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基于连续步态特征和长短时记忆网络的认知障碍风险分类。

Classifying the Risk of Cognitive Impairment Using Sequential Gait Characteristics and Long Short-Term Memory Networks.

出版信息

IEEE J Biomed Health Inform. 2021 Oct;25(10):4029-4040. doi: 10.1109/JBHI.2021.3073372. Epub 2021 Oct 5.

DOI:10.1109/JBHI.2021.3073372
PMID:33857005
Abstract

Cognitive impairment in the elderly causes a significant decline in the quality of life and a substantial economic burden on society. Yet, diagnosing cognitive impairment is apt to be missed or delayed due to its assessment being laborious. This study aimed to propose a new approach of classifying the risk of cognitive impairment in the elderly using sequential gait characteristics and machine learning techniques. A total of 108 community-dwelling elderly individuals participated in this study. The participants were categorized into three groups based on their scores of the mini-mental state examination. Each participant completed both the usual- and fast-paced walking on the straight path with two gyroscopes on each foot. By analyzing the foot sagittal angular velocity signals, the temporal gait parameters were extracted from each gait cycle. Five classical machine learning models and a long short-term memory network were respectively employed to produce the classifiers that used the time-consecutive temporal gait parameters as predictors of cognitive impairment. Five-fold cross-validation was applied to 70% of the data in each group, and the remaining 30% were used as test data. An F-score of 0.974 was achieved in classifying the three groups by the long short-term memory network-based classifier that used the double-limb support, stance, step, and stride times at usual-paced walking and the double- and single-limb support, stance, and stride times at fast-paced walking as inputs. The proposed approach would pave the way for earlier diagnosis of cognitive impairment in non-clinical settings without professional help, which can facilitate more timely intervention.

摘要

老年人认知障碍会导致生活质量显著下降,并给社会带来巨大的经济负担。然而,由于认知障碍的评估较为繁琐,其诊断容易被忽视或延迟。本研究旨在提出一种使用连续步态特征和机器学习技术来分类老年人认知障碍风险的新方法。共有 108 名居住在社区的老年人参与了这项研究。参与者根据其简易精神状态检查得分被分为三组。每位参与者都在直道上完成了常规和快速步伐,每只脚都有两个陀螺仪。通过分析足矢状面角速度信号,从每个步态周期中提取时间步态参数。分别使用五个经典机器学习模型和一个长短期记忆网络来产生分类器,这些分类器将时间连续的时间步态参数作为认知障碍的预测因子。在每组数据中,将 70%的数据应用五折交叉验证,其余 30%的数据作为测试数据。基于长短期记忆网络的分类器使用常规步伐的双下肢支撑、站立、步和跨步时间以及快速步伐的双下肢、单下肢支撑、站立和跨步时间作为输入,可将三组数据分类,F 分数达到 0.974。该方法为在没有专业帮助的非临床环境中更早地诊断认知障碍铺平了道路,从而可以更及时地进行干预。

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