CYLGMay 19, 2020

The challenges of deploying artificial intelligence models in a rapidly evolving pandemic

arXiv:2005.12137v173 citations
Originality Synthesis-oriented
AI Analysis

This addresses the gap between AI development and real-world deployment in healthcare during pandemics, offering insights for researchers and policymakers, but it is incremental as it synthesizes existing observations without new methods or data.

The paper examines why AI models for COVID-19 diagnosis and prognosis have had limited adoption in front-line healthcare, highlighting challenges like moving clinical needs and the need for localization, and argues for more basic and applied research to improve future pandemic responses.

The COVID-19 pandemic, caused by the severe acute respiratory syndrome coronavirus 2, emerged into a world being rapidly transformed by artificial intelligence (AI) based on big data, computational power and neural networks. The gaze of these networks has in recent years turned increasingly towards applications in healthcare. It was perhaps inevitable that COVID-19, a global disease propagating health and economic devastation, should capture the attention and resources of the world's computer scientists in academia and industry. The potential for AI to support the response to the pandemic has been proposed across a wide range of clinical and societal challenges, including disease forecasting, surveillance and antiviral drug discovery. This is likely to continue as the impact of the pandemic unfolds on the world's people, industries and economy but a surprising observation on the current pandemic has been the limited impact AI has had to date in the management of COVID-19. This correspondence focuses on exploring potential reasons behind the lack of successful adoption of AI models developed for COVID-19 diagnosis and prognosis, in front-line healthcare services. We highlight the moving clinical needs that models have had to address at different stages of the epidemic, and explain the importance of translating models to reflect local healthcare environments. We argue that both basic and applied research are essential to accelerate the potential of AI models, and this is particularly so during a rapidly evolving pandemic. This perspective on the response to COVID-19, may provide a glimpse into how the global scientific community should react to combat future disease outbreaks more effectively.

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