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Fusing actigraphy signals for outpatient monitoring

机译:融合活动信号以进行门诊监控

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Actigraphy devices have been successfully used as effective tools in the treatment of diseases such as sleep disorders or major depression. Although several efforts have been made in recent years to develop smaller and more portable devices, the features necessary for the continuous monitoring of outpatients require a less intrusive, obstructive and stigmatizing acquisition system. A useful strategy to overcome these limitations is based on adapting the monitoring system to the patient lifestyle and behavior by providing sets of different sensors that can be worn simultaneously or alternatively. This strategy offers to the patient the option of using one device or other according to his/her particular preferences. However this strategy requires a robust multi-sensor fusion methodology capable of taking maximum profit from all of the recorded information. With this aim, this study proposes two actigraphy fusion models including centralized and distributed architectures based on artificial neural networks. These novel fusion methods were tested both on synthetic datasets and real datasets, providing a parametric characterization of the models' behavior, and yielding results based on real case applications. The results obtained using both proposed fusion models exhibit good performance in terms of robustness to signal degradation, as well as a good behavior in terms of the dependence of signal quality on the number of signals fused. The distributed and centralized fusion methods reduce the mean averaged error of the original signals to 44% and 46% respectively when using simulated datasets. The proposed methods may therefore facilitate a less intrusive and more dependable way of acquiring valuable monitoring information from outpatients. (C) 2014 Elsevier B.V. All rights reserved.
机译:书法设备已成功地用作治疗诸如睡眠障碍或重度抑郁症的有效工具。尽管近年来已经进行了一些努力来开发更小和更便携的设备,但是连续监视门诊病人所必需的功能要求使用侵入性较小,阻碍性和污名化的采集系统。克服这些局限性的有效策略是基于通过提供可同时或替代佩戴的不同传感器组,使监控系统适应患者的生活方式和行为。该策略为患者提供了根据其特定偏好使用一种设备或其他设备的选择。但是,此策略需要一种可靠的多传感器融合方法,该方法能够从所有记录的信息中获取最大的利润。为此,本研究提出了两种书法融合模型,包括基于人工神经网络的集中式和分布式架构。这些新颖的融合方法已在合成数据集和真实数据集上进行了测试,可提供模型行为的参数表征,并根据实际案例应用得出结果。使用这两个提出的融合模型获得的结果在信号降级的鲁棒性方面表现出良好的性能,并且在信号质量对融合信号数量的依赖性方面表现出良好的行为。使用模拟数据集时,分布式和集中式融合方法将原始信号的平均平均误差分别降低到44%和46%。因此,所提出的方法可以有助于以较低的介入性和更可靠的方式从门诊患者获取有价值的监测信息。 (C)2014 Elsevier B.V.保留所有权利。

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