Hao Chenxi, Zhang Xiaonan, An Junpin, Bao Wenjing, Yang Fan, Chen Jinyu, Hou Sijia, Wang Zhigang, Du Shuning, Zhao Yarong, Wang Qiuyan, Min Guowen, Li Yang
Department of Neurology, First Hospital of Shanxi Medical University, Taiyuan, China.
Department of Radiology, First Hospital of Shanxi Medical University, Taiyuan, China.
Front Aging Neurosci. 2024 Sep 25;16:1444375. doi: 10.3389/fnagi.2024.1444375. eCollection 2024.
To evaluate the effectiveness of multimodal features based on gait analysis and eye tracking for elderly people screening with subjective cognitive decline in the community.
In the study, 412 cognitively normal older adults aged over 65 years were included. Among them, 230 individuals were diagnosed with non-subjective cognitive decline and 182 with subjective cognitive decline. All participants underwent assessments using three screening tools: the traditional SCD9 scale, gait analysis, and eye tracking. The gait analysis involved three tasks: the single task, the counting backwards dual task, and the naming animals dual task. Eye tracking included six paradigms: smooth pursuit, median fixation, lateral fixation, overlap saccade, gap saccade, and anti-saccade tasks. Using the XGBoost machine learning algorithm, several models were developed based on gait analysis and eye tracking to classify subjective cognitive decline.
A total of 161 gait and eye-tracking features were measured. 22 parameters, including 9 gait and 13 eye-tracking features, showed significant differences between the two groups ( < 0.05). The top three eye-tracking paradigms were anti-saccade, gap saccade, and median fixation, with AUCs of 0.911, 0.904, and 0.891, respectively. The gait analysis features had an AUC of 0.862, indicating better discriminatory efficacy compared to the SCD9 scale, which had an AUC of 0.762. The model based on single and dual task gait, anti-saccade, gap saccade, and median fixation achieved the best efficacy in SCD screening (AUC = 0.969).
The gait analysis, eye-tracking multimodal assessment tool is an objective and accurate screening method that showed better detection of subjective cognitive decline. This finding provides another option for early identification of subjective cognitive decline in the community.
评估基于步态分析和眼动追踪的多模态特征对社区中主观认知下降的老年人进行筛查的有效性。
本研究纳入了412名65岁以上认知正常的老年人。其中,230人被诊断为非主观认知下降,182人被诊断为主观认知下降。所有参与者均使用三种筛查工具进行评估:传统的SCD9量表、步态分析和眼动追踪。步态分析包括三项任务:单任务、倒数双重任务和命名动物双重任务。眼动追踪包括六种范式:平稳追踪、中央注视、侧方注视、重叠扫视、间隔扫视和反扫视任务。使用XGBoost机器学习算法,基于步态分析和眼动追踪开发了多个模型来对主观认知下降进行分类。
共测量了161个步态和眼动追踪特征。22个参数,包括9个步态特征和13个眼动追踪特征,在两组之间显示出显著差异(<0.05)。眼动追踪范式中排名前三的是反扫视、间隔扫视和中央注视,其曲线下面积(AUC)分别为0.911、0.904和0.891。步态分析特征的AUC为0.862,表明与AUC为0.762的SCD9量表相比,具有更好的区分效果。基于单任务和双重任务步态、反扫视、间隔扫视和中央注视的模型在SCD筛查中取得了最佳效果(AUC = 0.969)。
步态分析、眼动追踪多模态评估工具是一种客观准确的筛查方法,在检测主观认知下降方面表现更好。这一发现为社区中主观认知下降的早期识别提供了另一种选择。