ISE: An Algorithm to Screen out the high-risk Group of Breast Cancer

In the study for the prevention and the control of breast cancer, using mobile devices to design questionnaires and applying models to screen out high-risk groups has great significance. However, some existing models are not suitable for the Asian women. In this work, we proposed an ISE algorithm to derive the conditions of breast cancer by analyzing the relationship among the influential factors of breast cancer and the strength of the relationship. Based on this algorithm, we can obtain the high-risk groups of breast cancer and finally construct a model for the prevention and the control of breast cancer, especially for Asian women. Keywords-mobile and sever; data analysis; model of high -risk groups in breast cancer

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