Liu Jieying, Zheng Jinping, Zheng Wen, Zhao Cai, Fang Feiteng, Zheng Haijian, Wang Ling
Department of General Practice, The First Affiliated Hospital of Soochow University, Suzhou, China.
Geriatrics Department, Heping Hospital Affiliated to Changzhi Medical College, Changzhi, China.
Ann Transl Med. 2023 Mar 15;11(5):211. doi: 10.21037/atm-23-200.
Anxiety, depression, and dementia are important issues affecting the mental health of the older population. Given the relationship between mental health and physical disorders, it is particularly important to diagnose and identify these psychological problems in older people.
Psychological data of 15,173 older people living in various districts and counties of Shanxi province, China, were extracted from data collected through the '13th Five-Year Plan for Healthy Aging-Psychological Care for the Elderly Project' of the National Health Commission of China in 2019. Three different ensemble learning classifiers [random forest (RF), Extreme Gradient Boosting (XGBoost) and Light Gradient Boosting Machine (LightGBM)] were evaluated, and the best classifier with the selected feature set was selected. The ratio of training to testing cases was 8:2. The predictive performance of the three classifiers was evaluated by calculating the area under the receiver operating characteristic curve (AUC), accuracy, recall, and F measurement based on 10-fold cross-validation and ranked by AUC.
All the three classifiers have achieved good prediction results. In the test set, the AUC value range for the three classifiers was 0.79 to 0.85. The LightGBM algorithm showed higher accuracy than both the baseline and XGBoost. A new machine learning (ML)-based model to predict mental health problems in older people was constructed. The model was interpretative and could hierarchically predict psychological problems including anxiety, depression, and dementia in older people. Experimental results showed that the method could accurately identify those suffering from anxiety, depression, and dementia in different age groups.
A simple method model was designed based on only eight problems, which had good accuracy and was widely applicable to the older of all ages. Overall, this research approach avoided the need to identify older people with poor mental health through the traditional standardized questionnaire approach.
焦虑、抑郁和痴呆是影响老年人群心理健康的重要问题。鉴于心理健康与身体疾病之间的关系,在老年人中诊断和识别这些心理问题尤为重要。
从中国国家卫生健康委员会2019年“健康老龄化十三五规划——老年人心理关爱项目”收集的数据中,提取了居住在中国山西省各区县的15173名老年人的心理数据。评估了三种不同的集成学习分类器[随机森林(RF)、极端梯度提升(XGBoost)和轻梯度提升机(LightGBM)],并选择了具有所选特征集的最佳分类器。训练案例与测试案例的比例为8:2。通过基于10折交叉验证计算受试者工作特征曲线(AUC)下的面积、准确率、召回率和F值,评估这三种分类器的预测性能,并按AUC进行排名。
所有三种分类器都取得了良好的预测结果。在测试集中,三种分类器的AUC值范围为0.79至0.85。LightGBM算法显示出比基线和XGBoost更高的准确率。构建了一种基于机器学习(ML)的新型模型,用于预测老年人的心理健康问题。该模型具有可解释性,能够分层预测老年人的心理问题,包括焦虑、抑郁和痴呆。实验结果表明,该方法能够准确识别不同年龄组中患有焦虑、抑郁和痴呆的人群。
基于仅八个问题设计了一种简单的方法模型,该模型具有良好的准确率,广泛适用于所有年龄段的老年人。总体而言,本研究方法避免了通过传统标准化问卷方法识别心理健康状况不佳的老年人的需求。