New Neuroimaging Method Help Improve Schizophrenia Diagnosis
The research is part of a collaboration by experts from the University of Bari Aldo Moro, the Lieber Institute of Brain Development and the Tri-institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS) based at Georgia State University.
The study used new analytic approaches developed at the TReNDS center. Researchers used a hybrid, data-driven method called Neuromark to extract reliable brain networks from the neuroimaging data which were then further analyzed in the study.
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Researchers started with functional MRI scans (fMRI) to detect age-related changes in brain connectivity and their association with schizophrenia risk. The research identified high-risk individuals for developing psychosis during late adolescence and early adulthood.
Genetic Risk for Schizophrenia Detected in Brain Network Interactions
“This study combined over 9,000 data sets using an approach which computes functional brain networks adaptively while also allowing us to summarize and compare across individuals,” said Distinguished University Professor Vince Calhoun, director of the TReNDS center. “This led us to a really interesting result showing that genetic risk for schizophrenia is detectable in brain network interactions even for those who do not have schizophrenia, and this change reduces with age. These results also motivate us to do further investigation into the potential of functional brain network interactions to be used as an early risk detector.”
The team analyzed data from 9,236 individuals in different age stages acquired by the University of Bari Aldo Moro, the Lieber Institute of Brain Development, the U.K. Biobank, the Adolescent Brain Cognitive Development Study and the Philadelphia Neurodevelopmental Cohort. Using fMRI scans, genetic and clinical measures, they found that alterations in prefrontal-sensorimotor and cerebellar-occipitoparietal brain connections are linked to genetic risk for schizophrenia. These alterations were observed in patients with schizophrenia, their neurotypical siblings and those displaying under-threshold psychotic symptoms.
Roberta Passiatore, a visiting fellow from the University of Bari Aldo Moro in Bari, Italy, and first author of the study, said researchers found alterations in the age-related network connectivity specifically during late adolescence and early adulthood. Schizophrenia symptoms typically develop early in life, often beginning in the mid-20s, with early onset occurring before 18.
The researchers found that younger individuals with increased risk have similar network connectivity as the brains seen in older patients. These findings could help identify a patient’s risk for developing disease later in life.
“Visiting TReNDS under the expert guidance of Professor Calhoun has been an exceptional experience. It provided me with a unique opportunity to develop an innovative approach that led to the discovery of a distinct brain signature for assessing the risk of schizophrenia by pooling multiple functional acquisitions,” Passiatore said. “These findings trace a risk-related brain trajectory across multiple age stages with the potential to enhance our understanding of the disorder and to improve early diagnosis and intervention efforts, with a significant impact on the lives of at-risk individuals.”
The study highlights the importance of an age-oriented approach and leveraging multiple scans to identify risk in brain networks and potential genetic associations.
Source: Eurekalert
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