A tree augmented naive Bayesian network experiment for breast cancer prediction
classification
📊 stat.ML
q-bio.QM
keywords
cancerpopulationagingaugmentedbayesianbiopsybreastexperiment
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In order to investigate the breast cancer prediction problem on the aging population with the grades of DCIS, we conduct a tree augmented naive Bayesian network experiment trained and tested on a large clinical dataset including consecutive diagnostic mammography examinations, consequent biopsy outcomes and related cancer registry records in the population of women across all ages. The aggregated results of our ten-fold cross validation method recommend a biopsy threshold higher than 2% for the aging population.
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