This paper focuses on the thorax disease classification problem in chest X-ray (CXR) images. Different from the generic image classification task, a robust and stable CXR image analysis system should consider the unique characteristics of CXR images. Particularly, it should be able to: 1) automatically focus on the disease-critical regions, which usually are of small sizes; 2) adaptively capture the intrinsic relationships among different disease features and utilize them to boost the multi-label disease recognition rates jointly. In this paper, we propose to learn discriminative features with a two-branch architecture, named ConsultNet, to achieve those two purposes simultaneously. ConsultNet consists of two components. First, an informati...
Image classification, the process of categorizing and labeling groups of pixels or vectors within an...
This work proposes a method to classify tuberculosis (TB) disease in a chest radiograph using convol...
Conventionally, convolutional neural networks (CNNs) have been used to identify and detect thorax di...
Abstract Background Chest X-rays are the most commonly available and affordable radiological examina...
Pulmonary diseases are life-threatening diseases commonly observed worldwide, and timely diagnosis o...
The chest X-ray stands as a commonly employed radiological examination for identifying thoracic ailm...
The applications of deep learning have broadened their spectrum in the field of medical research. On...
Image processing has been progressing far in medical as it is one of the main techniques used in the...
Chest X-ray radiography (CXR) is among the most frequently used medical imaging modalities. It has a...
Chest X-ray radiographic (CXR) imagery enables earlier and easier lung disease diagnosis. Therefore,...
Thoracic disease detection from chest radiographs using deep learning methods has been an active are...
This work proposes a method to classify tuberculosis (TB) disease in a chest radiograph using convol...
The field of computer vision has had exponential progress in a wide range of applications due to the...
Interpreting chest x-ray (CXR) to find anomalies in the thoracic region is a tedious job and can con...
This article is devoted to the research and development of methods for classifying pathologies on di...
Image classification, the process of categorizing and labeling groups of pixels or vectors within an...
This work proposes a method to classify tuberculosis (TB) disease in a chest radiograph using convol...
Conventionally, convolutional neural networks (CNNs) have been used to identify and detect thorax di...
Abstract Background Chest X-rays are the most commonly available and affordable radiological examina...
Pulmonary diseases are life-threatening diseases commonly observed worldwide, and timely diagnosis o...
The chest X-ray stands as a commonly employed radiological examination for identifying thoracic ailm...
The applications of deep learning have broadened their spectrum in the field of medical research. On...
Image processing has been progressing far in medical as it is one of the main techniques used in the...
Chest X-ray radiography (CXR) is among the most frequently used medical imaging modalities. It has a...
Chest X-ray radiographic (CXR) imagery enables earlier and easier lung disease diagnosis. Therefore,...
Thoracic disease detection from chest radiographs using deep learning methods has been an active are...
This work proposes a method to classify tuberculosis (TB) disease in a chest radiograph using convol...
The field of computer vision has had exponential progress in a wide range of applications due to the...
Interpreting chest x-ray (CXR) to find anomalies in the thoracic region is a tedious job and can con...
This article is devoted to the research and development of methods for classifying pathologies on di...
Image classification, the process of categorizing and labeling groups of pixels or vectors within an...
This work proposes a method to classify tuberculosis (TB) disease in a chest radiograph using convol...
Conventionally, convolutional neural networks (CNNs) have been used to identify and detect thorax di...