移动医疗应用中的多传感器盲校准

Atena Roshan Fekr, Majid Janidarmian, K. Radecka, Z. Zilic
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引用次数: 7

摘要

本文研究了医疗网络生物系统中多传感器系统的自校准问题,如闭环血糖控制。与传统方法相比,定期在云中执行重新校准方法具有显着优势,包括增加了在线可访问性和故障后的快速自动恢复。由于数据集的大小直接影响到重新校准的质量,我们使用云数据库,这让我们有一个更完整的重新校准数据集,相比有限的机载日志在不同的时间和情况下。提出了三种方法,并在准确性和时间方面进行了评估。本文提出的最小均方误差(MMSE)再标定方法相对于其他两种基于平均和相关的方法具有更高的精度。虽然这些方法具有通用性,适用于不同的医疗多传感器系统,但由于其设置简单可靠,因此在温度传感器上的实验结果得到了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-sensor blind recalibration in mHealth applications
This paper considers the problem of self-calibration of multi-sensor systems for health care cyber-biological systems, such as closed-loop glucose control. The recalibration method is performed periodically in the cloud resulted in significant advantages over traditional methods, including increased on-line accessibility and fast automated recovery from failures. Since the size of dataset has direct impact on the recalibration quality, we use cloud database which let us have a more complete recalibration dataset compared to limited on-board logging at different times and situations. Three methods are presented and evaluated in terms of accuracy and time. The proposed Minimum Mean Square Error (MMSE) recalibration method delivers the superior precision compared to other two techniques which are based on average and correlation. While all these approaches are generic and applicable to different medical multi-sensor systems, the experimental results are evaluated on temperature sensors due to their simple and reliable setup.
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