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Wavelet-based signal analysis for heart failure hospitalization prediction

机译:基于小波的心力衰竭住院预测信号分析

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Heart failure (HF) is commonly a chronic condition associated with frequent hospital admissions. Early knowledge about a possible deterioration of this condition would enable early treatment for the prevention of adverse events and related hospital admissions. In this paper we present a computational method for predictive information extraction from daily physiological signals, which can be obtained by a telemonitoring system with wearable sensors. It is based on wavelet analysis of temporal signal patterns. Experiments with data from patients enrolled in a telemonitoring protocol show that the proposed method is capable of predicting HF hospitalization events one day before they happen, even in the case of low compliance to the protocol. These results indicate a promising perspective towards a monitoring system that would provide improved life quality for HF patients.
机译:心力衰竭(HF)通常是与频繁的医院入院相关的慢性病。关于这种情况可能恶化的早期知识将使预防不良事件和相关医院入学的早期治疗。在本文中,我们提出了一种用于从日常生理信号提取的预测信息提取的计算方法,其可以通过具有可穿戴传感器的远程监控系统获得。它基于时间信号模式的小波分析。从遥感协议中注册的患者数据的实验表明,即使在对协议遵守的情况下,也能够在发生前一天预测HF住院事件。这些结果表明了对监测系统的有希望的观点,这些系统将为HF患者提供改善的生活质量。

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