@article{oai:nagoya.repo.nii.ac.jp:00003881, author = {池田, 充 and Ikeda, Mitsuru and 伊藤, 茂樹 and Ito, Shigeki and 石垣, 武男 and Ishigaki, Takeo and Yamauchi, Kazunobu and 山内, 一信}, issue = {3}, journal = {Computerized Medical Imaging and Graphics}, month = {May}, note = {We have investigated a neural network classifier based on CT findings extracted by a radiologist for the differential diagnosis between the pancreatic ductal adenocarcinoma and mass-forming pancreatitis, and compared its classification performance with that of Bayesian analysis, Hayashi's quantification method II, and radiologists. The three computerized classification methods were designed to classify categorized CT findings extracted by a radiologist, and were trained and tested on 71 cases. There was comparable performance of the neural network, the Bayesian analysis, Hayashi's quantification method II, and the radiologists, in classifying pancreatic carcinoma and inflammatory mass.}, pages = {75--183}, title = {Evaluation of a neural network classifier for pancreatic masses based on CT findings}, volume = {21}, year = {1997} }