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New development in schizophrenia treatment

Schizophrenia is a chronic brain disorder that affects a person's ability to think, feel, and behave clearly. Researchers have developed a new tool for improve its treatment.

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Published : Jun 29, 2020, 1:33 PM IST

Updated : Jun 29, 2020, 4:22 PM IST

Researchers have developed tools to improve the analysis of functional magnetic resonance imaging (fMRI) data which may pave the way for improving schizophrenia treatment.

The image analysis method developed by the researchers at the University of Maryland, Baltimore County (UMBC) in the US is called independent vector analysis (IVA) for common subspace extraction (CS).

Through this method, they were able to categorise subgroups of functional MRI data based solely on brain activity, proving that there is a connection between brain activity and certain mental illnesses, said the study published in the journal NeuroImage.

In particular, they were able to identify subgroups of schizophrenia patients using the functional MRI data that they analysed.

Previously, there was not a clear way to group schizophrenia in patients based on brain imaging alone, but the methods developed by UMBC researchers showed that there is a significant connection between a patient's brain activity and their diagnoses.

"The most exciting part is that we found out the identified subgroups possess clinical significance by looking at their diagnostic symptoms," explained Qunfang Long, a Ph.D. candidate at UMBC.

"This finding encouraged us to put more effort into the study of sub-types of patients with schizophrenia using neuroimaging data."

Their work can assist in the diagnosis and treatment of patients with mental illnesses that can be difficult to identify.

It can also show medical practitioners whether the current treatments have or have not been working based on image groupings.

"Now that data-driven methods have gained popularity, a big challenge has been capturing the variability for each subject while simultaneously performing analysis on fMRI datasets from a large number of subjects," said Tulay Adali, Professor at UMBC.

"Now we can perform this analysis effectively, and can identify meaningful groupings of subjects," Adali said.

Researchers have developed tools to improve the analysis of functional magnetic resonance imaging (fMRI) data which may pave the way for improving schizophrenia treatment.

The image analysis method developed by the researchers at the University of Maryland, Baltimore County (UMBC) in the US is called independent vector analysis (IVA) for common subspace extraction (CS).

Through this method, they were able to categorise subgroups of functional MRI data based solely on brain activity, proving that there is a connection between brain activity and certain mental illnesses, said the study published in the journal NeuroImage.

In particular, they were able to identify subgroups of schizophrenia patients using the functional MRI data that they analysed.

Previously, there was not a clear way to group schizophrenia in patients based on brain imaging alone, but the methods developed by UMBC researchers showed that there is a significant connection between a patient's brain activity and their diagnoses.

"The most exciting part is that we found out the identified subgroups possess clinical significance by looking at their diagnostic symptoms," explained Qunfang Long, a Ph.D. candidate at UMBC.

"This finding encouraged us to put more effort into the study of sub-types of patients with schizophrenia using neuroimaging data."

Their work can assist in the diagnosis and treatment of patients with mental illnesses that can be difficult to identify.

It can also show medical practitioners whether the current treatments have or have not been working based on image groupings.

"Now that data-driven methods have gained popularity, a big challenge has been capturing the variability for each subject while simultaneously performing analysis on fMRI datasets from a large number of subjects," said Tulay Adali, Professor at UMBC.

"Now we can perform this analysis effectively, and can identify meaningful groupings of subjects," Adali said.

Last Updated : Jun 29, 2020, 4:22 PM IST
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