Protocol for Implementation of an AI-Integrated Patient Monitoring and Diagnostic Model in Smart Hospital Ecosystems: A Hybrid Type 2 Study

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Abstract

Hospitals face mounting challenges in delivering proactive, patient-centered care amid resource constraints and rising clinical complexity. Conventional monitoring systems remain reactive and fragmented, leading to delayed interventions and increased adverse events. This paper presents a protocol for implementing an AI-integrated patient monitoring and diagnostic model designed for smart hospital ecosystems. The proposed architecture combines a clinician dashboard, patient-facing mobile application, and a cloud-based AI analytics core within an ethical governance framework. Using a Hybrid Type 2 implementation design, the system aims to unify real-time predictive monitoring, secure communication, and interoperability through HL7 FHIR standards. Anticipated outcomes include accelerated detection of clinical deterioration, reduced adverse event rates, enhanced patient engagement, and improved workflow efficiency. Beyond clinical benefits, the model offers scalable commercialization potential through modular architecture and cloud deployment, aligning with global digital health priorities and WHO strategies. This protocol lays the foundation for transforming hospital operations into intelligent, patient-centric ecosystems while ensuring compliance with HIPAA/GDPR and AI governance standards.

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