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Integrating dynamic Bayesian networks and constraint-based fuzzy models for myocardial infarction classification with 12-lead ECGS

机译:结合动态贝叶斯网络和基于约束的模糊模型对12导联ECGS进行心肌梗死分类

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This paper presents a novel combination of the dynamic Bayesian networks (DBNs) and constraint-based fuzzy models for myocardial infarction classification with 12-lead ECGs. Data of lead-V1, V2, V3, V4 were selected. Then, DBNs were used for finding the likelihood value which was treated as statistical feature data of each heartbeat's ECG complex, and constraint-based fuzzy models were used to extract knowledge from the trained DBNs. The fuzzy model developed from this approach is tested on 905 samples of heartbeats from clinical data, including 470 data with myocardial infarction and 435 data from healthy individuals. The sensitivity of the classifier achieved 86.27% and prediction accuracy achieved 78.32%.
机译:本文提出了动态贝叶斯网络(DBNs)和基于约束的模糊模型的新型结合,用于12导联心电图的心肌梗死分类。选择了引线V1,V2,V3,V4的数据。然后,使用DBN查找似然值,将其作为每个心跳ECG复杂度的统计特征数据,并使用基于约束的模糊模型从训练后的DBN中提取知识。通过这种方法开发的模糊模型在905例临床数据心跳样本上进行了测试,包括470例心肌梗死数据和435例健康个体数据。分类器的灵敏度达到86.27%,预测精度达到78.32%。

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