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A Metaheuristic Optimization Approach for Parameter Estimation in Arrhythmia Classification from Unbalanced Data

机译:基于不平衡数据的心律失常分类参数估计的元启发式优化方法

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摘要

The electrocardiogram records the heart’s electrical activity and generates a significant amount of data. The analysis of these data helps us to detect diseases and disorders via heart bio-signal abnormality classification. In unbalanced-data contexts, where the classes are not equally represented, the optimization and configuration of the classification models are highly complex, reflecting on the use of computational resources. Moreover, the performance of electrocardiogram classification depends on the approach and parameter estimation to generate the model with high accuracy, sensitivity, and precision. Previous works have proposed hybrid approaches and only a few implemented parameter optimization. Instead, they generally applied an empirical tuning of parameters at a data level or an algorithm level. Hence, a scheme, including metrics of sensitivity in a higher precision and accuracy scale, deserves special attention. In this article, a metaheuristic optimization approach for parameter estimations in arrhythmia classification from unbalanced data is presented. We selected an unbalanced subset of those databases to classify eight types of arrhythmia. It is important to highlight that we combined undersampling based on the clustering method (data level) and feature selection method (algorithmic level) to tackle the unbalanced class problem. To explore parameter estimation and improve the classification for our model, we compared two metaheuristic approaches based on differential evolution and particle swarm optimization. The final results showed an accuracy of 99.95%, a F1 score of 99.88%, a sensitivity of 99.87%, a precision of 99.89%, and a specificity of 99.99%, which are high, even in the presence of unbalanced data.
机译:心电图记录心脏的电活动并生成大量数据。这些数据的分析有助于我们通过心脏生物信号异常分类来检测疾病和失调。在不平衡表示类的不平衡数据上下文中,分类模型的优化和配置非常复杂,这反映了计算资源的使用。此外,心电图分类的性能取决于方法和参数估计以生成具有高精度,灵敏性和高精度的模型。先前的工作提出了混合方法,并且只有少数实现了参数优化。相反,他们通常在数据级别或算法级别上对参数进行经验调整。因此,包括较高精度和准确度范围内的灵敏度度量的方案值得特别注意。在本文中,提出了一种用于从不平衡数据进行心律不齐分类的参数估计的元启发式优化方法。我们选择了那些数据库的不平衡子集来对八种心律失常进行分类。需要强调的是,我们基于聚类方法(数据级别)和特征选择方法(算法级别)组合了欠采样,以解决不平衡的类问题。为了探索参数估计并改进模型的分类,我们比较了两种基于差分进化和粒子群优化的元启发式方法。最终结果显示,即使在存在不平衡数据的情况下,其准确性也高达99.95%,F1评分为99.88%,灵敏度为99.87%,准确性为99.89%和特异性为99.99%。

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