Scientia Agricultura Sinica ›› 2020, Vol. 53 ›› Issue (9): 1743-1755.doi: 10.3864/j.issn.0578-1752.2020.09.005

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• SPECIAL FOCUS: APPLICATIONS OF RESTRICTED TWO-STAGE MULTI-LOCUS GENOME-WIDE ASSOCIATION ANALYSIS • Previous Articles     Next Articles

Genetic Dissection of Protein Content in a Nested Association Mapping Population of Soybean

ShuGuang LI1,2,YongCe CAO1,JianBo HE1(),WuBin WANG1,GuangNan XING1,JiaYin YANG2,TuanJie ZHAO1,JunYi GAI1()   

  1. 1 Soybean Research Institute, Nanjing Agricultural University/National Center for Soybean Improvement/Key Laboratory of Biology and Genetic Improvement of Soybean (General), Ministry of Agriculture/State Key Laboratory for Crop Genetics and Germplasm Enhancement/Jiangsu Collaborative Innovation Center for Modern Crop Production, Nanjing 210095;
    2 Huaiyin Institute of Agricultural Sciences of Xuhuai Region in Jiangsu, Huai’an 223001, Jiangsu
  • Received:2019-08-26 Accepted:2019-11-30 Online:2020-05-01 Published:2020-05-13
  • Contact: JianBo HE,JunYi GAI E-mail:hjbxyz@gmail.com;sri@njau.edu.cn

Abstract:

【Objective】Soybean is an important cash crop, a major source of plant protein and oil for human diet. As a major objective of soybean breeding, protein content is a complex trait controlled by multiple genes with varying genetic effects interacting with environment. A genome-wide association study (GWAS) was conducted to dissect the genetic architecture of protein content in a soybean nested association mapping (NAM) population, and the detected genetic constitution can be further used for molecular design in soybean breeding for high protein content. 【Method】Four soybean recombinant inbred line (RIL) populations (Linhe×M8206, Zhengyang×M8206, M8206×Tongshan and M8206×WSB) with a common parent (M8206) as a NAM population were constructed, genotyped with RAD-seq (restriction-site-associated DNA sequencing) and tested under multiple locations in 2012 - 2014. Protein content was measured at full maturity (R8) stage. The restricted two-stage multi-locus GWAS (RTM-GWAS) procedure was used to dissect the genetic architecture of seed protein content of the population. 【Result】The protein content varied widely in the population with trait heritability estimated as high as 85.00%. The analysis of variance for protein content showed significant differences across genotypes, environments and genotype-by-environment interactions. A total of 90 QTLs were detected to be associated with protein content, with 20 loci being novel ones. The phenotypic variation explained by each QTL ranged from 0.06% to 3.99%, with a sum of 45.60%. The number of alleles at each locus ranged from 2 to 5, and the allele effects ranged from -2.434% to 2.845%, while most of them were between -1.000% and 1.000%. From the detected QTLs, 73 candidate genes were annotated. Among these candidate genes, Glyma18g03540 involved in cysteine biosynthetic process, and Glyma20g24830 involved in glycine and aromatic amino acid family metabolic process. The two genes may be selected for further functional study. Based on the QTL-allele matrix of protein content, the predicted transgressive potential of cross progeny was as high as 56.5%. 【Conclusion】A total of 90 QTLs for protein content were detected with 20 loci being novel, from which 73 candidate genes were annotated, indicating that protein content is a complex trait conferred by multiple genes or a gene network.

Key words: soybean [Glycine max (L.) Merr.], nested association mapping population (NAM), protein content, restricted two-stage multi-locus genome-wide association analysis

Table 1

Frequency distribution and descriptive statistics for protein content (%) in the soybean NAM population"

环境
Env. a
组中值Mid-point 平均值
Mean
变幅
Range
CV b
(%)
h2
(%)
32.0 33.0 34.0 35.0 36.0 37.0 38.0 39.0 40.0 41.0 42.0 43.0 44.0 45.0 46.0 47.0 48.0
FY2012 0 0 0 0 0 7 18 54 100 118 162 92 49 13 5 1 0 41.0 36.1—46.5 3.0 81.0
JP2012 0 0 0 0 1 8 23 36 70 133 124 106 66 24 18 2 2 41.4 35.9—47.8 3.0 82.2
JP2013 0 0 0 0 0 1 3 12 32 76 118 133 113 73 40 17 1 42.5 36.6—47.2 3.1 80.6
JP2014 0 0 0 0 0 4 18 41 91 107 139 121 60 22 14 4 0 41.3 36.6—46.6 3.6 76.9
YC2014 3 7 22 26 48 54 85 99 103 76 53 28 9 3 4 2 0 38.5 31.5—46.1 3.5 90.0
均值Mean 0 0 0 0 0 3 15 58 85 162 147 97 40 13 2 1 0 40.9 36.6—46.0 3.3 85.0

Table 2

Joint analysis of variance for protein content under multiple environments in the soybean NAM population"

变异来源Source of variation 自由度Degree of freedom 均方Mean square FF value PP value
环境Environment 4 3652.54 49.46 <0.01
重复(环境)Replicate (Environment) 10 71.82 40.08 <0.01
基因型Genotype 622 33.05 6.79 <0.01
基因型×环境Genotype × Environment 2467 4.95 2.76 <0.01
误差Error 5589 1.79
总计Total 8692

Fig. 1

Manhattan and quantile-quantile plots for genome-wide association study of protein content in the soybean NAM population The horizontal dashed line indicates significance level of 0.01, where the -lgP values are ranged from 2.0 -89.2. The -lgP values greater than 10 were shown as values randomly sampled from 8-11"

Table 3

QTLs associated with the protein content detected in the soybean NAM population"

QTL 染色体
Chr.
位置
Position (bp)
等位变异
No. allele
-lgP R2(%) SoyBase QTLa GWAS QTLb
qProt-6-1 6 5723944—5861193 3 89.2 3.99 30-5, 005, 007, 015 [16-17]
qProt-7-2 7 7895394—7951423 4 54.5 2.46 33-5 [18]
qProt-20-8 20 45758806—45958325 5 52.6 2.42
qProt-19-3 19 45138372—45336506 5 39.9 1.85 2-2, 36-31 [19]
qProt-6-4 6 13682742—13879752 4 38.4 1.74 34-2 [20,17]
qProt-2-2 2 8795893—8902236 4 37.8 1.71 21-4 [20]
qProt-5-5 5 38956925—39141177 4 36.1 1.64 2-1, 9-1, 12-1, 34-1, 011, 014
qProt-18-1 18 2346289—2531952 5 31.1 1.45 26-12, 28-5, 36-25 [21]
qProt-8-5 8 31139492—31248131 5 27.6 1.30
qProt-14-2 14 6415938—6607451 3 23.2 1.02 1-6, 4-10, 45-1 [21]
qProt-13-1 13 5277987—5435217 3 22.5 0.99 36-21
qProt-1-3 1 52165879—52301103 3 21.6 0.95 36-9 [5]
qProt-4-2 4 47959591—48019889 5 19.3 0.92 4-2, 37-2 [21]
qProt-16-3 16 34706667—34803913 5 19.1 0.91 41-6
qProt-10-1 10 3262276 2 19.2 0.79 41-11 [22]
qProt-20-4 20 18696597—18710242 3 17.7 0.73 1-3, 1-4, 3-12, 10-1, 11-1, 30-1, 31-1, 36-26, 37-8, 47-8, 003 [23]
qProt-13-4 13 39868073—40038639 5 14.8 0.72 26-11
qProt-6-7 6 20701467—20900668 5 13.9 0.68 012
qProt-6-9 6 41656522—41677922 3 13.9 0.61
QTL 染色体
Chr.
位置
Position (bp)
等位变异
No. allele
-lgP R2(%) SoyBase QTLa GWAS QTLb
qProt-7-4 7 18234251 2 14.3 0.58 47-1
qProt-6-3 6 10921339—11119531 3 12.9 0.57
qProt-14-3 14 9912397—10112026 3 12.9 0.57 21-8
qProt-9-1 9 35965266—36048472 4 12.0 0.56 5-3, 33-3, 34-6, 35-4, 36-28, 36-29, 36-30, 37-11
qProt-11-1 11 5786106—5983572 5 11.1 0.55 3-2, 16-1, 34-7, 36-2, 37-1 [20-23]
qProt-2-1 2 4025110 2 12.9 0.52 [24]
qProt-5-2 5 1708219 2 12.4 0.50
qProt-5-3 5 32642277—32673061 3 11.4 0.50 36-1
qProt-7-1 7 176227—372535 5 10.1 0.50
qProt-19-2 19 39675711—39753005 4 9.2 0.44 30-7, 36-32
qProt-20-3 20 10292622—10303142 4 9.2 0.44 1-3, 1-4, 3-12, 10-1, 11-1, 30-1, 36-26, 37-8, 47-8 [25]
qProt-6-6 6 16510997—16689830 4 9.1 0.43 21-3, 26-7, 35-1, 36-7, 36-8
qProt-10-3 10 43721962—43903254 5 8.3 0.42 27-5 [1,26]
qProt-20-6 20 34459783—34480867 4 8.6 0.41 26-5, 34-11 [26]
qProt-1-4 1 54251785—54443212 5 7.9 0.40 36-9 [22]
qProt-8-3 8 23303969—23383404 3 9.2 0.40
qProt-1-1 1 2560155—2683983 4 8.2 0.39 [21-22]
qProt-15-1 15 3194114 2 9.5 0.38 30-3 [1,16]
qProt-1-2 1 4621764—4727603 5 7.1 0.37 [21]
qProt-15-3 15 50539746—50738644 5 7.1 0.37
qProt-14-5 14 16634057—16648499 3 7.5 0.33
qProt-16-1 16 4780910 2 8.2 0.32 4-7 [6,25]
qProt-8-1 8 7846414—8000705 5 5.8 0.31 26-1, 30-4, 34-4, 34-5, 013, 016
qProt-16-5 16 37249323—37294601 4 6.5 0.31 41-6
qProt-18-4 18 51679638—51878009 4 6.2 0.30 34-9
qProt-8-6 8 46434966—46595148 3 6.5 0.28 14-1, 21-1 [25]
qProt-3-1 3 1011738 2 7.1 0.27 010
qProt-3-2 3 39567898—39600101 5 4.9 0.27 36-34, 21-9, 36-37
qProt-5-1 5 1531632—1531635 2 6.8 0.26
qProt-18-3 18 5553907—5635734 2 6.7 0.26 47-6
qProt-1-5 1 55836890—55889699 3 5.8 0.25
qProt-4-1 4 41014079 2 6.5 0.25
qProt-2-5 2 49426511—49624658 4 5.0 0.24 37-4
qProt-16-4 16 34859125—35032972 5 5.5 0.24 41-6 [27]
qProt-13-2 13 18987333-18987363 2 6.0 0.23 26-13, 36-20, 36-21, 36-23 [5]
qProt-15-2 15 4817369 2 6.1 0.23 30-3 [18,27-29]
qProt-6-11 6 48032833—48165768 4 4.4 0.22 13-2
qProt-6-2 6 6233427—6256962 2 5.6 0.21 30-5, 31-4, 005, 007, 015
QTL 染色体
Chr.
位置
Position (bp)
等位变异
No. allele
-lgP R2(%) SoyBase QTLa GWAS QTLb
qProt-6-8 6 22700125—22889619 4 4.2 0.21
qProt-8-4 8 27091794—27092100 3 4.9 0.21
qProt-11-3 11 36538681—36538733 2 5.6 0.21 26-6
qProt-20-7 20 42051825—42200759 5 3.8 0.21
qProt-12-1 12 36587265 2 5.5 0.20 5-2, 21-10, 33-1
qProt-17-1 17 33206802—33271301 4 4.1 0.20 36-14, 36-16
qProt-6-5 6 14689566—14795226 4 3.8 0.19 34-2 [1]
qProt-6-10 6 42894533—43089859 4 3.7 0.19 24-1
qProt-14-1 14 4726017—4860851 4 3.7 0.19 1-6, 4-11, 45-1 [22]
qProt-20-2 20 5157137 2 4.5 0.16 1-3, 1-4, 3-12, 10-1, 11-1, 30-1, 36-26, 37-8, 47-8
qProt-3-3 3 44249912—44442395 3 3.4 0.15 36-35, 27-4
qProt-6-12 6 48187414 2 4.2 0.15 13-2 [20-21]
qProt-8-2 8 8219073—8363193 5 2.4 0.15 26-1, 30-4, 34-4, 34-5, 013, 016 [6,26]
qProt-14-4 14 13291266 2 4.2 0.15
qProt-18-8 18 62050016—62248618 5 2.5 0.15 30-10
qProt-20-9 20 46154443 2 4.2 0.15
qProt-3-4 3 44486103—44672295 4 3.3 0.14 36-35, 27-4
qProt-18-2 18 2963699—3158571 5 2.2 0.14 20-1, 47-6 [6]
qProt-20-5 20 33207484—33279787 3 2.9 0.13 1-1, 1-2, 15-1, 26-5, 34-11, 39-4 [30]
qProt-7-3 7 18234233 2 3.5 0.12 47-1
qProt-7-5 7 35580968—35653659 3 2.8 0.12 41-9
qProt-18-7 18 60127020—60312441 5 1.9 0.12 3-10, 30-10
qProt-2-4 2 47360405 2 3.2 0.11 40-5 [23]
qProt-11-2 11 7962963 2 3.2 0.11
qProt-16-2 16 33179205 2 3.1 0.11
qProt-13-3 13 36897211 2 3.0 0.10 6-2, 24-2
qProt-18-5 18 52822014 2 3.0 0.10 3-8, 28-2
qProt-18-6 18 54160848 2 2.9 0.10 3-9
qProt-2-3 2 12237524 2 2.6 0.09 36-12
qProt-19-1 19 37053052—37053084 2 2.4 0.08
qProt-20-1 20 1315771—1315813 2 2.5 0.08 26-3, 26-4, 37-7, 37-9, 41-4
qProt-5-4 5 38098083 2 2.1 0.07 12-1, 011, 014 [6]
qProt-10-2 10 40629142—40629143 2 1.9 0.06 27-5, 40-1
LC QTL 10 42 19.58
SC QTL 80 261 26.06
总计Total 90 303 45.64 67(119) 33(45)

Fig. 2

Graphical representation of QTL-allele matrix of protein content detected in the soybean NAM population The horizontal axis indicates accessions arranged in ascending order of protein content (%), while the vertical axis indicates QTL arranged in ascending order of their positive allele frequency. Every row indicates the allele distribution among accessions at a QTL, while every column indicates the allele constitution of an accession over all QTLs. Allele effects are expressed in color cells where warm colors indicate positive effects, cool colors indicate negative effects, and color gradient indicates effect size"

Table 4

The predicted protein content value of progenies derived from the possible crosses among the five parental lines in the soybean NAM population"

组合
Cross
观测值
Observation
独立模型
Independence model
连锁模型
Linkage model
Y1 Y2 均值 Mean P5 P95 均值 Mean P5 P95
蒙8206×临河 (LM) 36.3 47.8 42.1 33.1 51.1 42.0 37.8 46.3
蒙8206×正阳 (LZ) 36.3 44.7 40.5 35.8 45.2 40.5 37.1 43.9
蒙8206×通山 (MT) 36.3 45.1 40.7 35.8 45.6 40.7 37.5 43.9
蒙8206×WSB (MW) 36.3 42.9 39.6 34.3 45.0 39.6 36.4 42.7
临河×正阳 Linhe×Zhengyang 47.8 44.7 46.3 36.4 56.1 46.2 41.5 50.9
临河×通山Linhe×Tongshan 47.8 45.1 46.4 36.3 56.5 46.5 42.2 50.8
临河×WSB Linhe×WSB 47.8 42.9 45.4 35.7 54.8 45.3 40.6 50.2
正阳×通山 Zhengyang×Tongshan 44.7 45.1 44.9 39.9 49.8 44.9 41.7 48.1
正阳×WSB Zhengyang×WSB 44.7 42.9 43.8 36.7 50.7 43.8 39.6 48.0
通山×WSB Tongshan×WSB 45.1 42.9 44.0 36.9 51.1 44.0 39.9 48.1

Fig. 3

The function annotation of candidate genes for protein content Ⅰ-Ⅵ: The six groups of biological processes for the candidate genes of protein content"

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