Javascript must be enabled to continue!
S152. DIAGNOSTIC CLASSIFICATION OF SCHIZOPHRENIA USING 3D CONVOLUTIONAL NEURAL NETWORK WITH RESTING-STATE FUNCTIONAL MRI
View through CrossRef
Abstract
Background
Several machine-learning (ML) algorithms have been deployed in the diagnostic classification of schizophrenia. Compared to other ML methods, the 3D convolutional neural network (CNN) has an advantage of learning complex and subtle patterns in data and preserving spatial information, which is a more suitable tool for brain imaging data. Although resting-state functional MRI (rsfMRI) data has been used in previous ML studies relating to the diagnostic classification of schizophrenia, a limited number of studies have been conducted using resting-state functional connectivity resulted from group independent component analysis (ICA) and dual regression. The objective of this study was to investigate whether a successful diagnostic classification of schizophrenia vs. healthy controls could be achieved by the 3D CNN using resting-state networks in which areas with a significant group difference in activity existed.
Methods
T1 and rsfMRI data were collected in 46 patients with recent-onset schizophrenia and 22 healthy controls. In the pre-processing steps of rsfMRI, the ICA-based automatic removal of motion artifacts was applied to subject-level ICA results and the resulting rsfMRI data were temporally concatenated for group ICA and dual regression. The executive control and auditory networks had areas with significantly higher activity in the control group compared with the patient group. The independent components (ICs) respective to the executive control and auditory networks were used as input for the 3D CNN model which was developed to discriminate the schizophrenia patients from the healthy controls.
Results
The 3D CNN model using the executive control and auditory networks as inputs showed classification accuracies of 65~70%, and error rates of 30~35% approximately.
Discussion
Our findings suggest that the 3D CNN model using rsfMRI data can be useful for learning patterns implicated in schizophrenia and identifying discriminative patterns of schizophrenia in brain imaging data.
Oxford University Press (OUP)
Title: S152. DIAGNOSTIC CLASSIFICATION OF SCHIZOPHRENIA USING 3D CONVOLUTIONAL NEURAL NETWORK WITH RESTING-STATE FUNCTIONAL MRI
Description:
Abstract
Background
Several machine-learning (ML) algorithms have been deployed in the diagnostic classification of schizophrenia.
Compared to other ML methods, the 3D convolutional neural network (CNN) has an advantage of learning complex and subtle patterns in data and preserving spatial information, which is a more suitable tool for brain imaging data.
Although resting-state functional MRI (rsfMRI) data has been used in previous ML studies relating to the diagnostic classification of schizophrenia, a limited number of studies have been conducted using resting-state functional connectivity resulted from group independent component analysis (ICA) and dual regression.
The objective of this study was to investigate whether a successful diagnostic classification of schizophrenia vs.
healthy controls could be achieved by the 3D CNN using resting-state networks in which areas with a significant group difference in activity existed.
Methods
T1 and rsfMRI data were collected in 46 patients with recent-onset schizophrenia and 22 healthy controls.
In the pre-processing steps of rsfMRI, the ICA-based automatic removal of motion artifacts was applied to subject-level ICA results and the resulting rsfMRI data were temporally concatenated for group ICA and dual regression.
The executive control and auditory networks had areas with significantly higher activity in the control group compared with the patient group.
The independent components (ICs) respective to the executive control and auditory networks were used as input for the 3D CNN model which was developed to discriminate the schizophrenia patients from the healthy controls.
Results
The 3D CNN model using the executive control and auditory networks as inputs showed classification accuracies of 65~70%, and error rates of 30~35% approximately.
Discussion
Our findings suggest that the 3D CNN model using rsfMRI data can be useful for learning patterns implicated in schizophrenia and identifying discriminative patterns of schizophrenia in brain imaging data.
Related Results
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Penerapan Metode Convolutional Neural Network untuk Diagnosa Penyakit Alzheimer
Penerapan Metode Convolutional Neural Network untuk Diagnosa Penyakit Alzheimer
Abstract— Alzheimer's disease is a neurodegenerative disease that develops gradually, and is associated with cardiovascular and cerebrovascular problems. Alzheimer's is a serious d...
T78. MORTALITY IN PATIENTS WITH SCHIZOPHRENIA ADMITTED FOR INCIDENT ISCHEMIC STROKE: A POPULATION-BASED COHORT STUDY
T78. MORTALITY IN PATIENTS WITH SCHIZOPHRENIA ADMITTED FOR INCIDENT ISCHEMIC STROKE: A POPULATION-BASED COHORT STUDY
Abstract
Background
Evidence shows that schizophrenia is associated with increased incidence of cardiovascular diseases (CVD), i...
T176. INSIGHTS INTO THE ROLE OF ORAL AND GUT MICROBIOME IN THE PATHOGENESIS OF SCHIZOPHRENIA
T176. INSIGHTS INTO THE ROLE OF ORAL AND GUT MICROBIOME IN THE PATHOGENESIS OF SCHIZOPHRENIA
Abstract
Background
The role of oral and gut microbiomes in the pathogenesis of schizophrenia has recently come to light with th...
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Abstract
Background:To explore whether there is abnormality of neonatal brains’ MRI and BAEP with different bilirubin levels, and to provide an objective basis for early di...
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Abstract
Background:To explore whether there is abnormality of neonatal brains’ MRI and BAEP with different bilirubin levels, and to provide an objective basis for early di...
Differential Diagnosis of Neurogenic Thoracic Outlet Syndrome: A Review
Differential Diagnosis of Neurogenic Thoracic Outlet Syndrome: A Review
Abstract
Thoracic outlet syndrome (TOS) is a complex and often overlooked condition caused by the compression of neurovascular structures as they pass through the thoracic outlet. ...
Oscillatory traveling waves reveal predictive coding abnormalities in schizophrenia
Oscillatory traveling waves reveal predictive coding abnormalities in schizophrenia
AbstractThe computational mechanisms underlying psychiatric disorders are hotly debated. One hypothesis, grounded in the Bayesian predictive coding framework, proposes that schizop...


