Secure and Governed Cloud Data Platforms for SAP-Enabled Healthcare Systems with Incrementality-Driven Business Insights
DOI:
https://doi.org/10.15662/IJRAI.2025.0806027Keywords:
Secure Cloud Data Platforms, SAP Healthcare Systems, Data Governance, Incrementality Testing, Business Process Analytics, Network Security, Regulatory ComplianceAbstract
Healthcare organizations are increasingly adopting cloud-based data platforms to support complex business processes, analytics, and digital transformation initiatives. When combined with SAP-enabled enterprise systems, these platforms must ensure strong security, governance, and regulatory compliance while enabling advanced analytical capabilities. This paper presents a secure and governed cloud data platform designed for SAP-enabled healthcare systems with a focus on incrementality-driven business insights. The proposed framework integrates cloud-native data architectures, network-aware security controls, and governance mechanisms to support end-to-end data ingestion, processing, and analytics. Incrementality testing techniques are employed to measure the true impact of business and operational changes, enabling healthcare organizations to make data-driven decisions with reduced risk. Secure APIs and policy-based access control ensure controlled data sharing across clinical, operational, and analytics domains. The framework supports scalability, interoperability, and compliance with healthcare regulations while improving analytical accuracy and business process optimization. Experimental evaluation and architectural analysis demonstrate enhanced data reliability, improved security posture, and actionable insights across SAP-driven healthcare workflows.References
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