Next-Generation Business Intelligence Systems for Streamlining Decision Cycles in Government Health Infrastructure
Abstract
The increasing complexity of public health systems demands faster, data-informed decisions to enhance infrastructure planning, crisis response, and service delivery. This review explores how next-generation Business Intelligence (BI) systems—powered by AI, machine learning, and real-time analytics—are revolutionizing decision-making processes within government health infrastructure. Traditional BI tools often fall short in managing the volume, velocity, and variety of health-related data generated from diverse sources such as electronic health records, telemedicine platforms, and IoT-enabled medical devices. In contrast, modern BI ecosystems facilitate proactive decision-making through predictive dashboards, automated alerts, and scenario modeling, enabling administrators to optimize resource allocation and performance tracking. By integrating with national health information systems and leveraging cloud-native architectures, these BI solutions support agile governance, improved transparency, and data interoperability across departments. This paper systematically reviews the technological advancements, implementation challenges, and future prospects of BI-driven decision cycles in the public health sector, aiming to provide actionable insights for digital transformation in government healthcare.
How to Cite This Article
Jeanette Uddoh, Daniel Ajiga, Babawale Patrick Okare, Tope David Aduloju (2021). Next-Generation Business Intelligence Systems for Streamlining Decision Cycles in Government Health Infrastructure . Journal of Frontiers in Multidisciplinary Research (JFMR), 2(1), 292-302. DOI: https://doi.org/10.54660/.IJFMR.2021.2.1.292-302