自动化放置物联网医疗保健应用的时间序列模型

Lauren Roberts, Peter Michalák, S. Heaps, M. Trenell, D. Wilkinson, P. Watson
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引用次数: 8

摘要

产生医疗保健数据的物联网(IoT)传感器的数量和范围急剧增长。这些传感器传输高维时间序列数据,必须对这些数据进行分析,以提供对医疗状况的洞察,从而改善患者的医疗保健。这带来了统计和计算方面的挑战,包括在哪里部署流数据分析,因为典型的医疗保健物联网系统将结合高度多样化的组件集,具有非常不同的计算特征,例如传感器、移动电话和云。跨这些组件的不同分析分区可能会极大地影响传感器的电池寿命和整体性能等关键因素。在这项工作中,我们描述了一种跨一组组件自动划分流处理的方法,以优化一系列因素,包括传感器电池寿命和通信带宽。我们使用统计模型来预测II型糖尿病患者的血糖水平,以降低高血糖的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automating the Placement of Time Series Models for IoT Healthcare Applications
There has been a dramatic growth in the number and range of Internet of Things (IoT) sensors that generate healthcare data. These sensors stream high-dimensional time series data that must be analysed in order to provide the insights into medical conditions that can improve patient healthcare. This raises both statistical and computational challenges, including where to deploy the streaming data analytics, given that a typical healthcare IoT system will combine a highly diverse set of components with very varied computational characteristics, e.g. sensors, mobile phones and clouds. Different partitionings of the analytics across these components can dramatically affect key factors such as the battery life of the sensors, and the overall performance. In this work we describe a method for automatically partitioning stream processing across a set of components in order to optimise for a range of factors including sensor battery life and communications bandwidth. We illustrate this using our implementation of a statistical model predicting the glucose levels of type II diabetes patients in order to reduce the risk of hyperglycaemia.
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