Title :
Prescription Prediction towards Computer-Assisted Diagnosis for Kampo Medicine
Author :
Xiaoyu Mi;Hiroshi Ikeda;Fumihiko Nakazawa;Hidetoshi Matsuoka;Erika Kataoka;Satoshi Hamaya;Hiroshi Odaguchi;Tatsuya Ishige;Yuichi Ito;Akino Wakasugi;Tadaaki Kawanabe;Mariko Sekine;Toshihiko Hanawa;Shinichi Yamaguchi;Tatsuo Tanaka
Author_Institution :
Monozukuri Technol. Lab., Fujitsu Labs. Ltd., Atsugi, Japan
Abstract :
This paper focuses on the attempt to formulate the prescription prediction logic based on the medical data analysis towards the future computer-assisted-diagnosis for Kampo medicine. We constructed and evaluated prediction models for some frequently-used prescriptions using six kinds of machine learning algorithms including artificial neural network, multinomial logit, random forest, support vector machine, k-nearest neighbor, and decision tree. The possibility of prescription prediction and the necessary amount of data required for robust prediction are clarified.
Keywords :
"Medical diagnostic imaging","Predictive models","Testing","Artificial neural networks","Computers","Medical services","Computational modeling"
Conference_Titel :
Computer Application Technologies (CCATS), 2015 International Conference on
DOI :
10.1109/CCATS.2015.38