EFFECTIVE BREAST CANCER DETECTION USING NOVEL DEEP LEARNING ALGORITHM
Abstract
Ultrasound is one of the most common screening tools for breast cancer detection. However, the lack of qualified radiologists causes the diagnosis process to become a challenging task. Deep learning's promising achievement in various computer vision problems inspires us to apply the technology to medical image recognition problems. We propose a detection model based on the Rapid-CNN to detect breast cancer quickly and accurately. We conduct this experiment by collecting breast cancer datasets, pre-processing, training models, and evaluating the model performance. This model can detect breast cancer with bounding boxes based on the experiment result. In this model, it is possible to detect the bounding box that is more than what it should be, so we applied NMS to eliminate the prediction of the bounding box that is less precise to increase accuracy.
Downloads
References
Pang, Ting, et al. "Semi-supervised GAN-based Radiomics Model for Data Augmentation in Breast Ultrasound Mass Classification". Elsevier Inc. 2021.
Zhuang, Zhemin, et al. "Breast Ultrasound Tumor Image Classification Using Image Decomposition and Fusion Based on Adaptive Multi-Model Spatial Feature Fusion". Elsevier Inc. 2021.
Chiao, Jui Ying., et al. "Detection and Classification the Breast Tumors using Mask R-CNN on Sonograms". Medicine. 2019.
Shu, Xin, et al. "Deep Neural Networks with Region-based Pooling Structures for Mammographic Image Classification". IEEE Transaction on Medical Imaging. 2020
Rajaguru, Harikumar, et al. "Analysis of Decision Tree and K-Nearest Neighbor Algorithm in the Classification of Breast Cancer". Asian Pasific Journal of Cancer Prevention, Vol 20.2019.
Rahman, Md Akizur., et al. "Artificial Neural Networks with Taguchi Method for Robust Classification Model to Improve Classification Accuracy of Breast Cancer". PeerJ Computer Science.2021.
Osman, Yahia and Umar Alqasemi. "Breast Cancer Computer-Aided Detection System based on Simple Statistical Features and SVM Classification". International Journal of Advanced Computer Science and Applications (IJACSA).2020
Lin, Bor-Shing, et al. "Using Deep Learning in Ultrasound Imaging of Bicipital Peritendinous Effusion to Grade Inflamation Severity". Journal of Biomedical and Health Informatics.2020.
Mewada, Hiren K., et al. "Spectral-Spatial Features Integrated Convolutional Neural Network for Breast Cancer Classification". Sensors.2020.
Lin, Cheng-Jian and Shiou-Yun Jeng. "Optimization of Deep Learning Network Parameters Using Uniform Experimental Design for Breast Cancer Histopathological Image Classification". Diagnostics.2020.
Whitney, Heather M., et al. "Comparison of Breast MRI Tumor Classification Using Human-Engineered Radiomics, Transfer Learning From Deep Convolutional Neural Networks, and Fusion Methods". Proceedings of The IEEE.2019.
Liu, Weihuang., et al. "Fine-Grained Breast Cancer Classification with Bilinear Convolutional Neural Networks". Frontiers in Genetics.2020.
GK, Rajini, et al. "Statistical Detection of Breast Cancer by Mammogram Image". Asian Journal of Pharmaceutical and Clinical Research. 2017
Nithya, et al. "Robust Minimal Spanning Tree Using Intuitionistic Fuzzy C-means Clustering Algorithm for Breast Cancer Detection". American Journal of Neural Networks and Applications.2019
Nascimento, Carmina Dessana Lima, et al. "Breast Tumor Classification in Ultrasound Images using Support Vector Machine and Neural Networks". Research on Biomedical Engineering.2016
Chtihrakkannan,R , et al. "Breast Cancer Detection using Machine Learning". International Journal of Innovative Technology and Exploring Engineering (IJITEE).2019
Li, Mochen, et al. "Machine Learning-Based Decision Support System for Early Detection of Breast Cancer". Indian Journal of Pharmaceutical Education and Research.2020
Ibeni, Wan Nor LWH, et al. "Comparative Analysis on Bayesian Classification for Breast Cancer Problem". Bulletin of Electrical Engineering and Informatics.2019
Hamzah, Mohammad Diqi, and Antomy David Ronaldo. "Effective Soil Type Classification Using Convolutional Neural Network". International Journal of Informatics and Computation (IJICOM) Vol. 3, No.1. 2021
Paryadi, Catur, M.Diqi, and Sri Hasta Mulyani. "Implementation of CNN for Plant Leaf Classification". International Journal of Informatics and Computation (IJICOM) Vol. 2, No.2. 2020
Abidin, Adnan, Hamzah, and Marselina Endah H. "Efficient Fruits Classification Using Convolutional Neural Network". International Journal of Informatics and Computation (IJICOM) Vol. 3, No.1. 2021
Shamy, S., and J.Dheeba. "A Research on Detection and Classification of Breast Cancer using K-Means GMM and CNN Algorithms". International Journal of Engineering and Advanced Technology (IJEAT).2019.
Hameed, Zabit, et al. "Breast Cancer Hispathology Image Classification Using an Ensemble of Deep Learning Models". Sensors.2020.
Zhao, Yuntau, et al. "A Malware Detection Method of Code Texture Visualization Based on an Improved Faster RCNN Combining Transfer Learning". IEEE.2020.
Rahmat, Taufik, et al. "Chest X-Ray Image Classification using Faster R-CNN". Malaysian Journal of Computing.2019.
Singh, Sunil, et al. "Face Mask Detection using YOLOv3 and Faster R-CNN Models: Covid -19 Environment". Multimedia Tools and Applications. 2021
Wei, Kaizhen, et al. "Faster Region Convolutional Neural Networks Applied to Ultrasonic Images for Breast Lesion Detection and Classification". IEEE. 2020
Abd-Ellah, Mahmoud Khaled, et al. "Automatic Diagnosis of Common Carotid Artery Disease using Different Learning Techniques". Journal of Ambient Intelligence and Humanized Computing. 2021
AG, Neela, et al. "A Breast Cancer Detection using Image Processing and Machine Learning Techniques". International Journal of Recent Technology and Engineering (IJRTE).2019
Copyright (c) 2023 Putra Wanda
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.