Abstract
Forests are considered as one of the most complex terrestrial ecosystems due to their high level of biodiversity, including genetic diversity. Understanding the genetic diversity of keystone species at a population level is vital to forest managers and policymakers for the conservation and sustainable utilization of forest genetic resources. Quercus semecarpifolia, commonly known as brown oak, is a keystone species of climax community thriving in the alpine zone of the Himalayas, which is presently experiencing population decline and range shift under the changing climate. In the present study, a landscape genetic approach was employed for deciphering the population genetic structure of Q. semecarpifolia in the western Himalayas using nuclear simple sequence repeat (SSR) markers. By analysing 718 individuals of 24 populations at 10 SSR loci, a high gene diversity (expected heterozygosity, He = 0.72; Allelic richness, Ar = 8.37) was recorded with a moderate genetic differentiation (FST = 0.16; P < 0.001). Genetic clustering and STRUCTURE analysis have displayed two major gene pools which appear to be primarily differentiated by the landscape and ecological constraints rather than the linear geographical distances. The hierarchical AMOVA analysis further supports the regional genetic divergence with a substantial proportion of genetic variation detected among the regions. Diversity maps generated by spatial interpolation elucidated the distribution pattern of genetic diversity and structure across the range, and aid in the demarcation of the diversity hotspots for conservation implications. To the best of our knowledge, this is the first comprehensive genetic study carried out in any Himalayan oaks, and the information generated herein is novel and of paramount importance in guiding conservation decisions.
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Introduction
Forests are considered one of the most complex terrestrial ecosystems due to the high biodiversity in terms of genetic resources, species and habitat ecology (Geburek and Konrad 2008). However, the last century witnessed the ruination and vanishing losses of wild forests and biodiversity. Overall, biodiversity is measured at three levels, namely genetic diversity, species diversity, and ecological diversity. Intra-specific genetic diversity is crucial for the long-standing survival of a species in an ecosystem (Gapare 2014). Adaptation, evolution and survival of a species in the long-term depend mainly on the subsistence of adequate genetic variability both within and among the populations, to accommodate new selection pressures brought by the ecological changes and demographic load (Reed and Frankham 2003). Considering the importance of genetic diversity, Convention on Biological Diversity has recognized it as a crucial component of biodiversity and included it among the 23 global targets for 2030 in the 15th Conference of Parties to the UN Convention on Biological Diversity (CBD 2022). Hence, investigating the genetic diversity of keystone species can be of immense importance in guiding conservation programmes and reducing the risk of biodiversity loss (Souto et al. 2015).
Oaks (Quercus L.) are keystone species for many ecosystems, conferring a wide range of ecological functions and socio-economic values. For instance, oaks are considered by many societies as sacred trees, symbols of strength and endurance, with high cultural and historical value. In addition, they cater important ecological services like carbon sequestration, a reservoir of biodiversity, soil and water protection, etc., and other services of economic and cultural importance (QUERCUS PORTAL; https://quercusportal.pierroton.inra.fr/). Worldwide, a total of 450 Quercus species have been reported, across a wide range of habitats, including temperate deciduous forests, temperate and subtropical evergreen forests, subtropical and tropical savannah, subtropical woodland, oak-pine forest, etc. (Nixon 2006; https://powo.science.kew.org/). The highest species diversity of oak is recorded in Central America and South Asia. Over 35 Quercus spp. have been reported to occur in the Indian Himalayan Region (Negi and Naithani 1995) at an altitudinal range between 2200 and 3900 m. The Indian Himalayan Region is a global biodiversity hotspot found within the Himalayas with exceptionally rich biodiversity and endemism (Negi et al. 2019). Based on altitudinal gradient, six climatic zones were recognized in this region, such as warm temperate (900–1800 m), cool temperate (1800–2400 m), cold zones (2400–3000 m), alpine zone (3000–4000 m), glacier zone (4000–4800 m) and perpetually frozen zone (above 4800 m) (Uttarakhand Forest Statistics 2014–2015). The region is also regarded as the ‘land of the goddess’ due to the presence of many monumental temples, and the state provides hospitality to about 36.9 million pilgrims or tourists annually (Uttarakhand Tourism Statistics 2018). Most of these religious places are in the mountains covered with beautiful, lush green forests, and pose a lot of anthropogenic pressure over the forest vegetation. Ecologically and geologically, Uttarakhand Himalayas are highly fragile and have witnessed several natural calamities in the past like cloud bursts, landslides, erratic rainfall, flood, etc., which have severely affected the population structure of forestry species. This prompts us to generate baseline reference data for ecologically important keystone species to quantify the impact of such events in future. The temperate broadleaved forests of the western Himalayas are mostly dominated by oaks, namely Quercus floribunda, Q. glauca, Q. lanata, Q. leucotrichophora and Q. semecarpifolia,
Quercus semecarpifolia, commonly known as ‘brown oak’ or ‘kharsu’, is one of the late successional evergreen broad-leaved tree species of climax community occupying highest altitudinal range up to 3700 m in the western Himalayas (Shekhar et al. 2022). Beside the Indian Himalayan Region, it has also been reported in Afghanistan, Bhutan, China, Myanmar, Nepal and Pakistan at the altitude ranging from ~ 2500 to ~ 4000 m (Oaks of the world database; http://oaks.of.the.world.free.fr/quercus_semecarpifolia.htm). Despite the dominating distribution, it has been observed to be associated with several broad leaved and conifer tree species of Himalayas, viz., Abies spp., Acer spp., Betula utilis, Cupressus torulosa, Fraxinus micrantha, Picea spp., Pinus wallichiana, Rhododendron spp., Taxus wallichiana, etc. (Shekhar et al. 2022). Quercus semecarpifolia also serves as an excellent source of quality fodder, fuel-wood, timber, wood and tannin, which has led its over-extraction from natural forest (Singh et al. 2010; Shrestha 2003). Along with the anthropogenic pressure, inherently slow growth rate and inadequate regeneration are other factors causing population deterioration in the Himalayas (Vetaas 2000; Bisht 2001; Shrestha 2003). Reduced regeneration in Q. semecarpifolia has been associated with several factors, viz., high moisture content and short viability of seeds (vivipary), poor seed crop every year, desiccation and frost sensitivity of seeds, edibility of seeds by wild animals, etc. (Singh et al. 2011; Bisht 2001; Tashi 2004). The ecological cost of oak forest degradation is perhaps more important and damage is irreversible. Further, it has been reported to be vulnerable to climate change showing an altitudinal shift or upslope movement in response to the future climate change scenario (Bisht et al. 2013; Shekhar et al. 2022).
Noteworthily, the life-history traits of species and interaction of environmental variables may disrupt the habitat connectivity, and influence the genetic structure spatially as well as temporally (Gómez et al. 2005; Yang et al. 2018). Spatial overlaying of the genetic diversity over landscape elements could provide significant cartographic outputs for guiding conservation and management of forest genetic resources. Consequently, this present study was undertaken to understand the spatial genetic structure and gene diversity in Q. semecarpifolia populations of western Himalayas to inform future conservation efforts. Specifically, we attempted to understand the key ecological and biological questions of conservation importance, such as what level of genetic diversity exists in the populations in situ? How the individual populations are genetically differentiated and structured? What is the spatial pattern of genetic admixture and allelic diversity? How is the genetic variation segregated within and among the populations? What could be the possible causes associated with interpopulation genetic divergence? How the geographic information systems (GIS)-based tools could be employed in guiding the conservation programme? To unscramble these questions, we used a multidisciplinary approach combining SSR-based population genetic analysis with GIS-based tools to decipher the spatial genetic structure of Q. semecarpifolia in relevance to the landscape features. With the best of our knowledge, this is a pioneer study on population genetics of brown oak of Indian Himalayas. Hence, the information generated herein is novel and immensely useful in guiding conservation and management plans of Himalayan oak forest.
Materials and methods
Study area and sample collection
Present study was carried out in the western Himalayas under Uttarakhand state (India) which is geographically divided into two regions, Garhwal and Kumaon. The entire distribution range of Q. semecarpifolia in both the regions was intensively surveyed from 2016 to 2020. Leaf samples were collected from 718 individual trees belonging to 24 natural populations (Table 1). Each population was represented by 28 to 30 individuals by keeping 100 to 300 m distance between them. The sampling was carried out randomly with linear transect method and each sampled individual was tagged with their geo-coordinates using global positioning system (GPS). To avoid sample degradation and fungal development, leaf samples were desiccated using silica gel and completely dried samples were stored at -80 ˚C.
Genomic DNA extraction and SSR genotyping
Genomic DNA was extracted using double DNA extraction protocol standardized by modifying protocol of Doyle and Doyle (1987). In brief, 0.5 g ground leaf tissue was incubated with 1 mL pre-chilled lysis buffer containing tris base (100 mM), EDTA (20 mM), NaCl (1.42 M), ascorbic acid (5 mM), PVP (3% w/V) and β-mercaptoethanol (5 µL) at 4 °C for 30 min. After centrifugation, the homogenate was again incubated with 1 mL lysis buffer containing 3% CTAB at 60 °C for 60 min. The samples were emulsified with chloroform:isoamyl alcohol (24:1), and the cell debris was separated out by centrifugation. Further, genomic DNA present in upper aqueous phase was precipitated by overnight incubation with chilled isopropanol, followed by 96% ethanol containing 3 M sodium acetate. After washing with 70% ethanol, dried DNA pellet was re-suspended in 100 µL TE buffer. Finally, genomic DNA was quantified and diluted to prepare a final working concentration of 10 ng µL− 1 for use in polymerase chain reaction (PCR).
Polymorphic SSRs identified through cross-transferability from other closely related Quercus spp. (Mishima et al. 2006; Ueno et al. 2008; Ueno and Tsumura 2008) were used in PCR-based genotyping as per Shekhar et al. (2021). A PCR amplicon of each selected primer pair was sequenced using Sanger’s dideoxy method and verified for the presence of desired repeat motifs. Ten polymorphic SSRs were selected for further genotyping in Q. semecarpifolia (Table 2). The PCR reactions were performed in thermal cycler machine (Mater cycler gradient Nexus; Eppendorf) in a 15 µL reaction volume containing 15 ng template DNA, 1× Taq buffer, 2.4 mM MgCl2, 0.2 mM dNTPs, 0.2 µM each of forward and reverse primers, 0.65 U Taq DNA polymerase and nuclease free sterile water. The PCR was run with the following cycling parameters: first a denaturation step at 94 °C for 3 min, followed by 40 cycles of 94 °C for 45 s, 48–55 °C for 45 s, 72 °C for 45 s and a final extension at 72 °C for 7 min. Afterwards, fragment length polymorphism was analysed using automated capillary electrophoresis in LabChip GX Touch 24 Nucleic Acid Analyzer (Perkin Elmer, USA) along with an internal size standard, and the allelic data was extracted through Gene Reviewer software (Perkin Elmer). The allelic data showing deviations from the expected periodicity of the repeats were adjusted through allele binning software Tandem v1.07 (Matschiner and Salzburger 2009). Also, the marker data were analysed for the presence of null alleles and large allele dropout using software MICRO-CHECKER v2.2 (Van Oosterhout et al. 2004) with 1000 randomizations and a 95% confidence interval. The SSR loci with null allele frequency ranging from 0.1 to 0.3 in more than 30% of the populations were considered for further analysis as per Bagnoli et al. (2009). Deviation from Hardy-Weinberg equilibrium (HWE) was estimated by χ2 test using software Arlequin v3.1 (Schneider et al. 2000).
Genetic diversity and differentiation
Diversity measures, such as number of alleles per locus (Na), effective number of alleles (Ne), Shannon’s information index (I), observed heterozygosity (Ho), expected heterozygosity (He) and coefficient of inbreeding (FIS) were calculated using the program GenAlEx v6.5 (Peakall and Smouse 2012). The number of alleles in a population is an imperative measure of genetic variation but can be difficult to use in comparisons if sample size varies. Therefore, we aimed to maintain a uniform sample size across the sampled populations. Furthermore, allelic diversity was calculated as allelic richness (Ar) and private allelic richness (PAr) using a rarefaction method implemented in software HP-Rare v1.0 (Kalinowski 2005).
Genetic relationship was studied by constructing dendrogram based on pairwise genetic distances (DA; Nei et al. 1983) using UPGMA (unweighted pair group method with arithmetic mean) algorithm implemented in software POPTREE v2 (Takezaki et al. 2010). The robustness of dendrogram topologies was further tested by bootstrap resampling (n = 1000). Analysis of molecular variance (AMOVA), Wright’s F statistical measures of genetic differentiation, and gene flow, were calculated using software GenAlEx with 1000 permutations. The covariance matrix of pairwise FST was further used in multivariate principal coordinate analysis (PCoA) and the Mantel test (Mantel 1967). Isolation by distance was tested through the Mantel test using software GenAlEx in which pairwise genetic distances between the population were correlated with pairwise geographic?al distances (vertical and horizontal). Both the analyses were performed in all the 24 populations together as well as in different groups independently.
Genetic structure
The population genetic structure was deciphered using Bayesian model-based clustering approach implemented in the program STRUCTURE v2.3.4 (Pritchard et al. 2000). The program was run with ancestry model with admixture under assumption of correlated allele frequencies. The simulations were run with 10 iterations for each K value (in our case 1–10) with 500,000 Markov Chain Monte Carlo (MCMC) sampling runs after a burn-in period of 500,000 iterations. The optimal K value was determined using web-based program StructureSelector (Li and Liu 2018) which employs method developed by Evanno et al. (2005) as well as other alternative methods (MedMedK, MedMeanK, MaxMedK, and MaxMeanK) developed by Puechmaille (2016). The resultant data of replicated STRUCTURE runs were further collated into a matrix (the Q-matrix) of membership coefficients using CLUMPP v1.1.2 (Jakobsson and Rosenberg 2007) and graphically displayed as bar plot using DISTRUCT v1.1 (Rosenberg 2004). Owing to strong genetic structure, each major cluster was further investigated individually for the nested structuring by repeating the PCoA and STRUCTURE analyses.
Spatial mapping of allelic diversity and genetic disjuncture
Genetic and geo-spatial data were organized in a geo-database of ESRI ArcGIS v9.3 (ESRI, Redlands, CA, USA). Particularly, allelic diversity (Ar and PAr) was spatially overlaid over the species distribution map using inverse distance weighted (IDW) interpolation function implemented in ArcGIS (Shepard 1968; Hengl 2009; Chiocchini et al. 2016). For overlaying, the current eco-distribution map of Q. semecarpifolia generated through maximum-entropy (MaxEnt) approach of modelling by Shekhar et al. (2022) was used as a surface map. The IDW interpolation determines cell values using a linearly weighted combination of a set of sample points, considering that the local influence of each single point decreases with a distance. Similarly, inferred ancestry of each population calculated by Bayesian analysis was used to draw pie-charts and spatially overlayed over distribution maps manually.
Results
Allele frequencies and gene diversity
Cross-amplified SSRs were first verified for the presence of expected repeat motifs by sequencing their PCR amplicons, and polymorphic SSRs with desired repeat motifs were used for genotyping. In total, 332 alleles were generated in 718 individuals of 24 populations across the 10 SSR loci. Each SSR was found to be highly polymorphic, exhibiting on average 10 alleles per locus ranging from 4 (DN950717) to 18 (QmC02269) alleles. Based on the frequency distribution, 60 alleles were considered abundant with frequency >0.05, 187 were rare with frequency <0.05, and 85 were unique to one of the 23 populations. Among the analyzed populations, the number of different alleles and effective number of alleles varied from 8 (Auli) to 13 (Munsiyari) and 4 (Yamunotri) to 7 (Bhukkitop), respectively.
Our experimental populations demonstrated a high allelic diversity with a mean allelic richness of 8.37 ranging from 6.71 (Auli) to 9.77 (Munsiyari). Based on the private alleles, populations from Munsiyari (QS15) and Nagtibba (QS20) showed the highest genetic distinctness, having the maximum number of private alleles. Overlaying allelic diversity (Ar) to the MaxEnt-derived distribution map enabled to demarcate the populations or the regions with maximum diversity (Fig. 1). Likewise, overlaying of private alleles highlighted the populations with unique genetic constitution (Fig. S1). Coincidentally, the populations demonstrating high allelic richness at Bhukkitop (QS11), Munsiyari (QS15), Mundhola (QS19), and Nag Tibba (QS20), contained a significant proportion of private alleles, and hence, these could be considered at top priority in the conservation programme. Perversely, the populations of Kedarnath Wildlife Sanctuary (QS02 and QS06), Chakrata forest division (QS03, QS04, QS05), Nanda Devi National Park (QS07) have displayed low allelic diversity. Other key diversity measures, such as observed heterozygosity (Ho), expected heterozygosity (He), and Shannon information index have also depicted a significant level of gene diversity in our experimental populations with their mean values recorded as 0.55, 0.72, and 1.75, respectively (Table 3). Among the populations, values of ‘Ho’ and ‘He’ were varied in a range of 0.38 (Kunjkharak; QS22) to 0.67 (Chopta; QS02) and 0.63 (Lokhandi; QS05) to 0.81 (Himkhola; QS24), respectively. The mean inbreeding coefficient was high (FIS = 0.26), indicating an excess of homozygotes. All the analyzed populations were conspicuously divided into two different groups based on the FIS values. The first group was constituted by seven high-altitude populations (upper Himalayan) showing no inbreeding (FIS = 0.006) whereas remaining seventeen populations demonstrated very high inbreeding levels (FIS = 0.345).
Genetic relationship among populations
The UPGMA dendrogram grouped the populations into two major clusters with a strong bootstrap support (Fig. 2a). Conspicuously, first major group (Cluster I) comprised the populations of upper Himalayan range, viz., Chopta (QS02), Deoban (QS03), Bhujkoti (QS04), Lokhandi (QS05), Rudranath (QS06), Auli (QS07), and Yamunotri (QS08). Whereas, all other populations of middle or lower Himalayan range were grouped in the second major group (Cluster II) irrespective of their geographic position. Relatively, the populations under Cluster II exhibited higher gene diversity (He = 0.75) than that of Cluster I (He = 0.65). Overall topology of the UPGMA dendrogram was also consistent with the spatial clustering obtained in the PCoA where both the groups were evidently separated with considerable genetic variance (65.53%) accounted for by the first principal coordinate (Fig. 3). Further, Mantel test showed that the relationship of genetic distances between populations was non-significant with horizontal geographical distances (Fig. S2a). Whereas a weak but significant correlation was observed with altitudinal distances (r = 0.033; P < 0.024) (Fig. S2b). It signifies that the vertical geographical distances are more crucial in genetic divergence and sub-structuring of Q. semecarpifolia populations rather than the horizontal distances. However, the correlation was observed as non-significant for both the geographical distances when the upper and lower Himalayan groups were analysed independently (Fig. S2c-f).
Genetic differentiation and spatial genetic structure
AMOVA without hierarchical structuring revealed considerable genetic variation (84%) explained within the populations while only 16% of variation was explained among the populations (Table 4a-b). Further, AMOVA was also performed assuming hierarchical structuring with three levels, i.e., within populations, among populations and among groups, where the groups were defined as per the UPGMA dendrogram. The analysis revealed that 76% of the genetic variation existed within the populations and only 6% was among the populations. Remarkably, a substantial amount of genetic variation (18%) was detected between the groups indicating a high genetic divergence among groups. Variance estimates were based on 999 permutations. The difference between the individuals within the populations was statistically significant (P < 0.001). By considering each group as an independent unit, the partitioning of genetic variance was further re-examined for the populations of both groups individually. Interestingly, most genetic variance in both the groups was confined within the populations with the negligeable genetic differentiation (Table 4c-d).
The results were further supported with the Wright’s fixation index (FST) which has indicated a moderate level of genetic differentiation among studied populations. The value of FST was recorded as 0.16 when calculated without hierarchical structuring. Further, it has been re-calculated for different hierarchical levels where the overall fixation index due to populations and groups was recorded as 0.24 but a significant proportion of it was explained by the groups (FRT = 0.18). Pairwise FST values indicate the genetic relatedness between two sampled populations, which ranged from 0.01 to 0.22. Consequently, highest genetic distance was observed between the populations Lokhandi (QS5) and Dudatoli (QS12) while lowest was recorded for Bhujkoti (QS4) and Lokhandi (QS5). Gene flow (Nm) is another important factor associated with genetic divergence among populations which has been recorded as 2.24 for all the analysed populations. Moreover, the gene flow was remarkably high among populations of both the groups, when analysed independently. For instance, Nm values of Cluster I and II were recorded as 6.90 and 3.12, respectively.
Based on ΔK plot (Fig. S3), optimal K value was determined as two, indicating the presence of two major gene pools in the Q. semecarpifolia metapopulation. The clusters defined by Bayesian analysis were observed to be in perfect agreement with the pattern generated by other methods, viz., UPGMA and PCoA. As per the inferred ancestries (Q-matrix), all the populations were clearly defined by two genetic clusters with a membership coefficient value greater than threshold (Q ≥ 0.80). The pattern of genetic admixture is shown as a bar plot in which seven populations of the upper Himalayan region were defined by cluster I (dark orange) while other seventeen populations were assigned to cluster II (blue) (Fig. 2b and c). Based on the clustering and structure analysis, it is conspicuously evident that the Q. semecarpifolia populations of the western Himalayas form two distinct gene pools with least genetic exchange across the regions. However, genetic admixing was adequately high among the populations within their respective gene pools irrespective of their geographical distance.
The genetic relationship was further examined for nested clustering and sub-structuring within both the major groups individually. It was observed that the sub-structuring in the Cluster I was more pronounced than the Cluster II. As revealed by the nested clustering, seven populations of Cluster 1 were conspicuously sub-grouped into two sub-clusters and the clustering topology appeared in accordance to their geographic position. However, the sub-clustering in another major group (Cluster II) was not much conspicuous. The results were also supported by the PCoA (Fig. S4) and STRUCTURE analysis (Fig. S5 and S6) done in both the clusters, independently.
Discussion
Understanding intraspecific genetic variability is important to unravel the adaptive or evolutionary potential of a tree species against the prevailing environmental changes and anthropogenic pressure (Templeton et al. 1995), and immensely important for guiding species conservation programme. This present study unveiled a first baseline information of population genetics in a timberline oak (Q. semecarpifolia) of the western Himalayas. In accordance with the questions asked, level of gene diversity, genetic divergence and population genetic structure were determined for the experimental populations of western Himalayas. The spatial distribution of allelic diversity and genetic structure was further elucidated by overlaying them over the distribution map. The distribution of gene diversity was also analyzed in relation to the horizontal and vertical geographical distances.
Across all the loci, we found a good level of polymorphism exhibiting 4 to 18 alleles per locus, which was also in congruence to the earlier report by Ueno et al. (2008) in Q. mongolica. The calculated measures of gene diversity (Ho and He) in Q. semecarpifolia populations of the Himalayan region are found comparable to the earlier studies carried out in different oak species (Table S1). Nonetheless, the deviations are observed in measures of genetic differentiation and inbreeding among different oak species. For instance, negligeable genetic differentiation and low inbreeding had been observed in most oak species but significant inbreeding had been reported in Q. glauca (FIS = 0.29; Lee et al. 2006), Q. petrea (FIS = 0.39; Lupini et al. 2019), and Q. oglethorpensis (FIS = 0.23; Spence et al. 2021). Similar to this study, high levels of genetic diversity were also reported in three Mexican oaks (Q. candicans, Q. crassifolia, and Q. castanea) but significant inbreeding was detected in about 40% populations (Oyama et al. 2018). Earlier study by Spence et al. (2021) demonstrated that the threatened oak species with a narrow distribution range possess lesser genetic diversity than the other widely distributed oaks. Conclusively, high gene diversity with varied level of genetic differentiation and inbreeding reported in various oak species may be ascribed to the range size, habitat degradation, threat status, environment heterogeneity, anthropogenic disturbances, and life history traits like open pollinated mating behavior of this genus, masting events, viviparous seed germination, etc.
However, this situation may further deteriorate if local and landscape-scale anthropogenic pressures are not checked. This is because the gradual loss of private alleles and increasing inbreeding, as found in the present case, can affect the sustainability and existence of Q. semecarpifolia populations, if kept small and isolated for many generations. Gene flow is a key process involved in the distribution of gene diversity within and across spatially separated populations and counteracts the genetic differentiation. In general, Nm value greater than 1 indicates optimal gene flow (or little differentiation) among the populations (McDermott and McDonald 1993), and movement of at least a single individual per generation can prevent significant divergence between the populations (Wright 1969). Despite a substantial level of gene flow (Nm = 2.24) observed in our experimental populations, a moderate level of genetic differentiation was also detected which was further investigated for the two inferred groups independently. Groupwise partitioning of molecular variance revealed that the gene diversity was mostly detected within the populations of each group, and the genetic differentiation among populations of each group was negligible. Also, substantial levels of gene flow detected in both the clusters, viz., Cluster I (Nm = 6.90) and Cluster II (Nm = 3.12), had indicated that the populations within the groups were well genetically connected but the gene flow was restricted between populations of two groups. Further, the extent of gene flow depends on the geographic range of a species and breeding behaviour. For instance, the broader the distribution ranges, the greater the chance of allele dispersal as well as reunion during fertilization, and open-pollinated taxa demonstrate higher gene flow than the self-pollinated one (Hamrick and Godt 1990, 1996). Thus, the substantial genetic diversity with high gene flow recorded in Q. semecarpifolia could be attributed to its wide distribution range and open pollinated reproductive system.
The oak forest consists of gregarious patches of micro-habitats which unceasingly affected by factors driven by anthropogenic activities and climate change, such as recurrence of forest fires, reduced regeneration, frost, tourism, pilgrimage, illicit felling, collection of high valued caterpillar fungus (Ophiocordyceps sinensis), etc. For example, several millions of collectors stay in alpine meadows and tree line areas of Uttarakhand, Nepal and Tibet each summer, and dig up soil to collect caterpillar fungus from plant roots. They not only trample ground vegetation but also collect firewood from the nearby tree line populations (Singh 2018). These disturbances may affect the species regeneration, dispersal, successional status, and inbreeding in the long-term. This temporal heterogeneity is especially strong in temperate forests (Wright Jr 1976). Being a later successional species with poor colonizing habit, achieving good regeneration has remained a matter of concern in Q. semecarpifolia (Negi and Negi 2021; Rawat et al. 2022). Besides, monoecious pollination, masting event (long fruiting cycle of 8 to 10 years), low seed viability, and precocious germination (Negi and Naithani 1995; Singh et al. 2011), are other important causes affecting population dynamics and genetics, which may potentially be influenced by the climate change in the Himalayas (Chakraborty et al. 2018).
Strikingly, high inbreeding detected in this study indicated some important evolutionary changes adopted by the populations. The actual causes associated with this are not well known and necessitate further investigation. But based on the literature and field observations, it could be explained by various factors, such as degradation of natural population, poor regeneration, monoecious pollination, limited seed dispersal, masting events, etc. In addition to common evolutionary drivers, such as gene flow and selection, positive assortative mating (i.e., preferential mating among genetically or phenotypically close relatives) caused by spatial isolation and asynchronized flowering among individuals of a location may result in significant deviation of homo-and-heterozygote frequency (Lemes et al. 2003; Kremer and Hipp 2020). Also, the effective population size is not maintained at several pockets of distribution range due to overexploitation and habitat destruction. Moreover, Q. semecarpifolia is a viviparous oak in which the acorns begin to germinate before or during their deposition on the ground (Tewari et al. 2019). Consequently, most of the seed dispersal occurs between nearest-neighbour populations during mast seed year due to their large size and precocious germination. Consequently, the individuals within a population may undergo preferential mating among their close relatives and led inbreeding in long-term. In case of SSR-based allelic data, excess of homozygotes could also be aroused due to the presence of null alleles as exemplified in Q. glauca (Lee et al. 2006). This study also detected null alleles for some of the SSR loci, and hence, their effects could not be ruled out.
Although the rear edge populations are often disproportionately important for the survival and evolution of biota (Hampe and Petit 2005), it is always useful to conserve all the populations irrespective of their genetic constitution because the populations with low allelic diversity may still contain important “unique” alleles. However, the conservation programme could be prioritized first for the populations which are rich in gene diversity. The geospatial interpolation of genetic diversity enabled the demarcation of conservation units for in situ conservation. Populations or regions capturing higher allelic diversity as well as private alleles were identified and designated as diversity hotspots. For instance, the populations of eastern region of Uttarakhand under Pithoragarh forest division displayed a great level of allelic diversity and it may be considered as a key conservation unit. Besides, four genetically diverse populations have been recognized into both the geographic region of the state, i.e., Bhukkitop, Mundhola, and Nag Tibba in Garhwal and Munsiyari in Kumaon Himalayas, which may be prioritized in the conservation programmes. Viewing the spatial distribution of genetic diversity, the main center of genetic diversity of Himalayan brown oak is located in the eastern region of Uttarakhand.
The UPGMA clustering has distinguished the population in two well defined clusters with high bootstrap support where the marginal populations of the upper Himalayan region were separated from the remaining populations. The consistency of the dendrogram was further confirmed by the principal coordinate analysis. Genetic divergence among natural populations of a tree species is known to be influenced by the geographic distances and discrete geographic barriers by limiting the seed and pollen dispersal (Wright 1943). Moreover, ecological isolation may also be driven by habitat heterogeneity in nearby populations without any geographic barrier, which may promote divergence by local adaptation and drift (Misiewicz and Fine 2014). In the same way, altitudinal gradients may also play a crucial role in shaping genetic diversity and structure of populations, particularly those marginally distributed (Reis et al. 2015). Astonishingly, Mantle’s test conducted in our sampled population has revealed no significant relationship of genetic distance with the horizontal geographic distance. Besides, a weak but significant correlation was detected with the vertical altitudinal distance, whereas the relationship with both the geographic distances was found to be non-significant when analyzed in both the groups independently. It suggests that the altitudinal variation is apparent as crucial in determining genetic divergence of Q. semecarpifolia populations at metapopulation level, but the spatial distance plays insignificant role at local scale. In congruence, similar observations were also depicted in the Mongolian oak (Ohsawa et al. 2007; Ueno et al. 2008), where no significant isolation by distance was observed among the populations along geographic span.
Literature indicates that the forests in upper areas of western and central Himalayan region are being vulnerable to the projected impacts of climate change (Joshi et al. 2012; Shrestha et al. 2012). The potential habitat of Q. semecarpifolia is predicted to shrink by 40% and 76% with 1 and 2 °C increase in temperature, respectively (Saran et al. 2010). There is a prevalent assumption that geographically peripheral populations harbor lower genetic diversity and higher genetic differentiation than the core/ buffer zone populations as a result of higher genetic drift, fragmentation, and isolation (Lesica and Allendorf 1995; Eckert et al. 2008; Pandey and Rajora 2012). In congruence to this, the peripheral high-altitude populations distinguished as Cluster I forms a sub-alpine timber line in the western Himalayas and demonstrated lesser gene diversity than the core populations occurring in the broadleaved mixed forest at lower altitudinal range.
The analysis of genetic structure deciphered the admixed ancestry among individuals and populations, where two major gene pools have been recognized throughout the distribution range in western Himalayas. Interestingly, the sub-structuring was observed across the altitudinal gradient rather than the horizontal spatial distance. In agreement to the clustering depicted by UPGMA and PCoA, the populations from the upper Himalayan region were separated from other populations and clearly defined by their respective clusters with Q values ≥ 9. The results of the genetic clustering and STRUCTURE analysis have indicated towards the obvious genetic constraint aroused by life-history traits, geographic barriers, clinal variation, and ecological heterogeneity between populations (Loveless and Hamrick 1984; Morente-López et al. 2018), which need to be studied in-depth through environment association analysis using gene based markers. Re-analyzing data of both the clades separately gives an important clue that the differences of inbreeding in the populations of both the groups would have led to this clustering pattern. As evident in Table 3, most high-altitude populations grouped in Cluster I showed negligible inbreeding while significant inbreeding was detected in the core populations which are exposed to various anthropogenic disturbances. Independent Bayesian analysis of both the groups further revealed a strong sub-structuring in Cluster I, indicating existence of multiple gene pools but the sub-structuring in Cluster II remained insignificant. It showed that the populations of both the groups responded differently against the prevailing evolutionary forces. Topographic features such as high mountain ranges, perennial rivers, grasslands, etc. disconnect the populations to several hundred miles and cause hindrances in the smooth genetic exchange via pollen. Similarly, extent of seed dispersal is restricted by own endogenous physiological characteristics and geographic barrier. Immigration of alien genes changes the genetic composition of the recipient populations by constituting novel allelic combinations (Milgroom 2015), which may further contribute to boost the adaptive and evolutionary potential of populations against the changing environment. Being an extreme environmental condition, peripheral populations are at great risk of diversity loss and likely to be constrained in their ability to tolerate rapid climate change. Thus, conservation plans should include populations found both near the center and the periphery of a species’ distribution, where conservation of peripheral populations may allow to continue the evolutionary process that are likely to generate future evolutionary diversity (Lesica and Allendorf 1995).
Conservation implications and conclusions
Preservation of genetic diversity is one of the main objectives of conservation programmes (Frankham 2010; Allendorf et al. 2013; Oldenbroek 2017), and is aimed at maximizing either expected heterozygosity or allelic diversity. In fact, maximization of allelic diversity is considered to be more efficient in upholding genetic diversity of subdivided populations than maximization of expected heterozygosity because the former maintains a larger number of alleles and better control of inbreeding (López-Cortegano et al. 2019). Hence, the populations with higher allelic diversity can be prioritized for conservation either in situ or ex situ (Petit et al. 1998). Present study revealed a good level of gene diversity and significant genetic differentiation (among groups) in Q. semecarpifolia populations of the western Himalayas, with a center of diversity predicted at forest areas under Pithoragarh division, the eastern region of Uttarakhand extending towards Nepal. Spatial genetic clustering has exemplified two distinct gene pools of Q. semecarpifolia in western Himalayas, which are separated by numerous geographic and ecological barriers. Compared to horizontal geographic distance, altitudinal variation, environment heterogeneity, and landscape features play a significant role in shaping the distribution of genetic diversity.
The gene diversity is relatively high in the core populations of lower altitudinal range than the peripheral populations at high-altitude. Augmented gene flow from these genetically diverse and distinct populations needs to be considered as a way of increasing fitness and the adaptive potential of populations. In order to make best possible use of the high genetic diversity populations, it will be important to harvest acorns from these populations and used them to infuse the diversity in the populations with a narrow genetic base. Also, the highly diverse populations could serve as a source for the seed or planting material for establishment of ex situ field gene banks. Conversely, alleles of the smaller and degraded population could also be rescued by broadcasting their acorns into the large sink populations with broad genetic base.
Data availability
This manuscript did not generate any genetic resource in the form of nucleic acid or protein sequences, SNPs, expression data, etc. which could be deposited in the databases. The SSR sequences used here for the genotyping work are already in the public domain and their references have been cited in the manuscript. Further, all the data generated herein are presented either in the manuscript or supplementary material.
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Acknowledgements
This research was funded by the Ministry of Environment Forests and Climate Change, Govt. of India through National CAMPA grant awarded to FRI Dehradun in the form of a research project. We would like to thank the Director, Forest Research Institute, Dehradun for providing all infrastructure and logistic support for conducting this work. Also, we would like to extend our gratitude to state forest departments of Uttarakhand for providing permissions and support during field surveys and sample collection. At last, we duly acknowledge the contribution of anonymous reviewers for imparting their knowledge and wisdom into this manuscript.
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This research was funded by Ministry of Environment Forests and Climate Change, Govt. of India through National CAMPA grant awarded to FRI Dehradun in the form of a research project.
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HSG and RKM, conceptualized the problem, interpreted data and prepared final manuscript. CS, RS, AY, MSB, SB, RK and RKM performed the field sampling. AR and HK performed laboratory work and analyzed the marker data. MSB and RS carried out geo-spatial analysis. Further, all the authors contributed in preparation and editing of the manuscript.
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Fig. S1
: Spatial overlaying of private allelic richness (PAr) over distribution map of Q. semecarpifolia. The areas or populations depicted in dark red shows presence of high proportion of private alleles. Fig. S2: Relationship of pairwise genetic distance with the pairwise geographic distances: a and b) shows the relationship of genetic distance with horizontal and vertical distance when analyzed all the 24 populations combined, c and d) shows relationship of genetic distance with horizontal and vertical distance when analyzed the seven populations of Cluster I separately, e and f) shows relationship of genetic distance with horizontal and vertical distance when analyzed the remaining 17 populations of Cluster II separately. Fig S3: Graphical representation of the estimated Ln probability of data (a) and ΔK (b) in relation to the set K values from 1-10. Fig S4: Principal coordinate analysis (PCoA) showing sub-clustering of Q. semecarpifolia populations of Cluster 1 (a) and Cluster II (b). Fig S5: STRUCTURE analysis of the Q. semecarpifolia populations of Cluster I: a) Graphical representation of the ΔK in relation to the set K values from 1-10; b-c) Bar plot showing pattern of genetic admixture among individual genotypes and populations at K=2 (b) and K=5. Each population separated by a vertical line are labelled with a number below which correspond the code given in table 1. Fig S6: STRUCTURE analysis of the Q. semecarpifolia populations of Cluster II: a) Graphical representation of the ΔK in relation to the set K values from 1-10; b) Bar plot showing pattern of genetic admixture among individual genotypes and populations at K=3. Each population separated by a vertical line are labelled with a number below which correspond the code given in table 1. Table S1. Comparison of diversity indices calculated in this study for Quercus semecarpifolia (Sl. No. 1) and other oaks species studied earlier
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Ginwal, H.S., Rawat, A., Shekhar, C. et al. Population genetic structure of a timberline oak (Quercus semecarpifolia Sm.) of western Himalayas and conservation implications. Conserv Genet 25, 133–147 (2024). https://doi.org/10.1007/s10592-023-01558-7
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DOI: https://doi.org/10.1007/s10592-023-01558-7