Department of Oncology, National Clinical Research Center for Geriatric Disorders (Xiangya Center), Xiangya Hospital, Central South University, Changsha, China; Changsha Social Laboratory of Artificial Intelligence, Changsha, China; School of Science, Hunan University of Technology and Business, Changsha, China.
Department of Physiotherapy Treatment Center, Affiliated Mental Health Center &Hangzhou Seventh People's Hospital, Zhejiang University School of Medicine, Hangzhou, China.
Comput Biol Med. 2024 May;174:108446. doi: 10.1016/j.compbiomed.2024.108446. Epub 2024 Apr 8.
Depression and anxiety, prevalent coexisting mood disorders, pose a clinical challenge in accurate differentiation, hindering effective healthcare interventions. This research addressed this gap by employing a streamlined Symptom Checklist 90 (SCL-90) designed to minimize patient response burden. Utilizing machine learning algorithms, the study sought to construct classification models capable of distinguishing between depression and anxiety.
The study included 4262 individuals currently experiencing depression alone (n = 2998), anxiety alone (n = 716), or both depression and anxiety (n = 548). Counterfactual diagnosis was used to construct a causal network on the dataset. Employing a causal network, the SCL-90 was simplified. Items that have causality with only depression, only anxiety and both depression and anxiety were selected, and these streamlined items served as input features for four distinct machine learning algorithms, facilitating the creation of classification models for distinguishing depression and anxiety.
Cross-validation demonstrated the performance of the classification models with the following metrics: (1) K-nearest neighbors (AUC = 0.924, Acc = 92.81 %); (2) support vector machine (AUC = 0.937, Acc = 94.38 %); (3) random forest (AUC = 0.918, Acc = 94.38 %); and (4) adaptive boosting (AUC = 0.882, Acc = 94.38 %). Notably, the support vector machine excelled, with the highest AUC and superior accuracy.
Incorporating the simplified SCL-90 and machine learning presents a promising, efficient, and cost-effective tool for the precise identification of depression and anxiety.
抑郁和焦虑是常见的共存情绪障碍,它们在准确区分方面构成了临床挑战,阻碍了有效的医疗保健干预。本研究通过使用简化的症状清单 90(SCL-90)来解决这一差距,该清单旨在最大限度地减少患者的应答负担。本研究利用机器学习算法,旨在构建能够区分抑郁和焦虑的分类模型。
该研究纳入了 4262 名目前患有单纯抑郁(n=2998)、单纯焦虑(n=716)或抑郁和焦虑共病(n=548)的个体。采用反事实诊断方法在数据集上构建因果网络。利用因果网络对 SCL-90 进行简化。选择与抑郁、焦虑和抑郁和焦虑均具有因果关系的项目,并将这些简化项目作为四个不同机器学习算法的输入特征,为区分抑郁和焦虑的分类模型的创建提供便利。
交叉验证结果显示,分类模型的性能如下:(1)K 最近邻(AUC=0.924,Acc=92.81%);(2)支持向量机(AUC=0.937,Acc=94.38%);(3)随机森林(AUC=0.918,Acc=94.38%);和(4)自适应提升(AUC=0.882,Acc=94.38%)。值得注意的是,支持向量机表现出色,具有最高的 AUC 和更高的准确性。
将简化的 SCL-90 和机器学习结合使用,为准确识别抑郁和焦虑提供了一种有前途、高效且具有成本效益的工具。