Understanding Privacy Risks versus Predictive Benefits in Wearable Sensor-Based Digital Phenotyping: A Quantitative Cost-Benefit Analysis.

Zhiyuan Wang, Mark Rucker, Emma R Toner, Maria A Larrazabal, Mehdi Boukhechba, Bethany A Teachman, Laura E Barnes
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Abstract

Wearable devices with embedded sensors can provide personalized healthcare and wellness benefits in digital phenotyping and adaptive interventions. However, the collection, storage, and transmission of biometric data (including processed features rather than raw signals) from these devices pose significant privacy concerns. This quantitative, data-driven study examines the privacy risks associated with wearable-based digital phenotyping practices, with a focus on user reidentification (ReID), which is the process of identifying participants' IDs from deidentified digital phenotyping datasets. We propose a machine-learning-based computational pipeline to evaluate and quantify model outcomes under various configurations, such as modality inclusion, window length, and feature type and format, to investigate the factors influencing ReID risks and their predictive trade-offs. This pipeline leverages features extracted from three wearable sensors, resulting in up to 68.43% accuracy in ReID risk for a sample size of N=45 socially anxious participants based on only descriptive features of 10-second observations. Additionally, we explore the trade-offs between privacy risks and predictive benefits by adjusting various settings (e.g., the ways to process extracted features). Our findings highlight the importance of privacy in digital phenotyping and suggest potential future directions.

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了解基于可穿戴传感器的数字表型中的隐私风险与预测优势:定量成本效益分析
带有嵌入式传感器的可穿戴设备可以在数字表型和适应性干预方面提供个性化的医疗保健和健康益处。然而,从这些设备中收集、存储和传输生物识别数据(包括经过处理的特征而非原始信号)会带来严重的隐私问题。这项以数据为驱动的定量研究探讨了与基于可穿戴设备的数字表型分析实践相关的隐私风险,重点关注用户再识别(ReID),即从去标识化的数字表型分析数据集中识别参与者身份的过程。我们提出了一种基于机器学习的计算管道,用于评估和量化各种配置下的模型结果,如包含模式、窗口长度、特征类型和格式,以研究影响 ReID 风险的因素及其预测权衡。该管道利用了从三个可穿戴传感器中提取的特征,在样本量为 45 名社交焦虑参与者的情况下,仅基于 10 秒钟观察结果的描述性特征,ReID 风险准确率就高达 68.43%。此外,我们还通过调整各种设置(如处理提取特征的方法)来探索隐私风险与预测效益之间的权衡。我们的研究结果强调了隐私在数字表型中的重要性,并提出了潜在的未来发展方向。
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