Accuracy Analysis of Deep Learning Methods in Breast Cancer Classification: A Structured Review

Author:

Yusoff Marina12ORCID,Haryanto Toto3,Suhartanto Heru4,Mustafa Wan Azani5ORCID,Zain Jasni Mohamad12ORCID,Kusmardi Kusmardi67ORCID

Affiliation:

1. Institute for Big Data Analytics and Artificial Intelligence (IBDAAI), Kompleks Al-Khawarizmi, Universiti Teknologi MARA (UiTM), Shah Alam 40450, Selangor, Malaysia

2. College of Computing, Informatic and Media, Kompleks Al-Khawarizmi, Universiti Teknologi MARA (UiTM), Shah Alam 40450, Selangor, Malaysia

3. Department of Computer Science, IPB University, Bogor 16680, Indonesia

4. Faculty of Computer Science, Universitas Indonesia, Depok 16424, Indonesia

5. Faculty of Electrical Engineering Technology, Universiti Malaysia Perlis, UniCITI Alam Campus, Sungai Chuchuh, Padang Besar 02100, Perlis, Malaysia

6. Department of Anatomical Pathology, Faculty of Medicine, Universitas Indonesia/Cipto Mangunkusumo Hospital, Jakarta 10430, Indonesia

7. Human Cancer Research Cluster, Indonesia Medical Education and Research Institute, Universitas Indonesia, Jakarta 10430, Indonesia

Abstract

Breast cancer is diagnosed using histopathological imaging. This task is extremely time-consuming due to high image complexity and volume. However, it is important to facilitate the early detection of breast cancer for medical intervention. Deep learning (DL) has become popular in medical imaging solutions and has demonstrated various levels of performance in diagnosing cancerous images. Nonetheless, achieving high precision while minimizing overfitting remains a significant challenge for classification solutions. The handling of imbalanced data and incorrect labeling is a further concern. Additional methods, such as pre-processing, ensemble, and normalization techniques, have been established to enhance image characteristics. These methods could influence classification solutions and be used to overcome overfitting and data balancing issues. Hence, developing a more sophisticated DL variant could improve classification accuracy while reducing overfitting. Technological advancements in DL have fueled automated breast cancer diagnosis growth in recent years. This paper reviewed studies on the capability of DL to classify histopathological breast cancer images, as the objective of this study was to systematically review and analyze current research on the classification of histopathological images. Additionally, literature from the Scopus and Web of Science (WOS) indexes was reviewed. This study assessed recent approaches for histopathological breast cancer image classification in DL applications for papers published up until November 2022. The findings of this study suggest that DL methods, especially convolution neural networks and their hybrids, are the most cutting-edge approaches currently in use. To find a new technique, it is necessary first to survey the landscape of existing DL approaches and their hybrid methods to conduct comparisons and case studies.

Funder

Universiti Teknologi MARA

Publisher

MDPI AG

Subject

Clinical Biochemistry

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1. Early Breast Cancer Risk Assessment: Integrating Histopathology with Artificial Intelligence;Cancers;2024-05-23

2. Breast Cancer Classification with ANN and DBN;2024 2nd International Conference on Advancement in Computation & Computer Technologies (InCACCT);2024-05-02

3. Meme Kanseri Erken Teşhisi için MAMA ve KTB Kullanarak Geliştirilen Model;Afyon Kocatepe University Journal of Sciences and Engineering;2024-04-14

4. Towards Agility in Breast Cancer Treatment Principles as Adopted from Agile Software Engineering;Journal of Multidisciplinary Healthcare;2024-03

5. Multi-label noisy samples in underwater inspection from the oil and gas industry;Neural Computing and Applications;2024-02-16

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