An Early Breast Cancer Detection System Using Stacked Auto Encoder Deep Neural Network with Particle Swarm Optimization Based Classification Method

K. Sangeetha, S. Prakash
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引用次数: 2

Abstract

The demand in breast cancer’s early detection and diagnosis over the last few decade has given a new research avenues. For an individual who is suffered from breast cancer, a successful treatment plan can be specified if early stage diagnosis of non-communicable disease is done as stated by world health organization (WHO). Around the world, mortality can be reduced by cure disease’s early diagnosis. For breast cancer’s early detection and to detect other abnormalities of human breast tissue, digital mammogram is used as a most popular screening method. Early detection is assisted by periodic clinical check-ups and self-tests and survival chance is significantly enhanced by it. For mammograms (MGs), deep learning (DL) methods are investigated by researchers due to traditional computer-aided detection (CAD) systems limitations and breast cancer’s early detection’s extreme importance and patients false diagnosis high impact. So, there is need to have a noninvasive cancer detection system which is efficient, accurate, fast and robust. There are two process in proposed work, Histogram Rehabilitated Local Contrast Enhancement (HRLCE) technique is used in initial process for contrast enhancement with two processing stages. Contrast enhancements potentiality is enhanced while preserving image’s local details by this technique. So, for cancer classification, Particle Swarm Optimization (PSO) and stacked auto encoders (SAE) combined with framework based on DNN called SAE-PSO-DNN Model is used. The SAE-DNN parameters with two hidden layers are tuned using PSO and Limited-memory BFGS (LBFGS) is used as a technique for reducing features. Specificity, sensitivity, normalized root mean square erro (NRMSE), accuracy parameters are used for evaluating SAE-PSO-DNN models results. Around 92% of accurate results are produced by SAE-PSO-DNN model as shown in experimentation results, which is far better than Convolutional Neural Network (CNN) as well as Support Vector Machine (SVM) techniques.
基于粒子群优化分类方法的堆叠自编码器深度神经网络早期乳腺癌检测系统
近几十年来,人们对乳腺癌早期检测和诊断的需求为乳腺癌的研究提供了新的途径。对于患有乳腺癌的个人,如果按照世界卫生组织(世卫组织)的规定对非传染性疾病进行早期诊断,就可以确定成功的治疗计划。在世界各地,治愈疾病的早期诊断可以降低死亡率。为了早期发现乳腺癌和发现人类乳腺组织的其他异常,数字乳房x光检查是最常用的筛查方法。定期的临床检查和自检有助于早期发现,从而大大提高了生存机会。对于乳房x光检查(mg),由于传统计算机辅助检测(CAD)系统的局限性以及乳腺癌早期检测的极端重要性和患者误诊的高影响,深度学习(DL)方法受到研究人员的研究。因此,需要一种高效、准确、快速、稳健的无创癌症检测系统。本文提出了两个过程,初始过程采用直方图恢复局部对比度增强(HRLCE)技术进行对比度增强,分为两个处理阶段。在保留图像局部细节的同时,增强了对比度增强的潜力。因此,在癌症分类中,采用粒子群优化(PSO)和堆叠自编码器(SAE)相结合的基于深度神经网络的框架SAE-PSO-DNN模型。采用粒子群算法对具有两个隐藏层的SAE-DNN参数进行调优,并使用有限内存BFGS (LBFGS)作为特征约简技术。特异性、敏感性、归一化均方根误差(NRMSE)、准确度等参数用于评价SAE-PSO-DNN模型的结果。实验结果表明,SAE-PSO-DNN模型产生的准确率约为92%,远远优于卷积神经网络(CNN)和支持向量机(SVM)技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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