Transforming Modern Healthcare Through Scalable Interoperable and Secure Information Systems Leveraging Data Integration Clinical Decision Support and Artificial Intelligence
Keywords:
Digital Health, Interoperability, Artificial Intelligence, Data Integration, Clinical Decision Support Systems, Healthcare Information Systems, Cybersecurity, EHRAbstract
Modern healthcare is undergoing a digital transformation powered by the integration of data-driven technologies. This paper explores the development of scalable, interoperable, and secure information systems that harness the potential of data integration, clinical decision support systems (CDSS), and artificial intelligence (AI). We investigate the current barriers and enablers to adoption, drawing insights from recent research. By analyzing original peer-reviewed studies, this paper presents a synthesized understanding of how these technologies can revolutionize clinical outcomes, healthcare accessibility, and system-wide efficiency. Key challenges such as data fragmentation, privacy, and standardization are also discussed, offering a roadmap toward sustainable digital health ecosystems.
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