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使用可穿戴设备预测慢性疼痛:传感器功能、数据安全及标准合规性的范围综述

Predicting chronic pain using wearable devices: a scoping review of sensor capabilities, data security, and standards compliance.

作者信息

Ayena Johannes C, Bouayed Amina, Ben Arous Myriam, Ouakrim Youssef, Loulou Karim, Ameyed Darine, Savard Isabelle, El Kamel Leila, Mezghani Neila

机构信息

Applied Artificial Intelligence Institute (I2A), TELUQ University, Montreal, QC, Canada.

Open Innovation Laboratory in Health Technologies, CHUM Research Center, Montreal, QC, Canada.

出版信息

Front Digit Health. 2025 May 22;7:1581285. doi: 10.3389/fdgth.2025.1581285. eCollection 2025.

Abstract

BACKGROUND

Wearable devices offer innovative solutions for chronic pain (CP) management by enabling real-time monitoring and personalized pain control. Although they are increasingly used to monitor pain-related parameters, their potential for predicting CP progression remains underutilized. Current studies focus mainly on correlations between data and pain levels, but rarely use this information for accurate prediction.

OBJECTIVE

This study aims to review recent advancements in wearable technology for CP management, emphasizing the integration of multimodal data, sensor quality, compliance with data security standards, and the effectiveness of predictive models in identifying CP episodes.

METHODS

A systematic search across six major databases identified studies evaluating wearable devices designed to collect pain-related parameters and predict CP. Data extraction focused on device types, sensor quality, compliance with health standards, and the predictive algorithms employed.

RESULTS

Wearable devices show promise in correlating physiological markers with CP, but few studies integrate predictive models. Random Forest and multilevel models have demonstrated consistent performance, while advanced models like Convolutional Neural Network-Long Short-Term Memory have faced challenges with data quality and computational demands. Despite compliance with regulations like General Data Protection Regulation and ISO standards, data security and privacy concerns persist. Additionally, the integration of multimodal data, including physiological, psychological, and demographic factors, remains underexplored, presenting an opportunity to improve prediction accuracy.

CONCLUSIONS

Future research should prioritize developing robust predictive models, standardizing data protocols, and addressing security and privacy concerns to maximize wearable devices' potential in CP management. Enhancing real-time capabilities and fostering interdisciplinary collaborations will improve clinical applicability, enabling personalized and preventive pain management.

摘要

背景

可穿戴设备通过实现实时监测和个性化疼痛控制,为慢性疼痛(CP)管理提供了创新解决方案。尽管它们越来越多地用于监测与疼痛相关的参数,但其预测CP进展的潜力仍未得到充分利用。当前的研究主要集中在数据与疼痛水平之间的相关性上,但很少将这些信息用于准确预测。

目的

本研究旨在回顾可穿戴技术在CP管理方面的最新进展,强调多模态数据的整合、传感器质量、对数据安全标准的遵守情况以及预测模型在识别CP发作方面的有效性。

方法

在六个主要数据库中进行系统检索,以确定评估旨在收集与疼痛相关参数并预测CP的可穿戴设备的研究。数据提取集中在设备类型、传感器质量、对健康标准的遵守情况以及所采用的预测算法上。

结果

可穿戴设备在将生理指标与CP相关联方面显示出前景,但很少有研究整合预测模型。随机森林和多级模型表现出一致的性能,而像卷积神经网络-长短期记忆这样的先进模型在数据质量和计算需求方面面临挑战。尽管符合《通用数据保护条例》和ISO标准等法规,但数据安全和隐私问题仍然存在。此外,包括生理、心理和人口统计学因素在内的多模态数据的整合仍未得到充分探索,这为提高预测准确性提供了机会。

结论

未来的研究应优先开发强大的预测模型、规范数据协议并解决安全和隐私问题,以最大限度地发挥可穿戴设备在CP管理中的潜力。增强实时能力并促进跨学科合作将提高临床适用性,实现个性化和预防性疼痛管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/efa1/12137249/2c5d64039b3d/fdgth-07-1581285-g001.jpg

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