Title :
Monitoring of Cigarette Smoking Using Wearable Sensors and Support Vector Machines
Author :
Lopez-Meyer, P. ; Tiffany, Stephen ; Patil, Yogendra ; Sazonov, Edward
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Alabama, Tuscaloosa, AL, USA
Abstract :
Cigarette smoking is a serious risk factor for cancer, cardiovascular, and pulmonary diseases. Current methods of monitoring of cigarette smoking habits rely on various forms of self-report that are prone to errors and under reporting. This paper presents a first step in the development of a methodology for accurate and objective assessment of smoking using noninvasive wearable sensors (Personal Automatic Cigarette Tracker - PACT) by demonstrating feasibility of automatic recognition of smoke inhalations from signals arising from continuous monitoring of breathing and hand-to-mouth gestures by support vector machine classifiers. The performance of subject-dependent (individually calibrated) models was compared to performance of subject-independent (group) classification models. The models were trained and validated on a dataset collected from 20 subjects performing 12 different activities representative of everyday living (total duration 19.5 h or 21411 breath cycles). Precision and recall were used as the accuracy metrics. Group models obtained 87% and 80% of average precision and recall, respectively. Individual models resulted in 90% of average precision and recall, indicating a significant presence of individual traits in signal patterns. These results suggest the feasibility of monitoring cigarette smoking by means of a wearable and noninvasive sensor system in free living conditions.
Keywords :
biomedical equipment; calibration; cancer; cardiovascular system; medical signal processing; patient monitoring; pneumodynamics; signal classification; support vector machines; tobacco products; wireless sensor networks; automatic recognition; breath cycles; breathing; cancer; cardiovascular; cigarette smoking monitoring; continuous monitoring; dataset collection; hand-to-mouth gestures; individual traits; noninvasive wearable sensors; personal automatic cigarette tracker; pulmonary diseases; serious risk factor; signal patterns; signal recognition; smoke inhalations; subject-dependent individually calibrated models; subject-independent group classification models; support vector machine classifiers; time 19.5 h; Accuracy; Feature extraction; Monitoring; Mouth; Support vector machine classification; Wearable sensors; Inter- and intra-subject variability; smoking; support vector machines (SVM); wearable sensors; Actigraphy; Algorithms; Clothing; Equipment Design; Equipment Failure Analysis; Female; Humans; Information Storage and Retrieval; Male; Monitoring, Ambulatory; Plethysmography, Impedance; Reproducibility of Results; Sensitivity and Specificity; Smoking; Support Vector Machines; Transducers; Young Adult;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2013.2243729