Abstract

Breast cancer is now the most frequently diagnosed cancer in women, and its percentage is gradually increasing. Optimistically, there is a good chance of recovery from breast cancer if identified and treated at an early stage. Therefore, several researchers have established deep-learning-based automated methods for their efficiency and accuracy in predicting the growth of cancer cells utilizing medical imaging modalities. As of yet, few review studies on breast cancer diagnosis are available that summarize some existing studies. However, these studies were unable to address emerging architectures and modalities in breast cancer diagnosis. This review focuses on the evolving architectures of deep learning for breast cancer detection. In what follows, this survey presents existing deep-learning-based architectures, analyzes the strengths and limitations of the existing studies, examines the used datasets, and reviews image pre-processing techniques. Furthermore, a concrete review of diverse imaging modalities, performance metrics and results, challenges, and research directions for future researchers is presented.

Highlights

  • Licensee MDPI, Basel, Switzerland.The most commonly occurring cancer in women is breast cancer (BrC)

  • This study demonstrated that the proposed memetic Pareto artificial neural network (MPANN)

  • The authors adopted a deep convolutional neural networks (DCNNs) architecture consisting of eight layers with weight, including five convolutional layers and three fully-connected layers that can overcome the shortcomings of a conventional convolutional neural networks (CNN) that requires a large number of training data

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Summary

A Comprehensive Survey on Deep-Learning-Based Breast

Muhammad Firoz Mridha 1 , Md. Abdul Hamid 2 , Muhammad Mostafa Monowar 2 , Ashfia Jannat Keya 1 , Abu Quwsar Ohi 1 , Md. Rashedul Islam 3 and Jong-Myon Kim 4, *

A Comprehensive Survey on DeepLearning-Based Breast Cancer
Introduction
Breast-Cancer-Diagnosis Methods Based on Deep Learning
Autoencoder
De-Novo CNN
Datasets and Image Pre-Processing
Dataset
Image Pre-Processing
Imaging Modalities
Detection
Classification
Evaluation Metrics and Result Analysis
Challenges and Research Directions
Conclusions
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