Hybrid Deep Learning Framework for Interpretable Healthcare Diagnostics Integrating Multi-Modal Data for Enhanced Trust and Accuracy

Autor/innen

  • Muhammad Hayat Student of Master in Data Science Riphah International University, Islamabad, Pakistan Autor/in
  • Prof. Inam Ullah Department of Computer Engineering, Gachon University, Seongnam 13120, Republic of Korea Autor/in
  • Mudassar Mahmmod Lecturer Collage of Business University of Buraimi, Al Buraimi, Oman Autor/in

DOI:

https://doi.org/10.5281/zenodo.15069851

Schlagwörter:

• Interpretable AI, • Hybrid Deep Learning, Healthcare Diagnostics, Explainability in AI, Grad-CAM Heatmaps, SHAP Feature Importance, Multi-Modal Data Integration, Disease Prediction, Ethical AI, Trustworthy Machine Learning

Abstract

The growing use of artificial intelligence (AI) within healthcare demands models that boast both high-performance and interpretability. This study presents a hybrid deep learning framework that combines multi-modal data for precise disease predictions along with actionable and interpretable insights, which in turn can drastically enhance the quality of diagnosis. Through the integration of CNN and Transformer-based models, along with advanced feature fusion techniques, the comprehensive framework guarantees those whose predictive performance is optimal across a wide range of datasets. Additionally, employ explainability modules like Grad-CAM, SHAP which allows users to see why the model made a certain prediction with visualizations in a more interpretable manner like heatmaps or feature importance scores, thus increasing trust in the model. Experiments on public datasets (e.g., MIMIC-IV, ChestX-ray8, and COVID-19 CT) show better accuracy and higher explainability than traditional black-box models. This study forges a vital connection in the space of healthcare AI, stressing the importance of performance along with transparency to support the ethical and effective implementation of AI systems in the clinical environment.

Veröffentlicht

2025-03-22

Ausgabe

Rubrik

Articles