新型冠状病毒大流行期间大学生移动抑郁与自杀意念的快速筛查

M. L. Tlachac, Ricardo Flores, Miranda Reisch, Rimsha Kayastha, -. Ninatau, Rich, V. Melican, Connor Bruneau, H. Caouette, E. Toto, E. Rundensteiner
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引用次数: 4

摘要

冠状病毒大流行进一步加剧了大学生中抑郁症和自杀意念的日益流行,这令人担忧,凸显了对普遍精神疾病筛查技术的需求。由于传统的筛查问卷过于繁琐,无法在这一人群中实现普遍筛查,通过移动应用程序收集的数据有可能快速识别有风险的学生。虽然之前的研究主要集中在收集学生的被动智能手机模式,但智能手机传感器也能够捕捉主动模式。普通大众更愿意通过应用程序分享主动模式,而不是被动模式,但目前还没有针对学生的精神疾病筛查的主动移动模式数据集。了解哪种积极模式对学生群体具有强大的筛查能力,对于开发有针对性的精神疾病筛查技术至关重要。因此,我们在COVID-19大流行期间为300多名学生部署了一个移动应用程序,以收集学生自杀意念和抑郁检测(StudentSADD)数据集。我们报告了各种各样的机器学习模型,包括先进的多模态预训练深度学习分类器,用于主动文本和语音回复,以筛查抑郁症和自杀意念。这个独特的StudentSADD数据集是社区开发移动精神疾病筛查工具的宝贵资源。©2022 acm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
StudentSADD: Rapid Mobile Depression and Suicidal Ideation Screening of College Students during the Coronavirus Pandemic
The growing prevalence of depression and suicidal ideation among college students further exacerbated by the Coronavirus pandemic is alarming, highlighting the need for universal mental illness screening technology. With traditional screening questionnaires too burdensome to achieve universal screening in this population, data collected through mobile applications has the potential to rapidly identify at-risk students. While prior research has mostly focused on collecting passive smartphone modalities from students, smartphone sensors are also capable of capturing active modalities. The general public has demonstrated more willingness to share active than passive modalities through an app, yet no such dataset of active mobile modalities for mental illness screening exists for students. Knowing which active modalities hold strong screening capabilities for student populations is critical for developing targeted mental illness screening technology. Thus, we deployed a mobile application to over 300 students during the COVID-19 pandemic to collect the Student Suicidal Ideation and Depression Detection (StudentSADD) dataset. We report on a rich variety of machine learning models including cutting-edge multimodal pretrained deep learning classifiers on active text and voice replies to screen for depression and suicidal ideation. This unique StudentSADD dataset is a valuable resource for the community for developing mobile mental illness screening tools. © 2022 ACM.
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