JSAI2019

Presentation information

International Session

International Session » [ES] E-2 Machine learning

[4D3-E-2] Machine learning: living environment

Fri. Jun 7, 2019 2:00 PM - 3:40 PM Room D (301B Medium meeting room)

Chair: Junichiro Mori (The University of Tokyo)

3:20 PM - 3:40 PM

[4D3-E-2-05] Prediction of the Onset of Lifestyle-related Diseases Using Regular Health Checkup Data

〇Mitsuru Tsunekawa1, Natsuki Oka1, Masahiro Araki1, Motoshi Shintani2, Masataka Yoshikawa3, Takashi Tanigawa4 (1. Kyoto Institute of Technology, 2. SG Holdings Group Health Insurance Association, 3. Japan System Techniques Co.,Ltd., 4. Juntendo University)

Keywords:machine learning, class imbalance, medical information

This study proposes a method for predicting the onset of lifestyle-related diseases using periodical health checkup data. We carefully examined insurance claims data to identify the onsets of the diseases and used them as correct answers for supervised learning. We adopted the undersampling and bagging approach to address the class imbalance problem. We aimed to predict whether lifestyle-related diseases, other than cancer, will develop within one year. The precision and recall of the proposed method were 0.32 and 0.89, respectively. Compared with a baseline that sets thresholds for each examination item and considers their logical sum, it was found that much higher precision could be obtained while maintaining recall, which is meaningful as it allows for the suppression of the number of targets for health guidance, without increasing the negligence of those that are likely to become severely ill.