How artificial intelligence and machine learning can help healthcare systems respond to COVID-19

Author:

van der Schaar Mihaela,Alaa Ahmed M.,Floto Andres,Gimson Alexander,Scholtes Stefan,Wood Angela,McKinney Eoin,Jarrett Daniel,Lio Pietro,Ercole Ari

Abstract

AbstractThe COVID-19 global pandemic is a threat not only to the health of millions of individuals, but also to the stability of infrastructure and economies around the world. The disease will inevitably place an overwhelming burden on healthcare systems that cannot be effectively dealt with by existing facilities or responses based on conventional approaches. We believe that a rigorous clinical and societal response can only be mounted by using intelligence derived from a variety of data sources to better utilize scarce healthcare resources, provide personalized patient management plans, inform policy, and expedite clinical trials. In this paper, we introduce five of the most important challenges in responding to COVID-19 and show how each of them can be addressed by recent developments in machine learning (ML) and artificial intelligence (AI). We argue that the integration of these techniques into local, national, and international healthcare systems will save lives, and propose specific methods by which implementation can happen swiftly and efficiently. We offer to extend these resources and knowledge to assist policymakers seeking to implement these techniques.

Funder

University of Cambridge

Publisher

Springer Science and Business Media LLC

Subject

Artificial Intelligence,Software

Reference41 articles.

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2. Ahmed, M. A., & van der Schaar, M. (2020). Discriminative Jackknife: Quantifying uncertainty in deep learning via higher order influence functions.

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4. Alaa, A. M., & van der Schaar, M. (2019). Attentive state-space modeling of disease progression. Advances in Neural Information Processing Systems. 2019.

5. Alaa, A. M., & van der Schaar, M. (2020). Frequentist uncertainty in recurrent neural networks via blockwise influence functions.

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