AI-Powered Personalized Preventive Healthcare System Using Predictive Risk Modeling and Lifestyle Analytics

Authors

  • Tanvi Jain
  • Ramesh Kumar

DOI:

https://doi.org/10.5281/ijurd.v2i3.26

Keywords:

Natural Language Processing, Clinical Text, BioBERT, Named Entity Recognition, Medical Reports, Text Mining

Abstract

Preventive healthcare is becoming increasingly important for reducing the burden of chronic diseases and improving overall population health. This paper presents an AI-Powered Personalized Preventive Healthcare System that leverages predictive risk modeling and lifestyle analytics to enable early intervention and disease prevention. The proposed framework integrates data from wearable devices, electronic health records, and patient lifestyle inputs such as diet, physical activity, and sleep patterns. Machine learning and deep learning models are employed to analyze risk factors and predict the likelihood of developing conditions such as cardiovascular disease, diabetes, and hypertension. The system provides personalized recommendations, including lifestyle modifications and preventive measures, tailored to individual health profiles. Adaptive learning mechanisms are incorporated to continuously refine predictions based on new data. Additionally, explainability modules are included to ensure transparency and user trust. Experimental results demonstrate improved prediction accuracy and user engagement compared to traditional preventive approaches. Integration with prior research in healthcare analytics enhances system robustness and scalability. The study highlights the potential of AI-driven preventive systems in transforming healthcare from reactive treatment to proactive health management.

Author Biographies

Tanvi Jain

Data Science, Chaudhary Ranbir Singh University, Jind

Ramesh Kumar

Computer Applications, Bahra University, Shimla

References

Aman, & Chhillar, R. S. (2021). Analyzing predictive algorithms in data mining for cardiovascular disease using WEKA tool. International Journal of Advanced Computer Science and Applications, 12(8), 144–150.

Aman, & Chhillar, R. S. (2022). Analyzing three predictive algorithms for diabetes mellitus against the Pima Indians dataset. ECS Transactions, 107(1), 2697.

Aman, & Chhillar, R. S. (2023). Optimized stacking ensemble for early-stage diabetes mellitus prediction. International Journal of Electrical and Computer Engineering, 13(6).

Aman, & Chhillar, R. S. (2024). A stacking-based hybrid model with random forest as meta-learner for diabetes mellitus prediction. International Journal of Machine Learning, 14(2), 54–58.

Aman, Chhillar, R. S., & Chhillar, U. (2023). Disease prediction in healthcare: An ensemble learning perspective.

Aman, Chhillar, R. S., & Chhillar, U. (2024). Machine learning in the battle against COVID-19: Predictive models and future directions. Future Computing Technologies for Sustainable Development (NCFCTSD-24).

Aman, Chhillar, R. S., & Chhillar, U. (2025). Machine learning and chronic kidney disease: Towards early prediction and diagnosis. Emerging Trends in Engineering, Commerce, Management and Hospitality Management in the Digital Age for a Sustainable Future.

Darolia, A., Chhillar, R. S., Alhussein, M., Dalal, S., Aurangzeb, K., & Lilhore, U. K. (2024). Enhanced cardiovascular disease prediction through self-improved Aquila optimized feature selection in quantum neural network and LSTM model. Frontiers in Medicine, 11, 1414637.

Aman, C. R. (2020). Disease predictive models for healthcare by using data mining techniques: State of the art. SSRG International Journal of Engineering Trends and Technology, 68(10). Available: https://www.researchgate.net/profile/Aman-Darolia/publication/345397957_Disease_Predictive_Models_for_Healthcare_by_using_Data_Mining_Techniques_State_of_the_Art/links/63b599fa03aad5368e64aa42/Disease-Predictive-Models-for-Healthcare-by-using-Data-Mining-Techniques-State-of-the-Art.pdf

Topol, E. J. (2019). High-performance medicine: The convergence of human and artificial intelligence. Nature Medicine, 25(1), 44–56.

Esteva, A., Robicquet, A., Ramsundar, B., et al. (2019). A guide to deep learning in healthcare. Nature Medicine, 25(1), 24–29.

Raghupathi, W., & Raghupathi, V. (2014). Big data analytics in healthcare. Health Information Science and Systems, 2(1), 3.

WHO. (2020). Preventive healthcare and global health strategies.

Published

2026-03-30

How to Cite

Jain, T., & Kumar, R. (2026). AI-Powered Personalized Preventive Healthcare System Using Predictive Risk Modeling and Lifestyle Analytics. International Journal of Unified Research & Development (IJURD), 2(3). https://doi.org/10.5281/ijurd.v2i3.26

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