| Literature DB >> 26543927 |
Nazir Saleheen1, Amin Ahsan Ali2, Syed Monowar Hossain3, Hillol Sarker4, Soujanya Chatterjee5, Benjamin Marlin, Emre Ertin, Mustafa al'Absi, Santosh Kumar.
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.Entities:
Keywords: H.1.2. Models and Principles: User/Machine Systems; Mobile health (mHealth); smartwatch; smoking cessation; smoking detection; wearable sensors
Year: 2015 PMID: 26543927 PMCID: PMC4631252
Source DB: PubMed Journal: Proc ACM Int Conf Ubiquitous Comput