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Detection of mild cognitive impairment and Alzheimer's disease using dual-task gait assessments and machine learning

机译:使用双任务步态评估和机器学习检测轻度认知障碍和阿尔茨海默病

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Objective: Early detection of mild cognitive impairment (MCI) and Alzheimer's disease (AD) can increase access to treatment and assist in advance care planning. However, the development of a diagnostic system that d7oes not heavily depend on cognitive testing is a major challenge. We describe a diagnostic algorithm based solely on gait and machine learning to detect MCI and AD from healthy.Methods: We collected "single-tasking" gait (walking) and "dual-tasking" gait (walking with cognitive tasks) from 32 healthy, 26 MCI, and 20 AD participants using a computerized walkway. Each participant was assessed with the Montreal Cognitive Assessment (MoCA). A set of gait features (e.g., mean, variance and asymmetry) were extracted. Significant features for three classifications of MCI/healthy, AD/healthy, and AD/MCI were identified. A support vector machine model in a one-vs.-one manner was trained for each classification, and the majority vote of the three models was assigned as healthy, MCI, or AD.Results: The average classification accuracy of 5-fold cross-validation using only the gait features was 78% (77% F1-score), which was plausible when compared with the MoCA score with 83% accuracy (84% F1-score). The performance of healthy vs. MCI or AD was 86% (88% F1-score), which was comparable to 88% accuracy (90% F1-score) with MoCA.Conclusion: Our results indicate the potential of machine learning and gait assessments as objective cognitive screening and diagnostic tools.Significance: Gait-based cognitive screening can be easily adapted into clinical settings and may lead to early identification of cognitive impairment, so that early intervention strategies can be initiated.
机译:目的:早期发现轻度认知障碍(MCI)和阿尔茨海默病(AD)可以增加对治疗的获得和协助预付款规划。然而,开发D7oes不严重取决于认知测试的诊断系统是一个重大挑战。我们描述了一种仅基于步态和机器学习的诊断算法来检测MCI和AD的健康。方法:我们收集了“单任务”步态(行走)和“双重任务”步态(通过认知任务走路)从32健康, 26 MCI和20名广告参与者使用电脑走道。每位参与者被蒙特利尔认知评估(MOCA)评估。提取了一组步态特征(例如,平均值,方差和不对称性)。确定了三种MCI /健康,广告/健康和AD / MCI分类的显着特征。一个VS的支持向量机模型是针对每种分类培训的一种,为一个方式培训,这三种模型的大多数投票被分配为健康,MCI或AD.Results:5倍交叉的平均分类准确性使用只有步态功能的验证是78%(F1分数77% - 得分),与MOCA得分相比,具有83%的准确度(84%F1分)。健康与MCI或AD的表现为86%(88%F1分),可与Moca的88%(90%F1分)相当。结论:我们的结果表明机器学习和步态评估的潜力作为客观的认知筛查和诊断工具。可辨认:基于步态的认知筛选可以很容易地调整到临床环境中,并可能导致认知障碍的早期识别,从而可以启动早期干预策略。

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