International audiencePurpose: Computed tomography (CT) has the advantages of being low cost and noninvasive and is a primary diagnostic method for brain diseases. However, it is a challenge for junior radiologists to diagnose CT images accurately and comprehensively. It is necessary to build a system that can help doctors diagnose and provide an explanation of the predictions. Despite the success of deep learning algorithms in the field of medical image analysis, the task of brain disease classification still faces challenges: Researchers lack attention to complex manual labeling requirements and the incompleteness of prediction explanations. More importantly, most studies only measure the performance of the algorithm, but do not measure t...
In this work, we present RadioTransformer, a novel visual attention-driven transformer framework, th...
Abstract. Currently, interpretation of medical images is almost exclusively made by specialized phys...
The practical application of deep learning methods in the medical domain has many challenges. Patho...
International audiencePurpose: Computed tomography (CT) has the advantages of being low cost and non...
Funding: This work is part of the Industrial Centre for AI Research in digital Diagnostics (iCAIRD) ...
BACKGROUND: Intracranial hemorrhage (ICH) requires emergent medical treatment for positive outcomes....
Modern machine learning pipelines, in particular those based on deep learning (DL) models, require l...
Computed Tomography (CT) images are cross-sectional images of any specific area of a human body whic...
Background and objective: Intracranial hemorrhage (ICH) is a life-threatening emergency that can lea...
OBJECTIVES: The purpose of this study was to build a deep learning model to derive labels from neuro...
Computed tomography (CT) of the head is used worldwide to diagnose neurologic emergencies. However, ...
Currently, interpretation of medical images is almost exclusively made by specialized physicians. Al...
Introduction: Head CT scans are a standard first-line tool used by physicians in the diagnosis of ne...
In recent years, computer-assisted diagnostic systems increasingly gained interest through the use ...
Purpose:To elucidate the effect of deep learning-based computer-assisted detection (CAD) on the perf...
In this work, we present RadioTransformer, a novel visual attention-driven transformer framework, th...
Abstract. Currently, interpretation of medical images is almost exclusively made by specialized phys...
The practical application of deep learning methods in the medical domain has many challenges. Patho...
International audiencePurpose: Computed tomography (CT) has the advantages of being low cost and non...
Funding: This work is part of the Industrial Centre for AI Research in digital Diagnostics (iCAIRD) ...
BACKGROUND: Intracranial hemorrhage (ICH) requires emergent medical treatment for positive outcomes....
Modern machine learning pipelines, in particular those based on deep learning (DL) models, require l...
Computed Tomography (CT) images are cross-sectional images of any specific area of a human body whic...
Background and objective: Intracranial hemorrhage (ICH) is a life-threatening emergency that can lea...
OBJECTIVES: The purpose of this study was to build a deep learning model to derive labels from neuro...
Computed tomography (CT) of the head is used worldwide to diagnose neurologic emergencies. However, ...
Currently, interpretation of medical images is almost exclusively made by specialized physicians. Al...
Introduction: Head CT scans are a standard first-line tool used by physicians in the diagnosis of ne...
In recent years, computer-assisted diagnostic systems increasingly gained interest through the use ...
Purpose:To elucidate the effect of deep learning-based computer-assisted detection (CAD) on the perf...
In this work, we present RadioTransformer, a novel visual attention-driven transformer framework, th...
Abstract. Currently, interpretation of medical images is almost exclusively made by specialized phys...
The practical application of deep learning methods in the medical domain has many challenges. Patho...