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Autonomous Integration Mesh for Resilient, Scalable, and Patient-Centric Healthcare Platforms
Abstract
Healthcare systems face unprecedented challenges in maintaining scalable, secure, and continuously available integration among Electronic Health Records, telemedicine APIs, and AI diagnostics platforms. The Self-Healing Healthcare Integration Mesh (SHHIM) represents a revolutionary architecture that autonomously detects, isolates, and recovers from integration failures across large-scale healthcare ecosystems. Built upon federated service mesh technology with embedded health monitoring agents and anomaly detection engines, SHHIM ensures uninterrupted clinical workflows, secure patient data movement, and intelligent traffic rerouting capabilities. The architecture incorporates machine learning algorithms specifically trained on healthcare API traffic patterns, enabling predictive failure detection and proactive intervention before system disruptions impact patient care delivery. SHHIM implements sophisticated policy-based fallback automation that prioritizes critical patient data flows over routine administrative transactions during system stress conditions. Validation demonstrates exceptional uptime performance through self-healing routing mechanisms while maintaining strict HIPAA compliance and comprehensive audit trail preservation. The system achieves remarkable improvements in recovery time compared to traditional healthcare integration approaches, with automated mechanisms restoring functionality significantly faster than manual intervention procedures. Performance testing across diverse healthcare scenarios confirms minimal latency overhead and efficient resource utilization without compromising system responsiveness or scalability under high-load conditions involving extensive concurrent patient data transactions.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (10)
Pages
483-503
Published
Copyright
Open access

This work is licensed under a Creative Commons Attribution 4.0 International License.

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