2023
DOI: 10.3390/cancers15215145
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Deep Learning-Based Early Warning Score for Predicting Clinical Deterioration in General Ward Cancer Patients

Ryoung-Eun Ko,
Zero Kim,
Bomi Jeon
et al.

Abstract: Background: Cancer patients who are admitted to hospitals are at high risk of short-term deterioration due to treatment-related or cancer-specific complications. A rapid response system (RRS) is initiated when patients who are deteriorating or at risk of deteriorating are identified. This study was conducted to develop a deep learning-based early warning score (EWS) for cancer patients (Can-EWS) using delta values in vital signs. Methods: A retrospective cohort study was conducted on all oncology patients who … Show more

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“…However, there has been no approach to study the NE moment prediction using artificial intelligence (AI) techniques (“Challenge 2”). Recently, AI technology has been broadly employed in various digital healthcare applications, such as clinical deterioration prediction [ 26 ], infection detection [ 27 ], clinical decision support systems [ 28 ], energy expenditure estimation [ 29 ], and medical twins in drug delivery applications [ 30 ]. Since AI excels in the capture and analysis of nonlinear and complex patterns from high-dimensional data, it has significantly contributed to developing novel methods for diagnosis, treatment, and prevention in digital healthcare.…”
Section: Introductionmentioning
confidence: 99%
“…However, there has been no approach to study the NE moment prediction using artificial intelligence (AI) techniques (“Challenge 2”). Recently, AI technology has been broadly employed in various digital healthcare applications, such as clinical deterioration prediction [ 26 ], infection detection [ 27 ], clinical decision support systems [ 28 ], energy expenditure estimation [ 29 ], and medical twins in drug delivery applications [ 30 ]. Since AI excels in the capture and analysis of nonlinear and complex patterns from high-dimensional data, it has significantly contributed to developing novel methods for diagnosis, treatment, and prevention in digital healthcare.…”
Section: Introductionmentioning
confidence: 99%