Freezing of gait detection: The effect of sensor type, position, activities, datasets, and machine learning model.

IF 4 3区 医学 Q2 NEUROSCIENCES
Journal of Parkinson's disease Pub Date : 2025-02-01 Epub Date: 2025-03-16 DOI:10.1177/1877718X241302766
Luigi Borzì, Florenc Demrozi, Ruggero Angelo Bacchin, Cristian Turetta, Luis Sigcha, Domiziana Rinaldi, Giuliana Fazzina, Giulio Balestro, Alessandro Picelli, Graziano Pravadelli, Gabriella Olmo, Stefano Tamburin, Leonardo Lopiano, Carlo Alberto Artusi
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引用次数: 0

Abstract

BackgroundFreezing of gait (FoG) is a complex, frequent, and disabling motor symptom of Parkinson's disease (PD). Wearable technology has the potential to improve FoG assessment by providing objective, quantitative, and continuous monitoring.ObjectiveThis study aims to develop a robust FoG detection algorithm that can be embedded in a simple and unobtrusive wearable sensor system and can lead to a reliable unsupervised home assessment.MethodsTwenty-two subjects with PD and FoG were enrolled, equipped with four inertial modules on the ankles, back, and wrist, and asked to perform different tasks. Feature-driven and data-driven machine learning approaches were implemented, optimized, and evaluated. Further testing was conducted on two external datasets including a total of 545 FoG episodes.ResultsSixteen subjects experienced FoG, providing a total number of 101 FoG events. Results demonstrated that a single sensor on the ankle, with an adequate algorithm of data analysis based on machine learning, can provide a non-invasive approach for accurate FoG detection. The model proved robust on the independent datasets, with 88-95% FoG episodes correctly detected. Interestingly, while FoG can be easily discriminated from walking, static positions, and postural transitions, turning represents a significant challenge. The high number of false alarms still represents the main limitation of the FoG recognition algorithms.ConclusionsThe collected dataset includes data from different sensors at different body positions. This, together with detailed labeling of tasks, activities, FoG episodes and their severity, can be a significant contribution to research on automatic FoG detection and characterization.

步态检测的冻结:传感器类型、位置、活动、数据集和机器学习模型的影响。
步态冻结(FoG)是帕金森病(PD)中一种复杂、频繁、致残的运动症状。可穿戴技术通过提供客观、定量和连续的监测,有可能改善FoG评估。本研究旨在开发一种鲁棒的FoG检测算法,该算法可以嵌入到一个简单而不引人注目的可穿戴传感器系统中,并可以实现可靠的无监督家庭评估。方法选取22例PD和FoG患者,分别在踝关节、背部和腕部安装4个惯性模块,要求完成不同的任务。实现、优化和评估了特征驱动和数据驱动的机器学习方法。在两个外部数据集上进行了进一步的测试,包括总共545次FoG发作。结果16名受试者经历了FoG,共101次FoG事件。结果表明,脚踝上的单个传感器,加上适当的基于机器学习的数据分析算法,可以为精确的FoG检测提供非侵入性方法。该模型在独立数据集上证明了鲁棒性,正确检测到88-95%的雾霾事件。有趣的是,虽然FoG可以很容易地与行走、静态位置和姿势转换区分开来,但转弯是一个重大挑战。高虚警率仍然是光纤陀螺识别算法的主要局限性。结论采集的数据集包括不同体位不同传感器的数据。这与任务、活动、FoG事件及其严重程度的详细标记一起,可以对FoG自动检测和表征的研究做出重大贡献。
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
8.40
自引率
5.80%
发文量
338
审稿时长
>12 weeks
期刊介绍: The Journal of Parkinson''s Disease (JPD) publishes original research in basic science, translational research and clinical medicine in Parkinson’s disease in cooperation with the Journal of Alzheimer''s Disease. It features a first class Editorial Board and provides rigorous peer review and rapid online publication.
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