IoT and AI-Driven Predictive Healthcare Systems: The Intersection of Machine Learning, Blockchain, and Healthcare Management Practices
DOI:
https://doi.org/10.52783/jns.v14.3160Keywords:
Predictive Healthcare, Artificial Intelligence, Internet of Things, Blockchain, Machine LearningAbstract
Artificial Intelligence (AI), Internet of Things (IoT), and Blockchain technologies are converging to shape predictive healthcare systems that are intelligent, secure and real time patient care. The main focus of this research is the integration of these technologies for enhanced predictive diagnostics, health monitoring and data management. Four machine learning algorithms i.e. Random Forest, Long Short Term Memory (LSTM), Support Vector Machine (SVM) and XGBoost are implemented and evaluated using real world healthcare datasets. Metrics such as accident prediction, accident Localiziation, accident Explanations and Dynamic Route Choice were measured as the performance of these models and as such, it was found out that Lstm had the highest accuracy of 96.8, XgBoost had achieved with 94.5, Random Forest with 92.3 and Support Vector Machine with 90.7. Results show that real time IoT data used along with Blockchain supported AI algorithms make early disease prediction and health trend analysis more accurate and efficient. It also increases data transparency and security, solving important issues of healthcare information systems. Further comparative analysis with related work confirms further that the proposed model has good precision, recall and data integrity. In this study, this framework demonstrates the practicality of techno-medical application for next generation of healthcare system, providing more proactive and personalized healthcare services.
Downloads
Metrics
References
ADEWALE, B.A., ENE, V.O., OGUNBAYO, B.F. and AIGBAVBOA, C.O., 2024. A Systematic Review of the Applications of AI in a Sustainable Building’s Lifecycle. Buildings, 14(7), pp. 2137.
ADIBI, S., RAJABIFARD, A., SHOJAEI, D. and WICKRAMASINGHE, N., 2024. Enhancing Healthcare through Sensor-Enabled Digital Twins in Smart Environments: A Comprehensive Analysis. Sensors, 24(9), pp. 2793.
AL MASUD, A., ISLAM, M.T., RAHMAN, M.K.H., OR ROSID, M.H., RAHMAN, M.J., AKTER, T. and SZABÓ, K., 2024. Fostering sustainability through technological brilliance: a study on the nexus of organizational STARA capability, GHRM, GSCM, and sustainable performance. Discover Sustainability, 5(1), pp. 325.
AOUNZOU, Y., BOULAALAM, A. and KALLOUBI, F., 2025. Convergence of blockchain, IoT, and machine learning: exploring opportunities and challenges – a systematic review. International Journal on Smart Sensing and Intelligent Systems, 18(1),.
ASFAHANI, A.M., 2024. Fusing talent horizons: the transformative role of data integration in modern talent management. Discover Sustainability, 5(1), pp. 25.
ATLAM, H.F., EKURI, N., AZAD, M.A. and HARJINDER, S.L., 2024. Blockchain Forensics: A Systematic Literature Review of Techniques, Applications, Challenges, and Future Directions. Electronics, 13(17), pp. 3568.
BATHULA, A., GUPTA, S.K., MERUGU, S., SABA, L., KHANNA, N.N., LAIRD, J.R., SANAGALA, S.S., SINGH, R., GARG, D., FOUDA, M.M. and SURI, J.S., 2024. Blockchain, artificial intelligence, and healthcare: the tripod of future—a narrative review. The Artificial Intelligence Review, 57(9), pp. 238.
BHAGAT, S.V. and DEEPIKA, K., 2024. Navigating the Future: The Transformative Impact of Artificial Intelligence on Hospital Management- A Comprehensive Review. Cureus, 16(2),.
BHUMICHAI, D., SMILIOTOPOULOS, C., BENTON, R., KAMBOURAKIS, G. and DAMOPOULOS, D., 2024. The Convergence of Artificial Intelligence and Blockchain: The State of Play and the Road Ahead. Information, 15(5), pp. 268.
BILLANES, J.D., GRACE, Z., MA and JØRGENSEN, B.N., 2025. Data-Driven Technologies for Energy Optimization in Smart Buildings: A Scoping Review. Energies, 18(2), pp. 290.
CHEN, X., XIE, H., TAO, X., WANG, F.L., LENG, M. and LEI, B., 2024. Artificial intelligence and multimodal data fusion for smart healthcare: topic modeling and bibliometrics. The Artificial Intelligence Review, 57(4), pp. 91.
CHOI, N. and KIM, H., 2025. Technological Convergence of Blockchain and Artificial Intelligence: A Review and Challenges. Electronics, 14(1), pp. 84.
DEHGHAN, S., SASAN, S.K., ECHCHAKOUI, S. and BARKA, N., 2025. The Integration of Additive Manufacturing into Industry 4.0 and Industry 5.0: A Bibliometric Analysis (Trends, Opportunities, and Challenges). Machines, 13(1), pp. 62.
DRITSAS, E. and TRIGKA, M., 2025. Exploring the Intersection of Machine Learning and Big Data: A Survey. Machine Learning and Knowledge Extraction, 7(1), pp. 13.
ELAHI, M., AFOLARANMI, S.O., MARTINEZ LASTRA, J.L. and PEREZ GARCIA, J.A., 2023. A comprehensive literature review of the applications of AI techniques through the lifecycle of industrial equipment. Discover Artificial Intelligence, 3(1), pp. 43.
ELISHA ELIKEM, K.S., ANGGRAINI, L., KUMI, J.A., LUNA, B.K., AKANSAH, E., HAFEEZ, A.S., MENDONÇA, I. and ARITSUGI, M., 2024. IoT Solutions with Artificial Intelligence Technologies for Precision Agriculture: Definitions, Applications, Challenges, and Opportunities. Electronics, 13(10), pp. 1894.
EMAD, S., ABOULNAGA, M., WANAS, A. and ABOUAIANA, A., 2025. The Role of Artificial Intelligence in Developing the Tall Buildings of Tomorrow. Buildings, 15(5), pp. 749.
GARAD, A., RIYADH, H.A., AL-ANSI, A. and BESHR, B.A.H., 2024. Unlocking financial innovation through strategic investments in information management: a systematic review. Discover Sustainability, 5(1), pp. 381.
KARIM, M.M., DONG, H.V., KHAN, S., QU, Q. and KHOLODOV, Y., 2025. AI Agents Meet Blockchain: A Survey on Secure and Scalable Collaboration for Multi-Agents. Future Internet, 17(2), pp. 57.
[20] KULKOV, I., KULKOVA, J., LEONE, D., ROHRBECK, R. and MENVIELLE, L., 2024. Stand-alone or run together: artificial intelligence as an enabler for other technologies. International Journal of Entrepreneurial Behaviour & Research, 30(8), pp. 2082-2105.
LAWAL, O.O., NAWARI, N.O. and LAWAL, O., 2025. AI-Enabled Cognitive Predictive Maintenance of Urban Assets Using City Information Modeling—Systematic Review. Buildings, 15(5), pp. 690.
LIFELO, Z., DING, J., NING, H., QURAT-UL-AIN and DHELIM, S., 2024. Artificial Intelligence-Enabled Metaverse for Sustainable Smart Cities: Technologies, Applications, Challenges, and Future Directions. Electronics, 13(24), pp. 4874.
LÓPEZ-MENESES, E., MELLADO-MORENO, P., CELIA GALLARDO HERRERÍAS and PELÍCANO-PIRIS, N., 2025. Educational Data Mining and Predictive Modeling in the Age of Artificial Intelligence: An In-Depth Analysis of Research Dynamics. Computers, 14(2), pp. 68.
MEHMOOD, F., MUMTAZ, N. and MEHMOOD, A., 2025. Next-Generation Tools for Patient Care and Rehabilitation: A Review of Modern Innovations. Actuators, 14(3), pp. 133.
MILLER, T., DURLIK, I., KOSTECKA, E., KOZLOVSKA, P., ŁOBODZIŃSKA, A., SOKOŁOWSKA, S. and NOWY, A., 2025. Integrating Artificial Intelligence Agents with the Internet of Things for Enhanced Environmental Monitoring: Applications in Water Quality and Climate Data. Electronics, 14(4), pp. 696.
MOHAMMED AARIF, K.O., ALAM, A. and HOTAK, Y., 2025. Smart Sensor Technologies Shaping the Future of Precision Agriculture: Recent Advances and Future Outlooks. Journal of Sensors, 2025.
NADA, S.A., SARAH AHMED, M.R., HALIMA, M.H., ALSHAHRANI, F.N., ALOTIBI, M.H., OHOUD, A.A., GOFASHI, O.M., ALDOSARI, M.K., HEIAM, M.A., MARAM, S.A., SALHA AHMED, M.O., MARIAM ALI, M.M. and EIDAH YAHYA NASSER, A.J., 2024. The Impact of New Health Transformational on Nursing Practice: A Systematic Review of Current Trends of Nursing Care and Future Directions. Journal of International Crisis and Risk Communication Research, 7, pp. 2005-2024.
NOUR, S.M., REEM, S.S., SAID, S.A. and ISLAM THARWAT, A.H., 2025. Harnessing the Power of an Integrated Artificial Intelligence Model for Enhancing Reliable and Efficient Dental Healthcare Systems. Applied System Innovation, 8(1), pp. 7.
NOWROZY, R., 2025. GPT, ontology, and CAABAC: A tripartite personalized access control model anchored by compliance, context and attribute. PLoS One, 20(1),.
OPREA, S. and BÂRA, A., 2025. Is Artificial Intelligence a Game-Changer in Steering E-Business into the Future? Uncovering Latent Topics with Probabilistic Generative Models. Journal of Theoretical and Applied Electronic Commerce Research, 20(1), pp. 16.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
You are free to:
- Share — copy and redistribute the material in any medium or format
- Adapt — remix, transform, and build upon the material for any purpose, even commercially.
Terms:
- Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
- No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.