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The Hospital of the Future: Evidence-Based, Data-Driven

  • John A. SavinoEmail author
  • Rifat Latifi

Abstract

The hospitals of the future will have command centers that will assist decision-makers with real-time electronic clinical support system and tools similar to today’s airport’s air traffic control systems, another major data-driven corporation. Digital data are the foundation of such centers, and many hospitals have already adapted these digital technologies. In 2016 the national health expenditures were estimated at $3.4 trillion with a projected increase from 17.8% to 19.9% of the GDP between 2015 and 2025. The estimate of the artificial intelligence market is poised to reach $6.6 billion by 2021 and by 2026 will annually save the US healthcare $150 billion.

Keywords

Digital data Future hospital Artificial intelligence Telemedicine 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Westchester Medical Center Health NetworkNew York Medical CollegeValhallaUSA
  2. 2.New York Medical College, School of Medicine, Department of Surgery and Westchester Medical CenterValhallaUSA

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