| Literature DB >> 32152583 |
Stephanie L Hyland1,2,3,4, Martin Faltys5, Matthias Hüser1,4, Xinrui Lyu1,4, Thomas Gumbsch6,7, Cristóbal Esteban1,4, Christian Bock6,7, Max Horn6,7, Michael Moor6,7, Bastian Rieck6,7, Marc Zimmermann1, Dean Bodenham6,7, Karsten Borgwardt8,9, Gunnar Rätsch10,11,12,13,14,15, Tobias M Merz16,17.
Abstract
Intensive-care clinicians are presented with large quantities of measurements from multiple monitoring systems. The limited ability of humans to process complex information hinders early recognition of patient deterioration, and high numbers of monitoring alarms lead to alarm fatigue. We used machine learning to develop an early-warning system that integrates measurements from multiple organ systems using a high-resolution database with 240 patient-years of data. It predicts 90% of circulatory-failure events in the test set, with 82% identified more than 2 h in advance, resulting in an area under the receiver operating characteristic curve of 0.94 and an area under the precision-recall curve of 0.63. On average, the system raises 0.05 alarms per patient and hour. The model was externally validated in an independent patient cohort. Our model provides early identification of patients at risk for circulatory failure with a much lower false-alarm rate than conventional threshold-based systems.Entities:
Mesh:
Year: 2020 PMID: 32152583 DOI: 10.1038/s41591-020-0789-4
Source DB: PubMed Journal: Nat Med ISSN: 1078-8956 Impact factor: 53.440