Abstract
In modern healthcare, ensuring optimal clinical pathways and efficient care coordination are crucial for enhancing patient outcomes. This paper explores the application of artificial intelligence (AI) algorithms to optimize clinical pathways and improve care coordination processes. By leveraging AI, healthcare providers can streamline care delivery, reduce costs, and enhance patient experiences. This research examines various AI-powered solutions and their impact on clinical pathway optimization, highlighting key benefits and challenges. The paper concludes with recommendations for implementing AI-driven strategies to improve patient care coordination in healthcare settings.
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