基于人工智能的智能障碍患者实时压力检测。

IF 2.5 4区 医学 Q1 REHABILITATION
Assistive Technology Pub Date : 2024-05-03 Epub Date: 2023-09-26 DOI:10.1080/10400435.2023.2261045
Stefan de Vries, Fransje van Oost, Hanneke Smaling, Nanda de Knegt, Pierre Cluitmans, Reon Smits, Erwin Meinders
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引用次数: 0

摘要

患有严重智力残疾(ID)的人可能难以表达他们的压力,这可能会使护理人员的及时反应变得复杂。本研究提出了一种能够实时工作的自动应力检测系统。该系统使用可穿戴传感器记录生理信号,并结合机器学习来检测与压力相关的生理变化。进行了四个实验来评估该系统是否能够检测出有和没有ID的人的压力 = 14,n = 18和n = 48),并对ID(n = 12) 。为了分析系统是否能够检测压力,评估了随机、通用和个性化模型的性能。混合方差分析发现对模型类型F(2134)有显著影响 = 116.50,p t(11) = 9.05,p
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time stress detection based on artificial intelligence for people with an intellectual disability.

People with severe intellectual disabilities (ID) could have difficulty expressing their stress which may complicate timely responses from caregivers. The present study proposes an automatic stress detection system that can work in real-time. The system uses wearable sensors that record physiological signals in combination with machine learning to detect physiological changes related to stress. Four experiments were conducted to assess if the system could detect stress in people with and without ID. Three experiments were conducted with people without ID (n = 14, n = 18, and n = 48), and one observational study was done with people with ID (n = 12). To analyze if the system could detect stress, the performance of random, general, and personalized models was evaluated. The mixed ANOVA found a significant effect for model type, F(2, 134) = 116.50, p < .001. Additionally, the post-hoc t-tests found that the personalized model for the group with ID performed better than the random model, t(11) = 9.05, p < .001. The findings suggest that the personalized model can detect stress in people with and without ID. A larger-scale study is required to validate the system for people with ID.

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来源期刊
Assistive Technology
Assistive Technology REHABILITATION-
CiteScore
4.00
自引率
5.60%
发文量
40
期刊介绍: Assistive Technology is an applied, scientific publication in the multi-disciplinary field of technology for people with disabilities. The journal"s purpose is to foster communication among individuals working in all aspects of the assistive technology arena including researchers, developers, clinicians, educators and consumers. The journal will consider papers from all assistive technology applications. Only original papers will be accepted. Technical notes describing preliminary techniques, procedures, or findings of original scientific research may also be submitted. Letters to the Editor are welcome. Books for review may be sent to authors or publisher.
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