Baldewijns Greet, Luca Stijn, Vanrumste Bart, Croonenborghs Tom
KU Leuven Technology Campus Geel, AdvISe, Kleinhoefstraat 4, Geel, Belgium.
KU Leuven, ESAT-STADIUS,, Leuven, Belgium.
BMC Med Res Methodol. 2016 Feb 20;16:23. doi: 10.1186/s12874-016-0124-4.
As gait speed and transfer times are considered to be an important measure of functional ability in older adults, several systems are currently being researched to measure this parameter in the home environment of older adults. The data resulting from these systems, however, still needs to be reviewed by healthcare workers which is a time-consuming process.
This paper presents a system that employs statistical process control techniques (SPC) to automatically detect both positive and negative trends in transfer times. Several SPC techniques, Tabular cumulative sum (CUSUM) chart, Standardized CUSUM and Exponentially Weighted Moving Average (EWMA) chart were evaluated. The best performing method was further optimized for the desired application. After this, it was validated on both simulated data and real-life data.
The best performing method was the Exponentially Weighted Moving Average control chart with the use of rational subgroups and a reinitialization after three alarm days. The results from the simulated data showed that positive and negative trends are detected within 14 days after the start of the trend when a trend is 28 days long. When the transition period is shorter, the number of days before an alert is triggered also diminishes. If for instance an abrupt change is present in the transfer time an alert is triggered within two days after this change. On average, only one false alarm is triggered every five weeks. The results from the real-life dataset confirm those of the simulated dataset.
The system presented in this paper is able to detect both positive and negative trends in the transfer times of older adults, therefore automatically triggering an alarm when changes in transfer times occur. These changes can be gradual as well as abrupt.
由于步速和转移时间被认为是老年人功能能力的重要衡量指标,目前正在研究多种系统以在老年人的家庭环境中测量该参数。然而,这些系统产生的数据仍需医护人员进行审查,这是一个耗时的过程。
本文提出了一种采用统计过程控制技术(SPC)来自动检测转移时间中正向和负向趋势的系统。评估了几种SPC技术,即表格累积和(CUSUM)图、标准化CUSUM和指数加权移动平均(EWMA)图。针对所需应用对性能最佳的方法进行了进一步优化。在此之后,在模拟数据和实际数据上对其进行了验证。
性能最佳的方法是使用合理子组并在三个报警日后重新初始化的指数加权移动平均控制图。模拟数据的结果表明,当趋势持续28天时,在趋势开始后的14天内可检测到正向和负向趋势。当过渡期较短时,触发警报前的天数也会减少。例如,如果转移时间出现突然变化,在此变化后的两天内就会触发警报。平均而言,每五周仅触发一次误报。实际数据集的结果证实了模拟数据集的结果。
本文提出的系统能够检测老年人转移时间中的正向和负向趋势,因此当转移时间发生变化时会自动触发警报。这些变化可以是渐进的,也可以是突然的。