Artificial intelligence-based imaging analytics and lung cancer diagnostics: Considerations for health system leaders.

Journal: Healthcare management forum
Published Date:

Abstract

Lung cancer is a leading cause of cancer death in Canada, and accurate, early diagnosis are critical to improving clinical outcomes. Artificial Intelligence (AI)-based imaging analytics are a promising healthcare innovation that aim to improve the accuracy and efficiency of lung cancer diagnosis. Maximizing their clinical potential while mitigating their risks and limitations will require focused leadership informed by interdisciplinary expertise and system-wide insight. We convened a knowledge exchange workshop with diverse Saskatchewan health system leaders and stakeholders to explore issues surrounding the use of AI in diagnostic imaging for lung cancer, including implementation opportunities, challenges, and priorities. This technology is anticipated to improve patient outcomes, reduce unnecessary healthcare spending, and increase knowledge. However, health system leaders must also address the needs for robust data, financial investment, effective communication and collaboration between healthcare sectors, privacy and data protections, and continued interdisciplinary research to achieve this technology's potential benefits.

Authors

  • Amy Zarzeczny
    Johnson Shoyama Graduate School of Public Policy, 6846University of Regina, Regina, Saskatchewan, Canada.
  • Paul Babyn
    College of MedicineSaskatchewan Health Authority Saskatoon SK S7K 0M7 Canada.
  • Scott J Adams
    College of Medicine, University of Saskatchewan, Saskatoon, Saskatchewan, Canada. Electronic address: scott.adams@usask.ca.
  • Justin Longo
    Johnson Shoyama Graduate School of Public Policy, 6846University of Regina, Regina, Saskatchewan, Canada.