Unobtrusive Nighttime Movement Monitoring to Support Nursing Home Continence Care: Algorithm Development and Validation Study.

JMIR nursing Pub Date : 2024-12-24 DOI:10.2196/58094
Hannelore Strauven, Chunzhuo Wang, Hans Hallez, Vero Vanden Abeele, Bart Vanrumste
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引用次数: 0

Abstract

Background: The rising prevalence of urinary incontinence (UI) among older adults, particularly those living in nursing homes (NHs), underscores the need for innovative continence care solutions. The implementation of an unobtrusive sensor system may support nighttime monitoring of NH residents' movements and, more specifically, the agitation possibly associated with voiding events.

Objective: This study aims to explore the application of an unobtrusive sensor system to monitor nighttime movement, integrated into a care bed with accelerometer sensors connected to a pressure-redistributing care mattress.

Methods: A total of 6 participants followed a 7-step protocol. The obtained dataset was segmented into 20-second windows with a 50% overlap. Each window was labeled with 1 of the 4 chosen activity classes: in bed, agitation, turn, and out of bed. A total of 1416 features were selected and analyzed with an XGBoost algorithm. At last, the model was validated using leave one subject out cross-validation (LOSOCV).

Results: The trained model attained a trustworthy overall F1-score of 79.56% for all classes and, more specifically, an F1-score of 79.67% for the class "Agitation."

Conclusions: The results from this study provide promising insights in unobtrusive nighttime movement monitoring. The study underscores the potential to enhance the quality of care for NH residents through a machine learning model based on data from accelerometers connected to a viscoelastic care mattress, thereby driving progress in the field of continence care and artificial intelligence-supported health care for older adults.

不显眼的夜间运动监测支持养老院的失禁护理:算法开发和验证研究。
背景:老年人中尿失禁(UI)的患病率不断上升,特别是那些生活在养老院(NHs)的老年人,强调了创新的尿失禁护理解决方案的必要性。实施一个不引人注目的传感器系统可以支持夜间监测NH居民的活动,更具体地说,可能与排尿事件有关的躁动。目的:本研究旨在探索一种不显眼的传感器系统在监测夜间运动中的应用,该系统集成到一个护理床中,加速度传感器连接到一个压力再分配的护理床垫上。方法:共有6名参与者遵循7步方案。得到的数据集被分割成重叠50%的20秒窗口。每个窗口都标有四种活动类别中的一种:床上活动、躁动活动、翻身活动和下床活动。采用XGBoost算法共选取1416个特征进行分析。最后,采用留一受试者交叉验证(LOSOCV)对模型进行验证。结果:训练后的模型在所有类别中获得了79.56%的可信总体f1得分,更具体地说,“躁动”类别的f1得分为79.67%。“结论:这项研究的结果为不引人注目的夜间运动监测提供了有希望的见解。该研究强调了通过一种基于连接到粘弹性护理床垫的加速度计数据的机器学习模型来提高NH居民护理质量的潜力,从而推动了失禁护理和人工智能支持的老年人医疗保健领域的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.20
自引率
0.00%
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0
审稿时长
16 weeks
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