决策树方法在心律失常早期症状分类中的有效计算建模

Mohamad Sabri bin Sinal, E. Kamioka
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引用次数: 1

摘要

近15年来,心脏病一直是全球主要的死亡原因。心律失常是导致慢性心脏病和猝死的常见原因之一。然而,传统的或计算的方法检测心律失常不是一件容易的事。它需要合适的方法和非常具体的时间来检测症状。此外,症状本身的行为也非常复杂。因此,需要一种具有简单计算模型的自动检测方法来准确检测心电数据中的心律失常来解决这一关键问题。本文提出了一种基于决策树方法的新框架,利用心电数据的5个峰值从心电数据的第一分钟开始检测心律失常。实验结果表明,基于5个峰的决策树方法检测心律失常的准确率达到98%,优于其他数据挖掘技术。此外,所提出的5种疾病分类参数表明,与不同数量的参数和方法相比,这些计算模型在检测心律失常方面具有很强的可持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Computational Modeling for Early Arrhythmia Symptom Classification by Using Decision Tree Approach
Heart disease has been the leading global cause of death for almost 15 years. One of the common causes lead to chronic heart disease and sudden death is Arrhythmia. However, the conventional or computational approach of Arrhythmia detection is not an easy task. It requires suitable method with a very specific timeline to detect the symptom. In addition, the symptom itself is very complex in behavior. Therefore, an automatic detection method with simple computational model to detect accurately Arrhythmia in ECG data is needed to deal with such critical issue. In this paper, a novel framework based on decision tree approach by utilizing five peaks taken from ECG segment is proposed to detect Arrhythmia from the first minute of the ECG data. The experimental results show that the proposed decision tree approach with the proposed five peaks is able to detect Arrhythmia with the accuracy of 98% outperforming the other data mining techniques. Moreover, the five proposed parameters to classify the disease show that these computational models have a strong level of sustainability in detecting Arrhythmia when it is compared to different numbers of parameters and methods.
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