Background and purpose: Infarct volume is a valuable outcome measure in treatment trials of acute ischemic stroke and is strongly associated with functional outcome. Its manual volumetric assessment is, however, too demanding to be implemented in clinical practice. Objective: To assess the value of convolutional neural networks (CNNs) in the automatic segmentation of infarct volume in follow-up CT images in a large population of patients with acute ischemic stroke. Materials and methods: We included CT images of 1026 patients from a large pooling of patients with acute ischemic stroke. A reference standard for the infarct segmentation was generated by manual delineation. We introduce three CNN models for the segmentation of subtle, in...
The aim of this study was to develop a convolutional neural network (CNN) that automatically detects...
A non-contrast cranial computer tomography (ncCT) is often employed for the diagnosis of the early s...
Background and Purpose- Automatic segmentation of cerebral infarction on diffusion-weighted imaging ...
Background and purpose: Infarct volume is a valuable outcome measure in treatment trials of acute is...
Background Computed tomography angiography (CTA) imaging is needed in current guideline-based stroke...
In stroke imaging, CT angiography (CTA) is used for detecting arterial occlusions. These images coul...
Purpose: To develop a deep learning model to segment the acute ischemic infarct on non-contrast Comp...
BACKGROUND AND PURPOSE: Cerebral infarct volume as observed in follow-up CT is an important radiolog...
Magnetic resonance (MR) perfusion imaging non-invasively measures cerebral perfusion, which describe...
Automatic evaluation of 3D volumes is a topic of importance in order to speed up clinical decision m...
Background: Computed tomography perfusion (CTP) is the mainstay to determine possible eligibility fo...
The limited accuracy of cerebral infarct detection on CT images caused by the low contrast of CT hin...
Abstract We determined if a convolutional neural network (CNN) deep learning model can accurately se...
Quantifying the extent and evolution of cerebral edema developing after stroke is an important but c...
The aim of this study was to develop a convolutional neural network (CNN) that automatically detects...
The aim of this study was to develop a convolutional neural network (CNN) that automatically detects...
A non-contrast cranial computer tomography (ncCT) is often employed for the diagnosis of the early s...
Background and Purpose- Automatic segmentation of cerebral infarction on diffusion-weighted imaging ...
Background and purpose: Infarct volume is a valuable outcome measure in treatment trials of acute is...
Background Computed tomography angiography (CTA) imaging is needed in current guideline-based stroke...
In stroke imaging, CT angiography (CTA) is used for detecting arterial occlusions. These images coul...
Purpose: To develop a deep learning model to segment the acute ischemic infarct on non-contrast Comp...
BACKGROUND AND PURPOSE: Cerebral infarct volume as observed in follow-up CT is an important radiolog...
Magnetic resonance (MR) perfusion imaging non-invasively measures cerebral perfusion, which describe...
Automatic evaluation of 3D volumes is a topic of importance in order to speed up clinical decision m...
Background: Computed tomography perfusion (CTP) is the mainstay to determine possible eligibility fo...
The limited accuracy of cerebral infarct detection on CT images caused by the low contrast of CT hin...
Abstract We determined if a convolutional neural network (CNN) deep learning model can accurately se...
Quantifying the extent and evolution of cerebral edema developing after stroke is an important but c...
The aim of this study was to develop a convolutional neural network (CNN) that automatically detects...
The aim of this study was to develop a convolutional neural network (CNN) that automatically detects...
A non-contrast cranial computer tomography (ncCT) is often employed for the diagnosis of the early s...
Background and Purpose- Automatic segmentation of cerebral infarction on diffusion-weighted imaging ...