Saylam Berrenur, İncel Özlem Durmaz
Computer Engineering Department, Boğaziçi University, 34342 İstanbul, Türkiye.
Diagnostics (Basel). 2024 Feb 26;14(5):501. doi: 10.3390/diagnostics14050501.
This study investigates the prediction of mental well-being factors-depression, stress, and anxiety-using the NetHealth dataset from college students. The research addresses four key questions, exploring the impact of digital biomarkers on these factors, their alignment with conventional psychology literature, the time-based performance of applied methods, and potential enhancements through multitask learning. The findings reveal modality rankings aligned with psychology literature, validated against paper-based studies. Improved predictions are noted with temporal considerations, and further enhanced by multitasking. Mental health multitask prediction results show aligned baseline and multitask performances, with notable enhancements using temporal aspects, particularly with the random forest (RF) classifier. Multitask learning improves outcomes for depression and stress but not anxiety using RF and XGBoost.
本研究使用来自大学生的NetHealth数据集,调查心理健康因素(抑郁、压力和焦虑)的预测情况。该研究提出了四个关键问题,探讨数字生物标志物对这些因素的影响、它们与传统心理学文献的一致性、应用方法的基于时间的性能,以及通过多任务学习实现的潜在改进。研究结果揭示了与心理学文献一致的模态排名,并通过基于纸质的研究进行了验证。考虑时间因素时预测得到改善,多任务学习进一步提升了预测效果。心理健康多任务预测结果显示基线性能和多任务性能一致,使用时间因素有显著提升,特别是使用随机森林(RF)分类器时。使用RF和XGBoost进行多任务学习可改善抑郁和压力的预测结果,但对焦虑的预测效果不佳。