Forecasting the future burden of major diseases in Kazakhstan using global burden of disease and time series models (ARIMA, Prophet, LSTM), 2019-2032
Tilektes Maulenkul 1 , Temirgali Aimyshev 1 , Ainash Oshibayeva 2 , Adnan Yazici 3 , Mohamad Aljofan 1 , Aigerim Japparkulova 2 , Abduzhappar Gaipov 1 *
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1 Department of Medicine, Nazarbayev University School of Medicine, Astana, KAZAKHSTAN2 Faculty of Medicine, Khoja Akhmet Yassawi Kazakh-Turkish International University, Turkistan, KAZAKHSTAN3 Department of Computer Science, School of Engineering and Digital Sciences, Nazarbayev University School of Medicine, Astana, KAZAKHSTAN* Corresponding Author

Abstract

Background: Over the last years, it has become a widespread practice to use the global burden of disease (GBD) metrics for anticipating the disease patterns all over the world. Disability-adjusted life years (DALYs) is the main indicator to use for quantifying the losses in terms of health caused by disease. This study projects Kazakhstan’s disease burden from 2019 to 2032 by applying and comparing four forecasting approaches: GBD projections, auto-regressive integrated moving average (ARIMA), Prophet, and long short-term memory (LSTM) neural networks.
Methods: DALY data for the top 10 disease categories in Kazakhstan were modeled using Python 3.11 with statistical and machine learning libraries. Each model was trained and validated for short- and medium-term forecasts, with performance compared across trajectory trends and disease ranking stability.
Results: GBD and LSTM models projected stable rankings among the top 10 DALY contributors through 2032, with only malignant neoplasms of the colon and rectum showing a decline, while ARIMA and Prophet exhibited greater temporal fluctuations, predicting a drop in lower respiratory infections. Across all models, noncommunicable diseases, particularly, cardiovascular and metabolic disorders, remain dominant drivers of Kazakhstan’s future health burden.
Conclusions: Deep learning (LSTM) and GBD approaches yielded smoother, more robust long-term predictions, whereas ARIMA and Prophet captured short-term variability more sensitively, highlighting the benefit of integrating statistical and AI-based paradigms for comprehensive national health forecasting and policy design.

License

This is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Article Type: Original Article

ELECTRON J GEN MED, Volume 23, Issue 1, February 2026, Article No: em710

https://doi.org/10.29333/ejgm/17734

Publication date: 12 Jan 2026

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