Breast Cancer Detection using Histopathological Images
- URL: http://arxiv.org/abs/2202.06109v1
- Date: Sat, 12 Feb 2022 17:45:43 GMT
- Title: Breast Cancer Detection using Histopathological Images
- Authors: Jitendra Maan, Harsh Maan
- Abstract summary: We propose a saliency detection system with the help of advanced deep learning techniques.
We study identification of five diagnostic categories of breast cancer by training a CNN (VGG16, ResNet architecture)
The detection system will be available as an open source web application which can be used by pathologists and medical institutions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Cancer is one of the most common and fatal diseases in the world. Breast
cancer affects one in every eight women and one in every eight hundred men.
Hence, our prime target should be early detection of cancer because the early
detection of cancer can be helpful to cure cancer effectively. Therefore, we
propose a saliency detection system with the help of advanced deep learning
techniques, such that the machine will be taught to emulate actions of
pathologists for localization of diagnostically pertinent regions. We study
identification of five diagnostic categories of breast cancer by training a CNN
(VGG16, ResNet architecture). We have used BreakHis dataset to train our model.
We focus on both detection and classification of cancerous regions in
histopathology images. The diagnostically relevant regions are salient. The
detection system will be available as an open source web application which can
be used by pathologists and medical institutions.
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