作者
Marija D Ivanović, Julius Hannink, Matthias Ring, Fabio Baronio, Vladan Vukčević, Ljupco Hadžievski, Bjoern Eskofier
发表日期
2020/11/1
期刊
Artificial Intelligence in Medicine
卷号
110
页码范围
101963
出版商
Elsevier
简介
Objective
Optimizing timing of defibrillation by evaluating the likelihood of a successful outcome could significantly enhance resuscitation. Previous studies employed conventional machine learning approaches and hand-crafted features to address this issue, but none have achieved superior performance to be widely accepted. This study proposes a novel approach in which predictive features are automatically learned.
Methods
A raw 4s VF episode immediately prior to first defibrillation shock was feed to a 3-stage CNN feature extractor. Each stage was composed of 4 components: convolution, rectified linear unit activation, dropout and max-pooling. At the end of feature extractor, the feature map was flattened and connected to a fully connected multi-layer perceptron for classification. For model evaluation, a 10 fold cross-validation was employed. To balance classes, SMOTE oversampling method has been applied …
引用总数
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MD Ivanović, J Hannink, M Ring, F Baronio, V Vukčević… - Artificial Intelligence in Medicine, 2020