Jung Dawoon, Nguyen Mau Dung, Park Mina, Kim Miji, Won Chang Won, Kim Jinwook, Mun Kyung-Ryoul
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3931-3935. doi: 10.1109/EMBC44109.2020.9176069.
The world population is aging, and this phenomenon is expected to continue for the next decades. This study aimed to propose a simple and reliable method that can be used for daily in-home monitoring of frailty and cognitive dysfunction in the elderly based on their walking-in-place characteristics. Fifty-four community-dwelling elderly people aged 65 years or older participated in this study. The participants were categorized into the robust and the non-robust groups according to the FRAIL scale. The mini-mental state examination was used to classify the cognitive impairment and the non-cognitive impairment groups. The 3-axis acceleration and the 3-axis angular velocity signals were measured using the inertial measurement units attached to the foot, shank, thigh, and posterior pelvis while each participant was walking in place for 20 seconds. The walking-in-place spectrograms were acquired by applying time-frequency analysis to the lower body movement signals measured in one stride. Four-fold cross-validation was applied to 80% of the total samples and the remaining 20% were used as test data. The deep convolutional neural network-based classifiers trained with the walking-in-place spectrograms enabled to categorize the robust and the non-robust groups with 94.63% accuracy and classify the cognitive impairment and the non-cognitive impairment groups with 97.59% accuracy. This study suggests that the walking-in-place spectrograms, which can be obtained without spacious experimental space, cumbersome equipment, and laborious processes, are effective indicators of frailty and cognitive dysfunction in the elderly.
世界人口正在老龄化,预计这一现象将在未来几十年持续。本研究旨在提出一种简单可靠的方法,可用于基于老年人原地行走特征对其虚弱和认知功能障碍进行日常居家监测。54名65岁及以上的社区老年人参与了本研究。根据FRAIL量表将参与者分为强壮组和非强壮组。使用简易精神状态检查表对认知障碍组和非认知障碍组进行分类。在每位参与者原地行走20秒时,使用附着在足部、小腿、大腿和后骨盆的惯性测量单元测量三轴加速度和三轴角速度信号。通过对一步中测量的下半身运动信号进行时频分析,获取原地行走频谱图。对80%的总样本应用四重交叉验证,其余20%用作测试数据。基于原地行走频谱图训练的深度卷积神经网络分类器能够以94.63%的准确率对强壮组和非强壮组进行分类,并以97.59%的准确率对认知障碍组和非认知障碍组进行分类。本研究表明,无需宽敞的实验空间、繁琐的设备和费力的过程即可获得的原地行走频谱图,是老年人虚弱和认知功能障碍的有效指标。