School of Nursing, Bengbu Medical University, Bengbu, China.
School of Health Management, Bengbu Medical University, Bengbu, China.
J Affect Disord. 2024 Aug 15;359:182-188. doi: 10.1016/j.jad.2024.05.078. Epub 2024 May 18.
Detecting potential depression and identifying the critical predictors of depression among older adults with chronic diseases are essential for timely intervention and management of depression. Therefore, risk prediction models (RPMs) of depression in elderly people should be further explored.
A total of 3959 respondents aged 60 years or over from the wave four survey of the China Health and Retired Longitudinal Study (CHARLS) were included in this study. We used five machine learning (ML) algorithms and three data balancing techniques to construct RPMs of depression and calculated feature importance scores to determine which features are essential to depression.
The prevalence of depression was 19.2 % among older Chinese adults with chronic diseases in the wave four survey. The random forest (RF) model was more accurate than the other models after balancing the data using the Synthetic Minority Oversampling Technique (SMOTE) algorithm, with an area under the receiver operating characteristic curve (AUROC) and area under the precision-recall curve (AUPRC) of 0.957 and 0.920, respectively, a balanced accuracy of 0.891 and a sensitivity of 0.875. Furthermore, we further identified several important predictors between male and female patients via constructed sex-stratified models.
Further research on the clinical impact studies of our models and external validation are needed.
After several techniques were used to address class imbalance issues, most RPMs achieved satisfactory accuracy in predicting depression among elderly people with chronic diseases. RPMs may thus become valuable screening tools for both older individuals and healthcare practitioners to assess the risk of depression.
对于患有慢性病的老年人,及时发现潜在的抑郁症状并识别抑郁的关键预测因素对于抑郁的及时干预和管理至关重要。因此,应该进一步探索老年人抑郁的风险预测模型(RPM)。
本研究共纳入了来自中国健康与退休纵向研究(CHARLS)第四波调查的 3959 名 60 岁及以上的受访者。我们使用了五种机器学习(ML)算法和三种数据平衡技术来构建抑郁的 RPM,并计算了特征重要性得分,以确定哪些特征对抑郁是必不可少的。
在 CHARLS 第四波调查中,患有慢性病的中国老年人中抑郁的患病率为 19.2%。在使用 Synthetic Minority Oversampling Technique(SMOTE)算法平衡数据后,随机森林(RF)模型比其他模型更准确,其接受者操作特征曲线下的面积(AUROC)和精度-召回曲线下的面积(AUPRC)分别为 0.957 和 0.920,平衡准确率为 0.891,敏感度为 0.875。此外,我们通过构建性别分层模型,进一步确定了男性和女性患者之间的几个重要预测因素。
需要进一步研究我们的模型的临床影响研究和外部验证。
在使用几种技术解决类别不平衡问题后,大多数 RPM 对预测患有慢性病的老年人的抑郁状态达到了令人满意的准确性。因此,RPM 可能成为评估老年人抑郁风险的有价值的筛查工具,既适用于老年人自身,也适用于医疗保健从业者。