EXPLAINABLE PREDICTIVE ANALYTICS FOR SMART HEALTHCARE USING A MODULAR HYBRID INTELLIGENCE FRAMEWORK
DOI:
https://doi.org/10.20319/stra.2025.2536Keywords:
Smart Healthcare, Genetic Optimization, Fuzzy Systems, Multimodal Data, Deep Learning, ExplainabilityAbstract
The exponential growth of healthcare data – driven by electronic health records (EHRs), wearable sensors, and continuous remote monitoring systems – has created both immense opportunities and complex challenges for modern clinical decision-making. Effectively harnessing this heterogeneous, high-volume, and high-velocity data requires intelligent systems that can not only deliver accurate predictions but also provide interpretable insights to support clinician trust and patient safety. In this paper, a modular hybrid computational intelligence framework designed to advance personalized, real-time healthcare analytics, is proposed. Our approach synergistically integrates deep learning for high-dimensional feature extraction, fuzzy inference systems for transparent reasoning under uncertainty, and genetic algorithms for adaptive optimization. This tri-layered architecture enables the system to learn from multimodal data sources, including physiological signals (e.g., ECG, glucose levels), structured clinical records, and unstructured patient-reported outcomes, to predict critical health risks such as cardiac arrhythmias, myocardial infarction, and diabetes-related complications. Through experimentation on publicly available real-world datasets, the proposed framework demonstrates superior predictive accuracy, enhanced interpretability, and computational efficiency compared to conventional machine learning and deep learning baselines. Importantly, the inclusion of fuzzy logic modules allows clinicians to trace back the reasoning paths of the system, addressing the growing demand for Explainable AI (XAI) in regulated healthcare environments. This research bridges the longstanding gap between model performance and transparency by offering a scalable and modular solution that is adaptable to diverse clinical contexts. By supporting proactive risk stratification and timely interventions, the framework has the potential to transform reactive care models into intelligent, preventative, and patient-centric healthcare delivery systems.
References
Ali, O., Shrestha, A., Soar, J., & Wamba, S. F. (2018). Cloud computing-enabled healthcare opportunities, issues, and applications: A systematic review. International Journal of Information Management, 43, 146–158. https://doi.org/10.1016/j.ijinfomgt.2018.07.009
Dehghani Soufi, M., Samad-Soltani, T., Shams Vahdati, S., & Rezaei-Hachesu, P. (2018). Decision support system for triage management: A hybrid approach using rule-based reasoning and fuzzy logic. International Journal of Medical Informatics, 114, 35–44.
https://doi.org/10.1016/j.ijmedinf.2018.03.008
Gulshan, V., Peng, L., Coram, M., Stumpe, M. C., Wu, D., Narayanaswamy, A., Venugopalan, S., Widner, K., Madams, T., Cuadros, J., Kim, R., Raman, R., Nelson, P. C., Mega, J. L., & Webster, D. R. (2016). Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs. JAMA, 316(22), 2402. https://doi.org/10.1001/jama.2016.17216
Guzman, J. C., Melin, P., & Prado-Arechiga, G. (2017). Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization. Algorithms, 10(3), 79. https://doi.org/10.3390/a10030079
Jang, J.-S. R. (1993). ANFIS: adaptive-network-based fuzzy inference system. IEEE Transactions on Systems, Man, and Cybernetics, 23(3), 665–685. https://doi.org/10.1109/21.256541
Johnson, A. E. W., Pollard, T. J., Shen, L., Lehman, L. H., Feng, M., Ghassemi, M., Moody, B., Szolovits, P., Anthony Celi, L., & Mark, R. G. (2016). MIMIC-III, a freely accessible critical care database. Scientific Data, 3(1), 160035. https://doi.org/10.1038/sdata.2016.35
Krajnak, M., & Xue, J. (2006). Optimizing Fuzzy Clinical Decision Support Rules Using Genetic Algorithms. 2006 International Conference of the IEEE Engineering in Medicine and Biology Society, 5173–5176. https://doi.org/10.1109/IEMBS.2006.260366
Minaee, S., Kalchbrenner, N., Cambria, E., Nikzad, N., Chenaghlu, M., & Gao, J. (2022). Deep Learning--based Text Classification. ACM Computing Surveys, 54(3), 1–40. https://doi.org/10.1145/3439726
Mordon, S. R., Wassmer, B., Reynaud, J., & Zemmouri, J. (2008). Mathematical modeling of laser lipolysis. BioMedical Engineering OnLine, 7(1), 10. https://doi.org/10.1186/1475-925X-7-10
Nemati, S., Holder, A., Razmi, F., Stanley, M. D., Clifford, G. D., & Buchman, T. G. (2018). An Interpretable Machine Learning Model for Accurate Prediction of Sepsis in the ICU. Critical Care Medicine, 46(4), 547–553. https://doi.org/10.1097/CCM.0000000000002936
Roth, V., & Lange, T. (2004). Bayesian Class Discovery in Microarray Datasets. IEEE Transactions on Biomedical Engineering, 51(5), 707–718. https://doi.org/10.1109/TBME.2004.824139
Rudin, C. (2019). Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead. Nature Machine Intelligence, 1(5), 206–215.
https://doi.org/10.1038/s42256-019-0048-x
Sakpal, R., Wilson, D.-M., Elnitsky, C., Taber, K., & Brearly, T. W. (2016). Virtual Standardized Patient as a Training Tool for Mild TBI Screening. 2016 IEEE International Conference on Healthcare Informatics (ICHI), 113–117. https://doi.org/10.1109/ICHI.2016.19
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Copyright of Published Articles
Author(s) retain the article copyright and publishing rights without any restrictions.
All published work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.