Deep Learning in the Medical Domain: Predicting Cardiac Arrest Using Deep Learning

With the wider adoption of electronic health records, the rapid response team initially believed that mortalities could be significantly reduced but due to low accuracy and false alarms, the healthcare system is currently fraught with many challenges. Rule-based methods (e.g., Modified Early Warning...

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Veröffentlicht in:Acute and critical care 2018, 33(3), , pp.117-120
Hauptverfasser: Lee, Youngnam, Kwon, Joon-myoung, Lee, Yeha, Park, Hyunho, Cho, Hugh, Park, Jinsik
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Sprache:eng
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Zusammenfassung:With the wider adoption of electronic health records, the rapid response team initially believed that mortalities could be significantly reduced but due to low accuracy and false alarms, the healthcare system is currently fraught with many challenges. Rule-based methods (e.g., Modified Early Warning Score) and machine learning (e.g., random forest) were proposed as a solution but not effective. In this article, we introduce the DeepEWS (Deep learning based Early Warning Score), which is based on a novel deep learning algorithm. Relative to the standard of care and current solutions in the marketplace, there is high accuracy, and in the clinical setting even when we consider the number of alarms, the accuracy levels are superior.
ISSN:2586-6052
2586-6060
DOI:10.4266/acc.2018.00290