Department of Physical Therapy.
Institute for Data Science and Informatics.
Alzheimer Dis Assoc Disord. 2024;38(4):344-350. doi: 10.1097/WAD.0000000000000646. Epub 2024 Oct 17.
Early identification of clinical conditions associated with Alzheimer disease and related dementias (ADRD) is vital for intervention. One promising early detection method is the use of instrumented assessment to identify subtle motor declines associated with ADRD. This pilot study sought to establish the feasibility of building a machine learning model to identify individuals with mild cognitive impairment (MCI) using motor function data obtained from an inexpensive, portable device.
Our novel, multimodal motor function assessment platform integrates a depth camera, forceplate, and interface board. Healthy older adults (n=28) and older adults with MCI (n=19) were assessed during static balance, gait, and sit-to-stand activities in both single- and dual-task conditions. Three machine learning models (ie, support vector machine, decision trees, and logistic regression) were trained and tested with the goal of classification of MCI.
Our best model was decision trees, which demonstrated an accuracy of 83%, a sensitivity of 0.83, a specificity of 1.00, and an F1 score of 0.83. The top features were extracted and ranked on importance.
This study demonstrates the feasibility of building a machine learning model capable of identifying individuals with mild cognitive impairment using motor function data obtained with a portable, inexpensive, multimodal device.
早期识别与阿尔茨海默病和相关痴呆症(ADRD)相关的临床病症对于干预至关重要。一种有前途的早期检测方法是使用仪器评估来识别与 ADRD 相关的微妙运动下降。这项初步研究旨在建立使用从廉价、便携式设备获得的运动功能数据来识别轻度认知障碍(MCI)个体的机器学习模型的可行性。
我们的新型多模态运动功能评估平台集成了深度摄像机、测力板和接口板。在单任务和双任务条件下,对健康老年人(n=28)和患有 MCI 的老年人(n=19)进行静态平衡、步态和从坐到站活动的评估。三种机器学习模型(即支持向量机、决策树和逻辑回归)经过训练和测试,目标是对 MCI 进行分类。
我们最好的模型是决策树,其准确性为 83%,灵敏度为 0.83,特异性为 1.00,F1 得分为 0.83。提取并按重要性对顶级特征进行排名。
这项研究表明,使用便携式、廉价、多模态设备获得的运动功能数据构建能够识别轻度认知障碍个体的机器学习模型是可行的。