Risk Stratification with Extreme Learning Machine: A Retrospective Study on Emergency Department Patients
2014 ◽
Vol 2014
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pp. 1-6
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Keyword(s):
This paper presents a novel risk stratification method using extreme learning machine (ELM). ELM was integrated into a scoring system to identify the risk of cardiac arrest in emergency department (ED) patients. The experiments were conducted on a cohort of 1025 critically ill patients presented to the ED of a tertiary hospital. ELM and voting based ELM (V-ELM) were evaluated. To enhance the prediction performance, we proposed a selective V-ELM (SV-ELM) algorithm. The results showed that ELM based scoring methods outperformed support vector machine (SVM) based scoring method in the receiver operation characteristic analysis.
2004 ◽
Vol 44
(6)
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pp. 589-598
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2019 ◽
Vol 53
(4)
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pp. 2453-2481
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Keyword(s):
Keyword(s):