利用被动感知捕获的纵向症状检测抑郁症并预测其发病

Prerna Chikersal, Afsaneh Doryab, Michael J. Tumminia, Daniella K. Villalba, Janine M. Dutcher, Xinwen Liu, Sheldon Cohen, Kasey G. Creswell, Jennifer Mankoff, J. Creswell, Mayank Goel, A. Dey
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引用次数: 41

摘要

我们提出了一种机器学习方法,该方法使用来自138名大学生的智能手机和健身追踪器的数据来识别在学期末经历抑郁症状的学生和抑郁症状在学期中恶化的学生。我们的新方法是一种特征提取技术,使我们能够从纵向数据中选择有意义的特征,表明抑郁症状。它使我们能够以85.7%的准确率检测学期后抑郁症状的存在,并以85.4%的准确率检测症状严重程度的变化。它在学期结束前11-15周预测这些结果的准确率超过80%,为先发制人的干预留出了充足的时间。我们的工作对于使用纵向行为数据和有限的基础事实来检测健康结果具有重要意义。通过在发病前几周发现变化并预测症状,我们的工作对预防抑郁症也有意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Depression and Predicting its Onset Using Longitudinal Symptoms Captured by Passive Sensing
We present a machine learning approach that uses data from smartphones and fitness trackers of 138 college students to identify students that experienced depressive symptoms at the end of the semester and students whose depressive symptoms worsened over the semester. Our novel approach is a feature extraction technique that allows us to select meaningful features indicative of depressive symptoms from longitudinal data. It allows us to detect the presence of post-semester depressive symptoms with an accuracy of 85.7% and change in symptom severity with an accuracy of 85.4%. It also predicts these outcomes with an accuracy of >80%, 11–15 weeks before the end of the semester, allowing ample time for pre-emptive interventions. Our work has significant implications for the detection of health outcomes using longitudinal behavioral data and limited ground truth. By detecting change and predicting symptoms several weeks before their onset, our work also has implications for preventing depression.
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