Machine Learning for the Analysis of Conductivity From Mono Frequency Electrical Impedance Mammography as a Breast Cancer Risk Factor

被引:3
|
作者
Romero Coripuna, Rosario Lissiet [1 ,2 ]
Hernandez Farias, Delia Irazu [1 ]
Murillo Ortiz, Blanca Olivia [3 ,4 ]
Padierna, Luis Carlos [1 ]
Fraga, Teodoro Cordova [1 ]
机构
[1] Univ Guanajuato, Div Ciencias & Ingn, Campus Leon,Lomas Bosque 103, Guanajuato 37672, Mexico
[2] Univ Nacl San Agustin, Fac Ciencias Nat & Formales, Escuela Profes Fis, Arequipa 04000, Peru
[3] Inst Mexicano Seguro Social, Unidad Invest Epidemiologfa Clin, Unidad Med Alta Especialidad Bajio 1, Guanajuato 37320, Mexico
[4] Inst Mexicano Seguro Social, OOAD Guanajuato, Guanajuato 37320, Mexico
基金
英国医学研究理事会;
关键词
Breast; Conductivity; Breast cancer; Electrical impedance tomography; Medical diagnostic imaging; Machine learning; Impedance; Electro-impedance; conductivity; machine learning; mammography MEIK; risk factor; BI-RADS; DIELECTRIC-PROPERTIES; CLASSIFICATION; TOMOGRAPHY; TISSUE;
D O I
10.1109/ACCESS.2021.3122948
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Computational approaches have been used for analyzing risk factors together with conventional mammograms for breast cancer detection. Currently, other screening methods like electro-impedance mammography are available. Notwithstanding, as far as we know there is not related work evaluating the role of electrical-conductivity index of the mammary gland as a quantitative factor for early detection of breast cancer. This paper aims to demonstrate the importance of including breast conductivity index as a quantitative local risk-factor by analyzing a dataset of Mexican patients from a machine learning perspective. There are 12 attributes distributed into two groups: electrical-conductivity (3) and medical records (9). According to the obtained results with unsupervised methods, the performance in terms of accuracy of using only electrical-conductivity (43%) is better than using all available features (38%) and the medical records (33%). On the other hand, we identified that SVM achieves higher results in comparison with other algorithms when only the electrical-features are used. The obtained results demonstrate the important role of conductivity index as a quantitative local risk-factor for being considered in screening processes. Besides, it emerges as an important aspect to be included in the development of automatic tools for experts to perform breast cancer diagnosis.
引用
收藏
页码:152397 / 152407
页数:11
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