IEEE J Biomed Health Inform. 2024 May;28(5):2602-2612. doi: 10.1109/JBHI.2023.3258601. Epub 2024 May 6.
Depression is one of the most common mental disorders, with sleep disturbances as typical symptoms. With the popularity of wearable devices increasing in recent years, more and more people wear portable devices to track sleep quality. Based on this, we believe that depression detection through wearable sleep data is more intelligent and economical. However, the majority of wearable devices face the problem of missing data during the data collection process. Otherwise, most existing studies of depression identification focus on the utilization of complex data, making it difficult to generalize and susceptible to noise interference. To address these issues, we propose a systematic ensemble classification model for depression (ECD). For the missing data problem of wearable devices, we design an improved GAIN method to further control the generation range of interpolated values, which can achieve a more reasonable treatment of missing values. Compared with the original GAIN approach, the improved method shows a 28.56% improvement when using MAE as the metric. For depression recognition, we use ensemble learning to construct a depression classification model which combines five classification models, including SVM, KNN, LR, CBR, and DT. Ensemble learning can improve the model's robustness and generalization. The voting mechanism is used in several places to improve noise immunity. The final classification model performed great on the dataset, with a precision of 92.55% and a recall of 91.89%. These results illustrate how efficient this method is in automatically detecting depression.
抑郁症是最常见的精神障碍之一,其典型症状包括睡眠障碍。近年来,随着可穿戴设备的普及度不断提高,越来越多的人开始使用便携式设备来跟踪睡眠质量。基于此,我们认为通过可穿戴设备的睡眠数据来检测抑郁症更加智能且经济。然而,大多数可穿戴设备在数据采集过程中都面临数据缺失的问题。否则,大多数现有的抑郁症识别研究都集中在利用复杂数据上,这使得模型难以推广且容易受到噪声干扰。针对这些问题,我们提出了一种系统的集成分类模型来进行抑郁症检测(ECD)。对于可穿戴设备的数据缺失问题,我们设计了一种改进的 GAIN 方法来进一步控制插值值的生成范围,从而实现更合理地处理缺失值。与原始的 GAIN 方法相比,当使用 MAE 作为度量时,改进后的方法的准确率提高了 28.56%。对于抑郁症识别,我们使用集成学习来构建一个由五个分类模型(包括 SVM、KNN、LR、CBR 和 DT)组成的抑郁症分类模型。集成学习可以提高模型的鲁棒性和泛化能力。在几个地方使用投票机制来提高抗噪声能力。最终的分类模型在数据集上表现出色,准确率为 92.55%,召回率为 91.89%。这些结果表明,这种方法在自动检测抑郁症方面非常有效。