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      "text": "1 Standard statistical measure of diagnostic accuracy. SOURCE: Wei Lu et al, A novel computer-aided diagnosis system for breast MRI based on feature selection and ensemble learning, 2017, Computers in Biology and Medicine, Volume 83, Pages 157–165",
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