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Application of breast cancer diagnosis based on a combination of convolutional neural networks, ridge regression and linear discriminant analysis using invasive breast cancer images processed with autoencoders

机译:基于卷积神经网络的组合,脊柱回归和线性判别分析使用自动乳腺癌图像的应用

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摘要

Invasive ductal carcinoma cancer, which invades the breast tissues by destroying the milk channels, is the most common type of breast cancer in women. Approximately, 80% of breast cancer patients have invasive ductal carcinoma and roughly 66.6% of these patients are older than 55 years. This situation points out a powerful relationship between the type of breast cancer and progressed woman age. In this study, the classification of invasive ductal carcinoma breast cancer is performed by using deep learning models, which is the sub-branch of artificial intelligence. In this scope, convolutional neural network models and the autoencoder network model are combined. In the experiment, the dataset was reconstructed by processing with the autoencoder model. The discriminative features obtained from convolutional neural network models were utilized. As a result, the most efficient features were determined by using the ridge regression method, and classification was performed using linear discriminant analysis. The best success rate of classification was achieved as 98.59%. Consequently, the proposed approach can be admitted as a successful model in the classification.
机译:通过摧毁牛奶渠道侵入乳腺组织的侵袭性导管癌癌是女性中最常见的乳腺癌。大约80%的乳腺癌患者患有侵袭性导管癌,约66.6%的这些患者比55年龄大。这种情况指出了乳腺癌类型和进步的女性年龄之间的强大关系。在这项研究中,通过使用深度学习模型进行侵入性导管癌乳腺癌的分类,这是人工智能的子分支。在此范围内,组合了卷积神经网络模型和AutoEncoder网络模型。在实验中,通过使用AutoEncoder模型进行处理来重建数据集。利用从卷积神经网络模型获得的鉴别特征。结果,通过使用脊回归方法确定最有效的特征,并且使用线性判别分析进行分类。最佳成功率的分类率达到98.59%。因此,所提出的方法可以作为分类中的成功模型。

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