Chaotic Sparrow Search Algorithm with Deep Transfer Learning Enabled Breast Cancer Classification on Histopathological Images

被引:14
作者
Shankar, K. [1 ]
Dutta, Ashit Kumar [2 ]
Kumar, Sachin [1 ]
Joshi, Gyanendra Prasad [3 ]
Doo, Ill Chul [4 ]
机构
[1] South Ural State Univ, Big Data & Machine Learning Lab, Chelyabinsk 454080, Russia
[2] AlMaarefa Univ, Coll Appl Sci, Dept Comp Sci & Informat Syst, Riyadh 11597, Saudi Arabia
[3] Sejong Univ, Dept Comp Sci & Engn, Seoul 05006, South Korea
[4] Hankuk Univ Foreign Studies, Artificial Intelligence Educ, Seoul 02450, South Korea
关键词
breast cancer; histopathological images; computer aided diagnosis; cancer; medical imaging; deep learning;
D O I
10.3390/cancers14112770
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Cancer is considered the most significant public health issue which severely threatens people's health. The occurrence and mortality rate of breast cancer have been growing consistently. Initial precise diagnostics act as primary factors in improving the endurance rate of patients. Even though there are several means to identify breast cancer, histopathological diagnosis is now considered the gold standard in the diagnosis of cancer. However, the difficulty of histopathological image and the rapid rise in workload render this process time-consuming, and the outcomes might be subjected to pathologists' subjectivity. Hence, the development of a precise and automatic histopathological image analysis method is essential for the field. Recently, the deep learning method for breast cancer pathological image classification has made significant progress, which has become mainstream in this field. Therefore, in this work, we focused on the design of metaheuristics with deep learning based breast cancer classification process. The proposed model is found to be an effective tool to assist physicians in the decision making process. Breast cancer is the major cause behind the death of women worldwide and is responsible for several deaths each year. Even though there are several means to identify breast cancer, histopathological diagnosis is now considered the gold standard in the diagnosis of cancer. However, the difficulty of histopathological image and the rapid rise in workload render this process time-consuming, and the outcomes might be subjected to pathologists' subjectivity. Hence, the development of a precise and automatic histopathological image analysis method is essential for the field. Recently, the deep learning method for breast cancer pathological image classification has made significant progress, which has become mainstream in this field. This study introduces a novel chaotic sparrow search algorithm with a deep transfer learning-enabled breast cancer classification (CSSADTL-BCC) model on histopathological images. The presented CSSADTL-BCC model mainly focused on the recognition and classification of breast cancer. To accomplish this, the CSSADTL-BCC model primarily applies the Gaussian filtering (GF) approach to eradicate the occurrence of noise. In addition, a MixNet-based feature extraction model is employed to generate a useful set of feature vectors. Moreover, a stacked gated recurrent unit (SGRU) classification approach is exploited to allot class labels. Furthermore, CSSA is applied to optimally modify the hyperparameters involved in the SGRU model. None of the earlier works have utilized the hyperparameter-tuned SGRU model for breast cancer classification on HIs. The design of the CSSA for optimal hyperparameter tuning of the SGRU model demonstrates the novelty of the work. The performance validation of the CSSADTL-BCC model is tested by a benchmark dataset, and the results reported the superior execution of the CSSADTL-BCC model over recent state-of-the-art approaches.
引用
收藏
页数:18
相关论文
共 22 条
[1]   Transfer learning-assisted multi-resolution breast cancer histopathological images classification [J].
Ahmad, Nouman ;
Asghar, Sohail ;
Gillani, Saira Andleeb .
VISUAL COMPUTER, 2022, 38 (08) :2751-2770
[2]   Sentiment Analysis Using Stacked Gated Recurrent Unit for Arabic Tweets [J].
Al Wazrah, Asma ;
Alhumoud, Sarah .
IEEE ACCESS, 2021, 9 :137176-137187
[3]   Going deeper: magnification-invariant approach for breast cancer classification using histopathological images [J].
Alkassar, S. ;
Jebur, Bilal A. ;
Abdullah, Mohammed A. M. ;
Al-Khalidy, Joanna H. ;
Chambers, J. A. .
IET COMPUTER VISION, 2021, 15 (02) :151-164
[4]   Breast Cancer Classification from Histopathological Images with Inception Recurrent Residual Convolutional Neural Network [J].
Alom, Md Zahangir ;
Yakopcic, Chris ;
Nasrin, Shamima ;
Taha, Tarek M. ;
Asari, Vijayan K. .
JOURNAL OF DIGITAL IMAGING, 2019, 32 (04) :605-617
[5]   Breast cancer diagnosis from histopathological images using textural features and CBIR [J].
Carvalho, Edson D. ;
Antonio, O. C. Filho ;
Silva, Romuere R., V ;
Araujo, Flavio H. D. ;
Diniz, Joao O. B. ;
Silva, Aristofanes C. ;
Paiva, Anselmo C. ;
Gattass, Marcelo .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2020, 105
[6]   Computer-Aided Histopathological Image Analysis Techniques for Automated Nuclear Atypia Scoring of Breast Cancer: a Review [J].
Das, Asha ;
Nair, Madhu S. ;
Peter, S. David .
JOURNAL OF DIGITAL IMAGING, 2020, 33 (05) :1091-1121
[7]   DeepBreastNet: A novel and robust approach for automated breast cancer detection from histopathological images [J].
Demir, Fatih .
BIOCYBERNETICS AND BIOMEDICAL ENGINEERING, 2021, 41 (03) :1123-1139
[8]   Classification of breast cancer histology images using incremental boosting convolution networks [J].
Duc My Vo ;
Ngoc-Quang Nguyen ;
Lee, Sang-Woong .
INFORMATION SCIENCES, 2019, 482 :123-138
[9]   Breast Cancer Classification From Histopathological Images Using Patch-Based Deep Learning Modeling [J].
Hirra, Irum ;
Ahmad, Mubashir ;
Hussain, Ayaz ;
Ashraf, M. Usman ;
Saeed, Iftikhar Ahmed ;
Qadri, Syed Furqan ;
Alghamdi, Ahmed M. ;
Alfakeeh, Ahmed S. .
IEEE ACCESS, 2021, 9 :24273-24287
[10]   Recent Trends in Computer Assisted Diagnosis (CAD) System for Breast Cancer Diagnosis Using Histopathological Images [J].
Kaushal, C. ;
Bhat, S. ;
Koundal, D. ;
Singla, A. .
IRBM, 2019, 40 (04) :211-227