The functional traits of plants explain their species response to changes in environmental gradients (Gouveia & Freitas et al. 2009, Sterck et al. 2011, Kichenin et al. 2013, Salgado-Negrete et al. 2013, Valladares et al. 2014), which can be used to predict the responses of communities to environmental change (Paine et al. 2011, Violle et al. 2012, Lohbeck et al. 2013).
Differences in phenotypic and physiological responses are associated with the geographical locations of populations at local or regional scales (Albert et al. 2010, Nicotra et al. 2011, Fajardo & Piper 2011). Leaves are organs that are exposed to different environmental factors, and it is reasonable to expect that their morphology and structure represent the responses of the plants to local conditions, such as water availability or light intensity, as well as intra- and interspecific interactions (Castro-Díez et al. 1997, Bruschi et al. 2003, Lambrecht & Dawson 2007, Cuevas-Reyes et al. 2018).
Rainfall deficit and seasonality are important determinants of the structure, composition and physiognomy of vegetation (Moles et al. 2014). Low precipitation rates promote changes in foliar traits that in turn reduce water loss and increase photosynthetic capacity, and thus high leaf densities impart dehydration tolerance (Niinemets 2001, McLean et al. 2014). Plants that inhabit seasonal forests have mechanisms that allow them to remain unharmed by extended periods of drought, reducing carbon absorption as a result of the strong control of stomatal conductance and canopy deciduousness (Rossatto et al. 2013). On the other hand, temperature also affects the energy balance of leaves as well as the metabolic rate of plants (Moles et al. 2014). High temperatures associated with high solar incidence promote an increase in leaf thickness and a low specific leaf area, which reduce damage to leaf tissue from the sun (Leigh et al. 2012, McLean et al. 2014). Specific leaf area is related to the photosynthetic efficiency of plants and is considered to be very important for the biogeochemical cycles of forests (Meier & Leuschner 2008). It is also related to changes in leaf density and thickness (Gouveia & Freitas 2009), which, in turn, are affected by both precipitation and temperature gradients.
Different ecological and evolutionary studies have suggested that temperature and precipitation are the main determinants of plant morphological features on a global scale (Moles et al. 2014). However, leaf phenotypic variability can also be explained by latitudinal and elevational gradients (Tang & Ohsawa 1999). Previous studies have documented the importance of geographic and environmental factors as regulators of plant structure and morphology and species colonization and establishment in different habitats (Bruschi et al. 2003, Díaz & Cabido 2001). In particular, the variation in foliar traits in oak species has been correlated with specific environmental factors such as temperature and precipitation at different spatial scales, suggesting plastic responses or adaptive genetic differentiation within and among populations (Balaguer et al. 2001, Uribe-Salas et al. 2008, Aguilar-Romero et al. 2016, Rodríguez-Gómez et al. 2018, Albarrán-Lara et al. 2019).
Oak species (Fagaceae, Quercus) occur in a wide variety of habitats ranging from temperate to tropical forests and in both humid and dry conditions along a wide geographical range in the Northern Hemisphere, which has promoted remarkable morphological variation. The high morphological diversity of oaks has been of great interest in taxonomic (Valencia-A 2004, Rodríguez-Rivera & Romero-Rangel 2007, Martínez-Cabrera et al. 2011) and ecological studies analyzing the patterns of variation in morphological traits in relation to environmental gradients (González-Rodríguez & Oyama 2005, Uribe-Salas et al. 2008).
In this study, we analyzed the leaf morphological variation in populations of Quercus elliptica Née (Fagaceae) to determine the degree of population differentiation across its geographic distribution in Mexico and Central America. Quercus elliptica occurs in very diverse habitat types from tropical deciduous forests at low altitudes to humid temperate forests at higher altitudes. Therefore, this red oak species represents an ideal system for testing the effects of environmental variables on morphological and functional traits along latitudinal and altitudinal gradients. We evaluated population differentiation using ecological niche analysis and projection with distribution models.
Material and methods
Study species. Quercus elliptica Née is a red oak species widely distributed in Mexico ranging from southern Sinaloa to Nayarit, Jalisco, Guerrero, State of Mexico, Oaxaca, Veracruz and Chiapas, and into Central America (Figure 1). Quercus elliptica occurs under many types of environmental conditions in a wide elevational range between 500 and 3,100 m in canyons to plains and in pine-oak, oak, cloud and deciduous forests (Romero-Rangel et al. 2002, Valencia-A 2004). This tree reaches a height of up to 20 m with a trunk diameter of up to 60 cm. Quercus elliptica is a deciduous species with mature coriaceous leaves and elliptical-narrow or elliptical-wide shapes (Rodríguez-Rivera & Romero-Rangel 2007). The petiolate leaves have fasciculate trichomes with 5-7 rays and a short stipe, sometimes with crushed hairs, mainly near the primary veins (González-Villarreal 1986, Rodríguez-Rivera & Romero-Rangel 2007) and sometimes stellate trichomes on the middle vein.
Plant collection. A database of populations of Q. elliptica with geographical and environmental information was constructed using data from the National (MEXU) and Bajío (IEB) herbariums. On the basis of this information, we selected 41 populations representing the entire geographical distribution of Q. elliptica ranging from Sinaloa and Veracruz (Mexico) to Central America (Honduras) (Table 1, Figure 1). Fifteen mature leaves of 10 different individuals that were without apparent leaf damage and exposed to sunlight were collected from each population, except in Tlatlauquitepec, Guerrero (only five individuals), and Esperanza, Honduras (seven individuals). Sampling was carried out during the rainy season (June-August) in 2016 and 2017. We selected leaves from the lower branches of each sampled tree, and the leaves were pressed for further morphological measurements.
Population | State / Country | Code | Latitude | Longitude | Vegetation | Elevation (m) |
---|---|---|---|---|---|---|
Tecalitlán | Jalisco | J7 | 19.27 | -103.27 | POF | 2002 |
Los Mazos | Jalisco | J6 | 19.70 | -104.39 | POF | 1362 |
Maple | Jalisco | J5 | 20.26 | -104.78 | POF | 1283 |
Talpa | Jalisco | J2 | 20.40 | -104.88 | OF | 1415 |
Juquila | Oaxaca | O4 | 16.54 | -97.18 | OPJF | 1752 |
Loxicha | Oaxaca | O5 | 15.96 | -96.45 | DLF | 1115 |
Yolox | Oaxaca | O1 | 17.59 | -96.55 | OF | 1849 |
Numi | Oaxaca | O2 | 17.33 | -96.72 | POF | 2192 |
Chilapa | Guerrero | G2 | 17.60 | -99.09 | POF | 2058 |
Tlatlauquitepec | Guerrero | G3 | 17.58 | -98.75 | POF | 1911 |
Aobispo | Guerrero | G5 | 17.31 | -99.47 | DLF | 1041 |
Ayutla | Guerrero | G6 | 16.97 | -99.12 | DLF | 365 |
Carrizal | Guerrero | G4 | 17.54 | -99.89 | POF | 2058 |
Tlacotepec | Guerrero | G1 | 17.70 | -99.93 | OF | 1913 |
Loberas | Sinaloa | S1 | 23.47 | -105.83 | POF | 1719 |
Potrerillos | Sinaloa | S2 | 23.45 | -105.83 | POF | 1326 |
Huajicori | Nayarit | N1 | 22.70 | -105.20 | POF | 1430 |
Nayar | Nayarit | N2 | 22.12 | -104.80 | POF | 1269 |
Cuarenteno | Nayarit | N4 | 21.47 | -105.00 | POF | 1624 |
San Blas | Nayarit | N3 | 21.52 | -105.04 | DLF | 1109 |
Xalisco | Nayarit | N5 | 21.43 | -104.95 | OF | 1401 |
Tuito | Jalisco | J3 | 20.35 | -105.31 | DLF | 771 |
Provincia | Jalisco | J4 | 20.34 | -105.28 | DLF | 1221 |
Sebastián | Jalisco | J1 | 20.75 | -104.83 | POF | 1587 |
Lachiguirri | Oaxaca | O3 | 16.73 | -95.52 | OF | 1330 |
Sinai | Chiapas | CH3 | 16.47 | -91.93 | CF | 1911 |
Motozintla | Chiapas | CH7 | 15.31 | -92.28 | CF | 1768 |
Ocozocuautla | Chiapas | CH1 | 17.17 | -93.12 | OF | 1925 |
Antenas | Chiapas | CH4 | 16.41 | -94.02 | DLF | 821 |
Josefa Ortiz | Chiapas | CH5 | 16.34 | -93.64 | DLF | 953 |
Tuxtla | Chiapas | CH2 | 16.81 | -93.18 | DLF | 896 |
Triunfo | Chiapas | CH6 | 15.85 | -92.94 | DLF | 744 |
Zongolica 1 | Veracruz | V2 | 18.66 | -97.02 | CF | 1545 |
Zongolica 2 | Veracruz | V3 | 18.65 | -97.02 | CF | 1401 |
Coscomatepec | Veracruz | V1 | 19.09 | -97.02 | DLF | 1527 |
Nanchititla | Estado de México | M1 | 18.88 | -100.34 | POF | 2016 |
Purulha | Honduras | HO5 | 14.12 | -88.70 | POTF | 1487 |
Celaque | Honduras | HO2 | 14.58 | -88.70 | POTF | 2392 |
Marcalá | Honduras | HO1 | 14.74 | -88.72 | POTF | 1110 |
Esperanza | Honduras | HO4 | 14.29 | -88.10 | POTF | 1839 |
Achiote | Honduras | HO3 | 14.44 | -87.54 | POTF | 1560 |
Morphological and functional traits. In total, 4,017 leaves from 402 trees from 41 populations were measured considering 15 morphological and functional traits. Highly correlated morphological and functional traits were eliminated to avoid collinearity in subsequent analyses. After this procedure, four leaf morphological traits (i.e., leaf length: L, leaf width: Wi, petiole length: PL and the leaf length / leaf width ratio: LWR) and three functional traits (i.e., leaf thickness: T, leaf weight: We and specific leaf area: SLA) were selected (Table 2). These morphological traits were used because they represent standardized measurements of plant functional traits (Pérez-Harguindeguy et al. 2013), and were previously reported for different oak species (Kremer et al. 2002, Bruschi et al. 2003, Ponton et al. 2004, Tovar-Sánchez & Oyama 2004, González-Rodríguez & Oyama 2005, Albarrán-Lara et al. 2010, Martínez-Cabrera et al. 2011, Viscosi et al. 2012).
Traits | Description |
---|---|
Morphological traits | |
L | Leaf length |
Wi | Leaf width |
PL | Petiole length |
LWR | Leaf length/leaf width ratio |
Functional traits | |
We | Leaf weight |
T | Leaf thickness |
SLA | Specific leaf area |
Bioclimatic variables | |
BIO1 | Annual mean temperature |
BIO4 | Temperature seasonality (standard derivation*100) |
BIO11 | Mean temperature of the coldest quarter |
BIO12 | Annual precipitation |
BIO15 | Precipitation seasonality |
BIO17 | Precipitation of the driest quarter |
Latitude | |
Longitude | |
Elevation | |
Aridity |
Environmental variables. To analyze the differences in environmental variables among the populations of Q. elliptica, we obtained climatic information for each record using data for 19 climatic variables with a 0.08° resolution available through the WorldClim database (Hijmans et al. 2005 www.worldclim.org). Highly correlated bioclimatic variables were eliminated to avoid collinearity in subsequent analyses. After this procedure, six variables were considered in the analysis (Table 2). In addition, values of an aridity index that considers evapotranspiration potential and solar radiation per unit area were obtained (Zomer et al. 2008, Trabucco & Zomer 2009). Finally, elevation, latitude and longitude were used as geographic variables.
Statistical data analysis. Pearson correlation analysis was performed to identify the relationships between leaf morphological and functional traits and environmental variables. To determine the differences in leaf morphological and functional traits among populations of Q. elliptica, we used an ANOVA for each variable, and a Tukey-Kramer test was conducted for a posteriori comparison using SAS (Stokes et al. 2000).
A discriminant function analysis (DFA) was performed using the morphological traits measured in the 4,017 leaves to determine the differences among populations and identify the most important morphological variables distinguishing groups or populations. Both the population centroids and the percentage of correct allocation among populations were considered in the analysis.
Redundancy analysis (RDA) was performed considering two sets of environmental data: one set that includes the eight bioclimatic variables without high collinearity and another containing three geographical variables (elevation, longitude and latitude). To evaluate the contributions of geography and climate to leaf morphological variation, the following models were constructed: a) a complete model that included both the climatic and geographical variables (full redundancy analysis (FRDA): space + climate); b) a partial model that considered the climatic variables as controls of geographical effects (PRDA1: climate | space); and c) a partial model that considered geographical variables as controls of climatic effects (PRDA2: space | climate). We calculated the joint contributions of climate and geography. In this way, the RDA allowed us to identify those variables that have the most importance (climate or geography) in the variation in Q. elliptica.
We used a generalized linear model (GLM) to evaluate the effects of the climatic variables on the leaf traits (response variables). The GLM was used to predict the probability of occurrence of Q. elliptica throughout its distribution. We identified the contribution of each of the variables and their levels of significance (P < 0.05) as well as the confidence interval for each of the variables. All statistical analyses were performed with SPSS v.23 (IBM Corp 2015) and a statistical environment R (R Core Team 2014).
Ecological niche modeling. Considering the occurrences of the 41 populations of Q. elliptica, we predicted the distribution of this species based on the different morphological groups previously identified in the statistical analyses. For the modeling process, the WorldClim layers were used to cut the mask defined by the biogeographic provinces in which species is distributed (Sierra Madre Occidental, Sierra Madre del Sur, Sierra Madre de Oaxaca, the Trans-Mexican Volcanic Belt, the Coastal Plain of the Pacific and Serranías Transístmicas). According to Pearson et al. (2007), we chose 10 randomized subsets containing 60 % of the records to model the whole distribution of Q. elliptica (i.e., 25 records) and each morphological group separately (i.e., 12 records for the Pacific group and 13 records for the Gulf of Mexico group) using MaxEnt software (Phillips & Dudik 2008) with the default convergence threshold and a maximum number of iterations of 1,000 for each of the 10 replicates. Each map obtained for each replicate with MaxEnt was binarized according to the following procedure: we extracted the probability of each model obtained with 50 % of the records that were not used in the generation of the model to set the probability thresholds, ensuring not to omit the values for the records used to generate the model.
To test the concordance between the models obtained for Q. elliptica and the sampled records, we used the kappa index proposed by Cohen (1960) and the area under the curve (AUC) value (< 0.7 indicating low representation in the models and ≥ 0.9 indicating the best models) following Pearce & Ferrier (2000) and Wollan et al. (2008). We also conducted a jackknife test in MaxEnt that stresses the importance of each variable in the model construction; variables with high values indicated a greater contribution to the model and a higher influence on AUC values than those with lower values (Wollan et al. 2008).
Results
Some leaf morphological variables were correlated with some environmental variables (Table 3). Leaf length (L) was negatively correlated with elevation (r = -0.379, P < 0.01) and positively correlated with temperature seasonality (r = 0.526, P < 0.01). A significant positive relationship was observed between leaf thickness (T) and precipitation seasonality (r = 0.478, P < 0.01), and a significant negative relationship was observed between specific leaf area (SLA) and precipitation seasonality (r = -0.527, P < 0.01). Similarly, a significant positive relationship was observed between SLA and precipitation of the driest quarter (r = 0.509, P < 0.01) and the aridity index (r = 0.391, P < 0.05), and a negative relationship was observed between leaf weight (We) and the aridity index (r = -0.323, P < 0.05) (Table 3; Figure 2).
Character | BIO1 | BIO4 | BIO11 | BIO12 | BIO15 | BIO17 | Latitude | Longitude | Elevation | Aridity |
---|---|---|---|---|---|---|---|---|---|---|
Morphological traits | ||||||||||
L | 0.526** | 0.045 | -0.379** | -0.095 | ||||||
Wi | 0.431** | -0.012 | 0.023 | 0.100 | ||||||
PL | 0.340* | -0.331* | 0.061 | -0.071 | -0.358* | |||||
LWR | 0.348* | 0.109 | 0.310* | -0.143 | 0.582** | -0.464** | -0.409** | |||
LL/PLR | -0.102 | 0.002 | ||||||||
Functional traits | ||||||||||
We | 0.394** | 0.161 | 0.518** | -0.416** | 0.353* | -0.431** | -0.210 | -0.323* | ||
T | -0.108 | 0.478** | 0.481** | -0.593** | -0.041 | |||||
SLA | 0.141 | -0.284 | -0.527** | 0.509 | 0.432** | -0.075 | 0.391** |
* The correlation is significant at P < 0.05
** The correlation is significant at P < 0.01
The ANOVA tests showed differences in all leaf morphological and functional traits among the populations (Table 4). Leaf width, leaf length/width ratio, leaf thickness, leaf weight and specific leaf area differed among the populations, showing the separation of two groups: the Pacific and Gulf of Mexico populations (Table 5). The separation between these two groups was not evident for the other morphological traits.
Populations | L | Wi | PL | We | T | LWR | LL/LWR | SLA |
---|---|---|---|---|---|---|---|---|
F = 58.6 | 47.8 | 40.4 | 19.7 | 105.78 | 11.5 | 36.31 | 42.43 | |
P < 0.0000 | 0.0001 | 0.0001 | 0.0001 | 0.0000 | 0.0001 | 0.0001 | 0.0001 | |
S1 | 102.7 ± 1.9a | 37.6 ± 0.7a | 5.8 ± 0.2a | 0.5 ± 0.01a | 0.4 ±0.006a | 2.8 ± 0.1a | 19.1 ± 0.8a | 6095.8 ± 23a |
S2 | 110.8 ± 1.9b | 37.0 ± 0.7a | 4.6 ± 0.1b | 0.7 ± 0.03b | 0.3 ± 0.006a | 3.0 ± 0.1a | 26.4 ± 0.8b | 6,768.6 ± 220.1b |
N1 | 108.5 ± 2.1b | 40.5 ± 0.8b | 6.1 ± 0.2a | 0.4 ± 0.03a | 0.3 ± 0.001a | 2.7 ± 0.1a | 19.1 ± 0.9a | 6,025.9 ± 258.1a |
N2 | 121.5 ± 1.9c | 38.0 ± 0.7a | 4.3 ± 0.2b | 0.7 ± 0.03b | 0.3 ± 0.006a | 3.3 ± 0.1b | 30.2 ± 0.8c | 6,294.5 ± 230.8c |
N3 | 122.6 ± 1.9c | 37.8 ± 0.7a | 4.3 ± 0.2b | 0.6 ± 0.03b | 0.3 ± 0.006a | 3.7 ± 0.1c | 30.3 ± 0.8c | 6,800.10 ± 230.8b |
N4 | 107.9 ± 1.9b | 35.1 ± 0.7c | 5.5 ± 0.2a | 0.5 ± 0.03a | 0.3 ± 0.006a | 3.1 ±0.1a | 20.9 ± 0.8a | 7,154.2 ± 230.8b |
N5 | 110.3 ± 1.9b | 31.8 ± 0.7d | 4.9 ± 0.1b | 0.5 ± 0.03a | 0.3 ± 0.006a | 3.9 ± 0.1c | 24.0 ± 0.8b | 6,175.9 ± 230.8c |
J1 | 111.4 ± 1.9b | 33.6 ± 0.7d | 4.4 ± 0.2b | 0.5 ± 0.3a | 0.3 ± 0.006a | 3.4 ± 0.1b | 26.4 ± 0.8e | 5,965.3 ± 230.8c |
J2 | 93.9 ± 1.9d | 36.4 ± 0.7c | 4.2 ± 0.2b | 0.4 ± 0.03a | 0.2 ± 0.001b | 2.6 ± 0.1a | 23.2 ± 0.8b | 6,450.2 ± 230.8c |
J3 | 117.3 ± 1.9c | 36.3 ± 0.7c | 4.9 ± 0.2b | 0.6 ± 0.03b | 0.3 ± 0.006a | 3.3 ± 0.1b | 24.9 ± 0.8b | 6,279.5 ±230.8c |
J4 | 93.8 ± 1.87d | 36.0 ± 0.7c | 7.1 ± 0.2c | 0.7 ± 0.03c | 0.4 ± 0.006a | 2.8 ± 0.1a | 15.4 ± 0.8d | 4,822.5 ± 220.1d |
J5 | 109.5 ± 2.2b | 41.2 ± 0.8b | 4.0 ± 0.2b | 0.6 ± 0.02b | 0.2 ± 0.007b | 2.7 ± 0.1a | 27.8 ± 0.8e | 6,743.2 ± 258.2b |
J6 | 103.2 ± 1.9a | 36.3 ± 0.7c | 3.7 ± 0.2d | 0.4 ± 0.03a | 0.2 ± 0.006b | 2.9 ± 0.1b | 28.7 ± 0.7e | 6,973.9 ± 230.8b |
J7 | 102.3 ± 1.9a | 35.6 ± 0.7c | 4.6 ± 0.1b | 0.4 ± 0.02a | 0.1 ± 0.006c | 3.0 ± 0.1b | 24.0 ± 0.7b | 7,212.0 ± 230.8b |
V1 | 80.5 ± 1.9e | 29.7 ± 0.7d | 2.2 ± 0.1e | 0.3 ± 0.02d | 0.1 ± 0.006c | 2.7 ± 0.1a | 39.7± 0.7f | 7,702.3 ± 230.8e |
M1 | 91.0 ± 1.9d | 26.5 ± 0.7e | 4.1 ± 0.1b | 0.4 ± 0.2a | 0.2 ± 0.006b | 3.6 ± 0.1c | 25.4 ± 0.7b | 6,186.2 ± 23c |
V2 | 82.7 ± 1.9e | 31.0 ± 0.7d | 3.4 ± 0.1d | 0.3 ± 0.02d | 0.2 ± 0.006b | 2.7 ± 0.1a | 25.7 ± 0.7b | 7,118.1 ±230.8b |
V3 | 91.4 ± 1.9d | 33.9 ± 0.7d | 3.3 ± 0.1d | 0.3 ± 0.02d | 0.2 ± 0.006b | 2.7 ± 0.1a | 29.1 ± 0.7d | 8,960.7 ± 230.8f |
G1 | 85.8 ± 1.9f | 31.7 ± 0.7d | 4.0 ± 0.1b | 0.6 ± 0.2b | 0.4 ± 0.006a | 3.1 ± 0.1a | 25.6 ± 0.7e | 3,476.7 ±230.8g |
G2 | 80.2 ± 2.1e | 30.0 ± 0.8d | 4.1 ±0.2b | 0.5 ± 0.03a | 0.4 ± 0.006b | 3.0 ± 0.1a | 20.9 ± 0.8a | 3,650.8 ± 243.3g |
O1 | 73.8 ± 2.0g | 32.1 ± 0.7d | 3.7 ±0.1d | 0.3 ±0.03d | 0.3 ± 0.006a | 2.3 ± 0.11d | 20.4 ± 0.7a | 6,283.9 ± 230.8c |
G3 | 77.3 ± 2.19g | 24.5 ± 0.8f | 4.8 ± 0.2b | 0.5 ± 0.02a | 0.3 ± 0.007a | 3.6 ± 0.1c | 17.3 ± 0.8d | 3,132.1 ± 258.1g |
G4 | 88.6 ± 2.0d | 27.7 ±0.8e | 5.0 ± 0.2b | 0.5 ± 0.03a | 0.3 ± 0.007a | 3.3 ± 0.1a | 19.9 ± 0.8a | 4,384.1 ± 258.1d |
O2 | 72.7 ± 1.9g | 34.2 ± 0.7d | 3.9 ± 0.1d | 0.4 ± 0.03a | 0.3 ± 0.006a | 2.2 ± 0.1d | 18.6 ± 0.8a | 4,781.3± 230.8d |
G5 | 87.5 ± 2.0d | 28.8 ± 0.7e | 4.4 ± 0.1b | 0.5 ± 0.02a | 0.3 ± 0.006a | 3.3 ± 0.1a | 22.1 ± 0.8b | 4,288.6 ± 230.8d |
C1 | 72.3 ± 1.9g | 30.7 ±0.74d | 4.6 ± 0.1b | 0.3 ± 0.02d | 0.2 ± 0.006b | 2.4 ± 0.1d | 16.2 ± 0.d | 6,434.6 ± 230.8c |
G6 | 97.6 ± 1.9a | 32.7 ± 0.7d | 5.1 ±0.1b | 0.5 ± 0.03a | 0.3 ± 0.006a | 3.1 ± 0.1a | 22.2 ± 0.8b | 5,154.2 ± 220.0b |
C2 | 91.6 ± 2.1d | 35.4 ±0.8c | 4.9 ±0.2b | 0.4 ± 0.03a | 0.2 ± 0.006b | 2.6 ± 0.1d | 18.8 ± 0.8a | 6,768.3 ± 243.3c |
O3 | 97.3 ± 1.9a | 35.4 ± 0.7c | 4.6 ± 0.1b | 0.4 ± 0.03a | 0.2 ± 0.006b | 2.8 ± 0.1a | 20.0 ± 0.8a | 7,821.0 ± 230.8c |
O4 | 91.9 ± 1.9d | 26.7 ± 0.7e | 4.0 ± 0.1d | 0.5 ± 0.03a | 0.3 ± 0.006a | 3.6 ± 0.1c | 25.9 ± 0.8e | 4,875.3 ± 230.8d |
C3 | 72.2 ± 1.9g | 27.2 ± 0.7e | 3.3 ±0.1d | 0.2 ±0.02d | 0.2 ± 0.006b | 2.7 ± 0.1a | 22.8 ± 0.8b | 7,169.1± 230.8c |
C4 | 88.2 ± 1.9d | 32.6 ±0.7d | 6.9 ± 0.1c | 0.3 ± 0.03d | 0.2 ± 0.006b | 2.7 ± 0.1a | 13.7 ± 0.8f | 8,292.0 ± 230.8e |
C5 | 116.1 ± 1.9c | 38.5 ± 0.7b | 5.3 ±0.1b | 0.4 ± 0.03a | 0.2 ± 0.006b | 3.0 ± 0.1a | 22.4 ± 0.8b | 8,963.2 ±230.8f |
O5 | 95.4 ± 2.1a | 28.2 ± 0.8e | 5.5 ± 0.2b | 0.5 ± 0.03a | 0.3 ± 0.006 a | 3.5 ± 0.1c | 18.4 ± 0.8a | 4,461.8 ± 243.3d |
C6 | 108.9 ± 1.9b | 37.8 ±0.7b | 5.5 ± 0.1b | 0.5 ± 0.03a | 0.2 ±0.001b | 2.9 ± 0.1a | 20.4 ± 0.8a | 6,952.2 ± 230.8c |
C7 | 74.5 ± 1.9g | 26.9 ± 0.7e | 3.8 ± 0.1d | 0.2 ± 0.03d | 0.2 ± 0.004b | 2.8 ± 0.1a | 20.7 ± 0.8s | 7,381.7±230.8e |
H1 | 102.9 ± 1.9a | 40.0 ± 0.7b | 5.4 ± 0.1b | 0.5 ± 0.03a | 0.2 ± 0.006b | 2.6 ± 0.1d | 20.5 ± 0.8a | 7,261.0 ±230.8e |
H2 | 107.5 ± 1.9b | 41.8 ±0.7b | 4.9 ± 0.1b | 0.4 ± 0.03a | 0.2 ± 0.002b | 2.6 ± 0.1d | 24.3 ± 0.8b | 9,794.1 ± 230.8f |
H3 | 126.4 ± 1.9h | 48.9 ± 0.8f | 4.6 ± 0.1b | 0.6 ± 0.03b | 0.2 ± 0.003b | 2.6 ± 0.1d | 28.5 ± 0.8e | 8,488.0 ± 233.1d |
H4 | 117.3 ± 1.9c | 43.2 ± 0.1b | 5.1 ± 0.1b | 0.5 ±0.02a | 0.2 ± 0.006b | 2.7 ± 0.1d | 24.3 ± 0.8b | 8,393.4 ± 230.8d |
H5 | 102.3 ± 1.9a | 39.9 ± 0.7b | 4.7 ± 0.1b | 0.5 ± 0.03a | 0.2 ± 0.002b | 2.6 ± 0.1d | 24.2 ± 0.8b | 7,130.8 ± 230.8e |
The discriminant function analysis (DFA) identified two main groups: populations distributed along the Pacific coast in tropical deciduous or subdeciduous forests (hereafter the Pacific group) and populations distributed along the Gulf of Mexico and in southern Mexico and Central America occurring in temperate, mixed and cloud forests and tropical humid or subhumid forests (hereafter the Gulf of Mexico group) (Figure 3). The first axis of the discriminant function (DF1) explained 49.7 % of the variation in the 4,017 leaves analyzed. Leaf thickness was the most important plant trait for DF1 (r = 0.541, P < 0.01). Finally, it is important to mention that the leaf shape ratio (length/width) is a variable that varies considerably depending on precipitation. Leaves that were longer than wider were found in the Pacific group populations, and they were also thicker with lower specific leaf area values, while the leaves of the populations of the Gulf of Mexico group had a smaller leaf length/leaf width ratio, lower thickness and higher specific leaf area values.
The first two axes of the full redundancy analysis (FRDA), which included geographic and environmental variables, explained a significant proportion of the leaf variation (51.32 %) (F = 4.7, P < 0.001) (Figure 4). According to the redundancy analysis (RDA), climate explained 21.58 % of the variation, geography explained 21.17 %, and the interaction between climate and space explained only 8.57 %. In both, partial RDA1 (climate as a control of geography) and RDA2 (space as a control of climate) were both significant only for their first axes (F =10.9, P < 0.002 and F =12.3, P < 0.001, respectively). On the first axis of the FRDA, the seasonality of temperature (F = 7.0, P < 0.001) and latitude (F = 9.5, P < 0.001) were the main variables explaining the leaf variation, and these two variables were the most important variables according to RDA1 (F = 10.021, P < 0.001) and RDA2 (F = 9.469, P < 0.001), respectively. For the second axis, the principal variables were seasonality of precipitation (F = 5.9, P < 0.003), aridity (F = 5.1, P < 0.006) and elevation (F = 3.5, P < 0.015). The most important morphological variables were specific leaf area and leaf width for the first axis and the lengths of both the lamina and petiole for the second axis.
The generalized linear model (GLM) showed differences in some morphological traits between the two identified groups (Group 1: the Pacific group populations; Group 2: the Gulf of Mexico group) (Table 5). Leaves in the Pacific group were thicker, heavier with a lower specific leaf area. Leaves in the Gulf of Mexico group were wider and with a lower leaf length - leaf width ratio (Table 5).
Trait | Group | Mean | SE | F | P |
---|---|---|---|---|---|
L | 1 | 98.76 | 14.67 | 0.363 | 0.551 |
2 | 95.89 | 15.83 | |||
Wi | 1 | 32.66 | 4.70 | 4.27 | 0.04 |
2 | 35.97 | 5.50 | |||
LP | 1 | 4.87 | 0.81 | 2.43 | 0.127 |
2 | 4.42 | 1.02 | |||
LWR | 1 | 3.04 | 0.34 | 20.74 | 0.000 |
2 | 2.66 | 0.16 | |||
LL/LPR | 1 | 20.66 | 3.88 | 1.76 | 0.191 |
2 | 22.51 | 4.97 | |||
We | 1 | 0.53 | 0.08 | 21.21 | 0.000 |
2 | 0.39 | 0.11 | |||
T | 1 | 0.33 | 0.07 | 29.86 | 0.000 |
2 | 0.22 | 0.06 | |||
SLA | 1 | 4,977.27 | 114.58 | 52.22 | 0.000 |
2 | 7,328.94 | 936.63 |
The GLM analysis of the environmental variables also indicated significant differences among the populations of the two groups identified in the DFA. Populations of the Pacific group experienced a higher seasonality precipitation and the Gulf of Mexico group showed higher annual precipitation.
We obtained the best environmental niche models (ENMs) for the Pacific and Gulf of Mexico groups considering the highest values obtained for the kappa index of each replicate subset (Figure 5). The ENMs with the lowest kappa values were obtained for Q. elliptica (all populations) and the Pacific group populations (the kappa values for the best models were 0.61 and 0.611, respectively), while the highest values were obtained for the Gulf of Mexico group when the Jalisco populations were not considered (the kappa value for the best model was 0.706) (Table 6). The most important variables in the ENM for Q. elliptica (all populations) were elevation, aridity, mean annual temperature and annual rainfall; the most important variables in the ENM for the Pacific group were mean annual temperature, seasonality and elevation; and the most important variables in the ENM for Gulf of Mexico group were rainfall in the driest quarter and rainfall seasonality (Table 6). The ENMs for the Gulf of Mexico and Pacific groups significantly overlap in the western and central regions of the Trans-Mexican Volcanic Belt and western of the Sierra Madre del Sur.
Q. elliptica | Pacific group | Gulf of Mexico group | |||||||
---|---|---|---|---|---|---|---|---|---|
Rep | AUC | kappa | jacknife | AUC | kappa | jacknife | AUC | kappa | jacknife |
1 | 0.931 | 0.585 | ele,BIO01 | 0.942 | 0.564 | BIO15,BIO17 | 0.913 | 0.357 | BIO04,BIO01 |
2 | 0.939 | 0.585 | ele,BIO01,BIO11,BIO12 | 0.971 | 0.610 | BIO15,BIO17 | 0.93 | 0.255 | BIO04,BIO01,ele |
3 | 0.936 | 0.561 | ele,BIO01,BIO11,BIO12 | 0.908 | 0.470 | BIO15,BIO17 | 0.866 | 0.456 | BIO04,BIO01 |
4 | 0.933 | 0.512 | ele,BIO01,BIO11,aridity | 0.926 | 0.518 | BIO15,BIO17 | 0.876 | 0.506 | BIO04,BIO01 |
5 | 0.929 | 0.488 | ele,aridity,BIO12 | 0.939 | 0.469 | BIO15,BIO17 | 0.923 | 0.456 | BIO04,BIO01 |
6 | 0.944 | 0.488 | ele,aridity,BIO12,BIO01 | 0.957 | 0.611 | BIO15,BIO17 | 0.934 | 0.356 | BIO04,BIO01,BIO11,ele |
7 | 0.943 | 0.39 | ele,BIO01,BIO11,aridity | 0.921 | 0.470 | BIO15,BIO17 | 0.925 | 0.706 | BIO01,BIO04,ele |
8 | 0.925 | 0.512 | ele,BIO15,BIO12 | 0.926 | 0.423 | BIO15,BIO17 | 0.909 | 0.357 | BIO04,BIO01 |
9 | 0.939 | 0.537 | ele,ari,BIO01,BIO11BIO,12 | 0.903 | 0.375 | BIO15,BIO17 | 0.928 | 0.606 | BIO04,BIO01 |
10 | 0.948 | 0.610 | ele,ari,BIO01,BIO11,BIO12 | 0.934 | 0.470 | BIO15,BIO17 | 0.929 | 0.706 | 01,04,11,ele |
Discussion
In this study, the relative importance of two sets of driving variables (i.e., environmental and geographical) on the morphology and function of leaves was analyzed. It was demonstrated that precipitation and its seasonality are environmental factors that are associated with morphological variation in Q. elliptica, an oak species that occurs in different types of forests. Tropical forests differ in their seasonality in terms of the length of the dry and wet seasons, which can affect the morphological and functional variation in plants, promoting changes in the hydraulic structure of leaves (i.e., leaf thickness and specific leaf area) in response to water stress and affecting phenological patterns and the content of secondary metabolites used in plant structure or defense (Ackerly 2004, Moles et al. 2014).
Variation in morphological and functional traits along environmental gradients. It has been documented that the leaf morphological variability of species along elevational gradients is related to environmental factors (Velázquez-Rosas et al. 2002). Uribe-Salas et al. (2008) identified a strong relationship between morphological features and environmental factors (mainly temperature). Leaf morphology and structure can be affected by microclimatic conditions such as temperature, solar incidence and humidity. In some cases, leaves that are exposed to the sun have a smaller foliar area and are thicker and more lobed than those that grow in shaded conditions (e.g., basal strata of the canopy) (Mitchell et al. 1999, Klich 2000, Bruschi et al. 2003, Valladares et al. 2014). Leaves in different strata of the tree absorb, intercept and reflect light differently, which also influences leaf physiological processes (Ellsworth & Reich 1993).
We identified that the longest leaves with the highest leaf areas were not necessarily located in areas with high precipitation, as reported in some studies (Gouveia & Freitas 2009, Ramírez-Valiente et al. 2015). Meier & Leuschner (2008) showed that the leaf surface area decreased when precipitation increased, but in their conclusions, they mentioned that this may be because leaf size in Fagus sylvatica can respond more to changes in temperature than to changes in precipitation. According to the RDA, leaf length was found to be related to the seasonality of temperature, which may explain why the temperature could influence the variation in populations, although to a lesser extent. Additionally, leaf area decreases when the incidence of light increases (Niinemets 2001). Furthermore, the leaf support (petiole length) angle is an important feature that responds to the incidence of light reaching different canopy trees; a smaller petiole will result in more overlap of the leaves and a lower uptake of light (González-Rodríguez et al. 2004). It is also observed that there is a relationship between the morphological variables of specific leaf area (SLA) and the leaf length-width ratio (LWR) associated with geographical factors, such as latitude, longitude, altitude and precipitation-dependent variables (i.e., BIO12 and BIO17). We observed that both the SLA and the precipitation levels decline as latitude increases, as mentioned by Rico-Gray & Palacios-Ríos (1996).
It is important to mention that the leaf shape ratio (leaf length/leaf width) varies considerably depending on precipitation. Leaves that are longer than wider were found in the Pacific group, and they had great thickness and lower values of SLA, while the populations of the Gulf of Mexico group had leaves with a smaller leaf length/width ratio, higher SLA values and lower thickness.
Low SLA values were found in plants at localities with a low rainfall and marked seasonality between the dry and rainy seasons. These plants can reduce the excessive loss of water by evaporation and make water use more efficient, generating an important mechanism to address the scarcity of water resources (Ogaya & Peñuelas 2003, Wright et al. 2004, Aranda et al. 2014, McLean et al. 2014). Our results agree with several studies that mention that a decrease in SLA also implies changes in other traits, such as an increase in leaf thickness, because the latter implies a higher density of both palisade and spongy parenchyma (Aranda et al. 2014). Additionally, Rossatto et al. (2013) argued that leaves that grow in closed forests (such as those in the Gulf of Mexico group) have greater SLA values as an adjustment to take advantage of patches of light (Valladares & Niinemets 2008), while leaves in open sites with high incidence, such as those in the Pacific group have lower SLA values.
Population differentiation. Ecological speciation is common in diverse groups of plants (Rundle & Nosil 2005). In Q. elliptica, we detected leaf morphological differentiation among populations. We suggest that environmental factors can contribute to morphological divergence in key adaptive traits such as thickness, length and SLA, which also allows us to recognize at least two geographically separated and environmentally distinct groups: the Pacific and Gulf of Mexico groups.
Populations of Q. elliptica distributed along the Pacific coast occurred in seasonal deciduous, mixed and oak forests at elevations less than 1,200 m; morphologically, these populations had large but narrowly elliptical and thick leaves and with lower SLA values. In contrast, populations of the Gulf of Mexico group were characterized by inhabiting humid climates with little seasonality at elevations higher than 1,200 m (oak, temperate and tropical mixed, and cloud forests); morphologically, these populations had small and less thick broadly elliptical leaves with high SLA values.
According to the RDA, both latitude and longitude were almost as important as the environmental conditions in terms of the variation in Q. elliptica. Pearse & Hipp (2012) identified that variation in defense against herbivory in oaks corresponds to latitudinal gradients; however, this gradient is driven predominantly by climatic differences across latitudes. Frenne et al. (2013) argued that variations in multiple environmental factors with latitude or longitude can be complex since variation patterns can hide factors that can differ across a geographical gradient.
The ecological niche modeling procedure allowed us to model the whole distribution of Q. elliptica and the morphological groups identified according to other statistical analysis. The obtained model showed the overprediction of the area of distribution of the species due to the wide range of environmental conditions in which the species occurs, extending the potential area of distribution. The geographical filtering and correction of sampling biases allow the improvement of the results obtained by ENMs (Boria et al. 2014, Galante et al. 2018) in comparison to the use of large databases with geographical biases, which can increase the environmental complexity of the obtained models. In this study, we decided to use only those locations where at least 10 individuals were collected as a geographical filter to remove the sampling bias instead of using all occurrences recorded in global databases. In addition, to reduce the environmental complexity associated with a species of wide geographical and ecological distribution such as Q. elliptica, it was decided to independently model the distributions of the two morphologically groups; this allowed the overadjustment of the distribution of the species, improving the resulting ENM in a similar manner to the proposal of Shcheglovitova & Anderson (2013) and Galante et al. (2018).
The differences in the niches of these two groups were also important, although there is an overlap between the two groups in the western parts of the Trans-Mexican Volcanic Belt and the Sierra Madre del Sur. The most important variables in the generation of the models were the climatic factors that determine the differentiation of populations between the Pacific and the Gulf of Mexico coasts. Biogeographical studies have recognized the differentiation of various organisms between these two regions (Espinosa-Organista et al. 2006, 2008, Escalante et al. 2013, Halffter & Morrone 2017).
More experimental studies are needed to show that morphological divergence in plants represents the local adaptation of populations in response to diverse selective pressures (Leimu & Fischer 2008, Frenne et al. 2013). For example, studies on the physiological responses of the germinative capacity of acorns or the growth rate of seedlings in common garden experiments under different controlled conditions are needed, as suggested by Weltzin & McPherson (2000) and Aguilar et al. (2017).