首页> 外文期刊>Journal of biomedical informatics. >Monitoring Obstructive Sleep Apnea by means of a real-time mobile system based on the automatic extraction of sets of rules through Differential Evolution
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Monitoring Obstructive Sleep Apnea by means of a real-time mobile system based on the automatic extraction of sets of rules through Differential Evolution

机译:通过实时移动系统监控阻塞性睡眠呼吸暂停,该系统基于通过差分进化自动提取规则集

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Real-time Obstructive Sleep Apnea (OSA) episode detection and monitoring are important for society in terms of an improvement in the health of the general population and of a reduction in mortality and healthcare costs. Currently, to diagnose OSA patients undergo PolySomnoGraphy (PSG), a complicated and invasive test to be performed in a specialized center involving many sensors and wires. Accordingly, each patient is required to stay in the same position throughout the duration of one night, thus restricting their movements. This paper proposes an easy, cheap, and portable approach for the monitoring of patients with OSA, which collects single-channel ElectroCardioGram (ECG) data only. It is easy to perform from the patient's point of view because only one wearable sensor is required, so the patient is not restricted to keeping the same position all night long, and the detection and monitoring can be carried out in any place through the use of a mobile device. Our approach is based on the automatic extraction, from a database containing information about the monitored patient, of explicit knowledge in the form of a set of IF.. .THEN rules containing typical parameters derived from Heart Rate Variability (HRV) analysis. The extraction is carried out off-line by means of a Differential Evolution algorithm. This set of rules can then be exploited in the real-time mobile monitoring system developed at our Laboratory: the ECG data is gathered by a wearable sensor and sent to a mobile device, where it is processed in real time. Subsequently, HRV-related parameters are computed from this data, and, if their values activate some of the rules describing the occurrence of OSA, an alarm is automatically produced. This approach has been tested on a well-known literature database of OSA patients. The numerical results show its effectiveness in terms of accuracy, sensitivity, and specificity, and the achieved sets of rules evidence the user-friendliness of the approach. Furthermore, the method is compared against other well known classifiers, and its discrimination ability is shown to be higher.
机译:实时阻塞性睡眠呼吸暂停(OSA)发作检测和监测对社会而言非常重要,因为它可以改善普通人群的健康状况,并降低死亡率和医疗保健成本。当前,为诊断OSA患者接受PolySomnoGraphy(PSG),这是一项复杂而侵入性的测试,将在一个专门的中心进行,该中心涉及许多传感器和电线。因此,要求每个患者在一个晚上的整个过程中都停留在相同的位置,从而限制了他们的活动。本文提出了一种简单,便宜且可移植的OSA患者监测方法,该方法仅收集单通道ElectroCardioGram(ECG)数据。从患者的角度来看,这很容易执行,因为只需要一个可佩戴的传感器,因此,患者不必整夜保持相同的位置,并且可以通过使用监护仪在任何地方进行检测和监视。移动设备。我们的方法基于从包含有关受监视患者信息的数据库中自动提取一组IF .... THEN规则形式的显性知识,这些规则包含源自心率变异性(HRV)分析的典型参数。提取是通过差分进化算法离线进行的。然后可以在我们实验室开发的实时移动监控系统中利用这套规则:ECG数据由可穿戴传感器收集并发送到移动设备,并在其中进行实时处理。随后,从该数据中计算出与HRV相关的参数,如果它们的值激活了描述OSA发生的某些规则,则会自动生成警报。该方法已经在OSA患者的知名文献数据库中进行了测试。数值结果表明了该方法在准确性,敏感性和特异性方面的有效性,所获得的规则集证明了该方法的用户友好性。此外,将该方法与其他众所周知的分类器进行了比较,并且其判别能力更高。

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