Breast Cancer Prediction Using Machine Learning and Image Processing Optimization

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Abstract

In this study, it is wanted to implement Naïve Bayes data mining techniques on a dataset gained from digitized Image of fine needle aspirate (or FNA) belonged to benign and malignant type of breast tumors. One of the most important factors causing cancers in the females, which can be measured from sample after maintaining in several hours’ laboratory sample preparation at certain condition. As an alternative, Image processing can be substituted by measuring the geometrical features of FNA are well adopted economically and efficiently.

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Al-Dmour, N. A., Said, R. A., Alzoubi, H. M., Alshurideh, M., & Ali, L. (2023). Breast Cancer Prediction Using Machine Learning and Image Processing Optimization. In Studies in Computational Intelligence (Vol. 1056, pp. 2067–2079). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-031-12382-5_113

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