We show that event-related potentials can be used to detect schizophrenia with a high degree of precision. With our machine learning algorithm we achieve a balanced accuracy of 96.4 , which exceeds all results with comparable approaches. For this we use additional sensors on the left and right hemisphere in addition to the common central sensors. The experimental design when recording the data takes into account the dysfunction of the schizophrenic efference copy. Due to its serious consequences, schizophrenia is a social issue in which early detection and prevention plays a central role. In the future, machine learning could be used to support early interventions. When the first symptoms appear, potential patients could be tested for the d...
Schizophrenia is a complex psychiatric disorder, typically diagnosed through symptomatic evidence co...
Background: Schizophrenia can be interpreted as a pathology involving the neocortex whose cognitive ...
Previous studies applying machine learning methods to psychosis have primarily been concerned with t...
While diagnosing schizophrenia by physicians based on patients\u27 history and their overall mental ...
While diagnosing schizophrenia by physicians based on patients' history and their overall mental hea...
In recent years, machine learning has gained huge traction. Researchers have continuously applied ma...
Schizophrenia is a major psychiatric disorder that significantly reduces the quality of life. Early ...
Schizophrenia (SZ) is a mental heterogeneous psychiatric disorder with unknown cause. Neuroscientist...
Recently, an increasing number of researchers have endeavored to develop practical tools for diagnos...
In this work we propose a machine learning (ML) method to aid in the diagnosis of schizophrenia usin...
In the search for the biomarkers of schizophrenia, event-related potential (ERP) deficits obtained b...
Since previous machine-learning methods for the detection of schizophrenia often have a high degree ...
The prospective identification of children likely to develop schizophrenia is a vital tool to suppor...
Background: Executive dysfunction has repeatedly been proposed as a robust and promising substrate o...
Artificial Intelligence in healthcare employs machine learning algorithms to emulate human cognition...
Schizophrenia is a complex psychiatric disorder, typically diagnosed through symptomatic evidence co...
Background: Schizophrenia can be interpreted as a pathology involving the neocortex whose cognitive ...
Previous studies applying machine learning methods to psychosis have primarily been concerned with t...
While diagnosing schizophrenia by physicians based on patients\u27 history and their overall mental ...
While diagnosing schizophrenia by physicians based on patients' history and their overall mental hea...
In recent years, machine learning has gained huge traction. Researchers have continuously applied ma...
Schizophrenia is a major psychiatric disorder that significantly reduces the quality of life. Early ...
Schizophrenia (SZ) is a mental heterogeneous psychiatric disorder with unknown cause. Neuroscientist...
Recently, an increasing number of researchers have endeavored to develop practical tools for diagnos...
In this work we propose a machine learning (ML) method to aid in the diagnosis of schizophrenia usin...
In the search for the biomarkers of schizophrenia, event-related potential (ERP) deficits obtained b...
Since previous machine-learning methods for the detection of schizophrenia often have a high degree ...
The prospective identification of children likely to develop schizophrenia is a vital tool to suppor...
Background: Executive dysfunction has repeatedly been proposed as a robust and promising substrate o...
Artificial Intelligence in healthcare employs machine learning algorithms to emulate human cognition...
Schizophrenia is a complex psychiatric disorder, typically diagnosed through symptomatic evidence co...
Background: Schizophrenia can be interpreted as a pathology involving the neocortex whose cognitive ...
Previous studies applying machine learning methods to psychosis have primarily been concerned with t...