School of Integrated Chinese and Western Medicine, Hunan University of Chinese Medicine, Changsha, Hunan, China.
Key Laboratory of Hunan Province for Integrated Traditional Chinese and Western Medicine on Prevention and Treatment of Cardio-Cerebral Diseases, College of Integrated Traditional Chinese and Western Medicine, Hunan University of Chinese Medicine, Changsha, Hunan, China.
Front Public Health. 2024 Apr 17;12:1391033. doi: 10.3389/fpubh.2024.1391033. eCollection 2024.
EPs pose significant challenges to individual health and quality of life, attracting attention in public health as a risk factor for diminished quality of life and healthy life expectancy in middle-aged and older adult populations. Therefore, in the context of global aging, meticulous exploration of the factors behind emotional issues becomes paramount. Whether ADL can serve as a potential marker for EPs remains unclear. This study aims to provide new evidence for ADL as an early predictor of EPs through statistical analysis and validation using machine learning algorithms.
Data from the 2018 China Health and Retirement Longitudinal Study (CHARLS) national baseline survey, comprising 9,766 samples aged 45 and above, were utilized. ADL was assessed using the BI, while the presence of EPs was evaluated based on the record of "Diagnosed with Emotional Problems by a Doctor" in CHARLS data. Statistical analyses including independent samples -test, chi-square test, Pearson correlation analysis, and multiple linear regression were conducted using SPSS 25.0. Machine learning algorithms, including Support Vector Machine (SVM), Decision Tree (DT), and Logistic Regression (LR), were implemented using Python 3.10.2.
Population demographic analysis revealed a significantly lower average BI score of 65.044 in the "Diagnosed with Emotional Problems by a Doctor" group compared to 85.128 in the "Not diagnosed with Emotional Problems by a Doctor" group. Pearson correlation analysis indicated a significant negative correlation between ADL and EPs ( = -0.165, < 0.001). Iterative analysis using stratified multiple linear regression across three different models demonstrated the persistent statistical significance of the negative correlation between ADL and EPs (B = -0.002, = -0.186, = -16.476, 95% CI = -0.002, -0.001, = 0.000), confirming its stability. Machine learning algorithms validated our findings from statistical analysis, confirming the predictive accuracy of ADL for EPs. The area under the curve (AUC) for the three models were SVM-AUC = 0.700, DT-AUC = 0.742, and LR-AUC = 0.711. In experiments using other covariates and other covariates + BI, the overall prediction level of machine learning algorithms improved after adding BI, emphasizing the positive effect of ADL on EPs prediction.
This study, employing various statistical methods, identified a negative correlation between ADL and EPs, with machine learning algorithms confirming this finding. Impaired ADL increases susceptibility to EPs.
老年人的日常生活活动能力(ADL)下降与情感问题(EP)显著相关,这不仅对个人的健康和生活质量造成影响,还可能对中年和老年人群的生活质量和健康预期寿命产生负面影响。因此,在全球人口老龄化的背景下,深入探究导致情感问题的因素至关重要。ADL 能否作为 EP 的潜在预测指标仍不明确。本研究旨在通过统计分析和机器学习算法验证,为 ADL 作为 EP 早期预测指标提供新的证据。
本研究使用了 2018 年中国健康与养老追踪调查(CHARLS)的全国基线调查数据,共纳入 9766 名 45 岁及以上的样本。采用巴氏指数(BI)评估 ADL,根据 CHARLS 数据中“由医生诊断患有情绪问题”的记录评估 EP 的存在。采用 SPSS 25.0 进行独立样本 t 检验、卡方检验、Pearson 相关分析和多元线性回归分析。采用 Python 3.10.2 实现支持向量机(SVM)、决策树(DT)和逻辑回归(LR)等机器学习算法。
人群特征分析显示,在“由医生诊断患有情绪问题”组中,平均 BI 评分为 65.044,显著低于“未被医生诊断患有情绪问题”组的 85.128。Pearson 相关分析显示,ADL 与 EP 呈显著负相关( = -0.165, < 0.001)。通过三个不同模型的分层多元线性回归迭代分析,均显示 ADL 与 EP 之间的负相关具有统计学意义(B = -0.002, = -0.186, = -16.476,95%CI = -0.002,-0.001, = 0.000),表明其稳定性。机器学习算法验证了我们的统计分析结果,证实了 ADL 对 EP 的预测准确性。三个模型的曲线下面积(AUC)分别为 SVM-AUC = 0.700、DT-AUC = 0.742 和 LR-AUC = 0.711。在使用其他协变量和其他协变量+BI 的实验中,添加 BI 后,机器学习算法的整体预测水平提高,这强调了 ADL 对 EP 预测的积极影响。
本研究采用多种统计方法,发现 ADL 与 EP 之间存在负相关关系,机器学习算法验证了这一发现。ADL 受损会增加患 EP 的风险。