Privacy concerns with using public data for suicide risk prediction algorithms: a public opinion survey of contextual appropriateness

Michael Zimmer, Sarah Logan
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引用次数: 4

Abstract

Purpose Existing algorithms for predicting suicide risk rely solely on data from electronic health records, but such models could be improved through the incorporation of publicly available socioeconomic data – such as financial, legal, life event and sociodemographic data. The purpose of this study is to understand the complex ethical and privacy implications of incorporating sociodemographic data within the health context. This paper presents results from a survey exploring what the general public’s knowledge and concerns are about such publicly available data and the appropriateness of using it in suicide risk prediction algorithms. Design/methodology/approach A survey was developed to measure public opinion about privacy concerns with using socioeconomic data across different contexts. This paper presented respondents with multiple vignettes that described scenarios situated in medical, private business and social media contexts, and asked participants to rate their level of concern over the context and what factor contributed most to their level of concern. Specific to suicide prediction, this paper presented respondents with various data attributes that could potentially be used in the context of a suicide risk algorithm and asked participants to rate how concerned they would be if each attribute was used for this purpose. Findings The authors found considerable concern across the various contexts represented in their vignettes, with greatest concern in vignettes that focused on the use of personal information within the medical context. Specific to the question of incorporating socioeconomic data within suicide risk prediction models, the results of this study show a clear concern from all participants in data attributes related to income, crime and court records, and assets. Data about one’s household were also particularly concerns for the respondents, suggesting that even if one might be comfortable with their own being used for risk modeling, data about other household members is more problematic. Originality/value Previous studies on the privacy concerns that arise when integrating data pertaining to various contexts of people’s lives into algorithmic and related computational models have approached these questions from individual contexts. This study differs in that it captured the variation in privacy concerns across multiple contexts. Also, this study specifically assessed the ethical concerns related to a suicide prediction model and determining people’s awareness of the publicness of select data attributes, as well as which of these data attributes generated the most concern in such a context. To the best of the authors’ knowledge, this is the first study to pursue this question.
使用公共数据进行自杀风险预测算法的隐私问题:一项关于上下文适当性的公众意见调查
目的预测自杀风险的现有算法完全依赖电子健康记录的数据,但可以通过纳入公开可得的社会经济数据——如金融、法律、生活事件和社会人口数据——来改进这种模型。本研究的目的是了解在健康背景下纳入社会人口统计数据的复杂伦理和隐私影响。本文介绍了一项调查的结果,该调查探讨了公众对这些公开可用数据的了解和关注,以及在自杀风险预测算法中使用这些数据的适当性。设计/方法/方法一项调查是通过使用不同背景下的社会经济数据来衡量公众对隐私问题的看法。本文向受访者展示了多个描述医疗、私营企业和社交媒体背景下的场景的小片段,并要求参与者对环境的关注程度进行评分,以及什么因素对他们的关注程度贡献最大。具体到自杀预测,本文向受访者提供了可能在自杀风险算法中使用的各种数据属性,并要求参与者评估如果每个属性用于此目的,他们会有多担心。研究结果作者在他们的小短文中发现了相当多的关注,其中最关注的是在医学背景下使用个人信息。具体到将社会经济数据纳入自杀风险预测模型的问题,本研究的结果表明,所有参与者都明确关注与收入、犯罪和法庭记录以及资产相关的数据属性。受访者也特别关注家庭数据,这表明,即使一个人可能对自己的家庭数据被用于风险建模感到满意,关于其他家庭成员的数据也更有问题。原创性/价值先前关于将与人们生活的各种背景有关的数据整合到算法和相关计算模型中时出现的隐私问题的研究已经从个人背景中解决了这些问题。这项研究的不同之处在于,它捕捉到了不同背景下隐私问题的变化。此外,本研究还专门评估了与自杀预测模型相关的伦理问题,并确定了人们对所选数据属性的公共性的认识,以及在这种情况下,这些数据属性中哪一个最受关注。据作者所知,这是第一个探讨这个问题的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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