Yeni Mahwati, Dhihram Tenrisau, Syarif Rahman Hasibuan, Bhirau Wilaksono, Yeni Indriyani, Andi Afdal Abdullah, Halik Malik, Andi Alfian Zainuddin
Objectives: The objective of this study was to develop machine learning models to predict health insurance claim costs among older adults in Indonesia. Methods: This study utilized secondary data from the Indonesian National Health Insurance program (Jaminan Kesehatan Nasional [JKN]) spanning 2017 to 2023. Three modeling techniques—linear regression, random forest, and XGBoost—were employed to predict individual claim costs. Model performance was assessed using the root mean square error (RMSE), coefficient of determination (R2), and mean absolute error (MAE). Additionally, variable importance analysis was conducted to identify key predictors. Results: XGBoost with 500 boosting rounds yielded the best performance, with an RMSE of 11 360 283, an R2 of 0.81, and an MAE of 4 485 917, outperforming both linear regression (RMSE, 13 710 035; R2 =0.72) and random forest (RMSE, 12 434 238; R2 =0.78). Notably, outpatient care was identified as the most consistent predictor across all models. Other significant predictors included length of stay (LOS), diagnosis type (International Classification of Diseases, 10th revision chapter), facility type, facility classification, and severity of illness, particularly for moderate cases. Although LOS and diagnosis type were important predictors, these findings should be interpreted in the context of Indonesia’s fixed Indonesian Case-Based Groups payment system. Conclusions: XGBoost provides reliable predictions of claim costs among older adults, capturing clinical, utilization, and structural drivers. These findings can inform targeted interventions, improve chronic disease management, optimize the referral system, and support integration of predictive tools into JKN to enhance responsiveness and promote sustainable, equitable financing. © 2026 The Korean Society for Preventive Medicine.
Sekolah Tinggi Ilmu Kesehatan Dharma Husada, Bandung, Indonesia; Public Health Literature Club, Yogyakarta, Indonesia; Center for Health Administration and Policy Studies, Faculty of Public Health, Universitas Indonesia, Jakarta, Indonesia; Center for Longevity Research, Faculty of Medicine, Universitas Negeri Makassar, Makassar, Indonesia; Department of Public Health, Faculty of Health Science, Universitas Muhammadiyah Surakarta, Surakarta, Indonesia; Social Insurance Administration Organization, Jakarta, Indonesia; Department of Public Health and Community, Faculty of Medicine, Universitas Hasanuddin, Makassar, Indonesia