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Experimental Analysis of a Mobile Health System for Mood Disorders

机译:用于情绪障碍的移动健康系统的实验分析

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Depression is one of the leading causes of disability. Methods are needed to quantitatively classify emotions in order to better understand and treat mood disorders. This research proposes techniques to improve communication in body sensor network (BSN) that gathers data on the affective states of the patient. These BSNs can continuously monitor, discretely quantify, and classify a patient's depressive states. In addition, data on the patient's lifestyle can be correlated with his/her physiological conditions to identify how various stimuli trigger symptoms. This continuous stream of data is an improvement over a snapshot of localized symptoms that a doctor often collects during a medical examination. Our research first quantifies how the body interferes with communication in a BSN and detects a pattern between the line of sight of an embedded device and its reception rate. Then, a mathematical model of the data using linear programming techniques determines the optimal placement and number of sensors in a BSN to improve communication. Experimental results show that the optimal placement of embedded devices can reduce power cost up to 27% and reduce hardware costs up to 47%. This research brings researchers a step closer to continuous, real-time systemic monitoring that will allow one to analyze the dynamic human physiology and understand, diagnosis, and treat mood disorders.
机译:抑郁是造成残疾的主要原因之一。需要一种方法来对情绪进行定量分类,以更好地理解和治疗情绪障碍。这项研究提出了一些技术来改善人体传感器网络(BSN)中的通信,该传感器收集有关患者情感状态的数据。这些BSN可以连续监视,离散量化和分类患者的抑郁状态。此外,可以将患者生活方式的数据与他/她的生理状况相关联,以识别各种刺激如何触发症状。这种连续的数据流是对医生在医学检查期间经常收集的局部症状快照的一种改进。我们的研究首先量化身体如何干扰BSN中的通信,并检测嵌入式设备的视线与其接收速率之间的模式。然后,使用线性编程技术的数据数学模型确定BSN中传感器的最佳放置和数量以改善通信。实验结果表明,嵌入式设备的最佳布局可以降低多达27%的电源成本,并降低多达47%的硬件成本。这项研究使研究人员更接近连续,实时的系统监控,这将使人们能够分析动态人体生理状况并理解,诊断和治疗情绪障碍。

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