Abstract
Diverse bacteria can colonize the animal gut using dietary nutrients or by engaging in microbial crossfeeding interactions. Less is known about the role of host-derived nutrients in enabling gut bacterial colonization. Here we examined metabolic interactions within the evolutionary ancient symbiosis between the honey bee (Apis mellifera) and the core gut microbiota member Snodgrassella alvi. This betaproteobacterium is incapable of metabolizing saccharides, yet colonizes the honey bee gut in the presence of a sugar-only diet. Using comparative metabolomics, 13C-tracers and nanoscale secondary ion mass spectrometry (NanoSIMS), we show in vivo that S. alvi grows on host-derived organic acids, including citrate, glycerate and 3-hydroxy-3-methylglutarate, which are actively secreted by the host into the gut lumen. S. alvi also modulates tryptophan metabolism in the gut by converting kynurenine to anthranilate. These results suggest that S. alvi is adapted to a specific metabolic niche in the honey bee gut that depends on host-derived nutritional resources.
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Main
Gut bacteria and their hosts typically engage in mutualistic interactions. Metabolic exchange from the gut microbiota to the host is vital for uptake of essential nutrients, gut health and immune system function1. In turn, bacteria profit from a stable niche environment and frequent supply of exogenous food. The role of host-secreted metabolites that benefit bacteria in the gut is less well understood. Such metabolic exchange is difficult to identify due to the overwhelming contributions of the diet and microbial products towards gut metabolites.
Deciphering the extent to which host metabolite secretion drives microbial colonization of native symbionts is aided by a simple, tractable system in which diet and microbiota-derived metabolites can be tightly controlled. The Western honey bee (Apis mellifera) provides such a system. Its gut microbiota is broadly stable and composed of only eight to ten genera2,3 many of which have longstanding evolutionary associations with their host that date back to the emergence of social bees >80 million years ago4,5,6. Bacteria of these genera are culturable and can be inoculated individually or as defined communities into gnotobiotic bees7. Furthermore, while the honey bee diet features a rich mixture of compounds found in nectar and pollen, bees can survive for extended periods on pure sugar water diets8.
Most members of the bee gut microbiome are primary fermenters, possessing a broad range of carbohydrate degradation enzymes that enable them to use hemicellulose, pectin, starch or glycosides found in pollen3,9. A notable exception is the Betaproteobacteria Snodgrassella alvi. It colonizes the cuticular surfaces of the ileum in the hindgut and displays a markedly different metabolism10,11. Lacking a functional glycolysis pathway, S. alvi profits from acids in the gut, generating energy from an aerobic tricarboxylic acid (TCA) cycle and biomass through gluconeogenesis. Fermentation by other microbial members has been proposed as the primary source of short chain fatty acids (SCFAs) consumed by S. alvi. In particular, bacteria of the gammaproteobacterial genus Gilliamella are probably mutualistic partners for metabolic crosstalk, as they colocalize with S. alvi within biofilms attached to the cuticular surface in the ileum and share complementary metabolic capabilities10. Experimental evidence from in vitro growth experiments bolstered this hypothesis, showing that S. alvi grows on the spent media of Gilliamella, while consuming numerous products of the Gilliamella metabolism, such as succinate and pyruvate12.
Although a strong case can be made for niche exploitation through bacterial crossfeeding, this does not explain previous results in which S. alvi was able to monocolonize bees fed diets of sugar water and pollen12. To better understand the nutrient sources that S. alvi exploits, we provided bees with a simple (sugar water) or complex (sugar water and pollen) diet and colonized them with S. alvi alone or together with divergent strains of the genus Gilliamella. Surprisingly, we found that a simple sugar water diet was sufficient for S. alvi to colonize the honey bee gut. Subsequent metabolomics analysis indicated that host-derived carboxylic acids enable S. alvi colonization. We validated this with a series of experiments showing that (1) these carboxylic acids are synthesized by the host, (2) S. alvi uses them for growth and (3) the findings hold across a range of divergent Snodgrassella strains and species.
Results
S. alvi colonizes the gut with only sugar in the diet
We colonized microbiota-free (MF) honey bees with S. alvi (strain wkB2) or a mixture of Gilliamella strains (strains wkB1, ESL0169, ESL0182, ESL0297) or with both phylotypes together and provided a diet composed of only sterile-filtered sugar water (sucrose) or sugar water and sterilized polyfloral pollen for 5 days (Fig. 1a). Colonization levels of both phylotypes were assessed by quantitative polymerase chain reaction (qPCR) and colony-forming unit (c.f.u.) plating 5 days postinoculation (Fig. 1b and Extended Data Fig. 1). Surprisingly, S. alvi colonized equivalently in the guts across all treatment groups, that is, sugar water in the diet was sufficient to enable S. alvi colonization and neither the addition of pollen to the diet nor cocolonization with Gilliamella significantly increased S. alvi loads (two-sided Wilcoxon rank sum test with S. alvi (sugar water) as reference group). Importantly, qPCR analysis with universal bacterial and fungal primers showed no or very low levels of amplification in most samples, apart from gut samples containing pollen which resulted in relatively high background amplification with the universal bacterial primers as previously reported (Extended Data Fig. 1c,d)12,13. Culturing of gut homogenates of MF bees on different media resulted in no microbial growth in any of the tested conditions (Methods). Hence, we can rule out that systematic contaminations with other microbes facilitated S. alvi colonization through crossfeeding in the monocolonization treatment.
S. alvi depletes organic acids in the honey bee gut
To search for putative S. alvi growth substrates originating from the host, the pollen diet or Gilliamella, we next extracted metabolites from the midgut and hindgut for a subset of the colonized bees and analysed them via gas chromatography–mass spectrometry (GC–MS). The presence of pollen in the gut significantly increased the abundance of nearly half of the annotated metabolites (125 of 233) in MF bees (Extended Data Fig. 2). Thus, we compared results between colonized and MF bees only within each dietary treatment. When we examined monocolonization of S. alvi in bees fed with sugar water, we identified many carboxylic acids, including citrate, 3-hydroxy-3-methylglutarate (3Hmg) and glycerate that were significantly less abundant than in the MF controls (Fig. 1c). These carboxylic acids, along with others (for example, 2-ketoisocaproate, α-ketoglutarate and malate) were also depleted in S. alvi monocolonized bees that were fed pollen (Fig. 1c), despite the substantial differences in the overall metabolite profiles between the two dietary conditions. In contrast, few metabolites were significantly more abundant in S. alvi colonized bees relative to MF bees, with only anthranilate, a product of tryptophan metabolism, accumulating in colonized bees of both dietary treatments (Fig. 1c).
We then fit each metabolite with a linear mixed model to quantify how strongly metabolite changes were influenced (that is, the fixed effect) by each of the three independent experimental variables (that is, the presence of Gilliamella, S. alvi or pollen) across the eight experimental conditions, This crossconditional analysis confirmed that colonization with S. alvi resulted in significantly (P < 0.05; see link given in the ‘Code availability’ for supporting data) decreased abundances of carboxylic acids, particularly 3Hmg, citrate, malate, fumarate and glycerate (Fig. 1d). We could also infer which metabolites were co-produced, co-consumed or cross-fed (and in which direction) between the two bacteria (Fig. 1d). For example, we found evidence supporting our initial hypothesis of metabolic cross-feeding from Gilliamella to S. alvi in the form of lactate, pyruvate and other unknown compounds that were more abundant with Gilliamella and less abundant with S. alvi (Fig. 1d and Extended Data Fig. 3). However, we found no evidence of reverse cross-feeding from S. alvi to Gilliamella. Instead, we found that both species compete for certain metabolites and act synergistically to synthesize others. Competition or co-consumption, centred on the carboxylic acids, as colonization with Gilliamella also led to depletion of citrate and glycerate and to a lesser extent, malate and fumarate (Fig. 1d and Extended Data Fig. 3). Cooperative synthesis revolved around four metabolites: acetate, succinate, benzoate and unknown_12.74. Of these, only acetate was also more abundant in monocolonization (Gilliamella) than in MF controls (Fig. 1d and Extended Data Fig. 3). Finally, nearly all the metabolites depleted with S. alvi colonization were positively affected by pollen, except for citrate, glycerate, acetate and two unknown compounds, which were unaffected, and urea, whose abundance was negatively correlated with pollen. Taken together, these results show that each of the tested variables affects nutrient availability and metabolism of S. alvi¸ although metabolic crossfeeding and a nutrient-rich diet do not lead to increased colonization levels in the gut.
Host sugar catabolism provides S. alvi substrates in vivo
We next sought to measure host production of carboxylic acids in the guts of MF bees over the first 6 days postemergence and compare the abundances to what the bee could have extracted from the average amount of pollen consumed (24.3 ± 7.2 mg per bee) as estimated on the basis of data collected from the previous experiment (Methods, Extended Data Fig. 4 and Supplementary Table 1). Moreover, to rule out microbial or fungal contamination as a source of these compounds, we rigorously checked once more for live contamination by plating the guts of newly emerged (day 0) and 6-day-old MF bees on eight different media in three different growth environments (Methods), finding no evidence of live bacterial or fungal contamination (n = 8). Even though the bees only consumed sugar water, we found that many gut metabolites, including glycosylamines, sugar alcohols and carboxylic acids, were significantly more abundant 6 days after emergence (Extended Data Fig. 5). Focusing specifically on the compounds depleted in the presence of S. alvi, we found that citrate was most abundant in the gut, with its concentration increasing from 29 ± 14 μmol mg−1 at day 0 to 73 ± 34 μmol mg−1 at day 6 post-emergence. Substantially less citrate, 3 ± 2 μmol mg−1, was extracted from pollen (Fig. 2a). A similar trend was also found for 3Hmg, α-ketoglutarate, isocitrate and kynurenine. Of S. alvi’s putative substrates, only caffeate and lactate were more abundant in pollen than in the bee gut. The increasing abundance of many compounds over 6 days, as well as their generally low abundance in pollen suggests that active metabolism by the host substantially impacts the gut metabolome. Specifically, easily digestible nutrients in the diet are absorbed and metabolized by the bee upstream of the hindgut, while downstream metabolic products are excreted into the hindgut and serve as substrates for S. alvi.
To corroborate this hypothesis, we fed MF bees for 6 days with 45% of the dietary sucrose replaced by 100% [U-13C6] glucose. Half of the bees were also provided standard pollen to assess its contribution relative to simple sugars in the synthesis of gut metabolites. We then analysed the resulting 13C-isotopic enrichments in gut metabolites with a focus on those indicated as substrates for S. alvi. The carboxylic acids and non-essential amino acids were significantly 13C-enriched in the bee gut. In contrast, other compounds, such as kynurenine and essential amino acids did not show any enrichment (Fig. 2b). The lack of isotope labelling indicates that these compounds were not actively synthesized from glucose by adult bees during the first 6 days postemergence. Instead, they were either leftover in the gut from the larval development stage or were acquired from the larval diet, such as in the case of essential amino acids and their catabolic products. As expected, the average 13C enrichment levels of most metabolites dropped in bees fed with pollen compared to those fed with sugar water only. The 13C dilution can occur directly from non-labelled metabolites in pollen, as well as indirectly from host metabolism of pollen substrates. However, the average 13C enrichment of carboxylic acids only dropped from 21 ± 6% to 17 ± 7%, which serves as further evidence that host metabolism of simple sugars rather than dietary consumption is the predominant source of carboxylic acids in the gut (Fig. 2b). We thus conclude from this analysis that the carboxylic acids used by S. alvi are mostly de novo synthesized from sugar metabolism of the host.
NanoSIMS reveals transfer of host compounds to S. alvi
While our previous experiments suggested host nutrient foraging by S. alvi, the results did not provide direct evidence that S. alvi assimilates biomass from these compounds. Therefore, we probed the flow of metabolites from the bee to S. alvi using a ‘pulse–chase’ 13C-isotope labelling experiment and then measured the enrichment within S. alvi cells and surrounding host tissue using nanoscale secondary ion mass spectrometry (NanoSIMS) complemented with measurements of metabolite enrichments using GC–MS (Fig. 3 and Supplementary Table 3). To do so, we enriched newly emerged MF bees in 13C by feeding them 100% [U-13C6] glucose for 4 days after emergence. We then inoculated them with S. alvi and waited 1 day before switching their diet to naturally abundant, 98.9% 12C glucose (Fig. 3a). This ensured that the largest S. alvi population increase, between 24- and 48-h postcolonization, occurred without a dietary 13C source but still in a highly 13C-labelled environment (Fig. 3b).
Accordingly, we measured rapid 13C-labelling turnover in S. alvi in 18 images coming from two bees (sampled at 48 and 72 h postinoculation) in which we could detect bacterial cells (Fig. 3c,e and Source Data of Fig. 1). The 13C enrichment was substantially higher in S. alvi cells than in the adjacent host ileum tissue 48 h after inoculation but then dropped below the levels of host tissue 72 h after inoculation (at.% = start, 5.56; end, 2.25) (Fig. 3c). In contrast, the ileum tissue showed a constant 13C enrichment over the course of the experiment (at.% = start, 3.31; end, 3.16), whereas the cuticle lining of the gut epithelium was comparatively less enriched initially and continued dropping to almost natural 13C enrichment levels after 72 h (at.% = start, 2.58; end, 1.39) (Fig. 3c).
The 13C enrichment of carboxylic acids and host-synthesized (non-essential) amino acids in the gut dynamically shifted in response to the 13C/12C switch (Fig. 3d and Supplementary Table 3). Initially, they were highly 13C-enriched (38 ± 14.7%) but the labelling fell steadily to approximately half the original level (14 ± 5.8%) within 48 h (Fig. 3d). As a control, we found that essential amino acids (non-host-synthesized) were not enriched above the level of natural 13C abundance (1.11%) throughout the experiment. Thus, these results show that products of host glucose metabolism are actively used by S. alvi to build its biomass during early colonization.
In vitro growth assays confirm active metabolism by S. alvi
We next tested whether the putative host-synthesized substrates were sufficient for growth of S. alvi as sole carbon sources in a chemically defined liquid medium ‘Bee9’, which we derived from standard M9 media (Fig. 4a and Supplementary Information). We used Bee9, after finding that S. alvi consumes amino acids present in standard M9 previously used to grow this bacterium12. Only three metabolites (citrate, isocitrate and malate) supported growth as sole carbon sources in this condition. However, the addition of 3Hmg, fumarate, succinate, gamma-aminobutyrate (GABA), kynurenine or urea to Bee9 + citrate significantly improved the maximal growth rate of S. alvi relative to Bee9 + citrate alone (Fig. 4b). In particular, 3Hmg and GABA had dramatic effects on growth rates, increasing them 3.52 ± 0.10 and 2.76 ± 0.04-fold, respectively.
Analysis of the spent media revealed that all tested metabolites, except for the glucose negative control, were depleted by S. alvi (Extended Data Fig. 6). This further confirmed that the identified host-derived organic acids are growth substrates of S. alvi. Unlike the results from our colonization experiments, S. alvi produced numerous carboxylic acids, which varied on the basis of the carbon source. For example, acetate was a metabolic substrate but it was also produced in the presence of pyruvate or 3Hmg. Meanwhile, α-ketoglutarate, 2-oxoisovalerate, malate and succinate were produced across most growth conditions (Fig. 4c). Consistent with the in vivo metabolomics, we detected production of anthranilate when kynurenine was added to the media, and we further measured the production of kynurenic acid and tryptophan (Fig. 4d). S. alvi wkB2 encodes a putative kynureninase gene (SALWKB2_0716, Genbank genome: CP007446; ref. 10) that is probably responsible for the conversion of kynurenine into anthranilate. Interestingly, this gene seems to have been acquired by horizontal gene transfer as indicated by a phylogenetic analysis (Extended Data Fig. 7): apart from other Snodgrassella strains, the closest sequences of the kynureninase gene were not found in other Neisseriaceae but in more distantly related Betaproteobacteria (genera Pusilimonas and Alcaligenes) and in Gammaproteobacteria (genera Ignatzschineria and Acinetobacter).
Colonization is conserved across the Snodgrassella genus
As a final step, we examined whether our results were unique to the S. alvi wkB2 type strain or were more generally applicable to the genus, by inoculating bees with five divergent strains of Snodgrassella, three native to honey bees and two native to bumble bees. We also lengthened the colonization experiment from 5 to 10 days to account for a potential delay in colonization of the honey bee gut by non-native strains. All five strains successfully colonized bees fed only sugar water. However, the efficiency and extent of colonization varied between strains. Strains of Snodgrassella native to honey bees colonized consistently, while non-native strains sometimes failed to colonize (aggregate colonization success, 100% (n = 93) versus 70% (n = 44); Fisher’s exact test, P < 0.001) (Fig. 5a). The gut metabolomic comparison between successfully colonized versus MF bees was similar to our initial results. Carboxylic acids, such as 3Hmg, malate, fumarate, succinate, isocitrate and glycerate were significantly less abundant in colonized guts versus MF controls across three or more of the S. alvi strains tested. The abundances of purine and amino acid precursors hypoxanthine and urea were also depleted in the guts of colonized bees, while anthranilate again accumulated in all colonized bees (Fig. 5b and Extended Data Fig. 8). These results show that the use of host-derived carboxylic acids is a conserved phenomenon in the genus Snodgrassella and facilitates gut colonization independent of bacterial crossfeeding or diet-derived nutrients.
Discussion
Host-derived metabolites are gaining appreciation for their importance in facilitating extracellular microbial colonization across widely disparate animal models. In some cases, bacteria graze on the chitinous lining of the murine gut or of the light organ in squid14,15,16,17,18,19,20,21. In other instances, bacteria profit from small molecules secreted into the lumen. Commensal species can use lactate, 3-hydroxybutyrate and urea in the murine gut, while pathogenic Salmonella species use aspartate, malate, lactate or succinate to invade the gut22,23,24,25. Our study adds evidence that this phenomenon is conserved across widely disparate animal hosts and that these host-derived metabolites can represent the principal carbon source for certain gut bacteria facilitating colonization and growth, independent of the diet or crossfeeding.
We took advantage of the bee as a model host to drastically minimize confounding factors, colonizing bees with a single bacterium, S. alvi, while restricting the host to a sole dietary substrate that is undigestible for this bacterium. We then used 13C glucose labelling to show that organic acids measured in the gut are synthesized by the host from dietary sugars, which are then assimilated by S. alvi cells during gut colonization. The 13C enrichment of S. alvi was initially higher than in the surrounding host tissue but then dropped after the host diet was switched to 12C glucose. These dynamics are consistent with the hypothesis that S. alvi uses host metabolites that are derived from simple carbohydrate catabolism in the bee diet, rather than from grazing on components of the host epithelium lining in the gut (Fig. 6). Finally, we demonstrated that these organic acids sustain growth of S. alvi in vitro.
Our results provide new context to the substantial body of research on bacterial colonization of the bee gut. The consistent depletion of host-derived acids linked to the TCA cycle complements findings that these metabolites are depleted in bees colonized with individual microbes including S. alvi, Gilliamella, Lactobacillus Firm-5 and Bartonella apis, as well as when colonized with a full microbial community12,26,27. Thus, foraging on host-derived compounds may be widespread in the native bee gut community. Yet, in the specific case of S. alvi, these host-derived nutrients seem to be key for colonization. This is supported by a previous study which found that all genes of the TCA cycle and many genes associated with organic acid and ketone body degradation provide a strong fitness advantage for S. alvi to grow in the bee gut28.
Strikingly, two major metabolic functions conserved across all five strains of S. alvi (3Hmg consumption and anthranilate production) were associated with unique features in the metabolic pathways of S. alvi, providing evidence for adaptation to a specialized host niche. S. alvi possesses a non-canonical TCA cycle (Fig. 6); lacking a glyoxylate shunt it is unable to grow on acetate alone, but the substitution of acetate:succinate CoA-transferase for the canonical succinyl-CoA synthetase means that acetate, rather than acetyl-CoA, is a key driver of the TCA cycle29. Interestingly, we found that 3Hmg consumption results in the production of acetate when S. alvi is grown on 3Hmg in vitro. Therefore, we postulate that host-derived 3Hmg enhances growth of S. alvi through the production of acetate, which in turn, increases the flux through the TCA cycle (Fig. 6). 3Hmg is an intermediate of the host’s isoprenoid biosynthesis, leucine degradation and ketone body metabolism but the reason why this metabolite is released into the gut remains elusive.
The second unique metabolic feature of S. alvi, the production of anthranilate, probably depends on the enzymatic activity of a kynureninase gene identified in the genome of S. alvi converting host-derived kynurenine into anthranilate (Fig. 6). Intriguingly, this is the only gene annotated in the tryptophan degradation pathway of S. alvi; it is highly conserved in the entire genus and has probably been acquired by horizontal gene transfer, suggesting that it encodes a conserved function that is specific to the symbiosis between Snodgrassella and its bee hosts.
The release of relatively valuable metabolites into the gut could be a way for the host to control community assembly and facilitate the colonization of particularly beneficial gut symbionts30. While the full gut microbiota has been shown to carry out several important functions for the host, the specific role of S. alvi has remained elusive. Its metabolic activities may have positive effects on the host, as protection against pathogen invasion has been shown from kynurenine metabolism31,32. Kynurenine is important during the larval stage of bee development but it is also associated with neuronal defects (for example, hyperactivity and motor disfunction) in insects and vertebrates33,34,35. In contrast, anthranilate is an important precursor of the essential amino acid tryptophan and several beneficial neurotransmitters such as serotonin, tryptamine and various indole derivatives36. Intriguingly, indoles synthesized from tryptophan by Lactobacillus Firm-5 species in the gut were recently linked to enhanced memory and learning in honey bees37. Finally, we also note that the metabolism of urea by S. alvi could have a beneficial effect on the host. Urea constitutes a major waste product in mammals and insects. In turtle ants, ancient, specialized gut bacteria are able to recycle large amounts of nitrogen from urea into both essential and non-essential amino acids38. We found that urea is more abundant in the bee gut when nitrogen was absent from the diet, indicating higher metabolic turnover in the host, which S. alvi could alleviate through urea fixation.
Our findings fit within the context of several limitations. We examined a portion of the gut metabolome that is amenable to analysis via gas chromatography. Further relevant compounds may be detectable using complimentary methods. While we have shown that host-derived compounds can sustain growth of S. alvi, the tested conditions did not reflect the natural bee gut with a full microbial community and a metabolically rich diet that includes bee bread, pollen, honey and nectar. Therefore, we cannot exclude that dietary or microbially derived metabolites contribute to the growth of S. alvi in the native gut. In fact, we found in vivo evidence for crossfeeding of lactate and pyruvate from Gilliamella, as well as for pollen as an indirect source of key organic acids in the gut. However, these nutrient sources seem to play a minor role relative to the host, as the colonization levels of S. alvi did not differ significantly when pollen and/or Gilliamella were present. This is consistent with a previous study, which showed that the total abundance of S. alvi, in contrast to most other community members, does not change between nurse and forager bees that have different dietary preferences, nor does it change when pollen is removed from the diet of fully colonized bees under laboratory conditions39.
How host-synthesized organic acids reach the gut lumen remains elusive (Fig. 6). While leakage from host cells across the epithelial barrier is possible, transport via the Malpighian tubules upstream of the ileum seems more likely, as they excrete nitrogenous waste and other metabolites into the gut while also regulating osmotic pressure in the haemolymph40,41. Future work may resolve this question through careful dissection and metabolomic analysis of the Malpighian tubules and the ileum, possibly with the assistance of labelled compounds injected into the bee thorax.
Methods
Bacterial culturing
Extended Data Table 1 lists all strains used in this study12,42,43. Strains were isolated by directly plating gut homogenates on brain heart infusion agar (BHIA) or by first culturing them in Insectagro (15363611, Fisher Scientific) liquid media under microaerophilic conditions for 48 h before colonies were streaked on plates. Species identity was confirmed by 16S ribosomal RNA gene sequencing. Strains were grown on liquid Insectagro media for 18 h and then diluted in phosphate buffer saline (PBS) and 25% glycerol at optical density OD600 = 1. Solutions were kept frozen at −80 °C until just before colonization, when they were thawed on ice, diluted tenfold with PBS and mixed 1:1 with sterile sugar water (1 kg l−1 of sucrose in water).
Experimental colonization of gnotobiotic bees
All honey bees were collected from hives at the apiary of the University of Lausanne. A different hive was selected for each colonization replicate. MF bees were raised according to established protocols44. Briefly, frames containing capped brood were taken from the hive and washed quickly with a towel soaked in 3% bleach. Pupae of the appropriate age were then removed from the frames and placed into sterile emergence boxes containing 0.2 μm filter sterilized sucrose (50% w/w) sugar water. The boxes were placed in an incubator at 35 °C for 2 d, until the adult bees emerged. They were then randomly transferred to separate, sterile cages assembled from plastic drinking cups and Petri dishes.
Bees were colonized by hand with 5 μl of bacterial solution or corresponding blank control, after starving them of sugar water for 1–2 h, stunning them on ice for 5 min and transferring them with tweezers to individual microcentrifuge tubes that were cut to enable insertion of a pipette tip. Sugar water and, where specified, polyfloral pollen (Bircher Blütenprodukte) sterilized via electron beam irradiation (Studer Cables AG) were provided to cages ad libitum throughout each experiment. Mono- and co-colonization of bees with S. alvi wkB2 and the four Gilliamella strains were performed five times, using different hives for each treatment. Not all conditions were run in each experiment due to technical difficulties preparing the treatment groups and the GC–MS analysis was only carried out for a subset of the samples (Supplementary Table 1). The colonization experiment with the divergent Snodgrassella strains isolated from honey bees and bumble bees was carried out twice (Supplementary Table 2).
At the end of each experiment, bees were anaesthetized with CO2, placed on ice and dissected with sterile forceps. Whole guts, minus the crop, were homogenized in a bead beater (FastPrep-24, MP) in tubes containing PBS and glass beads. The samples were each immediately divided into three aliquots. One was plated to c.f.u. on BHIA as well as for contaminants on nutrient agar (NA) and De Man, Rogosa and Sharpe agar (MRSA). Another aliquot of 500 μl was centrifuged for 15 min at 4 °C and 20,000g and the liquid supernatant snap frozen in liquid nitrogen and stored at −80 °C until metabolomic extraction. The third aliquot was frozen at −80 °C until DNA extraction.
Validation of bee sterility
To rule out contamination in the guts of newly emerged bees, two bees from each emergence box in each experiment were sacrificed and 10 μl of their homogenized guts plated on BHIA (5% CO2), NA (aerobic) and MRSA (anaerobic) at 35 °C to check for sterility before colonizing the remaining bees. In the event of contamination detected in newly emerged bees, all bees from that emergence box were discarded from the experiment. The same contamination checks were also performed on all analysed bees at the end of each experiment. Additional sterility checks were performed in the experiment where we compared gut metabolite levels in newly emerged and 6-day-old MF bees. Here, we also plated eight homogenized guts on potato dextrose agar (aerobic), lysogeny broth agar (aerobic), tryptic soy agar (5% CO2), Columbia agar + 5% sheep blood (CBA + 5%SB, 5% CO2 and anaerobic) and tryptone yeast extract glucose agar (anaerobic).
Quantification of pollen consumption
Both whole bees and dissected bee guts were weighed to assess treatment effects and quantify pollen consumption. Whole bee and wet gut weights were both significantly higher in bees provided with pollen than in those provided with sugar water only, while colonization did not significantly affect weight (Extended Data Fig. 4). Linear mixed-effects models fitted by maximum likelihood with nested, random cage effects: (bee weight, n = 271, pollen: F(1,262) = 176.1, P < 0.001; S. alvi: F(1,262) = 0.1, P = 0.769; Gilliamella: F(1,262) = 1.0, P = 0.311; S. alvi:Gilliamella: F(1,262) = 0.7, P = .388); (gut weight, n = 271, pollen: F(1,262) = 220.0, P < 0.001; S. alvi: F(1,262) = 0.3, P = 0.595; Gilliamella: F(1,262) = 0.02, P = 0.880; S. alvi:Gilliamella: F(1,262) = 2.3, P = 0.131). We also weighed filled pollen troughs at the beginning and end of the experiment and calculated the amount of pollen consumed per bee. Unsurprisingly, the mean difference in gut weights between dietary groups (22.3 ± 18.3 mg per bee) closely matched the measured amount of pollen consumed by the bees across colonization treatments (24.3 ± 7.2 mg per bee) (Supplementary Table 1). We then calculated the bee body weight (bee weight − gut weight) to determine if diet or colonization led to actual tissue weight gain in bees. While we found a slight increase in body weight from pollen (95% CI [0.69 mg, 7.51 mg]), we cannot rule out that this was due to variable amounts of pollen present in the crop, which was not removed with the hindgut (body weight, n = 271, pollen: F(1,262) = 5.2, P = 0.023; S. alvi: F(1,262) = 1.4, P = 0.240; Gilliamella: F(1,262) = 0.6, P = 0.442; S. alvi:Gilliamella: F(1,262) = 3.8, P = 0.052).
Isotope tracing experiments
To assess the 13C metabolite enrichment in the bee gut, MF bees were provided a 45:65 ratio of 99% uniformly labelled [U-13C6] glucose (CLM-1396, Cambridge Isotope Laboratory) and naturally abundant sucrose (S0389, Sigma Aldrich) in the first experiment. For the NanoSIMS time-course colonization experiment, newly emerged MF bees were divided into two cages and provided with pure 99% [U-13C6] glucose (treatment) or naturally abundant (that is ~98.9% 12C) glucose (control) in water for 5 days (pulse) before switching both cages to a naturally abundant glucose diet (chase). On the morning of the fourth day all bees were starved for 1.5 h and colonized with S. alvi wkB2. The 13C glucose solution was replaced with a 12C glucose solution 24 h later. Bees were collected at 0, 8, 24, 32, 48, 56, 72 h after inoculation. This overlap of colonization and 13C glucose feeding was chosen to both maximize the number of bacterial cells in the transmission electron microscopy (TEM) sections and to reduce the dilution of 13C label due to metabolic turnover. For each timepoint and both cages (13C and 12C glucose treatment), the ileum of four bees were dissected. One gut was immediately preserved for electron microscopy and NanoSIMS, while the other three guts were homogenized and aliquoted for c.f.u. plating and metabolite extraction (Fig. 3). The control samples (from the cage provided with 12C glucose) were used to determine the natural 13C abundance in the bee tissue and S. alvi cells. Image metadata and raw NanoSIMS region of interest (ROI) values can be found in Supplementary Information.
Quantification of bacterial loads via qPCR
DNA extraction was carried out by adding 250 μl of 2× CTAB (H6269, T9285, 81420, Sigma Aldrich) to frozen gut homogenates. The mixture was homogenized at 6 m s−1 for 45 s in a Fast-Prep24TM5G homogenizer (MP Biomedicals) and centrifuged for 2 min at 2,000 r.p.m. DNA was extracted in two steps with Roti-Phenol (A156.3, Roth) and phenol:chloroform:isoamylalcohol (25:24:1), then eluted in 200 μl DNAse/RNAse water and frozen. The qPCR was run using target-specific primers for Apis mellifera actin and specific 16S rRNA gene primers for S. alvi and Gilliamella spp. as well as 16S rRNA gene universal primers used in ref. 12. However, amplification of chloroplast DNA was also observed in samples containing pollen, as shown in previous studies45.
The qPCR reactions were run on a QuantStudio 3 (Applied Biosystems) and standard curves were performed using the respective amplicons on a plasmid as previously described12.
In addition, 18S rRNA gene amplification with universal primers were run to assess fungal loads (F: TATGCCGACTAGGGATCGGG, R: CTGGACCTGGTGAGTTTCCC)46. The qPCR reactions were run on 384-well plate QuantStudio 5 (Applied Biosystems). The corresponding standard curve for absolute quantification was performed using the 199 base pair amplicon as opposed to a plasmid containing the amplicon. Data were extracted and analysed as previously described12.
Metabolite extractions
Frozen gut samples were divided and extracted via two established methods for SCFAs and soluble metabolites. Before soluble metabolite extraction from pure pollen grains, an equivalent amount to what was digested per bee was mixed with PBS. To approximate physiochemical degradation of the pollen in the bee gut, the samples were bead beaten and incubated at 35 °C for 18 h.
SCFAs were extracted with 750 μl of diethyl ether from 75 μl of gut supernatant that was first acidified with 5 μl of 11% HCl. Isovalerate (200 μM) (129542, Sigma Aldrich) was used as an internal standard. The solvents and resulting two-phase mixture were kept cold at −20 °C and vortexed 3× for 30 s. The samples were then centrifuged for 3 min at 4 °C and 13,000g and 80 μl of the ether phase was removed to a glass GC vial (5188-6591, Agilent). The sample was derivatized with 20 μl of MTBSTFA + 1% TBDMS (00942, Sigma Aldrich) for 1 h at 30 °C (ref. 47).
Soluble metabolites were extracted via a modified Bligh and Dyer protocol48. A (5:2:1) mixture of methanol (1.06009, VWR) and chloroform (1.02444, VWR) and double-distilled water was chilled to −20 °C and 800 μl added to 100 μl of gut homogenate. A mixture of l-norleucine (N8513, Sigma Aldrich), dl-norvaline (53721, Sigma Aldrich) and 13C glucose was used as internal standards. The samples were vortexed three times for 30 s and extracted at −20 °C for 90 min. The samples were then centrifuged at 13,300g and 4 °C for 5 min. Liquid supernatant was transferred to a new tube and 400 μl of cold chloroform: methanol (1:1) was added to the insoluble material. The samples were again vortexed three times, extracted for 30 min at −20 °C, centrifuged and the two supernatants were combined. Phase separation was achieved by adding 200 μl of water and centrifuging at the same conditions. The upper phase was then dried overnight in a speed vacuum. The sample was derivatized with 50 μl of 20 mg ml−1 methoxyamine hydrochloride in pyridine (226904, Sigma Aldrich), for 90 min at 33 °C followed by silylation with 50 μl of MSTFA (69478, Sigma Aldrich) for 120 min at 45 °C.
GC–MS analysis
Samples were analysed on an Agilent 8890/5977B series GC-MSD equipped with an autosampler that injected 1 μl of sample onto a VF-5MS (30 m × 0.25 mm × 0.25 μm) column. The SCFA samples were injected with a split ratio of 25:1, helium flow rate of 1 ml min−1 and inlet temperature of 230 °C. The oven was held for 2 min at 50 °C, raised at 25 °C min−1 to 175 °C and then raised at 30 °C min−1 to 280 °C and held for 3.5 min. The MSD was run in SIM mode with three target ions for each compound. The soluble metabolite samples were injected with a split ratio of 15:1, helium flow rate of 1 ml min−1 and inlet temperature of 280 °C. The oven was held for 2 min at 125 °C, raised at 3 °C min−1 to 150 °C, 5 °C min−1 to 225 °C and 15 °C min−1 to 300 °C and held for 1.3 min. The MSD was run in scan mode from 50 to 500 Da at a frequency of 3.2 scan s−1.
Metabolomics data analysis
Mass spectrometry features were identified by spectral matching to the NIST17 mass spectra library or to inhouse analytical standards. Features were then extracted using the MassHunter Quantitative Analysis software (Agilent). Data normalization and analysis was performed using custom R Studio (4.0.3) scripts (see Data availability). Absolute metabolite quantification was performed by fitting normalized response values to calibration curves of analytical standards. The effect of diet and colonization with S. alvi and Gilliamella were assessed by fitting z-score normalized metabolite abundances to a linear mixed-effects model fitted by restricted maximum likelihood (REML) using the lmm2met package in R with diet, S. alvi and Gilliamella as fixed effect factors and experimental replicate (bee colony) as a random effect49. The significance of each fixed effect was then adjusted by the Benjamini–Hochberg (BH) procedure to control for false discovery. Mass isotopologues were adjusted to account for natural isotope abundances following published procedures50,51.
TEM section preparation and NanoSIMS analysis
Bee guts were dissected, the ileum was cut away from the rest of the gut and fixed in glutaraldehyde solution (EMS) 2.5% in phosphate buffer (PB, 0.1 M pH 7.4) (Sigma) for 2 h at room temperature (RT) and kept at 4 °C until sample preparation. Ileum pieces were rinsed three times for 5 min in PB buffer and then postfixed with a fresh mixture of osmium tetroxide 1% (EMS) with 1.5% potassium ferrocyanide (Sigma) in PB buffer for 2 h at RT. The samples were then washed three times in distilled water and dehydrated in acetone solution (Sigma) at graded concentrations (30%—40 min; 70%—40 min; 100%—1 h; 100%—2 h). Dehydration was followed by infiltration in Epon resin (Sigma) at graded concentrations (Epon 1/3 acetone—2 h; Epon 3/1 acetone—2 h, Epon 1/1–4 h; Epon 1/1–12 h) and finally polymerized for 48 h at 60 °C in an oven. Thin sections of 100 nm were cut on a Leica Ultracut (Leica Mikrosysteme GmbH) and picked up on copper slot grid 2 × 1 mm (EMS) coated with a polyetherimide film (Sigma). Sections were poststained with uranyl acetate (Sigma) 2% in H2O for 10 min, rinsed several times with H2O followed by Reynolds lead citrate for 10 min and rinsed several times with H2O.
Large montages with a pixel size of 6.9 nm covering areas of around 120 × 120 µm were taken with a transmission electron microscope (TEM) Philips CM100 (Thermo Fisher Scientific) at an acceleration voltage of 80 kV with a TVIPS TemCam-F416 digital camera (TVIPS GmbH) and the alignment was performed using Blendmont command-line program from the IMOD software52.
Four holes were made using the electron beam at the four corners of the montage to localize the area of interest for NanoSIMS imaging. Then the slot grid was deposited on 1 µl of distilled water on a 10 mm round coverslip and left to dry for 10 min. The slot grid was detached, letting the section attach to the coverslip.
After being coated with a 15 nm gold layer to evacuate a potential build-up of a charge during the NanoSIMS analyses, the samples were analysed by a NanoSIMS 50 l, software v.4.5 (CAMECA). A primary beam of 16 keV Cs+ ions was focused to a spot size of about 100 nm on the sample surface, causing the sputtering of atoms and small molecules from the first 5–10 nm of the sample. Negative secondary ions were directed and focalized into a single beam before reaching the magnetic sector of the mass spectrometer where the ions were separated. The species of interest (12C14N- and 13C14N- for this study) were then measured simultaneously using electron multipliers. To resolve the interference between 13C14N- and 12C15N-, two slits (ES and AS) were used to achieve a mass resolution higher than 10,000 (Cameca definition)53.
In the imaging mode, selected areas of 25 × 25 µm2 were implanted using a strong beam (using diaphragm D1-1 (diameter 750 µm) and a current of 16 pA) to remove the gold coating and reach stable emission conditions. After optimization of the extraction of the secondary ions, the area was imaged by scanning with a smaller beam (~100 nm, using diaphragm D1-5 (diameter 100 µm) and a current of 0.45 pA) with a 256 × 256 pixel resolution and a dwell time of 5 ms per pixel. For each image, ten layers were acquired. The image processing was performed using L’image software version 10-15-2021 (L. Nittler, Carnegie Institution of Washington). The ten layers were aligned and stacked, 44 ms deadtime correction was applied. Regions of interests (ROI) were manually drawn around bacterial cells, gut epithelium layer and bulk host cells. The resulting data are reported in Supplementary Table 3. The at.% enrichment was calculated in R using the data.table package. The at.% enrichment formula: \({13\atop}{\rm{C}}\; {{\rm{at}}. \%} ={{14\atop}}{\rm{N}\,}{13\atop}{\rm{C}}/\left(\,{14\atop}{\rm{N}\,}{13\atop}{\rm{C}}+{{14\atop}}{\rm{N}\,}{12\atop}{\rm{C}}\right)\times 100\) (Supplementary Fig. 1).
In vitro growth of S. alvi
S. alvi was cultured in Bee9 media, an M9-derived minimal defined media containing essential vitamins and mixtures of organic acids (Supplementary Information). Growth assays were performed in 96-well plates (Corning costar) at 35 °C, 5% CO2, with continuous orbital shaking (H1 Synergy, Biotek). OD600 measurements were taken every 30 min for 20 h. All conditions were independently replicated three times. For metabolomics measurements, plates were immediately placed on ice at the end of each experiment and liquid was transferred to microcentrifuge tubes. The tubes were then centrifuged at 13,300g and 4 °C for 30 s and the liquid supernatant was then snap frozen in liquid nitrogen and stored at −80 °C for metabolomic analysis.
Phylogenetic analysis of the kynureninase gene family
The kynureninase protein sequence of S. alvi wkB2 was retrieved from NCBI (WP 025330329.1) and blasted (NCBI, BlastP) against the nr database. On the basis of the BlastP hits, 227 divergent amino acid sequences were exported in fasta format and aligned using MUSCLE54 with standard parameters. Tree inference and bootstrap validation were performed using IQtree with the following command: iqtree-omp -s kyn_sequences_muscle.aln -nt 6 -m TEST -bb 1000 (ref. 55). The tree topology was visualized using the ITOL online viewer (https://itol.embl.de/).
Statistics and reproducibility
Bees, grouped by hive, were randomly assigned to treatment conditions. Data processing and analysis, that is GC–MS or qPCR, of bee material and in vitro samples was performed randomly across treatment groups and experimental replicates to prevent confounding of treatment with batch effects. The investigators were not blinded to allocation during experiments and outcome assessment. No statistical methods were used to predetermine sample sizes but our sample sizes are similar to those reported in previous publications12,26. One experimental replicate (Fig. 1) was discarded entirely from the analysis due to detected contamination in the bee emergence boxes before treatment. For quantifying bacterial abundance with qPCR, samples with s.d. >0.7 were excluded from the analysis. Similarly, samples were removed from the metabolomics dataset when internal standards greater than or less than 2 × s.d. from the median of that batch (Fig. 1, Extended Data Figs. 2 and Fig. 3: n = 6; Fig. 5 and Extended Data Fig. 8: n = 3).
Reporting summary
Further information on research design is available in the Nature Portfolio Reporting Summary linked to this article.
Data availability
The complete set of raw data have been deposited on Zenodo at https://doi.org/10.5281/zenodo.10066636. Source data are provided with this paper.
Code availability
Computational code used to analyse data and generate figures are also available in the Zenodo repository at https://doi.org/10.5281/zenodo.10066636.
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Acknowledgements
We would like to thank S. Moriano-Gutierrez and G. Santos-Matos for providing helpful comments on the manuscript. This work was funded by the University of Lausanne, an ERC Starting Grant (MicroBeeOme), the NCCR Microbiomes, a National Centre of Competence in Research, funded by the Swiss National Science Foundation (grant no. 180575) and a Swiss National Science Foundation project grant (grant no. 179487) to P.E.
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Contributions
A.Q., Y.E. and P.E. conceived the project and designed the experiments. A.Q. and Y.E. performed the experiments. A.Q. analysed the GC–MS results, while Y.E. analysed the qPCR and NanoSIMS results. N.N. assisted with bee experiments, metabolite and DNA extractions. A.M.N. performed preliminary in vitro growth experiments. J.D. performed the tissue sectioning and TEM imaging supervised by C.G. S.E. performed the NanoSIMS imaging and instructed on the data analysis, supervised by A.M., who also advised on the design of the NanoSIMS experiment. A.Q., Y.E. and P.E. wrote the manuscript, with contributions from S.E. and A.M. All authors reviewed the manuscript and provided feedback. As equally contributing first authors, A.Q. and Y.E. may each list their name first when referencing this work.
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Extended data
Extended Data Fig. 1 Total number of bacteria and fungi and colonization levels of Gilliamella per bee gut.
(A) Total number of bacteria (both S. alvi and Gilliamella) was determined by plating homogenized guts on BHIA and counting CFUs. Horizontal dotted line represents LOD < 70. No colonies were observed in samples plotted below the LOD line. Significant differences in CFUs between dietary conditions was determined with a two-sided Wilcoxon rank sum test (S. alvi: ***P = 3.9x10-4; S. alvi + Gilliamella: *P = 0.031) NS, non-significant. (B) Bacterial cells (number of bacterial genome equivalents) per bee gut determined by qPCR using genus-specific Gilliamella 16 S rRNA gene primers. The horizontal dotted line represents qPCR LOD < 104. A two-sided Wilcoxon rank sum test was used with Gilliamella (Pollen -) as reference group, NS, non-significant; (No bacteria: ****P = 4.43x10-7, No bacteria (Pollen) ****P = 4.25x10-7, Gilliamella (Pollen): *P = 3.7x10-2, S. alvi + Gilliamella: **P = 6x10-3. (C) Number of 16 S rRNA gene copies per bee gut and in three different quantities of sterilized bee pollen as determined by qPCR using universal 16 S rRNA gene primers. The horizontal dotted line represents qPCR LOD < 8x103. Wilcoxon rank sum test was used with MF (Pollen -) as reference group, (No bacteria: ****P = 3.16x10-5, S. alvi: ****P = 1.71x10-9, S. alvi (Pollen) ****P = 1.71x10-9, Gilliamella: ****P = 3.18x10-11, Gilliamella (Pollen): ****P = 4.93x10-10, S. alvi + Gilliamella: ****P = 1.35x10-13, S. alvi + Gilliamella (Pollen): ****P = 1.93x10-13 NS, non-significant). The number of 16 S rRNA gene copies detected in DNA extracted from different quantities of sterile pollen used in the bee diet is shown in a separate plot. The high background signal in samples containing pollen comes from the amplification of chloroplast DNA as shown in previous studies45. (D) Number of 18 S rRNA gene copies per bee gut and in three different quantities of sterilized bee pollen as determined by qPCR using universal 18 S rRNA gene primers. The horizontal dotted line represents qPCR LOD < 104. Wilcoxon rank sum test was done with MF (Pollen -) as reference group, NS, non-significant. In all plots, each dot represents a single bee gut and red bars represent the median value for each group. The absence or presence of pollen in the diet is indicated by (-/+).
Extended Data Fig. 2 Volcano plots highlighting gut metabolite abundance changes between colonized and microbiota-free (MF) bees with and without pollen.
Significantly differentially abundant metabolites between mono- and cocolonized S. alvi and Gilliamella vs MF bees, as well as between MF (Pollen +) versus MF (Pollen -) bees (bottom left). Significantly depleted and produced metabolites are shown in blue and orange, respectively. Annotations are listed in order of significance for identified metabolites, with isomers and other duplications removed. The full set of significantly more abundant metabolites in the first panel can be found in the supporting code. Adjusted significance values were calculated using a two-sided Wilcoxon rank sum test with BH correction, ((pollen ±): MF: n = 12/10; S. alvi: n = 11/12; S. alvi + Gilliamella: n = 13/14; Gilliamella: n = 10/13).
Extended Data Fig. 3 Z-score normalized metabolite abundances of compounds significantly affected by S. alvi colonization.
Box plots and individual data points display values across all 8 experimental conditions. Only metabolites in which a mixed linear model showed a significant effect of S. alvi colonization are plotted. Multiple types of metabolic interactions are shown. For example, metabolite depletion by S. alvi exclusively (2-ketoisocaproate, 3Hmg, caffeate, urea) or by both species (aspartate, citrate, glycerate), metabolite production by S. alvi exclusively (anthranilate, unknown 12.74), crossfeeding from Gilliamella to S. alvi (pyruvate, lactate), synergistic metabolite depletion (fumarate, malate) and production (acetate, benzoate). The dark and light grey asterisks show conditions significantly different from MF bees fed sugar water and pollen or only sugar water (also indicated by ± sign), calculated using a two-sided Wilcoxon rank sum test with BH correction, *P < 0.05, ** P < 0.01, *** P < 0.001, **** P < 0.0001. ((Pollen ±): P values are shown in Supplementary Table 3. No bacteria: n = 12/10; S. alvi: n = 11/12; S. alvi + Gilliamella: n = 13/14; Gilliamella: n = 10/13). The median and the inter-quartile range (IQR) are depicted by the box, with whiskers extending to the furthest data points up to 1.5*IQR. The dotted line represents the transformed LOD for each metabolite.
Extended Data Fig. 4 Pollen consumption but not colonization increases bee gut weight.
Increased weights with pollen in the diet of whole bees (A) (95% CI [22.1 mg, 29.7 mg]) and dissected bee Guts (B) (95% CI [19.0 mg, 24.8 mg]) are significantly higher, but no effect was measured when colonized with S. alvi and/or Gilliamella [Bee weight, n = 271, Diet: F(1,262) = 176.1, P < .0001; S. alvi: F(1,262) = 0.1, P = .769; Gilliamella: F(1,262) = 1.0, P = .311; S. alvi:Gilliamella: F(1,262) = 0.7, P = .388], [Gut weight, n = 271, Diet: F(1,262) = 220.0, P < .0001; S. alvi: F(1,262) = 0.3, P = .595; Gilliamella: F(1,262) = 0.02, P = .880; S. alvi:Gilliamella: F(1,262) = 2.3, P = .131]. (C) The body weight, or difference between bee and gut weights, was also significantly, albeit only slightly (95% CI [0.7 mg, 7.5 mg]) higher across colonization groups for bees fed a pollen diet [Body weight, n = 271, Pollen: F(1,262) = 5.2, P = .023; S. alvi: F(1,262) = 1.4, P = .240; Gilliamella: F(1,262) = 0.6, P = .442; S. alvi:Gilliamella: F(1,262) = 3.8, P = .052]. The p values (ANOVA) are shown for the fixed effect terms in the linear mixed models fitted by ML with nested, random cage effects. The median and the IQR are depicted by the box, with whiskers extending to the furthest data points up to 1.5 xIQR. ((Pollen ±): No bacteria: n = 40/40; S. alvi: n = 36/36; S. alvi + Gilliamella: n = 36/36; Gilliamella: n = 28/27).
Extended Data Fig. 5 Volcano plot highlighting gut metabolic changes between Day 0 and Day 6 after emergence in MF bees without pollen.
Many metabolites are more abundant in the gut on Day 6 than on Day 0 after emergence. Significantly less and more abundant metabolites on Day 6 are shown and annotated in blue and orange, respectively, with isomers and other duplications removed. Adjusted significance values were calculated using two-sided Wilcoxon rank sum test with BH correction, using the day zero conditions as a reference (Day 0: n = 8; Day 6: n = 8).
Extended Data Fig. 6 In vitro consumption of carbon substrates.
The percentage of each carbon source consumed by the end of the in vitro growth experiment is shown for each tested carbon source. Data was taken from the condition in which all carbon sources were added to Bee9 media in equimolar amounts. Bars represent the average value (n = 3) of biological replicates (black dots).
Extended Data Fig. 7 Phylogenetic tree of the kynureninase gene family found in S. alvi.
The amino acid sequences of 227 homologues of the kynureninase gene identified in S. alvi wkb2 were retrieved from NCBI. The tree was inferred with Iqtree after aligning the sequences with MUSCLE (see methods). Tips are collapsed for clades that contain sequences of the same genus. Coloured boxes on the right indicate the bacterial family. Bootstrap values are indicated before every node. Gammaproteobacteria are highlighted in pink and Betaproteobacteria in blue. Asterisk indicates a sequence (MBY6345856.1) from Providencia rettgeri, a Gammaproteobacterium, which clusters together with homologues of the kynureninase of Betaproteopbacteria.
Extended Data Fig. 8 Gut metabolite changes in bees monocolonized with divergent Snodgrassella strains relative to microbiota-free (MF) bees.
Volcano plot of gut metabolites showing the similarities in metabolite changes from colonized vs MF bees across strains. Top: Strains native to A. mellifera; Bottom: Strains native to Bombus sp. Significantly depleted and produced metabolites are shown in blue and orange, respectively. Adjusted significance values were calculated using a two-sided Wilcoxon rank sum test with BH correction.
Supplementary information
Supplementary Information
Supplementary Fig. 1, Tables 1 and 2 and protocol.
Supplementary Table 3
Supplementary raw NanoSIMS Data shown in Fig. 3, significant growth rate differences in Fig. 4b and significant differences in metabolite abundances shown in Extended Data Fig. 3.
Source data
Source Data Fig. 1
SEM images of ileum tissue sections described in Fig. 3.
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Quinn, A., El Chazli, Y., Escrig, S. et al. Host-derived organic acids enable gut colonization of the honey bee symbiont Snodgrassella alvi. Nat Microbiol 9, 477–489 (2024). https://doi.org/10.1038/s41564-023-01572-y
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DOI: https://doi.org/10.1038/s41564-023-01572-y
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