puffMarker: A Multi-Sensor Approach for Pinpointing the Timing of First Lapse in Smoking Cessation
Abstract
Recent researches have demonstrated the feasibility of detecting smoking from wearable sensors, but their performance on real-life smoking lapse detection is unknown. In this paper, we propose a new model and evaluate its performance on 61 newly abstinent smokers for detecting a first lapse. We use two wearable sensors - breathing pattern from respiration and arm movements from 6-axis inertial sensors worn on wrists. In 10-fold cross-validation on 40 hours of training data from 6 daily smokers, our model achieves a recall rate of 96.9%, for a false positive rate of 1.1%. When our model is applied to 3 days of post-quit data from 32 lapsers, it correctly pinpoints the timing of first lapse in 28 participants. Only 2 false episodes are detected on 20 abstinent days of these participants. When tested on 84 abstinent days from 28 abstainers, the false episode per day is limited to 1/6.
Publication Title
Proceedings of the ... ACM International Conference on Ubiquitous Computing . UbiComp (Conference)
Recommended Citation
Saleheen, N., Ali, A. A., Hossain, S. M., Sarker, H., Chatterjee, S., Marlin, B., Ertin, E., al'Absi, M., & Kumar, S. (2015). puffMarker: A Multi-Sensor Approach for Pinpointing the Timing of First Lapse in Smoking Cessation. Proceedings of the ... ACM International Conference on Ubiquitous Computing . UbiComp (Conference), 2015, 999-1010. Retrieved from https://digitalcommons.memphis.edu/facpubs/19836