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Intra-specific variation in relative embryo length and germination of wild Daucus carota across climate gradients in North America and Europe

Published online by Cambridge University Press:  19 December 2024

Filip Vandelook*
Affiliation:
Meise Botanic Garden, Nieuwelaan 38, 1860 Meise, Belgium Division of Ecology, Evolution and Biodiversity Conservation, KU Leuven, Leuven, Belgium FB Biology, Philipps Universität Marburg, Karl-von-Frisch-Straße 8, 35043 Marburg, Germany
Ann Van de Vyver
Affiliation:
Meise Botanic Garden, Nieuwelaan 38, 1860 Meise, Belgium
Elias Soltani
Affiliation:
Department of Agronomy and Plant Breeding Sciences, College of Agricultural Technology (Aburaihan), University of Tehran, Tehran, Iran
*
Corresponding author: Filip Vandelook; Email: [email protected]
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Abstract

Although seed trait variations and their relationship to the ecological niche have been studied extensively at the species level, they do not necessarily reflect variations at the population level. In this study, we explored the intra-specific variation in relative embryo length, seed mass and germination speed in 40 populations of Daucus carota distributed across Europe and North America. By including information on local climate conditions, we aimed to examine the impact of the geographical origin on various seed functional traits and to detect potential local adaptation. No significant difference was observed in final seed germination for European and North American seeds incubated at 20°C, nor in seed viability. In European populations, relative embryo length significantly increased with increasing seed mass, but no such relation was found in North American populations. Larger relative embryo length at dispersal resulted in increased germination speed in both European and North American populations. Populations in drier areas typically had seeds with larger relative embryo lengths. Precipitation-related climate variables showed a negative relationship with relative embryo length, indicating a reduction in relative embryo length with increased precipitation. No clear relationship between climate and seed mass was observed. We can conclude that seed functional traits of D. carota are adapted to local climate conditions, as a clear gradient was observed in the relative embryo length of D. carota, which was associated with germination speed and climate. This gradient was less pronounced in North America, which can be explained by its relatively recent introduction to the continent.

Type
Research Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2024. Published by Cambridge University Press

Introduction

The reproductive success of plants relies on the alignment between seed characteristics with their environment (Baskin and Baskin, Reference Baskin and Baskin2014; Igea et al., Reference Igea, Miller, Papadopulos and Tanentzap2017; Soltani et al., Reference Soltani, Benakashani, Baskin and Baskin2021). Angiosperm seeds can, for example, germinate at widely different speeds, which are related to species’ ecological strategy and habitat preference (e.g., Kadereit et al., Reference Kadereit, Newton and Vandelook2017). How fast seeds can germinate is determined by seed morphology, physiology, gene regulation and environmental factors, with the process being irreversible but critical for species survival. Seed mass is another crucial trait in plant reproductive biology, influencing dispersal and population recruitment, with inter-specific variations related to species life form and habitat characteristics (Vandelook et al., Reference Vandelook, Janssens and Matthies2018; Kang et al., Reference Kang, Zhou, Liu, Zhang, Liu, Bu and Qi2022). Seed mass indicates the amount of nutrient reserves the offspring are dispersed with (Moles, Reference Moles2018; Kang et al., Reference Kang, Zhou, Du and Qi2021), and plants face a trade-off between producing numerous small seeds for widespread distribution or a few large seeds for enhanced early seedling establishment (Leishman and Westoby, Reference Leishman and Westoby1994; Moles et al., Reference Moles, Ackerly, Webb, Tweddle, Dickie, Pitman and Westoby2005). Although seed trait variations and their relation to the ecological niche have been studied extensively at the species level, they do not necessarily reflect variations at the population level (Saatkamp et al., Reference Saatkamp, Cochrane, Commander, Guja, Jimenez-Alfaro, Larson, Nicotra, Poschlod, Silveira, Cros, Dalziell, Dickie, Erickson, Fidelis, Fuchs, Golos, Hope, Lewandrowski, Merritt, Miller, Miller, Offord, Ooi, Satyanti, Sommerville, Tangney, Tomlinson, Turner and Walck2019).

Although seed mass, like many seed morphological traits, is considered a stable trait at the species level (e.g., Harper, Reference Harper1977), intra-specific variation in seed mass does exist and can range two- to six-fold (Hendrix and Sun, Reference Hendrix and Sun1989). Inter-specific seed mass variation is mainly influenced by environmental and biotic factors (Moles et al., Reference Moles, Ackerly, Webb, Tweddle, Dickie, Pitman and Westoby2005), and the factors hypothesized to act on inter-specific trait variation may act on intra-specific variation as well (Fricke et al., Reference Fricke, Tewksbury and Rogers2019). Thermal and disturbance niche breadth also contribute to intra-specific seed mass variation, reflecting responses to temperature variations and disturbance levels (Wu et al., Reference Wu, Shang, Zhu, Ding and Wang2015; Fernández-Pascual et al., Reference Fernández-Pascual, Mattana and Pritchard2019). Kang et al. (Reference Kang, Zhou, Liu, Zhang, Liu, Bu and Qi2022) indicated that intra-specific seed mass variation in eastern Qinghai–Tibetan species is positively related to niche breadth, with significant direct effects of thermal niche and seed dispersal mode, emphasizing the simultaneous impact of intrinsic biotic attributes and extrinsic abiotic pressures on regional-scale intra-specific seed development. Ge et al. (Reference Ge, Bu, Wang, Martinez and Du2020), investigating seed mass and germination in eight Allium species and eight populations of Allium chrysanthum, found significant differences among both species and populations. The study highlighted the impact of elevation on seed mass and germination, with smaller seeds exhibiting enhanced germination, influenced by strong environmental effects, particularly at higher elevations.

Intra-specific variation in seed germination timing, often regulated by seed dormancy, is driven by climate in general and the climate seasonality in particular. Optimal primary seed dormancy is expected to be related to the length of the period following seed release, which is unfavourable for seedling establishment (Allen and Meyer, Reference Allen and Meyer1998; Wagmann et al., Reference Wagmann, Hautekeete, Piquot, Meunier, Schmitt and Van Dijk2012) and varies among populations along a climate gradient. Sales et al. (Reference Sales, Pérez-García and Silveira2013) found that Miconia albicans seeds from grassland plants germinated slower and more asynchronous as compared to woodland plants in the Brazilian Cerrado. Allen and Meyer (Reference Allen and Meyer2002), studying dormancy variation in Bromus tectorum populations, found that environmental conditions that lead to shortened seed ripening periods resulted in reduced seed dormancy. Moreover, there is evidence that intra-specific variation in germination characteristics coincides with variation in linked seed morphological traits. For example, Amimi et al. (Reference Amimi, Ghouil, Zitouna-Chebbi, Joët and Ammari2023) showed that variation in seed functional traits including morphological characteristics and physiological responses of Quercus ilex populations can be explained by climatic gradients. Notable differences in seed moisture content and germination rates associated with elevation and temperature variations were observed in Q. ilex.

While intra-specific variation in seed mass and dormancy have been relatively well studied, much less is known about intra-specific variation in other seed functional traits, such as the embryo-to-seed size ratio (hereafter referred to as relative embryo size). Relative embryo size is a proxy for the quantity of nutrient reserves stored in the embryo versus the endosperm. Relative embryo size has been shown to relate to seed mass, adult longevity, habitat shade and annual precipitation, supporting the tight relationship between embryo length and species ecology (Vandelook et al., Reference Vandelook, Verdú and Honnay2012b, Reference Fernández-Pascual, Carta, Mondoni, Cavieres, Rosbakh, Venn, Satyanti, Guja, Briceño, Vandelook and Mattana2021). The relative embryo size in angiosperms is closely linked to physiological processes like seed germination, where species with larger embryos, for example, tend to germinate faster. As such, relative embryo length is a heritable and advantageous trait for early seedling establishment (Geber and Griffen, Reference Geber and Griffen2003; Verdú, Reference Verdú2006). Here, we will analyse intra-specific variation in the relative embryo size of Daucus carota L. and how it varies with the environment, perhaps mediated through other seed functional traits.

D. carota (wild carrot), the progenitor of the cultivated carrot, is a biennial herb native to Europe and Asia and introduced in North America by European settlers in the 17th century (Small, Reference Small1978; Iorizzo et al., Reference Iorizzo, Senalik, Ellison, Grzebelus, Cavagnaro, Allender, Brunet, Spooner, Van Deynze and Simon2013). It is now distributed throughout North America. Evidence provided by Magnussen and Hauser (Reference Magnussen and Hauser2007) reveals hybridization between cultivated and wild D. carota, confirming the species’ introduction from Europe as a weed. Mackowska et al. (Reference Mackowska, Stelmach-Wityk and Grzebelus2023), utilizing somatic hybridization techniques, emphasized the role of human-mediated hybridization in the weediness of D. carota in the United States. D. carota is particularly diverse in the Mediterranean region, with multiple subspecies and varieties (Spooner et al., Reference Spooner, Widrlechner, Reitsma, Palmquist, Rouz, Ghrabi-Gammar, Neffati, Bouzbida, Ouabbou, El Koudrim and Simon2014), while it is less diverse but still very common in more northern European regions. Like all other Apiaceae, D. carota seeds have an underdeveloped embryo at dispersal and copious endosperm (Vandelook et al., Reference Vandelook, Janssens and Probert2012a).

Germination characteristics of D. carota have been shown to vary within a single plant and across populations. D. carota plants have a primary umbel and multiple secondary umbels. Germination percentages of D. carota seeds from primary umbels in early July are lower than those from secondary umbels ripening later (Gray, Reference Gray1979). In addition, seeds from later primary umbels, though the same size, exhibited lower germination percentages than those from early primary umbels (but see Corbineau et al., Reference Corbineau, Picard, Bonnet and Come1995). Considerable variation in D. carota seed traits, linked to variation in reproductive timing, has been observed between populations along a latitudinal gradient in the United States (Lacey, Reference Lacey1988). Germination and dormancy characteristics of D. carota may also be mediated by seed size. Larger seeds of D. carota are, for example, less dormant than smaller ones (Jacobsohn and Globerson, Reference Jacobsohn, Globerson and Hebblethwaite1980; Gross, Reference Gross1984).

Detailed information on seed trait variation patterns within species on a continental scale is scarce, prompting questions about mean seed mass differences, relative embryo length, germination and bioclimate predictors contributing to variance within species. To improve our understanding of how seed trait variation at the population level is driven by climatic conditions, we analysed variation in seed mass and relative embryo length in D. carota along wide climatic gradients in the United States and Europe. More specifically, this study aims to reveal whether (i) seed germination percentage and rate relate to embryo size and/or seed mass, (ii) seed traits relate to local climate conditions; (iii) the same patterns are observed in its region of origin, Europe and in North America where it has become naturalized over the past 300 years.

Materials and methods

Seed samples

Seeds of 40 D. carota accessions (hereafter referred to as populations) were obtained from the USDA, Agricultural Research Service (Supplementary Table S1). Out of these 40 populations, 24 populations were originally sampled along a latitudinal gradient in western North America, while 16 populations had a European origin (Fig. 1). To better cover the climate range in Europe, two seed populations received from the IPK Gatersleben were added, as well as one population sampled in Rucava, Latvia (received from the National Botanic Garden of Latvia). All seeds had been dry stored for prolonged periods of time, which reduced the physiological dormancy present in the seeds. Since seeds were all stored for long periods in dry conditions, we assume that the dormancy that could be broken by dry storage was removed to a maximal extent. Any remaining dormancy, likely needed to be overcome by other treatments, such as cold stratification. Germination was always above 50% within 2 weeks after incubation, and it did not change significantly during storage (Supplementary Fig. S1). Information on seed accessions and collecting date of the original population is given in Supplementary Table S1. Some populations may have been regenerated in controlled conditions, but we have no further information on whether that was the case.

Figure 1. Geographic origin of 40 D. carota populations used in this study. The upper panel shows the locations of 16 European populations, including two from IPK Gatersleben and one from Rucava, Latvia. The lower panel shows the locations of 24 North American populations, sampled along a latitudinal gradient in western North America. The size of the dots reflects the mean length of the embryo-to-seed length ratio (E:S ratio) of the sampling sites. Data source: USDA, Agricultural Research Service (Supplementary Table S1).

Germination tests

Germination tests were carried out in lab conditions in July at the Philipps University Marburg. For each population, three replicates of 25 seeds were placed on two layers of filter paper in 9 cm diameter Petri dishes and moistened with distilled water. All Petri dishes were placed in a temperature and light-controlled incubator (Binder GmbH) at a constant temperature of 20°C and a 12 h photoperiod (Philips TLD 80 fluorescent tubes with a photon flux density of 52 μmol m−2 s–1, 400–700 nm). The experiment ran for 15 days, during which germinated seeds were counted and removed every second day. Similarly, three replicates of 25 seeds from the North American populations were incubated at 10°C for 20 days. Seed germination of European populations was not tested at 10°C due to a lack of seeds. At the end of the experiment, a cut test was carried out on all non-germinated seeds to assess whether the seeds were dead or dormant. Seeds with an intact and white embryo and endosperm were considered viable. The final germination percentage was calculated, considering only intact seeds.

Calculation of germination speed

Germination speed was calculated using three indices, the inverse of Mean Germination Time (1/MGT), the inverse of time to 50% germination (1/t 50) using the Hill function (El-Kassaby et al., Reference El-Kassaby, Moss, Kolotelo and Stoehr2008; Joosen et al., Reference Joosen, Kodde, Willems, Ligterink, Van Der Plas and Hilhorst2010), and the inverse of time to actual 50% germination (R50) using Germinv3 (Soltani et al., Reference Soltani, Ghaderi-Far, Baskin and Baskin2015). MGT was calculated using the formula: MGT = Σnitini, where ti is the time from the start of the experiment and ni the number of germinated seeds at the ith time (Ellis and Roberts, Reference Ellis, Roberts and Hebblethwaite1980). t 50 was extracted from a Hill function with formula y = y0 + (axb)/(cb + xb) fitted on the cumulative germination curve. Here, y is the cumulative germination percentage at time x (day), y 0 is the intercept on the y axis (≥0), a is the maximum cumulative germination percentage (≤100), b is controlling the shape and steepness of the curve and c is the time required for 50% of viable seeds to germinate (t 50). To calculate R50, Germinv3 was used that this tool is formulated using the Visual Basic (VB) Excel, and the corresponding codes can be found in Supplementary Table S2 and require the Macro VB section in Excel (https://zenodo.org/records/10440963). Germinv3 calculates the time to different percentiles of germination, including time to 50% of germination (t 50), through linear interpolation, subsequently determining the germination rate using its inverse.

Seed mass and embryo size measurements

Seeds mass was determined for each population by weighing all available seeds (usually about 100 seeds) on a precision balance. The total seed mass was divided by the number of weighted seeds to obtain an average value. All seed populations had been dry stored in the same lab conditions (40–60% relative humidity (RH)) for about 2 weeks prior to weighing.

Relative embryo length was expressed as the embryo-to-seed length ratio (E:S ratio). Embryo length and seed length were measured on seeds that were cut in half along the longitudinal axis. Ten seeds per population were placed in distilled water for 1 day to imbibe and were subsequently cut in half. Pictures of the cut seeds and embryos were taken using a Keyence digital microscope (VH-5000, Ver 1.5.1.1, Keyence Corporation). Embryo length and seed length along the longest axis were measured using the ImageJ software version 1.53t (Abramoff et al., Reference Abramoff, Magalhaes and Ram2004). Due to a lack of seeds, no embryo measurements were made for the two populations received from IPK Gatersleben and the population from Latvia.

Climate data

The geographical coordinates of the original sampling sites of all populations were given by the institutes that provided seed material. Using these coordinates, climatic data associated with the sampling or occurrence sites were estimated using the WorldClim database version 2.1 (https://worldclim.org/; downloaded on 7 Nov 2022) and accessed through DIVA-GIS version 7.5.0 (Hijmans et al., Reference Hijmans, Guarino, Cruz and Rojas2001). Altitude and climatic data incorporated in the study are listed in Supplementary Table S1.

Statistical analysis

Seed germination data were analysed using generalized linear mixed-effect models with a binomial error distribution and a logit link function in the package lme4 version 1.1-31 (Bates et al., Reference Bates, Mächler, Bolker and Walker2015) in R version 4.2.1. (R Core Team, 2022). Populations were included as random effects in the models. Seed morphology and germination speed data were analysed using general linear models.

The relationships between predictors (coordinates and bioclimatic data) and the E:S ratio were investigated using general linear models, and the most important predictors were identified. Correlation coefficients and principal component analysis (PCA) were applied to explore the underlying structure of the dataset and identify the primary drivers of variation using SAS Institute Inc. (Cary, NC, USA, 2013). To visualize the PCA, the factoextra package in R was used (Kassambara and Mundt, Reference Kassambara and Mundt2020). The principal components (PCs) were interpreted to understand the correlations between the most important bioclimate variables (annual mean temperature, temperature seasonality, mean temperature of the wettest quarter, annual precipitation and precipitation seasonality) and seed morphology (seed mass and E:S ratio) or germination (germination percentage of viable seeds and dormancy and germination speed) data.

Stepwise analysis was used to identify the subset of significant predictors that best explained the variability in the E:S ratio using SAS. The inclusion or exclusion of variables was iteratively evaluated by a stepwise backward selection procedure, optimizing the model's fit and preventing overfitting. Specifically, the stepwise selection process utilized the criteria of partial R 2, F-value, and P-value for entry into and removal from the model. Also, C(p) was calculated. ‘C(p)’ refers to the criterion used for the stepwise variable selection process. Specifically, it is often associated with the Change in Criteria (C) statistic, and ‘p’ typically represents the probability associated with the change. Finally, the relationships between the most important predictor and embryo length, seed length and seed mass were investigated using the general linear model.

Results

Germination speed indices

The three germination speed indices applied here showed a similar trend but also some obvious differences (Fig. 2). In populations from Europe, R50 and 1/t 50 showed no significant difference for the intercept (intercept = −0.009; P = 0.89), but there was a significant difference in slopes both in Europe (P < 0.001) and in North America at both 10 and 20°C (P < 0.001). However, 1/MGT was significantly different from both R50 and 1/t 50 in European and North American populations tested at 10 or 20°C (Fig. 2). The differences between 1/MGT and R50 and between 1/MGT and 1/t 50 were more obvious at 10°C for North American populations, at which R50 and 1/t 50 showed a lower rate of germination compared to 1/MGT. No significant difference in germination speed between European and North American populations was found for any of the indices (1/t 50: P = 0.36; R50: P = 0.35; 1/MGT: P = 0.86).

Figure 2. Relationship between three indices of germination speed in the European and North American population of D. carota. The germination of North American populations was tested at 10 and 20°C and European populations at 20°C only.

Relationship between germination, seed mass and relative embryo size

No significant difference was observed in final seed germination percentage (β = −0.41; SE = 0.3; P = 0.20), nor seed viability (β = −0.18; SE = 0.3; P = 0.60), for European and North American seeds incubated at 20°C. Both European and North American populations germinated to about on average 80–85%, while seed viability was about 90% for both continents. Mass of European seeds was significantly higher as compared to those from North America (β = 0.16; SE = 0.04; P < 0.001). The range of average seed mass among the population was also considerably larger in Europe (0.7–3.3 mg) than in North America (0.7–1.6 mg).

A significant continent interaction (t = −0.145; P < 0.001) was observed for the relationship between seed mass and germination speed (1/t 50). While populations with heavier seeds germinated faster in Europe, they germinated slower in North America (Fig. 3). Germination percentage significantly increased (P < 0.05) with increasing seed mass in European populations. However, the germination percentage decreased with seed mass in North American populations incubated at 10 or 20°C, although this decrease was not statistically significant (P = 0.23 and P = 0.17, respectively). The speed of germination significantly increased (P = 0.004) with increasing seed mass in European populations, while no significant change was found in North American populations (neither at 10 nor at 20°C). The proportion of dormant seeds also significantly (P = 0.02) decreased with increasing seed mass in European populations, but no significant increase was observed in North American populations (at 10 and 20°C).

Figure 3. Relationships between seed mass and seed germination in European and North American D. carota populations. The germination of North American populations was tested at 10 and 20°C and European populations at 20°C.

A marginally significant difference in the E:S ratio was observed between European and North American seeds (β = −0.11; SE = 0.06; P = 0.08). The E:S ratio in European populations (mean: 0.328; range: 0.173–0.659) was significantly higher than that in North American populations (mean: 0.249; range: 0.128–0.617). There was a significant interaction effect of continent on the relation between seed mass and the E:S ratio (β = 0.17; SE = 0.05; P = 0.002; Fig. 4). In European populations, relative embryo length significantly increased (P = 0.003) with increasing seed mass (Fig. 4), while in North American populations a significant negative relationship was observed between seed mass and relative embryo length (P = 0.05).

Figure 4. Relationships between seed mass and the E:S ratio in European and North American D. carota populations.

No significant continent interaction was observed for the relationship between the E:S ratio and germination percentage (P = 0.73), germination speed (P = 0.85) and dormancy (P = 0.79) of seeds incubated at 20°C (Fig. 5). There was a significant positive relationship between the percentage of germination and the E:S ratio (P = 0.08) across all D. carota populations (Fig. 5). A significant positive relation between germination speed (R50) and the E:S ratio was also found across all populations (P = <0.001). However, seed dormancy decreased with the E:S ratio, although the relationship was not significant (P = 0.11).

Figure 5. Relationships between the E:S ratio and seed germination characteristics for European and North American D. carota populations incubated at 20°C. The solid line shows the linear regression model, and the shaded area shows the 95% confidence interval.

Relationship between relative embryo length and climate

The univariate relationships between 22 predictors (including bioclimate variables, altitude and geographical coordinates) and E:S ratios are shown in Table 1. Both geographical coordinates had a significant effect on the E:S ratio, but the longitude belonged to two different continents with negative values in North America and positive values in Europe, which led to a significant relationship. Therefore, we did not consider longitude in further analyses. The E:S ratio decreased significantly (P = 0.049) with increasing latitude (Table 1). Annual mean temperature, temperature seasonality, maximum temperature of the warmest month, mean temperature of the wettest quarter and mean temperature of the warmest quarter significantly increased with the E:S ratio (Table 1). An increase in annual precipitation, precipitation of the wettest month, precipitation of the wettest quarter, precipitation of the coldest quarter and isothermality resulted in a significant reduction in the E:S ratio.

Table 1 Results from the GLM of various predictors on the variation of intra-specific E:S ratio in 40 accessions of D. carota across North America and Europe

Note: B is the regression slope and R 2 is the coefficient of determination.

*P < 0.05, **P < 0.01 and ***P < 0.001, respectively.

In the multiple regression model constructed that best estimates the E:S ratio, only three climate variables were retained in the final model, including annual precipitation, mean temperature of the wettest quarter and annual mean temperature (Table 2). Annual precipitation significantly explained 70.6% of the changes in the E:S ratio (P < 0.001) and cumulative R 2 at the first step was 0.26 (Table 2). In the second step, the mean temperature of the wettest quarter was inserted into the model and explained 18.7% of the changes in the E:S ratio (P = 0.06), and cumulative R 2 increased to 0.33. Annual mean temperature explained 10.6% of changes in the E:S ratio and cumulative R 2 improved to 0.37, although it was not significant (P = 0.14).

Table 2 Stepwise multiple regression analysis results for predictors influencing the E:S ratio in D. carota populations

Annual precipitation significantly decreased embryo length (slope = −0.00015; P = 0.002) and the E:S ratio (slope = −0.0001; P < 0.001) across D. carota European and North American populations, but it had no significant impact on either seed mass or seed length (Fig. 6). It showed that with a 1000-mm increase in precipitation, absolute embryo length decreases by about 0.15 mm.

Figure 6. Relationships between annual precipitation and seed morphology in European and North American D. carota populations. The solid line shows the linear regression model, and the shaded area shows the 95% confidence interval.

The three first PC axes of the PCA explained 78% of the variation (Table 3; Fig. 7). The first PC explained 41% of the variation, and a positive correlation was observed between PC1 and the E:S ratio, germination percentage and rate, seed mass and temperature climate variables. There was a negative correlation between PC1 and the percentage of dormant seeds and the precipitation climate variables (Fig. 7). The E:S ratio seems to align better with PC1, while PC2 is rather related to seed mass. European populations are predominantly situated on the right side of PC1, while North American populations are situated on the left side of PC1.

Table 3 Eigenvalues of first three principal components and the percentage of variance explained by them for a PCA of six predictors (annual precipitation, precipitation seasonality, mean temperature of the driest quarter, annual mean temperature, temperature seasonality and mean temperature of the wettest quarter) and five seed morphology and germination traits (seed dormancy (%), seed mass (mg), E:S ratio, germination percentage of viable seeds (%) and germination speed (R50)) in 40 D. carota populations from Europe and North America

Figure 7. PCA of six predictors (annual precipitation, precipitation seasonality, mean temperature of the driest quarter, annual mean temperature, temperature seasonality and mean temperature of the wettest quarter) and five seed morphology and germination traits (seed dormancy (%), seed mass (mg), E:S ratio, germination percentage of viable seeds (%) and germination speed (R50)) in 40 D. carota populations from Europe (numbers 25–40) and North America (numbers 1–24).

Discussion

Our results support the hypothesis that relative embryo length is positively related to germination speed at the population level. Moreover, relative embryo length is higher in drier (less annual precipitation) localities both in Europe and in North America. These results confirm the hypothesis that higher relative embryo length provides an adaptive advantage through the ability to germinate faster in dry regions. The distribution of variation in seed mass across D. carota populations is harder to explain, as the relationships between seed mass on the one hand and seed characteristics and climate variables on the other are less equivocal as we will discuss below.

Seed mass effects: embryo and germination

The similar germination percentages and viabilities of European and North American D. carota populations at 20°C suggest a common germination process under optimal conditions. However, the relationship between seed mass and germination was different across continents. In Europe, larger seeds germinated faster and had fewer dormant seeds, which agreed with previous studies (Jacobsohn and Globerson, Reference Jacobsohn, Globerson and Hebblethwaite1980; Gross, Reference Gross1984). This confers an adaptive advantage in stressful and unpredictable environments (Moles et al., Reference Moles, Ackerly, Webb, Tweddle, Dickie, Pitman and Westoby2005; Vandelook et al., Reference Vandelook, Janssens and Matthies2018, Reference Vandelook, Newton, Bobon, Bohley and Kadereit2021; Kang et al., Reference Kang, Zhou, Du and Qi2021). Larger seeds also have more nutrient reserves and energy availability, increasing their environmental stress tolerance. The adaptive advantage of larger seeds in successful establishment and reduced dormancy aligned with established ecological theories (Venable et al., Reference Venable, Dyreson, Piñero and Becerra1998; Baskin and Baskin, Reference Baskin and Baskin2014). Larger seeds also benefit from germinating faster, as they are exposed to higher risks of seed predation, because they can be detected more easily by seed predators, and they contain more nutrients (Dalling et al., Reference Dalling, Davis, Schutte and Elizabeth Arnold2011; Paulsen et al., Reference Paulsen, Högstedt, Thompson, Vandvik and Eliassen2014). In North America, however, larger seeds germinated slower, perhaps due to region-specific environmental factors. An equivocal relation between seed mass and germination speed has been observed in other studies (e.g., Milberg et al., Reference Milberg, Andersson, Elfverson and Regner1996) and merits further study.

The relationship between seed mass and relative embryo length is complex and varies with species and context. In Apiaceae, a negative correlation was found between seed mass and relative embryo length at the species level (Vandelook et al., Reference Vandelook, Janssens and Probert2012a), while no relationship was found in Amaranthaceae (Vandelook et al., Reference Fernández-Pascual, Carta, Mondoni, Cavieres, Rosbakh, Venn, Satyanti, Guja, Briceño, Vandelook and Mattana2021). In our study, at the population level, seed mass and relative embryo length were related differently in European and North American populations. In Europe, larger seeds had larger embryos and higher relative embryo lengths. In North America, larger seeds had smaller embryos, but no significant relationship was found with relative embryo length. These results imply that (i) the germination rate is not only determined by seed mass but also by environmental conditions and relative embryo length, and (ii) the relative embryo length does not always increase with seed mass. Larger embryos offer advantages in open and dry habitats or for species with short life cycles, providing an adaptive edge in unpredictable environments (Vivrette, Reference Vivrette, Arroyo, Zedler and Fox1995; Kadereit et al., Reference Kadereit, Newton and Vandelook2017; Vandelook et al., Reference Fernández-Pascual, Carta, Mondoni, Cavieres, Rosbakh, Venn, Satyanti, Guja, Briceño, Vandelook and Mattana2021).

Relative embryo length and germination

The close relationship between relative embryo length ratio and germination has emerged as an important determinant shaping the reproductive success and ecological strategies of plant species (e.g., Vandelook et al., Reference Fernández-Pascual, Carta, Mondoni, Cavieres, Rosbakh, Venn, Satyanti, Guja, Briceño, Vandelook and Mattana2021). Relative embryo length and germination were related similarly in European and North American populations unlike seed mass and germination. In both populations, germination percentage and rate increased, and seed dormancy decreased with increasing relative embryo length. Recent investigations showed that larger embryos germinated faster, which was a heritable and advantageous trait for early seedling establishment and provided a competitive advantage (e.g., Vandelook et al., Reference Vandelook, Janssens and Probert2012a). In the present study on D. carota populations, we demonstrated that higher relative embryo length led to faster germination and lower seed dormancy. This pattern holds particular significance in seeds with underdeveloped embryos, such as D. carota, where relative embryo length affected germination more than seed mass (Fernández-Pascual et al., Reference Fernández-Pascual, Carta, Mondoni, Cavieres, Rosbakh, Venn, Satyanti, Guja, Briceño, Vandelook and Mattana2021). Intra-specific variation in relative embryo length within species and their implications for germination received limited research attention. Nonetheless, the subtle intricacies of intra-specific variation in embryo length provide valuable insights into germination processes within plant populations. Our study emphasized that within populations of the same species, the interplay between relative embryo length and germination responses was influenced by environmental factors, shaping the adaptive strategies of plants in diverse ecological contexts.

Relationship between seed mass, relative embryo length and local climate conditions

Climate variables are often poor predictors of ecological and evolutionary patterns of trait variation at the species level (Moles et al., Reference Moles, Ackerly, Webb, Tweddle, Dickie, Pitman and Westoby2005; Vandelook et al., Reference Vandelook, Janssens and Probert2012a.; but see Carta et al., Reference Carta, Fernández-Pascual, Gioria, Müller, Rivière, Rosbakh, Saatkamp, Vandelook and Mattana2022). Here we found for the first time that climate variables are good predictors for variation in relative embryo length between populations. Temperature-related variables, such as annual mean temperature, showed a positive relationship with relative embryo length, suggesting perhaps a connection between temperature and seed embryo development in mother plants. Conversely, precipitation-related variables, such as annual precipitation, showed a negative relationship with relative embryo length, indicating a decrease in relative embryo length in more humid regions. Overall rainfall increased and temperature decreased at higher latitudes, aligning with broader climatic trends. Vandelook et al. (Reference Vandelook, Janssens and Probert2012a), studying the relative embryo length of Apiaceae at the species level, also identified a negative and significant relationship between relative embryo length, rainfall, and latitude but a positive and non-significant relationship between relative embryo length and temperature. Hence, the exploration of seed trait variation within D. carota populations emphasizes the importance of considering intra-specific variations when unravelling the relationships between seed traits and environmental parameters. Past studies at the inter-specific level reported a negative correlation between latitude and seed size, corroborating the observed patterns (Moles et al., Reference Moles, Ackerly, Tweddle, Dickie, Smith, Leishman, Mayfield, Pitman, Wood and Westoby2007). In contrast to relative embryo length, intra-specific variation in seed mass of D. carota was poorly predicted by local climate conditions, although a negative relationship between seed mass and latitude was also present in D. carota populations studied here (results not shown).

The response of relative embryo length to climate variation suggests potential adaptations to climatic conditions, emphasizing the adaptability of seed size and relative embryo size to various environmental cues. Annual precipitation significantly decreased with the relative embryo length of D. carota populations, but it had no significant impact on either seed mass or seed length. It seems that there is a trade-off in D. carota, balancing the allocation of resources between two distinct reproductive strategies. The first strategy involves the investment in a nutrient-rich endosperm, a crucial component for potential seedling success, especially in environments with abundant precipitation and lower temperatures. This allocation ensures that seeds have the necessary resources to thrive in conditions where water availability is not a limiting factor. The second strategy involves directing resources towards the development of larger embryos, a strategic move aimed at enhancing seedling vigour. This strategy was advantageous in environments with lower precipitation and higher temperatures, where the size and strength of the developing embryo were more important than the endosperm richness. The trade-off highlights the plant's adaptive response to varying environmental conditions, showcasing a dynamic resource allocation strategy that matches the plant's reproductive needs in different ecological contexts.

However, intra-specific variation in relative embryo length may also be related to conditions experienced during seed maturation. Gray et al. (Reference Gray, Ward and Steckel1984) described the development of endosperm and embryos in D. carota as a series of distinct phases. The endosperm first underwent a coenocytic phase, followed by rapid cell division and expansion, reaching its maximum volume and dry weight. Then, the endosperm volume slightly decreased as some cells near the embryo dissolved. The positive relationship between temperature and relative embryo length aligns with Gray et al. (Reference Gray, Ward and Steckel1984), who observed that elevated temperatures during seed development favoured cell expansion, contributing to larger embryos. Conversely, the negative correlation between precipitation and relative embryo length suggests that increased precipitation could also affect seed components, perhaps influencing endosperm development, leading to a decrease in relative embryo length at dispersal. Increased precipitation might, for example, influence the dissolution of cells in the endosperm, as observed by Gray et al. (Reference Gray, Ward and Steckel1984), potentially contributing to a decrease in relative embryo length. However, further studies are required to elucidate these patterns.

The differences that were observed between European and North American populations are potentially related to the longer local biogeographical history of European D. carota populations, as compared to the North American populations that were introduced on the continent about 300 years ago (Small, Reference Small1978; Iorizzo et al., Reference Iorizzo, Senalik, Ellison, Grzebelus, Cavagnaro, Allender, Brunet, Spooner, Van Deynze and Simon2013). D. carota, which originated in Europe and the Middle East, has a long evolutionary history on the continent and is very diverse, with multiple subspecies and varieties in the Mediterranean region (Spooner et al., Reference Spooner, Widrlechner, Reitsma, Palmquist, Rouz, Ghrabi-Gammar, Neffati, Bouzbida, Ouabbou, El Koudrim and Simon2014). Therefore, a much more developed local adaptation in Europe may explain the tighter relation between seed functional traits and climate in Europe as compared to North America. D. carota has been distributed across North America over the past 300 years, which is a very short period at the evolutionary scale. However, the distribution of D. carota over similar climate ranges in two different continents makes it an interesting case for studying micro-evolution at different temporary scales.

Methodological considerations

In literature, different metrics are being used to express germination speed and they tend to show subtle differences (Soltani et al., Reference Soltani, Ghaderi-Far, Baskin and Baskin2015), which was confirmed in this study. The existing methods to determine the seed germination rate can be grouped into three categories: (i) calculating an index by a formula, such as MGT, (ii) calculating time to 50% of maximum germination by models, such as the Hill function, and (iii) calculating time to 50% germination, such as Germinv3. In both traditional formulas, such as MGT, and in models designed to calculate the time to 50% of maximum germination (t 50), the time determined for mean germination, or 50% germination, depends on the maximum germination and the germination pattern during the test. Comparing different MGT and t 50 values is not an appropriate method for comparing treatments. Similarly, when comparing the germination rate of seeds from different treatments, cultivars, habitats, populations or taxa, it is essential to evaluate them for a fixed percentage, such as 50% of the total population. Therefore, it is recommended to use alternative indices, like the inverse time to 50% germination (R50, or other rates, see Germinv3 in the Supplementary Files) to compare treatments accurately.

A downside of our study is the relatively unstandardized storage conditions before the onset of the germination experiments. In an ideal scenario, germination tests would have been performed with freshly harvested seeds, or seeds that had been stored in standardized conditions for the same period before the onset of the experiment. These shortcomings need to be considered when interpreting the results and limit the conclusions drawn. However, the high seed viability, even after prolonged periods of storage, and the consistent results we obtained do confirm the reliability of the conclusions drawn.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S0960258524000230.

Acknowledgements

We would like to thank Sarah Le Pajolec (Meise Botanic Garden) and Marischa-Iglé Anders (Philipps Universität Marburg) for help with data collection.

Financial support

E.S. was supported by a FWO grant for a scientific research stay in Belgium (FWO V510523N) during the final stages of the research.

Conflicts of interest

The authors declare none.

Author Contribution

F.V. conceptualized the research and assembled all data. A.V.V. carried out experiments. E.S. analysed the data. F.V. and E.S. wrote the manuscript. A.V.V. reviewed the manuscript.

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Figure 0

Figure 1. Geographic origin of 40 D. carota populations used in this study. The upper panel shows the locations of 16 European populations, including two from IPK Gatersleben and one from Rucava, Latvia. The lower panel shows the locations of 24 North American populations, sampled along a latitudinal gradient in western North America. The size of the dots reflects the mean length of the embryo-to-seed length ratio (E:S ratio) of the sampling sites. Data source: USDA, Agricultural Research Service (Supplementary Table S1).

Figure 1

Figure 2. Relationship between three indices of germination speed in the European and North American population of D. carota. The germination of North American populations was tested at 10 and 20°C and European populations at 20°C only.

Figure 2

Figure 3. Relationships between seed mass and seed germination in European and North American D. carota populations. The germination of North American populations was tested at 10 and 20°C and European populations at 20°C.

Figure 3

Figure 4. Relationships between seed mass and the E:S ratio in European and North American D. carota populations.

Figure 4

Figure 5. Relationships between the E:S ratio and seed germination characteristics for European and North American D. carota populations incubated at 20°C. The solid line shows the linear regression model, and the shaded area shows the 95% confidence interval.

Figure 5

Table 1 Results from the GLM of various predictors on the variation of intra-specific E:S ratio in 40 accessions of D. carota across North America and Europe

Figure 6

Table 2 Stepwise multiple regression analysis results for predictors influencing the E:S ratio in D. carota populations

Figure 7

Figure 6. Relationships between annual precipitation and seed morphology in European and North American D. carota populations. The solid line shows the linear regression model, and the shaded area shows the 95% confidence interval.

Figure 8

Table 3 Eigenvalues of first three principal components and the percentage of variance explained by them for a PCA of six predictors (annual precipitation, precipitation seasonality, mean temperature of the driest quarter, annual mean temperature, temperature seasonality and mean temperature of the wettest quarter) and five seed morphology and germination traits (seed dormancy (%), seed mass (mg), E:S ratio, germination percentage of viable seeds (%) and germination speed (R50)) in 40 D. carota populations from Europe and North America

Figure 9

Figure 7. PCA of six predictors (annual precipitation, precipitation seasonality, mean temperature of the driest quarter, annual mean temperature, temperature seasonality and mean temperature of the wettest quarter) and five seed morphology and germination traits (seed dormancy (%), seed mass (mg), E:S ratio, germination percentage of viable seeds (%) and germination speed (R50)) in 40 D. carota populations from Europe (numbers 25–40) and North America (numbers 1–24).

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