Abstract
Recent advancements in mobile health (mHealth) technology and the ubiquity of wearable devices and smartphones have expanded a market for digital health and have emerged as innovative tools for data collection on individualized behavior. Heterogeneous levels of device usage across users and across days within a single user may result in different degrees of underestimation in passive sensing data, subsequently introducing biases if analyzed without addressing this issue. In this work, we propose an unsupervised 2-Stage Pre-processing Algorithm for Passively Sensed mHealth Data (2SpamH) algorithm that uses device usage variables to infer the quality of passive sensing data from mobile devices. This article provides a series of simulation studies to show the utility of the proposed algorithm compared to existing methods. Application to a real clinical dataset is also illustrated.
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Zhang, H., Diaz, J. L., Kim, S., Yu, Z., Wu, Y., Carter, E., & Banerjee, S. (2024). 2SpamH: A Two-Stage Pre-Processing Algorithm for Passively Sensed mHealth Data. Sensors, 24(21). https://doi.org/10.3390/s24217053
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