Local adaptation of phenotypic stem traits distinguishes two provenance regions of silver birch in Latvia
Gailis A., Zeltiņš P., Matisons R., Purviņš A., Augustovs J., Vīndedzis V., Jansons Ā. (2021). Local adaptation of phenotypic stem traits distinguishes two provenance regions of silver birch in Latvia. Silva Fennica vol. 55 no. 2 article id 10524. https://doi.org/10.14214/sf.10524
Highlights
Abstract
Populations of tree species with a wide geographic range, such as silver birch (Betula pendula Roth), show genetic specialization to native environments, while maintaining high phenotypical plasticity. Accordingly, assessment of local specialization is essential for adaptive management. The aim of the study was to detect geographic patterns of local adaptation of growth and stem quality based on two open-pollinated progeny trials in Latvia testing local material. Two provenance regions differing by continentality were distinguished, which also differed in genetic control of growth traits, likely originating from the post-glacial recolonization of vegetation and subsequent natural adaptation. Heritability of the traits was estimated for each of the distinguished regions, indicating differing patterns of genetic adaptation and potential for future selection. Trees from the more continental inland showed superior growth and possessed higher heritability. The coastal provenance region showed slower growth and intermediate heritability of the respective traits. Moderate to high heritability for stem quality traits was estimated irrespectively of region. Overall, better growth and higher heritability suggests that anthropogenic selection within the best inland provenances may constitute better performing and adaptable breeding population compared to the coastal one. Still, overlapping phenotypical variation and heritability of quality traits implies improved stemwood quality for plywood regardless of the provenance region. High adaptive capacity of silver birch genotypes suggests ability to cope with climatic changes, highlighting its potential for climate-smart forestry.
Keywords
Betula pendula;
population genetics;
genetic parameters;
climate-smart forestry;
phenotypic traits
Received 8 February 2021 Accepted 30 April 2021 Published 11 May 2021
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Supplementary Files
Populations of tree species with wide geographic range, such as silver birch (Betula pendula Roth), show genetic specialization to native environments, while maintaining high phenotypical plasticity (Sultan 1987; Gapare et al. 2008). Silver birch has high genetic diversity, yet low population genetic differentiation (Hamrick et al. 1992; Palmé et al. 2003; Wesselink et al. 2018); e.g., 97% variation within the populations, and only up to 3% among them in the Eastern Baltic region (Zhuk et al. 2009). Nonetheless, explicit differentiation in phenotypic traits might be present due to strong local adaptation, and such genetic specialization is the precondition for successful breeding (Savolainen et al. 2007; Sork et al. 2013). In the Eastern Baltic region, silver birch is a highly important forest resource, especially for plywood industry (Hynynen et al. 2010; Liepins and Rieksts-Riekstins 2013). Accordingly, breeding programs are implemented throughout the region (Donaldson and Turner 2001; Heräjärvi 2001; Stener and Hedenberg 2003; Gailis et al. 2020).
Phenotypic traits have shown considerable genotypic variation in the Latvian silver birch breeding population (Gailis et al. 2020), yet the potential sub-regional differences have not been accounted. The species shows substantial ecological plasticity shaped by environmental contrasts (Koski and Rousi 2005; Savolainen et al. 2007), hence assessment of regional and sub-regional phenotypic differences (Falconer and Mackay 1996; Griffiths et al. 2000) is essential to improve efficiency of breeding (Malcolm and Worrell 2001). Bio-climatic zonation is commonly used to distinguish regional differences in tree growth, for example in classification of seed zones (Laiviņš and Melecis 2003; Hamann et al. 2011; Stakenas et al. 2012; Ge et al. 2013; Reitalu et al. 2013). However, the climatic zones might be different from the actual distribution of metapopulations of tree species. Different environmental conditions and the post-glacial history of vegetation interactively can result in spatially varying selection pressure, hence distinct phenotypic differences and genetic variance (Palmé et al. 2003; Väliranta et al. 2011; Tenkanen et al. 2020). Thus, assessment of the differences in phenotypes and specialization among forest provenances are still essential for clarification of provenance regions, which might not be detected by molecular markers (Karhu et al. 1996; Reed and Frankham 2001; O’brien et al. 2007; Wesselink et al. 2018).
Furthermore, the rapid pace of climate change rises concerns about the adaptative capacity of tree populations in the future (Aitken et al. 2008; Fady et al. 2020). Improved forest reproductive material enhances forest adaptation (Lefèvre et al. 2014) as a component of pro-active adaptive forest management (Bolte et al. 2009; Nabuurs et al. 2018). Considering the opportunistic (ruderal) nature of silver birch (Brzeziecki and Kienast 1994), fast growth and tolerance to weather fluctuation in the Eastern Baltic region (Liepiņš 2011; Jansons et al. 2016), a conservative climate-smart management approach may utilize improved local genotypes to enhance adaptability (Ahrens et al. 2020). Therefore, information about genetic variation and phenotypic plasticity reflecting adaptability of local seed sources (Lamy et al. 2011), is advantageous for more efficient breeding. The aim of the study was to distinguish sub-regional differences in strength of local adaptation in terms of growth and stem quality traits. We hypothesized that local bio-climate had an explicit effect on local adaptation, and two silver birch provenance regions could be delineated.
The study material consisted of the open-pollinated progenies of silver birch plus-trees from 31 forest provenances across Latvia (55°40´–58°05´N, 20°58´–28°14´E). The studied two parallel silver birch trials Taurene (57°06´N, 25°38´E) and Ukri (56°22´N, 23°07´E) contained progenies of the same sets of provenances and 533 half-sib families within them. The trials were established in 2000 on agricultural land with one-year-old containerized seedlings. The experimental design was complete randomized blocks of single-tree plots in 10 to 93 replications with 2 × 2.5 m initial spacing. Both trials were growing in mesotrophic conditions on dry silty soils. Climate was milder in the Ukri trial; the mean annual temperature was 6.4 °C, and the mean monthly temperature ranged from –4.4 °C to +17.4 °C in January and July, respectively; the mean annual precipitation was ca. 630 mm (Harris et al. 2020). In Taurene, the mean annual temperature was 5.1 °C, and the mean monthly temperature ranged from –6.3°C to +16.9 °C. The mean annual precipitation was ca. 670 mm (Harris et al. 2020).
At the age of 14 years, measurements of height (H) and diameter at breast height (DBH) were available for 11 657 and 18 804 trees in Taurene and Ukri trails, respectively. The occurrence of spike knots (SpKn), double leaders (Doubl), and lost top (LostTop) was recorded as binary variables. Stem straightness (StStr), overall stem quality (StQual), and branch angle (BrA) were assessed visually, using a 3-point ordinal scale (Gailis et al. 2020). Stem volume (StVol) was calculated according to a local equation (Liepa 1996).
We performed Principal Component Analysis to assess the main patterns in variation of scaled phenotypic traits of the studied silver birch provenances, and to associate them with the location of origin. Estimated marginal provenance means were obtained from mixed effects models:
, where yijk is the response variable, μ is the overall mean; Pi, Fj and Sk are the fixed effects of the provenance, the family, and the site, respectively. The bl and sfjk are the random effects of block and site × family interaction, respectively, and εijklm is the random residual effect. The significance of principal components (PC) was determined by the Monte Carlo (randomization) test performing 1000 iterations. Relationships of the studied traits and latitude/longitude with the first two PC were assessed by Pearson correlation analysis.
The phenotypic differences in the studied traits among the distinguished provenance regions were assessed using mixed models:
, where yijk is the response variable, Ri is the fixed effect of the provenance region, sj is the fixed effect of site, bk is the random effect of a block within a site, and εijk is the error.
To estimate the extent of genetic adaptation and genetically determined plasticity for each of the determined provenance regions, the variance components were estimated from the combined data from both trials, and narrow-sense heritability (h2) and additive genetic coefficient of variation (CVa) were calculated according to Falconer and Mackay (1996).
For the continuous quantitative variables (H, DBH, StVol), linear mixed effects models were used. For the binomial variables (SpKn, Doubl, LostTop), generalised linear mixed models applying binomial residual distribution and a “logit” link function were fitted. For the ordinal variables (StStr, StQual, BrA), ordinal logistic regression was applied (Long 1997). Data analysis was conducted in SAS v. 9.3 using the procedures PROC MIXED, PROC GLIMMIX, and PROC CORR (Littel et al. 2006; Piepho and Möhring 2011).
Distinct clustering of phenotypic traits was observed. The first two PCs were significant (p-value < 0.001) and corresponded for 57.6% of the total variance of the studied traits (Fig. 1). The third PC covered 19.8% of the variance and was related to stem defects – Lost and Doubl. The first PC was strongly related to the growth traits indicating regional differences in productivity (Fig. 1). The second PC was related to the quality traits, suggesting diverse sources of variation for growth and quality. In the ordination space, the provenances formed single group indicating continuous gradient in variation of the studied traits. Nevertheless, the first PC was significantly correlated with the longitude of origin of the provenances (r = 0.46, p = 0.01), suggesting growth differences between the coastal and inland parts of the country, while the second PC did not (r = 0.02, p = 0.92).
Correlations of the PCs with latitude of origin were weak (|r| < 0.22, p-value > 0.24), indicating absence of north-south gradient. Based on the scores of the first PC of provenances, which were overlain on their geographic locations, two regions of Latvia were arbitrarily distinguished (Fig. 2). The coastal region included the western and the very northern part of the country, while the inland region covered the central and eastern parts (Fig. 2). The inland region showed significantly (p-value < 0.01) higher H, DBH, and StVol (Table 1). The mean StStr, StQual, and BrA had no differences between regions. High occurrence of SpKn and LostTop was observed in both regions (49.2–59.1%), while trees with Doubl were less frequent, lacking practically meaningful differences between regions (Table 1).
Table 1. Regional means, minimum and maximum provenance means, narrow sense individual tree heritability and additive genetic coefficient of variation of the studied traits in the phenotypically distinguished provenance regions of silver birch in Latvia. Letters in uppercase denote significant differences (p ≤ 0.05) between provenance regions for each trait. | ||||||||
Trait | Regional mean ± standard deviation | Minimum provenance mean | Maximum provenance mean | Individual tree heritability h2 ± standard error (additive genetic coefficient of variation CVa, %) | ||||
Coastal | Inland | Coastal | Inland | Coastal | Inland | Coastal | Inland | |
Height (m) | 11.8 A ± 1.90 | 12.3 B ± 1.89 | 11.2 | 11.7 | 12.0 | 12.5 | 0.28 ± 0.037 (7.16) | 0.61 ± 0.061 (10.11) |
Diameter at breast height (cm) | 9.06 A ± 2.81 | 9.8 B ± 2.84 | 8.5 | 8.7 | 10.0 | 10.7 | 0.32 ± 0.037 (16.56) | 0.42 ± 0.048 (17.53) |
Stem volume (dm3) | 45.2 A ± 26.56 | 53.2 B ± 29.87 | 39.3 | 43.2 | 49.2 | 62.1 | 0.29 ± 0.035 (29.35) | 0.41 ± 0.048 (33.41) |
Spike knots (% of trees) | 57.3 A | 59.1 B | 42.1 | 53.6 | 60.8 | 65.4 | 0.05 ± 0.017 | 0.07 ± 0.020 |
Double leaders (% of trees) | 9.7 A | 11.4 B | 2.8 | 5.00 | 10.4 | 13.9 | 0.15 ± 0.041 | 0.16 ± 0.014 |
Lost top (% of trees) | 52.3 A | 49.2 B | 50.7 | 46.2 | 65.6 | 62.4 | 0.03 ± 0.017 | 0.01 ± 0.017 |
Stem straightness score | 2.2 A | 2.2 A | 2.1 | 2.1 | 2.2 | 2.2 | 0.45 ± 0.060 | 0.26 ± 0.060 |
Overall stem quality score | 2.8 A | 2.8 A | 2.7 | 2.7 | 2.8 | 2.9 | 0.24 ± 0.040 | 0.28 ± 0.061 |
Branch angle score | 2.0 A | 2.0 A | 2.0 | 2.0 | 2.0 | 2.0 | 0.51 ± 0.110 | 0.30 ± 0.118 |
The studied silver birch populations possessed substantial additive genetic variance in growth and stem quality (Supplementary file S1). Moderate to high heritability (h2 > 0.20) was estimated for the studied traits in both regions except for stem defects (h2 < 0.15) (Table 1). Geographically varying strength of genetic control of the traits was observed: h2 of H was more than twice higher in the inland than in the coastal region (0.61 ± 0.061 and 0.28 ± 0.037, respectively), while for StVol and DBH differences in h2 reached 31.3–41.4%. In the coastal region, high (h2 ≥ 0.45) heritability was estimated for StStr and BrA, while these traits showed intermediate heritability (0.26 ≤ h2 ≤ 0.30) in the inland. Also, the estimated CVa was slightly (0.97–4.06%) higher for the inland comparing to the coastal region implying slight differences in plasticity. The ability to respond to natural selection, indicated by CVa, was ca. three times higher for StVol comparing to H in both regions (Table 1).
Phenotypic plasticity and local (genetic) specialization are key factors affecting adaptability of trees to changing climate, hence crucial for climate-smart forest management (Aitken and Bemmels 2016; Moran et al. 2017). Distinct local specialization of silver birch was observed, particularly for the growth traits (Table 1). Silver birch of the inland region possessed better growth (Table 1, Fig. 1). The explicit coastal-inland gradient (Fig. 1) and differing strength of genetic control (Table 1) followed general spatial pattern of the climatic zonation within the region (Laiviņš and Melecis 2003; Reitalu et al. 2013).
The distribution of silver birch provenance regions showed some specifics in growth traits and their genotypic variation (Fig. 2, Table 1), which might be explained by the post-glacial recolonization routes from different refugees (Palmé et al. 2003; Kapeller et al. 2017; Tsuda et al. 2017; Tenkanen et al. 2020). Also, this might be due to continentality of climate (White et al. 2007; Hoffmann and Sgrò 2011), as determined by westerlies and proximity of the Baltic Sea (Laiviņš and Melecis 2003); hence differing strength of environmental forcing of adaptation (Suppl. file S2).
Population genetic studies have shown persistence of silver birch in relatively high latitudes during last glacial maximum, as a scattered dispersal nuclei enabling rapid post-glacial recolonization in different directions (Stewart and Lister 2001; Binney et al. 2009; Väliranta et al. 2011; Kapeller et al. 2017; Tsuda et al. 2017). The inland region appeared to be westwards extension of a source population located east from Latvia. Still, such dispersal nuclei are difficult to locate (Amon et al. 2014), and wider regional scale study would be necessary to clarify this issue. However, natural selection after the post-glacial recolonization has likely been the main driver determining geographic variation of studied traits (Fig. 2) as observed in the region (Collignon et al. 2002; Kremer et al. 2002; Savolainen et al. 2007; Väliranta et al. 2011).
Although high within- and low between-population genetic diversity has been observed for silver birch in Northern and Eastern Europe (Hamrick et al. 1992; Palmé et al. 2003; Rusanen et al. 2003; Maliouchenko et al. 2007; Zhuk et al. 2009), the former has apparently favoured strong specialization to local conditions, hence explicit phenotypical differences (White et al. 2007; Hoffmann and Sgrò 2011). Considerably higher CVa for StVol (29.35–33.41%) comparing to H and DBH (7.16–17.43%) corresponded to a common trend in forest trees (Cornelius 1994). The heritability is affected by the history of the region (Falconer and Mackay 1996; Griffiths et al. 2000), and can vary greatly for phenotypic traits of forest tree species (Cornelius 1994). Higher genetic specialization was more evident under more continental climate in the inland region (Fig. 2), resulting in higher heterogeneity of field performance (Fig. 1), and explained higher h2 and CVa of growth traits, compared to the coastal region (Table 1). High heritability likely indicated larger differences between genotypes from different forest provenances comparing to the environmental variation within genotypes (Griffiths et al. 2000). Estimated h2 for growth traits was higher in the inland and lower in the coastal provenances comparing to the whole breeding population (h2 = 0.41–0.52) (Gailis et al. 2020), indicating better response to selection in the first. One commonly acknowledged risk of intensive breeding within certain populations can be reduced genetic diversity, yet threats to silver birch are unlikely, considering the highly-connected populations with extensive gene flow (Hoban and Schlarbaum 2014).
Indistinct phenotypic differences and similar moderate to high heritability for stem quality (Table 1) might have been set by uniform natural selection in both regions despite climatic differences (Lamy et al. 2011). Still, moderate genetic control of StStr, previously reported for various trees species (Cornelius 1994), indicated potential improvement of selection. Meanwhile weak genetic control of stem defects (Table 1) correspond to the earlier findings, likely shaped by prevailing environmental factors, such as frost, insect damage or browsing (Malcolm and Worrell 2001; Stener and Jansson 2005; Zeltiņš et al. 2018).
Heritability and CVa reflect pre-existing standing genetic variation, which is essential to adapt to a broad spectrum of future climate via natural selection (Alberto et al. 2013; Ahrens et al. 2020). Although low genetic variance not necessarily means poor selection response (Walsh and Blows 2009; Hoffmann and Sgrò 2011), lower h2 of growth traits in coastal region (Table 1) could indicate weaker adaptability to ongoing climate change (Hoffmann and Sgrò 2011). Still, it is unclear, whether populations currently possessing weaker local adaptation could show better fitness in the future (Fady et al. 2020). Coastal provenances could benefit from projected milder winters and increased precipitation intensity thorough the country, yet more frequent extreme events (e.g. summer drought) may suppress positive effect (Avotniece et al. 2010). Use of robust superior seed sources from more continental inland climate may imply potentially higher capacity to adapt to changing conditions (Sork et al. 2013), facilitating resilience of future stands (Aitken and Bemmels 2016). Still, the indistinct phenotypical and genetic variation for stem quality traits suggested potential for improvement of breeding for plywood production also combining material, with higher preference from the inland region.
Delineation of two provenance regions – coastal and inland – for silver birch in Latvia with respect to growth performance and genotypic variation, justified earlier climatic zonation. Overall, better growth and higher heritability suggests that selection and breeding within the best provenances in more continental inland region possessing higher genotypic variation may constitute better performing and adaptable breeding population for climate-smart management comparing to the coastal region. Still, uniformity and estimated heritability of quality traits implies improved stemwood quality for plywood production regardless of the distinguished region. A wider regional scale study, however, would be necessary to clarify differences in phenotypic and genotypic variation as a proxy for adaptation capacity to changing climate.
The data that support the findings of this study are available from the corresponding author, PZ, upon reasonable request.
AG and ĀJ developed design of the work, conceptualized research question, and revised the work. PZ and RM conducted data analysis and revised the work. AP, JA and VV were responsible for data acquisition. All authors contributed to scientific writing of the work.
The study was funded by European Regional Development fund project (No. 1.1.1.1/19/A/111) “Decision support tool for increased forest productivity via efficient climate adjusted transfer of genetic gain”.
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