预测和检测老年人轻度认知障碍和痴呆的视听方法的自动视频分析。

Che-Sheng Chu, Di Wang, C. Liang, M. Chou, Ying-Hsin Hsu, Yu-Chun Wang, M. Liao, W. Chu, Yu-Te Lin
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引用次数: 0

摘要

背景:准确识别认知障碍的不同阶段对于为老年人提供有效的干预和及时的护理非常重要。目的:本研究旨在检验基于自动视频分析的人工智能(AI)技术区分轻度认知障碍(MCI)和轻度至中度痴呆参与者的能力。方法共招募95名受试者(MCI, 41名;轻度至中度痴呆,54)。这些视频是在便携式简短心理状态问卷过程中拍摄的;利用这些视频提取视觉和听觉特征。随后建立了深度学习模型,用于轻度认知障碍和轻度至中度痴呆的二元分化。预测的迷你精神状态检查、认知能力筛选工具得分和基本真相也进行了相关分析。结果结合视觉和听觉特征的深度学习模型将MCI区分为轻度至中度痴呆,曲线下面积(AUC)为77.0%,准确率为76.0%。排除抑郁和焦虑后,AUC和准确率分别提高到93.0%和88.0%。在预测的认知功能和基本真相之间观察到显著的中度相关,并且在排除抑郁和焦虑后相关性很强。有趣的是,女性,而不是男性,表现出了相关性。结论基于视频的深度学习模型可以区分轻度认知损伤和轻度至中度痴呆,并能预测认知功能。这种方法可能为早期发现认知障碍提供一种经济有效且易于应用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Video Analysis of Audio-Visual Approaches to Predict and Detect Mild Cognitive Impairment and Dementia in Older Adults.
BACKGROUND Early identification of different stages of cognitive impairment is important to provide available intervention and timely care for the elderly. OBJECTIVE This study aimed to examine the ability of the artificial intelligence (AI) technology to distinguish participants with mild cognitive impairment (MCI) from those with mild to moderate dementia based on automated video analysis. METHODS A total of 95 participants were recruited (MCI, 41; mild to moderate dementia, 54). The videos were captured during the Short Portable Mental Status Questionnaire process; the visual and aural features were extracted using these videos. Deep learning models were subsequently constructed for the binary differentiation of MCI and mild to moderate dementia. Correlation analysis of the predicted Mini-Mental State Examination, Cognitive Abilities Screening Instrument scores, and ground truth was also performed. RESULTS Deep learning models combining both the visual and aural features discriminated MCI from mild to moderate dementia with an area under the curve (AUC) of 77.0% and accuracy of 76.0% . The AUC and accuracy increased to 93.0% and 88.0%, respectively, when depression and anxiety were excluded. Significant moderate correlations were observed between the predicted cognitive function and ground truth, and the correlation was strong excluding depression and anxiety. Interestingly, female, but not male, exhibited a correlation. CONCLUSION The study showed that video-based deep learning models can differentiate participants with MCI from those with mild to moderate dementia and can predict cognitive function. This approach may offer a cost-effective and easily applicable method for early detection of cognitive impairment.
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