OBJECTIVES We evaluated whether machine learning may be helpful for the detection of lung cancer in FDG-PET imaging in the setting of ultralow dose PET scans. MATERIALS AND METHODS We studied the performance of an artificial neural network discriminating lung cancer patients (n = 50) from controls (n = 50) without pulmonary malignancies. A total of 3936 PET slices including images in which the lung tumor is visually present and image slices of patients with no lung cancer were exported. The diagnostic performance of the artificial neural network based on clinical standard dose PET images (PET) as well as with a tenfold (PET) and thirtyfold (PET) reduced radiation dose (∼0.11 mSv) was assessed. RESULTS The area under the curve of th...
International audienceBackground Manual quantification of the metabolic tumor volume (MTV) from whol...
Lung Cancer is the second most serious disease in today’s world due to which the mortality rate is i...
In this study, we evaluated the synergy between the two artificial intelligence solutions by applyin...
OBJECTIVES We evaluated whether machine learning may be helpful for the detection of lung cancer in...
Purpose: To develop a completely automated method based on image processing techniques and artificia...
Background: Lung cancer is the most common type of cancer, accounting for 12.8% of cancer cases worl...
Background: Metabolic positron emission tomography/computed tomography (PET/CT) parameters describin...
Lung cancer is a leading cause of cancer-related deaths worldwide, with a high mortality rate and a ...
OBJECTIVES To evaluate the diagnostic performance of a deep learning algorithm for automated dete...
Objectives To investigate the potential of automatic lung cancer detection on submillisievert dose F...
Purpose: To determine whether deep learning algorithms developed in a public competition could ident...
The purpose of this study was to detect lung cancer from CT-Scan images using the deep learning (DL)...
This project is about the detection of lung cancer by training a model of deep neural networks using...
Lung cancer is worldwide the second death cancer, both in prevalence and lethality, both for women a...
There is no question that lung cancer is a dangerous disease causing a significant number of deaths ...
International audienceBackground Manual quantification of the metabolic tumor volume (MTV) from whol...
Lung Cancer is the second most serious disease in today’s world due to which the mortality rate is i...
In this study, we evaluated the synergy between the two artificial intelligence solutions by applyin...
OBJECTIVES We evaluated whether machine learning may be helpful for the detection of lung cancer in...
Purpose: To develop a completely automated method based on image processing techniques and artificia...
Background: Lung cancer is the most common type of cancer, accounting for 12.8% of cancer cases worl...
Background: Metabolic positron emission tomography/computed tomography (PET/CT) parameters describin...
Lung cancer is a leading cause of cancer-related deaths worldwide, with a high mortality rate and a ...
OBJECTIVES To evaluate the diagnostic performance of a deep learning algorithm for automated dete...
Objectives To investigate the potential of automatic lung cancer detection on submillisievert dose F...
Purpose: To determine whether deep learning algorithms developed in a public competition could ident...
The purpose of this study was to detect lung cancer from CT-Scan images using the deep learning (DL)...
This project is about the detection of lung cancer by training a model of deep neural networks using...
Lung cancer is worldwide the second death cancer, both in prevalence and lethality, both for women a...
There is no question that lung cancer is a dangerous disease causing a significant number of deaths ...
International audienceBackground Manual quantification of the metabolic tumor volume (MTV) from whol...
Lung Cancer is the second most serious disease in today’s world due to which the mortality rate is i...
In this study, we evaluated the synergy between the two artificial intelligence solutions by applyin...