The stress-vulnerability model on the path to schizophrenia: Interaction between BDNF methylation and schizotypy on the resting-state brain network

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作者
Hye Yoon Park
Minji Bang
Eunchong Seo
Se Jun Koo
Eun Lee
Seung-Koo Lee
Suk Kyoon An
机构
[1] Yonsei University Wonju College of Medicine,Department of Psychiatry
[2] Yonsei University College of Medicine,Section of Self, Affect and Neuroscience, Institute of Behavioral Science in Medicine
[3] CHA Bundang Medical Center,Department of Psychiatry
[4] CHA University,Graduate Program in Cognitive Science
[5] Yonsei University,Department of Psychiatry
[6] Yonsei University College of Medicine,Department of Radiology
[7] Severance Hospital,undefined
[8] Yonsei University College of Medicine,undefined
[9] Severance Hospital,undefined
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摘要
The interplay between schizophrenia liability and environmental influences has been considered to be responsible for the development of schizophrenia. Recent neuroimaging studies have linked aberrant functional connectivity (FC) between the default-mode network (DMN) and the frontoparietal network (FPN) in the resting-state to the underlying neural mechanism of schizophrenia. By using schizotypy as the proxy for genetic-based liability to schizophrenia and methylation of brain-derived neurotrophic factor (BDNF) to represent environmental exposure, this study investigated the impact of the interaction between vulnerability and the environment on the neurobiological substrates of schizophrenia. Participants in this study included 101 healthy adults (HC) and 46 individuals with ultra-high risk for psychosis (UHR). All participants were tested at resting-state by functional magnetic resonance imaging, and group-independent component analysis was used to identify the DMN and the FPN. The Perceptual Aberration Scale (PAS) was used to evaluate the schizotypy level. The methylation status of BDNF was measured by pyrosequencing. For moderation analysis, the final sample consisted of 83 HC and 32 UHR individuals. UHR individuals showed reduced DMN-FPN network FC compared to healthy controls. PAS scores significantly moderated the relationship between the percentage of BDNF methylation and DMN-FPN network FC. The strength of the positive relationship between BDNF methylation and the network FC was reduced when the schizotypy level increased. These findings support the moderating role of schizotypy on the neurobiological mechanism of schizophrenia in conjunction with epigenetic changes.
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