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Metagenomic Analysis of the Microbiota from the Crop of an Invasive Snail Reveals a Rich Reservoir of Novel Genes

Abstract

The shortage of petroleum reserves and the increase in CO2 emissions have raised global concerns and highlighted the importance of adopting sustainable energy sources. Second-generation ethanol made from lignocellulosic materials is considered to be one of the most promising fuels for vehicles. The giant snail Achatina fulica is an agricultural pest whose biotechnological potential has been largely untested. Here, the composition of the microbial population within the crop of this invasive land snail, as well as key genes involved in various biochemical pathways, have been explored for the first time. In a high-throughput approach, 318 Mbp of 454-Titanium shotgun metagenomic sequencing data were obtained. The predominant bacterial phylum found was Proteobacteria, followed by Bacteroidetes and Firmicutes. Viruses, Fungi, and Archaea were present to lesser extents. The functional analysis reveals a variety of microbial genes that could assist the host in the degradation of recalcitrant lignocellulose, detoxification of xenobiotics, and synthesis of essential amino acids and vitamins, contributing to the adaptability and wide-ranging diet of this snail. More than 2,700 genes encoding glycoside hydrolase (GH) domains and carbohydrate-binding modules were detected. When we compared GH profiles, we found an abundance of sequences coding for oligosaccharide-degrading enzymes (36%), very similar to those from wallabies and giant pandas, as well as many novel cellulase and hemicellulase coding sequences, which points to this model as a remarkable potential source of enzymes for the biofuel industry. Furthermore, this work is a major step toward the understanding of the unique genetic profile of the land snail holobiont.

Introduction

The use of renewable energy sources in the global energy matrix is important for two main reasons. Firstly, our fossil fuel reserves are diminishing, and the lack of readily available substitutes may result in an energy shortage in the not-so-distant future. Secondly, burning of fossil fuels release large amounts of greenhouse gases (carbon dioxide, nitrogen oxides, sulfur hexafluoride, hydrofluorocarbons and perfluorocarbons) aggravating global warming [1][2].

Brazil is a world leader in renewable energy. Here, fuel ethanol has been produced from sugarcane since the 1970s. This was an important step toward the use of sustainable fuels for vehicles with Otto-cycle engines. By law, anhydrous ethanol has also been added to the gasoline sold in gas stations at a level of at least 20% (E20). Other countries have adopted a similar strategy [1], [3]. Despite these mandates, the competitiveness of ethanol versus gasoline on the global market is still low, and more efficient production will be important to ensure its widespread acceptance.

In traditional ethanol production, sugarcane processing results in solid waste called bagasse, which is composed mainly of lignocellulose. Although it can be burned in industrial plants for heating purposes, a large fraction remains unused. Bagasse has a large energy potential, up to 19 MJ/kg [4], but most organisms cannot readily ferment cellulose and lignin. Improved methods to degrade bagasse and other agriculture residues into fermentable sugars would reduce waste and supply the refinery with more sources to produce ethanol without increasing the cultivation area and accompanying costs. Some organisms produce enzymes that can efficiently degrade cellulose. Their identification, improvement, and production for industrial application may contribute to making second-generation ethanol a competitive commodity [5][6]. The relevance of the search for new lignocellulolytic enzymes and microorganisms is demonstrated by the increasing number of projects focusing on the symbiotic and mutualistic microbiota from the digestive tracts of animals such as termite (Nasutitermes sp.), cow (Bos taurus), wallaby (Macropus eugenii), and giant panda (Ailuropoda melanoleuca) [7][11].

Throughout evolution, the digestive systems of animals adapted mechanical, physiological, and chemical methods to improve use of the available diet. In herbivores, enzymes play a vital role in the degradation of raw vegetable fiber, converting it to small units. The resulting oligomers and monomers become available for absorption by the gut epithelium or support the growth of resident microbes, which also produce enzymes that take part in the digestive process or contribute to the supply of nutritional and defense factors essential to the host organism’s health [12].

The giant land snail Achatina fulica is a pulmonate mollusk native to sub-Saharan Africa. Due to human interference, prolificacy, physiological adaptability, and ability to eat a broad range of plant species (Table S1), Achatina has reached a near-global distribution and can be found close to cities, roads and farms. Because of its voracious appetite and the speed with which it spreads, it is now considered to be the most destructive terrestrial gastropod worldwide [13][14]. Despite that, there are surprisingly few studies focusing on this easy-to-handle snail.

The first studies on animal-produced cellulolytic enzymes were performed on snails (Helix sp.) at the end of the 19th century [15]. In addition to their own enzymatic repertoire, land snails retain a microbiota that specializes in the rapid hydrolysis of lignocellulosic plant biomass, which contributes to their extraordinary digestive efficiency (up to 80%) [16]. However, the composition and ecological role of the microbiota of land snails, including A. fulica, remain largely unexplored.

Unlike other strategies for novel enzyme and microorganism identification, metagenomic analysis offers some clear benefits as a powerful alternative to culture-dependent methods. With the increase in throughput and the development of fast searching algorithms, metagenomic analysis is becoming easier and more efficient. The resulting data may also be continuously submitted to further prospection and evaluation. Thus, metagenomics improves the access to the full genetic potential of a given environment [17].

Here, for the first time we investigated the microbial enzymes within the crop of the giant snail, focusing on those enzymes that are potentially relevant to the degradation of plant biomass into fermentable sugars, using high-throughput sequencing and bioinformatic approaches. Comparison of the carbohydrate active enzymes (CAZy) in the snail crop to a diversity of other biomes including arthropoda, herbivores, omnivores, soil, and aquatic metagenomes using hierarchical clustering revealed the snail’s similarity to the insect pest beetle Dendroctonus ponderosae, which indicates similar metabolic capabilities. Furthermore, this work provides insights into the land snail microbiome.

Materials and Methods

Sample Collection

Seven wild adult Achatina fulica snails were collected by hand in the early morning during the rainy season in March 2008. The snails were collected from a habitat with low evidence of impact from human activities within the city of Rio de Janeiro (22°49′18.83′ ´S; 43°31′30.01′ ´W) in a place covered by humid tropical evergreen broadleaf forest vegetation, the so-called Mata Atlântica [18]. The snails were washed with sterile distilled water and then transported to the laboratory. The crop fluid was collected by cannulation of the mouth-esophagus with a #24 needle-less scalp vein set attached to a syringe by a Luer lock connector [19].

DNA Extraction

For community metagenome sequencing, total DNA was isolated according to a protocol specific for high molecular weight DNA extraction from environmental samples [20]. Briefly, the pooled crop fluid (15 ml) was filtered first through a 3.0-µm filter and then through a 0.2-µm Sterivex (Millipore) filter to separate free-living microbes from larger organisms, viruses and particles. Total nucleic acid was isolated from the Sterivex by cell lysis with Proteinase K and SDS followed by phenol-chloroform extraction. In addition, the non-filtered crop fluid microbiotic DNA was extracted using the Power Soil DNA Extraction Kit (MoBio), according to the manufacturer’s recommended protocol. DNA concentration, purity, and the overall integrity were checked on a Nanodrop (Thermo Scientific) and by agarose gel electrophoresis.

Pyrosequencing and Sequence Processing Workflow

Two libraries were prepared by following the instructions from the Rapid Library Preparation Method Manual - GS FLX Titanium Series (454-Roche): one from 500 ng of DNA extracted from the snails’ filtered digestive juice (crop fluid) and another from 500 ng of DNA extracted from non-filtered juice. Titration, emulsion PCR, and sequencing steps were performed according to the manufacturer’s protocol. A two-region 454 sequencing run was performed on a 70×75 PicoTiterPlate (PTP) using the Genome Sequencer FLX System (Roche). Each region was loaded with one of the library preparations. Before sequence analysis and assembly, artificially replicated sequences that are generated as an inherent artifact of 454-based pyrosequencing were identified and removed using the Replicates software [21]. The remaining reads were further filtered to remove short sequences (fewer than 180 bp) or sequences with Phred quality ≤20 using the LUCY program [22].

Taxonomic Distribution and Functional Analysis

MEGAN4 [23] was used to analyze the taxonomic distribution of each read hit of the BLASTX algorithm [24] against the NCBI-NR protein database. Meta-RNA software [25] was employed to perform 16S rRNA identification and the sequences were classified with RDP Classifier software based on the RDP Database [26]. We analyzed the functional composition of the assembled metagenome data by comparison with the SEED [27] and COG databases [28] available on the MG-RAST server [29] using an e-value ≤1e−5 as a cutoff. Functional comparison against public metagenomes was also performed. To identify statistically significant and biologically meaningful differences between the snail crop and other microbiomes, we employed the two-way Fisher’s exact test with a Benjamin-Hochberg FDR multiple test correction within the Statistical Analysis of Metagenomic Profiles, STAMP [30]. Principal coordinates analysis (PCoA) and Rarefaction curve of annotated species richness were calculated in MG-RAST [28].

Further functional analysis was executed using the KEGG database [31] using MEGAN4 software [23]. The functional annotation and analysis of all contig sequences were also performed using the System for Automated Bacterial Integrated Annotation, SABIA [32]. An automatic annotation was performed using the following criteria: ORFs with BlastP hits on databases KEGG, NCBI-nr, or UniProtKB/Swiss-Prot, subject and query coverage ≥60%, and positives ≥60% were assigned “valid”. ORFs with no BlastP hits found on databases NCBI-nr, KEGG, UniProtKB/Swiss-Prot, TCDB, and Interpro or not included in the criteria above were assigned as “hypothetical”.

Carbohydrate-active enzyme domains assigned by the CAZy database [33] were searched in predicted protein sequences using HMMER 3.0 software [34] against the Pfam 26.0 database [35] using a cutoff of 1e−4. To compare the snail crop CAZyome to other sequenced metagenomes, a comparative analysis was performed using the carbohydrate enzyme content as a comparative metric [36][37].

Comparative Metric Analysis

Host-associated and environmental metagenomes were downloaded from the IMG/M (Integrated Microbial Genomes with Microbiome Samples) database [38], including metagenomes from plant, arthropod, mammal, water, and soil samples. The number of genes in Pfam (obtained through the Pfam count statistical data downloaded for each metagenome) was calculated using a self-written bash script using a BLASTP e-value of 1e−04. The correspondence between Pfam and CAZy was automatically reached using another self-written bash script, resulting in a matrix with the number of reads found in different CAZy families in each metagenome. A new matrix, with each row corresponding to a metagenome and each column corresponding to a CAZy ID, was obtained. The proportion of each CAZy with respect to the total number of annotated CAZy families in that metagenome was calculated, and the resultant value was directed to the appropriate cell of the matrix. Trends in the CAZy family frequencies were examined in SPSS using Principal Component Analysis (PCA) as well as hierarchical clustering [39].

The main idea of the PCA method is to form a new variable (or variables) from a data set, which should contain as much of the variability of that data set as possible, reducing it to a smaller set of uncorrelated variables that will be used in further analysis. Descriptive statistics, such as the mean and standard deviation, were calculated for all variables (CAZy families). The analysis was performed on standardized data based on a correlation matrix. Consequently, the importance of a variable was not determined by the relative size of its variance. The criteria for the number of components to extract included an eigenvalue greater than 1, which indicates that a principal component explains more of the variance than would be expected by chance. The communalities (amount of variance in a variable accounted by all the components) were computed as well as the share of variance of original data explained by each and all components. Hierarchical clustering using Euclidean distances with Ward linkage was performed on standardized data generated from both the proportion matrix and the principal component values obtained by the PCA. The hierarchical clustering analysis allowed us to identify relatively homogeneous clusters of cases based on measured features. The results are displayed in a dendrogram, a hierarchical tree diagram, which shows the linkage points at increasing levels of dissimilarity.

Results and Discussion

Snail Anatomy

In A. fulica (as in many pulmonate gastropods) the food, scraped by the radula and ingested by the buccal mass, is mixed with the secretions of the salivary gland and accumulates in the crop (ingluvius), a distensible muscular compartment (Figure 1). The crop and stomach is filled via two cannaliculi with the juice produced by the digestive gland (also called hepatopancreas or midgut gland). A muscular valve restricts the passage of the crop contents to the stomach [40]. The medial part of the gut is surrounded by the digestive gland, which secretes more enzymes into the midgut lumen and also absorbs nutrients. The epithelium of the digestive tube is ciliated along almost its entire length, allowing the food to mix with digestive juices and helping transport the alimentary mass. The ciliated epithelia also allow the microbial flora to anchor on the digestive tube [41]. The unabsorbed part of the alimentary mass (bolus) is compacted and passed directly into the rectum.

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Figure 1. Digestive system of the snail.

(A) Photograph of the African giant snail Achatina fulica. (B) Whole digestive system dissected. The black arrow indicates the crop filled with juice. DNA for the metagenome analysis was extracted from this fluid. (C) Spread out digestive system of the snail showing the salivary gland (SG), empty crop (C), esophagus (O), stomach (S), intestine (I), digestive gland (DG) and rectum (R).

https://doi.org/10.1371/journal.pone.0048505.g001

The snail’s digestion is primarily extracellular [40]. Mapping reducing sugar-producing activity against carboxymethyl cellulose (CMC), avicel, and micronized bagasse [42] along each morpho-functional section of the digestive tube revealed that the crop and the digestive gland have the highest net and specific enzyme activity. To assess the taxonomic, genetic, and functional potential of the microorganisms within A. fulica’s crop, a massive random shotgun sequencing effort was performed.

Overview of the A. fulica Metagenome

A total of 1,297,598 reads were produced after raw data processing on 454-Titanium pyrosequencer. The Replicates package identified and removed 188,709 reads as replicas. From the remaining 1,108,889 reads, LUCY removed 198,922 low-quality reads, allowing the use of 909,967 sequences for further taxonomic and functional categorization (Table S2). From these sequences, 1,671 were identified as 16S rDNA using the MG-RAST server against RDP, which corresponds to 0.18% of the total sequence obtained. Despite the advantages over 16S libraries, which can show biases in amplification (PCR), reads of 16S rRNA obtained from random DNA shotgun sequencing are not indicated for binning [43]. Other research has reported low assignment values when working with analogous methodologies: 0.06% for the Amazon River metagenome [44] and an average of 0.15% for the bovine rumen metagenome [8].

In addition, another group distribution was performed by MEGAN4, which is software based on the NCBI taxonomy database [23]. Approximately 82% (743,954) of the reads were assigned to a taxon. LCA analysis was considered more flexible for taxonomic classification, identifying more sequences related to Bacteria, Archaea, Eukarya, and Viruses. Both approaches generated similar results for bacteria.

In an attempt to decrease redundancies and obtain more complete genes, a restrict assembly was executed using Newbler assembler software version 2.5.3 with the “-rip” flag that allows the user to output each read in only one contig. Reads identified as “problematic” by the GS De Novo Assembler (Partial, Repeat, Outlier, or TooShort) or showing High-Quality Discrepancies (HQD) were filtered out. A new round of assembly and filtering was performed. These steps were repeated until the problematic and high-quality discrepant reads reached the cutoff point of 1% of the total number of reads filtered at the first assembly step. As a result, 423,310 reads remained as singletons while 2,623 contigs ≥500 bp were formed and the average contig size was 4,474 bp. Metagenome data reported in this paper have been deposited into the GenBank database (SRA051264) and on the MG-RAST server (4460151, 4481175, 4480501, and 4482672).

Analysis of Snail Crop-associated Microbiota

Analysis of community composition in filtered crop fluid confirmed an enrichment for prokaryotic populations, thus bypassing the difficulty of interpreting large amounts of repetitive and non-coding eukaryotic sequence data [45]. As expected, the non-filtered crop fluid sample contained more sequences related to Eukaryota and Viruses (Figure 2; Table S2). No host sequences were observed. The majority of eukaryotic sequences were from Fungi (1,618), Metazoa (1,218), and Viridiplantae (806), which may represent plant DNA contamination (less than 0.088%). A small number of sequences related to the Alveolata (108) were identified. Although the role that fungi and protozoa play in cellulose digestion in rumen and lower termites is widely recognized [46][47], their exact function in snails remains unknown. Recently, it was shown that the host phylogeny is an important driver that shapes fungal community diversity and composition [48].

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Figure 2. Analysis of composition of the snail microbial community.

(A) Phylogenetic diversity of metagenomic sequences, computed by MEGAN4 based on a BLASTX using an e-value cut-off of 1e−5 comparison for filtered (red) and non-filtered (blue) sequences. The size of the circles is scaled logarithmically to represent the number of reads assigned to each taxon. (B) Bacteria, (C) Archaea, and (D) Eukaryota.

https://doi.org/10.1371/journal.pone.0048505.g002

The majority of the reads that did match known viruses in the database were from phages that infect bacteria, mostly members of the order Caudovirales (Figure 2). Viruses regulate the composition of microbial communities in many environments [49]; however, little is known about the ecological roles that they play in gastrointestinal systems. In the human gut, the viral population seems to be stable and persistant in individuals over time, suggesting that bacteria and viruses are in a mutually beneficial relationship [50].

The distribution of phylotypes and Environmental Gene Tags (EGTs) detected within the crop fluid sample primarily originated from the Proteobacteria, Bacteroidetes, and Firmicutes groups, consistent with previous SSU rDNA libraries of the snail crop [19]. At the genus level, Pseudomonas (37.5%), Sulfurospirillum (8.5%), and Stenotrophomonas (7.3%) were assigned as principal bacterial groups in the snail crop. Species from these genera are widely distributed in nature, including moist environments, water, soil, and on plants, including fruits and vegetables [51]. Therefore, they can use a varied range of nutrients and may assist the host in the degradation of lignocellulose material, detoxification of organic compounds, and synthesis of amino acids and vitamins.

Previous culture-dependent methodologies have identified cellulolytic Pseudomonas and Stenotrophomonas species in various invertebrates [52]. Moreover, previous culture-independent studies of bacterial species in the snail crop fluid, based on the 16S rRNA gene sequences, have demonstrated the presence of bacteria related to taxa found in the gut of herbivores, including Pseudomonas, Clostridiaceae, Lactococcus, Bacteroides, Flavobacteriaceae, Mucilaginibacter, Citrobacter, Klebsiella, Aeromonas, Acinetobacter, and sulfate-reducing bacteria related to Sulforospirillum [19]. In both the deepwater sea snail Alviniconcha hessleri [53] and the gutless marine oligochaete worm Olavius algarvensis, Epsilonproteobacteria occur as endosymbionts that serve as an energy source for the host and may participate in the removal of the end products of fermentation [54]; however, such a symbiosis has not yet been described for land snails.

Searches on rRNA databanks (RDP, SILVA, and Greengenes) resulted in no archaeal sequence detection, although BlastX analysis has revealed that genes related to Euryarchaeota are present within the snail crop, highlighting how little of this habitat has been described in the literature. Methanogenic archaea are known to be permanent residents in the digestive systems of ruminants, termites, and humans [55]. Although sulfate reduction and homoacetogenesis serve as alternate pathways for removing hydrogen, production of methane may contribute as hydrogen scavengers from the human distal gut [56][57].

In addition, sequences associated with Crenarchaeota, including the class Thermoprotei, have been detected (Figure 2). To the best of our knowledge, this is the first report of the detection of Archaea, Fungi, and Viruses within the crop of a snail. Compared with other metagenomes, the snail microbiota has high species richness (Figure S1), similar to the wallaby foregut and P3 luminal fluid from termite microbiomes. Principal coordinates analysis (PCoA) separated the snail microbiome across axes (Figure S2), indicating diverse and divergent community assemblages inhabiting the crop. In the scatter plot, the first two principal coordinates PC1 and PC2 explained 38.55% and 26.21% of data variation, respectively. PC1 separated snail crop-associated microbial communities from the panda, termite, and chicken microbiomes. PC2 separated from the wallaby and cow rumen environments. This finding suggests that A. fulica may represent an unexplored resource of uncharacterized microorganisms and genes.

Functional Metagenome Analysis

Snail metagenome assembly retrieved 363,365 predicted protein features. Of this total, 294,404 (81.0%) have been assigned an annotation using at least one protein database and 277,079 (94.1% of the annotated features) could be assigned to functional categories. The functional classification based on the COG database was obtained, and the abundance of the main pathways found on the A. fulica crop microbiome was compared with those of other metagenomes (Figures S3, S4).

Subsystems-based annotations (SEED) were performed to gain insights into the metabolic and physiological potential of the snail crop metagenome (Figure 3). In addition to the abundance of genes related to the main metabolic routes: carbohydrate, protein, and nucleic acid (Figure 3A; Figure S3), we found sequences associated with other important processes, such as iron acquisition, nitrogen, phosphorous, sulfur, potassium, cofactor and vitamins pathways, stress response and defense which are more abundant in the snail metagenome, as compared to other gut metagenomes (Figure S4).

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Figure 3. Subsystems-based annotation (SEED) analysis of the snail crop microbiome.

A) Percent of genes assigned by MG-RAST to each SEED subsystem. B) Percent of genes in the “Stress Response” subsystem, which includes sequences mainly associated with the protection against oxidative and osmotic stress, as well as heat shock. C) Genes assigned to the “Virulence, Disease and Defense” subsystem. Seventy-one percent of the sequences correspond to genes providing resistance to antibiotics and other toxic compounds, including multi-drug efflux pumps and genes for detoxification of a wide variety of heavy metals (cobalt, zinc, cadmium, chromium, copper and mercury). D) and E) Percent of genes in the subsystems “Amino Acids and Derivatives” and “Cofactors, Vitamins, Prosthetic Groups, Pigments”, respectively.

https://doi.org/10.1371/journal.pone.0048505.g003

The genetic repertoire of the A. fulica microbiome includes many sequences associated with protection against oxidative and osmotic stress, heat shock, and metabolism of aromatic compounds (Figure 3B; Figure S5), which could play an important role in the detoxification of phenolic and toxic compounds. Furthermore, we found a great variety of genes coding for antibiotic resistance as well as complete biosynthetic pathways for amino acids and vitamins (Figure 3).

Previous studies based on culture-independent high-throughput technologies have suggested that animals constitute complex biological systems in which mutualistic and symbiotic microbiota can influence host metabolism and complement important physiological functions [58][60]. In fact, microbiota that inhabit the gastrointestinal tract of animals considerably affect the growth and health of their hosts by influencing nutrition, pathogenesis, and immunity [61][62]. In this context, microbial communities within the snail crop could play an important role in detoxifying phenolic compounds and xenobiotics as well as in the synthesis of essential nutrients and defensive molecules. This relationship may be related to the high physiological adaptability and invasive properties of A. fulica.

We also analyzed the functional composition of the snail metagenome using similarity to a non-redundant protein database against KEGG metabolic pathways. This functional assignment revealed the main pathways represented on the microbiome (Figure S6A). A detailed examination of the carbohydrate metabolic pathways (Figure S6B) revealed a significant number (∼7.5%) of putative genes belonging to the subgroup “starch and sucrose metabolism”, including sequences coding for critical enzymes that cover all steps of cellulose deconstruction (Figure S6C).

Repertoire of Glycoside Hydrolase Functional Domains and Related Modules

To identify how the microbial community associated with A. fulica mediates plant fiber degradation, database searches for glycoside hydrolase (GH) domains were performed by HMMER software against the Pfam database. This analysis identified more than 4,000 EGTs from 93 different CAZy (Carbohydrate-Active EnZymes) families [33] and modules belonging predominantly to Proteobacteria (Table S3; Figure S7). We found a wide diversity of GH catalytic modules: 2,534 EGTs belonging to 53 different GH families, which indicates an abundance of potential polysaccharide and plant cell wall biomass-degrading enzymes.

We also detected a total of 458 EGTs from 11 families of non-catalytic carbohydrate-binding modules (CBMs), which may promote the interaction of an enzyme with its target substrate, thereby increasing the efficiency of catalysis. This abundance reflects a high capacity to metabolize and degrade diverse lignocellulosic substrates. For example, modules that are likely to bind cellulose were found (CBM4-9-16-22 (PF02018)) [63], but the most frequently occurring module was CBM50 (152 members, with 18% of the sequences belonging to the Pseudomonas genus), which is also known as a LysM domain (PF01476). These are modules found attached to enzymes cleaving either chitin or peptidoglycan [64]. This domain is found in many of the enzymes involved in cell wall degradation and is also present in other proteins that are associated with bacterial cell walls. LysM-containing proteins have multiple functions, including modulating host–microbe interactions, such as signaling and recognition, between Eukarya and bacterial symbionts [64].

The most represented GH families were GH1 (294 members, with 73% of the sequences belonging to Gammaproteobacteria) and GH3 (219 members), which contains a widespread group of glycosidases that cleave non-reducing carbohydrates in oligosaccharides and the side chains of hemicelluloses and pectins. In addition, we found an abundance of GH13 (251 members), which is the most abundant family in metagenomes, such as the termite gut [7], [65], and is the major GH family. This family includes enzymes that have a wide range of substrate specificities and catalytic activities, such as α-amylase, cyclodextrin glycosyltransferase (CGTase), branching enzymes, and cyclomaltodextrinase. The snail microbiome also contained a range of CAZy known to be involved in plant polymer degradation, including cellulases (GH5, GH9), β-galactosidases (GH2, GH27, GH35), chitinases (GH18, GH19), xylanases (GH26, GH43), and CE4 acetylxylan esterases that are required for the complete hydrolysis of xylan, α-xylosidases (GH31), α-mannosidases (GH38), and others targeting pectic polysaccharides, including GH43 and GH62 arabinofuranosidases, GH78 rhamnosidases, CE8 pectin methylesterases, GH28 rhamnogalacturonases, pectate lyases (PL1 and 3), and alginate lyase (PL5). In total, 21 families of glycosyltransferases (782 members), 4 families of carbohydrate esterases (212 members), and 4 families of polysaccharide lyases (94 members) were identified, representing the first and the largest microbial gene catalogue from a terrestrial snail. Moreover, 91 putative full-length genes with a significant match in the KEGG database were identified (Table S3). These include 43 candidate GHs, some of which are possibly involved in cellulose and hemicellulose degradation (such as five putative genes for β-glucosidases from the GH3 family, one putative protein from the GH5 family, and two putative cellulases from the GH8 family).

It is also worth noting the lack of specific CAZy family members, such as genes encoding for the GH7, GH12, GH44, and GH45 endoglucanases, which are essential in many cultured bacteria for cellulose solubilization. Cohesin and dockerin gene modules, which are often found associated with GHs, and are also known as cellulosome-associated modules, were not found in this metagenome. This may be a result of this particular microbiome structure, suggesting that there is still a deficiency in the information about the mechanisms involved in cellulose hydrolysis and dockerin-cohesin mediated complex assemblies in gut microbiomes.

Trends in the CAZy Family Frequencies

Comparing the snail GH profile with those of herbivores (giant panda, wallaby, and termite) and an omnivore (human), some interesting characteristics and patterns can be observed (Table 1).

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Table 1. Comparison of the glycoside hydrolase (GH) profiles targeting plant structural polysaccharides in the snail, termite, giant panda, wallaby, and human metagenomes.

https://doi.org/10.1371/journal.pone.0048505.t001

First, the fraction of annotated carbohydrate active enzymes in the snail crop assigned to the oligosaccharide degradation category from the snail (36%) was very similar to that observed in samples from the giant panda, wallaby, and human. The profile of debranching enzymes from the snail metagenome (4%), while most similar to that of the termite and panda (and lower than that of the wallaby), showed higher relative abundance of GH78 rhamnosidases, which include enzymes with α-L-rhamnosidase activity. These enzymes are very interesting in terms of their suitability for various biotechnological applications within the food, pharmaceutical, and chemical industries and in the detoxification of rhamnose-conjugated plant secondary metabolites [66]. Nevertheless, the fraction of cellulases and endohemicellulases was higher in the snail than the levels observed in the giant panda and human but still lower than that of the termite indicating that despite its preference for fresh plants and fruits, the snail may be able to consume and degrade more recalcitrant materials with the help of its microbiota. These results suggest that the snail holobiont represents a novel and interesting model for studying the degradation of lignocellulose.

The dendrogram obtained by hierarchical clustering shows many clusters from identical or similar biomes (Figure 4). Upon analysis of the host-associated metagenomes, we found that the majority of samples from fungus-growing ants clustered together, including those from Atta colombica (ACOFUNT, ACOFUNB), Cyphomyrmex longiscapus (CLOFUN), and the Trachymyrmex (TRAFUN) genus. The microbiome of these herbivore insects is responsible for the degradation of plant biomass and simulates the role of the gut in other plant biomass degradation systems, such as those found in the termite, cow, panda, and wallaby [37], [67].

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Figure 4. Dendrogram showing the relationships among metagenomes obtained through SPSS hierarchical clustering analysis.

Achatina fulica crop microbiome (SNAIL) was compared with fungus garden microbial communities from Atta colombica in top (ACOFUNT) and bottom (ACOFUNB), Atta cephalotes (ACEFUN), Cyphomyrmex longiscapus (CLOFUN), Trachymyrmex (TRAFUN), and Acromyrmex echinatior (FUNCOMB); fecal microbiome of swine (SWI267 and SWI266); P3 luminal contents of Nasutitermes (TERMITE1); intestinal micobiome of lean (MGUTL) and obese (MGUTOB) mice; fecal microbiome of healthy adult humans (HGUT7 and HGUT8); feces from wild pandas (PANDA2, PANDA5, and PANDA1); forestomach from Macropus eugenii (WALLABY); Richmond acid mine drainage (ACID); oral microbiome from humans (SUBGIN); aquatic environment from mesopelagic (MESO), oxygen minimum layer (OMIN), and planktonic zones (EUPHO) in Hawaii; microbiome of Trichonympha from termites (TERMITE2); soil microbial communities from farm silage (SOILM), dark crust (SOILD), distinct crusts (SOILL), and switchgrass rhizosphere (SWITGRA); Xyleborus affinis from adult (XAAD) and larvae (XALARY); Sirex noctilio (SNOCT); fungus-growing termite (FUNTER); Dendroctonus ponderosae (BEETLE); and endophytic microbiome from rice (RICE).

https://doi.org/10.1371/journal.pone.0048505.g004

A bigger cluster included the human fecal (HGUT7, HGUT8), mouse intestinal (MGUTL, MGUTOB), swine fecal (SWIN266, SWIN267), wild panda gut (PANDA1, PANDA2, PANDA5), and wallaby forestomach (WALLABY) microbiomes. In the same cluster, a termite gut microbiome (TERMITE1) was found. The wallaby metagenome was closer to the panda than to the human or swine metagenomes. The macropods are herbivores and possess unique adaptations to this diet, such as a forestomach where host-microbe associations allows the digestion of hemicellulose and cellulose [10]. Despite the fact that giant pandas do not have the long intestinal tract typical of other herbivores, it has been demonstrated that their gut microbiome contains putative cellulose-metabolizing symbionts [11]. Consequently, the similarity between the wallaby and panda microbiomes is not surprising. Humans, mice, and swine share similar genetic complexity and omnivorous feeding behavior [7], [68], which explains why their metagenomes were placed together in the major cluster. However, previous work has demonstrated that the cell wall and capsule profiles in the swine samples are more similar to those from the termite than those from the human gut [68]. This result was confirmed by our metagenomic comparison using carbohydrate-active enzymes, indicating similar metabolic capabilities between these microbiomes.

Another group was formed from four aquatic metagenomes (MESO, EUPHO, OMIN, ACID) as well as soil (SOILL), human oral (SUBGIN), and a protist microbiome that lives in the intestine of the termite (TERMITE2). The oral microbial communities were close to the acidic water, showing the similarities among communities belonging to acidic environments. A smaller cluster was formed by Sirex noctilio (SNOCT), adult (XAAD) and larvae (XALARV) Xyleborus affinis microbiomes, which are arthropod host-associated.

Finally, a cluster including microbiota associated with Arthropoda (ACEFUN, FUNTER, BEETLE), two plant-host associated (RICE, SWITCHGRA), and the snail metagenome were identified and found to be similar. Two soil samples (SOILD, SOILM) formed an external group. Clustering analysis of CAZy profiles showed that the microbiota from the crop of the giant snail is closest to microbial communities from the beetle Dendroctonus ponderosae. Native to the forests of western North America, this beetle is the most important insect pest of pine and is responsible for the loss of millions of trees. These beetles attack trees by boring tunnels under the bark. Consequently, their microbiota may reveal important aspects of the cellulosic plant biomass conversion. Additionally, the similarity to the endophytic microbiome from rice and to microbial communities from the switchgrass (Panicum virgatum) rhizosphere may be due to the snail’s feeding habits. In these environments, hydrolytic plant polymer-degrading enzymes have been demonstrated to be an important characteristic for the establishment of endophytes in their hosts, resulting in a high abundance of cellulases, xylanases, hydrolases, cellulose-binding proteins, and pectinases [69].

Concluding Remarks

Deconstructing plant cell walls to improve the efficiency of processing biomass from bagasse and other agriculture residues by enzymatic hydrolysis is considered the most promising environmentally friendly technology available for second-generation ethanol production. However, the heterogeneity and complexity of cell wall structural components and the presence of inhibitors of these enzymes make industrial scale-up a difficult task. Presented in this study is a comparative metagenome analysis of the first land snail crop microbiome from a highly invasive species, which has a wide-ranging diet and is capable of consuming different varieties of plants and substrates. The A. fulica holobiont represents a prosperous reservoir of novel GH genes and related modules, some of which have not been previously detected in other metagenomic datasets, representing a remarkable and unique complexity and diversity of genes. Moreover, the diverse metabolic capabilities of the snail metagenome may provide important physiological functions that assist the host in adapting successfully to different environments and feeding habitats. In these circumstances, we anticipate that future explorations of the land snail microbiome will contribute not only to our understanding of basic biology and host-microbiota co-evolution but also to areas of biotechnological relevance, such as discovery and bioengineering of lignocellulolytic enzymes, for use in biomass-to-bioethanol applications to develop a more eco-friendly biofuel.

Supporting Information

Figure S1.

Rarefaction curve of annotated species richness. The curves represent the average number of different species annotations for subsamples of the complete dataset calculated in MGRAST.

https://doi.org/10.1371/journal.pone.0048505.s001

(TIF)

Figure S2.

Principal coordinates analysis (PCoA) for giant snail (this study), wallaby, giant panda, chicken, termite, and cow rumen metagenomes. The data were compared with RDP using a maximum e-value of 1e−5, a minimum alignment length of 50, normalized values, and bray-curtis distances calculated in MGRAST.

https://doi.org/10.1371/journal.pone.0048505.s002

(TIF)

Figure S3.

Metabolic comparison according to the clusters of orthologous groups’ functional categories. The color scale corresponds to the relative number of putative genes within each metagenome.

https://doi.org/10.1371/journal.pone.0048505.s003

(TIF)

Figure S4.

Extended error bar of functional gene groups from Achatina fulica versus other gut metagenomes. Pair-wise comparisons were calculated for the snail metagenome versus (A) termite, (B) cow rumen, (C) panda, (D) wallaby, (E) chicken, and (F) human metagenomes are shown.

https://doi.org/10.1371/journal.pone.0048505.s004

(TIF)

Figure S5.

Functional analysis (SEED) for Metabolism of Aromatic Compounds category.

https://doi.org/10.1371/journal.pone.0048505.s005

(TIF)

Figure S6.

Functional analysis based on the KEGG database. A) Relative number of genes from the snail crop metagenome classified according to the KEGG main categories. As expected, the sequences related to carbohydrate and amino acid metabolism predominate, accounting for 17% and 15% of total coding sequences related to KEGG pathways, respectively. B) Examination of the relative gene diversity within the KEGG pathway for carbohydrate metabolism. C) KEGG sub-pathway for starch and sucrose metabolism. The color scale represents the number of genes (in logarithmic scale) found for each KEGG entry in the giant snail metagenome. Notice that a great variety of putative genes are related to cellulose degradation, including 49 endo-1,4-β-D-glucanases (entry 3.2.1.4), 3 types of 1,4-β-cellobiosidases (3.2.1.91), and 390 β-glucosidases (3.2.1.21). Furthermore, 27 sequences were classified as putative xylan-degrading enzymes (3.2.1.37, 1,4-β-xylosidases).

https://doi.org/10.1371/journal.pone.0048505.s006

(TIF)

Figure S7.

Contribution of organism taxa (Class level) to glycoside hydrolase (GH) hits on Achatina fulica metagenome. The color represents the proportion of each organism shown relative to the number of each GH hit. The scale is linear; red indicates 0, and blue indicates 100%.

https://doi.org/10.1371/journal.pone.0048505.s007

(TIF)

Table S1.

Food preferences of Achatina fulica.

https://doi.org/10.1371/journal.pone.0048505.s008

(XLS)

Table S2.

Summary of metagenomic data obtained from the Achatina fulica crop microbiome.

https://doi.org/10.1371/journal.pone.0048505.s009

(DOC)

Table S3.

Inventory of putative glycoside hydrolases (GH), polysaccharide lyases (PL), glycosyltransferases (GT), carbohydrate esterases (CE) and carbohydrate-binding modules (CBM) identified in the snail crop microbiome.

https://doi.org/10.1371/journal.pone.0048505.s010

(XLS)

Acknowledgments

We would like to thank the staff of INMETRO, UFRJ, and LNCC for insightful discussions and comments.

Author Contributions

Conceived and designed the experiments: AMC OBM ESG WdS ATRV. Performed the experiments: AMC JJVC ALG. Analyzed the data: AMC JJVC MEC CET RBF AG SMNS YBS PJMSIB ALG ATRV. Contributed reagents/materials/analysis tools: OBM ESG WdS ATRV. Wrote the paper: AMC JJVC CET RBF MEC AG SMNS YBS PJMSIB ALG ATRV.

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