Comparing Artificial Intelligence-Based Versus Conventional Endotracheal Tube Monitoring Systems in Clinical Practice.

Journal: Studies in health technology and informatics
PMID:

Abstract

Endotracheal tube dislodgement is a common patient safety incident in clinical settings. Current clinical practices, primarily relying on bedside visual inspections and equipment checks, often fail to detect endotracheal tube displacement or dislodgement promptly. This study involved the development of a deep learning, artificial intelligence (AI)-based system for monitoring tube displacement. We also propose a randomized crossover experiment to evaluate the effectiveness of this AI-based monitoring system compared to conventional methods. The assessment will focus on immediacy in detecting and handling of tube anomalies, the completeness and accuracy of shift transitions, and the degree of innovation diffusion. The findings from this research are expected to offer valuable insights into the development and integration of AI in enhancing care provision and facilitating innovation diffusion in medical and nursing research.

Authors

  • Zu-Chun Lin
    Department of Nursing, College of Nursing, Tzu Chi University of Science and Technology, Hualien, Taiwan.
  • Malcolm Koo
    Department of Nursing, College of Nursing, Tzu Chi University of Science and Technology, Hualien, Taiwan.
  • Wan-Jung Chang
    Department of Electronic Engineering, National Kaohsiung University of Science and Technology, Kaohsiung, Taiwan.
  • Hsiao-Chuen Chen
    Department of Nursing, College of Nursing, Tzu Chi University of Science and Technology, Hualien, Taiwan.
  • Bo-Hao Liao
    Department of Electronic Engineering, Southern Taiwan University of Science and Technology, Tainan, Taiwan.
  • Lu-Yen Tuan
    VIS@betterworld lab Experimental Education Institution, Taipei, Taiwan.
  • Chun-Wei Liu
    Department of Nursing, College of Nursing, Tzu Chi University of Science and Technology, Hualien, Taiwan.