Leveraging Oracle AI and SAP Integration for a Secure Cloud Framework in Electronic Health Record Management
DOI:
https://doi.org/10.15662/IJEETR.2025.0706015Keywords:
Oracle AI, SAP integration, Electronic Health Records, secure cloud framework, healthcare analytics, OCI security, interoperability, predictive healthcare systemsAbstract
The rapid digital transformation of healthcare necessitates secure, intelligent, and interoperable systems for managing Electronic Health Records (EHRs). This study proposes a robust cloud-based framework that integrates Oracle Artificial Intelligence (AI) capabilities with SAP enterprise systems to enhance security, scalability, and data-driven decision-making in EHR management. The framework leverages Oracle Cloud Infrastructure (OCI), Oracle Machine Learning (OML), and SAP Health modules to ensure seamless data exchange, automated analytics, and real-time clinical insights. Advanced AI models enable anomaly detection, patient data classification, and predictive risk analysis, while SAP integration ensures operational continuity, workflow automation, and compliance with healthcare standards. Security is strengthened through encryption, identity access management, and intelligent monitoring embedded within OCI’s security architecture. The proposed system demonstrates improved data integrity, enhanced interoperability, and optimized healthcare operations, offering a reliable solution for next-generation EHR management in modern healthcare institutions.
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