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识别与社区居住的老年人跌倒风险相关的基于传感器的参数:对判别参数的调查和解释。

Identifying sensors-based parameters associated with fall risk in community-dwelling older adults: an investigation and interpretation of discriminatory parameters.

机构信息

Intelligent Sensing and Proactive Health Research Center, School of Public Health (Shenzhen), Sun Yat-sen University, Shenzhen, China.

School of Design, the Hong Kong Polytechnic University, Hung Hom, Hong Kong.

出版信息

BMC Geriatr. 2024 Feb 1;24(1):125. doi: 10.1186/s12877-024-04723-w.

Abstract

BACKGROUND

Falls pose a severe threat to the health of older adults worldwide. Determining gait and kinematic parameters that are related to an increased risk of falls is essential for developing effective intervention and fall prevention strategies. This study aimed to investigate the discriminatory parameter, which lay an important basis for developing effective clinical screening tools for identifying high-fall-risk older adults.

METHODS

Forty-one individuals aged 65 years and above living in the community participated in this study. The older adults were classified as high-fall-risk and low-fall-risk individuals based on their BBS scores. The participants wore an inertial measurement unit (IMU) while conducting the Timed Up and Go (TUG) test. Simultaneously, a depth camera acquired images of the participants' movements during the experiment. After segmenting the data according to subtasks, 142 parameters were extracted from the sensor-based data. A t-test or Mann-Whitney U test was performed on the parameters for distinguishing older adults at high risk of falling. The logistic regression was used to further quantify the role of different parameters in identifying high-fall-risk individuals. Furthermore, we conducted an ablation experiment to explore the complementary information offered by the two sensors.

RESULTS

Fifteen participants were defined as high-fall-risk individuals, while twenty-six were defined as low-fall-risk individuals. 17 parameters were tested for significance with p-values less than 0.05. Some of these parameters, such as the usage of walking assistance, maximum angular velocity around the yaw axis during turn-to-sit, and step length, exhibit the greatest discriminatory abilities in identifying high-fall-risk individuals. Additionally, combining features from both devices for fall risk assessment resulted in a higher AUC of 0.882 compared to using each device separately.

CONCLUSIONS

Utilizing different types of sensors can offer more comprehensive information. Interpreting parameters to physiology provides deeper insights into the identification of high-fall-risk individuals. High-fall-risk individuals typically exhibited a cautious gait, such as larger step width and shorter step length during walking. Besides, we identified some abnormal gait patterns of high-fall-risk individuals compared to low-fall-risk individuals, such as less knee flexion and a tendency to tilt the pelvis forward during turning.

摘要

背景

跌倒对全球老年人的健康构成严重威胁。确定与跌倒风险增加相关的步态和运动学参数对于制定有效的干预和跌倒预防策略至关重要。本研究旨在研究鉴别参数,为开发有效的临床筛查工具以识别高跌倒风险的老年人奠定重要基础。

方法

本研究纳入 41 名居住在社区的 65 岁及以上老年人。根据 BBS 评分,将老年人分为高跌倒风险和低跌倒风险个体。参与者在进行计时起立行走(TUG)测试时佩戴惯性测量单元(IMU)。同时,深度相机采集参与者实验过程中的运动图像。根据子任务对数据进行分段后,从基于传感器的数据中提取 142 个参数。对高跌倒风险个体具有鉴别意义的参数进行 t 检验或曼-惠特尼 U 检验。采用逻辑回归进一步量化不同参数在识别高跌倒风险个体中的作用。此外,我们进行了消融实验,以探索两种传感器提供的互补信息。

结果

定义 15 名参与者为高跌倒风险个体,26 名参与者为低跌倒风险个体。p 值小于 0.05 的参数有 17 个。其中,一些参数(如使用助行器、转身坐下时绕 y 轴的最大角速度和步长)在识别高跌倒风险个体方面具有最大的鉴别能力。此外,与分别使用每个设备相比,同时使用两种设备进行跌倒风险评估可获得更高的 AUC(0.882)。

结论

使用不同类型的传感器可以提供更全面的信息。对参数进行生理学解释可以更深入地了解高跌倒风险个体的识别。高跌倒风险个体通常表现出谨慎的步态,例如行走时步宽较大,步长较短。此外,与低跌倒风险个体相比,我们发现高跌倒风险个体存在一些异常的步态模式,例如膝关节屈曲度较小,转身时骨盆前倾的趋势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4adb/10836006/8d656c0d74fb/12877_2024_4723_Fig1_HTML.jpg

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