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Gut microbiota of mice putatively modifies amino acid metabolism in the host brain

Published online by Cambridge University Press:  10 April 2017

Takahiro Kawase
Affiliation:
Laboratory of Regulation in Metabolism and Behavior, Graduate School of Bioresource and Bioenvironmental Sciences, Kyushu University, Fukuoka 812-8581, Japan
Mao Nagasawa
Affiliation:
Laboratory of Regulation in Metabolism and Behavior, Graduate School of Bioresource and Bioenvironmental Sciences, Kyushu University, Fukuoka 812-8581, Japan
Hiromi Ikeda
Affiliation:
Laboratory of Regulation in Metabolism and Behavior, Graduate School of Bioresource and Bioenvironmental Sciences, Kyushu University, Fukuoka 812-8581, Japan
Shinobu Yasuo
Affiliation:
Laboratory of Regulation in Metabolism and Behavior, Graduate School of Bioresource and Bioenvironmental Sciences, Kyushu University, Fukuoka 812-8581, Japan
Yasuhiro Koga
Affiliation:
Laboratory for Infectious Diseases, School of Medicine, Tokai University, Kanagawa 259-1193, Japan
Mitsuhiro Furuse*
Affiliation:
Laboratory of Regulation in Metabolism and Behavior, Graduate School of Bioresource and Bioenvironmental Sciences, Kyushu University, Fukuoka 812-8581, Japan
*
*Corresponding author: M. Furuse, fax +81 92 642 2954, email furuse@brs.kyushu-u.ac.jp
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Abstract

Recently, it has been found that the gut microbiota influences functions of the host brain by affecting monoamine metabolism. The present study focused on the relationship between the gut microbiota and the brain amino acids. Specific pathogen-free (SPF) and germ-free (GF) mice were used as experimental models. Plasma and brain regions were sampled from mice at 7 and 16 weeks of age, and analysed for free d- and l-amino acids, which are believed to affect many physiological functions. At 7 weeks of age, plasma concentrations of d-aspartic acid (d-Asp), l-alanine (l-Ala), l-glutamine (l-Gln) and taurine were higher in SPF mice than in GF mice, but no differences were found at 16 weeks of age. Similar patterns were observed for the concentrations of l-Asp in striatum, cerebral cortex and hippocampus, and l-arginine (l-Arg), l-Ala and l-valine (l-Val) in striatum. In addition, the concentrations of l-Asp, d-Ala, l-histidine, l-isoleucine (l-Ile), l-leucine (l-Leu), l-phenylalanine and l-Val were significantly higher in plasma of SPF mice when compared with those of GF mice. The concentrations of l-Arg, l-Gln, l-Ile and l-Leu were significantly higher in SPF than in GF mice, but those of d-Asp, d-serine and l-serine were higher in some brain regions of GF mice than in those of SPF mice. In conclusion, the concentration of amino acids in the host brain seems to be dependent on presence of the gut microbiota. Amino acid metabolism in the host brain may be modified by manipulating microbiota communities.

Type
Full Papers
Copyright
Copyright © The Authors 2017 

Animals, except for those with a specific condition – namely, germ-free (GF) status – have symbiotic relationships with body bacteria, especially those in their digestive system( Reference Bäckhed, Ley and Sonnenburg 1 , Reference Fava and Danese 2 ). In the host intestine, gut bacteria play many crucial roles, such as developing the postnatal immune system of the host, assisting in the efficiency of digestion and absorption of macromolecules, and acting as a barrier against pathogen attachment to gut binding sites, which is the first step of bacterial pathogenicity( Reference Finlay 3 , Reference Sudo, Sawamura and Tanaka 4 ). Moreover, intestinal micro-organisms have been found to affect the central level of the brain-derived neurotropic factor, have a role in anxiety- or depression-like mood disorders and influence the response of the hypothalamic–pituitary–adrenal (HPA) axis in mice during restraint stress( Reference Sudo, Chida and Aiba 5 Reference Collins, Surette and Bercik 7 ). There have also been indications that the intestinal microbiota is concerned with anxiety-like behaviour and central neurochemical changes in mice( Reference Neufeld, Kang and Bienenstock 8 ). Mice which had gut populations of commensal faecal microbiota were found to be less anxious and active, and to have higher noradrenaline (NA), dopamine (DA) and serotonin turnover rates in several brain regions, when compared with GF mice( Reference Nishino, Mikami and Takahashi 9 ). In addition, there is abundant evidence suggesting that the gut microbiota composition, the concentration of microbial products and gastrointestinal symptoms in humans are closely associated with disorders of the central nervous system (CNS) such as autism spectrum disorder and depression( Reference Adams, Johansen and Powell 10 Reference Naseribafrouei, Hestad and Avershina 12 ).

In the brain, amino acids function as neurotransmitters or as substrates of monoamine neurotransmitters and are involved in protein synthesis. Many amino acids and their metabolites in the brain have sedative and hypnotic effects in chicks( Reference Furuse 13 ). d-Amino acids are synthesised from l-amino acids by racemase, an isomerase enzyme found in the brain and peripheral regions, and which is also expressed in the microbiota( Reference Wolosker, Blackshaw and Snyder 14 Reference Lam, Oh and Cava 16 ). A number of functions of d-amino acids in the brain have been elucidated. For example, d-serine (d-Ser) is an endogenous ligand for the N-methyl-d-aspartate receptor (NMDA-R)( Reference Mothet, Parent and Wolosker 17 ). In addition, d-aspartic acid (d-Asp)( Reference Erwan, Tomonaga and Ohmori 18 ) and d-proline (d-Pro)( Reference Hamasu, Shigemi and Tsuneyoshi 19 ) injected into the lateral ventricle of neonatal chicks were found to have sedative effects, decreasing the number of distress vocalisations as well as the amount of time spent in active wakefulness. The l- and d-forms of amino acids have similar effects on these stress behaviours , but d-Pro( Reference Hamasu, Shigemi and Tsuneyoshi 19 ) and d-Asp( Reference Erwan, Chowdhury and Nagasawa 20 )attenuated isolation-induced stress behaviour through different mechanisms. Thus, it has been suggested that d-amino acids in vivo may have some effect on regulation of animal behaviour and that they act in synergy with l-amino acids. However, information on the relationship between intestinal microbiota and amino acid metabolism of the host brain is still equivocal. For example, there is some work reporting the presence of d-amino acids in the urine, blood serum, ethanolic extract of faeces and brain of GF rats( Reference Brückner and Schieber 21 ). These findings seem to indicate that some of the d-amino acids present in the body are produced endogenously without the help of the gut microbiota.

In the present study, we analysed the concentration of d- and l-amino acids in the plasma and brain regions of specific pathogen-free (SPF) and GF mice at two different ages (7 and 16 weeks), and elucidated the amino acid metabolism in the host brain by the presence or absence of the gut microbiota.

Methods

Animals

GF BALB/c mice reared at the research facilities of Tokai University School of Medicine and SPF BALB/c mice purchased from CLEA Japan, Inc. were used in the present study. These mice were given ad libitum a commercial diet (CL2 purchased from CLEA Japan, Inc.). Room temperature and moisture level were kept at 22±2°C and 70 %, respectively. All of the experiments were approved by the Ethics Committee for Animal Experiments of Tokai University.

Experimental procedure

Eight mice each from the GF and SPF groups were slaughtered at 7 and 16 weeks of age, during a light period, by cervical dislocation within 3 h after feed withdrawal. Next, blood was collected from the arteria carotis and cervical vein as well as the brainstem, cerebellum, cerebral cortex, hippocampus, hypothalamus, striatum and thalamus. The brain samples were quickly removed from the skulls and were dissected within 8 min according to Franklin & Paxinos( Reference Franklin and Paxinos 22 ). In brief, after removal of the hypothalamus, the brains were cut at the median line and excised in the order of the cerebellum, brainstem, thalamus, hippocampus, striatum and cerebral cortex on an iced Petri dish. Plasma was collected from blood centrifuged at 3000 g for 15 min at 4°C (MX-307; TOMY). All samples were rapidly frozen with dry ice and stored at –80°C until further use.

Analysis of free amino acids

The concentrations of free amino acids in the plasma and brain tissues were analysed by ultra-performance liquid chromatography (UPLC) using an AcquityTM UPLC system consisting of Waters Binary Solvent Manager, Waters Sample Manager and Waters FLR Detector (Waters), as described previously( Reference Erwan, Tomonaga and Ohmori 18 ). The excitation and emission wavelengths for the fluorescent detection of amino acids were 350 and 450 nm, respectively. The system was operated with a flow rate of 0·25 ml/min at 30°C. The UPLC gradient system (A=50 mm sodium acetate (pH 5·9), B=methanol) was 10–20 % B over 3·2 min, 20 % B for 1 min, 20–40 % B over 3·6 min, 40 % B for 1·2 min, 40–60 % B over 3·8 min, 60 % B for 1 min and 60–10 % B over 0·01 min. Just before the UPLC analysis took place, each sample (10 µl) was transferred to a UPLC tube, and N-acetyl-L-cysteine/o-phthaldialdehyde (20 µl) and a borate buffer (70 µl) were added. Samples were then left for 2 min in a dark room. The same method was used for the standard solutions containing sixteen l-amino acids, sixteen d-amino acids, glycine, taurine (Tau) and so on. The concentration of amino acids in the plasma was expressed as nmol/ml and the concentration of amino acids in the brain was expressed as pmol/mg of wet tissue. Plasma was filtered through Amicon® Ultra-0·5 centrifugal filter devices 10K (Millipore) with centrifugation at 14 000 g for 15 min at 0°C. Brain tissue samples were homogenised in ice-cold 0·2 m perchloric acid and the homogenate was cooled on ice for 30 min for deproteinisation. After 30 min, the mixtures were centrifuged at 20 000 g for 15 min at 0°C. After centrifugation, the supernatant was filtered through a 0·2 μm filter (Millipore), and the pH was adjusted to approximately 7·0 by adding 1 m sodium hydroxide. All samples were stored at –80°C until further use.

Statistical analyses

All data were analysed using the statistical program StatView version 5.0 (SAS Institute, 1998). Statistical significance was evaluated using a two-way ANOVA and the Tukey–Kramer method with the Thompson outlier test. Statistical criteria for significant differences were set at P<0·05 for the two-way ANOVA and P<0·01 for the outlier test. To evaluate the brain region-specific effects on each amino acid, q values were calculated using P values derived from seven different brain regions in each factor, such as the microbial environment, age and interaction. Benjamini–Hochberg multiple testing corrections were used for q values (adjusting P values), and significance was set at q<0·05.

Results

All data showing significant interactions between the microbial environment and age are shown in Fig. 13. The remaining data showing significant main effects were used to produce the heat maps shown in Fig. 4. The details of Fig. 3 are shown in the online Supplementary Table S1. Data in the online Supplementary Table S2 have no significant main effects or interactions.

Fig. 1 The effect of microbial environment and age on concentration of amino acids in the plasma of specific pathogen-free () and germ-free () mice (n 7–9). Values are means with standard errors for (a) d-aspartic acid, (b) d-serine, (c) l-alanine, (d) l-arginine, (e) l-glutamine and (f) taurine.

Fig. 2 The effect of microbial environment and age on amino acid concentrations in the striatum of specific pathogen-free () and germ-free () mice (n 7–9). Values are means with standard errors for (a) l-aspartic acid, (b) l-alanine, (c) l-arginine, (d) l-valine and (e) taurine.

Fig. 3 The effect of microbial environment and age on amino acid concentrations in the cerebellum, cerebral cortex and hippocampus of specific pathogen-free () and germ-free () mice (n 7–9). Values are means with standard errors for (a) d-aspartic acid, (b) l-aspartic acid, (c) l-alanine, (d) taurine in the cerebellum, (e) l-histidine in the cerebral cortex and (f) l-aspartic acid in the hippocampus.

Fig. 4 Heat maps of the converted mean values of the concentration of amino acids. Mean values are shown in the online Supplementary Table S1. (a) Plasma, (b) brainstem, (c) cerebellum, (d) cerebral cortex, (e) hippocampus, (f) hypothalamus, (g) striatum and (h) thalamus. The colour depth shows values from high to low in decreasing order, as , , and . SPF, specific pathogen free; GF, germ free; Asp, aspartic acid; Ala, alanine; His, histidine; Tyr, tyrosine; Ile, isoleucine; Leu, leucine; Phe, phenylalanine; Val, valine; Gln, glutamine; GABA, γ-aminobutyric acid; Arg, arginine; Ser, serine; Tau, taurine.

In the plasma, the interaction between the microbial environment and age was significant at P<0·005 for d-Asp, P<0·05 for d-Ser, P<0·05 for l-alanine (l-Ala), P<0·05 for l-arginine (l-Arg), P<0·01 for l-glutamine (l-Gln) and P<0·001 for Tau (Fig. 1(a)–(f)). The concentrations of d-Asp, l-Ala, l-Gln and Tau decreased in SPF mice from 7 to 16 weeks of age, but with the GF mice, the concentrations were constant between 7 and 16 weeks of age. A similar concentration of l-Arg was observed in both GF and SPF mice at 7 weeks of age, but a further significant increase between 7 and 16 weeks of age was observed in SPF mice only.

In the striatum, the interaction between the microbial environment and age was significant for l-Asp (q<0·05), l-Ala (q<0·05), l-Arg (q<0·01), l-valine (l-Val) (q<0·05) and Tau (q<0·05) (Fig. 2(a)–(e)). The concentrations of l-Asp, l-Ala, l-Arg and l-Val were high at 7 weeks of age in SPF mice and decreased toward 16 weeks of age, whereas in GF mice the concentrations remained low and constant over the same period.

In the cerebellum, the interaction between the microbial environment and age was significant for d-Asp (q<0·05), l-Asp (q<0·05), l-Ala (q<0·005) and Tau (q<0·001) (Fig. 3(a)–(d)). The concentration of d-Asp at 7 weeks of age was almost identical in both the groups of mice, but toward 16 weeks of age the concentration greatly decreased in SPF mice. At 7 weeks of age, the concentration of l-Asp was higher in SPF mice than in GF mice, but that in GF mice steadily increased over time to eventually become similar at 16 weeks of age. At 7 weeks of age, the concentration of l-Ala was higher in SPF mice than it was in GF mice but dropped at 16 weeks of age, whereas over the same period it remained constant in GF mice. The concentration of Tau was higher in SPF mice than it was in GF mice at 7 weeks of age, but the opposite was true at 16 weeks of age. In the cerebral cortex, the interaction between the microbial environment and age was significant for l-histidine (l-His) (q<0·05) (Fig. 3(e)). As they aged, both SPF and GF mice had a lower concentration of l-His, but the decrease was greater in GF mice than it was in SPF mice. In the hippocampus, the interaction between the microbial environment and age were significant in l-Asp (q<0·05) (Fig. 3(f)). The concentration of l-Asp was higher in SPF mice than it was in GF mice, but the concentration decreased in all mice as they aged. There were no differences in l-Asp concentration between GF and SPF mice at 16 weeks of age.

The mean values of amino acid concentrations without significant interactions were used to produce heat maps (Fig. 4).

Regarding the main effect of gut microbiota, SPF mice had significantly higher concentrations of l-Asp (P<0·01), d-Ala (P<0·0001), l-His (P<0·05), l-isoleucine (l-Ile) (P<0·01), l-leucine (l-Leu) (P<0·0001), l-phenylalanine (l-Phe) (P<0·0005) and l-Val (P<0·001) in plasma than did GF mice (Fig. 4(a)). d-Ala could not be detected in GF mice. In the plasma, the concentrations of l-tyrosine (l-Tyr) (P<0·005), l-Ile (P<0·0005), l-Leu (P<0·0005), l-Phe (P<0·0005) and l-Val (P<0·0005) increased with age (Fig. 4(a)).

In the brainstem, the concentrations of l-Arg (q<0·0005), l-Ala (q<0·05) and l-Gln (q<0·05) were higher in the SPF mice than those in the GF mice, whereas the opposite was true for the concentrations of d-Asp (q<0·001) and l-Ser (q<0·001) (Fig. 4(b)). As mice aged, the concentrations of l-Ser (q<0·001), l-Ala (q<0·05), l-Ile (q<0·001) and l-Leu (P<0·0005) elevated, whereas that of γ-aminobutyric acid (GABA) slightly decreased.

In the cerebellum, the concentrations of l-Gln (q<0·0005), l-Ile (q<0·001), l-Leu (q<0·0005), l-Phe (q<0·005), GABA (q<0·05) and l-Val (q<0·01) were significantly higher in the SPF mice than those in the GF mice (Fig. 4(c)). The concentration of l-Ile (q <0·0005) increased as the mice aged.

In the cerebral cortex, the concentrations of l-Arg (q<0·005), l-Gln (q<0·0005) and l-Leu (q<0·05) were significantly higher in the SPF mice than those in the GF mice, but the opposite was true for the concentrations of d-Ser (q<0·001) and l-Ser (q<0·005) (Fig. 4(d)). The concentrations of d-Asp (q<0·0005), d-Ser (q<0·0005), l-Ser (q<0·0005), l-Ala (q<0·0005), l-Leu (q<0·0005) and Tau (q<0·0005) increased as the mice aged, but the opposite was true for the concentrations of l-Arg (q<0·0005), l-Val (q<0·05) and GABA (q<0·001).

In the hippocampus, the concentrations of l-Ala (q<0·005), l-Arg (q<0·0005), l-Gln (q<0·0005), l-Ile (q<0·01), l-Leu (q<0·0005), l-Phe (q<0·005), l-Val (q<0·05) and GABA (q<0·05) were significantly higher in the SPF mice than those in the GF mice (Fig. 4(e)). Except for that of l-Leu (q<0·01), which increased, the concentrations of d-Asp (q<0·0005), l-Ala (q<0·0005), l-Arg (q<0·0005), l-His (q<0·05), l-Ile (q<0·005), l-Phe (q<0·0005), l-Val (q<0·001), GABA (q<0·05) and Tau (q<0·0005) decreased as the mice aged.

In the hypothalamus, the concentrations of l-Arg (q<0·0005), l-Gln (q<0·0005), l-Ile (q<0·01), l-Leu (q<0·0005) and l-Phe (q<0·005) were significantly higher in the SPF mice than those in the GF mice (Fig. 4(f)). As the mice aged, the concentrations of d-Asp (q<0·05) and l-Ala (q<0·005) decreased, but l-Leu (q<0·0005) increased.

In the striatum, the concentrations of l-Leu (q<0·0005), l-Ile (q<0·05) and l-Gln (q<0·0005) were significantly higher in the SPF mice than those in the GF mice (Fig. 4(g)). The concentrations of l-Tyr (P<0·005), l-Phe (P<0·01) and l-Ile (q<0·05) decreased as the mice aged.

In the thalamus, the concentrations of l-Arg (q<0·0005), l-Gln (q<0·0005) and l-Leu (q<0·005) were significantly higher in the SPF mice than in the GF mice, whereas the opposite was true for the concentrations of d-Asp (q<0·05), d-Ser (q<0·0005) and l-Ser (q<0·0005) (Fig. 4(h)). The concentrations of l-Ser (q<0·05) and l-Leu (q<0·0005) increased as the mice aged, whereas that of l-His (q<0·005) decreased. The weight of the brains of the SPF and GF mice at different ages is shown in the online Supplementary Fig. S1. The interaction between the microbial environment and age was significant (P<0·001), implying that the brain weight of SPF mice increased with age, but that of GF mice remained constant.

The concentration of d-amino acid as a proportion of the total d- and l-amino acid concentration is shown in the online Supplementary Fig. S2 and S3. The interaction between the microbial environment and age for Asp was significant in the plasma (P<0·0001), hippocampus (P<0·005), striatum (P<0·05) and thalamus (P<0·05) (online Supplementary Fig. S2). The proportion of d-Asp in the plasma decreased with age in SPF mice, but the proportion increased in the cerebellum, cerebral cortex and hypothalamus with age. Regarding the main effect of the gut microbiota, the proportion of Asp in the brainstem (P<0·0001), cerebellum (P<0·05), cerebral cortex (P<0·0001) and the hypothalamus (P<0·05) of SPF mice was significantly lower than it was in GF mice (online Supplementary Table S2). The proportion of Asp decreased in the cerebellum (P<0·0001) and hypothalamus (P<0·0001) with age, but increased in the cerebral cortex (P<0·0001). The differences in the proportions of d- and l-Ser between the GF and SPF mice increased in the plasma as the mice aged (P<0·05), but in the striatum, although there was a large difference at 7 weeks of age, they decreased as the mice aged (P<0·05) (online Supplementary Fig. S3). The SPF mice had a higher proportion of Ser in the brainstem than did the GF mice (P<0·05). In contrast, the GF mice had a higher proportion of Ser in the cerebral cortex (P<0·01), hippocampus (P<0·0001) and thalamus (P<0·005), than did the SPF mice (online Supplementary online Supplementary Table S4). In general, the proportion of Ser increased in the cerebral cortex (P<0·05), but decreased in the thalamus (P<0·0001), as the mice aged.

Discussion

Several differences were observed between SPF and GF mice in terms of fluctuating plasma amino acid concentrations. Gut microbiota influences secretions, promotes digestion and absorption, and stimulates the immunological system and HPA axis of the host. The results of the present study indicated that the presence of gut microbiota is largely associated with amino acid concentration in the blood and brain of the host. Although the mechanism of this phenomenon remains unclear, it may be possible that either (1) gut microbiota modifies the amino acid metabolism and/or breaks down amino acids in the gut, and modified amino acids are then absorbed, (2) the physiological activity of the constitutive substances of microbiota such as proteins or peptides affect the amino acid metabolism or (3) both instances occur. Although a detailed study of the intestinal amino acid metabolism was beyond the scope of the present work, some conclusions can be drawn from the correlation found between the d-amino acid metabolism and the presence of gut microbiota. For example, the peptide d-Ala-d-Ser was found to constitute the bacterial cell walls( Reference Arias, Weisner and Blackburn 23 ), and Csapó et al.( Reference Csapó, Schmidt and Csapó-Kiss 24 ) previously suggested that d-Asp and d-glutamic acid (d-Glu) likely were bacterial protein markers. In this study, d-Ala was detected in the plasma of SPF mice, but not in that of GF mice, which might indicate that our first hypothesis about the modification or breakdown of amino acids by the gut microbiota and subsequent absorption is correct. Furthermore, Konno et al.( Reference Konno, Oowada and Ozaki 25 ) found that the urine of GF mice had a lower d-Ala concentration than did that of conventional mice. These workers suggested that d-Ala was derived from the cell wall of the gut microbiota. Furthermore, Kleckner & Dingledine( Reference Kleckner and Dingledine 26 ) remarked that d-Ala was enabled to activate NMDA-R, which implicated brain functions through the transmission of excitatory signal( Reference Nakanishi 27 Reference McEwen 29 ). However, in our study no d-Ala was detected in the analysed brain regions. Even though the gut microbiota may be involved in the production of d-Ala, the concentration is too low to reflect an amount of d-Ala in the brain. Nonetheless, Nagata et al.( Reference Nagata, Konno and Niwa 30 ) reported that when 0·5 % d-Ala was added to drinking water and orally administered to mutant mice lacking d-amino acid oxidase for 2 weeks, the concentration of d-Ala in the brain greatly increased. In the case of normally d-amino acid oxidase-producing mice, brain d-Ala also increased, but to a lesser extent. In the work by Nagata et al., administration of 0·5 % d-Ala in drinking water caused the concentration of serum d-Ala in mice to be 34·2 nmol/ml. This previously reported concentration was three times higher than that obtained in the present study. The reason for the negligible amount of d-Ala in the brain found in the present study may be a low d-Ala production in the gut of SPF mice.

It can be suggested that mice endogenously produced d-Ser and that as they aged, the gut microbiota and/or their products inhibited the production of d-Ser. This is believed to have occurred because the concentration of l-Ser, substrate of d-Ser and the amount of d-Ser as a proportion of the total amount of d- and l-Ser – one of the indicators of the activity of serine racemase – did not differ between SPF and GF mice at 7 weeks of age. However, at 16 weeks of age, d-Ser concentration in the plasma of SPF mice was lower than it was in GF mice, although l-Ser concentration did not differ between the SPF and GF mice. However, at 16 weeks of age, the amount of d-Ser, as a proportion of the total amount of d- and l-Ser, was higher in the GF mice than in the SPF mice.

Regarding d-Ser in the brain, we successfully determined its concentration in all the brain regions except for the cerebellum. Interestingly, the concentration of d-Ser between SPF and GF mice, as well as between the plasma and brain regions, was found to be different. For example, although no differences in the concentration of d-Ser were found in the plasma SPF and GF mice at 7 weeks of age, the concentration of d-Ser in some brain regions was higher in GF mice than in SPF mice. These differences suggest that the presence of gut microbiota may dictate microbial products, vagus nerves, cytokines, or the HPA axis to regulate the activity of serine racemase in the host brain( Reference Cryan and Dinan 6 , Reference Bravo, Forsythe and Chew 31 , Reference Ait-Belgnaoui, Durand and Cartier 32 ). Nonetheless, in the present study, d-Ser was hardly detected in the cerebellum. Morikawa et al.( Reference Morikawa, Hamase and Inoue 33 ) previously reported that d-Ser concentration was very low in the cerebellum of mice. d-Ser is an endogenous ligand for NMDA-R, itself associated with neurological diseases involving synaptic plasticity or neuronal degeneration( Reference Jenrsch and Roth 34 Reference Liu, Wong and Pozza 36 ). In the cerebral cortex and the thalamus, d-Ser concentration was lower in SPF mice than it was in GF mice. The cerebral cortex has some functional areas. For example, the intraparietal cortex and the superior frontal cortex are involved in preparing for and applying goal-directed selections to stimuli and responses( Reference Corbetta and Shulman 37 ). In addition, the thalamus has many roles in brain-networking and Parkinson’s disease( Reference Benabid, Pollak and Gao 38 Reference Cameron and Watanabe 40 ). In this context, we theorise that the gut microbiota has the potential to regulate neurological diseases by altering d-Ser metabolism in the host brain. This hypothesis seems to be supported by changes detected in d-Ser metabolism, possibly due to l-Ser synthesis being more active in GF mice than in SPF mice. Higher concentrations of l-Ser and d-Ser in the cerebral cortex and thalamus of GF mice than in those of SPF mice also seem to corroborate our hypothesis. Furthermore, in the brain, l-Ser is synthesised from glucose or produced by proteolysis( Reference Verleysdonk and Hamprecht 41 ), which also seems to suggest that gut microbiota regulates l-Ser biosynthesis.

l-Tyr is metabolised to catecholamines such as DA, NA and adrenaline( Reference Zhou, Quaife and Palmiter 42 ), and in the brainstem, catecholaminergic neurons are known to exist( Reference LaVoie, Ostaszewski and Weihofen 43 ). The GF mice had higher concentrations of DA and NA in the brainstem and were more active than mice carrying commensal faecal microbiota upon inoculation with gut microbiota( Reference Nishino, Mikami and Takahashi 9 ). In this study, the concentration of l-Tyr in the plasma and brain regions did not differ between SPF and GF mice. Thus, it was determined that the gut microbiota had no influence on l-Tyr absorption or synthesis, although it may still regulate the metabolism of tyrosine to catecholamine.

GABA is an inhibitory neurotransmitter in the CNS( Reference Johnson and Ascher 44 ). In this study, the concentration of GABA was higher in the cerebellum and hippocampus of SPF mice than it was in those of GF mice. The cerebellum is involved not only in motor regulation but also in cognitive functions including attention, memory and learning tasks in humans( Reference Timmann and Daum 45 ). It is well known that the hippocampus is involved in information acquisition and retention, and neurogenesis( Reference Moser and Moser 46 , Reference Shors, Townsend and Zhao 47 ). l-Glu is also believed to be a neurotransmitter and is metabolised to GABA by glutamate decarboxylase( Reference Danbolt 48 ). In the present study, although l-Glu was not analysed, the concentration of the reversible metabolite l-Gln was higher in the plasma, brainstem, cerebellum, cerebral cortex, hippocampus, hypothalamus, striatum and thalamus of SPF mice than it was in those of GF mice. As a result, it is believed that the gut microbiota may play a role in facilitating the metabolism of l-Gln. Differences in the concentrations of GABA and l-Gln between SPF and GF mice may exert an effect on the functions of these brain regions.

l-Ile, l-Leu and l-Val are commonly known as branched-chain amino acids (BCAA). BCAA are not only used as substrates for protein, but also used to promote protein synthesis via activation of the mammalian target of rapamycin (mTOR)( Reference Mattick, Kamisoglu and Ierapetritou 49 ). In particular, l-Leu strongly affects mTOR activation. In this study, the concentration of l-Leu in the plasma and most brain regions of SPF mice was higher than it was in those of GF mice. The gut microbiota may assist in absorption of l-Leu in intestinal epithelial cells and also intervene in l-Leu metabolism. Hence, there is a possibility that the gut microbiota is involved in host protein synthesis in the periphery or CNS.

l-His is metabolised to histamine, which modulates glutamate NMDA-R and is involved in several psychological states including cognative arousal, anxiety and eating suppression( Reference Brown, Stevens and Haas 50 ). In the present study, the concentration of l-His in the cerebral cortex decreased as the mice aged. Furthermore, although at 7 weeks of age the concentration of l-His in the cerebral cortex of SPF mice was lower than it was in that of GF mice, the difference was reversed at 16 weeks of age. It is believed that the gut microbiota could affect the central histaminergic system via the changing metabolism of l-His. Therefore, it can be suggested that l-His metabolism changes with aging, but this alteration can be alleviated by the activity of the gut microbiota.

In the present study, we were especially interested in the changes in the concentration of free amino acid in some brain regions. A previous study at these facilities confirmed that changes in the concentration of free amino acid occurred in the brains of neonatal chicks exposed to either restraint and isolation-induced or fasting stress. The concentration of l-Pro and l-Arg was found to decrease in the telencephalon and diencephalon under stress( Reference Hamasu, Haraguchi and Kabuki 51 ), but an intracerebroventricular injection of l-Pro, l-Arg and several other amino acids exerted a sedative or hypnotic effect on animals under an acute stress( Reference Furuse 13 ). In a separate study, it was investigated whether depression-like states affected amino acid metabolism and the potential roles of amino acid metabolism on stress-regulatory mechanisms, by comparing Wistar–Kyoto rats, an animal model of depression-like behaviour and stress vulnerability, with control Wistar rats. The metabolism of amino acids in brain tissues of Wistar–Kyoto rats was greatly different from that of normal Wistar rats. This previous report seems to indicate that an abnormal amino acid metabolism may induce depression-like behaviour and stress vulnerability in Wistar–Kyoto rats( Reference Nagasawa, Ogino and Kurata 52 ).

In conclusion, the activity of microbiota present in the gut seems to change the concentration of d- and l-amino acids in the plasma and some brain regions of mice, and thus, the gut microbiota may be an important regulator of amino acid metabolism. Further research is warranted to clarify the role of the gut microbiota in the metabolism of amino acids. Hence, it is foreseeable that future research may involve transplant of specific microbial strains or inoculation of antibiotic substances to manipulate microbiota communities, which may be used to evaluate the mental health and cognitive abilities of humans, including mood disorders and problem-solving tasks, respectively.

Acknowledgements

The authors thank Yuji Aiba for his technical assistance.

There was no financial support.

M. F. conceived and designed the study. T. K., M. N. and H. I. performed the experiments and conducted the data analysis. T. K., S. Y., Y. K. and M. F. wrote the manuscript.

The authors declare that there are no conflicts of interest.

Supplementary material

For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S0007114517000678

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Figure 0

Fig. 1 The effect of microbial environment and age on concentration of amino acids in the plasma of specific pathogen-free () and germ-free () mice (n 7–9). Values are means with standard errors for (a) d-aspartic acid, (b) d-serine, (c) l-alanine, (d) l-arginine, (e) l-glutamine and (f) taurine.

Figure 1

Fig. 2 The effect of microbial environment and age on amino acid concentrations in the striatum of specific pathogen-free () and germ-free () mice (n 7–9). Values are means with standard errors for (a) l-aspartic acid, (b) l-alanine, (c) l-arginine, (d) l-valine and (e) taurine.

Figure 2

Fig. 3 The effect of microbial environment and age on amino acid concentrations in the cerebellum, cerebral cortex and hippocampus of specific pathogen-free () and germ-free () mice (n 7–9). Values are means with standard errors for (a) d-aspartic acid, (b) l-aspartic acid, (c) l-alanine, (d) taurine in the cerebellum, (e) l-histidine in the cerebral cortex and (f) l-aspartic acid in the hippocampus.

Figure 3

Fig. 4 Heat maps of the converted mean values of the concentration of amino acids. Mean values are shown in the online Supplementary Table S1. (a) Plasma, (b) brainstem, (c) cerebellum, (d) cerebral cortex, (e) hippocampus, (f) hypothalamus, (g) striatum and (h) thalamus. The colour depth shows values from high to low in decreasing order, as , , and . SPF, specific pathogen free; GF, germ free; Asp, aspartic acid; Ala, alanine; His, histidine; Tyr, tyrosine; Ile, isoleucine; Leu, leucine; Phe, phenylalanine; Val, valine; Gln, glutamine; GABA, γ-aminobutyric acid; Arg, arginine; Ser, serine; Tau, taurine.

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