OBJECTIVES: The purpose of this study was to build a deep learning model to derive labels from neuroradiology reports and assign these to the corresponding examinations, overcoming a bottleneck to computer vision model development. METHODS: Reference-standard labels were generated by a team of neuroradiologists for model training and evaluation. Three thousand examinations were labelled for the presence or absence of any abnormality by manually scrutinising the corresponding radiology reports ('reference-standard report labels'); a subset of these examinations (n = 250) were assigned 'reference-standard image labels' by interrogating the actual images. Separately, 2000 reports were labelled for the presence or absence of 7 specialised categ...
Treatment selection is becoming increasingly more important in acute ischemic stroke patient care. C...
Big Data promises to advance science through data-driven discovery. However, many standard lab proto...
Automatic methods for feature extraction, volumetry, and morphometric analysis in clinical neuroscie...
Funding: This work is part of the Industrial Centre for AI Research in digital Diagnostics (iCAIRD) ...
The goal of this PhD thesis was to address some recurrent limitations that are associated with Deep ...
Automated disease classification systems can assist radiologists by reducing workload while initiati...
Gliomas are the most frequent primary brain tumors in adults. Glioma change detection aims at findin...
Introduction: Head CT scans are a standard first-line tool used by physicians in the diagnosis of ne...
Deep learning methods are extremely promising machine learning tools to analyze neuroimaging data. H...
Modern machine learning pipelines, in particular those based on deep learning (DL) models, require l...
Background Deep learning has the potential to transform health care; however, substantial expertise ...
International audiencePurpose: Computed tomography (CT) has the advantages of being low cost and non...
Advances in deep learning have led to the development of neural network algorithms which today rival...
Application of machine learning and deep learning methods on medical imaging aims to create systems ...
Purpose: Deep learning (DL) algorithms have shown promising results for brain tumor segmentation in ...
Treatment selection is becoming increasingly more important in acute ischemic stroke patient care. C...
Big Data promises to advance science through data-driven discovery. However, many standard lab proto...
Automatic methods for feature extraction, volumetry, and morphometric analysis in clinical neuroscie...
Funding: This work is part of the Industrial Centre for AI Research in digital Diagnostics (iCAIRD) ...
The goal of this PhD thesis was to address some recurrent limitations that are associated with Deep ...
Automated disease classification systems can assist radiologists by reducing workload while initiati...
Gliomas are the most frequent primary brain tumors in adults. Glioma change detection aims at findin...
Introduction: Head CT scans are a standard first-line tool used by physicians in the diagnosis of ne...
Deep learning methods are extremely promising machine learning tools to analyze neuroimaging data. H...
Modern machine learning pipelines, in particular those based on deep learning (DL) models, require l...
Background Deep learning has the potential to transform health care; however, substantial expertise ...
International audiencePurpose: Computed tomography (CT) has the advantages of being low cost and non...
Advances in deep learning have led to the development of neural network algorithms which today rival...
Application of machine learning and deep learning methods on medical imaging aims to create systems ...
Purpose: Deep learning (DL) algorithms have shown promising results for brain tumor segmentation in ...
Treatment selection is becoming increasingly more important in acute ischemic stroke patient care. C...
Big Data promises to advance science through data-driven discovery. However, many standard lab proto...
Automatic methods for feature extraction, volumetry, and morphometric analysis in clinical neuroscie...