An application of sensor networks for syndromic surveillance

Chung-Kuo Chang, J. Overhage, J. Huang
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引用次数: 33

Abstract

Since the inception of sensor networks, it is recognized that the foremost application of such a network is on monitoring environmental activities. Due to the extreme resource constraints, a critical feature of such a network is to conserve energy to extend the lifetime of the sensors. A variety of energy aware algorithms have been developed for these networks by aggregating or filtering of data being transmitted. Energy can also be saved by selecting a subgroup of sensors to activate each time. Uncertainties are introduced due to the inaccuracy in sensor readings, noise or failure of sensors, or the omissions of data transmission following those energy aware algorithms. On the other hand, there usually are uncertainties inherited in the application where these sensor networks are built. Its usefulness depends on whether we can find a strategy to reduce uncertainties and at the same time conserve energy in such a system. We discuss the application of sensor networks in the problem of syndromic surveillance. The aggregated action of the sensors would provide early evidence for screening and identification of outbreaks of diseases or bio-agents. We study the effects of using the Bayesian methods to reduce uncertainties in sensor networks for medical decision-making. Experimental results obtained using operational data are used to verify our assumptions. A lot of study has been done on applying sensor networks to tasks such as tracking of a moving object, which is mapping an estimation task over a network of sensors. This project is the first case to map a medical decision, which is essentially an uncertainty refinement problem to sensor networks.
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传感器网络在综合征监测中的应用
自传感器网络建立以来,人们认识到这种网络的首要应用是监测环境活动。由于极端的资源限制,这种网络的一个关键特征是节省能量以延长传感器的使用寿命。通过聚合或过滤传输的数据,为这些网络开发了各种能量感知算法。通过每次选择一组传感器来激活,也可以节省能源。由于传感器读数不准确,传感器噪声或故障,或在这些能量感知算法之后数据传输的遗漏,引入了不确定性。另一方面,在构建传感器网络的应用中,通常存在继承的不确定性。它的有用性取决于我们能否在这样一个系统中找到一种减少不确定性同时节约能量的策略。我们讨论了传感器网络在综合征监测问题中的应用。传感器的综合作用将为筛选和识别疾病或生物制剂的爆发提供早期证据。我们研究了使用贝叶斯方法来减少医疗决策传感器网络中的不确定性的效果。用实际数据得到的实验结果验证了我们的假设。在将传感器网络应用于运动目标跟踪等任务方面已经做了大量的研究,这是在传感器网络上映射估计任务。该项目是第一个将医疗决策映射到传感器网络的案例,医疗决策本质上是一个不确定性细化问题。
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