This paper presents our work on evaluating the effectiveness of a novel deep convolutional neural network architecture (CNN) for classifying breast histology images for cancer risk factors as negative or positive. Also, the hardware structure of the proposed model was successfully synthesized and verified. The results indicate that a CNN trained on a small dataset achieved an overall AUC (Area under ROC Curve - ROC is an acronym for receiver operating characteristic) value of 0.922 across a set of 55505 test images. In addition, the time it takes to classify each image is within 3.8 milliseconds instead of a task that even trained pathologists take hours to complete
Breast cancer is a deadly disease affecting women around the world. It can spread rapidly into other...
Nowadays, there are many related works and methods that use Neural Networks to detect the breast can...
Breast cancer has been chosen as the leading cause of cancer-related death in women. Biopsy is still...
This paper presents our work on evaluating the effectiveness of a novel deep convolutional neural ne...
Deep learning algorithms have yielded remarkable results in medical diagnosis and image analysis, be...
In this study I compare different architectures of convolutional neural networks and different hardw...
Breast cancer forms in breast cells and is considered as a very common type of cancer in women. Brea...
Pathologic assessment of tissue sections is an important part of breast cancer diagnosis, with early...
Early detection leading to timely treatment in the initial stages of cancer may decrease the breast ...
Breast cancer is the most common cancer in women and the leading cause of death worldwide. Breast c...
Breast cancer is one of the most common cancer in women, with more than 1,300,000 cases and 450,000 ...
The study furthers artificial intelligence/machine Deep Learning in medical diagnostics, and works t...
Breast cancer is the type of cancer that develops from cells in the breast tissue. It is the leading...
Abstract Tissue analysis using histopathological images is the most prevailing as well as a challeng...
According to some medical imaging techniques, breast histopathology images called Hematoxylin and Eo...
Breast cancer is a deadly disease affecting women around the world. It can spread rapidly into other...
Nowadays, there are many related works and methods that use Neural Networks to detect the breast can...
Breast cancer has been chosen as the leading cause of cancer-related death in women. Biopsy is still...
This paper presents our work on evaluating the effectiveness of a novel deep convolutional neural ne...
Deep learning algorithms have yielded remarkable results in medical diagnosis and image analysis, be...
In this study I compare different architectures of convolutional neural networks and different hardw...
Breast cancer forms in breast cells and is considered as a very common type of cancer in women. Brea...
Pathologic assessment of tissue sections is an important part of breast cancer diagnosis, with early...
Early detection leading to timely treatment in the initial stages of cancer may decrease the breast ...
Breast cancer is the most common cancer in women and the leading cause of death worldwide. Breast c...
Breast cancer is one of the most common cancer in women, with more than 1,300,000 cases and 450,000 ...
The study furthers artificial intelligence/machine Deep Learning in medical diagnostics, and works t...
Breast cancer is the type of cancer that develops from cells in the breast tissue. It is the leading...
Abstract Tissue analysis using histopathological images is the most prevailing as well as a challeng...
According to some medical imaging techniques, breast histopathology images called Hematoxylin and Eo...
Breast cancer is a deadly disease affecting women around the world. It can spread rapidly into other...
Nowadays, there are many related works and methods that use Neural Networks to detect the breast can...
Breast cancer has been chosen as the leading cause of cancer-related death in women. Biopsy is still...