In a recent review, it was suggested that much larger cohorts are needed to prove the diagnostic value of neuroimaging biomarkers in psychiatry. While within a sample, an increase of diagnostic accuracy of schizophrenia (SZ) with number of subjects (N) has been shown, the relationship between N and accuracy is completely different between studies. Using data from a recent meta-analysis of machine learning (ML) in imaging SZ, we found that while low-N studies can reach 90% and higher accuracy, above N/2 = 50 the maximum accuracy achieved steadily drops to below 70% for N/2 > 150. We investigate the role N plays in the wide variability in accuracy results in SZ studies (63-97%). We hypothesize that the underlying cause of the decrease in accu...
Due to a lack of objective biomarkers, psychiatric diagnoses still rely strongly on patient reportin...
Despite abundant research into the neurobiology of mental disorders, to date neurobiological insight...
ImportanceBetween-individual variability in brain structure is determined by gene-environment intera...
In a recent review, it was suggested that much larger cohorts are needed to prove the diagnostic val...
The emergence of machine learning (ML) techniques has opened up new avenues for identifying biomarke...
The emergence of machine learning (ML) techniques has opened up new avenues for identifying biomarke...
Recently, machine learning techniques have been widely applied in discriminative studies of schizoph...
Psychiatric diseases are very heterogeneous both in clinical manifestation and etiology. With the re...
Machine-learning approaches are becoming commonplace in the neuroimaging literature as potential dia...
AbstractBackground The development of machine learning models for aiding in the diagnosis of mental ...
We currently observe a disconcerting phenomenon in machine learning studies in psychiatry: While we ...
AbstractStandard univariate analyses of brain imaging data have revealed a host of structural and fu...
The aim of this thesis is to investigate the ability of ML models to make clinically useful predicti...
Schizophrenia is a severe mental disorder and one of the leading causes of disease burden worldwide....
Schizophrenia is a severe mental disorder and one of the leading causes of disease burden worldwide....
Due to a lack of objective biomarkers, psychiatric diagnoses still rely strongly on patient reportin...
Despite abundant research into the neurobiology of mental disorders, to date neurobiological insight...
ImportanceBetween-individual variability in brain structure is determined by gene-environment intera...
In a recent review, it was suggested that much larger cohorts are needed to prove the diagnostic val...
The emergence of machine learning (ML) techniques has opened up new avenues for identifying biomarke...
The emergence of machine learning (ML) techniques has opened up new avenues for identifying biomarke...
Recently, machine learning techniques have been widely applied in discriminative studies of schizoph...
Psychiatric diseases are very heterogeneous both in clinical manifestation and etiology. With the re...
Machine-learning approaches are becoming commonplace in the neuroimaging literature as potential dia...
AbstractBackground The development of machine learning models for aiding in the diagnosis of mental ...
We currently observe a disconcerting phenomenon in machine learning studies in psychiatry: While we ...
AbstractStandard univariate analyses of brain imaging data have revealed a host of structural and fu...
The aim of this thesis is to investigate the ability of ML models to make clinically useful predicti...
Schizophrenia is a severe mental disorder and one of the leading causes of disease burden worldwide....
Schizophrenia is a severe mental disorder and one of the leading causes of disease burden worldwide....
Due to a lack of objective biomarkers, psychiatric diagnoses still rely strongly on patient reportin...
Despite abundant research into the neurobiology of mental disorders, to date neurobiological insight...
ImportanceBetween-individual variability in brain structure is determined by gene-environment intera...