Previous studies have shown that there is a strong correlation between radiologists' diagnoses and their gaze when reading medical images. The extent to which gaze is attracted by content in a visual scene can be characterised as visual saliency. There is a potential for the use of visual saliency in computer-aided diagnosis in radiology. However, little is known about what methods are effective for diagnostic images, and how these methods could be adapted to address specific applications in diagnostic imaging. In this study, we investigate 20 state-of-the-art saliency models including 10 traditional models and 10 deep learning-based models in predicting radiologists' visual attention while reading 196 mammograms. We found that deep learnin...
EUSIPCO, 28th European Signal Processing Conference, AMSTERDAM, PAYS-BAS, 18-/01/2021 - 22/01/2021Ey...
Screening mammography has been widely used over the last few decades to detect breast cancers at an ...
In this work, we present RadioTransformer, a novel visual attention-driven transformer framework, th...
Previous studies have shown that there is a strong correlation between radiologists' diagnoses and t...
Previous studies have shown that there is a strong correlation between radiologists' diagnoses and t...
Radiologists’ eye-movement during diagnostic image reading reflects their personal training and expe...
Radiologists’ eye movements during medical image interpretation reflect their perceptual-cognitive b...
The interpretability of medical image analysis models is considered a key research field. We use a d...
Background and objectivesSaliency refers to the visual perception quality that makes objects in a sc...
Radiologists are trained professionals who use medical images to obtain clinically relevant informat...
Eye-tracking technology has become a widely used means to understand how radiologists perceive and i...
OBJECTIVE: The aim of this study was to determine whether machine learning could reduce the number o...
International audienceComputational modeling of visual attention is an active research topic in the ...
Visual attention is an important mechanism in our human vision system, which filters out redundant a...
When deep neural network (DNN) was first introduced to the medical image analysis community, researc...
EUSIPCO, 28th European Signal Processing Conference, AMSTERDAM, PAYS-BAS, 18-/01/2021 - 22/01/2021Ey...
Screening mammography has been widely used over the last few decades to detect breast cancers at an ...
In this work, we present RadioTransformer, a novel visual attention-driven transformer framework, th...
Previous studies have shown that there is a strong correlation between radiologists' diagnoses and t...
Previous studies have shown that there is a strong correlation between radiologists' diagnoses and t...
Radiologists’ eye-movement during diagnostic image reading reflects their personal training and expe...
Radiologists’ eye movements during medical image interpretation reflect their perceptual-cognitive b...
The interpretability of medical image analysis models is considered a key research field. We use a d...
Background and objectivesSaliency refers to the visual perception quality that makes objects in a sc...
Radiologists are trained professionals who use medical images to obtain clinically relevant informat...
Eye-tracking technology has become a widely used means to understand how radiologists perceive and i...
OBJECTIVE: The aim of this study was to determine whether machine learning could reduce the number o...
International audienceComputational modeling of visual attention is an active research topic in the ...
Visual attention is an important mechanism in our human vision system, which filters out redundant a...
When deep neural network (DNN) was first introduced to the medical image analysis community, researc...
EUSIPCO, 28th European Signal Processing Conference, AMSTERDAM, PAYS-BAS, 18-/01/2021 - 22/01/2021Ey...
Screening mammography has been widely used over the last few decades to detect breast cancers at an ...
In this work, we present RadioTransformer, a novel visual attention-driven transformer framework, th...