acids (BCAAs, including valine, leucine and isoleucine) metabolism, can mediate HMs tolerance in plant [68,69,70,71]. In QTL Pb-C03–2, BnaC03g68440D, BnaC03g68450D, and BnaC03g68460D, enriched in the biosynthesis pathway of pantothenate and CoA, as well as in the biosynthesis degradation pathways of valine, leucine and isoleucine (Additional file 7: Table S3). BnaC03g68440D and BnaC03g68450D, which encoded a BCAT, were highly induced by Pb in Pb-tolerant accession III-229 (Fig. 5f, g). The expression level of BnaC03g68460D was higher in Pb tolerance genotypes than in Pb-sensitive genotypes (Fig. 5h). ALL these results suggest that these three genes, detected in QTL Pb-C03–2, contribute to Pb tolerance of B. napus by regulating BCAAs metabolism.

BnaHIPP01 might contribute to detoxification of Pb stress

It is well known that HIPPs, containing HM–binding domain (HMA, pfam00403.6), have important functions in plant responses to both biotic and abiotic stresses [72, 73]. In Arabidopsis, the AtHIPP20, AtHIPP22, AtHIPP26 and AtHIPP27 genes were involved in Cd detoxification [74, 75]. We found that BnaC04g16200D, the homolog of AtHIPP01, was significantly up-regulated in Pb-tolerant genotype III-229 and down-regulated in Pb-sensitive genotype 6024–1 under Pb stress (Fig. 5i). These findings suggest that, BnaC04g16200D might contribute to the detoxification of Pb stress, as did BnHIPP27 to Cd stress in B. napus [23].

Conclusions

To our knowledge, this is the first study on Pb-tolerant germplasms and genomic loci in B. napus. We found that Pb tolerance shown an extensive variation in 472 worldwide-collected rapeseed accessions. Based on the criterion of relative RL > 80%, six Pb-tolerant genotypes were selected. Four QTLs associated with Pb tolerance were identified by GWAS. Nine promising candidate genes, including GSTUs, BCATs, UBP13, TBR and HIPP01, located in these four QTL regions were selected. The expression level of these nine genes were significantly higher or induced by Pb in Pb-tolerant accessions in comparison to Pb-sensitive accessions. These findings can provide valuable genetic resources for the breeding of Pb-tolerant B. napus cultivar and understanding of Pb tolerance mechanism in Brassica species.

Methods

Pb tolerance evaluation of 472 B. napus accessions

A total of 472 representative B. napus accessions (266 accessions originated from Asia, 128 from Western Europe, 20 from Oceania, 26 from North America and 32 from Eastern Europe, Additional file 8: Table S4) used for association analysis were collected from the National Mid-term Gene Bank for Oil Crops in Wuhan, China, as described previously [47]. In order to find out the optimal method for Pb tolerance evaluation at seedling establishment stage in rapeseed, we first performed a trial. The radicle length (RL) of six randomly-selected rapeseeds under 100 mg/L Pb stress was showed wider variation than under other Pb stress groups (50 mg/L and 200 mg/L). Thus, 100 mg/L was selected as an optimal concentration for screening Pb-tolerant rapeseed accessions at seedling establishment stage.

For decreasing experiment error, the 472 germplasms were split into several sets (about 40 accessions per set). In each set, seeds of these accessions were sterilized with 70% ethyl alcohol for 5 min, then rinsed at least three times with distilled water. Per treatment, fifty seeds of each accession were sown in petri dishes with four layers of filter paper soaked in 20 ml deionized water supplemented with 0 or 100 mg/L Pb. Seeds were kept in dark for two days at 23 °C with a relative humidity of 60–70%, then in 16 h light/8 h dark photoperiod with a light intensity of 300 μmol m− 2 s− 1 for another five days. All the treatments were replicated three times in a growth chamber (MLR-352H-PC, Panasonic) with less temperature fluctuation (±0.3 °C).

The RL of seven-day-old seedlings were measured with a ruler. The RRL were calculated based on the RL under control (RL_CK) and Pb stress (RL_Pb) condition with the formula RRL (%) = (RL_Pb / RL_CK) × 100. The RRL_Means of each accession were calculated by RRL values of three replications. Accessions with higher RRL were genotypes more tolerant to Pb stress. The distributions of RL and RRL were plotted using ggplot package in R software [76].

Genome-wide association study

Genotypic data of Single-nucleotide polymorphism (SNP) had been implemented with 60 K Brassica Infinium® SNP array in previous reports [50, 77]. In which genotypic data was controlled by 12 doubled haploid (DH) lines to avoid false rate of heterozygous calls and paralogues or homeologues confusing the genotype analysis. SNP markers that appeared heterozygous within any of these DH lines were excluded from our analysis. SNPs with AA or BB frequency equal to zero, call frequency < 0.8 or minor allele frequency < 0.05 were excluded [50]. The probe sequences of remaining SNPs were used to perform a BlastN search against B. napus genome sequences [78]. Only the top blast-hits with an E value cut-off of 1E-15 against the B. napus genome sequences were considered. Furthermore, blast matches to multiple loci with the same E-value were excluded. At finally, a total of 19,945 high-quality SNP markers were used for following analysis.

The principal component analysis (P), population structure (Q) and kinship (K) matrix of the GWAS population were estimated by GCTA tool, STRUCTURE 2.3.4, and TASSEL 4.0, respectively as described in our previous studies [50, 77]. TASSEL 4.0 was used to perform GWAS analysis with the native, Q, P, K, Q + K and P + K models [79]. The native, Q and P model were performed using a general linear model with the following equation: y = Xα + e. The K, Q + K and P + K model were performed using a mixed linear model with the equation y = Xα + Kμ + e. In these equations, y represented phenotype, X represented genotype, α was a vector containing fixed effects, K was the relative kinship matrix, μ was a vector of random additive genetic effects, and e was the unobserved vector of random residual.

Q-Q plots and Manhattan plots were constructed using qqman package in R software [80]. To reduce the rate of false-positive, the best fitted mixed linear model was selected for following analysis based on the results of Q-Q plots. Significant association threshold was estimated as −log10(p) = 4.3 (p = 1/N, where N = the number of SNPs used). Besides, to avoid ignoring the effects of minor loci, SNPs passing the threshold of 3.5 were also selected for subsequent analysis as described previously [52]. The differentiation analysis of RRLs between associated SNPs’ alleles was also performed using ggpubr package in R software to control false positive.

Identification of candidate genes

The associated QTLs were defined across regions of SNPs with LD value (r2) > 0.4 between the peak SNPs and surrounding SNPs using the LDheatmap package in R software. To further identify the candidate genes for Pb tolerance, the flanking SNPs outside and adjacent to the blocks were considered as the candidate regions’ boundaries. The local manhattan plots of QTLs were drawn using qqman package in R software. Genes located in the candidate regions were obtained from the reference genome of the B. napus “Darmor-Bzh” (http://www.genoscope.cns.fr/brassicanapus/) [78]. Pathway enrichment analysis was also employed for gene annotation in which genes in the candidate regions were blast to the KEGG database (http://www.genome.jp/) [81]. Rich factor was used to represents enrichment intensiveness, which means the ratio of the numbers of candidate genes and whole genome genes have been annotated in specific pathways. Qvalue, calculated by BH multiple test, was used for determining the threshold of P value. Pathways with qvalue less than 0.05 are significantly enriched. For identifying more candidate genes, all genes located in the candidate regions were also annotated by performing BLASTN in A. thaliana genomic database (https://www.arabidopsis.org/) [82].

Gene expression level analysis

The expression level of candidate genes in two Pb-tolerant (HANNA and III-229) and two Pb-sensitive (6024–1 and EH3143) genotypes were evaluated by quantitative real time PCR (qRT-PCR). Total RNA was extracted from seven-day-old radicles grown under normal (0 mg/L) or Pb stress (100 mg/L) condition using TransZol kit (Trans Gene Biotech). A total amount of 500 ng RNA was used to synthesize first strand cDNA using HiScript® II Q Select RT SuperMix for qPCR (+gDNA wiper) kit (Vazyme Biotech). The gene copy specific primers of candidate genes were designed using Primer Premier 5 (Additional file 9: Table S5). The qRT-PCR assay was carried out using LightCycler® 480 SYBR Green I Master kit (Roche Life Science) in LightCycler® 480 qPCR machine (Roche Life Science) according to the manufacturer instructions. Data were collected from three technical replicates. The relative expression level was normalized by BnACTIN7 using a CT method (Li et al., 2017). The tukey test was employed for differentiation analysis on relative gene expression level between accessions and treatments.

Availability of data and materials

All data associated with this study are available under the additional files data sets.

Abbreviations

ABC:

ATP-binding cassette

ACBP :

Acyl-CoA-binding domain-containing protein

BCAAs:

Branched-chain-amino-acids

BCAT:

Branched-chain-amino-acid aminotransferase

BLASTN:

Nucleic acid basic local alignment search tool

CBT :

CaM binding transporter

CNGC :

Cyclic nucleotide-gated ion channel

DH:

Doubled haploid

GSTs:

Glutathione S-transferases

GWAS:

Genome-wide association study

HIPP :

Heavy metal-associated isoprenylated plant protein

HMA:

Heavy Metal ATPases

HMs:

Heavy metals

K:

Kinship

KEGG:

Kyoto Encyclopedia of Genes and Genomes

LD:

Linkage disequilibrium

mm:

Millimeter

P:

Principal component analysis

Pb:

Lead

PSAE1 :

Photosystem I reaction center subunit IV A

Q:

Population structure

qRT-PCR:

Quantitative real time polymerase chain reaction

QTL:

Quantitative trait locus

RL:

Radicle lengths

RRL:

Relative radicle lengths

SNP:

Single nucleotide polymorphism

TBR :

Trichome birefringence

UBP :

Ubiquitin-specific protease

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Acknowledgements

The authors thank to Pro. HongXia Zhang from Ludong University for assistance in reviewing and polishing of this article.

Funding

This work was supported by the National Natural Science Foundation of China (31470088), the National Key Program for Research and Development (2016YFD0100202), and the Germplasm Resources Protection Project in China (2019NWB033). The funding bodies had no role in study design, data collection and analysis, interpretation of data, decision to publish, or writing the manuscript.

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Contributions

XW conceived the study. FZ, XX and XW designed the experiments. FZ, XX and KX performed the phenotyping of Pb tolerance. FZ and JH performed the GWAS and data analysis. FZ carried out the qRT-PCR analyses. FZ wrote the manuscript, and XC, JH, TX, and XW supervised and complemented the writing. All the authors have read and approved the publication of the manuscript.

Corresponding author

Correspondence to Xiaoming Wu.

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Supplementary information

Additional file 1: Figure S1.

Histogram of radicle length (RL) under control (CK) and Pb stress (Pb) condition.

Additional file 2: Figure S2.

The quantile–quantile plot (QQ-plot) of different models for RRL.

Additional file 3: Figure S3.

Association mapping for RRL on chromosome A09 and C04. (A) Association mapping for RRL in the QTL Pb-A09 (from 8,148,958 to 8,414,720 bp on chromosome A09). (B) Association mapping for RRL in the QTL Pb-C04 (from 14,028,410 to 14,214,776 bp on chromosome C04) associated with RRL. The red, pink, blue and green plots represent the association signals for RRL_Means (average value of three RRLs), RRL1 (RRL in replication 1), RRL2 (RRL in replication 2) and RRL3 (RRL in replication 3), respectively. The blue and red horizontal line indicate the threshold of significantly associated SNPs at −log10 (1/19,945) = 4.3 and threshold of moderately associated SNPs at 3.5 ≤ −log10 (p) ≤ 4.3, respectively as in Fig. 2. The heat maps span the linkage disquilibrium (LD) region with the most strongly associated SNPs (r2 > 0.4).

Additional file 4: Figure S4.

The top 20 enriched pathways of genes in the associated regions.

Additional file 5: Table S1.

The phenotypic variation for RRLs in this natural rapeseed population. SE, Standard Error; CV, Coefficient of variation; RRL1, RRL2, RRL3 represent the relative RRL in replication 1, 2 and 3 respectively. RRL_Means was the average value of three RRLs; ** indicate significant correlation at the 1% level.

Additional file 6: Table S2.

The details Pb-tolerant genotypes screeneded from 472 global-coolected rapeseeds. RL_CK and RL_Pb represent the radicle length (RL) under control and Pb stress (100 mg/L), respectively; RRL represent the relative radicle length.

Additional file 7: Table S3.

The information for top 20 enriched pathways for genes in the associated regions.

Additional file 8: Table S4.

List of 472 rapeseed accessions used for association study.

Additional file 9: Table S5.

The primer sequences of qRT – PCR.

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Zhang, F., Xiao, X., Xu, K. et al. Genome-wide association study (GWAS) reveals genetic loci of lead (Pb) tolerance during seedling establishment in rapeseed (Brassica napus L.). BMC Genomics 21, 139 (2020). https://doi.org/10.1186/s12864-020-6558-4

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