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基于统计和机器学习分析证据的日常生活活动与言语障碍之间的关系。

The relationship between activities of daily living and speech impediments based on evidence from statistical and machine learning analyses.

作者信息

Jun Liu, Li Hongguo, Mao Yu, Hu Lan, Wu Dan

机构信息

Traditional Chinese Medicine Department, The Fourth Hospital of Changsha, Changsha, Hunan, China.

出版信息

Front Public Health. 2025 Feb 6;13:1491527. doi: 10.3389/fpubh.2025.1491527. eCollection 2025.

DOI:10.3389/fpubh.2025.1491527
PMID:39980924
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11840443/
Abstract

INTRODUCTION

Speech impediments (SIs) are increasingly prevalent among middle-aged and older adults, raising concerns within public health. Early detection of potential SI in this demographic is critical. This study investigates the potential of Activities of Daily Living (ADL) as a predictive marker for SI, utilizing data from the 2018 China Health and Retirement Longitudinal Study (CHARLS), which includes 10,136 individuals aged 45 and above. The Barthel Index (BI) was used to assess ADL, and the correlation between ADL and SI was examined through statistical analyses. Machine learning algorithms (Support Vector Machine, Decision Tree, and Logistic Regression) were employed to validate the findings and elucidate the underlying relationship between ADL and SI.

BACKGROUND

SI poses significant challenges to the health and quality of life of middle-aged and older adults, increasing the demands on community-based and home care services. In the context of global aging, it is crucial to investigate the factors contributing to SI. While the role of ADL as a potential biomarker for SI remains unclear, this study aims to provide new evidence supporting ADL as an early predictor of SI through statistical analysis and machine learning validation.

METHODS

Data were derived from the 2018 CHARLS national baseline survey, comprising 10,136 participants aged 45 and above. ADL was evaluated using the BI, and SI was assessed based on the CHARLS records of "Speech impediments." Statistical analyses, including independent sample t-tests, chi-square tests, Pearson and Spearman correlation tests, and hierarchical multiple linear regression, were conducted using SPSS 25.0. Machine learning algorithms, specifically Support Vector Machine (SVM), Decision Tree (DT), and Logistic Regression (LR), were implemented in Python 3.10.2.

RESULTS

Analysis of demographic characteristics revealed that the average BI score in the "With Speech impediments" group was 49.46, significantly lower than the average score of 85.11 in the "Without Speech impediments" group. Pearson correlation analysis indicated a significant negative correlation between ADL and SI ( = -0.205,  < 0.001). Hierarchical multiple linear regression confirmed the robustness of this negative correlation across three models (B = -0.001,  = -0.168,  = -16.16, 95% CI = -0.001 to -0.001,  = 0.000). Machine learning algorithms validated the statistical findings, confirming the predictive accuracy of ADL for SI, with the area under the curve (AUC) scores of SVM-AUC = 0.648, DT-AUC = 0.931, and LR-AUC = 0.666. The inclusion of BI in the models improved the overall predictive performance, highlighting its positive impact on SI prediction.

CONCLUSION

The study employed various statistical methodologies to demonstrate a significant negative correlation between ADL and SI, a finding further corroborated by machine learning algorithms. Impairment in ADL increases the likelihood of SI occurrence, underscoring the importance of maintaining ADL in middle-aged and older populations to mitigate the risk of SI.

摘要

引言

言语障碍(SIs)在中老年人中越来越普遍,这引起了公共卫生领域的关注。在这一人群中早期发现潜在的言语障碍至关重要。本研究利用2018年中国健康与养老追踪调查(CHARLS)的数据,调查日常生活活动(ADL)作为言语障碍预测指标的潜力,该调查涵盖了10136名45岁及以上的个体。采用巴氏指数(BI)评估日常生活活动能力,并通过统计分析检验日常生活活动能力与言语障碍之间的相关性。运用机器学习算法(支持向量机、决策树和逻辑回归)来验证研究结果,并阐明日常生活活动能力与言语障碍之间的潜在关系。

背景

言语障碍给中老年人的健康和生活质量带来了重大挑战,增加了对社区和家庭护理服务的需求。在全球老龄化的背景下,研究导致言语障碍的因素至关重要。虽然日常生活活动能力作为言语障碍潜在生物标志物的作用尚不清楚,但本研究旨在通过统计分析和机器学习验证,为支持日常生活活动能力作为言语障碍的早期预测指标提供新的证据。

方法

数据来自2018年CHARLS全国基线调查,包括10136名45岁及以上的参与者。使用巴氏指数评估日常生活活动能力,并根据CHARLS中“言语障碍”的记录评估言语障碍。使用SPSS 25.0进行统计分析,包括独立样本t检验、卡方检验、Pearson和Spearman相关性检验以及分层多元线性回归。机器学习算法,特别是支持向量机(SVM)、决策树(DT)和逻辑回归(LR),在Python 3.10.2中实现。

结果

人口统计学特征分析显示,“有言语障碍”组的平均巴氏指数得分为49.46,显著低于“无言语障碍”组的平均得分85.11。Pearson相关性分析表明,日常生活活动能力与言语障碍之间存在显著负相关(r = -0.205,p < 0.001)。分层多元线性回归在三个模型中证实了这种负相关的稳健性(B = -0.001,β = -0.168,t = -16.16,95%CI = -0.001至-0.001,p = 0.000)。机器学习算法验证了统计结果,证实了日常生活活动能力对言语障碍的预测准确性,支持向量机的曲线下面积(AUC)得分为0.648,决策树的AUC得分为0.931,逻辑回归的AUC得分为0.666。将巴氏指数纳入模型提高了整体预测性能,突出了其对言语障碍预测的积极影响。

结论

该研究采用多种统计方法证明了日常生活活动能力与言语障碍之间存在显著负相关,机器学习算法进一步证实了这一发现。日常生活活动能力受损会增加言语障碍发生的可能性,强调了在中年和老年人群中维持日常生活活动能力以降低言语障碍风险的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0e8/11840443/bb095bc8a36a/fpubh-13-1491527-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0e8/11840443/aa0c2afce92b/fpubh-13-1491527-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0e8/11840443/bb095bc8a36a/fpubh-13-1491527-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0e8/11840443/aa0c2afce92b/fpubh-13-1491527-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0e8/11840443/bb095bc8a36a/fpubh-13-1491527-g002.jpg

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