社交媒体的自然语言处理作为自杀风险筛选。

Biomedical informatics insights Pub Date : 2018-08-27 eCollection Date: 2018-01-01 DOI:10.1177/1178222618792860
Glen Coppersmith, Ryan Leary, Patrick Crutchley, Alex Fine
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引用次数: 309

摘要

据世界卫生组织评估,自杀是十大最常见的死亡原因之一。据估计,每发生一起自杀死亡,就会有138人的生命受到有意义的影响,几乎任何其他有关自杀死亡的统计数据都同样令人震惊。无处不在的社交媒体——以及几乎无处不在的用于访问社交媒体网络的移动设备——为理解那些(试图)自杀的人的行为提供了新的数据类型,并为预防性干预提供了新的可能性。我们证明了使用社交媒体数据来检测那些有自杀风险的人的可行性。具体来说,我们使用自然语言处理和机器学习(特别是深度学习)技术来检测自杀企图周围的可量化信号,并描述了用于估计自杀风险的自动化系统的设计,该系统可用于未经专业心理健康培训的人员(例如初级保健医生)。我们还讨论了这种技术的道德使用,并检查了隐私影响。目前,这项技术仅用于对那些“选择”进行分析和干预的个人进行干预,但这项技术可以对自杀风险进行可扩展的筛查,潜在地识别出许多处于风险中的人,并且在与医疗保健系统进行任何接触之前。这就提出了一个重要的文化问题,关于隐私和预防之间的权衡——我们有可能挽救生命的技术,但由于尊重他们的隐私,目前只有一小部分可能处于危险中的人得到了帮助。当前在隐私和预防之间的权衡是正确的吗?
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Natural Language Processing of Social Media as Screening for Suicide Risk.

Natural Language Processing of Social Media as Screening for Suicide Risk.

Natural Language Processing of Social Media as Screening for Suicide Risk.

Natural Language Processing of Social Media as Screening for Suicide Risk.

Suicide is among the 10 most common causes of death, as assessed by the World Health Organization. For every death by suicide, an estimated 138 people's lives are meaningfully affected, and almost any other statistic around suicide deaths is equally alarming. The pervasiveness of social media-and the near-ubiquity of mobile devices used to access social media networks-offers new types of data for understanding the behavior of those who (attempt to) take their own lives and suggests new possibilities for preventive intervention. We demonstrate the feasibility of using social media data to detect those at risk for suicide. Specifically, we use natural language processing and machine learning (specifically deep learning) techniques to detect quantifiable signals around suicide attempts, and describe designs for an automated system for estimating suicide risk, usable by those without specialized mental health training (eg, a primary care doctor). We also discuss the ethical use of such technology and examine privacy implications. Currently, this technology is only used for intervention for individuals who have "opted in" for the analysis and intervention, but the technology enables scalable screening for suicide risk, potentially identifying many people who are at risk preventively and prior to any engagement with a health care system. This raises a significant cultural question about the trade-off between privacy and prevention-we have potentially life-saving technology that is currently reaching only a fraction of the possible people at risk because of respect for their privacy. Is the current trade-off between privacy and prevention the right one?

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