Article ID Journal Published Year Pages File Type
6891531 Computer Methods and Programs in Biomedicine 2016 23 Pages PDF
Abstract
In the original dataset (n = 2060), 33% of diabetes patients were diagnosed with liver cancer (n = 515). After using 70% of the original data to training the model and other 30% for testing, the sensitivity and specificity of our model were 0.757 and 0.755, respectively; this means that 75.7% of diabetes patients can be predicted correctly to receive a future liver cancer diagnosis, and 75.5% can be predicted correctly to not be diagnosed with liver cancer. These results reveal that this model can be used as effective predictors of liver cancer for diabetes patients, after discussion with physicians; they also agreed that model can assist physicians to advise potential liver cancer patients and also helpful to decrease the future cost incurred upon cancer treatment.
Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
Authors
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