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Abstract

Objective

Immunopathogenic mechanisms have been implicated in schizophrenia and bipolar disorder, and genome-wide association studies (GWAS) point to the major histocompatibility complex, a region that contains many immune-related genes. One of the strongest candidate risk genes for schizophrenia and bipolar disorder is the NOTCH4 gene within the major histocompatibility complex. The authors investigated the NOTCH4 gene expression in individuals with bipolar disorder and schizophrenia relative to healthy comparison subjects and identified putative expression quantitative trait loci in and around the NOTCH4 gene.

Method

The authors measured and compared NOTCH4 mRNA in whole blood in 690 individuals (479 patients and 211 healthy comparison subjects) and adjusted for a range of confounders. The authors also genotyped 20 single-nucleotide polymorphisms (SNPs) and investigated possible associations between expression quantitative trait loci and NOTCH4 expression.

Results

The authors found a strong association between NOTCH4 expression and bipolar disorder after adjusting for a range of confounders and multiple testing. In addition, seven SNPs within the NOTCH4 gene region were associated with enhanced NOTCH4 mRNA levels. Three of these expression quantitative trait loci were independent (not in linkage disequilibrium).

Conclusions

The results indicate that the association between NOTCH4 DNA markers and bipolar disorder is related to altered function at the mRNA level, supporting the notion that NOTCH4 pathways are involved in the pathophysiology of bipolar disorder.

Schizophrenia and bipolar disorder are complex genetic disorders with high heritability, but the underlying genetic mechanisms are mainly unknown (1). However, genome-wide association studies (GWAS) have started to uncover some of this “missing heritability” (24). Some of the most promising genetic findings point to the major histocompatibility complex situated on chromosome 6p21.3–22.1 (2), a region containing over 200 genes, many of which are related to immune regulation (5). Further evidence implicating immunopathogenic mechanisms in schizophrenia and bipolar disorder comes from findings of elevated plasma and serum levels of markers of immune activation and inflammation as well as signs of increased T cell activation in these disorders (610).

Despite the growing body of evidence implicating a major role for the immune system in the pathophysiology of schizophrenia and bipolar disorder, it has been difficult to understand the function of the immune-related genes involved and to identify the relation of these genes with systemic immune dysregulation in these patients. As for the major histocompatibility complex region, there is a low recombination rate and hence long linkage disequilibrium blocks, which make the exact location of the associated locus in question difficult to pinpoint. Several studies have identified NOTCH4 within the major histocompatibility complex as a candidate gene for both schizophrenia and bipolar disorder (2, 11). Supporting the candidacy, recent evidence suggests an association between the NOTCH4 gene and schizophrenia across different ethnic groups (12).

The NOTCH4 protein is a member of the NOTCH family, a set of four type 1 transmembrane proteins that together form a signaling system that plays a key role in cell fate decisions (13). In addition to being important in regulating neural cell proliferation, neural cell differentiation, and neural cellular growth, the NOTCH4 protein is a crucial contributor in T cell-mediated immune responses (14, 15). The NOTCH4 protein has also been implicated in endothelial cell dysregulation and vascular inflammation as well as macrophage activation (16). NOTCH4 is expressed in endothelial cells and therefore present in various tissues and in the CNS (14, 17). To further elucidate the potential role of NOTCH4 in schizophrenia and bipolar disorder, we examined NOTCH4 mRNA expression in the whole blood of patients with schizophrenia, bipolar disorder, and other psychoses, with comparative analyses in healthy comparison subjects. We controlled for several potential confounders and identified expression quantitative trait loci in and around the NOTCH4 gene that may regulate its expression.

Method

Study Design and Ethics

The Thematically Organized Psychosis Study at the Stavanger University Hospital and Oslo University Hospital, Norway, is a large ongoing study with 1,726 current participants (1,171 patients and 555 healthy comparison subjects). The study sample consisted of patients and comparison subjects included within a particular time period (August 2003–December 2008). The study was approved by the Regional Committee for Medical Research Ethics and the Norwegian Data Inspectorate, and the biobank is approved by the Norwegian Directorate of Health.

Participants

The main inclusion criteria were DSM-IV diagnoses of psychosis disorders, either among the schizophrenia spectrum disorders or the bipolar spectrum disorders, and age between 18 and 65 years. Patients were recruited from in- and outpatient clinics. We did not include patients unless they were clinically stable enough to fully understand the information about the study given to them. All patients gave written informed consent and were made aware that they could withdraw from the study at any time. After completing the protocol, the treating clinician received a full report with somatic and psychiatric assessments of the patient. Exclusion criteria were head injury, neurological disorder, mental retardation, autoimmune and infectious disorders, and malignancies. All patients underwent standardized psychiatric interviews with the Positive and Negative Syndrome Scale (PANSS), the Inventory of Depressive Symptoms, and the Young Mania Rating Scale. All participants were assessed by trained psychiatrists and clinical psychologists using the Structured Clinical Interview for DSM-IV Axis I Disorders (SCID), and they received a diagnosis of either schizophrenia or bipolar spectrum disorder. The type and amount of illicit substances and number of international units of alcohol consumed over the past 2 weeks were recorded. In addition, all participants were screened and diagnosed for illicit substances and alcohol using the E module in the SCID manual.

Patients were divided into groups according to their diagnosis and treated as unitary illnesses. The bipolar disorder group included patients with bipolar I disorder (N=107), bipolar II disorder (N=50), and bipolar disorder not otherwise specified (N=12). The other psychosis group included patients with depressive psychosis (N=22) and psychosis not otherwise specified (N=61). In addition to patients meeting the criteria for schizophrenia (N=175), the schizophrenia group included patients with schizophreniform disorder (N=19) and schizoaffective disorder (N=33). All patients were examined by a physician, and fasting blood samples were drawn in the morning.

Comparison Subjects

A representative age- and sex-matched group of healthy volunteers (N=211) from the same catchment area was randomly selected from the National Population Registry by a computer-based program, and individuals were contacted by a letter of invitation. All comparison subjects were screened for illness using the Primary Care Evaluation of Mental Disorders and interviews about severe psychiatric disorders, drug abuse, and somatic disease.

Exclusion criteria were any history of severe psychiatric disorders (major depression, bipolar disorders, and schizophrenia) in the comparison subjects or in any of their first-degree relatives, substance or alcohol abuse or dependency, medical conditions involving the CNS, and severe head injury. Blood was drawn between 8 a.m. and 7 p.m., but, as opposed to the patient samples, all blood samples from the comparison subjects were not fasting samples. None of the patients or the comparison subjects had any acute infections at the time of blood sampling.

mRNA Analyses

The extraction was done at the same time for patients and comparison subjects and under equal conditions. Details on the RNA isolation, reverse transcription, and real-time polymerase chain reaction are provided in the data supplement that accompanies the online edition of this article. We investigated potential variations of NOTCH4 mRNA expression in subpopulations by isolating and analyzing different blood cells in an additional sample of bipolar disorder patients (N=15) and an age- and sex-matched healthy comparison group (N=15).

Genotyping

Only participants with Caucasian ethnicity were genotyped. The number of individuals in each category eligible for the genotype analysis was as follows: bipolar disorder (N=113), schizophrenia (N=144), psychosis not otherwise specified (N=52), and healthy comparison subjects (N=151). Nineteen SNPs in or around NOTCH4 were genotyped in all patients and comparison subjects with the Affymetrix Genome-Wide Human SNP Array 6.0 (Affymetrix Inc., Santa Clara, Calif.). One additional SNP (rs3131296) was imputed. Ungenotyped markers were imputed by IMPUTE, version 2 (18) using the Utah sample from the 1000 Genomes Project, with ancestry from northern and western Europe as reference.

Routine Laboratory Analyses

Hemoglobin, C-reactive protein, creatinine, alanine aminotransferase, and serum cortisol were measured using standard laboratory methods.

Statistical Analyses

Statistical analyses testing the association between diagnosis and mRNA level were done using the SPSS software package for Windows, version 18.0 (SPSS, Chicago). Data normality was assessed using the one-sample Kolmogorov-Smirnov test. When using regression models and analysis of variance (ANOVA), all skewed data were log-transformed before the analyses. All analyses were two-tailed with a level of significance of p<0.05. Potential differences between the diagnostic groups and the comparison group were investigated using the chi-square test for categorical variables, the Kruskal-Wallis test for continuous variables, and the Mann-Whitney U test for post hoc analyses. The variation in NOTCH4 expression across groups was initially investigated with a simple ANOVA model followed by Tukey’s post hoc analysis and adjusted for covariates in an analysis of covariance (ANCOVA) model. We tested for association between 20 SNPs in or around NOTCH4 and for diagnosis using the allelic test in PLINK (19). Further details are given in the online data supplement.

Results

Demographic and clinical variables are summarized in Table 1. Briefly, patients with bipolar disorder and healthy comparison subjects were slightly older than individuals in the schizophrenia and other psychosis groups. The majority of patients were of European origin (Table 1). The use of tobacco and cannabis was equally distributed in the three patient groups, but use was significantly higher than it was in the comparison group. Intake of alcohol 2 weeks before blood sample collection varied significantly across all groups. The other psychosis group used the highest amount, followed by the bipolar disorder group, the healthy comparison group, and the schizophrenia group (Table 1). Body mass index (BMI) was higher in the schizophrenia group relative to the bipolar disorder and healthy comparison groups (Table 1). The use of antipsychotics and mood stabilizers and the level of PANSS-measured psychotic symptoms varied across the diagnostic groups as expected according to the diagnoses. The schizophrenia group had a higher mean score on mania symptoms as measured by the Young Mania Rating Scale, and the other psychosis group had more depression symptoms than the bipolar disorder group (Table 1).

TABLE 1. Demographic and Clinical Background of Study Samplea
ParameterBipolar Disorder (N=169)Other Psychosis (N=83)Schizophrenia (N=227)Comparison (N=211)Post Hoc Analysis
%N%N%N%N
Gender (male)***36.96261.45160.913856.9120Other psychosis, schizophrenia, comparison > bipolar
Ethnicity (European)***92.315578.36581.318599.5210Comparison > bipolar > other psychosis, schizophrenia
Tobacco (use/day)***58.49951.94357.513118.940Bipolar, other psychosis, schizophrenia > comparison
Cannabis (use/2 weeks)**8.11414.3127.8181.53Bipolar, other psychosis, schizophrenia > comparison
Antipsychotics***50.08564.35378.91790.00Schizophrenia > other psychosis > bipolar
Lithium***13.2220.001.840.00Bipolar > other psychosis, schizophrenia
Antidepressants**38.36532.52727.5620.00Bipolar > schizophrenia
Antiepileptics***45.67714.81217.8400.00Bipolar > other psychosis, schizophrenia
Hypnotics14.2247.4615.5350.00None
MeanSDMeanSDMeanSDMeanSD
Age (years)**33.711.330.410.831.39.333.69.1Bipolar, comparison > other psychosis, schizophrenia
Alcohol (international units/2 weeks)***11.826.413.127.24.412.110.010Other psychosis > bipolar > comparison > schizophrenia
Body mass index**25.84.825.34.926.15.024.53.6Schizophrenia > bipolar, comparison
PANSS total score***45.111.356.014.164.417.5Schizophrenia > other psychosis > bipolar
YMRS total score***3.04.14.64.65.95.2Schizophrenia, other psychosis > bipolar
IDS total score**17.312.522.213.819.513.2Other psychosis > bipolar

a PANSS=Positive and Negative Syndrome Scale, YMRS=Young Mania Rating Scale, IDS=Inventory of Depressive Symptoms. Significant differences in demographic and clinical variables between the four groups were investigated using either the Kruskal-Wallis test or Pearson’s chi-square test.

*p<0.05. **p<0.01. ***p<0.001 (Mann-Whitney U test as post hoc analysis).

TABLE 1. Demographic and Clinical Background of Study Samplea
Enlarge table

NOTCH4 Expression

We found a significant difference in NOTCH4 mRNA levels across the different diagnostic groups (F=7.1, df=3, 686, p<0.0001). As depicted in Figure 1, NOTCH4 mRNA levels were significantly higher in patients with bipolar disorder (mean=2.5, SD=3.3) relative to healthy comparison subjects (mean=1.5, SD=1.4) and patients with schizophrenia (mean=1.6, SD=1.4). Tukey’s post hoc test confirmed bipolar disorder > healthy comparison subjects (p<0.0001) and bipolar disorder > schizophrenia (p=0.001). The difference in NOTCH4 mRNA levels between bipolar disorder (mean=2.5, SD=3.3) and other psychosis (mean=1.7, SD=1.4) was just above the significance level (p=0.09).

FIGURE 1. Mean Levels and Distribution of NOTCH4 mRNA According to Diagnosisa

aNOTCH4 expression levels in whole blood are given as Tukey Box Plots. The bottom, middle, and top of the box are representing the 25th percentile, median, and 75th percentile, respectively. The + represents the mean levels while top and bottom whiskers represent the highest and lowest values that are not extremes (>1.5 times the interquartile range). Outliers are shown as filled circles. The blue shaded area represents the healthy comparison subjects, and the bottom, middle, and top dotted lines represent the 25th percentile, median, and 75th percentile, respectively.

NOTCH4 Expression Adjusted for Confounders

With the exception of lamotrigine, we found no significant effect of medication or number of episodes, hospital admissions, and symptoms on NOTCH4 expression levels (Table ST1 and Table ST2 in the online data supplement). Age (t=−3.5, df=689, p=0.001), BMI (t=−3.6, df=629, p<0.001), and C-reactive protein (t=−2.3, df=649, p=0.03) were inversely associated with NOTCH4 expression, whereas hemoglobin (t=2.1, df=639, p=0.03), lamotrigine (t=2.86, df=689, p=0.004), and alcohol (t=2.8, df=689, p=0.006) were positively associated with NOTCH4 expression. After entering these as covariates in an ANCOVA model and correcting for multiple testing, only bipolar disorder diagnosis remained significantly associated with NOTCH4 expression. As summarized in Table 2, having bipolar disorder explained most of the variance in NOTCH4 expression after adjusting for a range of confounders.

TABLE 2. Analysis of Covariance Investigating Differences in Mean Levels of NOTCH4 mRNAa
VariableFdfpη2Post Hoc Analysis
Age4.410.040.8%
Body mass index5.310.021%
C-reactive protein6.210.011.1%
Lamotrigine2.010.160.4
Hemoglobin8.410.0041.5%
Alcohol2.810.090.5%
Diagnosis7.93<0.00014.2%Bipolar > healthy comparison, schizophrenia

a Adjusted R2=8.6%. Analyses are performed and presented in log-transformed format as a result of skewed data. Bold values remained significant after the Bonferroni correction.

TABLE 2. Analysis of Covariance Investigating Differences in Mean Levels of NOTCH4 mRNAa
Enlarge table

Increased Expression of NOTCH4 in T Cells From Patients With Bipolar Disorder

In whole blood, erythrocytes and platelets could potentially have contributed to NOTCH4 expression in addition to its expression in leukocytes. However, it is unlikely that the positive correlation between NOTCH4 and hemoglobin reflects an important contribution of erythrocytes to NOTCH4 levels. In fact, the level of erythrocytes was significantly lower in bipolar disorder relative to the other groups (F=9.8, df=3, 640, p<0.01), and we found no detectable NOTCH4 transcript in isolated erythrocytes. In contrast, platelets contained mRNA levels of NOTCH4, potentially reflecting the presence of reticulated platelets. However, we found no significant differences in platelet counts between patients with bipolar disorder (N=146) and comparison subjects (N=203) (bipolar patients: mean=261×109/L [SD=65.10]; comparison subjects: mean=249×109/L [SD=51.64]; p=0.2), and in patients with bipolar disorder, NOTCH4 mRNA levels were negatively and not positively associated with platelet counts (r=−0.15, N=634, p=0.067). Another possibility is that the difference in NOTCH4 mRNA levels between bipolar disorder and the other groups could reflect the difference in leukocyte counts and leukocyte subpopulations. However, we found no significant differences in leukocyte counts between patients with bipolar disorder (N=147) and healthy comparison subjects (N=205) (bipolar patients: mean=6.25×109/L [SD=2.11]; comparison subjects: mean=5.92×109/L [SD=1.63]; p=0.3). Also, in patients with bipolar disorder, NOTCH4 mRNA levels were negatively rather than positively associated with total leukocyte counts (r=−0.22, N=638, p=0.009).

NOTCH4 has been linked to T cell pathophysiology (15). When analyzing NOTCH4 expression in isolated T cells and monocytes from 15 patients with bipolar disorder (seven women; mean age=39 years [SD=9]) and 15 sex- and age-matched healthy comparison subjects (seven women; mean age=41 years [SD=11]), we found that T cells contained high NOTCH4 expression with significantly increased mRNA levels in patients with bipolar disorder (bipolar patients: mean=3.80 [SD=0.90]; comparison subjects: mean=1.00 [SD=0.14] [relative expression normalized for β-actin]; p=0.042). In contrast, monocytes contained only a minor amount of NOTCH4 mRNA with no differences between patients and comparison subjects (data not shown).

Diurnal Variation and Fasting or Nonfasting Effect on NOTCH4 Expression

Diurnal variation and nonfasting or fasting condition could also have potentially influenced our results. However, the exact times for comparison sample collections were recorded for 188 out of 211 comparison subjects, and we found no significant differences between mean levels of NOTCH4 according to the time when the blood sample was drawn (F=0.68, df=5, 183, p=0.63). Second, the patient collections were all performed within the same narrow time interval (8 a.m.–10 a.m.) and under the same conditions for the three groups of patients. Third, in 15 healthy comparison subjects, blood samples for whole blood extraction were collected at 9 a.m., 1 p.m., and 4 p.m. Although some diurnal variation occurred, with the highest NOTCH4 mRNA levels in the morning, the differences were not statistically significant (effect of time from repeated measures ANOVA, p=0.62). Finally, when testing the influence of fasting by comparing fasting and nonfasting conditions in 15 healthy comparison subjects (9 p.m.), only minor nonsignificant variations were seen (nonfasting: mean=1.00 [SD=1.05]; fasting: mean=0.84 [SD=0.83]; p=0.64).

Association Between Expression Quantitative Trait Loci and NOTCH4 Expression

The location of the SNPs investigated is depicted in Figure 2. Seven SNPs located upstream of the NOTCH4 gene were associated with NOTCH4 mRNA expression after using the Bonferroni correction, four of which were in linkage disequilibrium (Table 3): rs365053, rs404890, rs389703, and rs9267873 (see Figure SF1 in the online data supplement). We found a significant main effect (Bonferroni-corrected) of SNP on NOTCH4 expression only in comparison subjects after adjusting for age, BMI, c-reactive protein, hemoglobin, and alcohol (rs510321 [p=1.2×105], rs365053 [p=10×104], rs389703 [p=1.1×10−3], rs415929 [p=10×10−3]). In addition, the SNPs rs2071286 and rs3134926 were nominally associated with NOTCH4 expression in comparison subjects. For most of the SNPs, the allelic effect went in the same direction for all groups (Figure SF2 in the online data supplement illustrates the direction of allelic effect). We did not find a significant association or a significant interaction effect between SNPs and bipolar disorder (data not shown). This is probably due to inadequate statistical power, because adequately powered GWAS do find such an association (10).

FIGURE 2. Location of the Single-Nucleotide Polymorphisms Investigated in and Around the NOTCH4 Genea

a Putative single-nucleotide polymorphism associations are shown in blue boxes.

TABLE 3. Association Analysis Between Genotypes and NOTCH4 Expressiona
NOTCH4 Affy Single-Nucleotide PolymorphismAllele Association p Values
Nearest GeneNMinor AlleleMinor Allele FrequencyNominalBonferroni-Corrected
rs510321NOTCH4459A0.1617.1×1081.36×10−6
rs389703NOTCH4459T0.2012.4×1064.6×105
rs365053NOTCH4460G0.2002.6×1064.97×10−5
rs404890NOTCH4457A0.3425.7×1051.08×10−3
rs3134926NOTCH4460G0.2690.00012.2×10−3
rs415929NOTCH4460C0.3000.0010.01
rs9267873NOTCH4459C0.4550.0030.05
rs2071286NOTCH4457T0.2190.020.3
rs2267644NOTCH4456T0.0600.321
rs8365AGER457G0.1710.371
rs391755NOTCH4460G0.0690.541
rs377763NOTCH4455A0.2040.561
rs379464NOTCH4436T0.0530.671
rs206015NOTCH4456A0.0660.751
rs438475NOTCH4453A0.1130.791
rs204991GPSM3458C0.1700.801
rs424232NOTCH4453T0.2190.921
rs204989GPSM3460A0.1680.931
rs204990GPSM3460A0.1690.931
rs3131296bNOTCH4438C0.8590.791

a Bipolar disorder (N=108–113), schizophrenia (N=139–144), psychosis not otherwise specified (N=50–52), and healthy comparison subjects (N=149–151). rs365053, rs404890, rs389703 and rs9267873 were in linkage disequilibrium.

b Analysis for rs3131296 was done using imputed data. Interaction analysis was not performed.

TABLE 3. Association Analysis Between Genotypes and NOTCH4 Expressiona
Enlarge table

Discussion

To our knowledge, this is the first study to show higher mRNA levels of NOTCH4 in whole blood from patients with bipolar disorder relative to healthy comparison subjects, patients with schizophrenia, or patients with other psychotic disorders. In addition, seven SNPs within a 10-kb region upstream of the NOTCH4 gene were significantly associated with NOTCH4 mRNA levels. These associations remained significant after controlling for a range of possible confounders and correcting for multiple testing. Our data indicate that the association between NOTCH4 and bipolar disorder from large GWAS is not restricted to DNA markers, but it is also seen at the mRNA level, supporting the notion that NOTCH4 is of functional importance in disease pathology. Finally, in line with previous studies on Notch biology in immune cells (14, 15), our findings suggest that the enhanced expression of NOTCH4 in the whole blood of patients with bipolar disorder, at least partly, could reflect increased expression in T cells. However, our leukocyte subset data were from relatively few individuals, and caution is needed when interpreting these results.

We identified expression quantitative trait loci to be related to up-regulated NOTCH4 expression. Previous GWAS have identified an association between the genetic markers in NOTCH4 in both bipolar disorder and schizophrenia (2, 11), but we found no association between schizophrenia and NOTCH4 expression. The reason for this apparent discrepancy is not yet clear, but the association of NOTCH4 with bipolar disorder both at the DNA and mRNA levels suggests a stronger link between NOTCH4 and bipolar disorder than with schizophrenia. Whether these cis-expression quantitative trait loci directly enhance NOTCH4 activation or influence NOTCH4 expression through other mechanisms not controlled for in this analysis merits further study. However, our large and well-described sample allowed us to perform an extensive search for confounding factors that could potentially explain why increased NOTCH4 expression is mainly seen in bipolar disorder and not in schizophrenia. Lamotrigine and high alcohol consumption explained some of the variance. Lamotrigine is a prescribed medication for bipolar disorder, and alcohol use is often associated with bipolar disorder (20). However, the association between NOTCH4 mRNA levels and bipolar disorder was seen even after adjusting for these and several other confounders.

NOTCH4 is involved in immune responses, and abnormalities in the immune system have been frequently described in mood disorders. Circulating C-reactive protein may reflect activation of the immune system, and surprisingly, C-reactive protein levels were inversely associated with NOTCH4 mRNA levels. However, while C-reactive protein is a reliable marker of systemic inflammation, it by no means reflects all upstream inflammatory pathways. In fact, the relationship between NOTCH4 and the endothelium may not necessarily be reflected by C-reactive protein. We found some indications that NOTCH4 and C-reactive protein may differently affect vascular endothelial growth factor activity in endothelial cells (2123), potentially suggesting that they may partly reflect different or even opposite pathways. We and others have reported elevated plasma levels of markers of immune activation and signs of increased T cell activation in schizophrenia and bipolar disorder (6, 7, 9, 10). Mice with a constitutively active NOTCH4 are characterized by an increase in immature T cells in their bone marrow, with a reduction in B cells. Importantly, there is some evidence that T cell activation itself may influence mood symptoms, as elevated levels of interleukin-2, a T cell product that also activates these cells, is associated with mania (24). Our finding of enhanced NOTCH4 expression in T cells in a subset of patients with bipolar disorder may further support a link between enhanced NOTCH4, T cell activation, and bipolar disorder.

Genes that are subject to regulation by ischemia-hypoxia may play a role in the neurodevelopmental changes observed in the early stages of schizophrenia (25). The same abnormalities are observed in bipolar disorder at later stages in the course of the illness (25). In this context, NOTCH signaling pathways play a critical role in vascular development and homeostasis (26, 27). Results from animal studies have shown that activation of the NOTCH4 signaling system in the endothelium during embryogenesis causes neuronal cell death and hemorrhage in the cerebral cortex and cerebellum (17). Furthermore, constitutive NOTCH4 activation in endothelial cells inhibits angiogenesis, and up-regulation of the NOTCH ligand Delta-like 4 inhibits vascular endothelial growth factor-induced endothelial cell function (23). This might compromise the vascularization in the adult CNS (28). Enhanced NOTCH4 expression could also contribute to endothelial cell activation through the interaction between activated T cells and the endothelium. Indeed, we have seen enhanced levels of von Willebrand factor in bipolar disorder, demonstrating the presence of endothelium-related inflammation in these patients (10).

NOTCH4 could also be involved in the development of bipolar disorder through more specific neuronal mechanisms. Investigating mRNA levels in postmortem brain tissue is an important and fast-growing field in psychiatric research, but few researchers have specifically investigated NOTCH4 in bipolar disorder. Using the Stanley Genomics Database (http://stanleygenomics.org), we found little variation in the expression levels of NOTCH4 and related genes in bipolar disorder patients (N=49) relative to healthy comparison subjects (N=50) (29). One microarray study of a Stanley Foundation Brain Collection subsample found indications of NOTCH4 down-regulation in the frontal cortices with possible association to psychotropic medication (30), but little is known about the functional mechanisms regulating NOTCH signaling in the brain. One potential mechanism might be the close interaction between the Wnt and NOTCH signaling system during both embryogenesis and adult hippocampal neurogenesis (3133). This is supported by a reported association between bipolar disorder and a gene regulating the Wnt signaling pathway (34), and genome-wide association results from bipolar disorder were recently found to be related to gene networks involving Wnt and NOTCH signaling (35). However, additional microarray studies covering more brain regions are needed to determine the role of NOTCH4 in bipolar disorder neuropathology. Still, the current evidence is in line with the hypothesis that NOTCH4 has a role in abnormal neurodevelopment that leads to bipolar disorder as well as in the initiation of affective episodes during disease progression.

Some limitations in our study should be addressed. First, this was a cross-sectional study and thus offers no certain explanation concerning causality. On the other hand, our sample is large and very well described, which allowed us to control for a range of confounders. Second, despite clear expression in the brains of healthy comparison subjects, to the best of our knowledge, there is limited information concerning NOTCH4 expression in postmortem brains of individuals with schizophrenia and bipolar disorder, and the quality of gene expression profiling is limited by the lack of live tissue biopsies from the affected area in question. Future research should examine if the elevated NOTCH4 mRNA levels in bipolar disorder could reflect a uniform increase in other relevant tissues, such as the brain. Third, although our primary aim was to determine NOTCH4 mRNA expression levels, and the expression quantitative trait loci analysis was a secondary aim, data on SNP genotyping are missing for some of the individuals who were included in the expression analyses. Fourth, the functional mechanisms of the NOTCH4 SNPs or the splicing variants are not yet known and should be explored in future experimental studies.

The development of NOTCH4-targeted inhibition therapies has received much attention, particularly in cancer treatment (36). Our results indicate that patients with bipolar disorder show enhanced NOTCH4 activation, which provides us with new study opportunities for treatment options in this patient group. In light of evidence indicating bipolar disorder as a neuroprogressive disease (37), future research should focus on longitudinal studies of the regulatory mechanisms of NOTCH4 levels in relation to variations in affective symptom levels. Finally, our results indicate that NOTCH4 expression in postmortem brains of individuals with schizophrenia and bipolar disorder should be further investigated.

Conclusions

Our results indicate significantly increased NOTCH4 mRNA levels in patients with bipolar disorder relative to patients with schizophrenia and healthy comparison subjects. Furthermore, we identified three putative expression quantitative trait loci around the NOTCH4 gene that were associated with elevated levels of NOTCH4 expression. This suggests a role for NOTCH4 in bipolar disorder pathophysiology, and mechanisms related to neurodevelopment, endothelium, and inflammation could be involved.

From the Division of Mental Health and Addiction, Oslo University Hospital Ullevål, Oslo, Norway; KG Jebsen Center for Psychosis Research, the Institute of Clinical Medicine, University of Oslo, Oslo; the Department of Psychiatry, Østfold Hospital, Fredrikstad, Norway; the Department of Psychiatric Research, Diakonhjemmet Hospital, Oslo; the Research Institute of Internal Medicine, Oslo University Hospital Rikshospitalet, Oslo; the Faculty of Medicine, University of Oslo, Oslo; the Section of Clinical Immunology and Infectious Diseases, Oslo University Hospital Rikshospitalet, Norway; the Department of Medical Genetics, Oslo University Hospital Ullevål, Oslo; Stavanger University Hospital, Division of Psychiatry, Regional Center for Clinical Psychosis Research, Stavanger, Norway; the Department of Clinical Medicine, Section Psychiatry, University of Bergen, Norway; and Sørlandet Hospital HF, Kristiansand, Norway.
Address correspondence to Dr. Dieset ().

Dr. Dieset has received a research award from Lundbeck. Drs. Dieset, Hope, and Tesli have received travel expenses from Astra Zeneca for a Scandinavian College of Neuropsychopharmacology research conference. Dr. Melle and Dr. Andreassen have received speaker’s honorarium from Janssen and AstraZeneca, and Dr. Andreassen has also received speaker’s honorarium from Bristol-Myers Squibb and GlaxoSmithKline. The other authors report no financial relationships with commercial interests.

Supplementary Material

Supported by the Research Council of Norway (grants 167153/V50, 163070/V50, 175345/V50), South-Eastern and Western Norway Health Authority (123-2004), and Oslo University Hospital Ullevål and the University of Oslo for the Thematic Organized Psychosis Research Study group.

The authors thank Thomas D. Bjella and Eivind Bakken for skillful research administrative assistance.

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