利用深度混合网络加强热成像图像中的乳腺癌检测

Rezazadeh Hanieh, Saniei Elham, Salehi Barough Mehdi
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引用次数: 0

摘要

乳腺癌是全球普遍存在的一种癌症。热成像是一种诊断乳腺癌的方法,它涉及记录乳房的热模式。本文探讨了如何使用卷积神经网络(CNN)算法从热成像图像数据集中提取特征。最初,CNN 网络用于从图像中提取特征向量。随后,机器学习技术可用于图像分类。本研究利用四种分类方法,即全连接神经网络(FCnet)、支持向量机(SVM)、分类线性模型(CLINEAR)和 KNN,对热成像图像中的乳腺癌进行分类。FCnet、SVM、CLINEAR 和 KNN 算法的准确率分别为 94.2%、95.0%、95.0% 和 94.1%。此外,这些分类器的可靠性参数分别为 92.1%、97.5%、96.5% 和 91.2%,灵敏度分别为 95.5%、94.1%、90.4% 和 93.2%。这些发现有助于专家开发乳腺癌诊断专家系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing breast cancer detection in thermographic images using deep hybrid networks
Breast cancer was a prevalent form of cancer worldwide. Thermography, a method for diagnosing breast cancer, involves recording the thermal patterns of the breast. This article explores the use of a convolutional neural network (CNN) algorithm to extract features from a dataset of thermographic images. Initially, the CNN network was used to extract a feature vector from the images. Subsequently, machine learning techniques can be used for image classification. This study utilizes four classification methods, namely Fully connected neural network (FCnet), support vector machine (SVM), classification linear model (CLINEAR), and KNN, to classify breast cancer from thermographic images. The accuracy rates achieved by the FCnet, SVM, CLINEAR, and k-nearest neighbors (KNN) algorithms were 94.2%, 95.0%, 95.0%, and 94.1%, respectively. Furthermore, the reliability parameters for these classifiers were computed as 92.1%, 97.5%, 96.5%, and 91.2%, while their respective sensitivities were calculated as 95.5%, 94.1%, 90.4%, and 93.2%. These findings can assist experts in developing an expert system for breast cancer diagnosis.
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