Literature DB >> 28776581

Decreased Brain pH as a Shared Endophenotype of Psychiatric Disorders.

Hideo Hagihara1, Vibeke S Catts2,3, Yuta Katayama4, Hirotaka Shoji1, Tsuyoshi Takagi5,6, Freesia L Huang7, Akito Nakao1, Yasuo Mori8, Kuo-Ping Huang7, Shunsuke Ishii6, Isabella A Graef9, Keiichi I Nakayama4, Cynthia Shannon Weickert2,3, Tsuyoshi Miyakawa1.   

Abstract

Although the brains of patients with schizophrenia and bipolar disorder exhibit decreased brain pH relative to those of healthy controls upon postmortem examination, it remains controversial whether this finding reflects a primary feature of the diseases or is a result of confounding factors such as medication and agonal state. To date, systematic investigation of brain pH has not been undertaken using animal models that can be studied without confounds inherent in human studies. In the present study, we first reevaluated the pH of the postmortem brains of patients with schizophrenia and bipolar disorder by conducting a meta-analysis of existing data sets from 10 studies. We then measured pH, lactate levels, and related metabolite levels in brain homogenates from five neurodevelopmental mouse models of psychiatric disorders, including schizophrenia, bipolar disorder, and autism spectrum disorder. All mice were drug naive with the same agonal state, postmortem interval, and age within each strain. Our meta-analysis revealed that brain pH was significantly lower in patients with schizophrenia and bipolar disorder than in control participants, even when a few potential confounding factors (postmortem interval, age, and history of antipsychotic use) were considered. In animal experiments, we observed significantly lower pH and higher lactate levels in the brains of model mice relative to controls, as well as a significant negative correlation between pH and lactate levels. Our findings suggest that lower pH associated with increased lactate levels is not a mere artifact, but rather implicated in the underlying pathophysiology of schizophrenia and bipolar disorder.

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Year:  2017        PMID: 28776581      PMCID: PMC5770757          DOI: 10.1038/npp.2017.167

Source DB:  PubMed          Journal:  Neuropsychopharmacology        ISSN: 0893-133X            Impact factor:   7.853


Introduction

Schizophrenia, bipolar disorder, and autism spectrum disorder (ASD) are highly heritable psychiatric conditions, with clinical features transcending diagnostic categories (Hyman, 2010; Insel ). Accumulating evidence indicates that some genetic influences (Carroll and Owen, 2009; Cross-Disorder Group of the Psychiatric Genomics Consortium, 2013a, 2013b; Lotan ), gene expression abnormalities (Ellis ; Shao and Vawter, 2008), and neuronal dysfunctions (Goodkind ; Yahata ) associated with these conditions overlap, suggesting a common underlying biological basis. However, the shared neurobiological alterations among the three conditions remain largely unknown. A number of postmortem studies have indicated that pH is decreased in the brains of patients with schizophrenia and bipolar disorder (Guillozet-Bongaarts ; Halim ; Iwamoto ; Lipska ; Mistry ; Prabakaran ; Ryan ; Shao and Vawter, 2008; Sun ; Torrey ). Decreased brain pH has also been observed in patients with ASD (Young ). In general, pH balance is considered critical for maintaining optimal health, and low pH has been associated with a number of somatic disorders (Kraut and Madias, 2014; Narins and Emmett, 1980; Posner and Plum, 1967). Therefore, it is reasonable to assume that lower pH may exert a negative impact on brain function and play a key role in the pathogenesis of various psychiatric disorders. However, lower brain pH has largely been considered as an artifact rather than a pathophysiology of such disorders. Animal studies have indicated that chronic treatment with antipsychotics may affect brain pH by increasing lactate levels (Halim ), and most patients with these disorders receive chronic antipsychotic treatment throughout their lives. In addition, the agonal state experienced before death decreases brain pH (Li ; Tomita ; Vawter ), and this state may differ between patients with psychiatric disorders and controls. In human postmortem studies, it is technically difficult to exclude such confounding factors and to determine whether decreased pH and increased lactate levels are indeed artifacts. In the present study, we first confirmed that patients with schizophrenia and bipolar disorder exhibit lower postmortem brain pH by conducting a meta-analysis of publicly available data sets. We then measured brain pH in multiple mouse models of psychiatric disorders, which are devoid of such confounding factors, in order to test the hypothesis that decreased brain pH is a pathophysiological manifestation/endophenotype of these disorders rather than a mere artifact. We also measured lactate levels, increases in which have frequently been linked to decreased pH in the brains of patients with psychiatric disorders (Halim ; Prabakaran ; Stork and Renshaw, 2005). To our knowledge, the present study is the first to systematically evaluate pH and lactate levels in mouse models of psychiatric disorders that eliminate the confounds inherent in human studies. We focused on mouse models of psychiatric disorders reported to exhibit neurodevelopmental abnormalities in the brain, a part of which stay at a pseudo-immature state (Hagihara ). Specifically, we measured pH, lactate, and related metabolite levels in the postmortem brains of the following mouse models: schnurri-2 (Shn2) knockout (KO) mice (Takao ), forebrain-specific calcineurin (Cn) KO mice (Cottrell ; Miyakawa ; Suh ; Zeng ), and neurogranin (Nrgn) KO mice (Huang ; Huang and Huang, 2012; Pak ) as a model of schizophrenia; mice with heterozygous knockout of the calcium/calmodulin-dependent protein kinase II a (Camk2a HKO mice) (Hagihara ; Yamasaki ) as a model of bipolar disorder; and mice with heterozygous knockout of the long isoform of chromodomain helicase DNA-binding protein 8 (Chd8 HKO mice) (Katayama ) as a model of ASD. These mouse strains are characterized by mutations in genes implicated in the respective disorders and exhibit molecular and behavioral abnormalities relevant to each condition, indicating good construct and face validities, respectively (as described in detail in the Supplementary Materials and Methods).

Materials and methods

Human Data

We obtained pH data of healthy individuals and patients with schizophrenia and bipolar disorder from the Stanley Medical Research Institute (SMRI) database (https://www.stanleygenomics.org). Duplicate data among studies in the database were eliminated. In addition, we comprehensively searched the National Center for Biotechnology Information Gene Expression Omnibus (NCBI GEO) database for studies reporting individual pH data using the following terms: schizophrenia, bipolar disorder, autism. We also used pH data for healthy individuals and patients with schizophrenia obtained from the New South Wales Brain Tissue Resource Centre schizophrenia cohort (NSWBTRC-SC) (Fillman ), and from a study by Dean ). Altogether, 10 publicly available data sets were utilized in the present study (Supplementary Table S1): five schizophrenia data sets (GSE17612, GSE21935, GSE21138, NSWBTRC-SC (Fillman ), and Dean )), one bipolar disorder data set (GSE5392), and four combined schizophrenia and bipolar disorder data sets (SMRI Collection A, SMRI Collection C, GSE35977, GSE53987). In addition, we used data regarding postmortem interval and age from these data sets, as well as data regarding medication from SMRI Collection A, SMRI Collection C, Dean , and GSE5392.

Animals

We measured pH, lactate, and related metabolite levels in Shn2 KO mice (Takao ) (n=5, 6 (controls, mutants)), Cn KO mice (Cottrell ; Miyakawa ; Suh ; Zeng ) (n=6, 5), Nrgn KO mice (Huang ; Huang and Huang, 2012; Pak ) (n=6, 5), Camk2a HKO mice (Hagihara ; Yamasaki ) (n=5, 5), Chd8 HKO mice (Katayama ) (n=5, 5), disrupted-in-schizophrenia 1 (Disc1)-L100P mutant mice (n=6, 6), Disc1-Q31L mutant mice (n=6, 6) (Shoji ), voltage-gated calcium channel β-anchoring and -regulatory protein (Barp) KO mice (Nakao ) (n=10, 10), and their corresponding control littermates. Shn2 KO and wild-type control mice were obtained by breeding heterozygotes with a C57BL/6J background and those with a BALB/cA background (Takao ). All other strains were characterized by a C57BL/6J background. Both male and female mice were used in the present study, as no difference in pH has been observed between sexes (Catts ). All mice were between 19 and 45 weeks of age, and no significant difference in age was observed between controls and mutants within each strain (Shn2 KO, 39.3±3.0 weeks, controls (Con), 34.9±1.2 weeks, P=0.19; Cn KO, 20.6±0.47 weeks, Con, 20.6±0.36 weeks, P=0.92; Nrgn KO, 32.9±1.2 weeks, Con, 31.0±0.14 weeks, P=0.12; Camk2a HKO, 33.0±0.052 weeks, Con, 36.2±1.9 weeks, P=0.13; Chd8 HKO, 41.0 weeks, Con, 41.0 weeks; Disc1-L100P Mut, 29.0±0.41 weeks, Con, 29.0±0.40 weeks, P=0.97; Disc1-Q31L Mut, 36.1±0.60 weeks, Con, 36.3±0.66 weeks, P=0.80; Barp KO, 20.3 weeks, Con, 20.3 weeks). All animal experiments were approved by the institutional animal care and use committee of Fujita Health University, based on the Law for the Humane Treatment and Management of Animals and the Standards Relating to the Care and Management of Laboratory Animals and Relief of Pain. Every effort was made to minimize the number of animals used. Shn2 KO, Cn KO, Nrgn KO, Camk2a HKO, and Chd8 HKO mice—but not Disc1-L100P mutant and Disc1-Q31L mutant, or Barp KO mice—exhibit good construct and face validities for schizophrenia, bipolar disorder, and ASD. Further details are included in the Supplementary Materials and Methods (Supplementary Table S2).

Measurement of pH

Mice were killed via cervical dislocation and decapitation, following which whole brains were removed. The brains were immediately frozen in liquid nitrogen and stored at –80 °C until use. We measured brain pH as previously described (Catts ; Halim ). Briefly, mouse brains were homogenized using a tissue homogenizer equipped with a conical pestle in ice-cold distilled H2O (5 ml per 500 mg of tissue). The pH was measured using a pH meter (LAQUA F-72, Horiba Scientific, Kyoto, Japan) after a three-point calibration at pH 4.0, pH 7.0, and pH 9.0. The pH experiments were performed in triplicate for each sample, following which homogenates were immediately frozen and stored at –80 °C until required for further analyses.

Lactate and Glucose Measurements

The concentration of lactate in the brain homogenates was determined using a multi-assay analyzer (GM7 MicroStat; Analox Instruments, London, UK) in accordance with the manufacturer’s instructions. In our prior tests using several samples, we loaded 5, 10, and 20 μl of supernatant to the instrument, observing linear, volume-dependent increases in the measured values (r2>0.99). Based on these results, we used 20 μl of supernatant for lactate measurements. Similarly, glucose concentrations in 20 μl supernatant samples were determined using a multiassay analyzer following calibration with 10 mmol/ml glucose standard solution. To normalize the effects of differences in genetic background and age among strains, Z-scores for pH and lactate levels were calculated within each strain and used for the correlation analysis.

Pyruvate Measurement

Pyruvate concentrations in 20 μl supernatant samples were determined using a pyruvate assay kit (BioVision, Mountain View, CA). The fluorescence intensities were measured using a microplate reader equipped with a spectrofluorometer (ARVO X, PerkinElmer).

Adenosine Diphosphate/Adenosine Triphosphate (ADP/ATP) Ratio

An ADP/ATP Ratio Assay Kit (BioVision) was used to measure the ADP and ATP concentrations, in accordance with the manufacturer’s instructions.

Data Analysis

Human data

We used all data obtained and conducted two-way analyses of variance (ANOVA) and covariance (ANCOVA) for pH, factoring in diagnosis and data set using SAS Studio software version 3.5 (SAS Institute, Cary, NC). Tukey’s honest significant difference (HSD) post hoc test after ANOVA or ANCOVA was also employed to assess the significance of differences between the mean values of diagnostic groups. Because of differences in methods used to calculate equivalent doses among the four data sets (fluphenazine vs chlorpromazine equivalent), we calculated Z-scores for lifetime antipsychotic use. Z-score transformation—a traditional method of data normalization for direct comparison between different samples and conditions—was applied for each antipsychotic equivalent value and pH value using individual participant data within each of four data sets, according to the following formula: where P is any pH and P1…P represent the aggregate measure of all antipsychotic equivalent or pH values.

Mouse data

Student’s t-test was employed to assess the significance of differences between the mean values of controls and mutants in combination with the Bonferroni–Holm correction for repeated measurements. Z-scores for pH and lactate levels were calculated within strains as described above.

Transcriptome Analysis and Bioinformatics Analysis

We used the following mouse brain transcriptome data: frontal cortex and hippocampal dentate gyrus (DG) of Shn2 KO mice (microarray) (Takao ), hippocampal DG of Camk2a HKO mice (microarray) (Hagihara ), and whole brains of Chd8 HKO mice (RNA-sequencing) (Katayama ). Gene expression patterns in the frontal cortex of Camk2a HKO mice (n=6, 6) and hippocampal DG of Cn KO mice (n=6, 6) were analyzed via microarray (Mouse Genome 430 2.0 Array; Affymetrix, Santa Clara, CA), as previously described (Takao ). Gene expression patterns in the frontal cortex and hippocampal DG of Nrgn KO mice (n=5, 5) were analyzed via RNA-sequencing using the HiSeq platform in accordance with the manufacturer’s instructions (Illumina, San Diego, CA). A total of eight transcriptome data sets were used in the present study. Genes with an absolute fold change >1.2 and a t-test P-value <0.05 (mutants vs controls; without correction for multiple testing) were imported into the bioinformatics tool BaseSpace (Illumina), with which the gene expression data obtained from different platforms were matched (Hagihara ). Genes meeting the above criteria are included in Supplementary Table S3. Genes with altered expression in at least four of the eight data sets (yielding 80 features; Supplementary Table S3) were selected based on the criteria of the BaseSpace tool and assessed for enrichment in biological themes using the DAVID functional annotation clustering tool, ADGO, and GOToolBox, in which the default feature listings and algorithm settings were used.

Results

Lower pH in the Postmortem Brains of Patients with Schizophrenia and Bipolar Disorder

We first performed a meta-analysis of postmortem studies regarding brain pH in patients with schizophrenia and bipolar disorder that consisted of nine schizophrenia data sets and five bipolar disorder data sets (Figure 1 and Supplementary Table S1). A two-way ANOVA revealed significant effects of diagnosis (F2, 694=22.01, P=5.32 × 10−10) and data set (F9, 694=17.93, P<2.00 × 10−16), although no interaction was observed between the two factors (F12, 694=1.70, P=0.063; Figure 1). The post hoc comparisons with Tukey’s HSD test indicated that patients with schizophrenia (adjusted P<1.0 × 10−7) and bipolar disorder (adjusted P=9.6 × 10−6) exhibited lower brain pH than healthy control. However, no significant difference in brain pH was observed between patients with schizophrenia and bipolar disorder (adjusted P=0.88). Similar results were obtained with Z-score-transformed data: pH was significantly lower in patients with schizophrenia (adjusted P<1.0 × 10−7) and bipolar disorder (adjusted P=1.59 × 10−5) than in healthy controls, and no significant difference was observed between patients with schizophrenia and bipolar disorder (adjusted P=0.85) (Supplementary Figure S1).
Figure 1

Lower pH in the postmortem brains of patients with schizophrenia and bipolar disorder. Box plot of brain pH in control participants (white box), patients with schizophrenia (red box), and patients with bipolar disorder (blue box). The boxes represent the interquartile range between first and third quartiles, whereas the whiskers represent the maximum and minimum values, and the circles represent population outliers. *1P=0.020, *2P<0.0001, *3P=0.0001, *4P=0.027; ANOVA/Tukey’s post hoc test within each data set.

We observed no significant interactions between diagnosis and postmortem interval/age in either schizophrenia (postmortem interval: F1, 485=2.56, P=0.11; age: F1, 485=0.93, P=0.34) or bipolar disorder data sets (postmortem interval: F1, 295=0.63, P=0.43; age: F1, 295=1.07, P=0.30). Hence, we performed correlation analyses between pH and such variables using the combined data of patients and controls to test their effects on pH. In schizophrenia data sets, significant correlations were observed between pH values and age (r=−0.17, P=0.00013), but not between pH and postmortem interval (r=0.064, P=0.14). In bipolar disorder data sets, no significant correlations were observed between pH and postmortem interval (r=0.072, P=0.20), or between pH and age (r=0.032, P=0.57) (Supplementary Figure S2). Therefore, we performed an ANCOVA (factors: diagnosis and data set) on schizophrenia samples with age as a covariate that revealed a significant main effect of diagnosis (F1, 485=6.16, P=0.013). However, no significant interaction effects were observed for these factors (F8, 485=0.35, P=0.95). In bipolar disorder data sets, as no significant correlations were observed between pH and potential confounding factors, we performed an ANOVA to examine the effect of diagnosis on pH. Our analysis revealed a significant main effect of diagnosis (F1, 305=9.11, P=0.0028), although no significant interaction effects were observed (F4, 305=0.68, P=0.60). The post hoc analyses revealed that pH was lower in the brains of patients with schizophrenia (P<0.0001) and bipolar disorder (P=0.0028) than in those of healthy controls. Furthermore, Z-score-based meta-analysis of six data sets revealed no significant correlation between pH and lifetime use of antipsychotics (r=−0.13, P=0.094; Supplementary Figure S3), suggesting that antipsychotic treatment is not a major contributing factor affecting pH in the postmortem brains of patients with schizophrenia and bipolar disorder. Collectively, the results of our meta-analysis support the notion that lower brain pH is a pathological feature of schizophrenia and bipolar disorder rather than an artifact.

Lower pH and Increased Lactate Levels in the Postmortem Brain of Mouse Models of Schizophrenia, Bipolar Disorder, and ASD

The potential confounding factors identified in previous studies (Halim ; Tomita ) are beyond the investigator’s control in postmortem studies of the human brain. We therefore measured pH and lactate levels in the brains of mouse models of schizophrenia (Shn2 KO, Cn KO, Nrgn KO mice), bipolar disorder (Camk2a HKO mice), and ASD (Chd8 HKO mice). All mice used were drug naive and killed via cervical dislocation, following which the removed brains were snap-frozen within a few minutes, allowing us to control for differences in agonal state and postmortem interval differences. Brain pH was significantly lower in all five mutant strains than in the corresponding controls (Shn2 KO, 7.17±0.0060, Con, 7.20±0.0056, P=0.017; Cn KO, 7.08±0.0057, Con, 7.13±0.0080, P=0.0055; Nrgn KO, 7.10±0.017, Con, 7.16±0.0080, P=0.017; Camk2a HKO, 7.14±0.0093, Con, 7.21±0.0090, P=0.0055; Chd8 HKO, 7.08±0.0066, Con, 7.12±0.0031, P=0.0040; Figure 2a).
Figure 2

Lower pH and increased lactate levels in the brains of mouse models of psychiatric disorders. Bar graphs of pH (a), lactate levels (b), pyruvate levels (d), glucose levels (e), and ADP/ATP ratio (f) in the brains of Shn2 KO, Cn KO, Nrgn KO, Camk2a HKO, and Chd8 HKO mice and their corresponding controls (mean±SEM). Each plot represents individual mouse values. (c) Scatter plot showing correlations between pH and lactate levels in the mouse brain. Asterisks indicate statistically significant differences between controls and mutants after Bonferroni–Holm correction (*P<0.05, **P<0.01). ADP, adenosine diphosphate; ATP, adenosine triphosphate.

Significantly higher levels of lactate were observed in the postmortem brains of all mutant mouse strains than in the corresponding controls (Shn2 KO, 2.98±0.080 mM, Con, 2.55±0.076 mM, P=0.015; Cn KO, 3.24±0.051 mM, Con, 2.90±0.073 mM, P=0.015; Nrgn KO, 2.98±0.11 mM, Con, 2.58±0.054 mM, P=0.015; Camk2a HKO, 2.86±0.024 mM, Con, 2.58±0.037 mM, P=0.0012; Chd8 HKO, 3.04±0.081 mM, Con, 2.58±0.086 mM, P=0.015; Figure 2b). Z-score-based analysis revealed a significant negative correlation between pH and lactate levels (Pearson’s r=−0.65, P=1.19 × 10−7; Figure 2c). In addition, lactate levels exhibited a significant negative correlation with age in the control group, but not in the mutant group (Supplementary Figure S4). However, there were no significant differences in age between controls and mutants of each strain (see the Materials and Methods). No significant correlations between age and pH were observed in either the mutant or control groups (Supplementary Figure S4). Disc1-L100P mutant, Disc1-Q31L mutant, and Barp KO mice do not exhibit behavioral phenotypes associated with psychiatric disorders (Nakao ; Shoji ) (Supplementary Table S2). Unlike other model mice, mice of these three lines exhibited no changes in brain pH or lactate levels relative to those observed in the corresponding controls (Supplementary Figure S5). These results suggest that genetic alterations in general do not necessarily cause changes in pH and lactate levels in the mouse brain. Lactate is formed from pyruvate during glycolysis. We therefore measured pyruvate levels in model mouse brains, observing that levels were significantly increased in Shn2 KO (P=0.042), Nrgn KO (P=0.042), and Chd8 HKO mice (P=0.042). Cn KO (P=0.092) and Camk2a HKO mice (P=0.092) exhibited a trend toward increased pyruvate levels, although this trend did not survive Bonferroni–Holm correction (Figure 2d). Glucose levels remained unchanged in mutant mice relative to controls (Figure 2e), suggesting that glucose supply/demand ratio in the brain may be comparable in these mouse models. In addition, no significant differences in ADP/ATP ratio were observed in these model mice following Bonferroni–Holm correction (Figure 2f), suggesting no alteration of energy consumption ratio in the brains of model mice. We then analyzed transcriptome data (Supplementary Table S3) in order to investigate the potential underlying molecular mechanisms of increased lactate levels in mutant mouse brains. Transcriptome data from five mouse strains revealed an enrichment in Wnt- and epidermal growth factor (EGF)-related pathways when analyzed using DAVID software (Supplementary Table S4). Enrichment in Wnt-related pathways was replicated in analyses performed using other bioinformatics tools (ADGO and GOToolBox) using different statistical methods (Supplementary Table S4). As lactate is produced via glycolytic pathways in astrocytes in the brain (Demetrius and Simon, 2012), we analyzed the transcriptome data of model mice with particular focus on glycolysis-related genes (Gene Ontology Consortium database) as well as those related to pyruvate metabolism. The results of the targeted gene expression analyses suggest that elevated glycolysis and pyruvate metabolism shifting toward lactate synthesis occur in the brains of model mice, especially in Shn2 KO and Camk2a HKO mice (Supplementary Table S5 and Supplementary Figure S6).

Discussion

In the present study, our meta-analysis confirmed that the brains of patients with schizophrenia and bipolar disorder exhibit lower pH than healthy controls upon postmortem examination. Lower pH was also observed in five different mouse models of psychiatric disorders, all of which were drug naive and controlled for other potential confounding factors, such as agonal state and postmortem interval. We also observed increased lactate levels in the brains of model mice, as well as a highly significant negative correlation between pH and lactate levels, consistent with the findings of previous human postmortem studies (Halim ). These results suggest that lower pH and increased lactate levels are implicated in the underlying pathophysiology of the diseases rather than mere artifacts. Our meta-analyses indicated that brain pH is decreased in patients with schizophrenia and bipolar disorder when postmortem interval, age, and antipsychotic use are regarded as potential covariates of brain pH. There are, however, still limitations regarding the covariates in the present study. One major limitation involves the lack of data regarding agonal state, as previous studies have reported that individuals who experience prolonged agonal states exhibit lower brain pH (Mexal ; Tomita ). These findings suggest that agonal state may be a potential confounding factor for postmortem brain pH. As such, studies using animal models are necessary to validate the findings from human postmortem studies. However, as we cannot rule out the possibility that agonal states were altered in our model mice, further studies should examine pH and lactate levels in the brains of animals with short, moderate, and prolonged agonal states. In addition to these limitations, other secondary factors cannot be ruled out in animal studies. For example, a recent study using Tbx1 mutant mice (ASD model mice) revealed that a genetic risk factor can influence maternal care via the phenotype of the risk carrier (Takahashi ). Such secondary environmental factors during childhood may thus affect brain pH in mice. Increased locomotor activity may alter oxygen levels in the brains, particularly in Shn2 KO, Cn KO, Nrgn KO, and Camk2a HKO mice (Supplementary Table S2). Considering that blood oxygen levels are positively correlated with brain lactate levels (Bednařík ), oxygen levels may also represent a potential confounding factor in the measurement of brain lactate levels. Moreover, the balance between blood and brain cells may differ between the brain homogenates of control and mutant mice. As lactate concentrations in the blood are two- to three-fold higher than those in the mouse brain (extracellular compartment) (Béland-Millar ), such differences may represent an additional confounding factor. Although differences in genetic background are also of concern when making comparisons between different mouse strains (Wolfer ), we utilized over nine backcrossings in addition to littermates within each strain. Thus, it is unlikely that differences in pH and lactate levels between control and mutant mice within each strain reflect differences in genetic background. We observed no significant differences in pH and lactate levels in the brain of two lines of Disc1 mutant mice as compared with corresponding controls. DISC1 has been implicated in the genetic etiology of schizophrenia (Brandon and Sawa, 2011; Ishizuka ). However, a recent large-scale analysis of copy number variants (CNVs) suggested that DISC1 may not be a risk factor for the disorder (Marshall ); the analysis showed that there are 5 deletions and 1 duplication in 21 094 schizophrenia cases and 4 deletions and 2 duplications in 20 227 controls (data deposited at UCSC Genome Browser on Human Mar. 2006, NCBI36/hg18). These results, combined with our previous observations that Disc1 mutant mice used in the present study did not exhibit behavioral phenotypes associated with schizophrenia (Shoji ), suggest that these mutant mice may not represent a valid animal model of the disorder. Increased lactate levels have been observed within certain brain regions in patients with schizophrenia (Halim ; Prabakaran ), bipolar disorder (Dager ; Lan ), and ASD (Goh ) in both postmortem and in vivo spectroscopic imaging studies. More recent studies have confirmed increased lactate levels in the brains of patients with schizophrenia by postmortem analysis (Dean ) and in vivo analysis using 7-Tesla magnetic resonance spectroscopy (MRS) (Rowland ). Additional studies have revealed that pyruvate levels are increased whereas glucose levels remain unchanged in the postmortem brains of patients with schizophrenia (Dean ). Our findings in mouse models are substantially consistent with the evidence obtained from previous human studies. In our animal experiments, control baselines of pH and lactate levels varied among strains (Figures 2a and b). Such variations may have been due to differences in age, as we observed a significant negative correlation between lactate levels and age in control mice; lactate levels increased as mouse age decreased (Supplementary Figure S4). These findings align with the neurodevelopmental hypothesis of schizophrenia. Accumulating evidence suggests that maturation abnormalities in certain types of brain cells, in which the molecular and physiological properties are similar to those of normal immature cells, represent an endophenotype commonly observed in several neuropsychiatric disorders, including schizophrenia, bipolar disorder, and epilepsy (Hagihara ; Shin ; Walton ). For example, our previous study demonstrated that gene expression patterns in the prefrontal cortex of patients with schizophrenia are strikingly similar to those of typically developing infants (Hagihara ). Considering the negative correlation between age and lactate levels in control mice of the present study, higher lactate levels in mutant mice may reflect one aspect of maturational abnormalities of the brain. However, additional studies involving detailed time-course analyses of developmental changes in pH and lactate levels are required to verify this hypothesis. Previous studies have also revealed that brain acidosis influences a number of brain functions, such as anxiety, mood, and cognition (Wemmie, 2011). Acidosis may affect the structure and function of several types of brain cells, including the electrophysiological functioning of GABAergic neurons (Huang ) and morphological properties of oligodendrocytes (Goldman ). Alterations in these types of cells have been well documented in the brains of patients with schizophrenia, bipolar disorder, and ASD (Bartzokis, 2005; Nakazawa ) and may underlie some of the cognitive deficits associated with these disorders. Deficits in GABAergic neurons and oligodendrocytes have also been identified in mouse models of the disorders, including Shn2 KO mice (Takao ). Brain acidosis may therefore be associated with deficits in such cell types in schizophrenia, bipolar disorder, and ASD. However, as each genetic alteration may dysregulate the neurochemical balances of downstream molecules that are not functionally relevant to psychiatric disorders, further studies are required to determine whether low pH and increased lactate levels are functionally significant in psychiatric disorders. A previous study indicated that chronic treatment with antipsychotics increases lactate levels in the rat cerebral cortex (Halim ), suggesting that such increases may be medication related. The authors of the report, however, found no significant correlation between lactate levels and history of antipsychotic use in the post-mortem brains of patients with schizophrenia. In addition, increased lactate levels have been observed in the anterior cingulate of medication-free patients with bipolar disorder in in vivo spectroscopic imaging studies (Dager ). Furthermore, studies utilizing animal models of psychiatric disorders have identified increased lactate levels in mutant mouse brains in vivo (das Neves Duarte ). In addition, we observed an association between increased lactate levels and decreased pH in the brains of model mice in the present study, consistent with findings from previous studies on patients with schizophrenia (Halim ; Prabakaran ). Decreased brain pH has also been observed in medication-free patients with bipolar disorder (Kato ). Although it is possible that antipsychotic treatment increases lactate levels and lowers pH in the brain, the aforementioned findings suggest that such changes may occur as primary features of schizophrenia and bipolar disorder. It should be noted that haploinsufficiency of Chd8, a gene associated with ASD, results in lower brain pH and increased lactate levels in mice, as well as molecular and behavioral phenotypes relevant to ASD (Katayama ). Previous studies have reported that patients with ASD exhibit decreased pH (Young ) and increased lactate levels (Goh ) relative to healthy controls, suggesting that our findings in model mice are consistent with those observed in patients with ASD. In addition, CHD8 has also been implicated in schizophrenia (Kimura ; McCarthy ). Therefore, lower pH and increased lactate levels in Chd8 HKO mice may reflect an aspect of brain pathophysiology in ASD/schizophrenia. Interestingly, we observed that Wnt- and EGF-related pathways, which are highly implicated in somatic and brain cancers (Nicholas ), are enriched in the genes whose expressions were altered among the five mutant mouse strains. It is well known that cancer cells display high rates of glycolysis, resulting in high lactate and pyruvate levels, even in normoxia (Lu ). This phenomenon has been referred to as the Warburg effect. Genes whose expression is known to positively regulate the Warburg effect, such as Hk2 (Mathupala ), Hif1a (Lu ), and Pfkfb3 (Minchenko ), were increased in the brains of some of mouse models examined in the present study, whereas expression of Prkaa1—a negative regulator of the Warburg effect (Faubert )—was decreased (Supplementary Table S3). These findings suggest that elevated glycolysis underlies increases in lactate and pyruvate levels in the brains of schizophrenia, bipolar disorder, and ASD model mice. The results of the targeted gene expression analyses conducted in the present study also support this hypothesis. Glycolysis is also stimulated by the uptake of glutamate in astrocytes following neuronal excitation (Pellerin and Magistretti, 1994). Dysregulation of the excitation–inhibition balance has been proposed as a candidate cause of schizophrenia, bipolar disorder, and ASD (Brealy ; Marín, 2012). A shift in the balance toward excitation would result in increased energy expenditure and may lead to increased glycolysis. Indeed, Shn2 KO mice exhibit higher glutamate levels in the hippocampus (Takao ). In vivo metabolite measurements have suggested that increased glycolysis also occurs in the brains of patients with schizophrenia (Rowland ) and bipolar disorder (Dager ; Stork and Renshaw, 2005), whereas gene ontology analysis of microarray data has suggested that decreased glycolysis occurs in the brains of patients with schizophrenia (Prabakaran ). Although further studies are required to determine whether alterations in the rate of glycolysis are associated with increased lactate levels and decreased pH, we hypothesize that decreased pH in whole-brain samples was due to increased lactate production driven by hyperactivity within specific neural circuits (Hagihara ; Heckers and Konradi, 2015; Lisman ). Therefore, it would be of interest to investigate pH and lactate levels, as well as glycolysis rate, in the brains of mouse models of other mental disorders in which such hyperactivity has been implicated, such as epilepsy (Seifert and Steinhäuser, 2013), depression (Grace, 2016), and Alzheimer’s disease (Busche ). Previous studies have indicated that lactate levels in the mouse brain rapidly increase after at least 1 min of decapitation, relative to those observed following in vivo fixation via focused microwave irradiation, regarded as a consequence of enhanced glycolysis under oxygen-deprived conditions (Sugiura ). Although the current findings may differ from those obtained under physiological conditions, they may also reflect functional changes (eg, astrocyte activation) (Huang and Huang, 2012; Takao ) that represent the main source of lactate production in the brain. Brain pH is associated with notable changes in gene expression (Catts ; Iwamoto ; Mexal ; Tomita ) and has hence been considered as a confound for investigating changes in gene expression related to the pathophysiology of psychiatric disorders. Therefore, substantial effort has been made to match tissue pH between patients and controls. Given that lower brain pH is a pathophysiological component of certain conditions, pH-dependent changes in gene expression are of concern when attempting to elucidate the molecular basis of the conditions. Some studies have indicated that gene expression patterns are partially similar across diseases such as schizophrenia, bipolar disorder, and ASD (Ellis ; Shao and Vawter, 2008). Decreased pH may underlie these similarities in the pattern of gene expression. Thus, pH may be an important factor in the elucidation of molecular alternations in the brains of patients with these psychiatric conditions.

Funding and disclosure

TM received research grants from Astellas Pharma Inc. CSW is on an advisory board for Lundbeck, Australia Pty Ltd and in collaboration with Astellas Pharma Inc. CSW is funded by the NSW Ministry of Health, Office of Health and Medical Research. CSW is a recipient of a National Health and Medical Research Council (Australia) Principal Research Fellowship (PRF) (#1117079). CSW and VSC received tissues from the New South Wales Brain Tissue Resource Centre at the University of Sydney which is supported by the University of Sydney and The Schizophrenia Research Institute (Fillman et al, 2013). Research reported in this publication was supported by the National Institute of Alcohol Abuse and Alcoholism of the National Institutes of Health under Award Number R28AA012725. The content is solely the responsibility of the authors and does not represent the official views of the National Institutes of Health.
  84 in total

1.  Working memory impairment in calcineurin knock-out mice is associated with alterations in synaptic vesicle cycling and disruption of high-frequency synaptic and network activity in prefrontal cortex.

Authors:  Jeffrey R Cottrell; Jonathan M Levenson; Sung Hyun Kim; Helen E Gibson; Kristen A Richardson; Michael Sivula; Bing Li; Crystle J Ashford; Karen A Heindl; Ryan J Babcock; David M Rose; Chris M Hempel; Kjesten A Wiig; Pascal Laeng; Margaret E Levin; Timothy A Ryan; David J Gerber
Journal:  J Neurosci       Date:  2013-07-03       Impact factor: 6.167

Review 2.  Interneuron dysfunction in psychiatric disorders.

Authors:  Oscar Marín
Journal:  Nat Rev Neurosci       Date:  2012-01-18       Impact factor: 34.870

3.  Glutamate uptake into astrocytes stimulates aerobic glycolysis: a mechanism coupling neuronal activity to glucose utilization.

Authors:  L Pellerin; P J Magistretti
Journal:  Proc Natl Acad Sci U S A       Date:  1994-10-25       Impact factor: 11.205

4.  Brain metabolic alterations in medication-free patients with bipolar disorder.

Authors:  Stephen R Dager; Seth D Friedman; Aimee Parow; Christina Demopulos; Andrew L Stoll; In Kyoon Lyoo; David L Dunner; Perry F Renshaw
Journal:  Arch Gen Psychiatry       Date:  2004-05

5.  Decreased brain intracellular pH measured by 31P-MRS in bipolar disorder: a confirmation in drug-free patients and correlation with white matter hyperintensity.

Authors:  T Kato; J Murashita; A Kamiya; T Shioiri; N Kato; T Inubushi
Journal:  Eur Arch Psychiatry Clin Neurosci       Date:  1998       Impact factor: 5.270

6.  Contribution of copy number variants to schizophrenia from a genome-wide study of 41,321 subjects.

Authors:  Christian R Marshall; Daniel P Howrigan; Daniele Merico; Bhooma Thiruvahindrapuram; Wenting Wu; Douglas S Greer; Danny Antaki; Aniket Shetty; Peter A Holmans; Dalila Pinto; Madhusudan Gujral; William M Brandler; Dheeraj Malhotra; Zhouzhi Wang; Karin V Fuentes Fajarado; Michelle S Maile; Stephan Ripke; Ingrid Agartz; Margot Albus; Madeline Alexander; Farooq Amin; Joshua Atkins; Silviu A Bacanu; Richard A Belliveau; Sarah E Bergen; Marcelo Bertalan; Elizabeth Bevilacqua; Tim B Bigdeli; Donald W Black; Richard Bruggeman; Nancy G Buccola; Randy L Buckner; Brendan Bulik-Sullivan; William Byerley; Wiepke Cahn; Guiqing Cai; Murray J Cairns; Dominique Campion; Rita M Cantor; Vaughan J Carr; Noa Carrera; Stanley V Catts; Kimberley D Chambert; Wei Cheng; C Robert Cloninger; David Cohen; Paul Cormican; Nick Craddock; Benedicto Crespo-Facorro; James J Crowley; David Curtis; Michael Davidson; Kenneth L Davis; Franziska Degenhardt; Jurgen Del Favero; Lynn E DeLisi; Dimitris Dikeos; Timothy Dinan; Srdjan Djurovic; Gary Donohoe; Elodie Drapeau; Jubao Duan; Frank Dudbridge; Peter Eichhammer; Johan Eriksson; Valentina Escott-Price; Laurent Essioux; Ayman H Fanous; Kai-How Farh; Martilias S Farrell; Josef Frank; Lude Franke; Robert Freedman; Nelson B Freimer; Joseph I Friedman; Andreas J Forstner; Menachem Fromer; Giulio Genovese; Lyudmila Georgieva; Elliot S Gershon; Ina Giegling; Paola Giusti-Rodríguez; Stephanie Godard; Jacqueline I Goldstein; Jacob Gratten; Lieuwe de Haan; Marian L Hamshere; Mark Hansen; Thomas Hansen; Vahram Haroutunian; Annette M Hartmann; Frans A Henskens; Stefan Herms; Joel N Hirschhorn; Per Hoffmann; Andrea Hofman; Hailiang Huang; Masashi Ikeda; Inge Joa; Anna K Kähler; René S Kahn; Luba Kalaydjieva; Juha Karjalainen; David Kavanagh; Matthew C Keller; Brian J Kelly; James L Kennedy; Yunjung Kim; James A Knowles; Bettina Konte; Claudine Laurent; Phil Lee; S Hong Lee; Sophie E Legge; Bernard Lerer; Deborah L Levy; Kung-Yee Liang; Jeffrey Lieberman; Jouko Lönnqvist; Carmel M Loughland; Patrik K E Magnusson; Brion S Maher; Wolfgang Maier; Jacques Mallet; Manuel Mattheisen; Morten Mattingsdal; Robert W McCarley; Colm McDonald; Andrew M McIntosh; Sandra Meier; Carin J Meijer; Ingrid Melle; Raquelle I Mesholam-Gately; Andres Metspalu; Patricia T Michie; Lili Milani; Vihra Milanova; Younes Mokrab; Derek W Morris; Bertram Müller-Myhsok; Kieran C Murphy; Robin M Murray; Inez Myin-Germeys; Igor Nenadic; Deborah A Nertney; Gerald Nestadt; Kristin K Nicodemus; Laura Nisenbaum; Annelie Nordin; Eadbhard O'Callaghan; Colm O'Dushlaine; Sang-Yun Oh; Ann Olincy; Line Olsen; F Anthony O'Neill; Jim Van Os; Christos Pantelis; George N Papadimitriou; Elena Parkhomenko; Michele T Pato; Tiina Paunio; Diana O Perkins; Tune H Pers; Olli Pietiläinen; Jonathan Pimm; Andrew J Pocklington; John Powell; Alkes Price; Ann E Pulver; Shaun M Purcell; Digby Quested; Henrik B Rasmussen; Abraham Reichenberg; Mark A Reimers; Alexander L Richards; Joshua L Roffman; Panos Roussos; Douglas M Ruderfer; Veikko Salomaa; Alan R Sanders; Adam Savitz; Ulrich Schall; Thomas G Schulze; Sibylle G Schwab; Edward M Scolnick; Rodney J Scott; Larry J Seidman; Jianxin Shi; Jeremy M Silverman; Jordan W Smoller; Erik Söderman; Chris C A Spencer; Eli A Stahl; Eric Strengman; Jana Strohmaier; T Scott Stroup; Jaana Suvisaari; Dragan M Svrakic; Jin P Szatkiewicz; Srinivas Thirumalai; Paul A Tooney; Juha Veijola; Peter M Visscher; John Waddington; Dermot Walsh; Bradley T Webb; Mark Weiser; Dieter B Wildenauer; Nigel M Williams; Stephanie Williams; Stephanie H Witt; Aaron R Wolen; Brandon K Wormley; Naomi R Wray; Jing Qin Wu; Clement C Zai; Rolf Adolfsson; Ole A Andreassen; Douglas H R Blackwood; Elvira Bramon; Joseph D Buxbaum; Sven Cichon; David A Collier; Aiden Corvin; Mark J Daly; Ariel Darvasi; Enrico Domenici; Tõnu Esko; Pablo V Gejman; Michael Gill; Hugh Gurling; Christina M Hultman; Nakao Iwata; Assen V Jablensky; Erik G Jönsson; Kenneth S Kendler; George Kirov; Jo Knight; Douglas F Levinson; Qingqin S Li; Steven A McCarroll; Andrew McQuillin; Jennifer L Moran; Bryan J Mowry; Markus M Nöthen; Roel A Ophoff; Michael J Owen; Aarno Palotie; Carlos N Pato; Tracey L Petryshen; Danielle Posthuma; Marcella Rietschel; Brien P Riley; Dan Rujescu; Pamela Sklar; David St Clair; James T R Walters; Thomas Werge; Patrick F Sullivan; Michael C O'Donovan; Stephen W Scherer; Benjamin M Neale; Jonathan Sebat
Journal:  Nat Genet       Date:  2016-11-21       Impact factor: 38.330

7.  Genetic relationship between five psychiatric disorders estimated from genome-wide SNPs.

Authors:  S Hong Lee; Stephan Ripke; Benjamin M Neale; Stephen V Faraone; Shaun M Purcell; Roy H Perlis; Bryan J Mowry; Anita Thapar; Michael E Goddard; John S Witte; Devin Absher; Ingrid Agartz; Huda Akil; Farooq Amin; Ole A Andreassen; Adebayo Anjorin; Richard Anney; Verneri Anttila; Dan E Arking; Philip Asherson; Maria H Azevedo; Lena Backlund; Judith A Badner; Anthony J Bailey; Tobias Banaschewski; Jack D Barchas; Michael R Barnes; Thomas B Barrett; Nicholas Bass; Agatino Battaglia; Michael Bauer; Mònica Bayés; Frank Bellivier; Sarah E Bergen; Wade Berrettini; Catalina Betancur; Thomas Bettecken; Joseph Biederman; Elisabeth B Binder; Donald W Black; Douglas H R Blackwood; Cinnamon S Bloss; Michael Boehnke; Dorret I Boomsma; Gerome Breen; René Breuer; Richard Bruggeman; Paul Cormican; Nancy G Buccola; Jan K Buitelaar; William E Bunney; Joseph D Buxbaum; William F Byerley; Enda M Byrne; Sian Caesar; Wiepke Cahn; Rita M Cantor; Miguel Casas; Aravinda Chakravarti; Kimberly Chambert; Khalid Choudhury; Sven Cichon; C Robert Cloninger; David A Collier; Edwin H Cook; Hilary Coon; Bru Cormand; Aiden Corvin; William H Coryell; David W Craig; Ian W Craig; Jennifer Crosbie; Michael L Cuccaro; David Curtis; Darina Czamara; Susmita Datta; Geraldine Dawson; Richard Day; Eco J De Geus; Franziska Degenhardt; Srdjan Djurovic; Gary J Donohoe; Alysa E Doyle; Jubao Duan; Frank Dudbridge; Eftichia Duketis; Richard P Ebstein; Howard J Edenberg; Josephine Elia; Sean Ennis; Bruno Etain; Ayman Fanous; Anne E Farmer; I Nicol Ferrier; Matthew Flickinger; Eric Fombonne; Tatiana Foroud; Josef Frank; Barbara Franke; Christine Fraser; Robert Freedman; Nelson B Freimer; Christine M Freitag; Marion Friedl; Louise Frisén; Louise Gallagher; Pablo V Gejman; Lyudmila Georgieva; Elliot S Gershon; Daniel H Geschwind; Ina Giegling; Michael Gill; Scott D Gordon; Katherine Gordon-Smith; Elaine K Green; Tiffany A Greenwood; Dorothy E Grice; Magdalena Gross; Detelina Grozeva; Weihua Guan; Hugh Gurling; Lieuwe De Haan; Jonathan L Haines; Hakon Hakonarson; Joachim Hallmayer; Steven P Hamilton; Marian L Hamshere; Thomas F Hansen; Annette M Hartmann; Martin Hautzinger; Andrew C Heath; Anjali K Henders; Stefan Herms; Ian B Hickie; Maria Hipolito; Susanne Hoefels; Peter A Holmans; Florian Holsboer; Witte J Hoogendijk; Jouke-Jan Hottenga; Christina M Hultman; Vanessa Hus; Andrés Ingason; Marcus Ising; Stéphane Jamain; Edward G Jones; Ian Jones; Lisa Jones; Jung-Ying Tzeng; Anna K Kähler; René S Kahn; Radhika Kandaswamy; Matthew C Keller; James L Kennedy; Elaine Kenny; Lindsey Kent; Yunjung Kim; George K Kirov; Sabine M Klauck; Lambertus Klei; James A Knowles; Martin A Kohli; Daniel L Koller; Bettina Konte; Ania Korszun; Lydia Krabbendam; Robert Krasucki; Jonna Kuntsi; Phoenix Kwan; Mikael Landén; Niklas Långström; Mark Lathrop; Jacob Lawrence; William B Lawson; Marion Leboyer; David H Ledbetter; Phil H Lee; Todd Lencz; Klaus-Peter Lesch; Douglas F Levinson; Cathryn M Lewis; Jun Li; Paul Lichtenstein; Jeffrey A Lieberman; Dan-Yu Lin; Don H Linszen; Chunyu Liu; Falk W Lohoff; Sandra K Loo; Catherine Lord; Jennifer K Lowe; Susanne Lucae; Donald J MacIntyre; Pamela A F Madden; Elena Maestrini; Patrik K E Magnusson; Pamela B Mahon; Wolfgang Maier; Anil K Malhotra; Shrikant M Mane; Christa L Martin; Nicholas G Martin; Manuel Mattheisen; Keith Matthews; Morten Mattingsdal; Steven A McCarroll; Kevin A McGhee; James J McGough; Patrick J McGrath; Peter McGuffin; Melvin G McInnis; Andrew McIntosh; Rebecca McKinney; Alan W McLean; Francis J McMahon; William M McMahon; Andrew McQuillin; Helena Medeiros; Sarah E Medland; Sandra Meier; Ingrid Melle; Fan Meng; Jobst Meyer; Christel M Middeldorp; Lefkos Middleton; Vihra Milanova; Ana Miranda; Anthony P Monaco; Grant W Montgomery; Jennifer L Moran; Daniel Moreno-De-Luca; Gunnar Morken; Derek W Morris; Eric M Morrow; Valentina Moskvina; Pierandrea Muglia; Thomas W Mühleisen; Walter J Muir; Bertram Müller-Myhsok; Michael Murtha; Richard M Myers; Inez Myin-Germeys; Michael C Neale; Stan F Nelson; Caroline M Nievergelt; Ivan Nikolov; Vishwajit Nimgaonkar; Willem A Nolen; Markus M Nöthen; John I Nurnberger; Evaristus A Nwulia; Dale R Nyholt; Colm O'Dushlaine; Robert D Oades; Ann Olincy; Guiomar Oliveira; Line Olsen; Roel A Ophoff; Urban Osby; Michael J Owen; Aarno Palotie; Jeremy R Parr; Andrew D Paterson; Carlos N Pato; Michele T Pato; Brenda W Penninx; Michele L Pergadia; Margaret A Pericak-Vance; Benjamin S Pickard; Jonathan Pimm; Joseph Piven; Danielle Posthuma; James B Potash; Fritz Poustka; Peter Propping; Vinay Puri; Digby J Quested; Emma M Quinn; Josep Antoni Ramos-Quiroga; Henrik B Rasmussen; Soumya Raychaudhuri; Karola Rehnström; Andreas Reif; Marta Ribasés; John P Rice; Marcella Rietschel; Kathryn Roeder; Herbert Roeyers; Lizzy Rossin; Aribert Rothenberger; Guy Rouleau; Douglas Ruderfer; Dan Rujescu; Alan R Sanders; Stephan J Sanders; Susan L Santangelo; Joseph A Sergeant; Russell Schachar; Martin Schalling; Alan F Schatzberg; William A Scheftner; Gerard D Schellenberg; Stephen W Scherer; Nicholas J Schork; Thomas G Schulze; Johannes Schumacher; Markus Schwarz; Edward Scolnick; Laura J Scott; Jianxin Shi; Paul D Shilling; Stanley I Shyn; Jeremy M Silverman; Susan L Slager; Susan L Smalley; Johannes H Smit; Erin N Smith; Edmund J S Sonuga-Barke; David St Clair; Matthew State; Michael Steffens; Hans-Christoph Steinhausen; John S Strauss; Jana Strohmaier; T Scott Stroup; James S Sutcliffe; Peter Szatmari; Szabocls Szelinger; Srinivasa Thirumalai; Robert C Thompson; Alexandre A Todorov; Federica Tozzi; Jens Treutlein; Manfred Uhr; Edwin J C G van den Oord; Gerard Van Grootheest; Jim Van Os; Astrid M Vicente; Veronica J Vieland; John B Vincent; Peter M Visscher; Christopher A Walsh; Thomas H Wassink; Stanley J Watson; Myrna M Weissman; Thomas Werge; Thomas F Wienker; Ellen M Wijsman; Gonneke Willemsen; Nigel Williams; A Jeremy Willsey; Stephanie H Witt; Wei Xu; Allan H Young; Timothy W Yu; Stanley Zammit; Peter P Zandi; Peng Zhang; Frans G Zitman; Sebastian Zöllner; Bernie Devlin; John R Kelsoe; Pamela Sklar; Mark J Daly; Michael C O'Donovan; Nicholas Craddock; Patrick F Sullivan; Jordan W Smoller; Kenneth S Kendler; Naomi R Wray
Journal:  Nat Genet       Date:  2013-08-11       Impact factor: 38.330

Review 8.  Immature dentate gyrus: an endophenotype of neuropsychiatric disorders.

Authors:  Hideo Hagihara; Keizo Takao; Noah M Walton; Mitsuyuki Matsumoto; Tsuyoshi Miyakawa
Journal:  Neural Plast       Date:  2013-06-12       Impact factor: 3.599

9.  The immature dentate gyrus represents a shared phenotype of mouse models of epilepsy and psychiatric disease.

Authors:  Rick Shin; Katsunori Kobayashi; Hideo Hagihara; Jeffrey H Kogan; Shinichi Miyake; Katsunori Tajinda; Noah M Walton; Adam K Gross; Carrie L Heusner; Qian Chen; Kouichi Tamura; Tsuyoshi Miyakawa; Mitsuyuki Matsumoto
Journal:  Bipolar Disord       Date:  2013-04-06       Impact factor: 6.744

10.  Transcriptomic evidence for immaturity of the prefrontal cortex in patients with schizophrenia.

Authors:  Hideo Hagihara; Koji Ohira; Keizo Takao; Tsuyoshi Miyakawa
Journal:  Mol Brain       Date:  2014-05-29       Impact factor: 4.041

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  30 in total

1.  Ultrastructural evidence for glutamatergic dysregulation in schizophrenia.

Authors:  Rosalinda C Roberts; Lesley A McCollum; Kirsten E Schoonover; Samuel J Mabry; Joy K Roche; Adrienne C Lahti
Journal:  Schizophr Res       Date:  2020-01-31       Impact factor: 4.939

2.  Distinct Phenotypes of Inflammation Associated Macrophages and Microglia in the Prefrontal Cortex Schizophrenia Compared to Controls.

Authors:  Yunting Zhu; Maree J Webster; Caitlin E Murphy; Frank A Middleton; Paul T Massa; Chunyu Liu; Rujia Dai; Cyndi Shannon Weickert
Journal:  Front Neurosci       Date:  2022-06-30       Impact factor: 5.152

3.  Quantification of Tyrosine Hydroxylase and ErbB4 in the Locus Coeruleus of Mood Disorder Patients Using a Multispectral Method to Prevent Interference with Immunocytochemical Signals by Neuromelanin.

Authors:  Lei Guo; Jochem Stormmesand; Zheng Fang; Qingbin Zhu; Rawien Balesar; Joop van Heerikhuize; Arja Sluiter; Dick Swaab; Ai-Min Bao
Journal:  Neurosci Bull       Date:  2019-01-31       Impact factor: 5.203

4.  Brain lactate and pH in schizophrenia and bipolar disorder: a systematic review of findings from magnetic resonance studies.

Authors:  Asli Ercan Dogan; Cagri Yuksel; Fei Du; Virginie-Anne Chouinard; Dost Öngür
Journal:  Neuropsychopharmacology       Date:  2018-03-14       Impact factor: 7.853

5.  Immature morphological properties in subcellular-scale structures in the dentate gyrus of Schnurri-2 knockout mice: a model for schizophrenia and intellectual disability.

Authors:  Akito Nakao; Naoyuki Miyazaki; Koji Ohira; Hideo Hagihara; Tsuyoshi Takagi; Nobuteru Usuda; Shunsuke Ishii; Kazuyoshi Murata; Tsuyoshi Miyakawa
Journal:  Mol Brain       Date:  2017-12-12       Impact factor: 4.041

Review 6.  Warburg effect hypothesis in autism Spectrum disorders.

Authors:  Alexandre Vallée; Jean-Noël Vallée
Journal:  Mol Brain       Date:  2018-01-04       Impact factor: 4.041

7.  Nuclear factor kappa B activation appears weaker in schizophrenia patients with high brain cytokines than in non-schizophrenic controls with high brain cytokines.

Authors:  Caitlin E Murphy; Adam J Lawther; Maree J Webster; Makoto Asai; Yuji Kondo; Mitsuyuki Matsumoto; Adam K Walker; Cynthia Shannon Weickert
Journal:  J Neuroinflammation       Date:  2020-07-17       Impact factor: 8.322

8.  Transcriptomic characterization of MRI contrast with focus on the T1-w/T2-w ratio in the cerebral cortex.

Authors:  Jacob Ritchie; Spiro P Pantazatos; Leon French
Journal:  Neuroimage       Date:  2018-03-20       Impact factor: 6.556

9.  Mitochondrial dysfunction in schizophrenia: With a focus on postmortem studies.

Authors:  Rosalinda C Roberts
Journal:  Mitochondrion       Date:  2020-11-20       Impact factor: 4.160

10.  Reductions in midbrain GABAergic and dopamine neuron markers are linked in schizophrenia.

Authors:  Tertia D Purves-Tyson; Amelia M Brown; Christin Weissleder; Debora A Rothmond; Cynthia Shannon Weickert
Journal:  Mol Brain       Date:  2021-06-26       Impact factor: 4.041

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