Intelligent system for predicting breast tumors using machine learning

Author:

Li Meifang1,Ruan Binlin2,Yuan Caixing1,Song Zhishuang1,Dai Chongchong2,Fu Binghua2,Qiu Jianxing3

Affiliation:

1. Department of Medical Imaging, Affiliated Hospital of Putian University, Fujian, China

2. Department of Medical Imaging, The First Hospital of Putian City, Fujian, China

3. Radiology Department, Peking University First Hospital, Beijing, China

Abstract

The early hidden characteristics of breast tumors make their features difficult to be effectively identified. In order to improve the detection accuracy of breast tumors, this study combined with computer-aided diagnosis techniques such as machine learning and computer vision and used X-ray analysis to study breast tumor diagnosis techniques. Moreover, this study combines breast tumor diagnostic images to determine various parameters of the image. At the same time, through experimental research and analysis of the region segmentation method and preprocessing method of breast detection images, the best diagnostic images are obtained, and the influence of background and other noise on the image diagnosis results is effectively proposed. In addition, this study proposes a method for detecting the distortion of the mammogram image structure, which accurately detects the structural distortion and reduces the interference of various influencing factors. Finally, this paper designs experiments to study the effects of the diagnostic method of this paper. Through comparative analysis, it can be seen that the results of this study have certain advantages in accuracy and image clarity, and have certain clinical significance, and can provide theoretical reference for subsequent related research.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference27 articles.

1. Jensen T.W. , Ray T. , Wang J. , et al., Diagnosis of Basal-Like Breast Cancer Using a FOXC1-Based Assay[J], Jnci Journal of the National Cancer Institute 107(8) (2015).

2. Limitations of mammography in the diagnosis of breast diseases compared with ultrasonography: a single-center retrospective analysis of 274 cases[J], European Journal of Medical Research 20(1) (2015), 49.

3. Remark on Artificial Intelligence, humanoid and Terminator scenario: A Neutrosophic way to futurology[J];Christianto;International Journal of Neutrosophic Science,2020

4. A New Approach to Develop Computer-Aided Diagnosis Scheme of Breast Mass Classification Using Deep Learning Technology[J];Qiu;Journal of X-ray science and technology,2017

5. Data Mining Algorithms for Kidney Disease Stages Prediction[J];Koura;Journal of Cybersecurity and Information Management,2020

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