Abstract

Accurate detection and classification of breast cancer is a critical task in medical imaging due to the complexity of breast tissues. Due to automatic feature extraction ability, deep learning methods have been successfully applied in different areas, especially in the field of medical imaging. In this study, a novel patch-based deep learning method called Pa-DBN-BC is proposed to detect and classify breast cancer on histopathology images using the Deep Belief Network (DBN). Features are extracted through an unsupervised pre-training and supervised fine-tuning phase. The network automatically extracts features from image patches. Logistic regression is used to classify the patches from histopathology images. The features extracted from the patches are fed to the model as input and the model presents the result as a probability matrix as either a positive sample (cancer) or a negative sample (background). The proposed model is trained and tested on the whole slide histopathology image dataset having images from four different data cohorts and achieved an accuracy of 86%. Consequently, the proposed method is better than the traditional ones, as it automatically learns the best possible features and experimental results show that the model outperformed the previously proposed deep learning methods.

Highlights

  • According to the American cancer society surveillance report ‘‘Breast cancer affects one in eight women in their lifetime’’[1]

  • Our main contributions are as follows: This study propose a novel framework for the classification of breast cancer on histopathology images

  • The dataset includes histopathology images from the four different data cohorts, Hospital of the University of Pennsylvania (HUP), Case Western Reserve University (CWRU), Cancer Institute of New Jersey (CINJ), and The Cancer Genome Atlas (TCGA) and their corresponding binary masks of invasive breast cancer regions annotated by pathologists [77]

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Summary

Introduction

According to the American cancer society surveillance report ‘‘Breast cancer affects one in eight women in their lifetime’’[1]. Breast cancer stands second cause of death among women and it is the most common type of cancer [2]. In the year 2012, the second most common cancer was breast cancer (1.7 million cases, 11.9%) [3]. In the year 2019, 268,000 cases of breast cancer and 41,760 deaths because of breast cancer were estimated by SEER (Surveillance, Epidemiology, and End Results) [4]. Breast cancer can originate from any cell, tissue, or gland of the breast. Breast tumor has two most common types: benign and malignant where the benign lesion is not cancerous, it is some kind of abnormalities in the cell and they are unable to become a cause of breast cancer and malignant is cancerous lesions. Breast cancer is divided into two categories, one is ductal carcinoma

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