The aim of the DeepLook project, funded by INFN (Italy), is to implement a deep learning architecture for Computed Aided Detection (CAD), based on neural networks developed with deep learning methods, for the automatic detection and classification of breast lesions in DBT images. A preliminary step (started 2 years ago and still ongoing) was the creation of a dataset of annotated images. This dataset includes images acquired with different clinical DBT units and different acquisition geometries, on several hundred patients, containing a variety of possible breast lesions and normal cases of absence of lesions. This will make the diagnostic capacity of the CAD system particularly extensive in various clinical situations and on a significant ...
In recent years researchers are intensely using machine learning and employing AI techniques in the ...
This work presents an application of different deep learning related paradigms to the diagnosis of m...
Mammography has a central role in screening and diagnosis of breast lesions, allowing early detectio...
Purpose To develop a computerized detection system for the automatic classification of the presen...
Digital breast tomosynthesis (DBT) is a highly promising 3D imaging modality for breast diagnosis. T...
Deep learning has demonstrated tremendous revolutionary changes in the computing industry and its ef...
Deep learning networks (DLNs) rely on labeled training datasets as their fundamental building blocks...
Although computer-aided diagnosis (CAD) is widely used in mammography, conventional CAD programs tha...
Medical imaging is an essential tool in many areas of medical applications, used for both diagnosis ...
Computer-aided diagnosis (CAD) systems can help radiologists in numerous medical tasks including cla...
In recent years, we witnessed a speeding development of deep learning in computer vision fields like...
In this paper, we propose a deep learning approach for breast lesions classification, by processing ...
Deep learning, as one of the currently most popular computer science research trends, improves neura...
Background: Incidental breast cancers can be detected on chest computed tomography (CT) scans. With ...
Diagnosis is a crucial step to identify the disease that experienced by the patient. Diagnosis inclu...
In recent years researchers are intensely using machine learning and employing AI techniques in the ...
This work presents an application of different deep learning related paradigms to the diagnosis of m...
Mammography has a central role in screening and diagnosis of breast lesions, allowing early detectio...
Purpose To develop a computerized detection system for the automatic classification of the presen...
Digital breast tomosynthesis (DBT) is a highly promising 3D imaging modality for breast diagnosis. T...
Deep learning has demonstrated tremendous revolutionary changes in the computing industry and its ef...
Deep learning networks (DLNs) rely on labeled training datasets as their fundamental building blocks...
Although computer-aided diagnosis (CAD) is widely used in mammography, conventional CAD programs tha...
Medical imaging is an essential tool in many areas of medical applications, used for both diagnosis ...
Computer-aided diagnosis (CAD) systems can help radiologists in numerous medical tasks including cla...
In recent years, we witnessed a speeding development of deep learning in computer vision fields like...
In this paper, we propose a deep learning approach for breast lesions classification, by processing ...
Deep learning, as one of the currently most popular computer science research trends, improves neura...
Background: Incidental breast cancers can be detected on chest computed tomography (CT) scans. With ...
Diagnosis is a crucial step to identify the disease that experienced by the patient. Diagnosis inclu...
In recent years researchers are intensely using machine learning and employing AI techniques in the ...
This work presents an application of different deep learning related paradigms to the diagnosis of m...
Mammography has a central role in screening and diagnosis of breast lesions, allowing early detectio...