Introduction

Growing evidence indicates that fungal diversity and communities can alter a number of crucial ecosystem processes such as decomposition, nutrient cycling and productivity1. Understanding fungal biogeography and their underlying processes are essential for predicting the quality of ecosystem services under climate change2,3. Many studies have revealed that fungi display biogeographic patterns across spatial scales from centimeters to continents4,5,6,7,8. It has been reported that patterns of fungal diversity are controlled by dispersal limitation and environmental filtering5,9,10. However, the relative importance of these two factors and how they interact on different spatial scales with fungal communities remains unclear.

Several recent studies demonstrated that the processes controlling fungal communities vary by fungal groups, ecosystem types, and landscape heterogeneity or integrity. While dispersal limitation is a crucial in determining ectomycorrhizal fungal diversity at 10 m2 to 10,000 m2 scale11, environmental heterogeneity drives mycorrhizal fungal community variation at a finer scale5. On the other hand, the biogeography of arbuscular mycorrhizal fungi is driven by a combination of dispersal limitation and environment filtering12,13,14. Furthermore, the spatial influence on a fungal community is more pronounced in a contiguous site than in a disjointed site4. Therefore, to study integral fungal communities in varied ecosystems is essential to parse out the relative contributions of dispersal limitation and environmental filtering factors to fungal diversity.

Headwater streams mainly arise from a variety of sources including lakes, wetlands, seeps and springs15, which are critical sites for nutrient cycling, maintaining the function, and health of whole river networks16,17. In several studies, it was postulated that headwaters are critical reservoirs of microbial diversity18,19,20, which may act as repositories and distribution centers of microbes from terrestrial sources9,18,19,20. Studies of invertebrate communities in headwaters exhibit higher β diversity compared with mid-sized steams21,22. These patterns may be attributed to large environmental variation among headwaters23, but their spatial isolation limit dispersal22. Recent works on the headwater communities suggest that the interaction between environmental selection and mass effects were the main driver of biogeographic patterns of a bacterial community9,18,24,25. However, whether fungi display a biogeographic distribution signature in headwater lakes, and what are the main factors that shape the fungal community was not addressed in previous studies and is the key subject here.

The Qinghai-Tibet Plateau (QTP), “the Earth’s third pole” and “the water tower of Asia,” is the headwater of ten of the continent’s largest rivers3,26. The Headwater Region of the Yellow River (HRYR) is located in northeastern QTP and has approximately 5,300 lakes situated at an average elevation of 4,200 m above sea level27. Surrounded by terrestrial matrices, headwater lakes are, to some extent, isolated aquatic habitats28 and often connected by the overland dispersal of their biota29, where lacustrine bacterial communities are expected to show spatial patterns forged by dispersal restriction28,29,30,31. However, it is unclear whether similarities among fungal communities decline with increasing fungi exhibit increased community dissimilarity with geographic distances. Compared to plain lakes, plateau headwater lakes are relatively isolated and smaller in area, and more sensitive to anthropogenic activities due to their poor water exchange32. Previously, QTP lakes were mainly focused for studying bacterial communities in alkaline lakes32,33. However, information on fungal community in sediment of plateau headwater is still very limited. Here, we sampled sediments from 10 freshwater lakes in the HRYR (Fig. 1) and used 454 Life Sciences pyrosequencing to investigate fungal diversity and community composition. The aims of this study were (i) to explore the fungal diversity and composition of the freshwater lake sediments in HRYR, (ii) to determine key factors that shape the fungal distribution among communities and (iii) to quantify the relative importance of environmental filtering and dispersal limitation on fungal community variation.

Figure 1
figure 1

Ten sampling sites across the Headwater Region of the Yellow River, Qinghai-Tibetan Plateau, China. Detailed information of sampling sites is listed in Table 1. The figure was generated using Arcgis 10.3 software (http://www.esri.com/arcgis/about-arcgis).

Results

Sediment geochemical characteristics

The major geographical and physicochemical characteristics of the sediments are listed in Table 1. Sediment pH varied from 7.71 to 8.84. Pairwise distances between sampled lakes were ranged from 4 to 148 km. There were significant unimodal trends of TN and dissolved organic carbon (DOC) with varying altitude (R2 = 0.24 and R2 = 0.28, respectively, P < 0.05). The C:N ratio were ranged from 16.3 to 23.0 across all study lakes.

Table 1 Characteristics of sampling sites and soil properties in sediment samples from the headwater region of the Yellow River

Distribution of fungal taxa and phylotypes

A total of 163,471 quality sequence reads were obtained from 33 samples and assigned to 479 operational taxonomic units (OTUs). These were representative of twenty-four fungal classes belonging to five fungal phyla (Fig. 2). The class that presented the highest diversity was Agaricomycetes (81 OTUs), followed by Dothideomycetes (68 OTUs) and Sordariomycetes (61 OTUs). The abundance of the OTUs in the dataset varied from 0.0006% to 13.1%. Among the total 479 OTUs, twenty-one were shared between all sites and accounted for a relative abundance between 46% and 86%. A class Sordariomycetes predominated across all sampled lakes with abundance ranging from 8.1–37.6%, followed by Leotiomycetes (4.1–36.0%), Dothideomycetes (4.2–25.6%), Pezizomycetes (1.4–25.0%) and Agaricomycetes (3.0–6.0%) (Fig. 2).

Figure 2
figure 2

Percent abundance of fungal taxa detected in soil sediments from lakes distributed in the headwater region of the yellow river.

Dynamics of fungal diversity and community

The fungal Shannon index was not related to local environmental variables, while fungal diversity slightly increased with warming temperature (linear regression, R2 = 0.09, P = 0.051). pH was positively correlated with fungal OTUs richness (linear regression, r = 0.33, P = 0.028) (Fig. 3A), but negatively correlated with Basidiomycota abundance (linear regression, r = − 0.33, P = 0.028) (Fig. 3B).

Figure 3
figure 3

Relationships between fungal richness, relative abundances of fungal groups and sediment pH. (A). Relationship between sediment pH and fungal richness (i.e OTU numbers). (B) Relationship between sediment pH and relative abundance of Basidiomycota. Linear regressions were used to test Pearson correlation between each taxon’s relative abundance and pH.

A plot of community similarity against geographic distance and environmental distance for each pairwise set of fungal samples revealed a significant distance decay relationship (Fig. 4). Furthermore, the slope of geographic distance decay curve varied significantly among the three spatial scales. The distance-decay slope was steeper (slope = −0.87, P < 0.001) in an intermediate range between 50 to 100 km than a range between 100 to 150 km (slope = −0.75, P < 0.001) and the overall slope (slope = −0.12, P < 0.001) (Fig. 4). In contrast, the distance-decay curve did not differ from zero at the smaller scale (P = 0.09). Multivariate Mantel correlograms showed that pairwise comparisons of fungal community composition were autocorrelated at a distance of less than approximately 60 km (Figure S1). Mantel tests indicated that the community of fungi was significantly correlated with either environmental or geographical distance (Table 2), where environmental distance accounted for a higher proportion of variation in community structure. However, partial Mantel tests indicated that the fungal community was significantly correlated with environmental distance, but not with geographic distance (Table 2).

Figure 4
figure 4

Distance-decay curves for the fungal communities. (A) Distance-decay for fungal community along geographical distance. The black line denotes the linear regression across all spatial scales. The colorful lines indicate separate regressions within each of the three spatial scales: 0–50 km, 50–100 km, 100–150 km. The slopes of all lines (except the solid red blue line) are significantly less than zero. The slopes of the green and blue lines are significantly different from the slope of the all scale (black solid) line. (B) Distance-decay for fungal community along environmental distance.

Table 2 Results of Mantel and partial Mantel tests for the correlation between fungal community similarity and environmental distance (Euclidean), and between fungal community similarity and geographical distance. Statistical significance for each partial Mantel correlation value is given in parentheses.

Variance partitioning analysis (VPA) was performed to quantify the relative contributions of geographic distance and sediment environmental parameters on the taxonomic structure of the fungal communities. Combination of a subset of environmental parameters (DOC, MAT, TN and C/N ratio) and geographic distance explained 27% of the observed variation, leaving 73% of the variation unexplained. The sediment properties explained 20.0% (P = 0.001), and geographic distance alone explained 7.0% of the variations (P = 0.03), and no interaction effect was detected (Fig. 5). Although the sediment properties together explained more of the variation, geographic distance by itself explained 12.2% of the observed variation, more than any of the other four of the individual sediment variables (Fig. 5). Thus both environmental factors and geographic distance are important factors in shaping bacterial community structures.

Figure 5
figure 5

Variation partition analysis to determine an effect of geographic distance and environmental variables on the fungal communities.

Discussion

Sediment fungal diversity is intuitively thought to be low in aquatic habitats due to uniform vegetation and the physiological constraints of submersion in water34. In our study, unexpectedly high fungal diversity was detected in the sediments of HRYR which is consistence with recent study on fungal communities in sediments35. We found the fungal classes Sordariomycetes, Agaricomycetes, Dothideomycetes, Leotiomycetes and Pezizomycetes in large proportions, consistent with previous studies35,36,37,38. Most of these dominant classes are terrestrial in natural, but also capable of being amphibious9,20,25. The majority of Sordariomycetes members are terrestrial and frequently detected near shores of tropical and subtropical freshwater ecosystems39,40. Most of these fungi break down lignin and cellulose from plant debris in the land–water interface41. The fungal order Polyporales, belonging to the class Agaricomycetes, was highly abundant; these are efficient terrestrial wood-decay fungi that play an important role in the carbon cycle42. Polyporales can be introduced into lakes through high fungal propagule loads via inflowing streams, rainwater, and wind35,43. The expansion of desaturase-encoding genes in the Polyporales may help them easily adapt to the substrate and colonize succession series42,44. Dothideomycetes, and particularly the order Pleosporales are found in many low-temperature lakes45, due to their resistance or adaptation to low temperature37, which is essential for survival in the harsh environment of the HRYR. These findings have implications for microbial biogeography, suggesting that in such habitat, environmental selection may be a more important determinant of community composition than dispersal constraints2.

At the spatial extent of our study, although both environmental characteristics and geographic proximity was significantly related to fungal community similarity, the partial correlation coefficient indicated that environmental filtering had a greater influence on fungal community. In our study, fungal community similarity was controlled by environmental factors such as TN and MAT. Nitrogen availability affects the fungal growth46,47,48 and may limit the fungal diversity in the soil49,50. The QTPs’ low temperatures lead to lake fungal community structure in the HRYR similar to what is observed in polar regions by Cox et al.2 and Newsham et al.51. Marginal result of increasing fungal diversity with warming temperature may result from enhanced metabolic activity and enable a switch from survival to growth and dispersal strategies51. Tian et al.52 identified temperature as one of major factor regulating fungal community structure in Qinghai-Tibetan Plateau. Hence, low temperature as an environmental constraint may determine fungal community composition in these extreme habitats. Interestingly, sediments pH significantly affected the fungal alpha diversity but not the fungal community similarity, which is consistence with report of Wang et al.53. With an increasing pH, some endurable taxa started to grow, resulting in an increase of the community richness. Although, we measured the impact of various environmental factors known or assumed to be an important in shaping fungal communities, but we were unable to explain all the variation. The unexplained variation may result from other unmeasured factors that could have an effect on fungal assemblages.

Distance–decay data can be used to understand the factors driving community turnover patterns such as dispersal limitation and environmental heterogeneity54. In this study, the slope of geographic distance-decay relationship (slope = −0.12, P < 0.001) was similar or steeper compared to the other reported studies5,55,56, indicating that dispersal limitation was also important in shaping fungal community. However, there was no significant distance-decay relationship observed at less than 50 km scale, indicates that dispersal limitation was less important in shaping fungal community. One plausible explanation is that dispersal should be more efficient at this spatial scales since long-distance dispersal of fungi mainly occur by wind57, resulting in weaker spatial structure of the communities and local control by environmental filtering29. Furthermore, in the QTP, there is more area dominated by saline lakes than freshwater lakes. Since the saline lakes are relatively isolated from large river basins and thus are less hydrologically connected58, it would be expected that dispersal limitation has a stronger control on fungal community in the saline lakes than in freshwater ones.

In conclusion, a large proportion of fungal sequences obtained in high frequency matched with terrestrial taxa, indicating that they are transported into the aquatic system and subsequently adapt to the local conditions. Mantel tests and variance partitioning analysis suggested that fungal richness and community composition are strongly influenced by environmental factors such as temperature and TN. Nonetheless, a significant spatial distance decay relationship and widespread locally abundant fungi indicated that dispersal limitation also plays a role in shaping fungal community. Different patterns of diversification might be observed depending on the ecology of the studied taxa. It is therefore important to investigate organisms that are typical for each biome occurring in the region of the QTP.

Methods and Materials

Sampling site

We selected 10 freshwater lakes with areas ranging from 3 to 611 km2 in the HRYR, including Lake Erling, the largest lake in this region (Table 1). Sampling map was generated by ArcGIS software under license. The minimal and maximal distance between any two lakes were 4 and 148 km, respectively (Fig. 1 and Table 1). Most of the lakes were not readily interconnected to each other via water routes. The dominant vegetation type in the catchments of the 10 lakes was alpine grassland.

Sampling collection

We collected surface sediments up to 15 cm deep from inshore sites with water depths of approximately 1 m from each of the 10 freshwater lakes (Fig. 1). Three samples, spaced between 3 and 5 m, were collected from each lake. Samples were kept at 4 °C for sediment geochemical characterization and stored at −80 °C for genomic DNA extraction. Global positioning system coordinates were recorded at each sampling point (Table 1), and imported into the NOAA website (http://www.nhc.noaa.gov/gccalc.shtml) to calculate the pairwise geographic distance. The air temperature was measured in the field. Local mean annual temperature (MAT) was obtained from local weather stations. The pH was determined with a soil to water ratio of 1:5 wt/vol. Dissolved organic carbon (DOC) and total nitrogen (TN) were measured with a vario TOC cube analyzer (ELEMENTAR Analysensysteme, Germany). Before analyzing sediment DOC, samples were first acidified with 1 N HCl overnight to remove carbonates and subsequently washed to neutralize pH, dried in an oven and then ground in a mortar.

DNA extraction, PCR and pyrosequencing

Total genomic DNA for 454 Life Sciences sequencing was extracted from 0.5 g of frozen soil with the FastDNA™ SPIN Kit for Soil DNA (MP Biomedicals, USA) according to manufacturer’s instructions. The obtained DNA was quantified by a NanoDrop device and stored at −20 °C. An aliquot of 50 ng purified DNA from each sample was used as a template for amplification. A set of primers was designed by adding a Roche 454 ‘A’ pyrosequencing adapter and adding a unique 8-bp barcode sequence to forward primer ITS1F (5′-CTTGGTCATTTAGAGGAAGTAA-3′) and adding reverse primer ITS2 (5′-GCTGCGTTCTTCATCGATGC-3′) to generate polymerase chain reaction (PCR) ITS1 region fragments of c. 400 bp. Each sample was amplified in triplicate with 50 µl reactions under the following conditions: 94 °C for 4 min, 30 cycles of 30 s at 94 °C (denaturation), 50 °C for 1 min (annealing) and 72 °C for 90 s (extension), followed by 10 min at 72 °C. PCR products were pooled together and purified by an Agarose Gel DNA purification kit (TaKaRa, China) and quantified with the NanoDrop device. Samples were run on a ROCHE 454 FLX + platform (Roche, Basel, Switzerland) at the National Human Genome Center of China in Shanghai, China, according to the manufacturer’s manual. These raw data are deposited into the NCBI Sequence Read Archive with accession number SRP108149.

Sequence analysis

The raw sequence data were demultiplexed using the QIIME toolkit59. Sequence reads with a quality score less than 20 were filtered out (split_libraries_fastq.py; QIIME), and the remaining reads were assigned to samples according to the corresponding barcode. The extracted sequences were binned into operational taxonomic units (OTUs) at 97% match using USEARCH60, denoting a species-level similarity using closed-reference OTU picking using the UNITE ITS database61 as a reference (pick_otus.py; QIIME). One representative of each OTU was selected for downstream analyses, and a taxonomy was assigned to each (pick_rep_set.py, assign_taxonomy.py; QIIME).

Statistical analyses

Singletons were removed prior to statistical analyses. Diversity indices Chao1, ACE and Shannon (H′) were estimated based on the OTU table rarefied at 3229 counts per sample. We used linear and quadratic regression to test whether fungal diversity was related to lake area and environmental variables (TN, pH, DOC and MAT).

Distance decay of similarity has been widely used to infer the relative importance of dispersal limitation and environmental filtering in structuring microbial community62. To determine the distance decay relationship, pairwise fungal community similarities between samples were calculated using the Sørensen index, which is widely used for calculating distance decay in both micro- and macroecology. The spatial distance decay relationship was then assessed as the slope of logarithmic space to enhance the linear fitting, according to the description of Nekola & White (1999)63. All logarithmic transformations were performed using the natural logarithm. Mantel tests were performed to examine community turnover along environmental and geographical gradients. Euclidean distances were calculated for all site pairs separately based on the environmental variables and lake coordinates. Environmental data was comprised of total N, DOC, pH, water content and temperature. A significant correlation was observed between environmental and geographic distance in our study (Mantel r = 0.41, P = 0.001) (Fig. S2). Therefore, we performed partial Mantel tests (with 1000 permutations) to disentangle the effects of environmental distance on fungal community similarity while holding geographical distance constant, and vice versa30.

To fully characterize the exact scale of spatial clustering, a multivariate Mantel correlogram analysis was performed using the ‘mantel.correlog’ command in the R software. A Mantel correlogram draws a graph in which Mantel correlation values r are plotted as a function of the geographic distance classes among the sampling sites.

BioEnv and distance-based redundancy analysis (db-RDA) were also used to identify the abiotic factors influencing fungal community composition, and subsequently used to construct the sediment property matrix for variation partitioning analysis. Variance was partitioned to examine the relative effect of geographic distance and environmental variables (best environmental subset) on microbial community composition. All of the above analyses were performed in the vegan package in R software.