Morphological and genetic diversity of Senecio vulgaris L. (Asteraceae) in Iran
Introduction
The genus Senecio L. (Asteraceae) includes ca. 1250 species and is one of the largest genera of flowering plants (Bremer 1994, Calvo et al. 2015). In Iran, some species of Senecio have a widespread distribution in the different geographical regions, such as S. vulgaris L., S. glaucus L., and S. leucanthemifolius subsp. vernalis (Waldst. et Kit.) Greuter.
Senecio vulgaris, commonly called groundsel or old-man-in-the-Spring, is an annual herb that grows in a variety of habitats from open grassland to woodland. It is usually regarded as a temperate weed and although it is almost cosmopolitan it appears to be more localized in temperate regions of America and Asia, Mediterranean areas and South Africa (Chater and Walters 1976).
Senecio vulgaris has a long history of herbal use and is widely used as an anthelmintic, antiscorbutic, diaphoretic, diuretic, emmenagogue and purgative (Hatfield 1977, Launert 1981,). A homeopathic remedy is made from aerial parts of the plant. The therapeutic activity of groundsel is related to a variety of biologically active substances such as phenols and flavonoids, essential oils, polysaccharides, triterpenes, amines, saponins, tannins and mucilage (Uzun et al. 2004, Conforti et al. 2006).
A population genetics survey plays the main role in the planning of genetic and breeding programs. It provides data about genetic diversity, gene migration, allelic drift, genetic fragmentation, genetic bottleneck and any other evolutionary forces acting on population divergence (Sheidai et al. 2013).
Intraspecific taxonomic entities can be identified after a detailed population-based investigation within plant species. In general, extensive morphological and genetic divergences among populations result in speciation events. Intraspecific variation occurs within both wild and cultivated crop plants (Maxted and Hunter 2011).
In Iran, S. vulgaris grows in different areas and forms numerous local geographical populations. There is no information about its genetic diversity and adaptation against population divergence. Population genetic studies not only can provide information on these aspects but can also unravel the speciation process of Senecio in general. One method for the study of genetic diversity employs morphological characteristics, but molecular markers are the potential tools to study genetic relations, phylogeny, population dynamics or gene- and genome mapping. .
The advent of molecular markers resulted in an improved ability to track evolution through a good understanding of genetic diversity among populations and new phylogenetic viewpoints (Müller-Schärer and Fischer 2001, Stuessy et al. 2014). Among molecular markers, inter simple sequence repeat (ISSR) deserves special attention as a tool for analyzing diversity. ISSR is easy to use, quick, simple and highly reproducible (Azizi et al. 2014, Eftekharian et al. 2016). ISSR markers usually show high polymorphism and have the very important advantage that no prior information about the genomic sequence is required (Kojima et al. 1998, Bornet and Branchard 2001).
This study aimed to investigate the genetic variation between S. vulgaris populations collected from different geographic regions by using ISSR and morphological characters. Also, gene flow and correlation of genetic and geographical distances were estimated.
Material and methods
Plant specimens
Eighty-one plant specimens were collected from ten geographical regions (On-line Suppl. Fig. 1). Details of localities and voucher specimens are showed in Tab. 1. Morphological characteristics of S. vulgaris accessions were measured by a binocular microscope (Olympus BH2 ×400).
Population | Locality | Habitat type | Altitude (m a.s.l.) | Longitude(E) | Latitude(N) | Voucher No. |
---|---|---|---|---|---|---|
Pop1 | Fars, Kazerun | Waste ground | 904 | 29.64 | 51.64 | 95109 |
Pop2 | Khuzestan, Andimeshk | Roadsides | 185 | 32.44 | 48.34 | 95105 |
Pop3 | Khuzestan, Masjed soleiman | Roadsides | 150 | 31.13 | 49.20 | 95104 |
Pop4 | Fars, Nurabad | Roadsides | 985 | 30.11 | 51.54 | 95110 |
Pop5 | Tehran, Velenjak | Mountain meadows | 1758 | 35.48 | 51.23 | 95101 |
Pop6 | Lorestan, Khorramabad | Roadsides | 1215 | 33.29 | 48.22 | 95103 |
Pop7 | Alborz, Karaj | Mountain meadows | 1327 | 35.38 | 50.92 | 95107 |
Pop8 | Ilam, Ivan | Waste ground | 1144 | 33.82 | 46.30 | 95106 |
Pop9 | Tehran, Lavasan | Mountain meadows | 1720 | 35.75 | 51.60 | 95102 |
Pop10 | Khuzestan, Ahwaz | Roadsides | 15 | 31.31 | 48.67 | 95108 |
DNA extraction and PCR amplification
For the molecular study, a sub-sample of 0.5 g leaves from each population was taken and genomic DNA was extracted by the CTAB method (Sheidai et al. 2013).
Eleven ISSR primers were tested for PCR amplification; (AGC) 5GG, (AGC) 5GT, (CA) 7GT, (CA) 7AT, (GA) 9C, UBC807, UBC810, UBC811, UBC823, UBC834, and UBC847. PCR reactions were done in a total volume of 25 μL containing 1 μL primer (12.5 pmol), 0.5 μL dNTPs mix (10mM), 20 ng template DNA, 1.5 μL reaction buffer (10×), 1.2 μL MgCl2, 1.5 U Taq DNA polymerase and 18.5 μL deionized water.
The PCR reaction was performed with a thermal cycler (Techne, Germany) with the following program: 94 °C for 5 min, 30 cycles at 94 °C for 30 sec, 55 °C for 1 min, 72 °C for 2 min and a final extension at 72 °C for 10 min. The PCR products were electrophoresed at 85 V on 1.5% agarose gels and the resulting bands were observed under a UV transilluminator. The DNA fragment sizes were estimated after comparison with a 1-kb DNA ladder. Polymorphic ISSR markers were manually scored as binary data with presence as "1" and absence as "0".
Multivariate analysis
The one-way analysis of variance (ANOVA) was used to indicate a significant difference of morphological characters among the studied populations. Principal component analysis (PCA) was used to recognize important variable morphological characters in the studied populations. Principal coordinate analysis (PCoA) was carried out based on morphological and molecular data with Euclidean distance as a similarity index. Statistical analysis was performed using the program PAST v. 2.17c. (Hammer et al. 2001).
Genetic diversity and population variation parameters were performed by PopGene software v. 1.32 (Yeh et al. 1999). Mantel permutation test was used to check the correlation between genetic distances and corresponding geographical distances of the studied populations by GenAlex software v. 6.5. (Peakall and Smouse 2006).
Analysis of molecular variance (AMOVA) test was used to determine significant genetic differences among the studied populations with the use of GenAlex v. 6.5. Genetic differentiation was estimated by D,ST = Jost measure of differentiation (Jost 2008) and G,ST = standardized measure of genetic differentiation (Hedrick 2005).
The occurrence of allele flow among populations was estimated by reticulation analysis (Legendre and Makarenkov 2002).
Results
Morphological variability
Twenty-three qualitative and quantitative characters were selected for morphological evaluation of S. vulgaris populations (Tab. 2). ANOVA test showed that there are significant differences (P ≤ 0.01) among the quantitative morphological characters of studied populations.
Quantitative characters | mean ± SD (N) | |
---|---|---|
Plant height | 21.45 ± 8.71 (81) | |
Length of basal leaf | 3.96 ± 1.08 (176) | |
Width of basal leaf | 1.35 ± 0.53 (176) | |
Thickness in base of stem | 3.21 ± 0.91 (81) | |
Length of cauline leaf | 4.54 ± 1.16 (214) | |
Width of cauline leaf | 1.97 ± 0.62 (214) | |
Number of capitula | 6.13 ± 1.42 (81) | |
Length of peduncle | 0.21 ± 0.08 (295) | |
Length of bract on a peduncle | 0.37 ± 0.08 (205) | |
Number of involucral bracts | 21.19 ± 0.59 (81) | |
Length of involucral bracts | 0.64 ± 0.05 (232) | |
Number of calyculus bracts | 10.1 ± 2.49 (81) | |
Length of corolla | 0.67 ± 0.05 (217) | |
Length of corolla tube | 0.40 ± 0.05 (217) | |
Length of corolla lamina | 0.28 ± 0.04 (217) | |
Length of anther in disc florets | 0.18 ± 0.01 (110) | |
Length of style in disc florets | 0.09 ± 0.01 (192) | |
Length of papus | 0.6 ± 0.08 (305) | |
Length of nutlet | 0.31 ± 0.03 (273) | |
Qualitative characters | ||
Type of stem | Branched- unbranched | |
Stem indumentum | Yes - No | |
Blackness of calyculus bracts | Less than 1mm – More than 1mm | |
Blackness of involucral bracts | Less than 1mm – More than 1mm |
The most important morphological characters among the studied populations were identified by PCA-biplot. The bi-plot of the PCA based on quantitative morphological characters showed that the number of capitula, length of the cauline leaf and plant height are important markers in the distribution of the populations studied (Fig. 1). It showed two factors (PC1 and PC2) which together explained 82% of the total variance. The PC1 (51% of variance) had positive correlations with the number of capitula, and a negative significant correlation with length of the cauline leaf. PC2 (variance 31%) had positive correlations with plant height (Tab. 3).
Character | Component | |
---|---|---|
PC1 | PC2 | |
Number of capitula | 0.908 | 0.132 |
Length of the cauline leaf | -0.895 | 0.115 |
Length of peduncle | 0.531 | 0.043 |
Plant height | 0.144 | 0.951 |
The PCoA plot of both quantitative and qualitative characters divided the studied populations into two groups (groups I and II) based on morphological characters (Fig. 2). Populations No. 5, 7 and 9 were grouped into I and the rest of the studied populations were placed in Group II.
The capitula numbers of populations of the first group ranged between 6 to 9 and between 4 to 7 in populations of Group II. The means of the length of cauline leaf were 6 cm and 4 cm in Group I and II populations, respectively. Also, the mean of plant height of Group I populations was 25 cm whereas it was 18 cm in Group II populations.
Moreover, the stem type of Group I populations was often branched and the black tips of the bracts were more than 1 mm long whereas populations of another group mostly have an unbranched stem and the black tips of the bracts were less than 1 mm long (Fig. 3).
ISSR marker
In this study, 121 reproducible ISSR fragments (200-800 bp) were obtained utilizing the PCR amplification. ANOVA analysis revealed significant genetic differences among the studied populations (PhiPT = 0.83, P ≤ 0.01). It also showed that most of the genetic variation (60%) occurred within populations, while 40% was due to inter-population genetic differences. These results revealed the presence of a high level of genetic differentiation among S. vulgaris populations. This result was also supported by the Gst analysis and Hickory test.
Moreover, population differentiation parameters determined among the studied populations produced high values for Hedrick, standardized fixation index after 999 permutation (G’st = 0.886, P ≤ 0.001) and Jost, differentiation index (D-est = 0.275, P ≤ 0.001).
Various parameters of genetic diversity calculated in 10 geographical populations of S. vulgaris are shown in On-line Suppl. Tab. 1. The results obtained from the common genetic diversity indices are similar to the unbiased gene diversity parameter (which is free from the sampling size). The polymorphic loci percentage in each population varied from 10.54% to 55.61% (On-line suppl. Tab. 1). Kazerun population (Pop1) showed the highest percentage (55.61%) of polymorphic loci of all the populations while the Velenjak population (Pop 5) exhibited the lowest amount of polymorphism (10.54%). The values of Shannon's information index (I) varied from 0.062 to 0.298 in all the populations. The gene diversity (He) for all loci in each of the population ranged from 0.039 to 0.189.
PCoA analysis showed that there were genetic differences among studied populations of S. vulgaris based on ISSR data. Populations 5, 7 and 9 were categorized into separate groups while the rest of the studied populations were distanced from them (Fig. 4).
The Mantel test showed that there is a significant correlation (r = 0.5, P < 0.01) between genetic and geographic distance (On-line Suppl. Fig. 2). This result demonstrated that gene exchange occurred between populations that were close to each other.
A reticulogram revealed some degree of shared alleles among most of the populations. (Fig. 5) These shared alleles might be due to ancestral and or ongoing limited gene flow among the studied populations.
Discussion
Population genetic investigations are useful in understanding genetic variability, allele flow, inbreeding against outbreeding and effective population size. This information is valuable in choosing effective management in conservative plans and also throws light on the presence of intraspecific taxonomic forms and suggests an appropriate hybridization strategy (Freeland et al. 2011, Sheidai et al. 2013, 2014).
Genetic diversity of S. vulgaris was studied by Müller-Schärer and Fischer (2001). According to their investigation different geographical areas include different habitats and populations representing different habitats varied in their sizes.
In our recent study, the genetic structure of S. glaucus showed that population fragmentation, restricted gene flow, genetic drift, and local adaptation have played a role in the genetic divergence of S. glaucus populations in Iran (Eftekharian et al. 2016).
In the present investigation, S. vulgaris populations presented a high degree of genetic variability. Species that are dispersed over a wide area face different environmental conditions and therefore can possess a wide genetic and morphological variability to manage ecological challenges (Freeland et al. 2011, El-Amier et al. 2014, Eftekharian et al. 2015, 2016).
In this study, population fragmentation in S. vulgaris is revealed by PCoA. However, some degree of gene flow and genetic admixture occurred among populations as shown by a reticulogram. The probable loss of genetic variation within these populations can be prevented by this limited gene flow due to the action of genetic drift (Habibollahi et al. 2015).
According to the Mantel test, which presented a pattern of isolation-by-distance in the studied S. vulgaris populations, adjacent populations have more chance for gene exchange than more distant populations, which is why more genetic similarities have been shown in closely situated populations.
Comparison of the two datasets indicated that in some cases, the grouping of populations based on the morphological method was consistent with molecular groupings.
Therefore, the PCoA plot based on molecular and morphological data showed two groups of populations.
Genetic and morphological differences between the two groups may be related to different ecological conditions. Ecological and environmental factors (e.g., temperature, humidity, and soil factors) can be significantly effective in shaping genetic diversity patterns (Huang et al. 2016). According to Müller-Schärer and Fischer (2001) different habitats can affect the genetic structure of S. vulgaris populations. Tang et al. (2015) showed that there was a strong relationship between the soil factors (especially salinity and soil texture) and plant diversity. In our study, the habitat of studied populations varied from mountain meadows (Populations 5, 7 and 9) to roadsides (Populations 2, 3, 4, 6 and 10) and waste grounds (Populations 1 and 8). The mountain meadow habitats had gravelly soils while loamy soils were predominant in the waste ground and roadside habitats. However, the effects of some factors in plant population genetic diversity remain unclear and more investigations have to be done.
Conclusion
Morphological characters revealed that two groups of the studied geographical populations differed from each other in two qualitative morphological features (black tips of calyculus bracts and type of stem), as evidenced in Fig. 3 and three quantitative characters (capitula number, length of the cauline leaf and plant height). Therefore, in these populations, morphological changes accompanied genetic differences and this pattern of arrangement has confirmed the existence of possible intraspecific taxonomic ranks within this species.
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