Predicting Symptom Improvement During Depression Treatment Using Sleep Sensory Data

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Pub Date : 2023-09-27 DOI:10.1145/3610932
Chinmaey Shende, Soumyashree Sahoo, Stephen Sam, Parit Patel, Reynaldo Morillo, Xinyu Wang, Shweta Ware, Jinbo Bi, Jayesh Kamath, Alexander Russell, Dongjin Song, Bing Wang
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Abstract

Depression is a serious mental illness. The current best guideline in depression treatment is closely monitoring patients and adjusting treatment as needed. Close monitoring of patients through physician-administered follow-ups or self-administered questionnaires, however, is difficult in clinical settings due to high cost, lack of trained professionals, and burden to the patients. Sensory data collected from mobile devices has been shown to provide a promising direction for long-term monitoring of depression symptoms. Most existing studies in this direction, however, focus on depression detection; the few studies that are on predicting changes in depression are not in clinical settings. In this paper, we investigate using one type of sensory data, sleep data, collected from wearables to predict improvement of depression symptoms over time after a patient initiates a new pharmacological treatment. We apply sleep trend filtering to noisy sleep sensory data to extract high-level sleep characteristics and develop a family of machine learning models that use simple sleep features (mean and variation of sleep duration) to predict symptom improvement. Our results show that using such simple sleep features can already lead to validation F1 score up to 0.68, indicating that using sensory data for predicting depression improvement during treatment is a promising direction.
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使用睡眠感觉数据预测抑郁症治疗期间症状改善
抑郁症是一种严重的精神疾病。目前抑郁症治疗的最佳指导方针是密切监测患者并根据需要调整治疗。然而,由于成本高、缺乏训练有素的专业人员以及给患者带来负担,在临床环境中很难通过医生管理的随访或自我管理的问卷对患者进行密切监测。从移动设备收集的感官数据已被证明为抑郁症症状的长期监测提供了一个有希望的方向。然而,在这个方向上的大多数现有研究都集中在抑郁检测上;少数预测抑郁症变化的研究不是在临床环境中进行的。在本文中,我们研究使用一种感官数据,即从可穿戴设备收集的睡眠数据,来预测患者开始新的药物治疗后抑郁症状的改善情况。我们将睡眠趋势滤波应用于嘈杂的睡眠感官数据,以提取高水平的睡眠特征,并开发了一系列机器学习模型,这些模型使用简单的睡眠特征(睡眠持续时间的平均值和变化)来预测症状的改善。我们的研究结果表明,使用这些简单的睡眠特征已经可以使F1得分达到0.68,这表明使用感官数据来预测治疗期间抑郁症的改善是一个有前途的方向。
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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