21 research outputs found
Structural aging of human neurons is the opposite of the changes in schizophrenia
Human mentality develops with age and is altered in psychiatric disorders,
though their underlying mechanism is unknown. In this study, we analyzed
nanometer-scale three-dimensional structures of brain tissues of the anterior
cingulate cortex from eight schizophrenia and eight control cases. The
distribution profiles of neurite curvature of the control cases showed a trend
depending on their age, resulting in an age-correlated decrease in the standard
deviation of neurite curvature (Pearson's r = -0.80, p = 0.018). In contrast to
the control cases, the schizophrenia cases deviate upward from this
correlation, exhibiting a 60% higher neurite curvature compared with the
controls (p = 7.8 x 10^(-4)). The neurite curvature also showed a correlation
with a hallucination score (Pearson's r = 0.80, p = 1.8 x 10^(-4)), indicating
that neurite structure is relevant to brain function. We suggest that neurite
curvature plays a pivotal role in brain aging and can be used as a hallmark to
exploit a novel treatment of schizophrenia. This nano-CT paper is the result of
our decade-long analysis and is unprecedented in terms of number of cases.Comment: 24 pages, 5 figures. arXiv admin note: text overlap with
arXiv:2007.0021
CNVs in Three Psychiatric Disorders
BACKGROUND: We aimed to determine the similarities and differences in the roles of genic and regulatory copy number variations (CNVs) in bipolar disorder (BD), schizophrenia (SCZ), and autism spectrum disorder (ASD).
METHODS: Based on high-resolution CNV data from 8708 Japanese samples, we performed to our knowledge the largest cross-disorder analysis of genic and regulatory CNVs in BD, SCZ, and ASD.
RESULTS: In genic CNVs, we found an increased burden of smaller (500 kb) exonic CNVs in SCZ/ASD. Pathogenic CNVs linked to neurodevelopmental disorders were significantly associated with the risk for each disorder, but BD and SCZ/ASD differed in terms of the effect size (smaller in BD) and subtype distribution of CNVs linked to neurodevelopmental disorders. We identified 3 synaptic genes (DLG2, PCDH15, and ASTN2) as risk factors for BD. Whereas gene set analysis showed that BD-associated pathways were restricted to chromatin biology, SCZ and ASD involved more extensive and similar pathways. Nevertheless, a correlation analysis of gene set results indicated weak but significant pathway similarities between BD and SCZ or ASD (r = 0.25–0.31). In SCZ and ASD, but not BD, CNVs were significantly enriched in enhancers and promoters in brain tissue.
CONCLUSIONS: BD and SCZ/ASD differ in terms of CNV burden, characteristics of CNVs linked to neurodevelopmental disorders, and regulatory CNVs. On the other hand, they have shared molecular mechanisms, including chromatin biology. The BD risk genes identified here could provide insight into the pathogenesis of BD