论文标题
在快速发展的大流行中部署人工智能模型的挑战
The challenges of deploying artificial intelligence models in a rapidly evolving pandemic
论文作者
论文摘要
由严重的急性呼吸综合症冠状病毒2引起的COVID-19大流行出现在一个基于大数据,计算能力和神经网络的人工智能(AI)迅速转变的世界。近年来,这些网络的目光越来越多地转向了医疗保健的应用。 Covid-19是一种传播健康和经济灾难的全球疾病,不可避免的是,应吸引世界计算机科学家在学术界和工业上的关注和资源。在广泛的临床和社会挑战中提出了支持对大流行的反应的潜力,包括疾病的预测,监测和抗病毒药物发现。随着大流行对世界人民,行业和经济的影响,对当前大流行的一个令人惊讶的观察结果是AI迄今为止在Covid-19的管理中必须有限的影响。这种信件的重点是探索缺乏成功采用用于COVID-19的AI模型的潜在原因,该模型是在前线医疗服务中的。我们强调了模型必须在流行病的不同阶段解决的移动临床需求,并解释了翻译模型以反映本地医疗保健环境的重要性。我们认为,基础研究和应用研究对于加速AI模型的潜力至关重要,在快速发展的大流行期间尤其如此。关于对Covid-19的反应的看法,可以瞥见全球科学界应如何对未来疾病的疫情做出反应。
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.