Innovative applications of artificial intelligence during the COVID-19 pandemic

Chenrui Lv , Wenqiang Guo , Xinyi Yin , Liu Liu , Xinlei Huang , Shimin Li , Li Zhang
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Abstract

The COVID-19 pandemic has created unprecedented challenges worldwide. Artificial intelligence (AI) technologies hold tremendous potential for tackling key aspects of pandemic management and response. In the present review, we discuss the tremendous possibilities of AI technology in addressing the global challenges posed by the COVID-19 pandemic. First, we outline the multiple impacts of the current pandemic on public health, the economy, and society. Next, we focus on the innovative applications of advanced AI technologies in key areas such as COVID-19 prediction, detection, control, and drug discovery for treatment. Specifically, AI-based predictive analytics models can use clinical, epidemiological, and omics data to forecast disease spread and patient outcomes. Additionally, deep neural networks enable rapid diagnosis through medical imaging. Intelligent systems can support risk assessment, decision-making, and social sensing, thereby improving epidemic control and public health policies. Furthermore, high-throughput virtual screening enables AI to accelerate the identification of therapeutic drug candidates and opportunities for drug repurposing. Finally, we discuss future research directions for AI technology in combating COVID-19, emphasizing the importance of interdisciplinary collaboration. Though promising, barriers related to model generalization, data quality, infrastructure readiness, and ethical risks must be addressed to fully translate these innovations into real-world impacts. Multidisciplinary collaboration engaging diverse expertise and stakeholders is imperative for developing robust, responsible, and human-centered AI solutions against COVID-19 and future public health emergencies.

Abstract Image

COVID-19 大流行期间人工智能的创新应用
COVID-19 大流行给全世界带来了前所未有的挑战。人工智能(AI)技术在应对大流行病管理和响应的关键方面具有巨大潜力。在本综述中,我们将讨论人工智能技术在应对 COVID-19 大流行带来的全球挑战方面的巨大潜力。首先,我们概述了当前流行病对公共卫生、经济和社会的多重影响。接下来,我们重点介绍先进人工智能技术在 COVID-19 预测、检测、控制和治疗药物发现等关键领域的创新应用。具体来说,基于人工智能的预测分析模型可以利用临床、流行病学和 Omics 数据来预测疾病的传播和患者的预后。此外,深度神经网络还能通过医学成像进行快速诊断。智能系统可以支持风险评估、决策和社会感应,从而改善流行病控制和公共卫生政策。此外,高通量虚拟筛选使人工智能能够加快候选治疗药物的确定,并为药物再利用提供机会。最后,我们讨论了人工智能技术在抗击 COVID-19 方面的未来研究方向,强调了跨学科合作的重要性。尽管前景广阔,但要将这些创新充分转化为现实世界的影响,必须解决与模型泛化、数据质量、基础设施准备情况和道德风险有关的障碍。要开发稳健、负责任、以人为本的人工智能解决方案来应对 COVID-19 和未来的公共卫生突发事件,就必须开展多学科合作,让不同的专业知识和利益相关者参与进来。
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