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Digital health and artificial intelligence in kidney research: a report from the 2020 Kidney Disease Clinical Trialists (KDCT) meeting
7
Zitationen
8
Autoren
2021
Jahr
Abstract
The exponential growth in digital technology coupled with the global coronavirus disease 2019 pandemic is driving a profound change in the delivery of medical care and research conduct. The growing availability of electronic monitoring, electronic health records, smartphones and other devices and access to ever greater computational power provides not only new opportunities, but also new challenges. Artificial intelligence (AI) exemplifies the potential of this digital revolution, which also includes other tools such as mobile health (mHealth) services and wearables. Despite digital technology becoming commonplace, its use in medicine and medical research is still in its infancy, with many clinicians and researchers having limited experience with such tools in their usual practice. This article, derived from the 'Digital Health and Artificial Intelligence' session of the Kidney Disease Clinical Trialists virtual workshop held in September 2020, aims to illustrate the breadth of applications to which digital tools and AI can be applied in clinical medicine and research. It highlights several innovative projects incorporating digital technology that range from streamlining medical care of those with acute kidney injury to the use of AI to navigate the vast genomic and proteomic data gathered in kidney disease. Important considerations relating to any new digital health project are presented, with a view to encouraging the further evolution and refinement of these new tools in a manner that fosters collaboration and the generation of robust evidence.
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Autoren
Institutionen
- The George Institute for Global Health(AU)
- UNSW Sydney(AU)
- The University of Sydney(AU)
- National Health and Medical Research Council(AU)
- University of British Columbia(CA)
- Royal Free London NHS Foundation Trust(GB)
- University College London(GB)
- The Royal Free Hospital(GB)
- University of Michigan(US)
- Bayer (Germany)(DE)
- University of California, San Francisco(US)
- Concord Repatriation General Hospital(AU)
- French Clinical Research Infrastructure Network(FR)
- Université de Lorraine(FR)
- St George Hospital(AU)