CNN‐based deep learning approach for classification of invasive ductal and metastasis types of breast carcinoma

Author:

Islam Tobibul1,Hoque Md Enamul1ORCID,Ullah Mohammad2,Islam Toufiqul3,Nishu Nabila Akter4,Islam Rabiul5

Affiliation:

1. Department of Biomedical Engineering Military Institute of Science and Technology Dhaka Bangladesh

2. Center for Advance Intelligent Materials Universiti Malaysia Pahang Kuantan Malaysia

3. Department of Surgery M Abdur Rahim Medical College Dinajpur Bangladesh

4. Department of Medicine Armed Forces Medical College Dhaka Bangladesh

5. Department of Electrical and Computer Engineering Texas A&M University College Station Texas USA

Abstract

AbstractObjectiveBreast cancer is one of the leading cancer causes among women worldwide. It can be classified as invasive ductal carcinoma (IDC) or metastatic cancer. Early detection of breast cancer is challenging due to the lack of early warning signs. Generally, a mammogram is recommended by specialists for screening. Existing approaches are not accurate enough for real‐time diagnostic applications and thus require better and smarter cancer diagnostic approaches. This study aims to develop a customized machine‐learning framework that will give more accurate predictions for IDC and metastasis cancer classification.MethodsThis work proposes a convolutional neural network (CNN) model for classifying IDC and metastatic breast cancer. The study utilized a large‐scale dataset of microscopic histopathological images to automatically perceive a hierarchical manner of learning and understanding.ResultsIt is evident that using machine learning techniques significantly (15%–25%) boost the effectiveness of determining cancer vulnerability, malignancy, and demise. The results demonstrate an excellent performance ensuring an average of 95% accuracy in classifying metastatic cells against benign ones and 89% accuracy was obtained in terms of detecting IDC.ConclusionsThe results suggest that the proposed model improves classification accuracy. Therefore, it could be applied effectively in classifying IDC and metastatic cancer in comparison to other state‐of‐the‐art models.

Publisher

Wiley

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