优化的混合 ARIMA-GARCH 模型在心脏病 RR 间期时间序列预测中的应用

Sicheng Shu
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摘要

心脏病是全球死亡率最高的疾病之一,心律失常常常是心血管疾病的诱因(如心肌病)或并发症(如冠心病)。因此,通过早期识别心率变异性(HRV)偏差来监测心脏功能异常至关重要。在现代医疗系统中,通常采用可穿戴实时监测设备和人工智能来生成心电图(ECG)和分析心率变异数据。这一应用的关键在于利用数据挖掘工具,包括多元线性回归、支持向量机、随机森林或长-短时记忆神经网络,对心率变异数据做出合理判断。然而,这些模型无法为心律监测带来令人满意的结果。因此,本文引入了一个优化的混合 ARIMA-GARCH 模型,以实现心脏病检测和病理诊断,为个性化治疗和跟踪监测者的心血管健康状况发挥指导作用。本文提出的模型结合了使用单边霍德里克-普雷斯科特滤波器进行的数据预处理,以及基于分区插值技术和快速离散傅里叶变换的参数调整,以拟合和预测 RR 间期时间序列。实验结果表明,与其他模型相比,我们提出的模型在定量评估方面具有显著优势,因为它能有效保留趋势,并考虑到短期前瞻预测的高波动性。
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An Optimized Hybrid ARIMA-GARCH Model Application on RR Interval Time Series Prediction for Heart Disease
Heart disease is one of the highest mortality rate diseases worldwide, with arrhythmias frequently serving as a trigger (such as cardiomyopathy) or a complication (such as coronary heart disease) for cardiovascular diseases. Therefore, it is crucial to monitor abnormalities in heart function through the early identification of deviations in heart rate variability (HRV). In modern medical systems, wearable real-time monitoring devices and artificial intelligence are commonly employed to generate electrocardiograms (ECGs) and analyze HRV data. The key to this application lies in making reasonable judgments of HRV data using data mining tools, including multiple linear regression, support vector machine, random forest, or long-short-term memory neural networks. However, these models fail to yield satisfactory results for cardiac rhythm monitoring. Consequently, the paper introduces an optimized hybrid ARIMA-GARCH model to enable heart disease detection and pathological diagnosis, playing a guiding role in personalized treatment and the tracking of the cardiovascular health status of monitored individuals. The proposed model combines data preprocessing using the one-sided Hodrick Prescott filter and parameter tuning based on partitioning-interpolation techniques and Fast Discrete Fourier Transform to fit and predict the RR interval time series. Experimental results indicate that our proposed model exhibits significant advantages in quantitative assessments compared to other models, as it effectively preserves the trend and accounts for high volatility in short-term forward prediction.
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