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身体活动与认知轨迹的结果:一种机器学习方法。

Physical activity and the outcome of cognitive trajectory: a machine learning approach.

作者信息

Barisch-Fritz Bettina, Shah Jay, Krafft Jelena, Geda Yonas E, Wu Teresa, Woll Alexander, Krell-Roesch Janina

机构信息

Karlsruhe Institute of Technology, Karlsruhe, Germany.

Arizona State University, Tempe, USA.

出版信息

Eur Rev Aging Phys Act. 2025 Jan 10;22(1):1. doi: 10.1186/s11556-024-00367-2.

Abstract

BACKGROUND

Physical activity (PA) may have an impact on cognitive function. Machine learning (ML) techniques are increasingly used in dementia research, e.g., for diagnosis and risk stratification. Less is known about the value of ML for predicting cognitive decline in people with dementia (PwD). The aim of this study was to use an ML approach to identify variables associated with a multimodal PA intervention that may impact cognitive changes in PwD, i.e., by distinguishing between cognitive decliners and non-decliners.

METHODS

This is a secondary, exploratory analysis using data from a Randomized Controlled Trial that included a 16-week multimodal PA intervention for the intervention group (IG) and treatment as usual for the control group (CG) in nursing homes. Predictors included in the ML models were related to the intervention (e.g., adherence), physical performance (e.g., mobility, balance), and pertinent health-related variables (e.g., health status, dementia form and severity). Primary outcomes were global and domain-specific cognitive performance (i.e., attention/ executive function, language, visuospatial skills, memory) assessed by standardized tests. A Support Vector Machine model was used to perform the classification of each primary outcome into the two classes of decline and non-decline. GridSearchCV with fivefold cross-validation was used for model training, and area under the ROC curve (AUC) and accuracy were calculated to assess model performance.

RESULTS

The study sample consisted of 319 PwD (IG, N = 161; CG, N = 158). The proportion of PwD experiencing cognitive decline, in the different domains measured, ranged from 27-48% in CG, and from 23-49% in IG, with no statistically significant differences and no time*group effects. ML models showed accuracy and AUC values ranging from 40.6-75.6. The strongest predictors of cognitive decline or non-decline were performance of activities of daily living in IG and CG, and adherence and mobility in IG.

CONCLUSIONS

ML models showed moderate performance, suggesting that the selected variables only had limited value for classification, with adherence and performance of activities of daily living appearing to be predictors of cognitive decline. While the study provides preliminary evidence of the potential use of ML approaches, larger studies are needed to confirm our observations and to include other variables in the prediction of cognitive decline, such as emotional health or biomarker abnormalities.

摘要

背景

身体活动(PA)可能对认知功能产生影响。机器学习(ML)技术在痴呆症研究中的应用越来越广泛,例如用于诊断和风险分层。关于ML在预测痴呆症患者(PwD)认知衰退方面的价值,人们了解较少。本研究的目的是使用ML方法来识别与多模式PA干预相关的变量,这些变量可能会影响PwD的认知变化,即通过区分认知衰退者和非衰退者。

方法

这是一项二次探索性分析,使用了一项随机对照试验的数据,该试验包括对养老院干预组(IG)进行为期16周的多模式PA干预,对照组(CG)则接受常规治疗。ML模型中纳入的预测因素与干预(如依从性)、身体表现(如活动能力、平衡能力)以及相关的健康相关变量(如健康状况、痴呆症类型和严重程度)有关。主要结局是通过标准化测试评估的整体和特定领域的认知表现(即注意力/执行功能、语言、视觉空间技能、记忆)。使用支持向量机模型将每个主要结局分为衰退和非衰退两类。采用五折交叉验证的GridSearchCV进行模型训练,并计算ROC曲线下面积(AUC)和准确率来评估模型性能。

结果

研究样本包括319名PwD(IG组,N = 161;CG组,N = 158)。在测量的不同领域中,CG组认知衰退的PwD比例为27% - 48%,IG组为23% - 49%,差异无统计学意义,且不存在时间*组效应。ML模型的准确率和AUC值在40.6 - 75.6之间。认知衰退或非衰退的最强预测因素是IG组和CG组的日常生活活动表现,以及IG组的依从性和活动能力。

结论

ML模型表现中等,表明所选变量在分类方面的价值有限,依从性和日常生活活动表现似乎是认知衰退的预测因素。虽然本研究为ML方法的潜在应用提供了初步证据,但需要更大规模的研究来证实我们的观察结果,并在认知衰退预测中纳入其他变量,如情绪健康或生物标志物异常。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9fac/11724486/be24ab8b0c40/11556_2024_367_Fig1_HTML.jpg

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