Abstract

Convolutional Neural Network (CNN) models are a type of deep learning architecture introduced to achieve the correct classification of breast cancer. This paper has a two-fold purpose. The first aim is to investigate the various deep learning models in classifying breast cancer histopathology images. This study identified the most accurate models in terms of the binary, four, and eight classifications of breast cancer histopathology image databases. The different accuracy scores obtained for the deep learning models on the same database showed that other factors such as pre-processing, data augmentation, and transfer learning methods can impact the ability of the models to achieve higher accuracy. The second purpose of our manuscript is to investigate the latest models that have no or limited examination done in previous studies. The models like ResNeXt, Dual Path Net, SENet, and NASNet had been identified with the most cutting-edge results for the ImageNet database. These models were examined for the binary, and eight classifications on BreakHis, a breast cancer histopathology image database. Furthermore, the BACH database was used to investigate these models for four classifications. Then, these models were compared with the previous studies to find and propose the most state-of-the-art models for each classification. Since the Inception-ResNet-V2 architecture achieved the best results for binary and eight classifications, we have examined this model in our study as well to provide a better comparison result. In short, this paper provides an extensive evaluation and discussion about the experimental settings for each study that had been conducted on the breast cancer histopathology images.

Highlights

  • According to the World Health Organization (WHO) [1], breast cancer is the most common cancer among women globally

  • BREAST CANCER TYPES AND SUBTYPES there are about 20 major types of breast cancer, the majority can be classified into two main histopathological classes: Invasive Ductal Carcinoma (IDC) and Invasive Lobular Carcinoma (ILC) [16], [18]

  • This study has shown that the breast cancer classification for the AlexNet model had a better result than the concatenation and support vector machine (SVM) of AlexNet with VGG-16

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Summary

INTRODUCTION

According to the World Health Organization (WHO) [1], breast cancer is the most common cancer among women globally. Digital histopathological images are obtained from the microscopic examination of the stained biopsy tissues of breast cancer [3], [8], [9]. These images provide pathologists (human) with an all-inclusive view, mistakes can still happen when the diagnosis becomes too time-consuming due to the large-sized slides [6], [10]–[15]. In this part, the most current deep learning models that have been identified and examined will be compared with previous studies and discussed. A conclusion that consists of critical discussions and an overview of the future works are outlined

BREAST CANCER TYPES AND SUBTYPES
DEEP LEARNING
FOUR-CLASS CLASSIFICATION
Findings
CONCLUSION
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