基于卷积神经网络和线性判别分析的宫颈细胞图像分类

Mohammad Sholik, C. Fatichah, B. Amaliah
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引用次数: 0

摘要

宫颈癌是妇女死亡的主要原因。这种疾病占所有癌症的近12%,对全世界的妇女来说具有很高的死亡风险。如果早期发现癌前病变,这种疾病是可以治愈的。巴氏涂片筛查在早期发现宫颈细胞异常方面以其可靠性和有效性而闻名,但人工图像分析存在错误的风险。在医学和医疗保健领域使用深度学习方法可以用于决策支持系统,以消除观察中的偏差。本文提出了一个利用深度学习和技术来降低特征维度的框架。该框架从卷积神经网络(CNN)模型中捕获深度特征,并采用使用线性判别分析(LDA)的特征约简方法来确保计算成本的降低。由CNN模型导出的特征维数产生了巨大的特征空间,需要进行特征约简来消除冗余特征。通过线性判别分析减少的特征用于训练三个分类器,即SVM, MLP和K-NN,以生成最终的预测。对所提出框架的评估涉及使用三个公开可访问的数据集:Herlev数据集、Mendeley数据集和SIPaKMeD数据集,分类准确率分别为95.65% (SVM和MLP)、100% (MLP)和97.54 (K-NN)。
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Classification of Cervical Cell Images into Healthy or Cancer Using Convolution Neural Network and Linear Discriminant Analysis
Cancer of the cervix is the disease that accounts for the majority of deaths in women. This disease accounts for nearly 12% of all cancers and has a high risk of death for women worldwide. If precancerous lesions are found early, the disease can be cured. Pap smear screening is known for its reliability and effectiveness in detecting cervical cell abnormalities early, but there is a risk of errors in manual image analysis. Using deep learning approaches in the domains of medicine and healthcare can be used for decision support systems to remove bias from observations. This paper presents a framework that utilizes deep learning and techniques to reduce the dimensions of features. The suggested framework captures deep features from a convolutional neural network (CNN) model and employs a feature reduction approach using linear discriminant analysis (LDA) to ensure computational cost reduction. The feature dimension derived from the CNN model produces a huge feature space that requires a feature reduction to eliminate redundant features. The features that have been reduced by linear discriminant analysis are used for the training of three classifiers, namely SVM, MLP, and K-NN, to generate final predictions. The evaluation of the proposed framework involved the utilization of three datasets that are openly accessible: the Herlev dataset, the Mendeley dataset, and the SIPaKMeD dataset, which achieved classification accuracies of 95.65% (SVM and MLP), 100% (MLP), and 97.54 (K-NN), respectively.
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