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Methodology for integrating artificial intelligence in healthcare systems: learning from COVID-19 to prepare for Disease X.

Petar RadanlievDavid De RoureCarsten MapleUchenna Ani
Published in: AI and ethics (2021)
Artificial intelligence and edge devices have been used at an increased rate in managing the COVID-19 pandemic. In this article we review the lessons learned from COVID-19 to postulate possible solutions for a Disease X event. The overall purpose of the study and the research problems investigated is the integration of artificial intelligence function in digital healthcare systems. The basic design of the study includes a systematic state-of-the-art review, followed by an evaluation of different approaches to managing global pandemics. The study design then engages with constructing a new methodology for integrating algorithms in healthcare systems, followed by analysis of the new methodology and a discussion. Action research is applied to review existing state of the art, and a qualitative case study method is used to analyse the knowledge acquired from the COVID-19 pandemic. Major trends found as a result of the study derive from the synthesis of COVID-19 knowledge, presenting new insights in the form of a conceptual methodology-that includes six phases for managing a future Disease X event, resulting with a summary map of various problems, solutions and expected results from integrating functional AI in healthcare systems.
Keyphrases
  • artificial intelligence
  • healthcare
  • machine learning
  • deep learning
  • big data
  • coronavirus disease
  • sars cov
  • mental health
  • social media
  • current status
  • mass spectrometry
  • high resolution