Multi-Modal Medical Imaging Decision Support at the Edge for Rapid Triage

Authors

  • Rohan Sharma University of Florida, USA Author
  • Priya Patel University of Florida, USA Author
  • Jaffer Vadakkekunnil University of Florida, USA Author
  • Nathan Thomas University of Florida, USA Author

Keywords:

Multi-modal medical imaging, Edge AI, Decision Support Systems, rapid triage, IoMT, Federated Learning

Abstract

Rapid medical triage increasingly depends on the ability to integrate heterogeneous imaging data under strict time, bandwidth, and privacy constraints. Centralized cloud based decision pipelines struggle to meet latency and resilience requirements in emergency and resource constrained settings. This work presents an edge centric multi modal medical imaging decision support framework that fuses radiological, physiological, and contextual signals to enable timely and explainable triage decisions. By combining deep feature fusion, lightweight edge inference, and adaptive model orchestration, the proposed approach supports real time clinical prioritization while preserving data locality. Experimental analysis demonstrates improved responsiveness, robustness, and diagnostic confidence across multiple emergency care scenarios.

Downloads

Published

2022-10-15