Patient-specific physiological monitoring and prediction using structured Gaussian processes
The management of patient well-being can be performed by monitoring continuous time-series vital-sign data via low-cost wearable devices. Automated algorithms may then be used with the resulting data to provide early warning of deterioration of the health of an individual. Such algorithms are typica...
Main Authors: | Zhu, T, Wright Colopy, G, Macewen, C, Niehaus, K, Yang, Y, Pugh, C, Clifton, D |
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Format: | Journal article |
Published: |
Institute of Electrical and Electronics Engineers
2019
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