Physiological, Psychological, and Functional Health Determinants of Depressive Symptoms Among the Elderly in India: Evaluation of Classification Performance of XGBoost Models.

Aswathy Pv, Abhishek Verma, Balasankar Jm, Aratrika Roy, K P Junaid
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Abstract

Background: Depression among the elderly is a growing public health concern, especially in India. This study aimed to investigate the predictive validity of physiological, psychological, and functional health factors in classifying the level of depressive symptoms among the elderly using the extreme gradient boosting (XGBoost) technique. Additionally, we compared the performance of models trained on original and resampled data.

Methods: This study is entirely based on secondary data analysis of the Longitudinal Aging Study in India wave 1 data. We classified the observations into "high depressive symptom" and "low/no depressive symptom" groups based on the predictors, including physiological, psychological, and functional health factors, along with socio-demographic factors. We developed three models (Models 1, 2, and 3) trained on original, over-sampled, and under-sampled data, respectively. Model performance was evaluated using the metrics of balanced accuracy, sensitivity, specificity, and area under the receiver operating characteristics curve (AUC).

Results: The study included 26,065 individuals aged 60 and above. Model 3, trained on under-sampled data, demonstrated the best overall performance. It achieved a balanced accuracy of 64%, with a sensitivity of 62.8% and specificity of 65.2%. The AUC for Model 3 was 0.692. Feature importance analysis revealed that life satisfaction, instrumental activities of daily living, mobility, caste, and monthly per capita expenditure quintiles were among the most influential factors in predicting the level of depressive symptoms.

Conclusion: The XGBoost models demonstrate promise in predicting depressive symptoms among the elderly. These findings suggest that machine learning models can be envisaged for early detection and management of depression, especially in primary care.

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印度老年人抑郁症状的生理、心理和功能健康决定因素:XGBoost模型分类性能的评价
背景:老年人抑郁症是一个日益严重的公共卫生问题,特别是在印度。本研究旨在探讨生理、心理和功能健康因素在使用极限梯度增强(XGBoost)技术对老年人抑郁症状进行分类时的预测有效性。此外,我们比较了在原始和重新采样数据上训练的模型的性能。方法:本研究完全基于印度纵向老龄化研究第1波资料的二次资料分析。我们根据预测因素(包括生理、心理、功能健康因素以及社会人口因素)将观察结果分为“高抑郁症状”和“低/无抑郁症状”两组。我们开发了三个模型(模型1、模型2和模型3),分别对原始、过采样和欠采样数据进行训练。使用平衡的准确性、灵敏度、特异性和受试者工作特征曲线下面积(AUC)来评估模型的性能。结果:该研究包括26,065名60岁及以上的人。在欠采样数据上训练的模型3表现出最好的整体性能。该方法的平衡准确率为64%,灵敏度为62.8%,特异性为65.2%。模型3的AUC为0.692。特征重要性分析显示,生活满意度、日常生活工具活动、流动性、种姓和月人均支出五分位数是预测抑郁症状水平的最重要因素。结论:XGBoost模型在预测老年人抑郁症状方面具有良好的应用前景。这些发现表明,机器学习模型可以用于抑郁症的早期发现和管理,特别是在初级保健中。
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来源期刊
CiteScore
4.80
自引率
7.10%
发文量
116
审稿时长
12 weeks
期刊介绍: The Indian Journal of Psychological Medicine (ISSN 0253-7176) was started in 1978 as the official publication of the Indian Psychiatric Society South Zonal Branch. The journal allows free access (Open Access) and is published Bimonthly. The Journal includes but is not limited to review articles, original research, opinions, and letters. The Editor and publisher accept no legal responsibility for any opinions, omissions or errors by the authors, nor do they approve of any product advertised within the journal.
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