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. 2016 Mar 10;9:152. doi: 10.1186/s13104-016-1967-9

Microsatellite loci for Urochloa decumbens (Stapf) R.D. Webster and cross-amplification in other Urochloa species

Rebecca C U Ferreira 1, Letícia J Cançado 2, Cacilda B do Valle 3, Lucimara Chiari 3, Anete P de Souza 1,4,
PMCID: PMC4785737  PMID: 26964874

Abstract

Background

Forage grasses of the African genus Urochloa (syn. Brachiaria) are the basis of Brazilian beef production, and there is a strong demand for high quality, productive and adapted forage plants. Among the approximately 100 species of the genus Urochloa, Urochloa decumbens is one of the most important tropical forage grasses used for pastures due to several of its agronomic attributes. However, the level of understanding of these attributes and the tools with which to control them at the genetic level are limited, mainly due to the apomixis and ploidy level of this species. In this context, the present study aimed to identify and characterize molecular microsatellite markers of U. decumbens and to evaluate their cross-amplification in other Urochloa species.

Findings

Microsatellite loci were isolated from a previously constructed enriched library from one U. decumbens genotype. Specific primers were designed for one hundred thirteen loci, and ninety-three primer pairs successfully amplified microsatellite regions, yielding an average of 4.93 alleles per locus. The polymorphism information content (PIC) values of these loci ranged from 0.26 to 0.85 (average 0.68), and the associated discriminating power (DP) values ranged from 0.22 to 0.97 (average 0.77). Cross-amplification studies demonstrated the potential transferability of these microsatellites to four other Urochloa species. Structure analysis revealed the existence of three distinct groups, providing evidence in the allelic pool that U. decumbens is closely related to Urochloa ruziziensis and Urochloa brizantha. The genetic distance values determined using Jaccard’s coefficient ranged from 0.06 to 0.76.

Conclusions

The microsatellite markers identified in this study are the first set of molecular markers for U. decumbens species. Their availability will facilitate understanding the genetics of this and other Urochloa species and breeding them, and will be useful for germplasm characterization, linkage mapping and marker-assisted selection.

Electronic supplementary material

The online version of this article (doi:10.1186/s13104-016-1967-9) contains supplementary material, which is available to authorized users.

Keywords: Enriched library, Forage, Signalgrass, Simple sequence repeat, Transferability

Background

It has been estimated that 167 million hectares of pasture land in Brazil is used to feed a herd of approximately 208 million head of cattle [1]. These pastures consist mainly of forage grasses of the genus Urochloa (syn. Brachiaria), which were introduced from Africa [2]. These forage grasses have greatly contributed to the development of the national cattle industry of Brazil, establishing Brazil as the second largest beef producer and the main beef exporter in the world. The competitive advantage of cattle production in Brazil is the exclusive use of pasture [3]. Moreover, Brazil is the largest producer and exporter of tropical forage seeds in the world [2].

One of the most widely cultivated species of Urochloa is Urochloa decumbens Stapf., particularly U. decumbens cv. ‘Basilisk’. This species exhibits exceptional adaptation to the poor and acidic soils that are typical of the tropics and lead to good animal performance [4]. However, the molecular genetic information regarding this species is limited, mainly due to its reproducing predominantly via apomixis and because its ploidy levels range from diploid to pentaploid [5].

The need for new more productive and efficient cultivars has inspired the search for new tools to facilitate the selection process [3]. Thus, genetic and genomic studies are essential to advancing breeding programs via a better understanding of the genetic structure of the species. These types of studies can be conducted by using molecular tools, such as molecular markers.

Among all molecular markers, one of the most effective for plant genetics studies is the microsatellite, also known as the SSR (Simple Sequence Repeat). These markers are highly informative due to their multi-allelic nature, co-dominant inheritance, high transferability and broad distribution in the genomes of the species [68].

Whereas some microsatellite markers for Urochloa species have been developed [913], specific microsatellite markers for U. decumbens have not been reported. Specific microsatellite molecular markers can be very useful in assessing the genetic diversity of germplasms, performing linkage mapping, identifying quantitative trait loci (QTL), performing genome-wide selection and marker-assisted selection, and facilitating molecular based breeding to improve the economically importance characteristics of a species [6, 7]. Moreover, microsatellite markers identified in species with little genome information may be used for cross-amplification between related species [14].

The aims of the present study were to identify and characterize the first set of microsatellite markers for U. decumbens and to test their transferability to four other Urochloa species (U. brizantha, U. dictyoneura, U. humidicola and U. ruziziensis).

Methods

Thirty-four Urochloa genotypes were obtained from the Embrapa Beef Cattle collection, in Campo Grande, MS, Brazil for marker validation. Twenty of these genotypes are represented by U. decumbens accessions, six genotypes are intra-specific hybrids of the same species and the other eight genotypes are represented by two different germplasm accessions each from U. brizantha, U. humidicola, U. dictyoneura and U. ruziziensis. These other Urochloa species were used for the cross-amplification tests. The annotation numbers, accession numbers (as recorded in the Embrapa- BRA-, in the Embrapa Beef Cattle- EBC- and in the Center for Tropical Agriculture- CIAT- databases), genotypes, species identified, their mode of reproduction and the origin of the genotypes are shown in Table 1.

Table 1.

Genotypes of U. decumbens and four other species of the genus Urochloa that were used to characterize the microsatellite markers and analyze their levels of transferability

AN CIAT BRA EBC Origin MR Genotype Species
1 16494 004448 D005 Kenya SEX Germplasm accession U. decumbens
2 16495 004456 D006 Kenya SEX Germplasm accession U. decumbens
3 16497 004472 D007 Kenya APO Germplasm accession U. decumbens
4 16498 004481 D008 Kenya APO Germplasm accession U. decumbens
5 16499 004499 D009 Kenya APO Germplasm accession U. decumbens
6 16500 004502 D010 Kenya APO Germplasm accession U. decumbens
7 16501 004511 D011 Kenya APO Germplasm accession U. decumbens
8 16504 004545 D014 Kenya APO Germplasm accession U. decumbens
9 26295 004651 D024 Rwanda SEX Germplasm accession U. decumbens
10 26300 004707 D028 Rwanda APO Germplasm accession U. decumbens
11 26304 004740 D032 Rwanda APO Germplasm accession U. decumbens
12 26308 004782 D035 Rwanda SEX Germplasm accession U. decumbens
13 16491 004421 D036 Kenya APO Germplasm accession U. decumbens
14 26306 004766 D040 Rwanda SEX Germplasm accession U. decumbens
15 6370 000116 D059 Unknown APO Germplasm accession U. decumbens
16 16100 001961 D061 Unknown APO Germplasm accession U. decumbens
17 NA 001996 D070 Unknown APO Germplasm accession U. decumbens
18 6298 000060 D077 Unknown APO Germplasm accession U. decumbens
19 D024/27 CNPGC SEX Tetraploidized accession U. decumbens
20 606 001058 D062 Uganda APO Germplasm accession U. decumbens
21 R10 CNPGC NA Hybrid U. decumbens
22 R44 CNPGC APO Hybrid U. decumbens
23 R125 CNPGC NA Hybrid U. decumbens
24 R144 CNPGC APO Hybrid U. decumbens
25 R146 CNPGC NA Hybrid U. decumbens
26 R182 CNPGC NA Hybrid U. decumbens
27 16186 007889 DT157 Ethiopia APO Germplasm accession U. dictyoneura
28 16188 007901 DT159 Ethiopia APO Germplasm accession U. dictyoneura
29 NA NA R044 Unknown SEX Germplasm accession U. ruziziensis
30 26163 005568 R102 Burundi SEX Germplasm accession U. ruziziensis
31 16125 002844 B112 Ethiopia APO Germplasm accession U. brizantha
32 26110 004308 B178 Burundi APO Germplasm accession U. brizantha
33 26149 005118 H016 Burundi APO Germplasm accession U. humidicola
34 6369 000370 H126 Unknown APO Germplasm accession U. humidicola

AN annotation number, CIAT Center for Tropical Agriculture, BRA codes from Embrapa, CNPGC National Center for Research on Beef Cattle, EBC codes from Embrapa Beef Cattle, MR mode of reproduction- apomictic or sexual, NA not available

Genomic DNA was isolated from fresh leaves using the CTAB method [15]. The purity and concentration of the isolated DNA were determined using a NanoDrop1000 (Thermo) spectrophotometer and by electrophoresis in a 0.8 % agarose gel that was subsequently stained with ethidium bromide (5 µg/mL−1).

In a previous study, a microsatellite-enriched library of one U. decumbens genotype was constructed using the method described by Billotte et al. [16]. The sequences were then treated as described previously [9]. The microsatellites were identified using MISA software [17], and only mononucleotides with 12 or more repeats, dinucleotides with six or more repeats, trinucleotides with four or more repeats, and tetra, penta, and hexanucleotides with three or more repeats were considered. The DNA sequences determined in this study were deposited in GenBank under the accession numbers shown in Table 2.

Table 2.

Description of the 93 SSR markers developed for U. decumbens

SSR locus GenBank accession number Primer sequences (5′–3′) Repeat motif Ta (°C)a Size (bp) NAb PICc DPd
Dec01 KT587691 F_CAAACGACTGCTGATGATGG (AC)16 65° 250–280 5 0.68 0.89
R_TGAGAGGCTAAGAG/CAACCTG
Dec03 KT587692 F_AACTGAACGCTGCTTGGTCT (GT)6 65° 240–260 3 0.58 0.63
R_GGTCCGGAATAAAAAGCACA
Dec05 KT587693 F_GGGCTCCTCATCAGCAGTAG (GAC)4 65° 132–140 4 0.61 0.54
R_GATGCCTCTCGGGACTATCA
Dec06 KT587694 F_GTTCATGGGGGCAATCAGT (CTGG)3 65° 120–130 4 0.70 0.54
R_CGTGATGTCTGAACGGATGA
Dec07 KT587695 F_CGAACACATTCACATACAACA (AC)7 65° 226–242 5 0.74 0.87
R_CTGTCGGATTTATTTGCATTA
Dec09 KT587696 F_GCCCAACTGGAATGTGCTA (TC)9 65° 240–280 5 0.72 0.91
R_CGACGTCCTTGTTGTTTGTC
Dec10 KT587697 F_GACGTCGAGGACAAACAACA (CAAG)3 65° 216–256 6 0.79 0.86
R_TCCTTACCCTTGCGATTCAC
Dec11 KT587698 F_GGGGGAAAATGAGACAGACA (AG)16 65° 154–198 8 0.80 0.94
R_GCTAACCAGACAGCCACCAC
Dec12 KT587699 F_CTCACACCCTCCTTCTGCTG (GT)9 65° 196–226 9 0.82 0.97
R_CGATCGCTCCCTACTAGTGC
Dec13 KT587700 F_CCCCCGTAAAACAGACAAAA (TA)6 65° 166–178 5 0.72 0.89
R_ACCATGATACAACGCTGCAA
Dec14 KT587701 F_AAACGGAGAAAGGGGATCAT (GAC)4 65° 290–310 3 0.62 0.22
R_GAGCATACATGCAGCAGTGG
Dec17 KT587702 F_CCTTCGTCCATTACCCTGAA (TG)9 65° 224–248 6 0.63 0.72
R_ATCCACCAGTGCACGTATGA
Dec18 KT587703 F_ACGCACACACACGAACAAAT (CGAT)3 65° 180–202 6 0.78 0.96
R_ATTTCGACATGCCTGCAACT
Dec19 KT587704 F_AGGTTCGATAATCGGCACAC (GT)7 65° 220–236 6 0.79 0.95
R_CGCAAGTGGTCAAGCAATTA
Dec20 KT587705 F_ACCTTGAACTCCTGCTTTTGT (AC)10 65° 150–168 6 0.75 0.92
R_AGCACTATCACCAATCAGCAA
Dec21 KT587706 F_GCCGACATCAACTTCCATTT (GT)7 65° 176–190 5 0.76 0.85
R_CTCCTTGGTCCAATTCCTCA
Dec22 KT587707 F_GTGTGTACGTGATGCTATGTG (CTT)4 65° 186–192 4 0.47 0.57
R_ATCGATCTCACTGACCATGT
Dec24 KT587708 F_TAAAGAAACATGGGCCGGTA (GCC)5 65° 210–226 5 0.73 0.86
R_TTATTCCTGGGATTGGGTTG
Dec26 KT587709 F_TCGGAAAACGCAGGAGAG (CA)6 65° 180–190 4 0.68 0.59
R_GTTCAGTGGGTCTGGCTTGT
Dec27 KT587710 F_TGTACATGAATGGCAGCACA (AGAT)3 65° 248–262 6 0.73 0.76
R_AACAGCAGCAGAGATGACGA
Dec28 KT587711 F_GTTCCTCCCAAGAAACCACA (AC)6 65° 146–180 8 0.78 0.84
R_CCCAACATTCACCTGGTTCT
Dec29 KT587712 F_TGTTATAATCATCACCATGCTC (GTA)4 65° 170–184 6 0.70 0.67
R_ACAGCTATTGCCACTACTTGA
Dec30 KT587713 F_CATTACGAGCACGCAGTCC (CA)7 65° 152–164 5 0.71 0.59
R_TACCACTGCTGGACACGAGA
Dec31 KT587714 F_CGTTGTCAGCACACACACAC (TCTA)3 65° 136–146 5 0.70 0.79
R_TACTACCACTGCTGGACACGA
Dec33 KT587715 F_TGTCGTGTGCGTTTTGTTTT (CTT)4 60° 274–336 8 0.78 0.94
R_CTAAGATCCCCACTCCCACA
Dec35 KT587716 F_TTCTTGGACACACAGCCTTG (TG)4 65° 274–290 6 0.72 0.88
R_GGGCTGAAAACATCATCACC
Dec36 KT587717 F_GAAGGTGATGATCGGCAGTT (GCAG)3 65° 280 1 0.00 0.00
R_GTGTGCGTTGCTGCCTACTA
Dec37 KT587718 F_CCTCTCTTCCGTTTGCTCTG (GTG)5 65° 198–218 5 0.70 0.81
R_TGAACAGGCACGGATTGATA
Dec39 KT587719 F_TAGGTGTCCCATTGGTCGAT (GT)7 55° 166–182 5 0.64 0.34
R_AGGAGAGCTGCGTGTCATTT
Dec42 KT587720 F_CACGTCATGTACTGCGATCC (GT)6 65° 220–230 3 0.56 0.68
R_GCGTCACACATACACACACG
Dec43 KT587721 F_CAGTCATCAGCATTCAGGTAT (TG)11(AG)6 65° 212–228 5 0.74 0.91
R_ATAACTTGCGTATGTGCTCTC
Dec44 KT587722 F_CATGCTTAATCCAGAAATCAG (AC)12 65° 182–226 6 0.78 0.94
R_TGTAAACCGGAAAGTGTACTG
Dec45 KT587723 F_TGGAGATGGAGATGGGAGTC (GGAT)3 65° 210 1 0.00 0.00
R_CCCAAGGAATGGGATAGGTT
Dec47 KT587724 F_AGAGAGCTGATGGTCGTGGT (GA)9 65° 210 1 0.00 0.00
R_TGGAAACTTGGGAGGATCTG
Dec48 KT587725 F_CTAACGCTATTGCTTTGCTT (CT)45 65° 144–190 10 0.85 0.94
R_TGCAGAGAGAGAGAAGAGAGA
Dec49 KT587726 F_CAATGCATGCTTGGAACTTG (GT)6 65° 166–180 5 0.65 0.74
R_CATCGGAGGGTAGATTGGTC
Dec50 KT587727 F_GAAACAGGACCATCAGATAGCA (CA)6 65° 164–180 5 0.76 0.84
R_GGAATCTGCAGGTTTGGAAG
Dec51 KT587728 F_GCTGATCCTCGGATTGTGTT (TG)21 65° 248–262 5 0.69 0.92
R_TAACTTGGACGCGCTAAAGG
Dec52 KT587729 F_CACGAATGCACATGCAATAA (GT)6 65° 289–292 2 0.00 0.00
R_AGTGAACCAAACTGCCAGAA
Dec54 KT587730 F_GCCCTCTTTAACTCTGCTTTA (CA)8 65° 236–252 5 0.75 0.92
R_GTATCTTCTTTCGGATGACCT
Dec55 KT587731 F_AGCACCATCATCTTTAACAAA (ACACC)3 65° 212–224 6 0.78 0.73
R_CAAGGAATTTGCACTAAAAGA
Dec56 KT587732 F_GAACTTAATGGCGGAGTAGAC (AG)14 55° 220–230 2 0.00 0.00
R_CACAGATTGCTGAATTGTTTC
Dec58 KT587733 F_ATTAGGATTGCGCACTGGTC (GT)6 65° 286–298 5 0.64 0.8
R_ATCCGCATTCACAACCTCTC
Dec59 KT587734 F_GGTTAAAATGGTTCGCTGGA (GT)7 65° 184–220 5 0.73 0.92
R_ACCTAGGCTCGCATGACAAT
Dec60 KT587735 F_ATTTCAGTTGCACATTCCA (GT)6 55° 220–230 2 0.00 0.00
R_TCCAAAACTTAGCTCAGAAAG
Dec62 KT587736 F_AGGAAGGGTACGGTGTAGGC (CA)7 65° 216–238 4 0.41 0.59
R_TCTACATGCACATCCGGAAA
Dec63 KT587737 F_GGGATATTTTCCGGATGT (CTT)4 65° 218–226 3 0.51 0.7
R_CAGAGCTCAGAAAGTCGTTAC
Dec65 KT587738 F_TCGGATTCTTGGACAACCTC (GGCC)3 65° 180 1 0.00 0.00
R_CCTCTACGCGAAAGATGGTC
Dec69 KT587739 F_GATGGCTACCTGCATTGGAT (CCAT)3 55° 168–180 6 0.79 0.96
R_ATAAGGGGAGCCCTCAAAAA
Dec70 KT587740 F_AGCTGCCTCCACTTGACAAT (TG)7 65° 256–268 5 0.72 0.62
R_AGGCCCTGATAGTCCCCTAA
Dec71 KT587741 F_GAGCTTCCCTGTGTCTGATA (TG)10 55° 234–254 4 0.62 0.84
R_ATGACAATGACTATGCTGACC
Dec75 KT587742 F_ACAGGAGCCTTTATGCATGG (ATGC)3 65° 150–166 5 0.68 0.69
R_GTCCTGTGTTGGTCGTTCCT
Dec76 KT587743 F_GTCACGTGCCATCACAAATC (TAGC)3 65° 270 1 0.00 0.00
R_GCACACATGCATGATGACAA
Dec77 KT587744 F_TCCAAATGTACCGTCAATAAA (AG)12 55° 234–260 7 0.76 0.9
R_CGTGTCTGCATTCAAAGTG
Dec78 KT587745 F_GCTTACCACATCCGGTGATT (AC)8 65° 246–260 5 0.66 0.71
R_GAGAATGCTTCCCGTTCTTG
Dec83 KT587746 F_GGCTTGCTCCAAGAGATGAG (CA)20 65° 174–198 4 0.66 0.72
R_TAGCTTGGCCTTTGTGTGTG
Dec84 KT587747 F_GGCTTGCTCCAAGAGATGAG (AC)9 65° 220–250 7 0.78 0.95
R_TTCGTCACGTCAAAACAAGC
Dec86 KT587748 F_CCACCTCCCAGGATAGATGA (TG)7 55° 140–180 9 0.80 0.94
R_AGATTGGGGGAGGAAGAAGA
Dec89 KT587749 F_CTGTTGCATCCACCACTTTTT (TC)8 65° 146–180 4 0.55 0.41
R_CGGCAGCCTAAAGTGATTGT
Dec90 KT587750 F_CGGTGCTCCATGATTAGGAT (GT)8 65° 278–326 7 0.77 0.82
R_GCGTAGCATCATCGAGAACA
Dec91 KT587751 F_GCCTCATCTGTTCATTCATT (TG)7 55° 290–330 3 0.26 0.22
R_TGGCACTCTAACTTGTAGGC
Dec92 KT587752 F_AGCAATCCAAGCTGAAAGGA (AC)7 65° 264–290 7 0.79 0.92
R_TTCCGCATGAAACAAAACTG
Dec93 KT587753 F_TTCGGTCAAAATCGAAAAGG (AC)6 65° 226–244 5 0.72 0.95
R_GCATTGTTTCAGAGGCTTCG
Dec95 KT587754 F_AGCAACCCAAAGGTCAGCTA (CT)24 65° 178–208 6 0.71 0.89
R_AGGAGGGATTCAAGGGAGAA
Dec96 KT587755 F_CATTCTGGTATGGCACGTTG (CA)6 65° 148–154 4 0.66 0.85
R_ATTTACCGACCAGGCTGAAG
Dec97 KT587756 F_GGGCAGGCACTAGATTGATT (TCTT)3 65° 176–184 4 0.61 0.72
R_TTGCTTGCTTGAGTTTGTGG
Dec98 KT587757 F_TAGGTGACAAGGCACGATCA (AG)10 65° 252–272 7 0.76 0.95
R_GGGCCAACATACCAAAGAGA
Dec99 KT587758 F_TAAGAGACGAGTGCTCTGAAA (AGCAGG)3 65° 210–228 7 0.77 0.91
R_TTGTGAATCGGTACTTTTGTC
Dec101 KT587759 F_CTCTAACTTTCGGCGTGGTC (GGCC)3 65° 224–230 3 0.53 0.71
R_GGACGGTCCGACTTGTCTAA
Dec103 KT587760 F_ATGACGAACTTGCTCCCTACA (AC)8 55° 176–206 4 0.51 0.71
R_ATCGATTCAGAGCCGCTTC
Dec105 KT587761 F_CCTTCTGTTCATTGCAGTCC (TG)8 65° 174–180 4 0.56 0.65
R_TGGTACCACAATGCCAAATC
Dec106 KT587762 F_TCACGAACAACGATCAGAGC (TG)7 55° 180–230 7 0.74 0.93
R_TCTTTACCCGTGCTGTTTCC
Dec108 KT587763 F_CATCACCGCATTTATGCAAG (AG)8 65° 184–200 6 0.68 0.85
R_ACACACGTCCTCGTCTTCCT
Dec109 KT587764 F_CAGCACACTGAATCCTCTGC (GT)6 65° 216–220 3 0.39 0.59
R_CCGTTGTTCCATCAGAACCT
Dec110 KT587765 F_CTCCGAAGATCCGAGCTATG (GT)7 65° 178–184 4 0.31 0.41
R_CCCCTGGAGGCTATAAAAGG
Dec111 KT587766 F_TGATTAGGTGCTGACTGCTG (ATTT)3 65° 178–186 5 0.50 0.57
R_CTGGAAGATGTATTTGGTGTGA
Dec112 KT587767 F_CCTCAAGAAGCTCTGGGATTT (TGTT)3 55° 238–244 4 0.57 0.72
R_TGTGCAAACGTCAGTAGAGCA
Dec113 KT587768 F_TGGACTAACTGCACTGCCTGT (GT)9 65° 208–224 7 0.74 0.94
R_CATGAGGAGCACAGCGAATA
Dec114 KT587769 F_CAAAGGCCATGCCTTGTACT (GT)11 65° 214–220 4 0.62 0.72
R_CACTGCTCAGCCAATCCTAAG
Dec115 KT587770 F_GGCATATGTCTGAGTAAGTGTG (TCT)4 55° 160–174 6 0.76 0.6
R_CCTGTTTCCATTGATTCTTTT
Dec116 KT587771 F_TCACTTCATCCATTCGCTTG (TG)17 65° 274 1 0.00 0.00
R_AACATGACCGACTCCTACGG
Dec118 KT587772 F_ACACACCCCAACTCACACAA (AC)6 65° 208–226 6 0.75 0.83
R_TGGTCATGGCAAAAGATGAA
Dec121 KT587773 F_TGCACAATGATGAACACAGG (GT)7 65° 226–264 6 0.74 0.74
R_AGTGAACCAAACTGCCAGAA
Dec122 KT587774 F_CCTGCGTCACTCGAGAAAA (TCTG)3 65° 268–292 6 0.76 0.93
R_CAATGTCATCGCCATTTCTG
Dec123 KT587775 F_TGAGCAACACTGGAGAATGG (TC)9 65° 248–280 9 0.80 0.94
R_CGTACATGACAGGAGGGTGTT
Dec124 KT587776 F_AGAAGCCCCAGATGTTCTGA (GT)9 65° 270–306 4 0.52 0.69
R_GCTAGTCGCGTCTACCGTTC
Dec125 KT587777 F_TCTGGGGTGGAAATGTTGAT (CT)11 65° 202–214 4 0.61 0.34
R_CCCTTCACCTTGAGAAAGCA
Dec126 KT587778 F_GGATGGATTGATGGATGCTT (GGCC)3 65° 268–304 7 0.77 0.93
R_AACCCGAAAGGCCTAAGCTA
Dec127 KT587779 F_CGTTGATCACACGTCTCAGG (TTGC)3 65° 250–280 4 0.65 0.75
R_GATTTCGCCACCAACATTCT
Dec131 KT587780 F_CTTGTTACCTTCTGCACAATAAA (GAA)5 65° 160–170 3 0.00 0.00
R_ATTAGTCTTTCCGTCCTTGTC
Dec132 KT587781 F_GTATCGGGTAGCAAGGCAAG (AAGC)3 65° 220–240 2 0.00 0.00
R_GGAAATTCCTTACCCCGAAG
Dec133 KT587782 F_GGATGGAAGAGCACAAAAGC (CT)7 65° 218–228 5 0.68 0.81
R_GCGTGTGTGTGTGTGTTTGA
Dec134 KT587783 F_CAGGCTTCCCCTCTCTCTCT (AC)7 65° 220–260 8 0.76 0.93
R_GCAACCGGAAGAATTCATGT
Total average 4.93 0.68 0.77

aAmplification temperature (°C)

bMaximum number of alleles observed

cPolymorphism information content

dDiscrimination power

After the primer pairs were designed using Primer3Plus software [18], we added a M13 tail (5′CACGACGTTGTAAAACGAC-3′) to each forward primer. Polymerase chain reaction (PCR) assays were conducted as described previously [9]. The amplified products were separated by electrophoresis through 3 % agarose gels prior to vertical electrophoresis through 6 % denaturing polyacrylamide gels. The gels were then silver stained [19], and the product sizes were determined by comparison to those of a 10 bp DNA ladder (Invitrogen, Carlsbad, CA, USA).

We considered only the strongest bands because the less intense bands might have been stutter bands and an SSR was considered transferable when a band of the expected size was amplified via PCR and an appropriate SSR pattern was observed. Each SSR allele was treated as dominant due to the high ploidy levels of the genotypes; thus, this analysis was based on the presence (1) or absence (0) of a band in the polyacrylamide gels.

The genetic distance among the genotypes was evaluated according to Jaccard’s coefficient [20] based on a binary matrix constructed using the molecular data. This analysis was conducted using the software package NTSYSpc 2.11X [21]. An unrooted tree was constructed using the weighted neighbor-joining method (NJ) using DARwin 6.0.010 software [22].

The set of molecular data was also analyzed using the admixture model of STRUCTURE software version 2.3.4 [23] to infer the population structure of the 34 genotypes. The admixture model was tested using a period of burn-in with 100,000 iterations and a run length of 200,000. The number of K (clusters) was set from 2 to 20. To infer the appropriate number of clusters in our data, we used the ΔK statistic, which represents the rate of change in the log probability of the data between successive K values rather than the log probability of the data [24]. We retained the K value corresponding to the highest value of ΔK obtained using the online tool Structure Harvester [25].

The polymorphism information content (PIC) values were calculated to evaluate the levels of marker informativeness and to help choose primers for future studies [26]. To compare the efficacies of the markers used for varietal identification, the discrimination power (DP) value was determined for each primer [27].

Results

We analyzed 281 contigs, of which 128 were found to contain SSR. One hundred fifty-five SSR motifs were found, with the perfect microsatellite being the most abundant. Dinucleotide repeats were the most abundant class of microsatellite detected (59.36 %), followed by tetranucleotide (18.71 %), trinucleotide (12.26 %), mononucleotide (3.87 %), hexanucleotide (3.22 %) and pentanucleotide (2.58 %) repeats. Furthermore, 22 % of the microsatellite motifs were classified as class I motifs (>20 bp), and 78 % were classified as class II motifs (from 12 to 20 bp).

A total of 113 specific primer pairs were designed, and 93 SSR markers amplified from U. decumbens, with 82 of these being polymorphic. A total of 459 bands were scored, and the number of bands per locus was found to range from 1 to 10, with an average of 4.93 bands per locus (Table 2).

The PIC values of the 82 polymorphic loci ranged from 0.26 to 0.85 (average of 0.68), and the discrimination   power (DP) values ranged from 0.22 to 0.97 (average of 0.77) (Table 2).

Two genotypes of four other species of the genus Urochloa (U. brizantha, U. humidicola, U. dictyoneura and U. ruziziensis) (Table 1) were used to evaluate the transferability of the 93 SSR markers. All of the loci were tested using the same PCR conditions used for analysis of U. decumbens. Fifty-six percent of the loci were amplified in at least one U. dictyoneura genotype, 38 % were amplified in U. humidicola, 99 % were amplified in U. ruziziensis, and 92 % were amplified in U. brizantha. Amplification of 33 % of the microsatellite markers was achieved for all of the evaluated species. The microsatellite markers Dec07, Dec31, Dec33, Dec77 and Dec108 were only transferable for U. ruziziensis species (see Additional file 1).

Based on the allelic frequencies determined using STRUCTURE software [23], 28 % of the alleles are rare (frequency < 0.05), 57 % of these alleles are of intermediate abundance (0.05 < frequency < 0.30), and 15 % are abundant alleles (frequency > 0.30). We observed 43 rare alleles that are specific for U. decumbens, eight rare alleles specific for U. humidicola, seven specific for U. dictyoneura, four alleles specific for U. brizantha and two rare alleles specific for U. ruziziensis.

The Bayesian analysis performed using STRUCTURE software [23] revealed that the 34 Urochloa genotypes could be distributed into three distinct clusters (Fig. 1), as determined from the ΔK values that were generated using Structure Harvester software [24, 25] (see Additional file 2). Using a K value of three, 15 genotypes were allocated into Cluster I (6 to 9), 13 genotypes were grouped into Cluster II (21 to 19) and six genotypes were allocated into Cluster III (27 to 32) (Fig. 1).

Fig. 1.

Fig. 1

Analysis performed using an admixture model in STRUCTURE 2.3.4 software with correlated allele frequencies. The clustering profile obtained at K = 3 is indicated by different colors. Each of the 34 genotypes is represented by a single column broken into colored segments with lengths proportional to each of the K inferred gene pools. The scale on the left indicates the membership coefficients (Q) used to allocate the genotypes into clusters. The genotypes were named according to the annotated numbers listed in Table 1. Cluster I (from 6 to 9), Cluster II (from 21 to 19) and Cluster III (from 27 to 32)

The genetic distance values that were determined using Jaccard’s coefficient ranged from 0.06 (D062 and R10) to 0.76 (H016 and D009) (see Additional file 3). The unrooted neighbor-joining tree successfully discriminated all of the tested genotypes (Fig. 2).

Fig. 2.

Fig. 2

Unrooted neighbor-joining tree based on Jaccard’s coefficient for the 34 genotypes of the Urochloa species. The genotypes were named according to the annotated numbers listed in Table 1. The colors of the branches represent the clusters identified in Fig. 1, as follows: red Cluster I; green Cluster II; blue Cluster III

Discussion

In this report, we have described the first set of microsatellite markers for U. decumbens, which is an important tropical forage grass for which there is limited genetic information. The availability of a robust set of informative molecular markers is essential to accelerating its breeding programs as well as for germplasm characterization, genetic map development and marker-assisted selection.

In the present study, dinucleotide repeats were the most abundant class of microsatellites detected, followed by tetra, tri, mono, hexa and pentanucleotide repeats. Dinucleotide motifs have been found to be the most abundant type of microsatellites in plant genomes [28, 29]. Notably, the high occurrence of dinucleotide motifs can be attributed to both of the evaluated libraries having been enriched using (CT)8 and (GT)8 probes.

In total, 93 SSR markers were characterized, 82 of which were found to be polymorphic (88 %). The loci that did not exhibit polymorphism in the genotypes that we evaluated may be useful in other studies.

The Polymorphism Information Content (PIC) is an index used to qualify a marker for genetic studies and reflects the level of polymorphism detected. Seventy-seven markers tested in U. decumbens genotypes were found to be highly informative (PIC > 0.5) and five markers were found to be moderately informative (0.25 < PIC < 0.5), based on a previously proposed classification system [30] (Table 2). The Dec48 marker had the highest PIC value, 0.85, and the Dec91 marker had the lowest value, 0.26. The average PIC values for all of the markers was 0.68 (Table 2), indicating a high level of polymorphism.

To determine whether these molecular markers could discriminate the genotypes of U. decumbens, the discrimination power (DP) of each SSR locus was computed. The PD values ranged from 0.22 (Dec14 and Dec91) to 0.97 (Dec12), with an average value of 0.77.

The most informative loci in this panel of SSRs were Dec12, Dec48, Dec86 and Dec97 because they had the highest PIC and DP values (Table 2). In contrast, the Dec91 locus had low PIC and DP values (0.26 and 0.22, respectively), as expected due to its low levels of polymorphism and cross- amplification in all of the other Urochloa species tested, which suggests that this locus is a conserved region [11].

Structure analysis showed that the genotypes were distributed in three clusters and that each cluster was characterized by a set of allele frequencies at each locus and was represented by different colors (red, green and blue) as shown in Fig. 1. The best K number of clusters was determined using the ΔK method [24] and implemented in the online tool Structure Harvester [25] (see Additional file 2).

Cluster I included fifteen U. decumbens genotypes plus the U. ruziziensis genotypes, Cluster II contained only U. decumbens genotypes, and Cluster III contained the others Urochloa species, including U. dictyoneura, U. humidicola and U. brizantha (Fig. 1). The clustering of some of the U. decumbens genotypes with U. ruziziensis genotypes may be explained by the genetic proximity of these species [11, 13, 31, 32]. This fact is reflected in the allelic pools that are identified with different colors in Fig. 1.

Cluster II included genotypes 19 and 20, and six hybrids derived from crosses between these two genotypes that were grouped together (Fig. 1). These hybrids are members of an F1 population that will be mapped using the polymorphic SSRs described in this study. In Cluster III, which included three different Urochloa species, the predominant allelic pool is represented in blue, and only the U. brizantha genotypes showed some percentage of the red allelic pools, demonstrating their genetic proximity to U. decumbens (Fig. 1).

The tree constructed based on Jaccard’s coefficient successfully discriminated all of the tested genotypes (Fig. 2) and showed a distribution of these genotypes similar to that obtained using STRUCTURE software [23] (Fig. 1), although the two types of analysis used different statistical approaches. Moreover, this tree and the allelic pools that were determined indicated that U. decumbens and U. ruziziensis are more closely related to one another than to the other species (Figs. 1 and 2).

Based on the genetic values obtained using Jaccard’s coefficient, the lowest genetic distance was observed between the D062 and R10 genotypes (0.06). The R10 genotype should correspond to a hybrid that originated from a cross between D062 and D24/27, but the genetic distance observed shows that it is likely a false hybrid, which demonstrates the importance of using molecular markers to discriminate genotypes. The highest genetic distance (0.76) was observed between the D009 and H016 genotypes, representing U. decumbens and U. humidicola species, respectively, which are genetically distant species [11, 13, 31, 32] (see Additional file 3).

All of the microsatellite markers were transferable to at least one different species of the Urochloa genus, and 33 % of the markers were successfully amplified in all of the species, indicating their absolute transferability. The highest level of transferability was observed in U. ruziziensis, followed by U. brizantha, U. dictyoneura and U. humidicola (see Additional file 1). The higher proportion of successful PCR amplification for the U. ruziziensis and U. brizantha genotypes indicates the closer phylogenetic distance between these species and U. decumbens. Thus, U. brizantha, U. decumbens and U. ruziziensis form an agamic complex and produce fertile hybrids [33, 34], enhancing the Urochloa breeding program.

Silva et al. [12] developed 198 polymorphic microsatellite markers for U. ruziziensis and found that the percentages of markers potentially transferable to U. decumbens and U. humidicola were 92.9 % and 42.9 %, respectively, corroborating our results. Others studies showed that U. brizantha and U. ruziziensis are more closely related to U. decumbens than to U. humidicola and U. dictyoneura [11, 13, 31, 32]. Marker transferability is effective in reducing the time and cost of initial studies aimed at identifying microsatellite markers in related species; thus, these markers could be used in genetics studies, such as in those concerning intra-species molecular characterization, species differentiation, molecular identification, and characterization of interspecific hybrids [14].

The success of a breeding program can be accelerated by the effective use of molecular markers. Thus, the SSR markers developed in this study will be useful for U. decumbens breeding programs and possibly for those of other related Urochloa species.

Availability of supporting data

The datasets supporting the results of this article are included in the article.

Authors’ contributions

LJC developed the microsatellite-enriched libraries. RCUF conducted the bioinformatics searches to identify the microsatellites, designed the flanking primers, validated the microsatellite markers, performed the statistical analysis and drafted the manuscript. CBV and LC participated in the design and implementation of the study. LC helped draft the manuscript. APS conceived and supervised the study and helped to draft the manuscript. All authors read and approved the final manuscript.

Acknowledgements

The authors thank the Fundação de Amparo à Pesquisa de SP (FAPESP 08/52197-4) and the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES—Computational Biology Program) for grants; the Brazilian Agricultural Research Corporation (EMBRAPA Beef Cattle) for providing the Urochloa genotypes used. RCUF is a recipient of a graduate fellowship from CAPES-EMBRAPA Program.

Competing interests

The authors declare that they have no competing interests.

Abbreviations

AN

annotation number

bp

base pairs

CAPES

Coordination of Improvement of Higher Education Personnel

CTAB

cetyltrimethyl ammonium bromide

DNA

deoxyribonucleic acid

DP

discrimination power

EBC

Embrapa Beef Cattle

EMBRAPA

Brazilian Agricultural Research Corporation

K

number of clusters

MCMC

Markov Chain Monte Carlo

NA

number of alleles

NJ

neighbor joining

PCR

polymerase chain reaction

PIC

polymorphism information content

Q

association coefficient determined using STRUCTURE analysis

QTL

quantitative trait loci

SSR

simple sequence repeat

Syn

synonym

Ta (°C)

annealing temperature

Additional files

13104_2016_1967_MOESM1_ESM.docx (16KB, docx)

10.1186/s13104-016-1967-9 Transferability of the SSR markers developed for Urochloa decumbens.

13104_2016_1967_MOESM2_ESM.xlsx (50.9KB, xlsx)

10.1186/s13104-016-1967-9 Magnitude of ΔK determined in STRUCTURE analysis of K, calculated following the ΔK method proposed by Evanno et al. [24].The highest ΔK value corresponds to the optimal K.

13104_2016_1967_MOESM3_ESM.xlsx (15.1KB, xlsx)

10.1186/s13104-016-1967-9 Jaccard’s coefficient for 34 genotypes of Urochloa spp. evaluated using 82 microsatellite markers. Individuals are identified according to their EBC codes (Table 1).

Contributor Information

Rebecca C. U. Ferreira, Email: rebeccaulbricht@hotmail.com

Letícia J. Cançado, Email: leticia.jungmann@embrapa.br

Cacilda B. do Valle, Email: cacilda.valle@embrapa.br

Lucimara Chiari, Email: lucimara.chiari@embrapa.br.

Anete P. de Souza, Email: anete@unicamp.br

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