Shaw Jin-Siang, Xu Ming-Xuan, Cheng Fang-Yu, Chen Pei-Hao
Institute of Mechatronic Engineering, National Taipei University of Technology, Taipei 106, Taiwan.
Institute of Long-Term Care, MacKay Medical College, New Taipei City 252, Taiwan.
Diagnostics (Basel). 2025 May 26;15(11):1338. doi: 10.3390/diagnostics15111338.
: Motoric Cognitive Risk Syndrome (MCR), defined by the co-occurrence of subjective cognitive complaints and slow gait, is recognized as a preclinical risk state for cognitive decline. However, not all individuals with MCR experience cognitive deterioration, making early and individualized prediction critical. : This study included 80 participants aged 60 and older with MCR who underwent baseline assessments including plasma biomarkers (β-amyloid, tau), dual-task gait measurements, and neuropsychological tests. Participants were followed for one year to monitor cognitive changes. Support Vector Machine (SVM) classifiers with different kernel functions were trained to predict cognitive decline. Feature importance was evaluated using the weight coefficients of a linear SVM. : Key predictors of cognitive decline included plasma β-amyloid and tau concentrations, gait features from dual-task conditions, and memory performance scores (e.g., California Verbal Learning Test). The best-performing model used a linear kernel with 30 selected features, achieving 88.2% accuracy and an AUC of 83.7% on the test set. Cross-validation yielded an average accuracy of 95.3% and an AUC of 99.6%. : This study demonstrates the feasibility of combining biomarker, motor, and cognitive assessments in a machine learning framework to predict short-term cognitive decline in individuals with MCR. The findings support the potential clinical utility of such models but also underscore the need for external validation.
运动认知风险综合征(MCR)由主观认知主诉和步态缓慢共同出现所定义,被认为是认知衰退的临床前风险状态。然而,并非所有患有MCR的个体都会经历认知恶化,因此早期和个性化预测至关重要。本研究纳入了80名60岁及以上患有MCR的参与者,他们接受了包括血浆生物标志物(β-淀粉样蛋白、tau蛋白)、双任务步态测量和神经心理学测试在内的基线评估。对参与者进行了为期一年的随访以监测认知变化。训练了具有不同核函数的支持向量机(SVM)分类器来预测认知衰退。使用线性SVM的权重系数评估特征重要性。认知衰退的关键预测因素包括血浆β-淀粉样蛋白和tau蛋白浓度、双任务条件下的步态特征以及记忆表现评分(例如加利福尼亚言语学习测试)。表现最佳的模型使用具有30个选定特征的线性核,在测试集上的准确率达到88.2%,曲线下面积(AUC)为83.7%。交叉验证产生的平均准确率为95.3%,AUC为99.6%。本研究证明了在机器学习框架中结合生物标志物、运动和认知评估来预测MCR个体短期认知衰退的可行性。这些发现支持了此类模型的潜在临床效用,但也强调了外部验证的必要性。