Stress-based Classification of Electrocardiogram Signals Before and After Music Therapy using Heart Rate Variability and Machine Learning

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Abstract

The harmful impacts of excessive stress on people’s health have been widely acknowledged, necessitating effective methods for its identification. Recognizing the importance of early stress detection and intervention, this research aims to contribute to the field of healthcare. To achieve this objective, this study classifies electrocardiogram (ECG) signals by assessing physio-psychological states, specifically stress and examines the role of music therapy in alleviating stress. ECG signals, recorded both before and after a music therapy session, were collected. Using signal processing techniques, essential features were extracted from these ECG signals, resulting in a more accurate identification of stress. Additionally, through experimentation and model evaluation, k-nearest Neighbors (KNN) and Classification and Regression Trees (CART) were determined to be the most effective models for this classification. Both models consistently yielded 90% accuracy. These identified extracted features and models are vital to effectively recognizing stress in ECG signals, offering valuable insights for future studies and clinical applications. This research contributes not only to the development of tools for stress detection but also to the understanding of the therapeutic impact of music.
利用心率变异性和机器学习对音乐治疗前后的心电图信号进行基于压力的分类
过度压力对人们健康的有害影响已得到广泛认可,因此需要有效的方法来识别压力。认识到早期压力检测和干预的重要性,本研究旨在为医疗保健领域做出贡献。为实现这一目标,本研究通过评估生理-心理状态,特别是压力,对心电图(ECG)信号进行分类,并研究音乐疗法在缓解压力方面的作用。本研究收集了音乐治疗前后记录的心电图信号。利用信号处理技术,从这些心电信号中提取出基本特征,从而更准确地识别压力。此外,通过实验和模型评估,k-近邻(KNN)和分类回归树(CART)被确定为最有效的分类模型。这两种模型的准确率都达到了 90%。这些确定提取的特征和模型对于有效识别心电信号中的压力至关重要,为未来的研究和临床应用提供了宝贵的见解。这项研究不仅有助于开发压力检测工具,还有助于了解音乐的治疗效果。
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