AI-Driven Management Strategies for Healthcare and Biomedical Innovation Ecosystems- A Short Conceptual Review
DOI:
https://doi.org/10.53555/AJBR.v28i4S.8725Keywords:
Artificial Intelligence, Biomedical Innovation, Healthcare Management, Digital Economy, Innovation Ecosystems, Policy FrameworksAbstract
The convergence of synthetic intelligence (AI) and biomedical research is reshaping worldwide healthcare economies and innovation management paradigms. This look at explores how AI-primarily based control techniques decorate efficiency, choice-making, and sustainability within biomedical innovation ecosystems. Drawing upon case studies from pharmaceutical improvement, ophthalmic genetics, and precision medication, the paper evaluates AI’s impact on research productiveness, medical translation timelines, and monetary scalability. Using a mixed-technique analytical framework, we determine how AI-pushed tools—inclusive of predictive analytics, digital twins, and information graphs—enable useful resource optimization, accelerate innovation cycles, and reduce operational charges. The study highlights the transition from linear R&D models to adaptive innovation networks powered via information intelligence. Furthermore, it discusses governance frameworks, ethical demanding situations, and investment tendencies shaping AI integration in biomedical management structures. Findings indicate that AI-led strategies not handiest boom translational fulfilment charges however also foster collaborative price chains among academia, enterprise, and policymakers. The study proposes an included AI-Management Model (AIMM) emphasizing digital understanding infrastructure, human–gadget collaboration, and information-centric coverage design. This version offers actionable insights for institutional leaders and economic planners aiming to construct resilient, innovation-driven healthcare economies in the generation of intelligent automation.
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Copyright (c) 2025 G. Neethirajan, S. Mahendran (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.



