4.6 Article

Application of artificial intelligence based on deep learning in breast cancer screening and imaging diagnosis

Journal

NEURAL COMPUTING & APPLICATIONS
Volume 33, Issue 15, Pages 9637-9647

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00521-021-05728-x

Keywords

Breast cancer screening; Convolutional neural network (CNN); Convolutional deconvolutional neural network (CDNN); Fuzzy C-means clustering algorithm

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This paper constructs breast cancer CT image detection model and breast cancer screening model based on convolution and deconvolution neural network, using fuzzy C-means clustering algorithm to optimize breast cancer images. The new deep learning model improves automatic classification performance of breast cancer.
In recent years, with the change of lifestyle in Europe and America, the incidence of breast cancer in Chinese women is increasing. In order to find the model of breast cancer image screening and diagnosis with higher accuracy and better classification performance, this paper mainly constructs the breast cancer CT image detection model and the breast cancer screening model based on the convolution and deconvolution neural network (CDNN) through the convolution neural network (CNN). In this paper, the fuzzy C-means clustering algorithm (FCM) is used to improve and optimize the image of breast cancer, and the experimental results are analyzed. The optimized kernel fuzzy C-means clustering algorithm was tested on a common dataset to segment the region of interest more accurately. Our experiments show that the new deep learning model of this paper improves the automatic classification performance of breast cancer. In this paper, the research results of deep learning are applied to the medical field, and a new method based on CNN model for breast cancer screening and diagnosis is proposed, which provides a new idea for improving the artificial intelligence assisted medical diagnosis method.

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