Introduction
Genetic diversity contributes to population resilience through increased fitness (Amos et al. 2001; Crnokrak and Roff 1999; Ellstrand and Elam 1993; Leimu et al. 2006; Williams 2001), enhanced growth and productivity (Reynolds, McGlathery, and Waycott 2012; Williams 2001), rapid response to disturbances (Hughes and Stachowicz 2004; Massa et al. 2013; Reusch et al. 2005), and greater persistence through time (Salo and Gustafsson 2016). The spatial structure of genetic diversity gives insight into the scales over which ecological processes of mating and dispersal drive the evolutionary processes that maintain, increase, or decrease diversity (Heywood 1991; Ouborg et al. 1999; Slatkin 1985). These scales differ among species as a function of how life-history traits interact with the environment to enable persistence in and movement through landscapes (Manel et al. 2003). Understanding such interactions is critical for determining the distances over which diversity can be maintained through gene flow (Booth and Grime 2003; Lankau and Strauss 2007; Vellend 2006) and over which recolonization is likely to occur after disturbance. The differences in spatial distribution of genetic diversity ultimately provide insight into the overall health of populations and their ability to be resilient through adaptation or acclimation to current and future perturbations. Insights gained from quantifying spatial genetic structure can thus help natural resource managers anticipate the effects of environmental change and evaluate risks and benefits of alternative management and restoration strategies (Conceicao et al. 2024; Durka et al. 2017; Marsden et al. 2022; Mosner et al. 2012; Pometti et al. 2018; Shryock et al. 2017).
In aquatic plants, hydrologic connectivity facilitates gene flow and increases the scale of spatial genetic patterns relative to terrestrial systems (reviewed in Grosberg and Cunningham 2001). The dominant paradigm for rivers is weak overall genetic structure with a smooth continuum of declining similarity with distance (termed isolation by distance—IBD) along relatively continuous, linear habitat (Nilsson et al. 2010; Pollux et al. 2007). At the same time, the downstream flow of water is expected to favor unidirectional dispersal, resulting in limited genotypic and genetic diversity upstream and accumulated diversity downstream (Barrett et al. 1993; Geremew et al. 2018; Honnay et al. 2010; Liu et al. 2006; Love et al. 2013). The anticipated genetic patterns can be seen as an extension of Vannote et al.'s (1980) River Continuum Concept, which envisions rivers as longitudinally connected from headwaters to river mouth. However, downstream diversity accumulation is not ubiquitous (Gornall et al. 1998; Lundqvist and Andersson 2001; Pollux et al. 2007; Triest and Fenart 2014; Wubs et al. 2016). Deviations arise from discontinuous habitat (Smith et al. 2015); complexities such as bifurcating river confluences, waterfalls, or dams (Fausch et al. 2002; Ward et al. 2001); and upstream animal-mediated dispersal (van Leeuwen et al. 2012). A second complicating factor is imposed when a portion of a river is tidally influenced. Hydrologic connections are less predictable in tidal waters where variable and bidirectional water flow and localized currents are expected to create complex and erratic spatial genetic structure among populations (Becheler et al. 2010; Jahnke et al. 2018; Johnson and Black 1984; Källström et al. 2008; Selkoe et al. 2010; Serra et al. 2010; Siegel et al. 2008; Sinclair, Krauss, et al. 2014; van Dijk et al. 2009). Mixed clonal and sexual reproduction, a life-history trait common in aquatic plants (Eckert et al. 2016), is a third factor affecting the structure of genetic diversity (Arnaud-Haond et al. 2020) and understanding how differing reproductive modes interact with tidal and nontidal environments to affect genotypic variation is of key interest.
Although differences in genetic structure in riverine versus marine or estuarine environments are well documented, patterns have mostly emerged from studies of different species in disparate locations. As such, it is not possible to disentangle effects of life history and population history versus tidal regime. Here, we take advantage of a natural opportunity to begin to understand these relative influences by quantifying genetic structure of the submersed aquatic plant species
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Previously, Lloyd et al. (2011) found that
Answering these questions will allow us to understand if eco-evolutionary dynamics in the two environments differ in ways that yield different outlooks for persistence and recommendations for management. Persistence of this species is a key conservation priority because submersed aquatic plants, such as
Methods
Study Species
Study Area
The Potomac River originates in West Virginia and flows ~652 km before discharging into the Chesapeake Bay at Point Lookout, Maryland. Draining a ~38,000 km2 watershed, it is the second largest tributary of the Bay, smaller than only the Susquehanna River (Mason and Flynn 1976). The first 464 km are nontidal, flowing through the Allegheny Plateau, Ridge and Valley, and Piedmont Provinces. The river then passes through a geologic feature called the fall line as its elevation drops quickly from the Piedmont to the Coastal Plain Province. The ~188 km between the fall line and the mouth of the river are tidal, with salinity ranging from freshwater (< 0.5 ppt), through oligohaline (0.5–5 ppt), to mesohaline (5–20 ppt) as one heads downstream (Carter and Rybicki 1986; Mason and Flynn 1976). Net flow is downstream (average annual flow = 323 m3 s−1; Carter and Rybicki 1986); however, flow in the estuary can be reversed during flood tides (Mason and Flynn 1976). Width of the nontidal portion of the river averages 200–400 m, narrowing to ~60 m at the fall line. Below that, the tidal Potomac rapidly broadens to ~1 km wide, reaching nearly 10 km across at its mouth (Mason and Flynn 1976). The Potomac River estuary is relatively shallow with a narrow 4–7 m deep channel flanked by extensive 1–2 m deep shoals on each shore (Carter and Rybicki 1986). Vallisneria is found along 246 km of the nontidal waters above the fall line and ~74 km below, extending into the mesohaline zone. High water flow rates and exposed bedrock substrate through the waterfalls of the fall line are not suitable for
Collections
We collected 415
To be consistent with the sampling protocol of (Lloyd et al. 2011), we sought to collect ~30 shoots at each site at ~5–15 m intervals along transects parallel to river flow. Latitude and longitude were recorded for each sample using a handheld Garmin Etrex GPS unit. The actual number of shoots (range n = 5–51), and distances among them, reflected the distribution and density of plants encountered. Extremely small sample numbers from Site 1 (n = 5) and Site 27 (n = 6) included all shoots found despite extensive searches. At other sites, sparse distributions necessitated larger distances among samples. Tissue was placed on ice within 1 h of collection and kept cool during transport to the University of Maryland College Park.
Lloyd et al. (2011) used DNeasy Plant Mini Kits (Qiagen Inc. Germantown, Maryland, USA) to isolate DNA from samples. We isolated DNA from shoots collected in 2011 first using a Chelex Bead (Bio-Rad Laboratories, Hercules, California, USA) extraction method, where a 1 cm2 fragment of leaf tissue was ground with a sterilized glass pestle in 200 μL of a 10% Chelex slurry. Samples were boiled at 100°C for 10 min on an MJ Research PTC-200 Peltier Thermal Cycler. Supernatant containing DNA was removed and diluted 1:2 in sterilized deionized water. Due to excessive missing data from ~30% of the samples extracted with Chelex, we subsequently used sbeadx Plant Maxi DNA extraction kits (LGC Genomics, Beverly, Massachusetts USA) following the manufacturer's instructions to extract DNA from frozen tissue of the problematic samples. Samples from 2013 were extracted with Synergy 2.0 kits (OPS Diagnostics, Lebanon, New Jersey, USA) following the manufacturer instructions. All shoots extracted using both Chelex and LGC protocols were genotyped using both extractions, and the resulting genotype profiles were reconciled. Extracting samples from earlier collection periods with later extraction methods allowed us to ensure consistent allele calls across extraction protocols and observers. We found no differences in DNA quantity or quality or genotyping results among any of the kits, but found that the Chelex method did not provide reliable allele calls and recommended against its use.
From extracted DNA, we amplified 10 loci using primers and PCR protocols developed for the species (Burnett et al. 2009) and used in previous studies (Lloyd et al. 2011, 2018; Ngeve et al. 2023). PCR products were separated and measured on an Applied Biosystems 3730xl DNA Analyzer with a 500 LIZ Size Standard (Applied Biosystems/ThermoFisher Scientific, Waltham, Massachusetts USA). Peak data were analyzed using Applied Biosystems GeneMapper v3.7 software using the same bin definitions across all samples. Allele calls were visually inspected and made consistent with the previously analyzed data by following standards set by Lloyd et al. (2011) and Marsden et al. (2022). Samples with ambiguous allele calls were re-genotyped, and calls that remained ambiguous after four attempts were coded as missing. Because we used the same protocols across time periods and we re-genotyped a subset of earlier samples to calibrate genotype calls in later time periods, we are confident that the datasets can be combined.
Data Analysis
Except as noted, all analyses were conducted in R version 4.4.1 (R Core Team 2024).
Among-Sample and Site Distances
Latitude and longitude of each sample were converted to Universal Transverse Mercator (UTM) coordinates in the NAD83 datum. Site centroids were calculated as the means of sample coordinates. Centroids for four sites fell on land and were moved to the closest location in water at the same position along the river gradient. We calculated the distance in kilometers from the mouth of the river (termed river km) for each site by projecting the population centroid to the midline of the river using ArcMap v10 (ESRI 2019). Sample locations ranged from river km 89 (Site 36) to km 462 (Site 1; Figure 1).
We calculated pairwise distances among all samples and site centroids using both Euclidean distance and cost distance restricted to water. Euclidean distance is more accurate at small spatial scales and when connections are direct paths because raster-based distance calculations underestimate distance as a function of cell size. Cost distances are more accurate at larger spatial scales over which sites are separated by convoluted shorelines and circuitous river courses, and cell size is a negligible fraction of the total distance. Water extent was defined by digitizing the river shoreline following the satellite imagery in ArcMap (ESRI 2019). The resulting shapefile was converted to raster format with a 10 m cell size. The raster file was read into R using the function rast from the terra package (Hijmans 2024) and was corrected to ensure that all sample points and site centroids fell within cells coded as water. We converted the corrected raster to a transition matrix using the gdistance package version 1.6.4 (van Etten 2017) with the transition function defined as the minimum cost between the eight neighboring cells with correction for differences in edge-to-edge versus corner-to-corner connections. We assigned water a conductance of one and land a conductance of zero (i.e., it was impassable). Shortest path cost distances among all pairs of samples and site centroids were calculated using the costdistance function by total cost of cells traversed in the transition surface by the cell size. To get the most accurate distance, we used the larger of Euclidean and cost distances for each pairwise comparison of samples and sites (as in Ngeve et al. 2023).
Identifying Multilocus Genotypes
Shoots were first assigned to MLGs based on complete multilocus matches. Shoots collected in or before 2011 were assigned with Genodive v2.0b17 (Meirmans and Van Tienderen 2004). The 2013 samples were assigned using the mlg function in the R package poppr Version 2.9.6 (Kamvar et al. 2015, 2014) and integrated into the Lloyd et al. (2011) MLG assignment framework. To determine if new collections were the same as existing MLGs, we assigned samples from all years to MLGs and filtered for MLGs with samples from multiple years. In such cases, the new samples were assigned the original MLG code. Each new MLG was assigned a unique code.
After the initial assignment of MLGs, we investigated any potential errors in estimating genotypic diversity with additional analyses using functions in the aforementioned poppr package. Requiring complete matches prevented underestimating genotypic diversity but assigned 58 shoots with missing allele data to distinct MLGs. To prevent overestimating the number of MLGs, we manually checked all shoots that had missing data and assigned them to new MLGs only if they were unique based on resolved loci. Next, we plotted the distribution of genetic distance among MLGs using the function filter_stats to identify similar MLGs that could represent potential scoring errors or somatic mutations (following Arnaud-Haond et al. 2020). We used that distribution to identify the distance threshold below which MLGs were further evaluated for collapsing into multilocus lineages (MLLs). We did this collapsing using the function mlg_filter, when the differences included only one allele and locus, and if the less common MLG did not occur more than once. We assessed the power of the microsatellite data to distinguish among the original MLGs and the MLLs using the genotype_curve function. Finally, for MLLs occurring more than once, we calculated psex (Arnaud-Haond et al. 2007; Parks and Werth 1993) using the multiple method to assess the probability of seeing the MLL the number of times it was observed, if those instances arose from separate zygotes. We considered additional occurrences of an MLL beyond the first to be a member of the same clone if psex was < 0.001, an arbitrary but reasonably low probability of seeing multiple instances of a genotype by chance if it was not due to the same sexual reproductive event.
Quantifying Genotypic Diversity
To understand the magnitude of asexual reproduction, we counted the number of single-stemmed versus multistemmed MLLs across the entire sampling extent, in each tidal regime, and in each of the 36 sample sites. We calculated the extent of each multistemmed MLL as the number of times it occurred and as the maximum distance among samples through water, paying particular attention to MLLs that occurred across multiple sites. We also noted MLLs that were detected in different years as an indication that we were calling alleles consistently through time.
We used the poppr mll function to calculate the number of MLLs, as well as the Shannon and Gini-Simpson diversity indices for the entire river, each tidal regime, and each site. For each sampling scale, we standardized the index values as the exponent of Shannon's index (EffShannon) and the reciprocal of Simpson's index (EffSimpson). These standardizations give the effective number of MLLs, defined as the number of equally abundant MLLs that would yield the observed index value (Jost 2007). Effective numbers overcome the nonlinear behavior of the raw indices (Jost 2007), and because they are expressed as numbers of MLLs, they are intuitive to interpret and compare. The relative decline from the number of MLLs to EffShannon to EffSimpson highlights evenness versus dominance. If all samples are different MLLs, they are equally frequent and all effective numbers will be the same maximum value. As MLL abundances become increasingly uneven, the three effective numbers decline in a predictable order, and differences among them increase due to differential sensitivity to influence rare versus common genotypes. We used Pareto β as an alternative approach to ranking populations in terms of unevenness among MLLs (Arnaud-Haond et al. 2020; Stoeckel et al. 2021).
We calculated genotypic richness (R) as (G − 1)/(N − 1), where G is the number (or effective number) of MLLs in N genotyped shoots (Arnaud-Haond et al. 2007) at the three sample scales (river, tidal regime, sites). R, RShannon, and RSimpson will be one if all samples are unique genotypes and zero if all samples are the same genotype and will decline monotonically according to the sensitivity of the respective effective numbers to rare versus common MLLs. We also calculated all genotypic diversity measures with samples rarefied to our smallest sample size (n = 5) to control for sample size differences.
We used the coancestry function in the R package-related version 1.0 (Pew et al. 2015) to estimate pairwise relatedness among all samples and among distinct MLLs using Wang's r (Wang 2002). Relatedness among all samples gives insight into the combined influence of clonal and sexual reproduction on relationships among shoots. High values result if many shoots are the same MLL or if different MLLs are closely related to one another. Wang's r among only distinct MLLs tells us the unique component of relatedness due to sexual reproduction among relatives. We chose Wang's r because the compareestimators function indicated low variance and bias across relationship categories when analyzed using procedures of Taylor (2015). To determine if relatedness differed from expectation across the entire Potomac River or within tidal regimes, we used the grouprel function to compare observed values with distributions of values generated by randomly shuffling samples between the groups 1000 times while keeping each group size constant. Additionally, we calculated the mean pairwise Wang's r of each sample to all other samples within the same site (rW) and to samples from other sites within the same tidal regime (rA). We then summarized rW and rA to the site level as the average of all samples in each site. We followed the same process using one representative of each MLL per site.
Measures of Genetic Diversity
We calculated standard within-site measures of genetic diversity at each of the three sampling scales. In each case, we used all samples to avoid bias introduced by removing clonal replicates (as suggested by Meirmans 2024). The number of polymorphic loci (P) and alleles per locus (A) were obtained from the summary of the genind object. The number of alleles per locus rarefied to the smallest number of alleles (n = 15; Ar) was estimated using the allelic.richness function in the hierfstat R package version 0.5-11 (Goudet 1995). Mean observed (Ho), expected (Hs) heterozygosity, and the deviation from the ratio of Ho and Hs expected under Hardy–Weinberg equilibrium (FIS) across loci were calculated using the hierfstat function basic.stats. We considered FIS significant when the 95% confidence intervals calculated from using 1000 bootstrap replicates in boot.ppfis did not include zero. Variance across loci for FIS was calculated as it is suggested to give insight into rates of clonality (Stoeckel et al. 2021). We also calculated site-levels Ho, Hs, and FIS using clone correction (i.e., with one instance of each MLL in each site) to compare with values from all samples and used the differences between the estimates to assess clonality (Meirmans 2024).
Genetic Structure Among Sites and Tidal Regimes
We used all samples to summarize among-site genetic diversity using Wright's FST (Weir and Cockerham 1984), (Hedrick 2005), and Dest (Jost 2008). We report FST for comparative purposes because it is the most commonly used measure of among-population genetic variance. However, it is downward biased with highly heterozygous microsatellite markers (Bossart and Pashley Prowell 1998; Hedrick 2005; Neigel 2002). We calculated , a version of GST scaled to the maximum possible for the observed amount of heterozygosity (Hedrick 2005). We calculated Dest because it describes genetic differentiation based on the effective numbers of alleles, which overcomes limitations of heterozygosity-based measures (Jost 2008; Meirmans and Hedrick 2011). All three measures of among-population genetic variance were calculated globally and pairwise for each site overall, each site within tidal regime, and for the two tidal regimes. For global measures, we used the hierfstat function wc for FST and the MMOD version 1.3.3 (Winter 2012) function diffstats for and Dest. The global measures were considered to be significant when 95% confidence intervals from 1000 bootstraps did not include 0. Bootstrap estimates for FST were done with hierfstat's boot.vc function. For the MMOD estimators, we generated bootstrap samples with chao_bootstrap and generated and Dest for those samples using summarize_bootstrap in MMOD. Paired comparisons were calculated using pairwise.WCfst from hierfstat, and pairwise_Hedrick and pairwise_D from MMOD.
We used Mantel tests as implemented by the mantel.randtest function in the R package adegenet version 2.1.10 (Jombart and Ahmed 2011) to test for IBD among sites based on the magnitude and significance of the correlation between geographic distance and Edward's chord genetic distance. We calculated Edward's chord distance with the dist.genpop function in adegenet using all samples. To understand how tidal regime affected IBD, we conducted three tests: one using all sites and one for sites within each tidal regime. We assessed the probability of seeing the relationships in each comparison by random chance using 999 permutations.
Finally, we used correspondence analysis (CA) as implemented by the CA function in the R package FactoMineR version 2.1.1 (Lê et al. 2008) to understand relationships among sites based on a two-way contingency table of allele frequencies (Kostov et al. 2015). In CA, contingency tables are reduced to fewer dimensions to capture the majority of allelic variance and identify associations between sites and alleles. When these dimensions are plotted, sites with similar allele frequencies are placed close to one another. If genetic variation is primarily due to geography, we expect sites in the ordination space to reflect their distribution along the river. If combining samples from different years over the 6-year time period affected our results, we would expect samples from the year of sampling to override geography.
Testing for Differences Among Sites in Different Tidal Regimes
To quantify the probability of seeing the observed differences in site-level measures of genotypic diversity, relatedness, and genetic diversity between tidal regimes by chance, we permuted values across sites 10,000 times using the permutations function in the modelr package version 0.1.11 (Wickham 2023). We calculated the absolute value of the difference between the mean in each tidal regime for each permutation and the observed data. The proportion of permuted differences that were larger than the observed was recorded as the probability of the observed value occurring by chance. Nonsignificant values are reported to the second decimal place. We tested for accumulation of diversity along the Potomac River using Spearman rank correlation analysis of each measure of genotypic and genetic diversity against river km as implemented in the function rcorr in the package Hmisc version 5.1–3 (Harrell Jr. 2017).
Results
Geographic Distances Among Samples and Sites
Nearest neighbor distance for each sample ranged from 0 m (below the resolution of the GPS unit) to 137 m with an overall median nearest neighbor distance of 10.1 m. The median of minimum distances calculated among samples within sites ranged from 4.2 to 27.9 m (Appendix B: Table A2). Site extents (maximum distances among samples within sites) ranged from 66.6 to 4652 m (Appendix B: Table A2). The large spatial extents at four tidal sites reflect the relatively sparse but widespread distribution of the species in some tidal tributaries. Even within these sites, some nearest neighbor distances among samples were similar to the more typical sites.
Nearest neighbor distances among sites based on the larger of Euclidean or cost distance within water ranged from 0.1 to 24.1 km with a median of 6.5 km. Among nontidal sites, nearest neighbors ranged from 0.1 to 19 km, with a median of 3.8 km; these same values for tidal sites were 1 to 24.1 km, with a median of 6.8 km. The largest distance through water between pairs of sites was 380.0 km and, on average, the median distance of one site to all other sites was 129.4 km. The most distant tidal sites were 78.7 km apart, and the median distance from a site to all others averaged 31.3 km. In the nontidal, these distances were 193 and 82.2 km, reflecting the greater extent of the nontidal region. The gap between tidal and nontidal samples includes the fall line where the river passes from the Piedmont Province to Coastal Plain Province as well as a tidal portion of the River. The rocky substrate and fast currents through the fall line make it unsuitable habitat. We know of historic
Data Quality and Genotype Assignments
Our dataset contained 953 samples (595 nontidal and 358 tidal), including the 623 samples we collected in 2011/2013 and 330 samples collected in 2007/2008 by Lloyd et al. (2011). The nontidal samples collected in 2007/2008 versus 2011 showed similar levels of genotypic diversity, and the same dominant clones were detected in both time periods. Levels of diversity and differentiation were also similar among tidal sites, regardless of whether they were sampled in 2007/2008 or 2013.
Genotyping resulted in 0.1% and 1.4% missing data per locus in nontidal and tidal samples respectively, with 59 samples having missing allele information at one or more loci. Missing data precluded unambiguous assignment of 13 nontidal samples to MLGs. The remaining 46 samples with missing data were unique based on the resolved loci and were assigned as MLGs, yielding 941 shoots assigned to 507 MLGs (187 nontidal, 320 tidal). Collapsing MLGs with small genetic distances reduced the MLGs to 482 MLLs (173 nontidal, 309 tidal). Although all loci were needed to distinguish all MLGs, the genotype accumulation curve indicates very small incremental increases in MLGs after seven loci (Figure 2), with only 1% of MLGs added at the final step. Values of psex for MLLs that occurred multiple times were always < 0.001. This low probability of observing replicate occurrences from different sexual reproductive events by chance gave us confidence that they are members of the same clonal lineage.
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Genotypic Diversity
River-wide, the 482 MLLs (R = 0.51) yielded EffShannon of 99 (RShannon = 0.10), EffSimpson of 11.7 (RSimpson = 0.01), and Pareto β was 0.15. The extremely small effective numbers of MLLs were driven by lower diversity and higher dominance in the nontidal regime where 582 samples yielded only 173 MLLs (R = 0.30). This unevenness was reflected in EffShannon of 17.8 (RShannon = 0.03), EffSimpson of 4.5 (RSimpson = 0.01), and Pareto β of 0.10. By contrast, 358 tidal samples yielded 309 MLLs (R = 0.86), EffShannon of 234.8 (RShannon = 0.79), and EffSimpson of 234.7 (RSimpson = 0.65), and Pareto β of 1.82. Overall, RShannon diversity was 18% of the river-wide value of R, 10% of total R in the nontidal sites, and 92% of R in the tidal sites. RSimpson was 2%, 3%, and 76% of the R in the full river, nontidal, and tidal reaches, respectively.
Within the 36 sites, we genotyped on average 26.1 (SD = 8.9) shoots, yielding between 1 and 41 MLLs and R ranging from 0.00 to 1.00 ( = 0.55, SD = 0.32; Figure 3A). R in nontidal sites ranged from 0 to 1, but ranged only from 0.55 to 1 in tidal sites, resulting in lower mean R in nontidal sites ( = 0.38, SD = 0.26) than in tidal sites ( = 0.87, SD = 0.14; p < 0.0001; Figure 3A). Further, comparison of effective numbers of genotypes within sites revealed greater dominance by fewer genotypes in the nontidal than in the tidal sites, with the observed values being more extreme than all 10,000 permutations in all cases. RShannon diversity averaged 60% of total R in the nontidal sites and 94% of R in the tidal sites (Figure 3B,C). RSimpson averaged 45% versus 88% of the R in the nontidal and tidal sites, respectively. Pareto β averaged 0.25 in nontidal sites and 2.6 in tidal sites (Figure 3D).
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Unevenness of MLLs was driven by 53 MLLs that were found multiple times, accounting for 54.4% of all shoots. Twenty-nine multisample MLLs were from the tidal, where they represented 9.4% of the MLLs and 21.8% of the tidal shoots. The 24 multisample MLLs from the nontidal represented 13.9% of the MLLs, but 74.4% of the nontidal sampled shoots. These nontidal MLLs extended from < 0.5 m to 233 km, with 17 occurring at multiple sites, and eight of those extending > 100 km (Figure 4). Two nontidal MLLs (MLL199 and MLL266) were particularly widespread and dominant (Figure 4). MLL199 was sampled 236 times from 23 sites spanning ~230 river km, representing 4%–86% of shoots genotyped where it was found. We found MLL266 137 times in 15 sites spanning 152 river km, representing 4%–100% of shoots genotyped in those sites (Figure 4). By contrast, only three tidal MLLs were sampled from more than one site. Two of these were also unique MLGs, both of which were shared by the two adjacent sites in Belmont Bay. Specifically, MLL502 was found eight times, once in Site 29 and seven times in Site 30, and MLL 3337 was found once in Site 29 and twice in Site 30. Neither of these MLLs extended more than 1.5 km. MLL 543 was found 20.3 km apart in Sites 26 and 31. This MLL represented two MLGs that differed by one locus. The 26 other tidal MLLs that occurred multiple times were restricted to single sites, where they comprised 3.9%–33.3% of the genotyped shoots, with spatial extents ranging from ~1 to 186 m.
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Number of MLLs (ρ = −0.67, p = 6.8e−6) and R (ρ = −0.73, p = 4.7e−7) were negatively correlated with river km, indicating downstream accumulation of genotypic diversity. However, the correlation was driven primarily by the higher R in tidal than nontidal sites. When they were examined separately, correlations with R were much weaker and were marginally significant (tidal ρ = −0.58, p = 0.048; nontidal ρ = −0.40, p = 0. 051; Figure 3A). Correlations between the number of MLLs and river km were not significant in either (tidal: ρ = −0.07, p = 0.837; nontidal: ρ = −0.33, p = 0.115). Correlations of R and river km based on both effective numbers of genotypes mirrored standard R river-wide but were not significant within either tidal regime (Figure 3B,C). Pareto β was lower upstream in the whole river (ρ = −0.83, p = 1.3e−8) and in nontidal (ρ = −0.57, p = 0.007) but not in tidal sites (ρ = −0.16, p = 0.68).
Relatedness Among Samples and
Mean pairwise Wang's r among all samples was 0.041 (SD = 0.42) and among only unique MLLs at each site was −0.04 (SD = 0.33). When tidal regimes were analyzed separately, permutation tests indicated that all nontidal samples ( = 0.33, SD = 0.47) and MLLs ( = 0.25, SD = 0.31) were substantially more closely related to each other than expected, whereas tidal samples ( = −0.13; SD = 0.28) and MLLs ( = −0.08 with SD = 0.27) were less related than expected (all p < 0.0001). These differences yielded higher relatedness in the nontidal than the tidal regime when considering all samples and only unique MLLs (both with p < 0.0001). Mean relatedness between the tidal regimes was −0.145 (SD = 0.25) for all samples and −0.117 (SD = 0.25) for all MLLs.
Pairwise comparisons of all samples from the same site yielded average rW of 0.37 (SD = 0.39) and those from different sites in the same tidal regime averaged rA of 0.15 (SD = 0.27). When considering only unique MLLs, rW averaged 0.28 (SD = 0.26) and rA averaged 0.15 (SD = 0.17). Relatedness among all nontidal samples (Figure 5A,B) was substantial whether they came from the same site (rW: = 0.59, SD = 0.32) or from different (rA: = 0.32, SD = 0.16; Figure 5) sites. By contrast, samples from tidal sites indicated no deviation from expected relatedness within sites (rW: = 0.018, SD = 0.16) and lower relatedness than expected among (rA: = −0.14; SD = 0.112; Figure 5A,B) sites. When only unique MLLs were examined (Figure 5C,D), relatedness in nontidal sites remained high both within (rW: = 0.39; SD = 0.24) and among sites (rA: = 0.26; SD = 0.06). Relatedness among MLLs from tidal sites remained low whether they were from the same (rW: = 0.04; SD = 0.09) or different sites (rA: = −0.09; SD = 0.03). All observed differences in rW and rA between tidal and nontidal reaches were greater than all 10,000 permutations (Figure 5).
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Pairwise relatedness in all the 36 sites yielded a positive correlation for both rW and rA with river km (Figure 5) when all samples were included (rW: ρ = 0.79; p = 9.1e−9; rA: ρ = 0.92; p = 8.8e−16) and when only unique MLGs at each site were included (rW: ρ = 0.75; p = 1.67e−7; rA: ρ = 0.83; p = 3.21e−10). Relatedness based on all samples (Figure 5A,B) was positively correlated with river km in nontidal reaches (rW ρ = 0.47; p = 0.02 and rA ρ = 0.82; p = 9.6e−6), but not in the tidal reaches (rW ρ = −0.27; p = 0.40; rA ρ = 0.4; p = 0.20). The same relationships held when considering only unique MLLs (nontidal rW ρ = 0.41; p = 0.046 and rA ρ = 0.50; p = 0.013; and tidal rW ρ = −0.24; p = 0.46 and rA ρ = 0.46; p = 0.13; Figure 5C,D). Thus, all samples and unique MLLs from both the same and different sites became more closely related to each other as one moved upstream only in the nontidal regime. Higher relatedness in the nontidal regime drove the positive correlation at the river scale.
Genetic Diversity
We detected 79 alleles across 10 microsatellite loci (range = 5–13 per locus). The nontidal regime supported 57 alleles and the tidal supported 70; 48 alleles were common to both regimes. Although the loci were polymorphic overall and within each tidal regime, within-site P averaged 0.88 (SD= 0.10). Nontidal sites were less polymorphic ( = 0.78; SD = 0.10) than tidal sites ( = 0.87; SD = 0.09; p = 9.7 e −3; Figure 6A).
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When considering all samples across both tidal regimes, within-site A averaged 3.16 (SD = 0.98). Considered separately, A was lower in nontidal sites ( = 2.60; SD = 0.53) than tidal sites ( = 4.27; SD = 0.67; p = 0.0001; Figure 6B). These differences remained significant when alleles were rarefied (p = 0.0001). Strong negative correlation between A and river km (ρ = −0.77, p = 3.9e−8) was driven by the difference between nontidal and tidal sites. The correlation was weak in the nontidal region (ρ = −0.43, p = 0.035) and absent for the tidal region of the river (ρ = −0.17, p = 0.59). We also saw a negative correlation for Ar when considering all sites (ρ = −0.77, p = 3.2e−8), a weak relationship for nontidal sites (ρ = −0.41, p = 0.05), but no relationship (ρ = 0.032, p = 0.92) across tidal sites.
Average Ho within all sample sites was 0.54 (SD= 0.10), and was higher in nontidal ( = 0.58, SD = 0.08) than tidal sites ( = 0.45, SD = 0.06; p = 0.0001; Figure 6C). We found a strong correlation between site-level Ho and river km (ρ = 0.81, p = 2.1e−9), indicating lower Ho in downstream locations. The relationship remained significant in the nontidal regime (ρ = 0.77, p = 9.3e−6), but not the tidal (ρ = 0.17, p = 0.60). Hs averaged 0.42 (SD = 0.06) across all sample sites, and was lower in nontidal ( = 0.39, SD = 0.05) than tidal sites ( = 0.47, SD = 0.05; p = 0.0001; Figure 6D). We found a strong correlation between site-level Hs and river km (ρ = −0.54, p = 7.5e4) at the scale of the river, but not in the nontidal (ρ = −0.13, p = 0.54) or tidal (ρ = 0.24, p = 0.45). Thus, lower Hs in downstream locations was due to differences between tidal regimes.
Site-level FIS values averaged −0.30 overall (SD = 0.34) and indicated heterozygote deficit in 2 tidal sites and heterozygote excess in 21 nontidal sites. Mean FIS values (Figure 6E) for nontidal ( = −0.47; SD = 0.30) and tidal ( = 0.02; SD = 0.08) sites reflected those differences (p < 0.0001; Figure 6E). Overall negative correlation between FIS and river km indicated increasing heterozygote excess when moving upstream through the entire river (ρ = −0.80, p = 4.01e−9). This pattern was driven by the observed negative correlation in the nontidal (ρ = −0.47, p = 0.021) as the tidal showed no correlation between FIS and river km (ρ = 0.03, p = 0.92). Variance in FIS across loci within sites (Figure 6F) was similar across the river (p = 0.411), averaging 0.06 (SD = 0.06) overall, 0.07 (SD = 0.07) in nontidal sites, and 0.05 (SD = 0.05) in tidal sites, with no correlation with river km at any scale (all p ≥ 0.64).
Clone-correction substantially altered Ho, Hs, and FIS values in sites that supported clonal replicates (Figure 7). Although the direction of deviation in Ho varied, it was typically lower in clone-corrected samples. By contrast, clone-corrected Hs was always lower when any clones were present, and this difference yielded substantially lower FIS values. Deviations were obvious even at R values of 0.9, and the lowest Hs and FIS values were associated with R ranging from ~0.2–0.4 (Figure 7B).
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Genetic Structure Among Sites and Tidal Regions
Among all sites, overall FST was 0.155, was 0.243, and Dest was 0.119. Global values among nontidal sites (FST: 0.128, : 0.175, and Dest: 0.077) were similar to those among tidal sites (FST: 0.092, : 0.175, and Dest: 0.090). Global values for tidal versus nontidal samples were (FST: 0.099, : 0.187, and Dest: 0.10), indicating similar low gene flow between the tidal regimes and among sites within each region. Confidence intervals for all global estimates of the three measures indicated values were greater than 0.
Mean values from pairwise comparisons of each site to all other sites were FST (0.139), (0.219), and Dest (0.114). Values of all three measures from pairwise comparisons among nontidal sites (FST = 0.091, = 0.157, and Dest = 0.082) were not different from comparisons among nontidal sites (FST = 0.107, = 0.199, and Dest = 0.102; Figure 8A–C) with permutation tests yielding p-values of 0.34, 0.57, and 0.37, respectively.
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IBD based on correlation of Edward's chord genetic distance and geographic distance among sites through water was strongly positive for all samples from all sites combined (Mantel's r = 0.72), from only nontidal sites (Mantel's r = 0.70), and from only tidal sites (Mantel's r = 0.77), all with p = 0.001 (Figure 9). Although all three Mantel's r values were similar, the relationships were nonlinear and differed in the spatial scale of inflections in the slope. Tidal sites increased most rapidly up to ~30 km and again between 50 and 75 km (Figure 9). Increases in distances among nontidal sites consisted of two relatively linear domains, with a shallower slope among sites within ~80 km of one another. When all sites were considered, two linear domains were observed, with a slightly shallower slope for distances among sites that were greater than ~160 km apart (including both nontidal sites and sites between tidal regimes).
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In the correspondence analysis, Axis 1 explained 32.7% of the variation and Axis 2 explained 21.4%. Axis 1 mostly separated tidal from nontidal sites (Figure 10). Nontidal sites were arrayed in relatively even intervals from upstream to downstream along increasing values of Axis 1 and decreasing values of Axis 2. Similarity in CA scores was more related to geographic proximity than the time period of sampling. Even so, geographically proximate sites were not always closest in ordination space (Figure 10). Tidal sites occupied a larger extent of both axes, with larger and more uneven ordination distances among sites (Figure 10). Arrangement of tidal sites also generally reflected location along the river gradient, with more downstream locations having higher values on Axis 2. Sites from different time periods were intermixed along the CA gradients. Site 27 is anomalous among tidal sites in that it appeared more similar to nontidal sites on Axis 1. This site supported only three MLLs and their allele frequency profiles differ from those of other tidal sites.
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Discussion
Examining the spatial genetic diversity in
When tidal sites were considered separately, downstream accumulation of diversity was seen only for R (Figure 3A), and even that was only marginally significant (p = 0.048). Stronger and more nonlinear IBD (Figure 9) and greater and more irregular CA distance among tidal sites (Figure 10) indicate the relatively chaotic patterns that are typical of marine environments (Becheler et al. 2010; Jahnke et al. 2018; Johnson and Black 1984; Selkoe et al. 2010; Siegel et al. 2008; Sinclair, Gecan, et al. 2014). In contrast, the relatively linear IBD and continuous distribution variation in CA ordination space in the nontidal environment were consistent with riverine hydrologic connectivity. However, we saw downstream accumulation only for A (Figure 6B), whereas Ho was higher in more upstream locations (Figure 6C). Thus, rather than seeing a continuous increase along the river, the fall line marks an abrupt change in structure and diversity, indicating that tidal influence disrupts hydrologic connectivity. Below, we discuss how the interplay between local environmental conditions and species biology affects genotypic and genetic structure and yields different outlooks for resilience for the same species growing in different parts of the same river.
Shifting Life-History Patterns Across Tidal Regimes
Observed differences in genetic structure between nontidal and tidal environments reflect shifting reproductive modes that drive MLL diversity and dominance (Figure 3), and relatedness among those MLLs (Figure 5) in the two environments. A broad range of genotypic diversity is common across the ranges of long-lived, outcrossing, partially clonal aquatic species (Becheler et al. 2010; Procaccini et al. 2001; Sinclair et al. 2020), including
Beyond simply the amount of clonal reproduction, the spatial extent of multiple nontidal MLLs indicates a magnitude of vegetative dispersal (Figure 4) that exceeds reports for other submersed aquatic plants. For example, 12 MLLs were larger than Zostera noltei clones (24 km; Berković et al. 2018), and eight of those were larger than a
Given the high degree of clonality and the large extent of multiple MLLs, the high relatedness among all sampled shoots in the nontidal (Figure 5A,B) is not surprising given clonal shoots have r = 1. What was surprising was the high relatedness among different nontidal MLLs (Figure 5C,D), even ones that were not growing at the same site. This high degree of relatedness across such a large spatial scale could depress the potential for adaptation beyond what the extremely low number of nontidal MLLs already suggests. This is in contrast to the tidal reaches in which samples and MLLs within sites are not more related than expected and are less related than expected across sites (Figure 5).
Potential Drivers of Differentiation and Variation in Genetic Structure
We explore three possible explanations for high apparent clonal reproduction in nontidal reaches when it is so rare in tidal reaches: (1) differing mechanisms of recruitment and persistence, (2) limited opportunity for pollination in directional water flow, and (3) relative stability. Although we offer these explanations, we recognize that the differences cannot be attributed exclusively to tidal regime because we have found similarly low R in tidal sites in the Hudson River of New York (Marsden et al. 2022; Ngeve et al. 2023).
Genotypic diversity in submersed aquatic plants is influenced by bed establishment and continued recruitment. Two strategies that yield different levels of genotypic diversity have been proposed (Silvertown 2008). In one, beds establish through initial seedling recruitment (ISR; Eriksson 1993) and further develop via asexual expansion of the initial recruits (Silvertown 2008). Under ISR, initial diversity is a function of the seed abundance and their allelic diversity and relatedness. Diversity will decrease as beds age because more shoots will be clonal replicates. Increased unevenness due to different rates of clonal reproduction across the colonists will further decrease diversity (Chen et al. 2007; Piquot et al. 1998). The alternative strategy, repeated seedling recruitment (RSR; Alberto et al. 2005; Eriksson 1993), yields more genotypic variation through ongoing sexual reproduction. Genetic diversity and relatedness will depend on whether continued recruitment is from matings among initial recruits or includes new immigrants. The ISR strategy is thought to be common in stable environments and the RSR strategy is associated with moderate disturbance (Becheler et al. 2014; Eriksson 1993).
Tidal Potomac sites conform to the RSR strategy in that almost all samples resulted from sexual reproduction (Figure 3). The small amount of asexual reproduction was localized to a median extent of < 24 m, and the largest extent was 1.5 km in the same bay (in Sites 29 and 30). Low relatedness among sampled shoots within sites (Figure 5) indicates large populations or ongoing recruitment from other sites. However, significant inbreeding coefficients at three tidal sites (25, 31, and 33) could indicate mating among initial recruits and their offspring, but it is curious this is not reflected in relatedness. Despite being statistically significant, the levels of inbreeding were relatively low and could also be due to Wahlund effects if the intrasample distances exceeded local breeding neighborhoods (Neel et al. 2013; Waples 2015).
Nontidal sites conformed to neither ISR nor RSR in that the extent of vegetative propagules cannot be explained by localized incremental stoloniferous growth. Lloyd et al. (2011) noted the time needed for observed expansion of their two largest
As individual MLLs of this dioecious species become dominant over large spatial scales, eco-evolutionary feedbacks emerge because plants of the opposite sex can become isolated beyond effective pollination distances, which are on the order of a few meters (Lloyd et al. 2018). Nontidal environments may also have more limited opportunities for pollination given that rapid, directional currents carry staminate flowers out of beds and away from pistillate flowers (Sullivan and Titus 1996) and hold pistillate flowers below the water surface where pollination occurs. Low levels of pollination will favor vegetative expansion, leading to even larger extents of individual MLLs, and even further limiting sexual reproduction (Barrett 2015; Honnay and Bossuyt 2005; Lokker et al. 1997, 1994; Lovett-Doust and Laporte 1991). Sites dominated by one or a few MLLs then provide vegetative propagule pressure that fuels downstream dispersal and amplifies the clonal extent and dominance across multiple sites. If most shoots at a site are clonal replicates, the only natural source of new genotypic diversity is dispersal from other sites, which is most often accomplished through water. The potential for dispersal to be a source of new diversity depends on proximity to and diversity in established populations (McMahon et al. 2014). Given the low diversity, extensive clonality, and high relatedness among MLLs in the 246 km extent of the species in the nontidal, there is no proximal source of increased diversity. The potential for new diversity is limited to very low probability long-distance dispersal events. The strong disjunction between the tidal and nontidal regions indicates such events have not been common.
The contrasting lack of extensive clonality in the tidal reaches indicates sufficient pollination for sexual reproduction or lower rates of asexual growth. Pollination is potentially facilitated by tidal flow that can slow or reverse downstream currents and retain male flowers in
Differences in the relative environmental stability also potentially drive differences in tidal versus nontidal genotypic structure (Banks et al. 2013; McMahon et al. 2017). As with all rivers, the whole Potomac is dynamic and both reaches are exposed to periodic disturbances. However, directional freshwater flows in the nontidal create relatively consistent environmental conditions compared to the semi-diurnal and seasonal fluctuations in salinity, temperature, and turbidity in tidal sites. Relatively stable environments favor expansion via asexual reproduction, whereas more dynamic, disturbance-prone environments may limit it (Cao et al. 2021; Sinclair, Krauss, et al. 2014). For example, open-water meadows of the seagrass Posidonia australis with moderate levels of disturbance had higher levels of genotypic and allelic diversity than highly exposed sites (Sinclair, Krauss, et al. 2014). This relationship is not ubiquitous, as the freshwater species
Implications for Resilience
The major threats to persistence of
The perceived risks and benefits of extensive clonal growth as observed in the nontidal Potomac are mixed (Eckert et al. 2016; Vallejo-Marín et al. 2010). Some authors consider highly clonal populations an evolutionary dead end (Honnay and Bossuyt 2005) given that without genetic variation on which natural selection can act, long-term prospects for adaptation will be dim. Although somatic mutations will likely have accumulated (Reusch and Bostrom 2011; Yu et al. 2020), the probability that those mutations would be adaptive is extremely low, leaving acclimation through phenotypic plasticity as the only means of responding to environmental change (Pazzaglia et al. 2021). In this regard, epigenetic variation, as in Jueterbock et al. (2020), could be vital to future persistence. Other research emphasizes how clonal growth can enable immediate resilience by facilitating persistence through and recovery from disturbance in conditions that do not favor sexual reproduction (de Witte and Stocklin 2010; Fahrig et al. 1994; Ngeve et al. 2023; van der Merwe et al. 2010). Large clones have even been suggested as a key strategy to surviving changing climate (Bricker et al. 2018).
Given these insights into the risks and benefits of clonal growth, one can now begin to explore whether the high heterozygosity that emerges as a consequence of clonality (Meirmans 2024; Stoeckel et al. 2021) confers fitness or acclimation potential to clonal individuals. Indeed, higher fitness in outcrossed than inbred individuals is one of the most fundamental observations in plant evolutionary ecology. In experiments, more heterozygous
Potential for resilience also depends on whether the levels of diversity we observed result from long-term processes or recent anthropogenic activities. If
Implications for Restoration
Given uncertainty in how the genetic structure in the Potomac River has come to be and about its impact on acclimation potential, we suggest that increasing genotypic diversity in the nontidal Potomac through genetic rescue would be a prudent action. Without intervention, increases in diversity are unlikely because large extents of single clones limit the proximity of different sexes and further favor clonal expansion due to the limited opportunities for sexual reproduction, and there is no nearby source of novel clonal diversity. Conservation geneticists increasingly suggest genetic rescue to be a priority management strategy in populations that are small, isolated, or drastically reduced (Broadhurst et al. 2008; Fenster and Dudash 1994; Ralls et al. 2018; Tallmon 2017; Weeks et al. 2011; Whiteley et al. 2015). However, it is usually suggested for overcoming risks from inbreeding (Broadhurst et al. 2008; Frankham 2015; Weeks et al. 2011), which is not an issue in the nontidal Potomac River. Rather, genetic diversity is limited by the small number of closely related MLLs that dominate across hundreds of kilometers, which imposes extremely small effective population sizes even with high stem counts. Low genotypic diversity also has implications for ecologically important factors such as the length of flowering, the presence of both sexes, and variation in vegetative reproduction versus flowering (Engelhardt et al. 2014). One expedient way to increase genotypic diversity would be to plant MLLs of the opposite sex into areas dominated by one MLL. This could be accomplished by propagating MLLs of known sex in isolation and transplanting ramets and turions into the field. An alternative approach that avoids the labor-intensive propagation of MLLs would be to propagate locally collected male and female MLLs together and plant the resulting fruits and seeds directly in low diversity beds following proven methods (Moore and Jarvis 2007). Although most of the nontidal part of the river could benefit from increasing diversity, emphasizing upstream locations would provide a diversity of propagules to fuel downstream dispersal of seeds and vegetative propagules.
By contrast, in tidal sites there is no immediate imperative to increase genetic diversity. Still, managers seek to increase the acreage of submersed aquatic plants in this part of the Potomac River given their coverage remains below historic levels and targets set for the management of the Chesapeake Bay and its tributaries (Patrick et al. 2023; U.S. Environmental Protection Agency 2010). As submersed aquatic vegetation is one of the metrics for the health of the bay, ongoing low coverage contributes to poor grades in annual health report cards for the Bay (Vargas-Nguyen et al. 2023). Managing nutrients and sediment and alleviating other contemporary anthropogenic pressures yield more growth and reproduction (Lefcheck et al. 2018; Zhang et al. 2018) than restoration plantings, which are often unsuccessful (Tanner et al. 2010). Further, annual monitoring data (Patrick et al. 2023) show that declines in water quality can rapidly reverse acreage gains achieved from active restoration. Still, active planting can provide founder colonies where no source populations remain.
Any active restoration effort requires choosing propagule source locations that reduce risks while fostering potential benefits. The temptation of moving propagules from one tributary to another within and across estuaries is great. Yet, it is important to reflect the natural biological processes that have shaped biodiversity patterns over millennia. Past efforts to restore
The dispersal distances and genetic breaks we identified using genetic markers provide guidance for these provenances. First, we have found different spatial structures of diversity in different rivers in eastern North America (Marsden et al. 2022), and between Potomac and Chesapeake Bay populations. At the same time, the risk of outbreeding depression was low for
- Propagules from nontidal reaches should not be used in tidal reaches and vice versa given that the two tidal regimes have strikingly different genetic structures.
- Because gene flow in the nontidal Potomac is high, we argue there is low risk in moving propagules among sites in that stretch of the river. If active restoration is desired, we recommend planting genotypes of the opposite sex that are currently most abundant in the area targeted for restoration, or by planting seeds as techniques are well established (Moore and Jarvis 2007). If harvesting in situ is not feasible, greenhouse propagation of different genotypes and crossing male and female genotypes is feasible.
- We suggest using propagules from nearby locations in the tidal Potomac to maintain the genetic composition and structure of this tributary as a separate genetic population from the rest of the Bay (Lloyd et al. 2011). The harvest of ramets in the summer and seedpods in the fall is commonly used by managers but should only be attempted when the existing
bed is healthy. A nursery of local genotypes could be useful to generate turions as well as seeds of known origin.V. americana
Restoration of submersed aquatic plant beds is of great interest worldwide given declining populations (Capistrant-Fossa and Dunton 2024; Orth, Carruthers, et al. 2006; Waycott et al. 2009). Offsetting the multiple impacts of anthropogenic pressures in the Chesapeake Bay has been a key management goal for decades (Orth et al. 2017, 2010; Orth and Moore 1983, 1984) and climate change impacts only heighten ongoing concerns (Richardson et al. 2018). Active restoration is one of the practices often employed. Combined with past studies in which we found differences in genetic structure between the Potomac River and the Chesapeake Bay (Lloyd et al. 2011) and among North American rivers (Marsden et al. 2022), we show that there is no one-size-fits-all strategy for
Author Contributions
Maile C. Neel: conceptualization (equal), data curation (equal), formal analysis (equal), investigation (equal), methodology (equal), supervision (lead), visualization (equal), writing – original draft (supporting), writing – review and editing (lead). Brittany W. Marsden: conceptualization (equal), data curation (equal), formal analysis (equal), funding acquisition (lead), investigation (equal), methodology (equal), visualization (equal), writing – original draft (lead), writing – review and editing (supporting). Katharina A. M. Engelhardt: conceptualization (equal), writing – original draft (supporting), writing – review and editing (supporting).
Acknowledgments
We thank Mike Lloyd and Robert Burnett for genotypes of the original plant collections from the Potomac River. Paul Widmer, Hayley Tumas, Robert Burnett, and Pete Hohmann assisted with collecting plant samples. We also thank all R package developers but especially thank Timothy Frasier for his help with his related package that went above and beyond the call of duty. This work was supported in part by an Environmental Protection Agency's Science To Achieve Results (STAR) Fellowship Award number FP-91711301-0 to BWM.
Conflicts of Interest
The authors declare no conflicts of interest.
Data Availability Statement
Raw genotype data and additional analysis files are available for reviewers on Dryad under the DOI: 10.5061/dryad.nvx0k6f17. All scripts are provided in an Rproject that is provided in a Zenodo archive under the DOI: 10.5281/zenodo.14787930. All data are provided within that RProject in addition to being given separately on Dryad.
Appendix - A
TABLE A1
Reach | Site | Code | Old codea | Latitude | Longitude | River Km | Year sampled | |
Non tidal | Town Creek | 1 | TC | — | 39.5227 | −78.5399 | 462 | 2011 |
Purslane Run | 2 | PR | — | 39.5347 | −78.4640 | 454 | 2011 | |
Fifteenmile Creek Upriver | 3 | FMC1 | — | 39.6241 | −78.3848 | 417 | 2011 | |
Fifteenmile Creek Downriver | 4 | FMC2 | TOUR1 | 39.6285 | −78.3833 | 417 | 2007/08 | |
Sideling Hill Creek | 5 | SHC | TOUR2 | 39.6340 | −78.3234 | 409 | 2007/08 | |
Sir John's Run | 6 | SJR | — | 39.6516 | −78.2399 | 399 | 2011 | |
Hancock Upriver | 7 | HCK1 | — | 39.6971 | −78.1815 | 391 | 2011 | |
Hancock Downriver | 8 | HCK2 | HCK | 39.6974 | −78.1767 | 391 | 2007/08 | |
Licking Creek | 9 | LC | — | 39.6506 | −78.0511 | 378 | 2011 | |
McCoy's Ferry | 10 | MF | — | 39.6079 | −77.9688 | 367 | 2011 | |
Williamsport Upriver | 11 | WSP1 | WSP | 39.6053 | −77.8328 | 344 | 2007/08 | |
Williamsport Downriver | 12 | WSP2 | — | 39.6018 | −77.8294 | 344 | 2011 | |
Opequon Creek | 13 | OJ | — | 39.5155 | −77.8606 | 330 | 2011 | |
Taylor's Landing | 14 | TL | 39.4990 | −77.7682 | 313 | 2011 | ||
Snyder's Landing | 15 | SL | — | 39.4991 | −77.7682 | 307 | 2011 | |
Antietam Creek | 16 | AC | — | 39.4200 | −77.7481 | 295 | 2011 | |
Brunswick Upriver | 17 | BWK1 | BWK | 39.3062 | −77.6164 | 270 | 2007/08 | |
Brunswick Downriver | 18 | BWK2 | — | 39.3063 | −77.6151 | 270 | 2011 | |
Point of Rocks Upriver | 19 | POR1 | POR | 39.2727 | −77.5416 | 262 | 2007/08 | |
Point of Rocks Downriver | 20 | POR2 | — | 39.2701 | −77.5307 | 262 | 2011 | |
White's Ferry Upriver | 21 | WF1 | WF | 39.1556 | −77.5195 | 241 | 2007/08 | |
White's Ferry Downriver | 22 | WF2 | — | 39.1550 | −77.5196 | 241 | 2011 | |
Edward's Ferry | 23 | EF | — | 39.1030 | −77.4738 | 233 | 2011 | |
Pennyfield Lock | 24 | PL | PL | 39.0533 | −77.2911 | 216 | 2007/08 | |
Tidal | George Washington Parkway | 25 | GWP | GWP | 38.7303 | −77.0416 | 163 | 2007/08 |
Piscataway Park | 26 | SWP | SWP | 38.6849 | −77.1019 | 156 | 2007/08 | |
Pohick Bay | 27 | PB | — | 38.6770 | −77.1687 | 150 | 2013 | |
Gunston Manor | 28 | GM | GM | 38.6353 | −77.1441 | 146 | 2007/08 | |
Belmont Bay A | 29 | BB_A | — | 38.65627 | −77.2233 | 142 | 2013 | |
Belmont Bay B | 30 | BB_B | 38.64699 | −77.2225 | 142 | 2013 | ||
Leesylvania State Park | 31 | LSP | LSP | 38.5835 | −77.2583 | 138 | 2007/08 | |
Mattawoman Creek | 32 | MWC | — | 38.57137 | −77.1807 | 135 | 2013 | |
Aquia Landing | 33 | AL | AL | 38.3884 | −77.3213 | 114 | 2007/08 | |
Nanjemoy Creek | 34 | NC | — | 38.46403 | −77.141 | 95 | 2013 | |
Port Tobacco River A | 35 | PTR_A | −77.0239 | 38.49631 | 89 | 2013 | ||
Port Tobacco River B | 36 | PTR_B | — | −77.0265 | 38.48449 | 89 | 2013 |
Appendix - B
TABLE A2 Nearest neighbor and maximum distances (m) among samples within sites.
Site | Nearest neighbor distance (m) | Maximum distance (m) | |||||
Minimum | Median | Maximum | Minimum | Median | Maximum | ||
1 | TC | 1.9 | 9.4 | 22.2 | 107.4 | 144.3 | 192.8 |
2 | PR | 4.3 | 10.2 | 14.7 | 102.7 | 151.9 | 194.7 |
3 | FMC1 | 1.9 | 10.2 | 91.1 | 226.2 | 353.2 | 438.9 |
4 | FMC2 | 6 | 8.2 | 12.5 | 66.6 | 98 | 129.2 |
5 | SHC | 0 | 13.7 | 19.8 | 108.4 | 154.6 | 203 |
6 | SJR | 1.9 | 14.2 | 38.6 | 317.1 | 435.6 | 594.3 |
7 | HCK1 | 2.3 | 7.8 | 25.8 | 111.5 | 153.6 | 192.7 |
8 | HCK2 | 0 | 12 | 56.1 | 237.6 | 314.8 | 444.6 |
9 | LC | 4.7 | 13 | 57.7 | 295.4 | 486.2 | 555.4 |
10 | MF | 3.4 | 7.9 | 18.7 | 167.6 | 261.4 | 329.3 |
11 | WSP1 | 0 | 12 | 25.5 | 297.6 | 447.3 | 522.6 |
12 | WSP2 | 0 | 6.2 | 25 | 170.5 | 246.9 | 327.9 |
13 | OJ | 1.8 | 7.2 | 90.2 | 255.9 | 357 | 472.7 |
14 | TL | 12 | 16.6 | 77.3 | 77.3 | 104.7 | 153.6 |
15 | SL | 4.7 | 10.8 | 24.1 | 109.2 | 156 | 216.1 |
16 | AC | 4 | 12.2 | 67.6 | 316.2 | 517.5 | 628.6 |
17 | BWK1 | 12.4 | 21.9 | 32.7 | 231.3 | 342.4 | 452.2 |
18 | BWK2 | 2.3 | 7.8 | 28.6 | 177.9 | 255.7 | 355 |
19 | POR1 | 0 | 11.7 | 39.8 | 330.7 | 528.7 | 645.3 |
20 | POR2 | 3.4 | 12.5 | 41.7 | 192.8 | 264.2 | 381.1 |
21 | WF2 | 1.9 | 13.2 | 73.1 | 372.4 | 582.6 | 717 |
22 | WF1 | 6.5 | 13.7 | 52.3 | 422.1 | 534.6 | 717.8 |
23 | EF | 2.3 | 11.8 | 35.2 | 238.1 | 328.8 | 450.5 |
24 | PL | 10.4 | 15 | 26.3 | 275.7 | 415.2 | 538.7 |
25 | GWP | 3.4 | 6.1 | 16.7 | 107.7 | 160.4 | 213.1 |
26 | SWP | 4.8 | 5.6 | 21.2 | 121.3 | 175.5 | 240.3 |
27 | PB | 4.8 | 13.8 | 76.2 | 292.0 | 383.3 | 403.7 |
28 | GM | 3.7 | 4.7 | 12.4 | 111.8 | 174 | 215 |
29 | BB_A | 1.1 | 4.2 | 137.1 | 591.6 | 839.5 | 1027.1 |
30 | BB_B | 1.1 | 6.2 | 31 | 342.6 | 537.5 | 660.6 |
31 | LSP | 0 | 8.2 | 11.1 | 121.1 | 187 | 235.5 |
32 | MWC | 6.5 | 27.9 | 59 | 2994.5 | 4410.7 | 4651.8 |
33 | AL | 6.5 | 8.5 | 10.2 | 139.8 | 206.9 | 268.9 |
34 | NC | 0.9 | 12.7 | 67.7 | 1990.2 | 2903 | 3105.5 |
35 | PTR_A | 7.1 | 15.8 | 92.8 | 525.8 | 630.7 | 826.9 |
36 | PTR_B | 8.7 | 19.2 | 70.9 | 575.4 | 619.1 | 706.2 |
Median | 3.4 | 11.7 | 32.7 | 231.3 | 328.8 | 444.6 | |
Minimum | 0 | 4.2 | 10.2 | 66.6 | 98 | 129.2 | |
Maximum | 12.4 | 27.9 | 137.1 | 2994.5 | 4410.7 | 4651.8 |
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Abstract
ABSTRACT
Genetic connectivity in rivers is generally high, and levels of genotypic and genetic diversity of riverine species are expected to accumulate in downstream locations. Genetic structure of marine and estuarine species is less predictable, even though hydrologic connectivity is also expected to be relatively high in those ecosystems. These observations have been generated across different species and locations such that our understanding of the effects of hydrologic connectivity in the same river, spanning tidal and nontidal habitats, remains incomplete. To control for species and location, we quantified diversity in 941 samples of
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1 Department of Plant Science and Landscape Architecture, University of Maryland, College Park, Maryland, USA, Department of Entomology, University of Maryland, College Park, Maryland, USA
2 Marine, Estuarine, Environmental Sciences, University of Maryland, College Park, Maryland, USA
3 University of Maryland Center for Environmental Science, Appalachian Laboratory, Frostburg, Maryland, USA