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Online mining abnormal period patterns from multiple medical sensor data streams

机译:从多个医疗传感器数据流中在线挖掘异常时期模式

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With the advanced technology of medical devices and sensors, an abundance of medical data streams are available. However, data analysis techniques are very limited, especially for processing massive multiple physiological streams that may only be understood by medical experts. The state-of-the-art techniques only allow multiple medical devices to independently monitor different physiological parameters for the patient's status, thus they signal too many false alarms, creating unnecessary noise, especially in the Intensive Care Unit (ICU). An effective solution which has been recently studied is to integrate information from multiple physiologic parameters to reduce alarms. But it is a challenge to detect abnormalities from high frequently changed physiological streams data, since abnormalities occur gradually due to the complex situation of patients. An analysis of ICU physiological data streams shows that many vital physiological parameters are changed periodically (such as heart rate, arterial pressure, and respiratory impedance) and thus abnormalities are generally abnormal period patterns. In this paper, we develop a Mining Abnormal Period Patterns from Multiple Physiological Streams (MAPPMPS) method to detect and rank abnormalities in medical sensor streams. The efficiency and effectiveness of the MAPPMPS method is demonstrated by a real-world massive database of multiple physiological streams sampled in ICU, comprising 250 patients' streams (each stream involving over 1.3 million data points) with a total size of 28 GB data.
机译:借助先进的医疗设备和传感器技术,可以提供大量的医疗数据流。但是,数据分析技术非常有限,特别是对于处理海量的多种生理流而言,只有医学专家才能理解。最先进的技术仅允许多个医疗设备针对患者的状态独立监视不同的生理参数,因此它们会发出过多的错误警报,从而产生不必要的噪音,尤其是在重症监护病房(ICU)中。最近研究的一种有效解决方案是整合来自多个生理参数的信息以减少警报。但是,由于频繁变化的生理流数据来检测异常是一个挑战,因为异常是由于患者的复杂情况而逐渐发生的。对ICU生理数据流的分析表明,许多重要的生理参数会定期更改(例如心率,动脉压和呼吸阻抗),因此异常通常是异常时期。在本文中,我们开发了一种从多个生理流中挖掘异常时期模式(MAPPMPS)的方法,以检测和排序医疗传感器流中的异常。 MAPPMPS方法的效率和有效性通过在重症监护病房中采样的多个生理流的现实世界大型数据库得以证明,该数据库包含250个患者流(每个流涉及130万个数据点),总大小为28 GB数据。

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