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Computers in Cardiology / Physionet Challenge 2009: Predicting acute hypotensive episodes
23
Zitationen
3
Autoren
2009
Jahr
Abstract
The goal of the Computers in Cardiology / Physionet Challenge 2009 is to predict which patients will experi-ence acute hypotensive episode within a forecast window of one hour. In our study, statistically robust features ex-tracted from the supplied training set were defined. A Sup-port Vector Machine was used to classify these features. In this paper, we present our method, results and conclusion about this statistical approach. 1.
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