Lung segmentation is usually the first step of lung CT image analysis and plays an important role in lung disease diagnosis. We propose an efficient end-to-end fully convolutional neural network to segment lungs with different diseases in CT images. We introduce a multi-instance loss and a conditional adversary loss to the neural network in order to solve the segmentation problem for more severe pathological conditions. Our method is capable of solving the lung segmentation problem under normal, moderate and severe pathological conditions, which is validated on 3 public benchmark datasets with different diseases
Segmentation of pulmonary X-ray computed tomography (CT) images is a precursor to most pulmonary ima...
Purpose: Cellular breakdown in the lungs screening is a cycle that is utilized to recognize the pres...
Artificial Intelligence (AI) is growing exponentially with novel computational architectures and the...
CT imaging technology is an important means to assist doctors in diagnosing lung diseases. In order ...
Early and accurate diagnosis of interstitial lung diseases (ILDs) is crucial for making treatment de...
Pulmonary disease has affected tens of millions of people in the world. This disease has also become...
Abstract Background Lung segmentation constitutes a critical procedure for any clinical-decision sup...
Computed tomography is one of the most sensitive imaging techniques for the segmentation of lung can...
Background: Lung region segmentation is an important stage of automated image-based approaches for t...
INTRODUCTION: The World Health Organization estimates that by 2030 the Chronic Obstructive Pulmonary...
International audienceInterstitial lung diseases (ILD) encompass a large spectrum of diseases sharin...
The lung is one of the prime respiratory organs in human physiology, and its abnormality will severe...
Interpreting chest x-ray (CXR) to find anomalies in the thoracic region is a tedious job and can con...
The Prediction and detection disease in human lungs are a very critical operation. It depends on an ...
Accurate segmentation of lung nodules from pulmonary computed tomography (CT) slices plays a vital r...
Segmentation of pulmonary X-ray computed tomography (CT) images is a precursor to most pulmonary ima...
Purpose: Cellular breakdown in the lungs screening is a cycle that is utilized to recognize the pres...
Artificial Intelligence (AI) is growing exponentially with novel computational architectures and the...
CT imaging technology is an important means to assist doctors in diagnosing lung diseases. In order ...
Early and accurate diagnosis of interstitial lung diseases (ILDs) is crucial for making treatment de...
Pulmonary disease has affected tens of millions of people in the world. This disease has also become...
Abstract Background Lung segmentation constitutes a critical procedure for any clinical-decision sup...
Computed tomography is one of the most sensitive imaging techniques for the segmentation of lung can...
Background: Lung region segmentation is an important stage of automated image-based approaches for t...
INTRODUCTION: The World Health Organization estimates that by 2030 the Chronic Obstructive Pulmonary...
International audienceInterstitial lung diseases (ILD) encompass a large spectrum of diseases sharin...
The lung is one of the prime respiratory organs in human physiology, and its abnormality will severe...
Interpreting chest x-ray (CXR) to find anomalies in the thoracic region is a tedious job and can con...
The Prediction and detection disease in human lungs are a very critical operation. It depends on an ...
Accurate segmentation of lung nodules from pulmonary computed tomography (CT) slices plays a vital r...
Segmentation of pulmonary X-ray computed tomography (CT) images is a precursor to most pulmonary ima...
Purpose: Cellular breakdown in the lungs screening is a cycle that is utilized to recognize the pres...
Artificial Intelligence (AI) is growing exponentially with novel computational architectures and the...