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监测存在缺失数据的远程医疗系统的数据质量。

Monitoring data quality for telehealth systems in the presence of missing data.

机构信息

Department of Systems Engineering and Engineering Management, City University of Hong Kong, Tat Chee Avenue, Kowloon, Hong Kong.

Department of Mathematics and Statistics, Helmut Schmidt University, Hamburg, Germany.

出版信息

Int J Med Inform. 2019 Jun;126:156-163. doi: 10.1016/j.ijmedinf.2019.03.011. Epub 2019 Mar 12.

Abstract

BACKGROUND

All-in-one station-based health monitoring devices are implemented in elder homes in Hong Kong to support the monitoring of vital signs of the elderly. During a pilot study, it was discovered that the systolic blood pressure was incorrectly measured during multiple weeks. A real-time solution was needed to identify future data quality issues as soon as possible.

METHODS

Control charts are an effective tool for real-time monitoring and signaling issues (changes) in data. In this study, as in other healthcare applications, many observations are missing. Few methods are available for monitoring data with missing observations. A data quality monitoring method is developed to signal issues with the accuracy of the collected data quickly. This method has the ability to deal with missing observations. A Hotelling's T-squared control chart is selected as the basis for our proposed method.

FINDINGS

The proposed method is retrospectively validated on a case study with a known measurement error in the systolic blood pressure measurements. The method is able to adequately detect this data quality problem. The proposed method was integrated into a personalized telehealth monitoring system and prospectively implemented in a second case study. It was found that the proposed scheme supports the control of data quality.

CONCLUSIONS

Data quality is an important issue and control charts are useful for real-time monitoring of data quality. However, these charts must be adjusted to account for missing data that often occur in healthcare context.

摘要

背景

全功能一体化的基于站点的健康监测设备已在香港的养老院中投入使用,以支持对老年人生命体征的监测。在一项试点研究中,发现多周内均错误测量了收缩压。需要一种实时解决方案,以便尽快识别未来的数据质量问题。

方法

控制图是实时监测和发出数据问题(变化)的有效工具。在本研究中,与其他医疗保健应用一样,许多观察值缺失。用于监测缺失观察值的数据的方法很少。开发了一种数据质量监测方法,以快速发出有关所收集数据准确性的问题信号。该方法具有处理缺失观察值的能力。选择 Hotelling's T 平方控制图作为我们提出的方法的基础。

发现

该方法在收缩压测量存在已知测量误差的案例研究中进行了回顾性验证。该方法能够充分检测到该数据质量问题。该方法已集成到个性化远程医疗监测系统中,并在第二个案例研究中进行了前瞻性实施。结果发现,所提出的方案支持数据质量控制。

结论

数据质量是一个重要问题,控制图可用于实时监测数据质量。但是,这些图表必须进行调整,以考虑到医疗保健环境中经常出现的缺失数据。

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