Breast cancer screening and detection using high-resolution mammographic images have always been a difficult task in computer vision due to the presence of very small yet clinically significant abnormal growths in breast masses. The size difference between such masses and the overall mammogram image as well as difficulty in distinguishing intra-class features of the Breast Imaging Reporting and Database System (BI-RADS) categories creates challenges for accurate diagnosis. To obtain near-optimal results, object detection models should be improved by directly focusing on breast cancer detection. In this work, we propose a new two-stage deep learning method. In the first stage, the breast area is extracted from the mammogram and small square ...
The most common and rapidly spreading disease in the world is breast cancer. Most cases of breast ca...
Early detection leading to timely treatment in the initial stages of cancer may decrease the breast ...
In recent years, we witnessed a speeding development of deep learning in computer vision fields like...
Breast cancer incidence has increased in the past decades. Extensive efforts are being made for earl...
Abstract Breast cancer is the second deadliest cancer among women. Mammography is an important metho...
Breast cancer claims 11,400 lives on average every year in the UK, making it one of the deadliest di...
Women are drawn to cancer, the world's most dangerous disease. Thus, our practical goal should be to...
Breast cancer has become one of the most concerning cancers that are well known for its high inciden...
The most lethal and devastating form of cancer, breast cancer, is often first detected when a lump a...
Breast cancer detection based on the deep learning approach has gained much interest among other con...
Background: Artificial intelligence (AI)-based computational models that analyze breast cancer have ...
In this chapter, we show two discoveries learned from the application of deep learning methods to th...
In the last two decades, Computer Aided Detection (CAD) systems were developed to help radiologists ...
2nd International Conference on Computer Science and Engineering, UBMK 2017 --5 October 2017 through...
Breast cancer causes hundreds of women’s deaths each year. The manual detection of breast cancer is ...
The most common and rapidly spreading disease in the world is breast cancer. Most cases of breast ca...
Early detection leading to timely treatment in the initial stages of cancer may decrease the breast ...
In recent years, we witnessed a speeding development of deep learning in computer vision fields like...
Breast cancer incidence has increased in the past decades. Extensive efforts are being made for earl...
Abstract Breast cancer is the second deadliest cancer among women. Mammography is an important metho...
Breast cancer claims 11,400 lives on average every year in the UK, making it one of the deadliest di...
Women are drawn to cancer, the world's most dangerous disease. Thus, our practical goal should be to...
Breast cancer has become one of the most concerning cancers that are well known for its high inciden...
The most lethal and devastating form of cancer, breast cancer, is often first detected when a lump a...
Breast cancer detection based on the deep learning approach has gained much interest among other con...
Background: Artificial intelligence (AI)-based computational models that analyze breast cancer have ...
In this chapter, we show two discoveries learned from the application of deep learning methods to th...
In the last two decades, Computer Aided Detection (CAD) systems were developed to help radiologists ...
2nd International Conference on Computer Science and Engineering, UBMK 2017 --5 October 2017 through...
Breast cancer causes hundreds of women’s deaths each year. The manual detection of breast cancer is ...
The most common and rapidly spreading disease in the world is breast cancer. Most cases of breast ca...
Early detection leading to timely treatment in the initial stages of cancer may decrease the breast ...
In recent years, we witnessed a speeding development of deep learning in computer vision fields like...