Breast Cancer Detection Using Breastnet-18 Augmentation with Fine Tuned Vgg-16  

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作  者:S.J.K.Jagadeesh Kumar P.Parthasarathi Mofreh A.Hogo Mehedi Masud Jehad F.Al-Amri Mohamed Abouhawwash 

机构地区:[1]Department of Computer Science and Engineering,Kathir College of Engineering,Coimbatore,641062,India [2]Department of Computer Science and Engineering,Bannari Amman Institute of Technology,Sathyamangalam,638401,Tamilnadu,India [3]Electrical Engineering Department,Faculty of Engineering,Benha University,Benha,13518,Egypt [4]Department of Computer Science,College of Computers and Information Technology,Taif University,P.O.Box 11099,Taif,21944,Saudi Arabia [5]Department of Information Technology,College of Computers and Information Technology,Taif University,P.O.Box 11099,Taif,21944,Saudi Arabia [6]Department of Mathematics,Faculty of Science,Mansoura University,Mansoura,35516,Egypt [7]Department of Computational Mathematics,Science,and Engineering(CMSE),Michigan State University,East Lansing,MI,48824,USA

出  处:《Intelligent Automation & Soft Computing》2023年第5期2363-2378,共16页智能自动化与软计算(英文)

基  金:supporting project number(TURSP-2020/211),Taif University,Taif,Saudi Arabia.

摘  要:Women from middle age to old age are mostly screened positive for Breast cancer which leads to death.Times over the past decades,the overall sur-vival rate in breast cancer has improved due to advancements in early-stage diag-nosis and tailored therapy.Today all hospital brings high awareness and early detection technologies for breast cancer.This increases the survival rate of women.Though traditional breast cancer treatment takes so long,early cancer techniques require an automation system.This research provides a new methodol-ogy for classifying breast cancer using ultrasound pictures that use deep learning and the combination of the best characteristics.Initially,after successful learning of Convolutional Neural Network(CNN)algorithms,data augmentation is used to enhance the representation of the feature dataset.Then it uses BreastNet18 withfine-tuned VGG-16 model for pre-training the augmented dataset.For feature classification,Entropy controlled Whale Optimization Algorithm(EWOA)is used.The features that have been optimized using the EWOA were utilized to fuse and optimize the data.To identify the breast cancer pictures,training classifiers are used.By using the novel probability-based serial technique,the best-chosen characteristics are fused and categorized by machine learning techniques.The main objective behind the research is to increase tumor prediction accuracy for saving human life.The testing was performed using a dataset of enhanced Breast Ultrasound Images(BUSI).The proposed method improves the accuracy com-pared with the existing methods.

关 键 词:Deep learning classification data augmentation feature extraction the fusion of features breast cancer optimization classification 

分 类 号:TP391.41[自动化与计算机技术—计算机应用技术]

 

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