Regularized neural network to identify potential breast cancer: A bayesian approach

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Abstract

In the current study, we have exemplified the use of Bayesian neural networks for breast cancer classification using the evidence procedure. The optimal Bayesian network has 81% overall accuracy in correctly classifying the true status of breast cancer patients, 59% sensitivity in correctly detecting the malignancy and 83% specificity in correctly detecting the non-malignancy. The area under the receiver operating characteristic curve (0.7940) shows that this is a moderate classification model.

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APA

Rodrigo, H. S., Tsokos, C. P., & Sharaf, T. (2016). Regularized neural network to identify potential breast cancer: A bayesian approach. Journal of Modern Applied Statistical Methods, 15(2), 563–579. https://doi.org/10.22237/jmasm/1478003520

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