“Medical Expenditure Prediction and Regional Disparities Analysis Using Machine Learning “(Undergraduate student’s research for the 2023 academic year) 

This study aimed to predict future changes in medical expenditures and examine regional disparities using machine lerarning models.

Ministry of Health, Labour and Welfare [1], three prefectures—Akita, Niigata, and Nara—were analyzed. Among several machine learning models tested, the Random Forest algorithm demonstrated the highest predictive accuracy. The results indicated a slight decrease in medical expenditures in Akita Prefecture, while expenditures were projected to increase in Niigata and Nara Prefectures. Akita showed progress in home-based medical care; Niigata exhibited slower development in healthcare infrastructure; and Nara, despite having many medical facilities, had a relatively low rate of health checkup participation. 

These findings highlight the importance of promoting region-specific healthcare initiatives tailored to local characteristics.  

正方形/長方形 1, テキスト ボックス
正方形/長方形 1, テキスト ボックス

[1] Ministry of Health, Labour and Welfare: National Health Expenditures: Summary of Results, https://www.mhlw.go.jp/toukei/list/37-21c.html, (Accessed 2023-06-05).