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Ensemble of kernel extreme learning machine based random forest classifiers for automatic heartbeat classification

机译:基于内核极端学习机的集合基于林林分类器自动心跳分类

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Automatic heartbeat classification technology based on the ECG plays an important role in assisting doctors with arrhythmia diagnosis. While many heartbeat classification studies can achieve good performance under the intrapatient paradigm, they still cannot offer acceptable classification results under the inter-patient paradigm. Additionally, the available ECG datasets are highly class imbalanced since normal heartbeats appear much more frequently than abnormal heartbeats, resulting in most methods having low sensitives and positive predictive values on minority class ectopic heartbeats. To solve the above problems, this study proposes an automatic ECG heartbeat classification method based on ensemble learning and multi-kernel learning. First, we use a linear combination of the radial basis function kernel and the polynomial kernel to produce a mixed-kernel-based extreme learning machine (MKELM). Then, a MKELM-based random forest binary classifier (MKELM-RF) is constructed. Finally, an ensemble multiclass classifier MKELM-RF-OVO is proposed based on one-vs.-one (OVO) reduction and MKELM-RF. We evaluated the proposed method on the public MIT-BIH-AR benchmarks database, under the inter-patient paradigm, classifying four types of heartbeats, namely, normal beats (N), supraventricular ectopic beats (S), ventricular ectopic beats (V) and the fusion of ventricular and normal (F). The obtained overall accuracy and the average positive predictive value are 98.1% and 93.9%, respectively, which are higher than the current studies by approximately 4% and 6%, respectively. The sensitivities for classes S and V are 1 and 94.4%, respectively, which outperforms most methods. The evaluation results show that our proposed method achieves a superior classification performance compared to the state-of-the-art methods.
机译:基于心电图的自动心跳分类技术在协助心律失常诊断的医生方面发挥着重要作用。虽然许多心跳分类研究可以在内裤范式下实现良好的性能,但它们仍无法在患者间范式下提供可接受的分类结果。另外,可用的ECG数据集是高度类别的,因为正常心跳比异常心跳更频繁,导致大多数具有低敏感性的方法和少数群体异位心跳的阳性预测值。为了解决上述问题,本研究提出了一种基于集合学习和多内核学习的自动ECG心跳分类方法。首先,我们使用径向基函数内核和多项式内核的线性组合来产生基于混合内核的极限学习机(MKELM)。然后,构建基于MkelM的随机林二进制分类器(MKELM-RF)。最后,基于一Vs-One(OVO)减少和MKELM-RF,提出了一个集合多键分类器MKELM-RF-OVO。我们在公共MIT-BIH-AR基准测试数据库中评估了患者间范式的提出的方法,分类了四种类型的心跳,即正常节拍(N),上婴儿异位搏动,心室异位搏动(V)和心室和正常(f)的融合。获得的总体精度和平均阳性预测值分别为98.1%和93.9%,分别高约4%和6%。类S和V的敏感性分别为1和94.4%,这越高了大多数方法。评价结果表明,与最先进的方法相比,我们所提出的方法达到了卓越的分类性能。

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