How Interoperability Can Enable Artificial Intelligence in Clinical Applications.

Journal: Studies in health technology and informatics
PMID:

Abstract

This paper explores the critical role of Interoperability (IOP) in the integration of Artificial Intelligence (AI) for clinical applications. As AI gains prominence in medical analytics, its application in clinical practice faces challenges due to the lack of standardization in the medical sector. IOP, the ability of systems to exchange information seamlessly, emerges as a fundamental solution. Our paper discusses the indispensable nature of IOP throughout the Data Life Cycle, demonstrating how interoperable data can facilitate AI applications. The benefits of IOP encompass streamlined data entry for healthcare professionals, efficient data processing, enabling the sharing of data and algorithms for replication, and potentially increasing the significance of results obtained by medical data analytics via AI. Despite the challenges of IOP, its successful implementation promises substantial benefits for integrating AI into clinical practice, which could ultimately enhance patient outcomes and healthcare quality.

Authors

  • Filip Rehburg
    Berlin Institute of Health at Charité, Germany.
  • Adam Graefe
    Berlin Institute of Health at Charité, Germany.
  • Miriam Hübner
    Berlin Institute of Health at Charité, Germany.
  • Sylvia Thun
    Charité Universitätsmedizin, Berlin Institute of Health, Germany.