Big data in nephrology: Are we ready for the change?
- PMID: 31314170
- DOI: 10.1111/nep.13636
Big data in nephrology: Are we ready for the change?
Abstract
Chronic kidney disease (CKD) is a major public health issue worldwide. However, the status of kidney health care needs to be strengthened globally and research evidence in nephrology is relatively limited. The unmet needs in nephrology leave ample space for imagination regarding leveraging big data and artificial intelligence (AI). Big data has potential to drive medical innovation, reduce medical costs and improve health care quality. Compared with other specialties such as cardiology, the scopes of utilizing big data in nephrology need to be enhanced. We reviewed the studies on the application of big data in nephrology, such as disease surveillance, risk prediction and clinical decision support systems (CDSS), and proposed several potential directions of utilizing big data and AI. The efforts including building a CKD surveillance system and collaborative network, implementing a real-world cohort in a cost-effective manner, strengthening the application and transformation of AI and CDSS, and stimulating the activeness of medical imaging in nephrology, could be considered. In the era of big data, a nephrologist would be stronger and smarter if he or she could get intelligent assistance from knowledge or big data-driven CDSS.
Keywords: artificial intelligence; big data; chronic kidney disease; clinical decision support system.
© 2019 Asian Pacific Society of Nephrology.
References
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Grants and funding
- 2016YFC1305400/National Key R&D Program of the Ministry of Science and Technology of the People's Republic of China
- BMU2018MX020/Peking University
- PKU2017LCX05/Peking University
- BMU20160466/the University of Michigan Health System-Peking University Health Science Center Joint Institute for Translational and Clinical Research
- BMU2018JI012/the University of Michigan Health System-Peking University Health Science Center Joint Institute for Translational and Clinical Research
- BMU2019JI005/the University of Michigan Health System-Peking University Health Science Center Joint Institute for Translational and Clinical Research
- 2018SF069/Scientific Research Seed Fund of Peking University First Hospital
- 81301296/National Natural Science Foundation of China
- 81771938/National Natural Science Foundation of China
- 91846101/National Natural Science Foundation of China
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