Domain adaptation methods for improving lab-to-field generalization of cocaine detection using wearable ECG

A. Natarajan, G. Angarita, Edward Gaiser, R. Malison, Deepak Ganesan, Benjamin M Marlin
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引用次数: 31

Abstract

Mobile health research on illicit drug use detection typically involves a two-stage study design where data to learn detectors is first collected in lab-based trials, followed by a deployment to subjects in a free-living environment to assess detector performance. While recent work has demonstrated the feasibility of wearable sensors for illicit drug use detection in the lab setting, several key problems can limit lab-to-field generalization performance. For example, lab-based data collection often has low ecological validity, the ground-truth event labels collected in the lab may not be available at the same level of temporal granularity in the field, and there can be significant variability between subjects. In this paper, we present domain adaptation methods for assessing and mitigating potential sources of performance loss in lab-to-field generalization and apply them to the problem of cocaine use detection from wearable electrocardiogram sensor data.
改进可穿戴ECG可卡因检测实验室到现场泛化的领域自适应方法
关于检测非法药物使用的移动卫生研究通常涉及两阶段的研究设计,首先在实验室试验中收集用于学习检测器的数据,然后将其部署到自由生活环境中的受试者中,以评估检测器的性能。虽然最近的工作已经证明了可穿戴传感器在实验室环境中检测非法药物使用的可行性,但几个关键问题可能会限制实验室到现场的泛化性能。例如,基于实验室的数据收集通常具有较低的生态效度,在实验室收集的真实事件标签可能无法在相同的时间粒度水平上在现场使用,并且受试者之间可能存在显着的可变性。在本文中,我们提出了领域自适应方法,用于评估和减轻实验室到现场泛化中性能损失的潜在来源,并将其应用于可穿戴心电图传感器数据的可卡因使用检测问题。
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